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Batch image generation and manipulation tool supporting Stable Diffusion and related techniques / algorithms, with support for video and animated image processing.

Project description

Overview

Documentation Status

dgenerate is a command line tool and library for generating images and animation sequences using Stable Diffusion and related techniques / models. Now Featuring a Console UI and REPL shell mode for the dgenerate configuration / scripting language.

You can use dgenerate to generate multiple images or animated outputs using multiple combinations of diffusion input parameters in batch, so that the differences in generated output can be compared / curated easily.

Simple txt2img generation without image inputs is supported, as well as img2img and inpainting, and ControlNets.

Animated output can be produced by processing every frame of a Video, GIF, WebP, or APNG through various implementations of diffusion in img2img or inpainting mode, as well as with ControlNets and control guidance images, in any combination thereof. MP4 (h264) video can be written without memory constraints related to frame count. GIF, WebP, and PNG/APNG can be written WITH memory constraints, IE: all frames exist in memory at once before being written.

Video input of any runtime can be processed without memory constraints related to the video size. Many video formats are supported through the use of PyAV (ffmpeg).

Animated image input such as GIF, APNG (extension must be .apng), and WebP, can also be processed WITH memory constraints, IE: all frames exist in memory at once after an animated image is read.

PNG, JPEG, JPEG-2000, TGA (Targa), BMP, and PSD (Photoshop) are supported for static image inputs.

In addition to diffusion, dgenerate also supports the processing of any supported image, video, or animated image using any of its built in image processors, which include various edge detectors, depth detectors, segment generation, normal map generation, pose detection, non-diffusion based AI upscaling, and more.

This software requires an Nvidia GPU supporting CUDA 12.1+, CPU rendering is possible for some operations but extraordinarily slow.

For library documentation visit readthedocs.


Help Output

usage: dgenerate [-h] [-v] [--version] [--shell | --no-stdin | --console]
                 [--plugin-modules PATH [PATH ...]] [--sub-command SUB_COMMAND]
                 [--sub-command-help [SUB_COMMAND ...]] [-ofm]
                 [--templates-help [VARIABLE_NAME ...]] [--directives-help [DIRECTIVE_NAME ...]]
                 [--functions-help [FUNCTION_NAME ...]] [-mt MODEL_TYPE] [-rev BRANCH]
                 [-var VARIANT] [-sbf SUBFOLDER] [-atk TOKEN] [-bs INTEGER] [-bgs SIZE]
                 [-un UNET_URI] [-un2 UNET_URI] [-vae VAE_URI] [-vt] [-vs]
                 [-lra LORA_URI [LORA_URI ...]] [-ti URI [URI ...]]
                 [-cn CONTROL_NET_URI [CONTROL_NET_URI ...]] [-sch SCHEDULER_URI] [-mqo | -mco]
                 [--s-cascade-decoder MODEL_URI] [-dqo] [-dco]
                 [--s-cascade-decoder-prompts PROMPT [PROMPT ...]]
                 [--s-cascade-decoder-inference-steps INTEGER [INTEGER ...]]
                 [--s-cascade-decoder-guidance-scales INTEGER [INTEGER ...]]
                 [--s-cascade-decoder-scheduler SCHEDULER_URI] [--sdxl-refiner MODEL_URI] [-rqo]
                 [-rco] [--sdxl-refiner-scheduler SCHEDULER_URI] [--sdxl-refiner-edit]
                 [--sdxl-second-prompts PROMPT [PROMPT ...]]
                 [--sdxl-aesthetic-scores FLOAT [FLOAT ...]]
                 [--sdxl-crops-coords-top-left COORD [COORD ...]]
                 [--sdxl-original-size SIZE [SIZE ...]] [--sdxl-target-size SIZE [SIZE ...]]
                 [--sdxl-negative-aesthetic-scores FLOAT [FLOAT ...]]
                 [--sdxl-negative-original-sizes SIZE [SIZE ...]]
                 [--sdxl-negative-target-sizes SIZE [SIZE ...]]
                 [--sdxl-negative-crops-coords-top-left COORD [COORD ...]]
                 [--sdxl-refiner-prompts PROMPT [PROMPT ...]]
                 [--sdxl-refiner-clip-skips INTEGER [INTEGER ...]]
                 [--sdxl-refiner-second-prompts PROMPT [PROMPT ...]]
                 [--sdxl-refiner-aesthetic-scores FLOAT [FLOAT ...]]
                 [--sdxl-refiner-crops-coords-top-left COORD [COORD ...]]
                 [--sdxl-refiner-original-sizes SIZE [SIZE ...]]
                 [--sdxl-refiner-target-sizes SIZE [SIZE ...]]
                 [--sdxl-refiner-negative-aesthetic-scores FLOAT [FLOAT ...]]
                 [--sdxl-refiner-negative-original-sizes SIZE [SIZE ...]]
                 [--sdxl-refiner-negative-target-sizes SIZE [SIZE ...]]
                 [--sdxl-refiner-negative-crops-coords-top-left COORD [COORD ...]]
                 [-hnf FLOAT [FLOAT ...]] [-ri INT [INT ...]] [-rg FLOAT [FLOAT ...]]
                 [-rgr FLOAT [FLOAT ...]] [-sc] [-d DEVICE] [-t DTYPE] [-s SIZE] [-na] [-o PATH]
                 [-op PREFIX] [-ox] [-oc] [-om] [-p PROMPT [PROMPT ...]]
                 [-cs INTEGER [INTEGER ...]] [-se SEED [SEED ...]] [-sei] [-gse COUNT]
                 [-af FORMAT] [-if FORMAT] [-nf] [-fs FRAME_NUMBER] [-fe FRAME_NUMBER]
                 [-is SEED [SEED ...]] [-sip PROCESSOR_URI [PROCESSOR_URI ...]]
                 [-mip PROCESSOR_URI [PROCESSOR_URI ...]] [-cip PROCESSOR_URI [PROCESSOR_URI ...]]
                 [--image-processor-help [PROCESSOR_NAME ...]]
                 [-pp PROCESSOR_URI [PROCESSOR_URI ...]] [-iss FLOAT [FLOAT ...] | -uns INTEGER
                 [INTEGER ...]] [-gs FLOAT [FLOAT ...]] [-igs FLOAT [FLOAT ...]]
                 [-gr FLOAT [FLOAT ...]] [-ifs INTEGER [INTEGER ...]] [-mc EXPR [EXPR ...]]
                 [-pmc EXPR [EXPR ...]] [-umc EXPR [EXPR ...]] [-vmc EXPR [EXPR ...]]
                 [-cmc EXPR [EXPR ...]]
                 model_path

Batch image generation and manipulation tool supporting Stable Diffusion and related techniques /
algorithms, with support for video and animated image processing.

positional arguments:
  model_path            huggingface model repository slug, huggingface blob link to a model file,
                        path to folder on disk, or path to a .pt, .pth, .bin, .ckpt, or
                        .safetensors file.

