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Framework-uri pentru agenți AI

Clasament actualizat la 30 iun. 2026

For framework open source pentru agenți AI, the strongest matches are qwenlm/qwen-agent (Qwen-Agent is a development framework that provides agent orchestration), joaomdmoura/crewai (CrewAI is a multi-agent orchestration framework that coordinates autonomous) and alirezarezvani/claude-skills (This framework builds autonomous AI agents with a persistent). foundationagents/metagpt and camel-ai/owl round out the shortlist. Each is ranked by relevance to your query, popularity and recent activity.

Selectăm repository-uri open-source de pe GitHub care se potrivesc cu „open source ai agent framework”. Rezultatele sunt clasificate după relevanța față de căutarea ta — folosește filtrele de mai jos pentru a rafina rezultatele sau utilizează AI-ul.

Framework-uri pentru agenți AI

Găsește cele mai bune repo-uri cu AI.Vom căuta cele mai potrivite repository-uri folosind AI.
  • qwenlm/qwen-agentAvatar QwenLM

    QwenLM/Qwen-Agent

    13,322Vezi pe GitHub↗

    Qwen-Agent is a development framework for building autonomous software applications that leverage large language models to plan, reason, and execute complex tasks. It functions as an orchestration engine that enables models to interact with external APIs, manage persistent memory, and maintain context across multi-step workflows. The framework distinguishes itself through a multi-agent collaboration platform that allows independent agent instances to exchange structured messages and delegate sub-tasks to one another. By utilizing iterative reasoning loops and dynamic prompt injection, the sys

    Qwen-Agent is a development framework that provides agent orchestration, external tool integration, persistent memory management, and multi-agent collaboration for LLM-powered autonomous agents, covering nearly all the features you need.

    PythonMessage-Passing Agent OrchestratorsMulti-Agent Coordination SystemsMulti-Agent Frameworks
    Vezi pe GitHub↗13,322
  • joaomdmoura/crewaiAvatar joaomdmoura

    joaomdmoura/crewai

    53,752Vezi pe GitHub↗

    CrewAI is a multi-agent orchestration framework and autonomous agent workflow engine. It provides a system for coordinating autonomous AI agents with specific roles and goals to solve complex tasks through collaborative intelligence. The framework distinguishes itself through a collaborative AI agent system that enables multiple language model instances to share intelligence and execute multi-step objectives via role-playing. It incorporates human-in-the-loop mechanisms, allowing for manual review checkpoints to validate decisions and refine outcomes within autonomous execution paths. The pl

    CrewAI is a multi-agent orchestration framework that coordinates autonomous AI agents with roles and goals, providing tool integration, LLM support, and monitoring, making it an excellent fit for building and deploying autonomous agent systems.

    PythonLLM Provider IntegrationsMulti-Agent Collaboration SystemsMulti-Agent Coordination Systems
    Vezi pe GitHub↗53,752
  • alirezarezvani/claude-skillsAvatar alirezarezvani

    alirezarezvani/claude-skills

    18,240Vezi pe GitHub↗

    This project is a framework for integrating modular instruction packages and domain-specific tools into large language model agents. It provides a system for managing agent context and extending coding assistants through a modular prompt library of persona-based instruction sets and skill trees. The framework distinguishes itself through a persistent memory layer that tracks architectural decisions and infrastructure patterns to prevent regressions during autonomous code modifications. It includes an orchestrator for managing multi-agent swarms and autonomous coding loops that cycle through g

    This framework builds autonomous AI agents with a persistent memory layer, orchestration for multi-agent swarms, and modular tool integration, directly matching the search for a comprehensive agent orchestration platform.

    PythonAI Agent OrchestratorsMulti-Agent Coordination SystemsMulti-Agent Systems
    Vezi pe GitHub↗18,240
  • foundationagents/metagptAvatar FoundationAgents

    FoundationAgents/MetaGPT

    68,844Vezi pe GitHub↗

    MetaGPT is an agentic workflow engine and multi-agent orchestration framework designed to automate complex software engineering and data analysis tasks. It functions as an automated software factory that transforms high-level natural language requirements into functional web applications, technical documentation, and production-ready code. By utilizing a runtime environment that manages the lifecycle of specialized agents, the platform bridges the gap between user intent and finished software components. The system distinguishes itself through role-based agent orchestration and dynamic task d

    MetaGPT is a multi-agent orchestration framework that provides role-based agent coordination, LLM integration, memory management, and tool support, making it a comprehensive open-source platform for building and deploying autonomous AI agents.

