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Self-hosted picture library with AI tagging, semantic search, and a clean web UI

Project description

PixlStash

PixlStash Screenshot

PixlStash is a local picture library server for organizing, filtering, and reviewing large image collections. It was just renamed from PixlVault due to name conflicts.

It provides:

  • A browser-based interface
  • Fast metadata and tag filtering
  • Smart score sorting
  • Character and set organization
  • Local storage of your library data
  • Simple keyboard shortcuts for scoring, selection, deletion and navigation.
  • Integration with ComfyUI for running workflows on selected images within PixlStash.
  • Plugin system for defining new filter operations that can be performed on a set of images.

PixlStash runs on your machine and serves the UI at a local web address.

Install PixlStash

Install PixlStash

Detailed installation instructions on pixlstash.dev.

First run and data location

On first run, PixlStash creates a user config directory and stores:

  • Server config
  • Database
  • Imported media files

Model downloads: On first startup, PixlStash automatically downloads the AI models required for tagging, captioning, and quality scoring. This includes several hundred MB of model weights. Downloads are stored in the platform user data directory:

OS Path
Linux ~/.local/share/pixlstash/downloaded_models/
macOS ~/Library/Application Support/pixlstash/downloaded_models/
Windows %LOCALAPPDATA%\pixlstash\downloaded_models\

An internet connection is required the first time the server starts. Subsequent starts use the cached models.

If you need to use a custom config path:

python -m pixlstash.app --server-config "C:\path\to\server-config.json"

Server configuration

On first run, PixlStash generates a server-config.json file in the user config directory:

  • Linux / macOS: ~/.config/pixlstash/server-config.json
  • Windows: %LOCALAPPDATA%\pixlstash\server-config.json

You can also supply a custom path with --server-config <path>.

Edit the file and restart the server to apply changes.

Network and port

Key Default Description
host "localhost" Address the server binds to. Change to "0.0.0.0" to expose the server on the local network.
port 9537 TCP port the server listens on.
cors_origins [] Extra origins allowed to make credentialed cross-origin requests. localhost, 127.0.0.1, and the server's own LAN IP are always permitted on any port.

At startup the server detects its own LAN IP and automatically allows it on any port. This means the Vite dev server works over LAN (http://192.168.1.5:5173http://192.168.1.5:9537) without any extra configuration, as long as network access is enabled via host.

Use cors_origins only if you need to allow origins on a different machine entirely.

SSL / HTTPS

Key Default Description
require_ssl false Enable HTTPS. When true, the server will use the key and certificate below.
ssl_keyfile <config_dir>/ssl/key.pem Path to the SSL private key file.
ssl_certfile <config_dir>/ssl/cert.pem Path to the SSL certificate file.
cookie_samesite "Lax" SameSite attribute for session cookies ("Lax", "Strict", or "None").
cookie_secure false Set the Secure flag on session cookies. Enable when serving over HTTPS.

Storage

Key Default Description
image_root <config_dir>/images Directory where imported media files are stored.
watch_folders [] List of folder entries to watch for new images and automatically import them. Each entry is an object with the fields below.

Each entry in watch_folders has the following fields:

Field Type Default Description
folder string Absolute path to the directory to monitor (recursively).
delete_after_import boolean false When true, source files are deleted from the watch folder after a successful import.

Example:

"watch_folders": [
  { "folder": "/home/user/downloads/photos", "delete_after_import": false },
  { "folder": "/mnt/camera", "delete_after_import": true }
]

Processing

Key Default Description
default_device "cpu" Device used for AI processing ("cpu" or "cuda").
generate_thumbnails_on_startup true Generate missing thumbnails when the server starts.

Logging

Key Default Description
log_level "info" Log verbosity ("debug", "info", "warning", "error").
log_file <config_dir>/server.log Path to the log file.

Example config

{
  "host": "localhost",
  "port": 9537,
  "log_level": "info",
  "require_ssl": false,
  "image_root": "/home/user/.config/pixlstash/images",
  "watch_folders": [
    { "folder": "/path/to/photos", "delete_after_import": false }
  ],
  "default_device": "cpu",
  "generate_thumbnails_on_startup": true
}

Upgrade PixlStash

Upgrade PixlStash

Detailed installation instructions on pixlstash.dev.

Installing plugins

PixlStash supports built-in plugins and user-created plugins.

User plugin directory

Place your .py plugin files in the platform-specific user data directory. PixlStash logs the exact path on startup.

OS Path
Linux ~/.local/share/pixlstash/image-plugins/user/
macOS ~/Library/Application Support/pixlstash/image-plugins/user/
Windows %LOCALAPPDATA%\pixlstash\image-plugins\user\

Writing a plugin

Use the template from pixlstash/image_plugins/built-in/plugin_template.py in the source repository as a starting point:

  1. Create a new .py file in your user plugin directory.
  2. Subclass ImagePlugin, set a unique name and plugin_id, and implement run().
  3. Restart PixlStash Server — plugins are loaded at startup.

plugin_template.py is ignored by plugin discovery and will not be loaded as a plugin.

Troubleshooting

  • If the page does not load, confirm the server process is running.
  • If port 9537 is in use, set a different port in your server config file.
  • If frontend assets are missing, rebuild frontend with npm run build and restart the server.

GPU startup fails (CUDAExecutionProvider unavailable)

If startup reports that ONNX CUDAExecutionProvider is unavailable, you likely have CPU-only ONNX Runtime installed.

Fix your environment:

pip uninstall -y onnxruntime
pip install onnxruntime-gpu

It some cases you may have to uninstall onnxruntime-gpu and reinstall it.

Verify providers:

python -c "import onnxruntime as ort; print(ort.get_available_providers())"

Expected output should include CUDAExecutionProvider.

If you prefer CPU mode, set "default_device": "cpu" in server-config.json.

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