options:
  -h, --help            show this help message and exit
  -v, --verbose         Output information useful for debugging, such as pipeline call and model
                        load parameters.
  --version             Show dgenerate's version and exit
  --shell               When reading configuration from STDIN (a pipe), read forever, even when
                        configuration errors occur. This allows dgenerate to run in the background
                        and be communicated with by another process sending it commands. Launching
                        dgenerate with this option and not piping it input will attach it to the
                        terminal like a shell. Entering configuration into this shell will require
                        two newlines to submit a command due to parsing lookahead. IE: two presses
                        of the enter key.
  --no-stdin            Can be used to indicate to dgenerate that it will not receive any piped in
                        input. This is useful for running dgenerate via popen from python or
                        another application using normal arguments, where it would otherwise try
                        to read from STDIN and block forever because it is not attached to a
                        terminal.
  --console             Launch a terminal-like tkinter GUI that communicates with an instance of
                        dgenerate running in the background. This allows you to interactively
                        write dgenerate config scripts as if dgenerate were a shell / REPL.
  --plugin-modules PATH [PATH ...]
                        Specify one or more plugin module folder paths (folder containing
                        __init__.py) or python .py file paths to load as plugins. Plugin modules
                        can currently implement image processors and config directives.
  --sub-command SUB_COMMAND
                        Specify the name a sub-command to invoke. dgenerate exposes some extra
                        image processing functionality through the use of sub-commands. Sub
                        commands essentially replace the entire set of accepted arguments with
                        those of a sub-command which implements additional functionality. See
                        --sub-command-help for a list of sub-commands and help.
  --sub-command-help [SUB_COMMAND ...]
                        List available sub-commands, providing sub-command names will produce
                        their documentation. Calling a subcommand with "--sub-command name --help"
                        will produce argument help output for that subcommand.
  -ofm, --offline-mode  Whether dgenerate should try to download huggingface models that do not
                        exist in the disk cache, or only use what is available in the cache.
                        Referencing a model on huggingface that has not been cached because it was
                        not previously downloaded will result in a failure when using this option.
  --templates-help [VARIABLE_NAME ...]
                        Print a list of template variables available in dgenerate configs during
                        batch processing from STDIN. When used as a command option, their values
                        are not presented, just their names and types. Specifying names will print
                        type information for those variable names.
  --directives-help [DIRECTIVE_NAME ...]
                        Print a list of directives available in dgenerate configs during batch
                        processing from STDIN. Providing names will print documentation for the
                        specified directive names. When used with --plugin-modules, directives
                        implemented by the specified plugins will also be listed.
  --functions-help [FUNCTION_NAME ...]
                        Print a list of template functions available in dgenerate configs during
                        batch processing from STDIN. Providing names will print documentation for
                        the specified function names. When used with --plugin-modules, functions
                        implemented by the specified plugins will also be listed.
  -mt MODEL_TYPE, --model-type MODEL_TYPE
                        Use when loading different model types. Currently supported: torch, torch-
                        pix2pix, torch-sdxl, torch-sdxl-pix2pix, torch-upscaler-x2, torch-
                        upscaler-x4, torch-if, torch-ifs, torch-ifs-img2img, or torch-s-cascade.
                        (default: torch)
  -rev BRANCH, --revision BRANCH
                        The model revision to use when loading from a huggingface repository, (The
                        git branch / tag, default is "main")
  -var VARIANT, --variant VARIANT
                        If specified when loading from a huggingface repository or folder, load
                        weights from "variant" filename, e.g.
                        "pytorch_model.<variant>.safetensors". Defaults to automatic selection.
                        This option is ignored if using flax.
  -sbf SUBFOLDER, --subfolder SUBFOLDER
                        Main model subfolder. If specified when loading from a huggingface
                        repository or folder, load weights from the specified subfolder.
  -atk TOKEN, --auth-token TOKEN
                        Huggingface auth token. Required to download restricted repositories that
                        have access permissions granted to your huggingface account.
  -bs INTEGER, --batch-size INTEGER
                        The number of image variations to produce per set of individual diffusion
                        parameters in one rendering step simultaneously on a single GPU. When
                        using flax, batch size is controlled by the environmental variable
                        CUDA_VISIBLE_DEVICES which is a comma separated list of GPU device numbers
                        (as listed by nvidia-smi). Usage of this argument with --model-type flax*
                        will cause an error, diffusion with flax will generate an image on every
                        GPU that is visible to CUDA and this is currently unchangeable. When
                        generating animations with a --batch-size greater than one, a separate
                        animation (with the filename suffix "animation_N") will be written to for
                        each image in the batch. If --batch-grid-size is specified when producing
                        an animation then the image grid is used for the output frames. During
                        animation rendering each image in the batch will still be written to the
                        output directory along side the produced animation as either suffixed
                        files or image grids depending on the options you choose. (Torch Default:
                        1)
  -bgs SIZE, --batch-grid-size SIZE
                        Produce a single image containing a grid of images with the number of
                        COLUMNSxROWS given to this argument when --batch-size is greater than 1,
                        or when using flax with multiple GPUs visible (via the environmental
                        variable CUDA_VISIBLE_DEVICES). If not specified with a --batch-size
                        greater than 1, images will be written individually with an image number
                        suffix (image_N) in the filename signifying which image in the batch they
                        are.
  -un UNET_URI, --unet UNET_URI
                        Specify a UNet using a URI. Examples: "huggingface/unet",
                        "huggingface/unet;revision=main", "unet_folder_on_disk". Blob links /
                        single file loads are not supported for UNets. The "revision" argument
                        specifies the model revision to use for the UNet when loading from
                        huggingface repository or blob link, (The git branch / tag, default is
                        "main"). The "variant" argument specifies the UNet model variant, it is
                        only supported for torch type models it is not supported for flax. If
                        "variant" is specified when loading from a huggingface repository or
                        folder, weights will be loaded from "variant" filename, e.g.
                        "pytorch_model.<variant>.safetensors. "variant" defaults to the value of
                        --variant if it is not specified in the URI. The "subfolder" argument
                        specifies the UNet model subfolder, if specified when loading from a
                        huggingface repository or folder, weights from the specified subfolder.
                        The "dtype" argument specifies the UNet model precision, it defaults to
                        the value of -t/--dtype and should be one of: auto, bfloat16, float16, or
                        float32. If you wish to load weights directly from a path on disk, you
                        must point this argument at the folder they exist in, which should also
                        contain the config.json file for the UNet. For example, a downloaded
                        repository folder from huggingface.
  -un2 UNET_URI, --unet2 UNET_URI
                        Specify a second UNet, this is only valid when using SDXL or Stable
                        Cascade model types. This UNet will be used for the SDXL refiner, or
                        Stable Cascade decoder model.
  -vae VAE_URI, --vae VAE_URI
                        Specify a VAE using a URI. When using torch models the URI syntax is:
                        "AutoEncoderClass;model=(huggingface repository slug/blob link or
                        file/folder path)". Examples: "AutoencoderKL;model=vae.pt",
                        "AsymmetricAutoencoderKL;model=huggingface/vae",
                        "AutoencoderTiny;model=huggingface/vae",
                        "ConsistencyDecoderVAE;model=huggingface/vae". When using a Flax model,
                        there is currently only one available encoder class:
                        "FlaxAutoencoderKL;model=huggingface/vae". The AutoencoderKL encoder class
                        accepts huggingface repository slugs/blob links, .pt, .pth, .bin, .ckpt,
                        and .safetensors files. Other encoders can only accept huggingface
                        repository slugs/blob links, or a path to a folder on disk with the model
                        configuration and model file(s). Aside from the "model" argument, there
                        are four other optional arguments that can be specified, these include
                        "revision", "variant", "subfolder", "dtype". They can be specified as so
                        in any order, they are not positional: "AutoencoderKL;model=huggingface/va
                        e;revision=main;variant=fp16;subfolder=sub_folder;dtype=float16". The
                        "revision" argument specifies the model revision to use for the VAE when
                        loading from huggingface repository or blob link, (The git branch / tag,
                        default is "main"). The "variant" argument specifies the VAE model
                        variant, it is only supported for torch type models it is not supported
                        for flax. If "variant" is specified when loading from a huggingface
                        repository or folder, weights will be loaded from "variant" filename, e.g.
                        "pytorch_model.<variant>.safetensors. "variant" in the case of --vae does
                        not default to the value of --variant to prevent failures during common
                        use cases. The "subfolder" argument specifies the VAE model subfolder, if
                        specified when loading from a huggingface repository or folder, weights
                        from the specified subfolder. The "dtype" argument specifies the VAE model
                        precision, it defaults to the value of -t/--dtype and should be one of:
                        auto, bfloat16, float16, or float32. If you wish to load a weights file
                        directly from disk, the simplest way is: --vae
                        "AutoencoderKL;my_vae.safetensors", or with a dtype
                        "AutoencoderKL;my_vae.safetensors;dtype=float16". All loading arguments
                        except "dtype" are unused in this case and may produce an error message if
                        used. If you wish to load a specific weight file from a huggingface
                        repository, use the blob link loading syntax: --vae
                        "AutoencoderKL;https://huggingface.co/UserName/repository-
                        name/blob/main/vae_model.safetensors", the "revision" argument may be used
                        with this syntax.
  -vt, --vae-tiling     Enable VAE tiling (torch Stable Diffusion only). Assists in the generation
                        of large images with lower memory overhead. The VAE will split the input
                        tensor into tiles to compute decoding and encoding in several steps. This
                        is useful for saving a large amount of memory and to allow processing
                        larger images. Note that if you are using --control-nets you may still run
                        into memory issues generating large images, or with --batch-size greater
                        than 1.
  -vs, --vae-slicing    Enable VAE slicing (torch Stable Diffusion models only). Assists in the
                        generation of large images with lower memory overhead. The VAE will split
                        the input tensor in slices to compute decoding in several steps. This is
                        useful to save some memory, especially when --batch-size is greater than
                        1. Note that if you are using --control-nets you may still run into memory
                        issues generating large images.
  -lra LORA_URI [LORA_URI ...], --loras LORA_URI [LORA_URI ...]
                        Specify one or more LoRA models using URIs (flax not supported). These
                        should be a huggingface repository slug, path to model file on disk (for
                        example, a .pt, .pth, .bin, .ckpt, or .safetensors file), or model folder
                        containing model files. huggingface blob links are not supported, see
                        "subfolder" and "weight-name" below instead. Optional arguments can be
                        provided after a LoRA model specification, these include: "scale",
                        "revision", "subfolder", and "weight-name". They can be specified as so in
                        any order, they are not positional:
                        "huggingface/lora;scale=1.0;revision=main;subfolder=repo_subfolder;weight-
                        name=lora.safetensors". The "scale" argument indicates the scale factor of
                        the LoRA. The "revision" argument specifies the model revision to use for
                        the LoRA when loading from huggingface repository, (The git branch / tag,
                        default is "main"). The "subfolder" argument specifies the LoRA model
                        subfolder, if specified when loading from a huggingface repository or
                        folder, weights from the specified subfolder. The "weight-name" argument
                        indicates the name of the weights file to be loaded when loading from a
                        huggingface repository or folder on disk. If you wish to load a weights
                        file directly from disk, the simplest way is: --loras
                        "my_lora.safetensors", or with a scale "my_lora.safetensors;scale=1.0",
                        all other loading arguments are unused in this case and may produce an
                        error message if used.
  -ti URI [URI ...], --textual-inversions URI [URI ...]
                        Specify one or more Textual Inversion models using URIs (flax and SDXL not
                        supported). These should be a huggingface repository slug, path to model
                        file on disk (for example, a .pt, .pth, .bin, .ckpt, or .safetensors
                        file), or model folder containing model files. huggingface blob links are
                        not supported, see "subfolder" and "weight-name" below instead. Optional
                        arguments can be provided after the Textual Inversion model specification,
                        these include: "revision", "subfolder", and "weight-name". They can be
                        specified as so in any order, they are not positional:
                        "huggingface/ti_model;revision=main;subfolder=repo_subfolder;weight-
                        name=lora.safetensors". The "revision" argument specifies the model
                        revision to use for the Textual Inversion model when loading from
                        huggingface repository, (The git branch / tag, default is "main"). The
                        "subfolder" argument specifies the Textual Inversion model subfolder, if
                        specified when loading from a huggingface repository or folder, weights
                        from the specified subfolder. The "weight-name" argument indicates the
                        name of the weights file to be loaded when loading from a huggingface
                        repository or folder on disk. If you wish to load a weights file directly
                        from disk, the simplest way is: --textual-inversions
                        "my_ti_model.safetensors", all other loading arguments are unused in this
                        case and may produce an error message if used.
  -cn CONTROL_NET_URI [CONTROL_NET_URI ...], --control-nets CONTROL_NET_URI [CONTROL_NET_URI ...]
                        Specify one or more ControlNet models using URIs. This should be a
                        huggingface repository slug / blob link, path to model file on disk (for
                        example, a .pt, .pth, .bin, .ckpt, or .safetensors file), or model folder
                        containing model files. Optional arguments can be provided after the
                        ControlNet model specification, for torch these include: "scale", "start",
                        "end", "revision", "variant", "subfolder", and "dtype". For flax: "scale",
                        "revision", "subfolder", "dtype", "from_torch" (bool) They can be
                        specified as so in any order, they are not positional: "huggingface/contro
                        lnet;scale=1.0;start=0.0;end=1.0;revision=main;variant=fp16;subfolder=repo
                        _subfolder;dtype=float16". The "scale" argument specifies the scaling
                        factor applied to the ControlNet model, the default value is 1.0. The
                        "start" (only for --model-type "torch*") argument specifies at what
                        fraction of the total inference steps to begin applying the ControlNet,
                        defaults to 0.0, IE: the very beginning. The "end" (only for --model-type
                        "torch*") argument specifies at what fraction of the total inference steps
                        to stop applying the ControlNet, defaults to 1.0, IE: the very end. The
                        "revision" argument specifies the model revision to use for the ControlNet
                        model when loading from huggingface repository, (The git branch / tag,
                        default is "main"). The "variant" (only for --model-type "torch*")
                        argument specifies the ControlNet model variant, if "variant" is specified
                        when loading from a huggingface repository or folder, weights will be
                        loaded from "variant" filename, e.g. "pytorch_model.<variant>.safetensors.
                        "variant" defaults to automatic selection and is ignored if using flax.
                        "variant" in the case of --control-nets does not default to the value of
                        --variant to prevent failures during common use cases. The "subfolder"
                        argument specifies the ControlNet model subfolder, if specified when
                        loading from a huggingface repository or folder, weights from the
                        specified subfolder. The "dtype" argument specifies the ControlNet model
                        precision, it defaults to the value of -t/--dtype and should be one of:
                        auto, bfloat16, float16, or float32. The "from_torch" (only for --model-
                        type flax) this argument specifies that the ControlNet is to be loaded and
                        converted from a huggingface repository or file that is designed for
                        pytorch. (Defaults to false) If you wish to load a weights file directly
                        from disk, the simplest way is: --control-nets "my_controlnet.safetensors"
                        or --control-nets "my_controlnet.safetensors;scale=1.0;dtype=float16", all
                        other loading arguments aside from "scale" and "dtype" are unused in this
                        case and may produce an error message if used ("from_torch" is available
                        when using flax). If you wish to load a specific weight file from a
                        huggingface repository, use the blob link loading syntax: --control-nets
                        "https://huggingface.co/UserName/repository-
                        name/blob/main/controlnet.safetensors", the "revision" argument may be
                        used with this syntax.
  -sch SCHEDULER_URI, --scheduler SCHEDULER_URI
                        Specify a scheduler (sampler) by URI. Passing "help" to this argument will
                        print the compatible schedulers for a model without generating any images.
                        Passing "helpargs" will yield a help message with a list of overridable
                        arguments for each scheduler and their typical defaults. Arguments listed
                        by "helpargs" can be overridden using the URI syntax typical to other
                        dgenerate URI arguments. Torch schedulers: (DDIMScheduler, DDPMScheduler,
                        PNDMScheduler, LMSDiscreteScheduler, EulerDiscreteScheduler,
                        HeunDiscreteScheduler, EulerAncestralDiscreteScheduler,
                        DPMSolverMultistepScheduler, DPMSolverSinglestepScheduler,
                        KDPM2DiscreteScheduler, KDPM2AncestralDiscreteScheduler,
                        DEISMultistepScheduler, UniPCMultistepScheduler, DPMSolverSDEScheduler,
                        EDMEulerScheduler).
  -mqo, --model-sequential-offload
                        Force sequential model offloading for the main pipeline, this may
                        drastically reduce memory consumption and allow large models to run when
                        they would otherwise not fit in your GPUs VRAM. Inference will be much
                        slower. Mutually exclusive with --model-cpu-offload
  -mco, --model-cpu-offload
                        Force model cpu offloading for the main pipeline, this may reduce memory
                        consumption and allow large models to run when they would otherwise not
                        fit in your GPUs VRAM. Inference will be slower. Mutually exclusive with
                        --model-sequential-offload
  --s-cascade-decoder MODEL_URI
                        Specify a Stable Cascade (torch-s-cascade) decoder model path using a URI.
                        This should be a huggingface repository slug / blob link, path to model
                        file on disk (for example, a .pt, .pth, .bin, .ckpt, or .safetensors
                        file), or model folder containing model files. Optional arguments can be
                        provided after the decoder model specification, these include: "revision",
                        "variant", "subfolder", and "dtype". They can be specified as so in any
                        order, they are not positional: "huggingface/decoder_model;revision=main;v
                        ariant=fp16;subfolder=repo_subfolder;dtype=float16". The "revision"
                        argument specifies the model revision to use for the Textual Inversion
                        model when loading from huggingface repository, (The git branch / tag,
                        default is "main"). The "variant" argument specifies the decoder model
                        variant and defaults to the value of --variant. When "variant" is
                        specified when loading from a huggingface repository or folder, weights
                        will be loaded from "variant" filename, e.g.
                        "pytorch_model.<variant>.safetensors. The "subfolder" argument specifies
                        the decoder model subfolder, if specified when loading from a huggingface
                        repository or folder, weights from the specified subfolder. The "dtype"
                        argument specifies the Stable Cascade decoder model precision, it defaults
                        to the value of -t/--dtype and should be one of: auto, bfloat16, float16,
                        or float32. If you wish to load a weights file directly from disk, the
                        simplest way is: --sdxl-refiner "my_decoder.safetensors" or --sdxl-refiner
                        "my_decoder.safetensors;dtype=float16", all other loading arguments aside
                        from "dtype" are unused in this case and may produce an error message if
                        used. If you wish to load a specific weight file from a huggingface
                        repository, use the blob link loading syntax: --s-cascade-decoder
                        "https://huggingface.co/UserName/repository-
                        name/blob/main/decoder.safetensors", the "revision" argument may be used
                        with this syntax.
  -dqo, --s-cascade-decoder-sequential-offload
                        Force sequential model offloading for the Stable Cascade decoder pipeline,
                        this may drastically reduce memory consumption and allow large models to
                        run when they would otherwise not fit in your GPUs VRAM. Inference will be
                        much slower. Mutually exclusive with --s-cascade-decoder-cpu-offload
  -dco, --s-cascade-decoder-cpu-offload
                        Force model cpu offloading for the Stable Cascade decoder pipeline, this
                        may reduce memory consumption and allow large models to run when they
                        would otherwise not fit in your GPUs VRAM. Inference will be slower.
                        Mutually exclusive with --s-cascade-decoder-sequential-offload
  --s-cascade-decoder-prompts PROMPT [PROMPT ...]
                        One or more prompts to try with the Stable Cascade decoder model, by
                        default the decoder model gets the primary prompt, this argument overrides
                        that with a prompt of your choosing. The negative prompt component can be
                        specified with the same syntax as --prompts
  --s-cascade-decoder-inference-steps INTEGER [INTEGER ...]
                        One or more inference steps values to try with the Stable Cascade decoder.
                        (default: [10])
  --s-cascade-decoder-guidance-scales INTEGER [INTEGER ...]
                        One or more guidance scale values to try with the Stable Cascade decoder.
                        (default: [0])
  --s-cascade-decoder-scheduler SCHEDULER_URI
                        Specify a scheduler (sampler) by URI for the Stable Cascade decoder pass.
                        Operates the exact same way as --scheduler including the "help" option.
                        Passing 'helpargs' will yield a help message with a list of overridable
                        arguments for each scheduler and their typical defaults. Defaults to the
                        value of --scheduler.
  --sdxl-refiner MODEL_URI
                        Specify a Stable Diffusion XL (torch-sdxl) refiner model path using a URI.
                        This should be a huggingface repository slug / blob link, path to model
                        file on disk (for example, a .pt, .pth, .bin, .ckpt, or .safetensors
                        file), or model folder containing model files. Optional arguments can be
                        provided after the SDXL refiner model specification, these include:
                        "revision", "variant", "subfolder", and "dtype". They can be specified as
                        so in any order, they are not positional: "huggingface/refiner_model_xl;re
                        vision=main;variant=fp16;subfolder=repo_subfolder;dtype=float16". The
                        "revision" argument specifies the model revision to use for the Textual
                        Inversion model when loading from huggingface repository, (The git branch
                        / tag, default is "main"). The "variant" argument specifies the SDXL
                        refiner model variant and defaults to the value of --variant. When
                        "variant" is specified when loading from a huggingface repository or
                        folder, weights will be loaded from "variant" filename, e.g.
                        "pytorch_model.<variant>.safetensors. The "subfolder" argument specifies
                        the SDXL refiner model subfolder, if specified when loading from a
                        huggingface repository or folder, weights from the specified subfolder.
                        The "dtype" argument specifies the SDXL refiner model precision, it
                        defaults to the value of -t/--dtype and should be one of: auto, bfloat16,
                        float16, or float32. If you wish to load a weights file directly from
                        disk, the simplest way is: --sdxl-refiner "my_sdxl_refiner.safetensors" or
                        --sdxl-refiner "my_sdxl_refiner.safetensors;dtype=float16", all other
                        loading arguments aside from "dtype" are unused in this case and may
                        produce an error message if used. If you wish to load a specific weight
                        file from a huggingface repository, use the blob link loading syntax:
                        --sdxl-refiner "https://huggingface.co/UserName/repository-
                        name/blob/main/refiner_model.safetensors", the "revision" argument may be
                        used with this syntax.
  -rqo, --sdxl-refiner-sequential-offload
                        Force sequential model offloading for the SDXL refiner pipeline, this may
                        drastically reduce memory consumption and allow large models to run when
                        they would otherwise not fit in your GPUs VRAM. Inference will be much
                        slower. Mutually exclusive with --refiner-cpu-offload
  -rco, --sdxl-refiner-cpu-offload
                        Force model cpu offloading for the SDXL refiner pipeline, this may reduce
                        memory consumption and allow large models to run when they would otherwise
                        not fit in your GPUs VRAM. Inference will be slower. Mutually exclusive
                        with --refiner-sequential-offload
  --sdxl-refiner-scheduler SCHEDULER_URI
                        Specify a scheduler (sampler) by URI for the SDXL refiner pass. Operates
                        the exact same way as --scheduler including the "help" option. Passing
                        'helpargs' will yield a help message with a list of overridable arguments
                        for each scheduler and their typical defaults. Defaults to the value of
                        --scheduler.
  --sdxl-refiner-edit   Force the SDXL refiner to operate in edit mode instead of cooperative
                        denoising mode as it would normally do for inpainting and ControlNet
                        usage. The main model will preform the full amount of inference steps
                        requested by --inference-steps. The output of the main model will be
                        passed to the refiner model and processed with an image seed strength in