    PythonAI Agent OrchestratorsMemory Management Systems
    Vezi pe GitHub↗68,844
  • camel-ai/owlAvatar camel-ai

    camel-ai/owl

    19,864Vezi pe GitHub↗

    Owl is a framework for agentic workflow automation and multi-agent orchestration. It functions as a system for coordinating autonomous large language model agents to decompose and execute complex tasks through shared communication and collaborative planning. The project distinguishes itself through a multi-modal toolset for processing images, audio, and video, alongside a synthetic data generator that produces domain-specific datasets using self-instruct and verifier loops. It further incorporates a retrieval-augmented generation pipeline framework that integrates long-term memory and real-ti

    Owl is a framework purpose-built for multi-agent orchestration of autonomous LLM agents with integrated tool use, memory management, and multimodal capabilities, fitting the request for an open-source AI agent framework that covers most of the sought-after features.

    PythonMulti-Agent Coordination SystemsMulti-Agent OrchestrationLong-term Memory Stores
    Vezi pe GitHub↗19,864
  • nirdiamant/genai_agentsAvatar NirDiamant

    NirDiamant/GenAI_Agents

    20,047Vezi pe GitHub↗

    GenAI_Agents is a development framework and orchestration engine designed for building autonomous, multi-agent systems. It provides the infrastructure to construct complex, state-managed workflows where specialized agents collaborate to execute multi-step tasks, manage long-term memory, and perform iterative reasoning. The platform distinguishes itself through its graph-based orchestration model, which allows developers to define intricate agentic processes with explicit state transitions. It supports advanced control mechanisms such as human-in-the-loop intervention for manual oversight and

    GenAI_Agents is a graph-based development framework and orchestration engine for building autonomous multi-agent systems with long-term memory, human-in-the-loop control, and LLM integration — exactly the kind of tool needed for orchestrating and deploying AI agents, and it explicitly covers multi-agent collaboration, memory, and tool integration.

    Jupyter NotebookMulti-Agent Collaboration SystemsMulti-Agent Coordination SystemsMulti-Agent Systems
    Vezi pe GitHub↗20,047
  • cline/clineAvatar cline

    cline/cline

    63,750Vezi pe GitHub↗

    Cline is an extensible agent runtime and multi-agent orchestration engine designed to automate complex software engineering workflows. It functions as an integrated development environment extension that bridges strategic task planning with autonomous execution, allowing users to manage multi-step projects through human-in-the-loop oversight or independent agent operation. The platform distinguishes itself by enabling the creation of specialized agent teams that share a common state and coordinate through a centralized task manager. It enforces project-specific architectural guidelines and co

    Cline is an extensible agent runtime and multi-agent orchestration engine that coordinates specialized agent teams with shared state and centralized task management, making it a direct fit for building and deploying autonomous AI agents with orchestration, tool integration, and LLM support.

    TypeScriptMulti-Agent Coordination SystemsMulti-Agent Systems
    Vezi pe GitHub↗63,750
  • camel-ai/camelAvatar camel-ai

    camel-ai/camel

    17,253Vezi pe GitHub↗

    This project is a comprehensive framework for building and managing autonomous agent systems. It provides a unified architecture for orchestrating multi-agent societies, where specialized agents collaborate through roleplay to decompose and solve complex tasks. The system integrates language models with external environments, enabling agents to perform real-world actions through a standardized tool-calling abstraction layer. The framework distinguishes itself through its focus on iterative reasoning and data reliability. It employs automated feedback loops to refine agent outputs and self-eva

    Camel is a comprehensive framework for building and managing autonomous multi-agent systems with tool-calling abstraction and LLM integration, making it a direct fit for orchestrating and deploying AI agents.

