3 repos
AI Agent Orchestration — Artificial Intelligence & Machine Learning
We curate 3 GitHub repositories matching artificial intelligence & machine learning · AI Agent Orchestration. Refine with filters or upvote what's useful.
AI Agent Orchestration — Artificial Intelligence & Machine Learning
- microsoft/playwright
microsoft/playwright
82,810Playwright is a comprehensive browser automation framework designed for end-to-end testing and web workflow automation. It provides a unified API to drive web applications across multiple browser engines, enabling developers to simulate complex user interactions, perform web scraping, and validate application behavior in consistent, isolated environments. The framework distinguishes itself through a web-first testing paradigm that prioritizes stability and resilience. By utilizing an auto-waiting actionability engine and accessibility-tree-based locators, it eliminates common sources of test flakiness by ensuring elements are ready for interaction before execution. It further enhances reliability through browser-context-based isolation, which creates ephemeral sessions with independent storage and cookies, and a fixture-based dependency injection system that manages test lifecycles and environment setup. Beyond core execution, the project offers an extensive suite of developer tooling, including visual debugging environments, time-travel trace viewers, and AI-driven capabilities for test failure healing and code generation. It supports advanced testing requirements such as cross-browser execution, device emulation, network request mocking, and visual regression testing. The framework is built to integrate into modern development workflows, providing native support for parallel execution, CI/CD pipeline automation, and component-level testing.
TypeScriptautomationchromechromium - infiniflow/ragflow
infiniflow/ragflow
73,425This project is a comprehensive retrieval-augmented generation platform designed for building, managing, and deploying knowledge-based AI applications. It provides a unified environment for organizing datasets, configuring conversational chat assistants, and developing autonomous agents that execute multi-step reasoning workflows. By integrating document intelligence with advanced retrieval pipelines, the platform enables the creation of grounded, verifiable responses supported by traceable citations. The platform distinguishes itself through deep document understanding and sophisticated knowledge orchestration. It supports complex document parsing, including the extraction of tables and images, and utilizes graph-based indexing to enhance reasoning over large document collections. Users can configure multiple recall strategies and fused re-ranking to optimize retrieval accuracy, while the system maintains context through multi-turn dialogue management and flexible tool-use frameworks. The architecture is built on a modular, containerized microservice foundation that supports both local inference engines and external language model APIs. It includes asynchronous task processing for document ingestion and indexing, ensuring system responsiveness during heavy workloads. The platform also provides a standardized interface for model abstraction, allowing for seamless integration with existing language model ecosystems. Developers can interact with the platform through a comprehensive suite of RESTful endpoints and Python client libraries, which cover the full lifecycle of agents, datasets, and knowledge graphs. The system is designed for flexible deployment, offering configurable environment settings and support for custom containerized environments to facilitate local development and infrastructure portability.
Pythonagentagenticagentic-ai - lobehub/lobehub
lobehub/lobehub
72,403LobeHub is a comprehensive multi-agent orchestration platform designed for building, configuring, and deploying specialized AI agents. It provides a unified chat-based gateway that allows users to manage autonomous agent teams across web, desktop, and mobile environments. By utilizing a framework that supports persistent memory and granular tool integration, the platform enables the execution of complex, multi-step workflows and domain-specific tasks. The platform distinguishes itself through an interactive artifact renderer that injects dynamic, visual UI elements directly into the chat stream, transforming conversational outputs into functional content. It features an extensible ecosystem where users can discover and share community-driven agents and skills. Furthermore, the system supports collaborative workspaces where multiple agents can be organized into teams to scale intelligence and refine content through parallel task execution. Beyond its core orchestration capabilities, the project provides a robust suite of tools for self-hosting and infrastructure management. It supports containerized deployment through standardized configurations, allowing for secure, private instances that maintain data sovereignty. The platform integrates with external services through a common interface for data access and tool interaction, ensuring that agents remain adaptable and capable of handling diverse, multimodal requirements. The project is designed for self-hosted environments and includes comprehensive documentation for containerized setup, environment configuration, and security management.
TypeScriptagentagent-collaborationagent-harness