                        img2img mode determined by (1.0 - high-noise-fraction)
  --sdxl-second-prompts PROMPT [PROMPT ...]
                        One or more secondary prompts to try using SDXL's secondary text encoder.
                        By default the model is passed the primary prompt for this value, this
                        option allows you to choose a different prompt. The negative prompt
                        component can be specified with the same syntax as --prompts
  --sdxl-aesthetic-scores FLOAT [FLOAT ...]
                        One or more Stable Diffusion XL (torch-sdxl) "aesthetic-score" micro-
                        conditioning parameters. Used to simulate an aesthetic score of the
                        generated image by influencing the positive text condition. Part of SDXL's
                        micro-conditioning as explained in section 2.2 of
                        [https://huggingface.co/papers/2307.01952].
  --sdxl-crops-coords-top-left COORD [COORD ...]
                        One or more Stable Diffusion XL (torch-sdxl) "negative-crops-coords-top-
                        left" micro-conditioning parameters in the format "0,0". --sdxl-crops-
                        coords-top-left can be used to generate an image that appears to be
                        "cropped" from the position --sdxl-crops-coords-top-left downwards.
                        Favorable, well-centered images are usually achieved by setting --sdxl-
                        crops-coords-top-left to "0,0". Part of SDXL's micro-conditioning as
                        explained in section 2.2 of [https://huggingface.co/papers/2307.01952].
  --sdxl-original-size SIZE [SIZE ...], --sdxl-original-sizes SIZE [SIZE ...]
                        One or more Stable Diffusion XL (torch-sdxl) "original-size" micro-
                        conditioning parameters in the format (WIDTH)x(HEIGHT). If not the same as
                        --sdxl-target-size the image will appear to be down or up-sampled. --sdxl-
                        original-size defaults to --output-size or the size of any input images if
                        not specified. Part of SDXL's micro-conditioning as explained in section
                        2.2 of [https://huggingface.co/papers/2307.01952]
  --sdxl-target-size SIZE [SIZE ...], --sdxl-target-sizes SIZE [SIZE ...]
                        One or more Stable Diffusion XL (torch-sdxl) "target-size" micro-
                        conditioning parameters in the format (WIDTH)x(HEIGHT). For most cases,
                        --sdxl-target-size should be set to the desired height and width of the
                        generated image. If not specified it will default to --output-size or the
                        size of any input images. Part of SDXL's micro-conditioning as explained
                        in section 2.2 of [https://huggingface.co/papers/2307.01952]
  --sdxl-negative-aesthetic-scores FLOAT [FLOAT ...]
                        One or more Stable Diffusion XL (torch-sdxl) "negative-aesthetic-score"
                        micro-conditioning parameters. Part of SDXL's micro-conditioning as
                        explained in section 2.2 of [https://huggingface.co/papers/2307.01952].
                        Can be used to simulate an aesthetic score of the generated image by
                        influencing the negative text condition.
  --sdxl-negative-original-sizes SIZE [SIZE ...]
                        One or more Stable Diffusion XL (torch-sdxl) "negative-original-sizes"
                        micro-conditioning parameters. Negatively condition the generation process
                        based on a specific image resolution. Part of SDXL's micro-conditioning as
                        explained in section 2.2 of [https://huggingface.co/papers/2307.01952].
                        For more information, refer to this issue thread:
                        https://github.com/huggingface/diffusers/issues/4208
  --sdxl-negative-target-sizes SIZE [SIZE ...]
                        One or more Stable Diffusion XL (torch-sdxl) "negative-original-sizes"
                        micro-conditioning parameters. To negatively condition the generation
                        process based on a target image resolution. It should be as same as the "
                        --sdxl-target-size" for most cases. Part of SDXL's micro-conditioning as
                        explained in section 2.2 of [https://huggingface.co/papers/2307.01952].
                        For more information, refer to this issue thread:
                        https://github.com/huggingface/diffusers/issues/4208.
  --sdxl-negative-crops-coords-top-left COORD [COORD ...]
                        One or more Stable Diffusion XL (torch-sdxl) "negative-crops-coords-top-
                        left" micro-conditioning parameters in the format "0,0". Negatively
                        condition the generation process based on a specific crop coordinates.
                        Part of SDXL's micro-conditioning as explained in section 2.2 of
                        [https://huggingface.co/papers/2307.01952]. For more information, refer to
                        this issue thread: https://github.com/huggingface/diffusers/issues/4208.
  --sdxl-refiner-prompts PROMPT [PROMPT ...]
                        One or more prompts to try with the SDXL refiner model, by default the
                        refiner model gets the primary prompt, this argument overrides that with a
                        prompt of your choosing. The negative prompt component can be specified
                        with the same syntax as --prompts
  --sdxl-refiner-clip-skips INTEGER [INTEGER ...]
                        One or more clip skip override values to try for the SDXL refiner, which
                        normally uses the clip skip value for the main model when it is defined by
                        --clip-skips.
  --sdxl-refiner-second-prompts PROMPT [PROMPT ...]
                        One or more prompts to try with the SDXL refiner models secondary text
                        encoder, by default the refiner model gets the primary prompt passed to
                        its second text encoder, this argument overrides that with a prompt of
                        your choosing. The negative prompt component can be specified with the
                        same syntax as --prompts
  --sdxl-refiner-aesthetic-scores FLOAT [FLOAT ...]
                        See: --sdxl-aesthetic-scores, applied to SDXL refiner pass.
  --sdxl-refiner-crops-coords-top-left COORD [COORD ...]
                        See: --sdxl-crops-coords-top-left, applied to SDXL refiner pass.
  --sdxl-refiner-original-sizes SIZE [SIZE ...]
                        See: --sdxl-refiner-original-sizes, applied to SDXL refiner pass.
  --sdxl-refiner-target-sizes SIZE [SIZE ...]
                        See: --sdxl-refiner-target-sizes, applied to SDXL refiner pass.
  --sdxl-refiner-negative-aesthetic-scores FLOAT [FLOAT ...]
                        See: --sdxl-negative-aesthetic-scores, applied to SDXL refiner pass.
  --sdxl-refiner-negative-original-sizes SIZE [SIZE ...]
                        See: --sdxl-negative-original-sizes, applied to SDXL refiner pass.
  --sdxl-refiner-negative-target-sizes SIZE [SIZE ...]
                        See: --sdxl-negative-target-sizes, applied to SDXL refiner pass.
  --sdxl-refiner-negative-crops-coords-top-left COORD [COORD ...]
                        See: --sdxl-negative-crops-coords-top-left, applied to SDXL refiner pass.
  -hnf FLOAT [FLOAT ...], --sdxl-high-noise-fractions FLOAT [FLOAT ...]
                        One or more high-noise-fraction values for Stable Diffusion XL (torch-
                        sdxl), this fraction of inference steps will be processed by the base
                        model, while the rest will be processed by the refiner model. Multiple
                        values to this argument will result in additional generation steps for
                        each value. In certain situations when the mixture of denoisers algorithm
                        is not supported, such as when using --control-nets and inpainting with
                        SDXL, the inverse proportion of this value IE: (1.0 - high-noise-fraction)
                        becomes the --image-seed-strengths input to the SDXL refiner. (default:
                        [0.8])
  -ri INT [INT ...], --sdxl-refiner-inference-steps INT [INT ...]
                        One or more inference steps values for the SDXL refiner when in use.
                        Override the number of inference steps used by the SDXL refiner, which
                        defaults to the value taken from --inference-steps.
  -rg FLOAT [FLOAT ...], --sdxl-refiner-guidance-scales FLOAT [FLOAT ...]
                        One or more guidance scale values for the SDXL refiner when in use.
                        Override the guidance scale value used by the SDXL refiner, which defaults
                        to the value taken from --guidance-scales.
  -rgr FLOAT [FLOAT ...], --sdxl-refiner-guidance-rescales FLOAT [FLOAT ...]
                        One or more guidance rescale values for the SDXL refiner when in use.
                        Override the guidance rescale value used by the SDXL refiner, which
                        defaults to the value taken from --guidance-rescales.
  -sc, --safety-checker
                        Enable safety checker loading, this is off by default. When turned on
                        images with NSFW content detected may result in solid black output. Some
                        pretrained models have no safety checker model present, in that case this
                        option has no effect.
  -d DEVICE, --device DEVICE
                        cuda / cpu. (default: cuda). Use: cuda:0, cuda:1, cuda:2, etc. to specify
                        a specific GPU. This argument is ignored when using flax, for flax use the
                        environmental variable CUDA_VISIBLE_DEVICES to specify which GPUs are
                        visible to cuda, flax will use every visible GPU.
  -t DTYPE, --dtype DTYPE
                        Model precision: auto, bfloat16, float16, or float32. (default: auto)
  -s SIZE, --output-size SIZE
                        Image output size, for txt2img generation, this is the exact output size.
                        The dimensions specified for this value must be aligned by 8 or you will
                        receive an error message. If an --image-seeds URI is used its Seed, Mask,
                        and/or Control component image sources will be resized to this dimension
                        with aspect ratio maintained before being used for generation by default.
                        Unless --no-aspect is specified, width will be fixed and a new height
                        (aligned by 8) will be calculated for the input images. In most cases
                        resizing the image inputs will result in an image output of an equal size
                        to the inputs, except in the case of upscalers and Deep Floyd --model-type
                        values (torch-if*). If only one integer value is provided, that is the
                        value for both dimensions. X/Y dimension values should be separated by
                        "x". This value defaults to 512x512 for Stable Diffusion when no --image-
                        seeds are specified (IE txt2img mode), 1024x1024 for Stable Diffusion XL
                        (SDXL) model types, and 64x64 for --model-type torch-if (Deep Floyd stage
                        1). Deep Floyd stage 1 images passed to superscaler models (--model-type
                        torch-ifs*) that are specified with the 'floyd' keyword argument in an
                        --image-seeds definition are never resized or processed in any way.
  -na, --no-aspect      This option disables aspect correct resizing of images provided to
                        --image-seeds globally. Seed, Mask, and Control guidance images will be
                        resized to the closest dimension specified by --output-size that is
                        aligned by 8 pixels with no consideration of the source aspect ratio. This
                        can be overriden at the --image-seeds level with the image seed keyword
                        argument 'aspect=true/false'.
  -o PATH, --output-path PATH
                        Output path for generated images and files. This directory will be created
                        if it does not exist. (default: ./output)
  -op PREFIX, --output-prefix PREFIX
                        Name prefix for generated images and files. This prefix will be added to
                        the beginning of every generated file, followed by an underscore.
  -ox, --output-overwrite
                        Enable overwrites of files in the output directory that already exists.
                        The default behavior is not to do this, and instead append a filename
                        suffix: "_duplicate_(number)" when it is detected that the generated file
                        name already exists.
  -oc, --output-configs
                        Write a configuration text file for every output image or animation. The
                        text file can be used reproduce that particular output image or animation
                        by piping it to dgenerate STDIN, for example "dgenerate < config.txt".
                        These files will be written to --output-path and are affected by --output-
                        prefix and --output-overwrite as well. The files will be named after their
                        corresponding image or animation file. Configuration files produced for
                        animation frame images will utilize --frame-start and --frame-end to
                        specify the frame number.
  -om, --output-metadata
                        Write the information produced by --output-configs to the PNG metadata of
                        each image. Metadata will not be written to animated files (yet). The data
                        is written to a PNG metadata property named DgenerateConfig and can be
                        read using ImageMagick like so: "magick identify -format
                        "%[Property:DgenerateConfig] generated_file.png".
  -p PROMPT [PROMPT ...], --prompts PROMPT [PROMPT ...]
                        One or more prompts to try, an image group is generated for each prompt,
                        prompt data is split by ; (semi-colon). The first value is the positive
                        text influence, things you want to see. The Second value is negative
                        influence IE. things you don't want to see. Example: --prompts "shrek
                        flying a tesla over detroit; clouds, rain, missiles". (default: [(empty
                        string)])
  -cs INTEGER [INTEGER ...], --clip-skips INTEGER [INTEGER ...]
                        One or more clip skip values to try. Clip skip is the number of layers to
                        be skipped from CLIP while computing the prompt embeddings, it must be a
                        value greater than or equal to zero. A value of 1 means that the output of
                        the pre-final layer will be used for computing the prompt embeddings. This
                        is only supported for --model-type values "torch" and "torch-sdxl",
                        including with --control-nets.
  -se SEED [SEED ...], --seeds SEED [SEED ...]
                        One or more seeds to try, define fixed seeds to achieve deterministic
                        output. This argument may not be used when --gse/--gen-seeds is used.
                        (default: [randint(0, 99999999999999)])
  -sei, --seeds-to-images
                        When this option is enabled, each provided --seeds value or value
                        generated by --gen-seeds is used for the corresponding image input given
                        by --image-seeds. If the amount of --seeds given is not identical to that
                        of the amount of --image-seeds given, the seed is determined as: seed =
                        seeds[image_seed_index % len(seeds)], IE: it wraps around.
  -gse COUNT, --gen-seeds COUNT
                        Auto generate N random seeds to try. This argument may not be used when
                        -se/--seeds is used.
  -af FORMAT, --animation-format FORMAT
                        Output format when generating an animation from an input video / gif /
                        webp etc. Value must be one of: mp4, png, apng, gif, or webp. You may also
                        specify "frames" to indicate that only frames should be output and no
                        coalesced animation file should be rendered. (default: mp4)
  -if FORMAT, --image-format FORMAT
                        Output format when writing static images. Any selection other than "png"
                        is not compatible with --output-metadata. Value must be one of: png, apng,
                        blp, bmp, dib, bufr, pcx, dds, ps, eps, gif, grib, h5, hdf, jp2, j2k, jpc,
                        jpf, jpx, j2c, icns, ico, im, jfif, jpe, jpg, jpeg, tif, tiff, mpo, msp,
                        palm, pdf, pbm, pgm, ppm, pnm, pfm, bw, rgb, rgba, sgi, tga, icb, vda,
                        vst, webp, wmf, emf, or xbm. (default: png)
  -nf, --no-frames      Do not write frame images individually when rendering an animation, only
                        write the animation file. This option is incompatible with --animation-
                        format frames.
  -fs FRAME_NUMBER, --frame-start FRAME_NUMBER
                        Starting frame slice point for animated files (zero-indexed), the
                        specified frame will be included. (default: 0)
  -fe FRAME_NUMBER, --frame-end FRAME_NUMBER
                        Ending frame slice point for animated files (zero-indexed), the specified
                        frame will be included.
  -is SEED [SEED ...], --image-seeds SEED [SEED ...]
                        One or more image seed URIs to process, these may consist of URLs or file
                        paths. Videos / GIFs / WEBP files will result in frames being rendered as
                        well as an animated output file being generated if more than one frame is
                        available in the input file. Inpainting for static images can be achieved
                        by specifying a black and white mask image in each image seed string using
                        a semicolon as the separating character, like so: "my-seed-image.png;my-
                        image-mask.png", white areas of the mask indicate where generated content
                        is to be placed in your seed image. Output dimensions specific to the
                        image seed can be specified by placing the dimension at the end of the
                        string following a semicolon like so: "my-seed-image.png;512x512" or "my-
                        seed-image.png;my-image-mask.png;512x512". When using --control-nets, a
                        singular image specification is interpreted as the control guidance image,
                        and you can specify multiple control image sources by separating them with
                        commas in the case where multiple ControlNets are specified, IE: (--image-
                        seeds "control-image1.png, control-image2.png") OR (--image-seeds
                        "seed.png;control=control-image1.png, control-image2.png"). Using
                        --control-nets with img2img or inpainting can be accomplished with the
                        syntax: "my-seed-image.png;mask=my-image-mask.png;control=my-control-
                        image.png;resize=512x512". The "mask" and "resize" arguments are optional
                        when using --control-nets. Videos, GIFs, and WEBP are also supported as
                        inputs when using --control-nets, even for the "control" argument.
                        --image-seeds is capable of reading from multiple animated files at once
                        or any combination of animated files and images, the animated file with
                        the least amount of frames dictates how many frames are generated and
                        static images are duplicated over the total amount of frames. The keyword
                        argument "aspect" can be used to determine resizing behavior when the
                        global argument --output-size or the local keyword argument "resize" is
                        specified, it is a boolean argument indicating whether aspect ratio of the
                        input image should be respected or ignored. The keyword argument "floyd"
                        can be used to specify images from a previous deep floyd stage when using
                        --model-type torch-ifs*. When keyword arguments are present, all
                        applicable images such as "mask", "control", etc. must also be defined
                        with keyword arguments instead of with the short syntax.
  -sip PROCESSOR_URI [PROCESSOR_URI ...], --seed-image-processors PROCESSOR_URI [PROCESSOR_URI ...]
                        Specify one or more image processor actions to preform on the primary
                        image specified by --image-seeds. For example: --seed-image-processors
                        "flip" "mirror" "grayscale". To obtain more information about what image
                        processors are available and how to use them, see: --image-processor-help.
  -mip PROCESSOR_URI [PROCESSOR_URI ...], --mask-image-processors PROCESSOR_URI [PROCESSOR_URI ...]
                        Specify one or more image processor actions to preform on the inpaint mask
                        image specified by --image-seeds. For example: --mask-image-processors
                        "invert". To obtain more information about what image processors are
                        available and how to use them, see: --image-processor-help.
  -cip PROCESSOR_URI [PROCESSOR_URI ...], --control-image-processors PROCESSOR_URI [PROCESSOR_URI ...]
                        Specify one or more image processor actions to preform on the control
                        image specified by --image-seeds, this option is meant to be used with
                        --control-nets. Example: --control-image-processors
                        "canny;lower=50;upper=100". The delimiter "+" can be used to specify a
                        different processor group for each image when using multiple control
                        images with --control-nets. For example if you have --image-seeds
                        "img1.png, img2.png" or --image-seeds "...;control=img1.png, img2.png"
                        specified and multiple ControlNet models specified with --control-nets,
                        you can specify processors for those control images with the syntax:
                        (--control-image-processors "processes-img1" + "processes-img2"), this
                        syntax also supports chaining of processors, for example: (--control-
                        image-processors "first-process-img1" "second-process-img1" + "process-
                        img2"). The amount of specified processors must not exceed the amount of
                        specified control images, or you will receive a syntax error message.
                        Images which do not have a processor defined for them will not be
                        processed, and the plus character can be used to indicate an image is not
                        to be processed and instead skipped over when that image is a leading
                        element, for example (--control-image-processors + "process-second") would
                        indicate that the first control guidance image is not to be processed,
                        only the second. To obtain more information about what image processors
                        are available and how to use them, see: --image-processor-help.
  --image-processor-help [PROCESSOR_NAME ...]
                        Use this option alone (or with --plugin-modules) and no model
                        specification in order to list available image processor module names.
                        Specifying one or more module names after this option will cause usage
                        documentation for the specified modules to be printed.
  -pp PROCESSOR_URI [PROCESSOR_URI ...], --post-processors PROCESSOR_URI [PROCESSOR_URI ...]
                        Specify one or more image processor actions to preform on generated output
                        before it is saved. For example: --post-processors
                        "upcaler;model=4x_ESRGAN.pth". To obtain more information about what
                        processors are available and how to use them, see: --image-processor-help.
  -iss FLOAT [FLOAT ...], --image-seed-strengths FLOAT [FLOAT ...]
                        One or more image strength values to try when using --image-seeds for
                        img2img or inpaint mode. Closer to 0 means high usage of the seed image
                        (less noise convolution), 1 effectively means no usage (high noise
                        convolution). Low values will produce something closer or more relevant to
                        the input image, high values will give the AI more creative freedom.
                        (default: [0.8])
  -uns INTEGER [INTEGER ...], --upscaler-noise-levels INTEGER [INTEGER ...]
                        One or more upscaler noise level values to try when using the super
                        resolution upscaler --model-type torch-upscaler-x4 or torch-ifs.
                        Specifying this option for --model-type torch-upscaler-x2 will produce an
                        error message. The higher this value the more noise is added to the image
                        before upscaling (similar to --image-seed-strengths). (default: [20 for
                        x4, 250 for torch-ifs/torch-ifs-img2img, 0 for torch-ifs inpainting mode])
  -gs FLOAT [FLOAT ...], --guidance-scales FLOAT [FLOAT ...]
                        One or more guidance scale values to try. Guidance scale effects how much
                        your text prompt is considered. Low values draw more data from images
                        unrelated to text prompt. (default: [5])
  -igs FLOAT [FLOAT ...], --image-guidance-scales FLOAT [FLOAT ...]
                        One or more image guidance scale values to try. This can push the
                        generated image towards the initial image when using --model-type
                        *-pix2pix models, it is unsupported for other model types. Use in
                        conjunction with --image-seeds, inpainting (masks) and --control-nets are
                        not supported. Image guidance scale is enabled by setting image-guidance-
                        scale > 1. Higher image guidance scale encourages generated images that
                        are closely linked to the source image, usually at the expense of lower
                        image quality. Requires a value of at least 1. (default: [1.5])
  -gr FLOAT [FLOAT ...], --guidance-rescales FLOAT [FLOAT ...]
                        One or more guidance rescale factors to try. Proposed by [Common Diffusion
                        Noise Schedules and Sample Steps are
                        Flawed](https://arxiv.org/pdf/2305.08891.pdf) "guidance_scale" is defined
                        as "φ" in equation 16. of [Common Diffusion Noise Schedules and Sample
                        Steps are Flawed] (https://arxiv.org/pdf/2305.08891.pdf). Guidance rescale
                        factor should fix overexposure when using zero terminal SNR. This is
                        supported for basic text to image generation when using --model-type
                        "torch" but not inpainting, img2img, or --control-nets. When using
                        --model-type "torch-sdxl" it is supported for basic generation,
                        inpainting, and img2img, unless --control-nets is specified in which case
                        only inpainting is supported. It is supported for --model-type "torch-
                        sdxl-pix2pix" but not --model-type "torch-pix2pix". (default: [0.0])
  -ifs INTEGER [INTEGER ...], --inference-steps INTEGER [INTEGER ...]
                        One or more inference steps values to try. The amount of inference (de-
                        noising) steps effects image clarity to a degree, higher values bring the
                        image closer to what the AI is targeting for the content of the image.
                        Values between 30-40 produce good results, higher values may improve image
                        quality and or change image content. (default: [30])
  -mc EXPR [EXPR ...], --cache-memory-constraints EXPR [EXPR ...]
                        Cache constraint expressions describing when to clear all model caches
                        automatically (DiffusionPipeline, VAE, and ControlNet) considering current
                        memory usage. If any of these constraint expressions are met all models
                        cached in memory will be cleared. Example, and default value:
                        "used_percent > 70" For Syntax See: [https://dgenerate.readthedocs.io/en/v
                        3.5.1/dgenerate_submodules.html#dgenerate.pipelinewrapper.CACHE_MEMORY_CON
                        STRAINTS]
  -pmc EXPR [EXPR ...], --pipeline-cache-memory-constraints EXPR [EXPR ...]
                        Cache constraint expressions describing when to automatically clear the in
                        memory DiffusionPipeline cache considering current memory usage, and
                        estimated memory usage of new models that are about to enter memory. If
                        any of these constraint expressions are met all DiffusionPipeline objects
                        cached in memory will be cleared. Example, and default value:
                        "pipeline_size > (available * 0.75)" For Syntax See: [https://dgenerate.re
                        adthedocs.io/en/v3.5.1/dgenerate_submodules.html#dgenerate.pipelinewrapper
                        .PIPELINE_CACHE_MEMORY_CONSTRAINTS]
  -umc EXPR [EXPR ...], --unet-cache-memory-constraints EXPR [EXPR ...]
                        Cache constraint expressions describing when to automatically clear the in
                        memory UNet cache considering current memory usage, and estimated memory
                        usage of new UNet models that are about to enter memory. If any of these
                        constraint expressions are met all UNet models cached in memory will be
                        cleared. Example, and default value: "unet_size > (available * 0.75)" For
                        Syntax See: [https://dgenerate.readthedocs.io/en/v3.5.1/dgenerate_submodul
                        es.html#dgenerate.pipelinewrapper.UNET_CACHE_MEMORY_CONSTRAINTS]
  -vmc EXPR [EXPR ...], --vae-cache-memory-constraints EXPR [EXPR ...]
                        Cache constraint expressions describing when to automatically clear the in
                        memory VAE cache considering current memory usage, and estimated memory
                        usage of new VAE models that are about to enter memory. If any of these
                        constraint expressions are met all VAE models cached in memory will be
                        cleared. Example, and default value: "vae_size > (available * 0.75)" For
                        Syntax See: [https://dgenerate.readthedocs.io/en/v3.5.1/dgenerate_submodul
                        es.html#dgenerate.pipelinewrapper.VAE_CACHE_MEMORY_CONSTRAINTS]
  -cmc EXPR [EXPR ...], --control-net-cache-memory-constraints EXPR [EXPR ...]
                        Cache constraint expressions describing when to automatically clear the in
                        memory ControlNet cache considering current memory usage, and estimated
                        memory usage of new ControlNet models that are about to enter memory. If
                        any of these constraint expressions are met all ControlNet models cached
                        in memory will be cleared. Example, and default value: "control_net_size >
                        (available * 0.75)" For Syntax See: [https://dgenerate.readthedocs.io/en/v
                        3.5.1/dgenerate_submodules.html#dgenerate.pipelinewrapper.CONTROL_NET_CACH
                        E_MEMORY_CONSTRAINTS]