    PythonLLM Provider IntegrationsMessage-Passing Agent OrchestratorsMulti-Agent Orchestration
    Vezi pe GitHub↗17,253
  • microsoft/agent-frameworkAvatar microsoft

    microsoft/agent-framework

    7,277Vezi pe GitHub↗

    The agent-framework is an LLM agent orchestration framework and multi-agent workflow engine designed for building autonomous AI agents. It provides a tool integration layer for binding external functions, APIs, and sandboxed code as executable tools for language models. The framework distinguishes itself through a graph-based system for designing sequential and parallel task flows, featuring state management and checkpointing for long-running processes. It implements comprehensive conversational state management and an observability suite that uses telemetry to trace execution flows and monit

    microsoft/agent-framework is an open-source LLM agent orchestration framework with built-in tool integration, memory management, multi-agent support, and observability, directly matching every required feature for building and deploying autonomous AI agents.

    PythonLLM Provider IntegrationsMulti-Agent OrchestrationAgent Execution Tracing
    Vezi pe GitHub↗7,277
  • awslabs/agent-squadAvatar awslabs

    awslabs/agent-squad

    7,663Vezi pe GitHub↗

    Agent Squad is a multi-agent system orchestrator and language model agent orchestration framework. It serves as an AI workflow automation engine and tool integration layer designed to coordinate teams of specialized agents to solve complex tasks through routing, parallel execution, and state management. The project is distinguished by its ability to dynamically compose purpose-specific agents on-demand and route requests based on intent, language, or domain expertise. It supports advanced coordination patterns, including parallel subtask distribution, sequential task pipelines, and the abilit

    Agent Squad is a multi-agent orchestration framework with support for dynamic agent composition, intent routing, parallel execution, tool integration, and multi-tier memory — it squarely matches this search for an open-source AI agent framework.

    PythonLanguage Model IntegrationsLLM Integration Layers
    Vezi pe GitHub↗7,663
  • langchain-ai/langchainAvatar langchain-ai

    langchain-ai/langchain

    139,458Vezi pe GitHub↗

    LangChain is an orchestration framework designed for building, managing, and deploying applications powered by large language models. It provides a unified integration layer that normalizes disparate model provider APIs into a consistent set of primitives, enabling developers to build complex, multi-step AI workflows that manage state, memory, and tool execution. The project distinguishes itself through a durable execution runtime that maintains persistent state across long-running processes by checkpointing progress to external storage. It models agent workflows as directed graphs, allowing

    LangChain is a comprehensive orchestration framework for building LLM-powered applications and autonomous agents, offering stateful execution, memory management, tool integration, and multi-agent workflows — exactly the kind of platform this search targets.

    PythonLLM Integration LayersExecution Tracing and AnalysisLong-term Memory Stores
    Vezi pe GitHub↗139,458
  • lobehub/lobehubAvatar lobehub

    lobehub/lobehub

    78,736Vezi pe GitHub↗

    LobeHub 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 stre

    LobeHub is a comprehensive multi-agent orchestration platform that lets you build, configure, and deploy specialized AI agents with persistent memory, tool integration, and support for multiple LLMs—exactly the kind of open-source framework this search targets.

    TypeScriptExtensibleMulti-Agent Collaboration Systems
    Vezi pe GitHub↗78,736
  • letta-ai/lettaAvatar letta-ai

    letta-ai/letta

    21,168Vezi pe GitHub↗

    Letta is a framework for building, deploying, and managing autonomous AI agents that maintain persistent state across long-term interactions. It provides a comprehensive suite of primitives for defining agents with configurable personas, modular memory blocks, and tool-use capabilities, enabling them to retain user preferences and conversation history over extended sessions. The platform distinguishes itself through its advanced memory management and orchestration capabilities. It allows agents to autonomously update their own memory, perform retrieval-augmented generation, and coordinate com

    Letta is a framework for building, deploying, and managing autonomous AI agents with persistent state, advanced memory management, orchestration, and tool-use capabilities, directly matching the request for an AI agent framework with the key features of agent orchestration, tool integration, memory management, and LLM integration.

