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Local AI inference made easy - LLM, Vision, TTS, STT, and Image Generation

Project description

ezlocalai

GitHub Dockerhub

ezlocalai is an easy set up artificial intelligence server that allows you to easily run multimodal artificial intelligence from your computer. It is designed to be as easy as possible to get started with running local models. It automatically handles downloading the model of your choice and configuring the server based on your CPU, RAM, and GPU specifications. It also includes OpenAI Style endpoints for easy integration with other applications using ezlocalai as an OpenAI API proxy with any model. Additional functionality is built in for voice cloning text to speech and a voice to text for easy voice communication as well as image generation entirely offline after the initial setup.

Prerequisites

Additional Linux Prerequisites

Quick Start (Recommended)

Install the CLI and start ezlocalai with a single command:

pip install ezlocalai
ezlocalai start

It will take several minutes to download the models on the first run. Once running, access the API at http://localhost:8091.

CLI Commands

# Start with defaults (auto-detects GPU, uses Qwen3-VL-4B)
ezlocalai start

# Start with a specific model
ezlocalai start --model unsloth/gemma-3-4b-it-GGUF

# Start with custom options
ezlocalai start --model unsloth/Qwen3-VL-4B-Instruct-GGUF \
                --uri http://localhost:8091 \
                --api-key my-secret-key \
                --ngrok <your-ngrok-token>

# Other commands
ezlocalai stop      # Stop the container
ezlocalai restart   # Restart the container
ezlocalai status    # Check if running and show configuration
ezlocalai logs      # Show container logs (use -f to follow)
ezlocalai update    # Pull/rebuild latest images

# Send prompts directly from the CLI
ezlocalai prompt "Hello, world!"
ezlocalai prompt "What's in this image?" -image ./photo.jpg
ezlocalai prompt "Explain quantum computing" -m unsloth/Qwen3-VL-4B-Instruct-GGUF -temp 0.7

CLI Options

Option Default Description
--model, -m unsloth/Qwen3-VL-4B-Instruct-GGUF HuggingFace GGUF model(s), comma-separated
--uri http://localhost:8091 Server URL
--api-key None API key for authentication
--ngrok None ngrok token for public URL

Prompt Command Options

Option Default Description
-m, --model Auto-detected Model to use for the prompt
-temp, --temperature Model default Temperature for response generation (0.0-2.0)
-tp, --top-p Model default Top-p (nucleus) sampling parameter (0.0-1.0)
-image, --image None Path to local image file or URL to include with prompt
-stats, --stats Off Show statistics (tokens, speed, timing) after response

For additional options (Whisper, image model, etc.), edit ~/.ezlocalai/.env:

Data Persistence

All data is stored in ~/.ezlocalai/:

Directory Contents
~/.ezlocalai/data/models/ Downloaded GGUF model files
~/.ezlocalai/data/hf/ HuggingFace cache
~/.ezlocalai/data/voices/ Voice cloning samples
~/.ezlocalai/data/outputs/ Generated images/audio
~/.ezlocalai/.env Your configuration

Models persist across container updates - you won't re-download them when updating the CLI or rebuilding the CUDA image.

Benchmarks

Performance tested on Intel i9-12900KS + RTX 4090 (24GB):

Model Size Speed Notes
Qwen3-VL-4B 4B ~210 tok/s Vision-capable, great for chat
Qwen3-Coder-30B 30B (MoE) ~65 tok/s Coding model, hot-swappable

Both models pre-calibrate at startup and hot-swap in ~1 second.

OpenAI Style Endpoint Usage

OpenAI Style endpoints available at http://<YOUR LOCAL IP ADDRESS>:8091/v1/ by default. Documentation can be accessed at that http://localhost:8091 when the server is running.

import requests

response = requests.post(
    "http://localhost:8091/v1/chat/completions",
    headers={"Authorization": "Bearer your-api-key"},  # Change this if you configured an API key
    json={
        "model": "unsloth/Qwen3-VL-4B-Instruct-GGUF",
        "messages": [
            {
                "role": "user",
                "content": [
                    {"type": "text", "text": "Describe each stage of this image."},
                    {
                        "type": "image_url",
                        "image_url": {
                            "url": "https://www.visualwatermark.com/images/add-text-to-photos/add-text-to-image-3.webp"
                        },
                    },
                ],
            },
        ],
        "max_tokens": 8192,
        "temperature": 0.7,
        "top_p": 0.8,
    },
)
print(response.json()["choices"][0]["message"]["content"])

For examples on how to use the server to communicate with the models, see the Examples Jupyter Notebook once the server is running. We also have an example to use in Google Colab.

Workflow

graph TD
   A[app.py] --> B[FASTAPI]
   B --> C[Pipes]
   C --> D[LLM]
   C --> E[STT]
   C --> F[CTTS]
   C --> G[IMG]
   D --> H[llama_cpp]
   D --> I[tiktoken]
   D --> J[torch]
   E --> K[faster_whisper]
   E --> L[pyaudio]
   E --> M[webrtcvad]
   E --> N[pydub]
   F --> O[TTS]
   F --> P[torchaudio]
   G --> Q[diffusers]
   Q --> J
   A --> R[Uvicorn]
   R --> S[ASGI Server]
   A --> T[API Endpoint: /v1/completions]
   T --> U[Pipes.get_response]
   U --> V{completion_type}
   V -->|completion| W[LLM.completion]
   V -->|chat| X[LLM.chat]
   X --> Y[LLM.generate]
   W --> Y
   Y --> Z[LLM.create_completion]
   Z --> AA[Return response]
   AA --> AB{stream}
   AB -->|True| AC[StreamingResponse]
   AB -->|False| AD[JSON response]
   U --> AE[Audio transcription]
   AE --> AF{audio_format}
   AF -->|Exists| AG[Transcribe audio]
   AG --> E
   AF -->|None| AH[Skip transcription]
   U --> AI[Audio generation]
   AI --> AJ{voice}
   AJ -->|Exists| AK[Generate audio]
   AK --> F
   AK --> AL{stream}
   AL -->|True| AM[StreamingResponse]
   AL -->|False| AN[JSON response with audio URL]
   AJ -->|None| AO[Skip audio generation]
   U --> AP[Image generation]
   AP --> AQ{IMG enabled}
   AQ -->|True| AR[Generate image]
   AR --> G
   AR --> AS[Append image URL to response]
   AQ -->|False| AT[Skip image generation]
   A --> AU[API Endpoint: /v1/chat/completions]
   AU --> U
   A --> AV[API Endpoint: /v1/embeddings]
   AV --> AW[LLM.embedding]
   AW --> AX[LLM.create_embedding]
   AX --> AY[Return embedding]
   A --> AZ[API Endpoint: /v1/audio/transcriptions]
   AZ --> BA[STT.transcribe_audio]
   BA --> BB[Return transcription]
   A --> BC[API Endpoint: /v1/audio/generation]
   BC --> BD[CTTS.generate]
   BD --> BE[Return audio URL or base64 audio]
   A --> BF[API Endpoint: /v1/models]
   BF --> BG[LLM.models]
   BG --> BH[Return available models]
   A --> BI[CORS Middleware]
   BJ[.env] --> BK[Environment Variables]
   BK --> A
   BL[setup.py] --> BM[ezlocalai package]
   BM --> BN[LLM]
   BM --> BO[STT]
   BM --> BP[CTTS]
   BM --> BQ[IMG]
   A --> BR[API Key Verification]
   BR --> BS[verify_api_key]
   A --> BT[Static Files]
   BT --> BU[API Endpoint: /outputs]
   A --> BV[Ngrok]
   BV --> BW[Public URL]

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