Windows Install

You can install using the Windows installer provided with each release on the Releases Page, or you can manually install with pipx, (or pip if you want) as described below.

Manual Install

Install Visual Studios (Community or other), make sure “Desktop development with C++” is selected, unselect anything you do not need.

https://visualstudio.microsoft.com/downloads/

Install rust compiler using rustup-init.exe (x64), use the default install options.

https://www.rust-lang.org/tools/install

Install Python:

https://www.python.org/ftp/python/3.12.3/python-3.12.3-amd64.exe

Make sure you select the option “Add to PATH” in the python installer, otherwise invoke python directly using it’s full path while installing the tool.

Install GIT for Windows:

https://gitforwindows.org/

Install dgenerate

Using Windows CMD

Install pipx:

pip install pipx
pipx ensurepath

# Log out and log back in so PATH takes effect

Install dgenerate:

pipx install dgenerate ^
--pip-args "--extra-index-url https://download.pytorch.org/whl/cu121/"

# If you want a specific version

pipx install dgenerate==3.5.1 ^
--pip-args "--extra-index-url https://download.pytorch.org/whl/cu121/"

# You can install without pipx into your own environment like so

pip install dgenerate==3.5.1 --extra-index-url https://download.pytorch.org/whl/cu121/

It is recommended to install dgenerate with pipx if you are just intending to use it as a command line program, if you want to develop you can install it from a cloned repository like this:

# in the top of the repo make
# an environment and activate it

python -m venv venv
venv\Scripts\activate

# Install with pip into the environment

pip install --editable .[dev] --extra-index-url https://download.pytorch.org/whl/cu121/

Run dgenerate to generate images:

# Images are output to the "output" folder
# in the current working directory by default

dgenerate --help

dgenerate stabilityai/stable-diffusion-2-1 ^
--prompts "an astronaut riding a horse" ^
--output-path output ^
--inference-steps 40 ^
--guidance-scales 10

Linux or WSL Install

First update your system and install build-essential

sudo apt update && sudo apt upgrade
sudo apt install build-essential

Install CUDA Toolkit 12.*: https://developer.nvidia.com/cuda-downloads

I recommend using the runfile option:

# CUDA Toolkit 12.2.1 For Ubuntu / Debian / WSL

wget https://developer.download.nvidia.com/compute/cuda/12.2.1/local_installers/cuda_12.2.1_535.86.10_linux.run
sudo sh cuda_12.2.1_535.86.10_linux.run

Do not attempt to install a driver from the prompts if using WSL.

# On linux, if you intend to use flax, you may or may not need to create a symlink for libnvrtc
# flax will look for libnvrtc.so, and may not be able to find it.

ln -s /usr/local/cuda/lib64/libnvrtc.so.12 /usr/local/cuda/lib64/libnvrtc.so

Add libraries to linker path:

# Add to ~/.bashrc

# For Linux add the following
export LD_LIBRARY_PATH=/usr/local/cuda/lib64:$LD_LIBRARY_PATH

# For WSL add the following
export LD_LIBRARY_PATH=/usr/lib/wsl/lib:/usr/local/cuda/lib64:$LD_LIBRARY_PATH

# Add this in both cases as well
export PATH=/usr/local/cuda/bin:$PATH

When done editing ~/.bashrc do:

source ~/.bashrc

Install Python 3.10+ (Debian / Ubuntu) and pipx

sudo apt install python3.10 python3-pip pipx python3.10-venv python3-wheel
pipx ensurepath

source ~/.bashrc

Install dgenerate

pipx install dgenerate \
--pip-args "--extra-index-url https://download.pytorch.org/whl/cu121/"

# With flax/jax support

pipx install dgenerate[flax] \
--pip-args "--extra-index-url https://download.pytorch.org/whl/cu121/ \
-f https://storage.googleapis.com/jax-releases/jax_cuda_releases.html"

# If you want a specific version

pipx install dgenerate==3.5.1 \
--pip-args "--extra-index-url https://download.pytorch.org/whl/cu121/"

# Specific version with flax/jax support

pipx install dgenerate[flax]==3.5.1 \
--pip-args "--extra-index-url https://download.pytorch.org/whl/cu121/ \
-f https://storage.googleapis.com/jax-releases/jax_cuda_releases.html"

# You can install without pipx into your own environment like so

pip3 install dgenerate==3.5.1 --extra-index-url https://download.pytorch.org/whl/cu121/

# Or with flax

pip3 install dgenerate[flax]==3.5.1 --extra-index-url https://download.pytorch.org/whl/cu121/ \
-f https://storage.googleapis.com/jax-releases/jax_cuda_releases.html

It is recommended to install dgenerate with pipx if you are just intending to use it as a command line program, if you want to develop you can install it from a cloned repository like this:

# in the top of the repo make
# an environment and activate it

python3 -m venv venv
source venv/bin/activate

# Install with pip into the environment

pip3 install --editable .[dev] --extra-index-url https://download.pytorch.org/whl/cu121/

# With flax if you want

pip3 install --editable .[dev,flax] --extra-index-url https://download.pytorch.org/whl/cu121/ \
-f https://storage.googleapis.com/jax-releases/jax_cuda_releases.html

Run dgenerate to generate images:

# Images are output to the "output" folder
# in the current working directory by default

dgenerate --help

dgenerate stabilityai/stable-diffusion-2-1 \
--prompts "an astronaut riding a horse" \
--output-path output \
--inference-steps 40 \
--guidance-scales 10

Basic Usage

The example below attempts to generate an astronaut riding a horse using 5 different random seeds, 3 different inference steps values, and 3 different guidance scale values.

It utilizes the “stabilityai/stable-diffusion-2-1” model repo on Hugging Face.

45 uniquely named images will be generated (5 x 3 x 3)

Also Adjust output size to 512x512 and output generated images to the “astronaut” folder in the current working directory.

When --output-path is not specified, the default output location is the “output” folder in the current working directory, if the path that is specified does not exist then it will be created.

dgenerate stabilityai/stable-diffusion-2-1 \
--prompts "an astronaut riding a horse" \
--gen-seeds 5 \
--output-path astronaut \
--inference-steps 30 40 50 \
--guidance-scales 5 7 10 \
--output-size 512x512

Loading models from huggingface blob links is also supported:

dgenerate https://huggingface.co/stabilityai/stable-diffusion-2-1/blob/main/v2-1_768-ema-pruned.safetensors \
--prompts "an astronaut riding a horse" \
--gen-seeds 5 \
--output-path astronaut \
--inference-steps 30 40 50 \
--guidance-scales 5 7 10 \
--output-size 512x512

SDXL is supported and can be used to generate highly realistic images.

Prompt only generation, img2img, and inpainting is supported for SDXL.

Refiner models can be specified, fp16 model variant and a datatype of float16 is recommended to prevent out of memory conditions on the average GPU :)

dgenerate stabilityai/stable-diffusion-xl-base-1.0 --model-type torch-sdxl \
--sdxl-high-noise-fractions 0.6 0.7 0.8 \
--gen-seeds 5 \
--inference-steps 50 \
--guidance-scales 12 \
--sdxl-refiner stabilityai/stable-diffusion-xl-refiner-1.0 \
--prompts "real photo of an astronaut riding a horse on the moon" \
--variant fp16 --dtype float16 \
--output-size 1024

Negative Prompt

In order to specify a negative prompt, each prompt argument is split into two parts separated by ;

The prompt text occurring after ; is the negative influence prompt.

To attempt to avoid rendering of a saddle on the horse being ridden, you could for example add the negative prompt “saddle” or “wearing a saddle” or “horse wearing a saddle” etc.

dgenerate stabilityai/stable-diffusion-2-1 \
--prompts "an astronaut riding a horse; horse wearing a saddle" \
--gen-seeds 5 \
--output-path astronaut \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512

Multiple Prompts

Multiple prompts can be specified one after another in quotes in order to generate images using multiple prompt variations.

The following command generates 10 uniquely named images using two prompts and five random seeds (2x5)

5 of them will be from the first prompt and 5 of them from the second prompt.

All using 50 inference steps, and 10 for guidance scale value.

dgenerate stabilityai/stable-diffusion-2-1 \
--prompts "an astronaut riding a horse" "an astronaut riding a donkey" \
--gen-seeds 5 \
--output-path astronaut \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512

Image Seed

The --image-seeds argument can be used to specify one or more image input resource groups for use in rendering, and allows for the specification of img2img source images, inpaint masks, control net guidance images, deep floyd stage images, image group resizing, and frame slicing values for animations. It possesses it’s own URI syntax for defining different image inputs used for image generation, the example described below is the simplest case for one image input (img2img).

This example uses a photo of Buzz Aldrin on the moon to generate a photo of an astronaut standing on mars using img2img, this uses an image seed downloaded from wikipedia.

Disk file paths may also be used for image seeds and generally that is the standard use case, multiple image seed definitions may be provided and images will be generated from each image seed individually.

# Generate this image using 5 different seeds, 3 different inference-step values, 3 different
# guidance-scale values as above.

# In addition this image will be generated using 3 different image seed strengths.

# Adjust output size to 512x512 and output generated images to 'astronaut' folder, the image seed
# will be resized to that dimension with aspect ratio respected by default, the width is fixed and
# the height will be calculated, this behavior can be changed globally with the --no-aspect option
# if desired or locally by specifying "img2img-seed.png;aspect=false" as your image seed

# If you do not adjust the output size of the generated image, the size of the input image seed will be used.

# 135 uniquely named images will be generated (5x3x3x3)

dgenerate stabilityai/stable-diffusion-2-1 \
--prompts "an astronaut walking on mars" \
--image-seeds https://upload.wikimedia.org/wikipedia/commons/9/98/Aldrin_Apollo_11_original.jpg \
--image-seed-strengths 0.2 0.5 0.8 \
--gen-seeds 5 \
--output-path astronaut \
--inference-steps 30 40 50 \
--guidance-scales 5 7 10 \
--output-size 512x512

--image-seeds serves as the entire mechanism for determining if img2img or inpainting is going to occur via it’s URI syntax described further in the section Inpainting.

In addition to this it can be used to provide control guidance images in the case of txt2img, img2img, or inpainting via the use of a URI syntax involving keyword arguments.

The syntax --image-seeds "my-image-seed.png;control=my-control-image.png" can be used with --control-nets to specify img2img mode with a ControlNet for example, see: Specifying Control Nets for more information.

Inpainting

Inpainting on an image can be preformed by providing a mask image with your image seed. This mask should be a black and white image of identical size to your image seed. White areas of the mask image will be used to tell the AI what areas of the seed image should be filled in with generated content.

For using inpainting on animated image seeds, jump to: Inpainting Animations

Some possible definitions for inpainting are:

  • --image-seeds "my-image-seed.png;my-mask-image.png"

  • --image-seeds "my-image-seed.png;mask=my-mask-image.png"

The format is your image seed and mask image separated by ;, optionally mask can be named argument. The alternate syntax is for disambiguation when preforming img2img or inpainting operations while Specifying Control Nets or other operations where keyword arguments might be necessary for disambiguation such as per image seed Animation Slicing, and the specification of the image from a previous Deep Floyd stage using the floyd argument.

Mask images can be downloaded from URL’s just like any other resource mentioned in an --image-seeds definition, however for this example files on disk are used for brevity.

You can download them here:

The command below generates a cat sitting on a bench with the images from the links above, the mask image masks out areas over the dog in the original image, causing the dog to be replaced with an AI generated cat.

dgenerate stabilityai/stable-diffusion-2-inpainting \
--image-seeds "my-image-seed.png;my-mask-image.png" \
--prompts "Face of a yellow cat, high resolution, sitting on a park bench" \
--image-seed-strengths 0.8 \
--guidance-scales 10 \
--inference-steps 100

Per Image Seed Resizing

If you want to specify multiple image seeds that will have different output sizes irrespective of their input size or a globally defined output size defined with --output-size, You can specify their output size individually at the end of each provided image seed.

This will work when using a mask image for inpainting as well, including when using animated inputs.

This also works when Specifying Control Nets and guidance images for control nets.

Here are some possible definitions:

  • --image-seeds "my-image-seed.png;512x512" (img2img)

  • --image-seeds "my-image-seed.png;my-mask-image.png;512x512" (inpainting)

  • --image-seeds "my-image-seed.png;resize=512x512" (img2img)

  • --image-seeds "my-image-seed.png;mask=my-mask-image.png;resize=512x512" (inpainting)

The alternate syntax with named arguments is for disambiguation when Specifying Control Nets, or preforming per image seed Animation Slicing, or specifying the previous Deep Floyd stage output with the floyd keyword argument.

When one dimension is specified, that dimension is the width, and the height.

The height of an image is calculated to be aspect correct by default for all resizing methods unless --no-aspect has been given as an argument on the command line or the aspect keyword argument is used in the --image-seeds definition.

The the aspect correct resize behavior can be controlled on a per image seed definition basis using the aspect keyword argument. Any value given to this argument overrides the presence or absense of the --no-aspect command line argument.

the aspect keyword argument can only be used when all other components of the image seed definition are defined using keyword arguments. aspect=false disables aspect correct resizing, and aspect=true enables it.

Some possible definitions:

  • --image-seeds "my-image-seed.png;resize=512x512;aspect=false" (img2img)

  • --image-seeds "my-image-seed.png;mask=my-mask-image.png;resize=512x512;aspect=false" (inpainting)

The following example preforms img2img generation, followed by inpainting generation using 2 image seed definitions. The involved images are resized using the basic syntax with no keyword arguments present in the image seeds.

dgenerate stabilityai/stable-diffusion-2-1 \
--image-seeds "my-image-seed.png;1024" "my-image-seed.png;my-mask-image.png;512x512" \
--prompts "Face of a yellow cat, high resolution, sitting on a park bench" \
--image-seed-strengths 0.8 \
--guidance-scales 10 \
--inference-steps 100

Animated Output

dgenerate supports many video formats through the use of PyAV (ffmpeg), as well as GIF & WebP.

See --help for information about all formats supported for the --animation-format option.

When an animated image seed is given, animated output will be produced in the format of your choosing.

In addition, every frame will be written to the output folder as a uniquely named image.

By specifying --animation-format frames you can tell dgenerate that you just need the frame images and not to produce any coalesced animation file for you. You may also specify --no-frames to indicate that you only want an animation file to be produced and no intermediate frames, though using this option with --animation-format frames is considered an error.

If the animation is not 1:1 aspect ratio, the width will be fixed to the width of the requested output size, and the height calculated to match the aspect ratio of the animation. Unless --no-aspect or the --image-seeds keyword argument aspect=false are specified, in which case the video will be resized to the requested dimension exactly.

If you do not set an output size, the size of the input animation will be used.

# Use a GIF of a man riding a horse to create an animation of an astronaut riding a horse.

dgenerate stabilityai/stable-diffusion-2-1 \
--prompts "an astronaut riding a horse" \
--image-seeds https://upload.wikimedia.org/wikipedia/commons/7/7b/Muybridge_race_horse_~_big_transp.gif \
--image-seed-strengths 0.5 \
--output-path astronaut \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512 \
--animation-format mp4

The above syntax is the same syntax used for generating an animation with a control image when --control-nets is used.

Animations can also be generated using an alternate syntax for --image-seeds that allows the specification of a control image source when it is desired to use --control-nets with img2img or inpainting.

For more information about this see: Specifying Control Nets

As well as the information about --image-seeds from dgenerates --help output.

Animation Slicing

Animated inputs can be sliced by a frame range either globally using --frame-start and --frame-end or locally using the named argument syntax for --image-seeds, for example:

  • --image-seeds "animated.gif;frame-start=3;frame-end=10".

When using animation slicing at the --image-seed level, all image input definitions other than the main image must be specified using keyword arguments.

For example here are some possible definitions:

  • --image-seeds "seed.gif;frame-start=3;frame-end=10"

  • --image-seeds "seed.gif;mask=mask.gif;frame-start=3;frame-end=10

  • --image-seeds "seed.gif;control=control-guidance.gif;frame-start=3;frame-end=10

  • --image-seeds "seed.gif;mask=mask.gif;control=control-guidance.gif;frame-start=3;frame-end=10

  • --image-seeds "seed.gif;floyd=stage1.gif;frame-start=3;frame-end=10"

  • --image-seeds "seed.gif;mask=mask.gif;floyd=stage1.gif;frame-start=3;frame-end=10"

Specifying a frame slice locally in an image seed overrides the global frame slice setting defined by --frame-start or --frame-end, and is specific only to that image seed, other image seed definitions will not be affected.

Perhaps you only want to run diffusion on the first frame of an animated input in order to save time in finding good parameters for generating every frame. You could slice to only the first frame using --frame-start 0 --frame-end 0, which will be much faster than rendering the entire video/gif outright.

The slice range zero indexed and also inclusive, inclusive means that the starting and ending frames specified by --frame-start and --frame-end will be included in the slice. Both slice points do not have to be specified at the same time. You can exclude the tail end of a video with just --frame-end alone, or seek to a certain start frame in the video with --frame-start alone and render from there onward, this applies for keyword arguments in the --image-seeds definition as well.

If your slice only results in the processing of a single frame, an animated file format will not be generated, only a single image output will be generated for that image seed during the generation step.

# Generate using only the first frame

dgenerate stabilityai/stable-diffusion-2-1 \
--prompts "an astronaut riding a horse" \
--image-seeds https://upload.wikimedia.org/wikipedia/commons/7/7b/Muybridge_race_horse_~_big_transp.gif \
--image-seed-strengths 0.5 \
--output-path astronaut \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512 \
--animation-format mp4 \
--frame-start 0 \
--frame-end 0

Inpainting Animations

Image seeds can be supplied an animated or static image mask to define the areas for inpainting while generating an animated output.

Any possible combination of image/video parameters can be used. The animation with least amount of frames in the entire specification determines the frame count, and any static images present are duplicated across the entire animation. The first animation present in an image seed specification always determines the output FPS of the animation.

When an animated seed is used with an animated mask, the mask for every corresponding frame in the input is taken from the animated mask, the runtime of the animated output will be equal to the shorter of the two animated inputs. IE: If the seed animation and the mask animation have different length, the animated output is clipped to the length of the shorter of the two.

When a static image is used as a mask, that image is used as an inpaint mask for every frame of the animated seed.

When an animated mask is used with a static image seed, the animated output length is that of the animated mask. A video is created by duplicating the image seed for every frame of the animated mask, the animated output being generated by masking them together.

# A video with a static inpaint mask over the entire video

dgenerate stabilityai/stable-diffusion-2-inpainting \
--prompts "an astronaut riding a horse" \
--image-seeds "my-animation.mp4;my-static-mask.png" \
--output-path inpaint \
--animation-format mp4

# Zip two videos together, masking the left video with corrisponding frames
# from the right video. The two animated inputs do not have to be the same file format
# you can mask videos with gif/webp and vice versa

dgenerate stabilityai/stable-diffusion-2-inpainting \
--prompts "an astronaut riding a horse" \
--image-seeds "my-animation.mp4;my-animation-mask.mp4" \
--output-path inpaint \
--animation-format mp4

dgenerate stabilityai/stable-diffusion-2-inpainting \
--prompts "an astronaut riding a horse" \
--image-seeds "my-animation.mp4;my-animation-mask.gif" \
--output-path inpaint \
--animation-format mp4

dgenerate stabilityai/stable-diffusion-2-inpainting \
--prompts "an astronaut riding a horse" \
--image-seeds "my-animation.gif;my-animation-mask.gif" \
--output-path inpaint \
--animation-format mp4

dgenerate stabilityai/stable-diffusion-2-inpainting \
--prompts "an astronaut riding a horse" \
--image-seeds "my-animation.gif;my-animation-mask.webp" \
--output-path inpaint \
--animation-format mp4

dgenerate stabilityai/stable-diffusion-2-inpainting \
--prompts "an astronaut riding a horse" \
--image-seeds "my-animation.webp;my-animation-mask.gif" \
--output-path inpaint \
--animation-format mp4

dgenerate stabilityai/stable-diffusion-2-inpainting \
--prompts "an astronaut riding a horse" \
--image-seeds "my-animation.gif;my-animation-mask.mp4" \
--output-path inpaint \
--animation-format mp4

# etc...

# Use a static image seed and mask it with every frame from an
# Animated mask file

dgenerate stabilityai/stable-diffusion-2-inpainting \
--prompts "an astronaut riding a horse" \
--image-seeds "my-static-image-seed.png;my-animation-mask.mp4" \
--output-path inpaint \
--animation-format mp4

dgenerate stabilityai/stable-diffusion-2-inpainting \
--prompts "an astronaut riding a horse" \
--image-seeds "my-static-image-seed.png;my-animation-mask.gif" \
--output-path inpaint \
--animation-format mp4

dgenerate stabilityai/stable-diffusion-2-inpainting \
--prompts "an astronaut riding a horse" \
--image-seeds "my-static-image-seed.png;my-animation-mask.webp" \
--output-path inpaint \
--animation-format mp4

# etc...

Deterministic Output

If you generate an image you like using a random seed, you can later reuse that seed in another generation.

