PromptLab is a free, lightweight, open-source experimentation tool for Gen AI applications.
Project description
📋 Table of Contents
- Overview
- Features
- Installation
- Quick Start
- Core Concepts
- Documentation
- Supported Models
- Examples
- Articles & Tutorials
- Contributing
- License
Overview 🔍
PromptLab is a free, lightweight, open-source experimentation tool for Gen AI applications. It streamlines prompt engineering, making it easy to set up experiments, evaluate prompts, and track them in production - all without requiring any cloud services or complex infrastructure.
With PromptLab, you can:
- Create and manage prompt templates with versioning
- Build and maintain evaluation datasets
- Run experiments with different models and prompts
- Evaluate model and prompt performance using built-in and custom metrics
- Compare experiment results side-by-side
- Deploy optimized prompts to production
Features ✨
- Truly Lightweight: No cloud subscription, no additional servers, not even Docker - just a simple Python package
- Easy to Adopt: No ML or Data Science expertise required
- Self-contained: No need for additional cloud services for tracking or collaboration
- Seamless Integration: Works within your existing web, mobile, or backend project
- Flexible Evaluation: Use built-in metrics or bring your own custom evaluators
- Web Interface: Compare experiments and track assets through a web interface
- Multiple Model Support: Works with Azure OpenAI, Ollama, DeepSeek and more. You can also bring your ownd model.
- Version Control: Automatic versioning of all assets for reproducibility
- Async Support: Run experiments and invoke models asynchronously for improved performance
Installation 📦
pip install promptlab
It's recommended to use a virtual environment:
python -m venv venv
source venv/bin/activate # On Windows: venv\Scripts\activate
pip install promptlab
Quick Start 🚀
Check the quick start example here - samples/quickstart
Core Concepts 🧩
Tracer
Tracer is responsible for persisting and updating assets and experiments in the storage layer. At present, only SQLite is supported.
Assets
Immutable artifacts used in experiments, with automatic versioning:
- Prompt Templates: Prompts with optional placeholders for dynamic content
- Datasets: JSONL files containing evaluation data
Experiments
Evaluate prompts against datasets using specified models and metrics.
PromptLab Studio
A web interface for visualizing experiments and comparing results.
Documentation 📖
For comprehensive documentation, visit our Documentation Page.
Supported Models 🤖
- Azure OpenAI: Connect to Azure-hosted OpenAI models
- Ollama: Run experiments with locally-hosted models
- OpenRouter: Access a wide range of AI models (OpenAI, Anthropic, DeepSeek, Mistral, etc.) via OpenRouter API
- Custom Models: Integrate your own model implementations
Examples 📚
- Quickstart: Getting started with PromptLab
- Asset versioning: Versioning Prompts and Datasets
- Custom Metric: Creating custom evaluation metrics
- Async Example: Using async functionality with Ollama and OpenRouter models for improved performance
- Custom Model: Bring your own model for evaluation
Articles & Tutorials 📝
- Evaluating prompts locally with Ollama and PromptLab
- Creating custom prompt evaluation metrics with PromptLab
CI/CD 🔄
PromptLab uses GitHub Actions for continuous integration and testing:
- Unit Tests: Run unit tests for all components of PromptLab
- Integration Tests: Run integration tests that test the interaction between components
- Performance Tests: Run performance tests to ensure performance requirements are met
The tests are organized into the following directories:
tests/unit/: Unit tests for individual componentstests/integration/: Tests that involve multiple components working togethertests/performance/: Tests that measure performancetests/fixtures/: Common test fixtures and utilities
You can find more information about the CI/CD workflows in the .github/workflows directory.
Contributing 👥
Contributions are welcome! Please feel free to submit a Pull Request.
- Fork the repository
- Create your feature branch (
git checkout -b feature/amazing-feature) - Commit your changes (
git commit -m 'Add some amazing feature') - Push to the branch (
git push origin feature/amazing-feature) - Open a Pull Request
License 📄
This project is licensed under the MIT License - see the LICENSE file for details.
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