Updates to the backing model may affect determinism in the generation.

Output images have a name format that starts with the seed, IE: s_(seed here)_ ...png

Reusing a seed has the effect of perfectly reproducing the image in the case that all other parameters are left alone, including the model version.

You can output a configuration file for each image / animation produced that will reproduce it exactly using the option --output-configs, that same information can be written to the metadata of generated PNG files using the option --output-metadata and can be read back with ImageMagick for example as so:

magick identify -format "%[Property:DgenerateConfig] generated_file.png

Generated configuration can be read back into dgenerate via a pipe or file redirection.

magick identify -format "%[Property:DgenerateConfig] generated_file.png | dgenerate

dgenerate < generated-config.txt

Specifying a seed directly and changing the prompt slightly, or parameters such as image seed strength if using a seed image, guidance scale, or inference steps, will allow for generating variations close to the original image which may possess all of the original qualities about the image that you liked as well as additional qualities. You can further manipulate the AI into producing results that you want with this method.

Changing output resolution will drastically affect image content when reusing a seed to the point where trying to reuse a seed with a different output size is pointless.

The following command demonstrates manually specifying two different seeds to try: 1234567890, and 9876543210

dgenerate stabilityai/stable-diffusion-2-1 \
--prompts "an astronaut riding a horse" \
--seeds 1234567890 9876543210 \
--output-path astronaut \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512

Specifying a specific GPU for CUDA

The desired GPU to use for CUDA acceleration can be selected using --device cuda:N where N is the device number of the GPU as reported by nvidia-smi.

# Console 1, run on GPU 0

dgenerate stabilityai/stable-diffusion-2-1 \
--prompts "an astronaut riding a horse" \
--output-path astronaut_1 \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512 \
--device cuda:0

# Console 2, run on GPU 1 in parallel

dgenerate stabilityai/stable-diffusion-2-1 \
--prompts "an astronaut riding a cow" \
--output-path astronaut_2 \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512 \
--device cuda:1

Specifying a Scheduler (sampler)

A scheduler (otherwise known as a sampler) for the main model can be selected via the use of --scheduler.

And in the case of SDXL the refiner’s scheduler can be selected independently with --sdxl-refiner-scheduler.

For Stable Cascade the decoder scheduler can be specified via the argument -s-cascade-decoder-scheduler however only one scheduler type is supported for Stable Cascade (DDPMWuerstchenScheduler).

Both of these default to the value of --scheduler, which in turn defaults to automatic selection.

Available schedulers for a specific combination of dgenerate arguments can be queried using --scheduler help, --sdxl-refiner-scheduler help, or --s-cascade-decoder-scheduler help though they cannot be queried simultaneously.

In order to use the query feature it is ideal that you provide all the other arguments that you plan on using while making the query, as different combinations of arguments will result in different underlying pipeline implementations being created, each of which may have different compatible scheduler names listed. The model needs to be loaded in order to gather this information.

For example there is only one compatible scheduler for this upscaler configuration:

dgenerate stabilityai/sd-x2-latent-upscaler --variant fp16 --dtype float16 \
--model-type torch-upscaler-x2 \
--prompts "none" \
--image-seeds my-image.png \
--output-size 256 \
--scheduler help

# Outputs:
#
# Compatible schedulers for "stabilityai/sd-x2-latent-upscaler" are:
#
#    "EulerDiscreteScheduler"

Typically however, there will be many compatible schedulers:

dgenerate stabilityai/stable-diffusion-2 \
--inference-steps 40 \
--guidance-scales 8 \
--output-size 1024 \
--gen-seeds 2 \
--prompts "none" \
--scheduler help

# Outputs:
#
# Compatible schedulers for "stabilityai/stable-diffusion-2" are:
#
#    "EulerDiscreteScheduler"
#    "HeunDiscreteScheduler"
#    "UniPCMultistepScheduler"
#    "DDPMScheduler"
#    "EulerDiscreteScheduler"
#    "DDIMScheduler"
#    "DEISMultistepScheduler"
#    "LMSDiscreteScheduler"
#    "DPMSolverMultistepScheduler"
#    "EulerAncestralDiscreteScheduler"
#    "DPMSolverSinglestepScheduler"
#    "DPMSolverSDEScheduler"
#    "KDPM2DiscreteScheduler"
#    "PNDMScheduler"
#    "KDPM2AncestralDiscreteScheduler"
#    "LCMScheduler"

Passing helpargs to a --scheduler related option will reveal configuration arguments that can be overridden via a URI syntax, for every possible scheduler.

dgenerate stabilityai/stable-diffusion-2 \
--inference-steps 40 \
--guidance-scales 8 \
--output-size 1024 \
--gen-seeds 2 \
--prompts "none" \
--scheduler helpargs


# Outputs (shortened for brevity...):
#
# Compatible schedulers for "stabilityai/stable-diffusion-2" are:
#    ...
#
#    PNDMScheduler:
#        num-train-timesteps=1000
#        beta-start=0.0001
#        beta-end=0.02
#        beta-schedule=linear
#        trained-betas=None
#        skip-prk-steps=False
#        set-alpha-to-one=False
#        prediction-type=epsilon
#        timestep-spacing=leading
#        steps-offset=0
#
#   ...

As an example, you may override the mentioned arguments for any scheduler in this manner:

# Change prediction type of the scheduler to "v_prediction".
# for some models this may be necessary, not for this model
# this is just a syntax example

dgenerate stabilityai/stable-diffusion-2 \
--inference-steps 40 \
--guidance-scales 8 \
--output-size 1024 \
--gen-seeds 2 \
--prompts "none" \
--scheduler PNDMScheduler;prediction-type=v_prediction

Specifying a VAE

To specify a VAE directly use --vae.

The URI syntax for --vae is AutoEncoderClass;model=(huggingface repository slug/blob link or file/folder path)

Named arguments when loading a VAE are separated by the ; character and are not positional, meaning they can be defined in any order.

Loading arguments available when specifying a VAE for torch --model-type values are: model, revision, variant, subfolder, and dtype

Loading arguments available when specifying VAE for flax --model-type values are: model, revision, subfolder, dtype

The only named arguments compatible with loading a .safetensors or other model file directly off disk are model and dtype

The other named arguments are available when loading from a huggingface repository or folder that may or may not be a local git repository on disk.

Available encoder classes for torch models are:

  • AutoencoderKL

  • AsymmetricAutoencoderKL (Does not support --vae-slicing or --vae-tiling)

  • AutoencoderTiny

  • ConsistencyDecoderVAE

Available encoder classes for flax models are:

  • FlaxAutoencoderKL (Does not support --vae-slicing or --vae-tiling)

The AutoencoderKL encoder class accepts huggingface repository slugs/blob links, .pt, .pth, .bin, .ckpt, and .safetensors files. Other encoders can only accept huggingface repository slugs/blob links, or a path to a folder on disk with the model configuration and model file(s).

dgenerate stabilityai/stable-diffusion-2-1 \
--vae "AutoencoderKL;model=stabilityai/sd-vae-ft-mse" \
--prompts "an astronaut riding a horse" \
--output-path astronaut \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512

If you want to select the repository revision, such as main etc, use the named argument revision, subfolder is required in this example as well because the VAE model file exists in a subfolder of the specified huggingface repository.

dgenerate stabilityai/stable-diffusion-2-1 \
--revision fp16 \
--dtype float16 \
--vae "AutoencoderKL;model=stabilityai/stable-diffusion-2-1;revision=fp16;subfolder=vae" \
--prompts "an astronaut riding a horse" \
--output-path astronaut \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512

If you wish to specify a weights variant IE: load pytorch_model.<variant>.safetensors, from a huggingface repository that has variants of the same model, use the named argument variant. This usage is only valid when loading VAEs if --model-type is either torch or torch-sdxl. Attempting to use it with FlaxAutoencoderKL with produce an error message. When not specified in the URI, this value does NOT default to the value --variant to prevent errors during common use cases. If you wish to select a variant you must specify it in the URI.

dgenerate stabilityai/stable-diffusion-2-1 \
--variant fp16 \
--vae "AutoencoderKL;model=stabilityai/stable-diffusion-2-1;subfolder=vae;variant=fp16" \
--prompts "an astronaut riding a horse" \
--output-path astronaut \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512

If your weights file exists in a subfolder of the repository, use the named argument subfolder

dgenerate stabilityai/stable-diffusion-2-1 \
--vae "AutoencoderKL;model=stabilityai/stable-diffusion-2-1;subfolder=vae" \
--prompts "an astronaut riding a horse" \
--output-path astronaut \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512

If you want to specify the model precision, use the named argument dtype, accepted values are the same as --dtype, IE: ‘float32’, ‘float16’, ‘auto’

dgenerate stabilityai/stable-diffusion-2-1 \
--revision fp16 \
--dtype float16 \
--vae "AutoencoderKL;model=stabilityai/stable-diffusion-2-1;revision=fp16;subfolder=vae;dtype=float16" \
--prompts "an astronaut riding a horse" \
--output-path astronaut \
--inference-steps 50 \
--guidance-scales 10 \
--output-size 512x512

If you are loading a .safetensors or other file from a path on disk, only the model, and dtype arguments are available.

# These are only syntax examples

dgenerate huggingface/diffusion_model \
--vae "AutoencoderKL;model=my_vae.safetensors" \
--prompts "Syntax example"

dgenerate huggingface/diffusion_model \
--vae "AutoencoderKL;model=my_vae.safetensors;dtype=float16" \
--prompts "Syntax example"

VAE Tiling and Slicing

You can use --vae-tiling and --vae-slicing to enable to generation of huge images without running your GPU out of memory. Note that if you are using --control-nets you may still be memory limited by the size of the image being processed by the ControlNet, and still may run in to memory issues with large image inputs.

When --vae-tiling is used, the VAE will split the input tensor into tiles to compute decoding and encoding in several steps. This is useful for saving a large amount of memory and to allow processing larger images.

When --vae-slicing is used, the VAE will split the input tensor in slices to compute decoding in several steps. This is useful to save some memory, especially when --batch-size is greater than 1.

# Here is an SDXL example of high resolution image generation utilizing VAE tiling/slicing

dgenerate stabilityai/stable-diffusion-xl-base-1.0 --model-type torch-sdxl \
--variant fp16 --dtype float16 \
--vae "AutoencoderKL;model=madebyollin/sdxl-vae-fp16-fix" \
--vae-tiling \
--vae-slicing \
--sdxl-refiner stabilityai/stable-diffusion-xl-refiner-1.0 \
--sdxl-high-noise-fractions 0.8 \
--inference-steps 30 \
--guidance-scales 8 \
--output-size 2048 \
--sdxl-target-size 2048 \
--prompts "Photo of a horse standing near the open door of a red barn, high resolution; artwork"

Specifying a UNet

An alternate UNet model can be specified via a URI with the --unet option, in a similar fashion to --vae and other model arguments that accept URIs.

This is useful in particular for using the latent consistency scheduler.

The first component of the --unet URI is the model path itself.

You can provide a path to a huggingface repo, or a folder on disk (downloaded huggingface repository).

dgenerate stabilityai/stable-diffusion-xl-base-1.0 --model-type torch-sdxl \
--variant fp16 --dtype float16 \
--unet latent-consistency/lcm-sdxl \
--scheduler LCMScheduler \
--inference-steps 4 \
--guidance-scales 8 \
--gen-seeds 2 \
--output-size 1024 \
--prompts "a close-up picture of an old man standing in the rain"

Loading arguments available when specifying a UNet for torch --model-type values are: revision, variant, subfolder, and dtype

In the case of --unet the variant loading argument defaults to the value of --variant if you do not specify it in the URI.

Loading arguments available when specifying UNet for flax --model-type values are: revision, subfolder, dtype. variant is not used for flax.

The --unet2 option can be used to specify a UNet for the SDXL Refiner or Stable Cascade Decoder, and uses the same syntax as --unet.

Specifying an SDXL Refiner

When the main model is an SDXL model and --model-type torch-sdxl is specified, you may specify a refiner model with --sdxl-refiner.

You can provide a path to a huggingface repo/blob link, folder on disk, or a model file on disk such as a .pt, .pth, .bin, .ckpt, or .safetensors file.

This argument is parsed in much the same way as the argument --vae, except the model is the first value specified.

Loading arguments available when specifying a refiner are: revision, variant, subfolder, and dtype

The only named argument compatible with loading a .safetensors or other file directly off disk is dtype

The other named arguments are available when loading from a huggingface repo/blob link, or folder that may or may not be a local git repository on disk.

# Basic usage of SDXL with a refiner

dgenerate stabilityai/stable-diffusion-xl-base-1.0 --model-type torch-sdxl \
--variant fp16 --dtype float16 \
--sdxl-refiner stabilityai/stable-diffusion-xl-refiner-1.0 \
--sdxl-high-noise-fractions 0.8 \
--inference-steps 40 \
--guidance-scales 8 \
--output-size 1024 \
--prompts "Photo of a horse standing near the open door of a red barn, high resolution; artwork"

If you want to select the repository revision, such as main etc, use the named argument revision

dgenerate stabilityai/stable-diffusion-xl-base-1.0 --model-type torch-sdxl \
--variant fp16 --dtype float16 \
--sdxl-refiner "stabilityai/stable-diffusion-xl-refiner-1.0;revision=main" \
--sdxl-high-noise-fractions 0.8 \
--inference-steps 40 \
--guidance-scales 8 \
--output-size 1024 \
--prompts "Photo of a horse standing near the open door of a red barn, high resolution; artwork"

If you wish to specify a weights variant IE: load pytorch_model.<variant>.safetensors, from a huggingface repository that has variants of the same model, use the named argument variant. By default this value is the same as --variant unless you override it.

dgenerate stabilityai/stable-diffusion-xl-base-1.0 --model-type torch-sdxl \
--variant fp16 --dtype float16 \
--sdxl-refiner "stabilityai/stable-diffusion-xl-refiner-1.0;variant=fp16" \
--sdxl-high-noise-fractions 0.8 \
--inference-steps 40 \
--guidance-scales 8 \
--output-size 1024 \
--prompts "Photo of a horse standing near the open door of a red barn, high resolution; artwork"

If your weights file exists in a subfolder of the repository, use the named argument subfolder

# This is a non working example as I do not know of a repo with an SDXL refiner
# in a subfolder :) this is only a syntax example

dgenerate huggingface/sdxl_model --model-type torch-sdxl \
--variant fp16 --dtype float16 \
--sdxl-refiner "huggingface/sdxl_refiner;subfolder=repo_subfolder"

If you want to select the model precision, use the named argument dtype. By default this value is the same as --dtype unless you override it. Accepted values are the same as --dtype, IE: ‘float32’, ‘float16’, ‘auto’

dgenerate stabilityai/stable-diffusion-xl-base-1.0 --model-type torch-sdxl \
--variant fp16 --dtype float16 \
--sdxl-refiner "stabilityai/stable-diffusion-xl-refiner-1.0;dtype=float16" \
--sdxl-high-noise-fractions 0.8 \
--inference-steps 40 \
--guidance-scales 8 \
--output-size 1024 \
--prompts "Photo of a horse standing near the open door of a red barn, high resolution; artwork"

If you are loading a .safetensors or other file from a path on disk, simply do:

# This is only a syntax example

dgenerate huggingface/sdxl_model --model-type torch-sdxl \
--sdxl-refiner my_refinermodel.safetensors

When preforming inpainting or when using ControlNets, the refiner will automatically operate in edit mode instead of cooperative denoising mode. Edit mode can be forced in other situations with the option --sdxl-refiner-edit.

Edit mode means that the refiner model is accepting the fully (or mostly) denoised output of the main model generated at the full number of inference steps specified, and acting on it with an image strength (image seed strength) determined by (1.0 - high-noise-fraction).

The output latent from the main model is renoised with a certain amount of noise determined by the strength, a lower number means less noise and less modification of the latent output by the main model.

This is similar to what happens when using dgenerate in img2img with a standalone model, technically it is just img2img, however refiner models are better at enhancing details from the main model in this use case.

Specifying a Stable Cascade Decoder

When the main model is a Stable Cascade prior model and --model-type torch-s-cascade is specified, you may specify a decoder model with --s-cascade-decoder.

The syntax (and URI arguments) for specifying the decoder model is identical to specifying an SDXL refiner model as mentioned above.

dgenerate stabilityai/stable-cascade-prior \
--model-type torch-s-cascade \
--variant bf16 \
--dtype bfloat16 \
--model-cpu-offload \
--s-cascade-decoder-cpu-offload \
--s-cascade-decoder "stabilityai/stable-cascade;dtype=float16" \
--inference-steps 20 \
--guidance-scales 4 \
--s-cascade-decoder-inference-steps 10 \
--s-cascade-decoder-guidance-scales 0 \
--gen-seeds 2 \
--prompts "an image of a shiba inu, donning a spacesuit and helmet"

Specifying LoRAs

It is possible to specify one or more LoRA models using --loras

When multiple specifications are given, all mentioned models will be fused into the main model at a given scale.

The plural form of the argument is identical to the non-plural version, which only exists for backward compatibility.

You can provide a huggingface repository slug, .pt, .pth, .bin, .ckpt, or .safetensors files. Blob links are not accepted, for that use subfolder and weight-name described below.

The LoRA scale can be specified after the model path by placing a ; (semicolon) and then using the named argument scale

When a scale is not specified, 1.0 is assumed.

Named arguments when loading a LoRA are separated by the ; character and are not positional, meaning they can be defined in any order.

Loading arguments available when specifying a LoRA are: scale, revision, subfolder, and weight-name

The only named argument compatible with loading a .safetensors or other file directly off disk is scale

The other named arguments are available when loading from a huggingface repository or folder that may or may not be a local git repository on disk.

This example shows loading a LoRA using a huggingface repository slug and specifying scale for it.

# Don't expect great results with this example,
# Try models and LoRA's downloaded from CivitAI

dgenerate runwayml/stable-diffusion-v1-5 \
--loras "pcuenq/pokemon-lora;scale=0.5" \
--prompts "Gengar standing in a field at night under a full moon, highquality, masterpiece, digital art" \
--inference-steps 40 \
--guidance-scales 10 \
--gen-seeds 5 \
--output-size 800

Specifying the file in a repository directly can be done with the named argument weight-name

Shown below is an SDXL compatible LoRA being used with the SDXL base model and a refiner.

dgenerate stabilityai/stable-diffusion-xl-base-1.0 --model-type torch-sdxl \
--inference-steps 30 \
--sdxl-refiner stabilityai/stable-diffusion-xl-refiner-1.0 \
--prompts "sketch of a horse by Leonardo da Vinci" \
--variant fp16 --dtype float16 \
--loras "goofyai/SDXL-Lora-Collection;scale=1.0;weight-name=leonardo_illustration.safetensors" \
--output-size 1024

If you want to select the repository revision, such as main etc, use the named argument revision

dgenerate runwayml/stable-diffusion-v1-5 \
--loras "pcuenq/pokemon-lora;scale=0.5;revision=main" \
--prompts "Gengar standing in a field at night under a full moon, highquality, masterpiece, digital art" \
--inference-steps 40 \
--guidance-scales 10 \
--gen-seeds 5 \
--output-size 800

If your weights file exists in a subfolder of the repository, use the named argument subfolder

# This is a non working example as I do not know of a repo with a LoRA weight in a subfolder :)
# This is only a syntax example

dgenerate huggingface/model \
--prompts "Syntax example" \
--loras "huggingface/lora_repo;scale=1.0;subfolder=repo_subfolder;weight-name=lora_weights.safetensors"

If you are loading a .safetensors or other file from a path on disk, only the scale argument is available.

# This is only a syntax example

dgenerate runwayml/stable-diffusion-v1-5 \
--prompts "Syntax example" \
--loras "my_lora.safetensors;scale=1.0"

Specifying Textual Inversions

One or more Textual Inversion models may be specified with --textual-inversions

You can provide a huggingface repository slug, .pt, .pth, .bin, .ckpt, or .safetensors files. Blob links are not accepted, for that use subfolder and weight-name described below.

Arguments pertaining to the loading of each textual inversion model may be specified in the same way as when using --loras minus the scale argument.

Available arguments are: revision, subfolder, and weight-name

Named arguments are available when loading from a huggingface repository or folder that may or may not be a local git repository on disk, when loading directly from a .safetensors file or other file from a path on disk they should not be used.

# Load a textual inversion from a huggingface repository specifying it's name in the repository
# as an argument

dgenerate Duskfallcrew/isometric-dreams-sd-1-5  \
--textual-inversions "Duskfallcrew/IsometricDreams_TextualInversions;weight-name=Isometric_Dreams-1000.pt" \
--scheduler KDPM2DiscreteScheduler \
--inference-steps 30 \
--guidance-scales 7 \
--prompts "a bright photo of the Isometric_Dreams, a tv and a stereo in it and a book shelf, a table, a couch,a room with a bed"

If you want to select the repository revision, such as main etc, use the named argument revision

# This is a non working example as I do not know of a repo that utilizes revisions with
# textual inversion weights :) this is only a syntax example

dgenerate huggingface/model \
--prompts "Syntax example" \
--textual-inversions "huggingface/ti_repo;revision=main"

If your weights file exists in a subfolder of the repository, use the named argument subfolder

# This is a non working example as I do not know of a repo with a textual
# inversion weight in a subfolder :) this is only a syntax example

dgenerate huggingface/model \
--prompts "Syntax example" \
--textual-inversions "huggingface/ti_repo;subfolder=repo_subfolder;weight-name=ti_model.safetensors"

If you are loading a .safetensors or other file from a path on disk, simply do:

# This is only a syntax example

dgenerate runwayml/stable-diffusion-v1-5 \
--prompts "Syntax example" \
--textual-inversions "my_ti_model.safetensors"

Specifying Control Nets

One or more ControlNet models may be specified with --control-nets, and multiple control net guidance images can be specified via --image-seeds in the case that you specify multiple control net models.

You can provide a huggingface repository slug / blob link, .pt, .pth, .bin, .ckpt, or .safetensors files.

Control images for the Control Nets can be provided using --image-seeds

When using --control-nets specifying control images via --image-seeds can be accomplished in these ways:

  • --image-seeds "control-image.png" (txt2img)

  • --image-seeds "img2img-seed.png;control=control-image.png" (img2img)

  • --image-seeds "img2img-seed.png;mask=mask.png;control=control-image.png" (inpainting)

Multiple control image sources can be specified in these ways when using multiple control nets:

  • --image-seeds "control-1.png, control-2.png" (txt2img)

  • --image-seeds "img2img-seed.png;control=control-1.png, control-2.png" (img2img)

  • --image-seeds "img2img-seed.png;mask=mask.png;control=control-1.png, control-2.png" (inpainting)

It is considered a syntax error if you specify a non-equal amount of control guidance images and --control-nets URIs and you will receive an error message if you do so.

resize=WIDTHxHEIGHT can be used to select a per --image-seeds resize dimension for all image sources involved in that particular specification, as well as aspect=true/false and the frame slicing arguments frame-start and frame-end.

ControlNet guidance images may actually be animations such as MP4s, GIFs etc. Frames can be taken from multiple videos simultaneously. Any possible combination of image/video parameters can be used. The animation with least amount of frames in the entire specification determines the frame count, and any static images present are duplicated across the entire animation. The first animation present in an image seed specification always determines the output FPS of the animation.

Arguments pertaining to the loading of each ControlNet model specified with --control-nets may be declared in the same way as when using --vae with the addition of a scale argument and from_torch argument when using flax --model-type values.

Available arguments when using torch --model-type values are: scale, start, end, revision, variant, subfolder, dtype

Available arguments when using flax --model-type values are: scale, revision, subfolder, dtype, from_torch

Most named arguments apply to loading from a huggingface repository or folder that may or may not be a local git repository on disk, when loading directly from a .safetensors file or other file from a path on disk the available arguments are scale, start, end, and from_torch. from_torch can be used with flax for loading pytorch models from .pt or other files designed for torch from a repo or file/folder on disk.

The scale argument indicates the affect scale of the control net model.

For torch, the start argument indicates at what fraction of the total inference steps at which the control net model starts to apply guidance. If you have multiple control net models specified, they can apply guidance over different segments of the inference steps using this option, it defaults to 0.0, meaning start at the first inference step.

for torch, the end argument indicates at what fraction of the total inference steps at which the control net model stops applying guidance. It defaults to 1.0, meaning stop at the last inference step.

These examples use: vermeer_canny_edged.png

# Torch example, use "vermeer_canny_edged.png" as a control guidance image

dgenerate runwayml/stable-diffusion-v1-5 \
--inference-steps 40 \
--guidance-scales 8 \
--prompts "Painting, Girl with a pearl earing by Leonardo Da Vinci, masterpiece; low quality, low resolution, blank eyeballs" \
--control-nets "lllyasviel/sd-controlnet-canny;scale=0.5" \
--image-seeds "vermeer_canny_edged.png"


# If you have an img2img image seed, use this syntax

dgenerate runwayml/stable-diffusion-v1-5 \
--inference-steps 40 \
--guidance-scales 8 \
--prompts "Painting, Girl with a pearl earing by Leonardo Da Vinci, masterpiece; low quality, low resolution, blank eyeballs" \
--control-nets "lllyasviel/sd-controlnet-canny;scale=0.5" \
--image-seeds "my-image-seed.png;control=vermeer_canny_edged.png"


# If you have an img2img image seed and an inpainting mask, use this syntax

dgenerate runwayml/stable-diffusion-v1-5 \
--inference-steps 40 \
--guidance-scales 8 \
--prompts "Painting, Girl with a pearl earing by Leonardo Da Vinci, masterpiece; low quality, low resolution, blank eyeballs" \
--control-nets "lllyasviel/sd-controlnet-canny;scale=0.5" \
--image-seeds "my-image-seed.png;mask=my-inpaint-mask.png;control=vermeer_canny_edged.png"

# Flax example

dgenerate runwayml/stable-diffusion-v1-5 --model-type flax \
--revision bf16 \
--dtype float16 \
--inference-steps 40 \
--guidance-scales 8 \
--prompts "Painting, Girl with a pearl earing by Leonardo Da Vinci, masterpiece; low quality, low resolution, blank eyeballs" \
--control-nets "lllyasviel/sd-controlnet-canny;scale=0.5;from_torch=true" \
--image-seeds "vermeer_canny_edged.png"

# SDXL example

dgenerate stabilityai/stable-diffusion-xl-base-1.0 --model-type torch-sdxl \
--variant fp16 --dtype float16 \
--vae "AutoencoderKL;model=madebyollin/sdxl-vae-fp16-fix" \
--sdxl-refiner stabilityai/stable-diffusion-xl-refiner-1.0 \
--inference-steps 30 \
--guidance-scales 8 \
--prompts "Taylor Swift, high quality, masterpiece, high resolution; low quality, bad quality, sketches" \
--control-nets "diffusers/controlnet-canny-sdxl-1.0;scale=0.5" \
--image-seeds "vermeer_canny_edged.png" \
--output-size 1024

If you want to select the repository revision, such as main etc, use the named argument revision

# This is a non working example as I do not know of a repo that utilizes revisions with
# ControlNet weights :) this is only a syntax example

dgenerate huggingface/model \
--prompts "Syntax example" \
--control-nets "huggingface/cn_repo;revision=main"

If your weights file exists in a subfolder of the repository, use the named argument subfolder

# This is a non working example as I do not know of a repo with a textual
# inversion weight in a subfolder :) this is only a syntax example

dgenerate huggingface/model \
--prompts "Syntax example" \
--control-nets "huggingface/cn_repo;subfolder=repo_subfolder"

If you are loading a .safetensors or other file from a path on disk, simply do:

# This is only a syntax example

dgenerate runwayml/stable-diffusion-v1-5 \
--prompts "Syntax example" \
--control-nets "my_cn_model.safetensors"

Specifying Generation Batch Size

Multiple image variations from the same seed can be produce on a GPU simultaneously using the --batch-size option of dgenerate. This can be used in combination with --batch-grid-size to output image grids if desired.

When not writing to image grids the files in the batch will be written to disk with the suffix _image_N where N is index of the image in the batch of images that were generated.

When producing an animation, you can either write N animation output files with the filename suffixes _animation_N where N is the index of the image in the batch which makes up the frames. Or you can use `--batch-grid-size to write frames to a single animated output where the frames are all image grids produced from the images in the batch.

With larger --batch-size values, the use of --vae-slicing can make the difference between an out of memory condition and success, so it is recommended that you try this option if you experience an out of memory condition due to the use of --batch-size.

Image Processors

Images provided through --image-seeds can be processed before being used for image generation through the use of the arguments --seed-image-processors, --mask-image-processors, and --control-image-processors. In addition, dgenerates output can be post processed with the used of the --post-processors argument, which is useful for using the upscaler processor. An important note about --post-processors is that post processing occurs before any image grid rendering is preformed when --batch-grid-size is specified with a --batch-size greater than one, meaning that the output images are processed with your processor before being put into a grid.

Each of these options can receive one or more specifications for image processing actions, multiple processing actions will be chained together one after another.

Using the option --image-processor-help with no arguments will yield a list of available image processor names.

dgenerate --image-processor-help

# Output:
#
# Available image processors:
#
#     "sam"
#     "pidi"
#     "normal-bae"
#     "upscaler"
#     "grayscale"
#     "invert"
#     "posterize"
#     "mirror"
#     "flip"
#     "mlsd"
#     "leres"
#     "hed"
#     "solarize"
#     "midas"
#     "canny"
#     "lineart"
#     "openpose"
#     "lineart-anime"

Specifying one or more specific processors for example: --image-processor-help canny openpose will yield documentation pertaining to those processor modules. This includes accepted arguments and their types for the processor module and a description of what the module does.

Custom image processor modules can also be loaded through the --plugin-modules option as discussed in the Writing Plugins section.

All processors posses the arguments: output-file, output-overwrite, device, and model-offload

The output-file argument can be used to write the processed image to a specific file, if multiple processing steps occur such as when rendering an animation or multiple generation steps, a numbered suffix will be appended to this filename. Note that an output file will only be produced in the case that the processor actually modifies an input image in some way. This can be useful for debugging an image that is being fed into diffusion or a ControlNet.

The output-overwrite is a boolean argument can be used to tell the processor that you do not want numbered suffixes to be generated for output-file and to simply overwrite it.

The device argument can be used to override what device any hardware accelerated image processing occurs on if any. It defaults to the value of --device and has the same syntax for specifying device ordinals, for instance if you have multiple GPUs you may specify device=cuda:1 to run image processing on your second GPU, etc. Not all image processors respect this argument as some image processing is only ever CPU based.

The model-offload is a boolean argument that can be used to force any torch modules / tensors associated with an image processor to immediately evacuate the GPU or other non CPU processing device as soon as the processor finishes processing an image. Usually, any modules / tensors will be brought on to the desired device right before processing an image, and left on the device until the image processor object leaves scope and is garbage collected. This can be useful for achieving certain GPU or processing device memory constraints, however it is slower when processing multiple images in a row, as the modules / tensors must be brought on to the desired device repeatedly for each image. In the context of dgenerate invocations where processors can be used as preprocessors or postprocessors, the image processor object is garbage collected when the invocation completes, this is also true for the \image_process directive. Using this argument with a preprocess specification, such as --control-image-processors may yield a noticeable memory overhead reduction when using a single GPU, as any models from the image processor will be moved to the CPU immediately when it is done, clearing up VRAM space before the diffusion models enter GPU VRAM.

For an example, images can be processed with the canny edge detection algorithm or OpenPose (rigging generation) before being used for generation with a model + a ControlNet.

This image of a horse is used in the example below with a ControlNet that is trained to generate images from canny edge detected input.

# --control-image-processors is only used for control images
# in this case the single image seed is considered a control image
# because --control-nets is being used

dgenerate stabilityai/stable-diffusion-xl-base-1.0 --model-type torch-sdxl \
--variant fp16 --dtype float16 \
--vae "AutoencoderKL;model=madebyollin/sdxl-vae-fp16-fix" \
--sdxl-refiner stabilityai/stable-diffusion-xl-refiner-1.0 \
--inference-steps 30 \
--guidance-scales 8 \
--prompts "Majestic unicorn, high quality, masterpiece, high resolution; low quality, bad quality, sketches" \
--control-nets "diffusers/controlnet-canny-sdxl-1.0;scale=0.5" \
--image-seeds "horse.jpeg" \
--control-image-processors "canny;lower=50;upper=100" \
--gen-seeds 2 \
--output-size 1024 \
--output-path unicorn

The --control-image-processors has a special additional syntax that the other processor specification options do not, which is used to describe which processor group is affecting which control guidance image source in an --image-seeds specification.

For instance if you have multiple control guidance images, and multiple control nets which are going to use those images, or frames etc. and you want to process each guidance image with a separate processor OR processor chain. You can specify how each image is processed by delimiting the processor specification groups with + (the plus symbol)

Like this:

  • --control-nets "huggingface/controlnet1" "huggingface/controlnet2"

  • --image-seeds "image1.png, image2.png"

  • --control-image-processors "affect-image1" + "affect-image2"

Specifying a non-equal amount of control guidance images and --control-nets URIs is considered a syntax error and you will receive an error message if you do so.

You can use processor chaining as well:

  • --control-nets "huggingface/controlnet1" "huggingface/controlnet2"

  • --image-seeds "image1.png, image2.png"

  • --control-image-processors "affect-image1" "affect-image1-again" + "affect-image2"

In the case that you would only like the second image affected:

  • --control-nets "huggingface/controlnet1" "huggingface/controlnet2"

  • --image-seeds "image1.png, image2.png"

  • --control-image-processors + "affect-image2"

The plus symbol effectively creates a NULL processor as the first entry in the example above.

When multiple guidance images are present, it is a syntax error to specify more processor chains than control guidance images. Specifying less processor chains simply means that the trailing guidance images will not be processed, you can avoid processing leading guidance images with the mechanism described above.

This can be used with an arbitrary amount of control image sources and control nets, take for example the specification:

  • --control-nets "huggingface/controlnet1" "huggingface/controlnet2" "huggingface/controlnet3"

  • --image-seeds "image1.png, image2.png, image3.png"

  • --control-image-processors + + "affect-image3"

The two + (plus symbol) arguments indicate that the first two images mentioned in the control image specification in --image-seeds are not to be processed by any processor.

Upscaling with Diffusion Upscaler Models

Stable diffusion image upscaling models can be used via the model types torch-upscaler-x2 and torch-upscaler-x4.

The image used in the example below is this low resolution cat

# The image produced with this model will be
# two times the --output-size dimension IE: 512x512 in this case
# The image is being resized to 256x256, and then upscaled by 2x

dgenerate stabilityai/sd-x2-latent-upscaler --variant fp16 --dtype float16 \
--model-type torch-upscaler-x2 \
--prompts "a picture of a white cat" \
--image-seeds low_res_cat.png \
--output-size 256


# The image produced with this model will be
# four times the --output-size dimension IE: 1024x1024 in this case
# The image is being resized to 256x256, and then upscaled by 4x

dgenerate stabilityai/stable-diffusion-x4-upscaler --variant fp16 --dtype float16 \
 --model-type torch-upscaler-x4 \
--prompts "a picture of a white cat" \
--image-seeds low_res_cat.png \
--output-size 256 \
--upscaler-noise-levels 20

Sub Commands (image-process)

dgenerate implements additional functionality through the option --sub-command.

For a list of available sub-commands use --sub-command-help, which by default will list available sub-command names.

For additional information on a specific sub-command use --sub-command-help NAME multiple sub-command names can be specified here if desired however currently there is only one available.

All sub-commands respect the --plugin-modules and --verbose arguments even if their help output does not specify them, these arguments are handled by dgenerate and not the sub-command.

currently the only implemented sub-command is image-process, which you can read the help output of using dgenerate --sub-command image-process --help

The image-process sub-command can be used to run image processors implemented by dgenerate on any file of your choosing including animated images and videos.

It has a similar but slightly different design/usage to the main dgenerate command itself.

It can be used to run canny edge detection, openpose, etc. on any image or video/animated file that you want.

The help output of image-process is as follows:

usage: \image_process [-h] [-p PROCESSORS [PROCESSORS ...]] [--plugin-modules PATH [PATH ...]]
                      [-o OUTPUT [OUTPUT ...]] [-ff FRAME_FORMAT] [-ox] [-r RESIZE] [-na]
                      [-al ALIGN] [-d DEVICE] [-fs FRAME_NUMBER] [-fe FRAME_NUMBER] [-nf | -naf]
                      input [input ...]

This command allows you to use dgenerate image processors directly on files of your choosing.

positional arguments:
  input                 Input file paths, may be a static images or animated files supported by
                        dgenerate. URLs will be downloaded.

options:
  -h, --help            show this help message and exit
  -p PROCESSORS [PROCESSORS ...], --processors PROCESSORS [PROCESSORS ...]
                        One or more image processor URIs, specifying multiple will chain them
                        together. See: dgenerate --image-processor-help
  --plugin-modules PATH [PATH ...]
                        Specify one or more plugin module folder paths (folder containing
                        __init__.py) or python .py file paths to load as plugins. Plugin modules
                        can implement image processors.
  -o OUTPUT [OUTPUT ...], --output OUTPUT [OUTPUT ...]
                        Output files, parent directories mentioned in output paths will be created
                        for you if they do not exist. If you do not specify output files, the
                        output file will be placed next to the input file with the added suffix
                        '_processed_N' unless --output-overwrite is specified, in that case it
                        will be overwritten. If you specify multiple input files and output files,
                        you must specify an output file for every input file, or a directory
                        (indicated with a trailing directory seperator character, for example
                        "my_dir/" or "my_dir\" if the directory does not exist yet). Failure to
                        specify an output file with a URL as an input is considered an error.
                        Supported file extensions for image output are equal to those listed under
                        --frame-format.
  -ff FRAME_FORMAT, --frame-format FRAME_FORMAT
                        Image format for animation frames. Must be one of: png, apng, blp, bmp,
                        dib, bufr, pcx, dds, ps, eps, gif, grib, h5, hdf, jp2, j2k, jpc, jpf, jpx,
                        j2c, icns, ico, im, jfif, jpe, jpg, jpeg, tif, tiff, mpo, msp, palm, pdf,
                        pbm, pgm, ppm, pnm, pfm, bw, rgb, rgba, sgi, tga, icb, vda, vst, webp,
                        wmf, emf, or xbm.
  -ox, --output-overwrite
                        Indicate that it is okay to overwrite files, instead of appending a
                        duplicate suffix.
  -r RESIZE, --resize RESIZE
                        Preform naive image resizing (LANCZOS).
  -na, --no-aspect      Make --resize ignore aspect ratio.
  -al ALIGN, --align ALIGN
                        Align images / videos to this value in pixels, default is 8. Specifying 1
                        will disable resolution alignment.
  -d DEVICE, --device DEVICE
                        Processing device, for example "cuda", "cuda:1".
  -fs FRAME_NUMBER, --frame-start FRAME_NUMBER
                        Starting frame slice point for animated files (zero-indexed), the
                        specified frame will be included. (default: 0)
  -fe FRAME_NUMBER, --frame-end FRAME_NUMBER
                        Ending frame slice point for animated files (zero-indexed), the specified
                        frame will be included.
  -nf, --no-frames      Do not write frames, only an animation file. Cannot be used with --no-
                        animation-file.
  -naf, --no-animation-file
                        Do not write an animation file, only frames. Cannot be used with --no-
                        frames.

Overview of specifying image-process inputs and outputs

# Overview of specifying outputs, image-process can do simple operations
# like resizing images and forcing image alignment with --align, without the
# need to specify any other processing operations with --processors. Running
# image-process on an image with no other arguments simply aligns it to 8 pixels,
# given the defaults for its command line arguments

# More file formats than .png are supported for static image output, all
# extensions mentioned in the image-process --help documentation for --frame-format
# are supported, the supported formats are identical to that mentioned in the --image-format
# option help section of dgenerates --help output

# my_file.png -> my_file_processed_1.png

dgenerate --sub-command image-process my_file.png --resize 512x512

# my_file.png -> my_file.png (overwrite)

dgenerate --sub-command image-process my_file.png --resize 512x512 --output-overwrite

# my_file.png -> my_file.png (overwrite)

dgenerate --sub-command image-process my_file.png -o my_file.png --resize 512x512 --output-overwrite

# my_file.png -> my_dir/my_file_processed_1.png

dgenerate --sub-command image-process my_file.png -o my_dir/ --resize 512x512 --no-aspect

# my_file_1.png -> my_dir/my_file_1_processed_1.png
# my_file_2.png -> my_dir/my_file_2_processed_2.png

dgenerate --sub-command image-process my_file_1.png my_file_2.png -o my_dir/ --resize 512x512

# my_file_1.png -> my_dir_1/my_file_1_processed_1.png
# my_file_2.png -> my_dir_2/my_file_2_processed_2.png

dgenerate --sub-command image-process my_file_1.png my_file_2.png \
-o my_dir_1/ my_dir_2/ --resize 512x512

# my_file_1.png -> my_dir_1/renamed.png
# my_file_2.png -> my_dir_2/my_file_2_processed_2.png

dgenerate --sub-command image-process my_file_1.png my_file_2.png \
-o my_dir_1/renamed.png my_dir_2/ --resize 512x512

A few usage examples with processors:

# image-process can support any input format that dgenerate itself supports
# including videos and animated files. It also supports all output formats
# supported by dgenerate for writing videos/animated files, and images.

# create a video rigged with OpenPose, frames will be rendered to the directory "output" as well.

dgenerate --sub-command image-process my-video.mp4 \
-o output/rigged-video.mp4 --processors "openpose;include-hand=true;include-face=true"

# Canny edge detected video, also using processor chaining to mirror the frames
# before they are edge detected

dgenerate --sub-command image-process my-video.mp4 \
-o output/canny-video.mp4 --processors mirror "canny;blur=true;threshold-algo=otsu"

Upscaling with chaiNNer Compatible Upscaler Models

chaiNNer compatible upscaler models from https://openmodeldb.info/ and elsewhere can be utilized for tiled upscaling using dgenerates upscaler image processor and the --post-processors option. The upscaler image processor can also be used for processing input images via the other options mentioned in Image Processors such as --seed-image-processors

The upscaler image processor can make use of URLs or files on disk.

In this example we reference a link to the SwinIR x4 upscaler from the creators github release.

This uses the upscaler to upscale the output image by x4 producing an image that is 4096x4096

The upscaler image processor respects the --device option of dgenerate, and is CUDA accelerated by default.

dgenerate stabilityai/stable-diffusion-xl-base-1.0 --model-type torch-sdxl \
--variant fp16 --dtype float16 \
--sdxl-refiner stabilityai/stable-diffusion-xl-refiner-1.0 \
--sdxl-high-noise-fractions 0.8 \
--inference-steps 40 \
--guidance-scales 8 \
--output-size 1024 \
--prompts "Photo of a horse standing near the open door of a red barn, high resolution; artwork" \
--post-processors "upscaler;model=https://github.com/JingyunLiang/SwinIR/releases/download/v0.0/001_classicalSR_DIV2K_s48w8_SwinIR-M_x4.pth"

In addition to this the \image_process config directive, or --sub-command image-process can be used to upscale any file that you want including animated images and videos. It is worth noting that the sub-command and directive will work with any named image processor implemented by dgenerate.

# print the help output of the sub command "image-process"
# the image-process subcommand can process multiple files and do
# and several other things, it is worth reading :)

dgenerate --sub-command image-process --help

# any directory mentioned in the output spec is created automatically

dgenerate --sub-command image-process my-file.png \
--output output/my-file-upscaled.png \
--processors "upscaler;model=https://github.com/JingyunLiang/SwinIR/releases/download/v0.0/001_classicalSR_DIV2K_s48w8_SwinIR-M_x4.pth"

Writing and Running Configs

Program configuration can be read from STDIN and processed in batch with model caching, in order to increase speed when many invocations with different arguments are desired.

Loading the necessary libraries and bringing models into memory is quite slow, so using the program this way allows for multiple invocations using different arguments, without needing to load the libraries and models multiple times, only the first time, or in the case of models the first time the model is encountered.

When a model is loaded dgenerate caches it in memory with it’s creation parameters, which includes among other things the pipeline mode (basic, img2img, inpaint), user specified UNets, VAEs, LoRAs, Textual Inversions, and ControlNets. If another invocation of the model occurs with creation parameters that are identical, it will be loaded out of an in memory cache.

Diffusion Pipelines, user specified UNets, VAEs, and ControlNet models are cached individually.

UNets, VAEs and ControlNet model objects can be reused by diffusion pipelines in certain situations when specified explicitly and this is taken advantage of by using an in memory cache of these objects.

In effect, creation of a pipeline is memoized, as well as the creation of any pipeline subcomponents when you have specified them explicitly with a URI.

A number of things effect cache hit or miss upon a dgenerate invocation, extensive information regarding runtime caching behavior of a pipelines and other models can be observed using -v/--verbose

When loading multiple different models be aware that they will all be retained in memory for the duration of program execution, unless all models are flushed using the \clear_model_cache directive or individually using one of: \clear_pipeline_cache, \clear_unet_cache, \clear_vae_cache, or \clear_control_net_cache. dgenerate uses heuristics to clear the in memory cache automatically when needed, including a size estimation of models before they enter system memory, however by default it will use system memory very aggressively and it is not entirely impossible to run your system out of memory if you are not careful.

Environmental variables will be expanded in the provided input to STDIN when using this feature, you may use Unix style notation for environmental variables even on Windows.

There is also information about the previous file output of dgenerate that is available to use via Jinja2 templating which can be passed to --image-seeds, these include:

  • {{ last_images }} (An iterable of un-quoted filenames)

  • {{ last_animations }} (An iterable of un-quoted filenames)

There are templates for prompts, containing the previous prompt values:

  • {{ last_prompts }} (List of prompt objects with the un-quoted attributes ‘positive’ and ‘negative’)

  • {{ last_sdxl_second_prompts }}

  • {{ last_sdxl_refiner_prompts }}

  • {{ last_sdxl_refiner_second_prompts }}

A list of template variables with their types and values that are assigned by a dgenerate invocation can be printed out using the \templates_help directive mentioned in an example further down.

Available custom jinja2 functions/filters are:

  • {{ first(list_of_items) }} (First element in a list)

  • {{ last(list_of_items) }} (Last element in a list)

  • {{ unquote('"unescape-me"') }} (shell unquote / split, works on strings and lists)

  • {{ quote('escape-me') }} (shell quote, works on strings and lists)

  • {{ format_prompt(prompt_object) }} (Format and quote one or more prompt objects with their delimiter, works on single prompts and lists)

  • {{ gen_seeds(n) }} (Return a list of random integer seeds in the form of strings)

  • {{ cwd() }} (Return the current working directory as a string)

The above functions which possess arguments can be used as either a function or filter IE: {{ "quote_me" | quote }}

The option --functions-help and the directive \functions_help can be used to print documentation for template functions. When the option or directive is used alone all built in functions will be printed with their signature, specifying function names as arguments will print documentation for those specific functions.

Empty lines and comments starting with # will be ignored, comments that occur at the end of lines will also be ignored.

You can create a multiline continuation using \ to indicate that a line continues, if the next line starts with - it is considered part of a continuation as well even if \ had not been used previously. Comments cannot be interspersed with invocation or directive arguments without the use of \, at least on the last line before whitespace and comments start.

The following is a config file example that covers very basic syntax concepts:

#! dgenerate 3.5.1

# If a hash-bang version is provided in the format above
# a warning will be produced if the version you are running
# is not compatible (SemVer), this can be used anywhere in the
# config file, a line number will be mentioned in the warning when the
# version check fails

# Comments in the file will be ignored

# Each dgenerate invocation in the config begins with the path to a model,
# IE. the first argument when using dgenerate from the command line, the
# rest of the options that follow are the options to dgenerate that you
# would use on the command line

# Guarantee unique file names are generated under the output directory by specifying unique seeds

stabilityai/stable-diffusion-2-1 --prompts "an astronaut riding a horse" --seeds 41509644783027 --output-path output --inference-steps 30 --guidance-scales 10
stabilityai/stable-diffusion-2-1 --prompts "a cowboy riding a horse" --seeds 78553317097366 --output-path output --inference-steps 30 --guidance-scales 10
stabilityai/stable-diffusion-2-1 --prompts "a martian riding a horse" --seeds 22797399276707 --output-path output --inference-steps 30 --guidance-scales 10

# Guarantee that no file name collisions happen by specifying different output paths for each invocation

stabilityai/stable-diffusion-2-1 --prompts "an astronaut riding a horse" --output-path unique_output_1  --inference-steps 30 --guidance-scales 10
stabilityai/stable-diffusion-2-1 --prompts "a cowboy riding a horse" --output-path unique_output_2 --inference-steps 30 --guidance-scales 10

# Multiline continuations are possible implicitly for argument
# switches IE lines starting with '-'

stabilityai/stable-diffusion-2-1 --prompts "a martian riding a horse"
--output-path unique_output_3  # there can be comments at the end of lines
--inference-steps 30 \         # this comment is also ignored

# There can be comments or newlines within the continuation
# but you must provide \ on the previous line to indicate that
# it is going to happen

--guidance-scales 10

# The continuation ends (on the next line) when the last line does
# not end in \ or start with -

# the ability to use tail comments means that escaping of the # is sometimes
# necessary when you want it to appear literally, see: examples/config_syntax/tail-comments-config.txt
# for examples.


# Configuration directives provide extra functionality in a config, a directive
# invocation always starts with a backslash

# A clear model cache directive can be used inbetween invocations if cached models that
# are no longer needed in your generation pipeline start causing out of memory issues

\clear_model_cache

# Additionally these other directives exist to clear user loaded models
# out of dgenerates in memory cache individually

# Clear specifically diffusion pipelines

\clear_pipeline_cache

# Clear specifically user specified UNet models

\clear_unet_cache

# Clear specifically user specified VAE models

\clear_vae_cache

# Clear specifically ControlNet models

\clear_control_net_cache


# This model was used before but will have to be fully instantiated from scratch again
# after a cache flush which may take some time

stabilityai/stable-diffusion-2-1 --prompts "a martian riding a horse"
--output-path unique_output_4

To receive information about Jinja2 template variables that are set after a dgenerate invocation. You can use the \templates_help directive which is similar to the --templates-help option except it will print out all of the template variables assigned values instead of just their names and types. This is useful for figuring out the values of template variables set after a dgenerate invocation in a config file for debugging purposes. You can specify one or more template variable names as arguments to \templates_help to receive help for only the mentioned variable names.

Template variables set with the \set and \setp directive will also be mentioned in this output.

#! dgenerate 3.5.1

# Invocation will proceed as normal

stabilityai/stable-diffusion-2-1 --prompts "a man walking on the moon without a space suit"

# Print all set template variables

\templates_help

The \templates_help output from the above example is:

Config template variables are:

    Name: "last_model_path"
        Type: typing.Optional[str]
        Value: stabilityai/stable-diffusion-2-1
    Name: "last_subfolder"
        Type: typing.Optional[str]
        Value: None
    Name: "last_sdxl_refiner_uri"
        Type: typing.Optional[str]
        Value: None
    Name: "last_sdxl_refiner_edit"
        Type: typing.Optional[bool]
        Value: None
    Name: "last_batch_size"
        Type: typing.Optional[int]
        Value: 1
    Name: "last_batch_grid_size"
        Type: typing.Optional[tuple[int, int]]
        Value: None
    Name: "last_prompts"
        Type: collections.abc.Sequence[dgenerate.prompt.Prompt]
        Value: ['a man walking on the moon without a space suit']
    Name: "last_sdxl_second_prompts"
        Type: typing.Optional[collections.abc.Sequence[dgenerate.prompt.Prompt]]
        Value: []
    Name: "last_sdxl_refiner_prompts"
        Type: typing.Optional[collections.abc.Sequence[dgenerate.prompt.Prompt]]
        Value: []
    Name: "last_sdxl_refiner_second_prompts"
        Type: typing.Optional[collections.abc.Sequence[dgenerate.prompt.Prompt]]
        Value: []
    Name: "last_seeds"
        Type: collections.abc.Sequence[int]
        Value: [98030306583037]
    Name: "last_seeds_to_images"
        Type: <class 'bool'>
        Value: False
    Name: "last_guidance_scales"
        Type: collections.abc.Sequence[float]
        Value: [5]
    Name: "last_inference_steps"
        Type: collections.abc.Sequence[int]
        Value: [30]
    Name: "last_clip_skips"
        Type: typing.Optional[collections.abc.Sequence[int]]
        Value: []
    Name: "last_sdxl_refiner_clip_skips"
        Type: typing.Optional[collections.abc.Sequence[int]]
        Value: []
    Name: "last_image_seeds"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_parsed_image_seeds"
        Type: typing.Optional[collections.abc.Sequence[dgenerate.mediainput.ImageSeedParseResult]]
        Value: []
    Name: "last_image_seed_strengths"
        Type: typing.Optional[collections.abc.Sequence[float]]
        Value: []
    Name: "last_upscaler_noise_levels"
        Type: typing.Optional[collections.abc.Sequence[int]]
        Value: []
    Name: "last_guidance_rescales"
        Type: typing.Optional[collections.abc.Sequence[float]]
        Value: []
    Name: "last_image_guidance_scales"
        Type: typing.Optional[collections.abc.Sequence[float]]
        Value: []
    Name: "last_s_cascade_decoder_uri"
        Type: typing.Optional[str]
        Value: None
    Name: "last_s_cascade_decoder_prompts"
        Type: typing.Optional[collections.abc.Sequence[dgenerate.prompt.Prompt]]
        Value: []
    Name: "last_s_cascade_decoder_inference_steps"
        Type: typing.Optional[collections.abc.Sequence[int]]
        Value: []
    Name: "last_s_cascade_decoder_guidance_scales"
        Type: typing.Optional[collections.abc.Sequence[float]]
        Value: []
    Name: "last_sdxl_high_noise_fractions"
        Type: typing.Optional[collections.abc.Sequence[float]]
        Value: []
    Name: "last_sdxl_refiner_inference_steps"
        Type: typing.Optional[collections.abc.Sequence[int]]
        Value: []
    Name: "last_sdxl_refiner_guidance_scales"
        Type: typing.Optional[collections.abc.Sequence[float]]
        Value: []
    Name: "last_sdxl_refiner_guidance_rescales"
        Type: typing.Optional[collections.abc.Sequence[float]]
        Value: []
    Name: "last_sdxl_aesthetic_scores"
        Type: typing.Optional[collections.abc.Sequence[float]]
        Value: []
    Name: "last_sdxl_original_sizes"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_sdxl_target_sizes"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_sdxl_crops_coords_top_left"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_sdxl_negative_aesthetic_scores"
        Type: typing.Optional[collections.abc.Sequence[float]]
        Value: []
    Name: "last_sdxl_negative_original_sizes"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_sdxl_negative_target_sizes"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_sdxl_negative_crops_coords_top_left"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_sdxl_refiner_aesthetic_scores"
        Type: typing.Optional[collections.abc.Sequence[float]]
        Value: []
    Name: "last_sdxl_refiner_original_sizes"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_sdxl_refiner_target_sizes"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_sdxl_refiner_crops_coords_top_left"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_sdxl_refiner_negative_aesthetic_scores"
        Type: typing.Optional[collections.abc.Sequence[float]]
        Value: []
    Name: "last_sdxl_refiner_negative_original_sizes"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_sdxl_refiner_negative_target_sizes"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_sdxl_refiner_negative_crops_coords_top_left"
        Type: typing.Optional[collections.abc.Sequence[tuple[int, int]]]
        Value: []
    Name: "last_unet_uri"
        Type: typing.Optional[str]
        Value: None
    Name: "last_second_unet_uri"
        Type: typing.Optional[str]
        Value: None
    Name: "last_vae_uri"
        Type: typing.Optional[str]
        Value: None
    Name: "last_vae_tiling"
        Type: <class 'bool'>
        Value: False
    Name: "last_vae_slicing"
        Type: <class 'bool'>
        Value: False
    Name: "last_lora_uris"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_textual_inversion_uris"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_control_net_uris"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_scheduler"
        Type: typing.Optional[str]
        Value: None
    Name: "last_sdxl_refiner_scheduler"
        Type: typing.Optional[str]
        Value: None
    Name: "last_s_cascade_decoder_scheduler"
        Type: typing.Optional[str]
        Value: None
    Name: "last_safety_checker"
        Type: <class 'bool'>
        Value: False
    Name: "last_model_type"
        Type: <enum 'ModelType'>
        Value: ModelType.TORCH
    Name: "last_device"
        Type: <class 'str'>
        Value: cuda
    Name: "last_dtype"
        Type: <enum 'DataType'>
        Value: DataType.AUTO
    Name: "last_revision"
        Type: <class 'str'>
        Value: main
    Name: "last_variant"
        Type: typing.Optional[str]
        Value: None
    Name: "last_output_size"
        Type: typing.Optional[tuple[int, int]]
        Value: (512, 512)
    Name: "last_no_aspect"
        Type: <class 'bool'>
        Value: False
    Name: "last_output_path"
        Type: <class 'str'>
        Value: output
    Name: "last_output_prefix"
        Type: typing.Optional[str]
        Value: None
    Name: "last_output_overwrite"
        Type: <class 'bool'>
        Value: False
    Name: "last_output_configs"
        Type: <class 'bool'>
        Value: False
    Name: "last_output_metadata"
        Type: <class 'bool'>
        Value: False
    Name: "last_animation_format"
        Type: <class 'str'>
        Value: mp4
    Name: "last_image_format"
        Type: <class 'str'>
        Value: png
    Name: "last_no_frames"
        Type: <class 'bool'>
        Value: False
    Name: "last_frame_start"
        Type: <class 'int'>
        Value: 0
    Name: "last_frame_end"
        Type: typing.Optional[int]
        Value: None
    Name: "last_auth_token"
        Type: typing.Optional[str]
        Value: None
    Name: "last_seed_image_processors"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_mask_image_processors"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_control_image_processors"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_post_processors"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_offline_mode"
        Type: <class 'bool'>
        Value: False
    Name: "last_model_cpu_offload"
        Type: <class 'bool'>
        Value: False
    Name: "last_model_sequential_offload"
        Type: <class 'bool'>
        Value: False
    Name: "last_sdxl_refiner_cpu_offload"
        Type: typing.Optional[bool]
        Value: None
    Name: "last_sdxl_refiner_sequential_offload"
        Type: typing.Optional[bool]
        Value: None
    Name: "last_s_cascade_decoder_cpu_offload"
        Type: typing.Optional[bool]
        Value: None
    Name: "last_s_cascade_decoder_sequential_offload"
        Type: typing.Optional[bool]
        Value: None
    Name: "last_plugin_module_paths"
        Type: collections.abc.Sequence[str]
        Value: []
    Name: "last_verbose"
        Type: <class 'bool'>
        Value: False
    Name: "last_cache_memory_constraints"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_pipeline_cache_memory_constraints"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_unet_cache_memory_constraints"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_vae_cache_memory_constraints"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_control_net_cache_memory_constraints"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "last_images"
        Type: collections.abc.Iterable[str]
        Value: <dgenerate.renderloop.RenderLoop.written_images.<locals>.Iterable object at ...>
    Name: "last_animations"
        Type: collections.abc.Iterable[str]
        Value: <dgenerate.renderloop.RenderLoop.written_animations.<locals>.Iterable object at ...>
    Name: "injected_args"
        Type: collections.abc.Sequence[str]
        Value: []
    Name: "injected_device"
        Type: typing.Optional[str]
        Value: None
    Name: "injected_verbose"
        Type: typing.Optional[bool]
        Value: False
    Name: "injected_plugin_modules"
        Type: typing.Optional[collections.abc.Sequence[str]]
        Value: []
    Name: "saved_modules"
        Type: dict[str, dict[str, typing.Any]]
        Value: {}
    Name: "glob"
        Type: <class 'module'>
        Value: <module 'glob'>
    Name: "path"
        Type: <class 'module'>
        Value: <module 'ntpath' (frozen)>

You can see all available config directives with the command dgenerate --directives-help, providing this option with a name, or multiple names such as: dgenerate --directives-help save_modules use_modules will print the documentation for the specified directives. The backslash may be omitted. This option is also available as the config directive \directives_help.

Example output:

Available config directives:

    "\help"
    "\templates_help"
    "\directives_help"
    "\functions_help"
    "\image_processor_help"
    "\clear_model_cache"
    "\clear_pipeline_cache"
    "\clear_unet_cache"
    "\clear_vae_cache"
    "\clear_control_net_cache"
    "\save_modules"
    "\use_modules"
    "\clear_modules"
    "\gen_seeds"
    "\pwd"
    "\ls"
    "\cd"
    "\pushd"
    "\popd"
    "\exec"
    "\mv"
    "\cp"
    "\mkdir"
    "\rmdir"
    "\rm"
    "\exit"
    "\image_process"
    "\import_plugins"
    "\set"
    "\sete"
    "\setp"
    "\unset"
    "\print"
    "\echo"

Here are examples of other available directives such as \set, \setp, and \print as well as some basic Jinja2 templating usage. This example also covers the usage and purpose of \save_modules for saving and reusing pipeline modules such as VAEs etc. outside of relying on the caching system.

#! dgenerate 3.5.1

# You can define your own template variables with the \set directive
# the \set directive does not do any shell args parsing on its value
# operand, meaning the quotes will be in the string that is assigned
# to the variable my_prompt

\set my_prompt "an astronaut riding a horse; bad quality"

# If your variable is long you can use continuation, note that
# continuation replaces newlines and surrounding whitespace
# with a single space

\set my_prompt "my very very very very very very very \
                very very very very very very very very \
                long long long long long prompt"

# You can print to the console with templating using the \print directive
# for debugging purposes

\print {{ my_prompt }}


# The \setp directive can be used to define python literal template variables

\setp my_list [1, 2, 3, 4]

\print {{ my_list | join(' ') }}


# Literals defined by \setp can reference other template variables by name.
# the following creates a nested list

\setp my_list [1, 2, my_list, 4]

\print {{ my_list }}


# \setp can evaluate template functions

\setp directory_content glob.glob('*')

\setp current_directory cwd()


# the \gen_seeds directive can be used to store a list of
# random seed integers into a template variable.
# (they are strings for convenience)

\gen_seeds my_seeds 10

\print {{ my_seeds | join(' ') }}


# An invocation sets various template variables related to its
# execution once it is finished running

stabilityai/stable-diffusion-2-1 --prompts {{ my_prompt }} --gen-seeds 5


# Print a quoted filename of the last image produced by the last invocation
# This could potentially be passed to --image-seeds of the next invocation
# If you wanted to run another pass over the last image that was produced

\print {{ quote(last(last_images)) }}

# you can also get the first image easily with the function "first"

\print {{ quote(first(last_images)) }}


# if you want to append a mask image file name

\print "{{ last(last_images) }};my-mask.png"


# Print a list of properly quoted filenames produced by the last
# invocation separated by spaces if there is multiple, this could
# also be passed to --image-seeds

# in the case that you have generated an animated output with frame
# output enabled, this will contain paths to the frames

\print {{ quote(last_images) }}


# For loops are possible

\print {% for image in last_images %}{{ quote(image) }} {% endfor %}


# For loops are possible with normal continuation
# when not using a heredoc template continuation (mentioned below),
# such as when the loop occurs in the body of a directive or a
# dgenerate invocation, however this sort of continuation usage will
# replace newlines and whitespace with a single space.

# IE this template will be: "{% for image in last_images %} {{ quote(image) }} {% endfor %}"

\print {% for image in last_images %} \
        {{ quote(image) }} \
       {% endfor %}


# Access to the last prompt is available in a parsed representation
# via "last_prompt", which can be formatted properly for reuse
# by using the function "format_prompt"

stabilityai/stable-diffusion-2-1 --prompts {{ format_prompt(last(last_prompts)) }}

# You can get only the positive or negative part if you want via the "positive"
# and "negative" properties on a prompt object, these attributes are not
# quoted so you need to quote them one way or another, preferably using the
# dgenerate template function "quote" which will shell quote any special
# characters that the argument parser is not going to understand

stabilityai/stable-diffusion-2-1 --prompts {{ quote(last(last_prompts).positive) }}

# "last_prompts" returns all the prompts used in the last invocation as a list
# the "format_prompt" function can also work on a list

stabilityai/stable-diffusion-2-1 --prompts "prompt 1" "prompt 2" "prompt 3"

stabilityai/stable-diffusion-2-1 --prompts {{ format_prompt(last_prompts) }}


# Execute additional config with full templating.
# The sequence !END is interpreted as the end of a
# template continuation, a template continuation is
# started when a line begins with the character {
# and is effectively a heredoc, in that all whitespace
# within is preserved including newlines

{% for image in last_images %}
    stabilityai/stable-diffusion-2-1 --image-seeds {{ quote(image) }} --prompts {{ my_prompt }}
{% endfor %} !END


# Multiple lines can be used with a template continuation
# the inside of the template will be expanded to raw config
# and then be ran, so make sure to use line continuations within
# where they are necessary as you would do in the top level of
# a config file. The whole of the template continuation is
# processed by Jinja, from { to !END, so only one !END is
# ever necessary after the external template
# when dealing with nested templates

{% for image in last_images %}
    stabilityai/stable-diffusion-2-1
    --image-seeds {{ quote(image) }}
    --prompts {{ my_prompt }}
{% endfor %} !END


# The above are both basically equivalent to this

stabilityai/stable-diffusion-2-1 --image-seeds {{ quote(last_images) }} --prompts {{ my_prompt }}


# You can save modules from the main pipeline used in the last invocation
# for later reuse using the \save_modules directive, the first argument
# is a variable name and the rest of the arguments are diffusers pipeline
# module names to save to the variable name, this is an advanced usage
# and requires some understanding of the diffusers library to utilize correctly

stabilityai/stable-diffusion-2-1
--variant fp16
--dtype float16
--prompts "an astronaut walking on the moon"
--safety-checker
--output-size 512


\save_modules stage_1_modules feature_extractor safety_checker

# that saves the feature_extractor module object in the pipeline above,
# you can specify multiple module names to save if desired

# Possible Module Names:

# unet
# vae
# text_encoder
# text_encoder_2
# tokenizer
# tokenizer_2
# safety_checker
# feature_extractor
# controlnet
# scheduler


# To use the saved modules in the next invocation use  \use_modules

\use_modules stage_1_modules

# now the next invocation will use those modules instead of loading them from internal
# in memory cache, disk, or huggingface

stabilityai/stable-diffusion-x4-upscaler
--variant fp16
--dtype float16
--model-type torch-upscaler-x4
--prompts {{ format_prompt(last_prompts) }}
--image-seeds {{ quote(last_images) }}
--vae-tiling


# you should clear out the saved modules if you no longer need them
# and your config file is going to continue, or if the dgenerate
# process is going to be kept alive for some reason such as in
# some library usage scenarios, or perhaps if you are using it
# like a server that reads from stdin :)

\clear_modules stage_1_modules

The entirety of pythons builtin glob and os.path module are also accessible during templating, you can glob directories using functions from the glob module, you can also glob directory’s using shell globbing.

#! dgenerate 3.5.1

# globbing can be preformed via shell expansion or using
# the glob module inside jinja templates

# note that shell globbing and home directory expansion
# does not occur inside quoted strings

# \echo can be use to show the results of globbing that
# occurs during shell expansion. \print does not preform shell
# expansion nor does \set or \setp, all other directives do, as well
# as dgenerate invocations

# shell globs which produce 0 files are considered an error

\echo ../media/*.png

\echo ~

# \sete can be used to set a template variable to the result
# of one or more shell globs

\sete myfiles ../media/*.png


# with Jinja2:


# The most basic usage is full expansion of every file

\set myfiles {{ quote(glob.glob('../media/*.png')) }}

\print {{ myfiles }}

# If you have a LOT of files, you may want to
# process them using an iterator like so

{% for file in glob.iglob('../media/*.png') %}
    \print {{ quote(file) }}
{% endfor %} !END

# usage of os.path via path

\print {{ path.abspath('.') }}

# Simple inline usage

stabilityai/stable-diffusion-2-1
--variant fp16
--dtype float16
--prompts "In the style of picaso"
--image-seeds {{ quote(glob.glob('../media/*.png')) }}
--output-path {{ quote(path.join(path.abspath('.'), 'output')) }}

The dgenerate sub-command image-process has a config directive implementation.

#! dgenerate 3.5.1

# print the help message of --sub-command image-process, this does
# not cause the config to exit

\image_process --help

\set myfiles {{ quote(glob.glob('my_images/*.png')) }}

# this will create the directory "upscaled"
# the files will be named "upscaled/FILENAME_processed_1.png" "upscaled/FILENAME_processed_2.png" ...

\image_process {{ myfiles }} \
--output upscaled/
--processors "upscaler;model=https://github.com/xinntao/Real-ESRGAN/releases/download/v0.2.5.0/realesr-general-x4v3.pth"


# the last_images template variable will be set, last_animations is also usable if
# animations were written. In the case that you have generated an animated output with frame
# output enabled, this will contain paths to the frames

\print {{ quote(last_images) }}

The \exec directive can be used to run native system commands and supports bash pipe and file redirection syntax in a platform independent manner. All file redirection operators supported by bash are supported. This can be useful for running other image processing utilities as subprocesses from within a config script.

#! dgenerate 3.5.1

# run dgenerate as a subprocess, read a config
# and send stdout and stderr to a file

\exec dgenerate < my_config.txt &> log.txt

# chaining processes together with pipes is supported
# this example emulates 'cat' on Windows using cmd

\exec cmd /c "type my_config.txt" | dgenerate &> log.txt

# on a Unix platform you could simply use cat

\exec cat my_config.txt | dgenerate &> log.txt

You can exit a config early if need be using the \exit directive

#! dgenerate 3.5.1

# exit the process with return code 1, which indicates an error

\print "some error occurred"
\exit 1

To utilize configuration files on Linux, pipe them into the command or use redirection:

# Pipe
cat my-config.txt | dgenerate

# Redirection
dgenerate < my-config.txt

On Windows CMD:

dgenerate < my-config.txt

On Windows Powershell:

Get-Content my-config.txt | dgenerate

Config Argument Injection

You can inject arguments into every dgenerate invocation of a batch processing configuration by simply specifying them. The arguments will added to the end of the argument specification of every call.

# Pipe
cat my-animations-config.txt | dgenerate --frame-start 0 --frame-end 10

# Redirection
dgenerate --frame-start 0 --frame-end 10 < my-animations-config.txt

On Windows CMD:

dgenerate  --frame-start 0 --frame-end 10 < my-animations-config.txt

On Windows Powershell:

Get-Content my-animations-config.txt | dgenerate --frame-start 0 --frame-end 10

If you need arguments injected from the command line within the config for some other purpose such as for using with the \image_process directive which does not automatically recieve injected arguments, use the injected_args and related injected_* template variables.

# all injected args

\print {{ quote(injected_args) }}

# just the injected device

\print {{ '--device '+injected_device if injected_device else '' }}

# was -v/--verbose injected?

\print {{ '-v' if injected_verbose else '' }}

# plugin module paths injected with --plugin-modules

\print {{ quote(injected_plugin_modules) if injected_plugin_modules else '' }}

Console UI

console ui

You can launch a cross platform Tkinter GUI for interacting with a live dgenerate process using dgenerate --console or via the optionally installed desktop shortcut on Windows.

This provides a basic REPL for the dgenerate config language utilizing a dgenerate --shell subprocess to act as the live interpreter.

It can be used to work with dgenerate without encountering the startup overhead of loading large python modules for every command line invocation.

The GUI console supports command history via the up and down arrow keys as a normal terminal would, optional multiline input for sending multiline commands / configuration to the shell. And various editing niceties such as GUI file / directory path insertion, the ability to insert templated command recipes for quickly getting started and getting results, and a selection menu for inserting karras schedulers by name.

Also supported is the ability to view the latest image as it is produced by dgenerate or \image_process via an image pane or standalone window.

The console UI always starts in single line entry mode (terminal mode), multiline input mode is activated via the insert key and indicated by a blinking red cursor, you must deactivate this mode to submit commands via the enter key, however you can use the run button from the run menu (Or Ctrl+Space) to run code in this mode. You cannot page through command history in this mode, and code will remain in the console input pane upon running it making the UI function more like a code editor than a terminal.

Ctrl+Q can be used in input pane for killing and then restarting the background interpreter process.

Ctrl+F (find) and Ctrl+R (find/replace) is supported for both the input and output panes.

All common text editing features that you would expect to find in a basic text editor are present, as well as python regex support for find / replace, with group substitution supporting the syntax \n or \{n} where n is the match group number.

Scroll back history in the output window is currently limited to 10000 lines however the console app itself echos all stdout and stderr of the interpreter, so you can save all output to a log file via file redirection if desired when launching the console from the terminal.

This can be configured by setting the environmental variable DGENERATE_CONSOLE_MAX_SCROLLBACK=10000

Command history is currently limited to 500 commands, multiline commands are also saved to command history. The command history file is stored at -/.dgenerate_console_history, on Windows this equates to %USERPROFILE%\.dgenerate_console_history

This can be configured by setting the environmental variable DGENERATE_CONSOLE_MAX_HISTORY=500

Any UI settings that persist on startup are stored in -/.dgenerate_console_settings or on Windows %USERPROFILE%\.dgenerate_console_settings

Writing Plugins

dgenerate has the capability of loading in additional functionality through the use of the --plugin-modules option and \import_plugins config directive.

You simply specify one or more module directories on disk, or paths to python files, using this argument.

dgenerate supports implementing image processors and config directives through plugins.

A code example as well as a usage example for image processor plugins can be found in the “writing_plugins/image_processor” folder of the examples folder.

The source code for the built in canny processor, the openpose processor, and the simple pillow image operations processors can also be of reference as they are written as internal image processor plugins.

An example for writing config directives can be found in the “writing_plugins/config_directive” folder of the examples folder. Config template functions can also be implemented by plugins, see: “writing_plugins/template_function”

Currently the only internal directive that is implemented as a plugin is the \image_process directive, who’s source file can be located here, the source file for this directive is terse as most of \image_process is implemented as reusable code as mentioned below.

The behavior of \image_process which is also used for --sub-command image-process is is implemented here.

File Cache Control

dgenerate will cache --image-seeds files and files used by image processors that are downloaded from the web while it is running in the directory ~/.cache/dgenerate/web, on Windows this equates to %USERPROFILE%\.cache\dgenerate\web

You can control where these files are cached with the environmental variable DGENERATE_WEB_CACHE.

Files are cleared from the web cache automatically after an expiry time upon running dgenerate or when downloading additional files, the default value is after 12 hours.

This can be controlled with the environmental variable DGENERATE_WEB_CACHE_EXPIRY_DELTA.

The value of DGENERATE_WEB_CACHE_EXPIRY_DELTA is that of the named arguments of pythons datetime.timedelta class seperated by semicolons.

For example: DGENERATE_WEB_CACHE_EXPIRY_DELTA="days=5;hours=6"

Specifying “forever” or an empty string will disable cache expiration for every downloaded file.

Files downloaded from huggingface by the diffusers/huggingface_hub library will be cached under ~/.cache/huggingface/, on Windows this equates to %USERPROFILE%\.cache\huggingface\.

This is controlled by the environmental variable HF_HOME

In order to specify that all large model files be stored in another location, for example on another disk, simply set HF_HOME to a new path in your environment.

You can read more about environmental variables that affect huggingface libraries on this huggingface documentation page.

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