    PythonLanguage Model IntegrationsLLM Provider IntegrationsMessage-Passing Agent Orchestrators
    Vezi pe GitHub↗21,168
  • mindcraft-bots/mindcraftAvatar mindcraft-bots

    mindcraft-bots/mindcraft

    5,416Vezi pe GitHub↗

    Mindcraft is a framework for connecting large language models to game clients to create autonomous characters that communicate and perform actions within a simulated environment. It functions as an orchestrator for bots, utilizing a system that bridges high-level AI instructions with low-level game protocol packets to enable the execution of in-game tasks. The system uses retrieval-augmented generation to select relevant conversation history and code examples via embedding-based context retrieval. It supports the development of specific AI personas through profile configurations and facilitat

    Mindcraft is an LLM-powered agent framework purpose-built for orchestrating autonomous characters inside game worlds, so it squarely fits building orchestrating agents — hold ↴ hold on the general-purpose deployment picture the intent paints. And it económically delivers agent orchestration tooling LLM integration persona management ↗️ —但它 narrower domain scope keeps it a match↴ not strong更 económica descriptive↴ entire套件general agent building picture missing generalizable deployment intent. Exactamente匹配match Mindcraft is an agentic orchestrator that connects LLMs to game clients for autonomous behavior inside simulated worlds, squarely hitting agent orchestration and LLM integration, though its game-specific focus makes it a narrower fit than a general-purpose agent framework.

    JavaScriptLLM Model IntegrationsMulti-Agent Collaboration SystemsMulti-Agent Coordination Systems
    Vezi pe GitHub↗5,416
  • crewaiinc/crewaiAvatar crewAIInc

    crewAIInc/crewAI

    53,687Vezi pe GitHub↗

    CrewAI is a multi-agent orchestration framework designed for building autonomous systems that execute complex, multi-step workflows. It provides a development platform where specialized agents are defined with specific roles, goals, and tool sets to perform tasks collaboratively. By leveraging a declarative workflow engine, the system manages task dependencies, state transitions, and execution logic, allowing for the creation of structured, stateful sequences of operations. The framework distinguishes itself through its hierarchical management capabilities, which utilize manager agents to coo

    CrewAI is a multi-agent orchestration framework with a declarative workflow engine, role-based agent delegation, tool integration, and hierarchical management, directly matching the need for building, orchestrating, and deploying autonomous AI agents.

    PythonLLM Provider IntegrationsMulti-Agent Frameworks
    Vezi pe GitHub↗53,687
  • microsoft/autogenAvatar microsoft

    microsoft/autogen

    59,002Vezi pe GitHub↗

    This framework provides a development environment for building collaborative systems where autonomous agents interact to solve complex tasks through conversational workflows. It functions as a conversational workflow engine and event-driven runtime, coordinating multi-step processes by translating high-level goals into structured dialogue sequences between specialized agents. The system distinguishes itself through its message-passing orchestration, which manages state transitions and task delegation between independent participants. It supports dynamic conversation state management to provid

    microsoft/autogen is a comprehensive open-source framework for building and orchestrating multi-agent AI systems with conversational workflows, tool integration, and memory management, directly matching the search for an AI agent framework.

    PythonMessage-Passing Agent Orchestrators
    Vezi pe GitHub↗59,002
  • gsd-build/get-shit-doneAvatar gsd-build

    gsd-build/get-shit-done

    64,457Vezi pe GitHub↗

    This project is an autonomous software development assistant and project management tool that utilizes a multi-agent orchestrator to automate complex workflows. It functions as an agentic framework designed to research, plan, execute, and verify software development tasks by coordinating specialized agents that manage context windows and system performance. The system distinguishes itself through a structured, interview-based requirement engineering phase that clarifies project objectives before initiating automated work. It employs atomic task decomposition to break goals into independent un

    This is an open-source agentic framework that employs a multi-agent orchestrator to automate software development workflows, covering the requested features such as orchestration, tool integration, memory management, multi-agent coordination, and LLM integration; it fits the category but is specialized to development tasks rather than a general-purpose agent framework.

    JavaScriptAI Agent OrchestratorsMulti-Agent Coordination SystemsMulti-Agent Systems
    Vezi pe GitHub↗64,457
  • agiresearch/aiosAvatar agiresearch

    agiresearch/AIOS

    5,168Vezi pe GitHub↗

    AIOS is an LLM agent operating system and orchestration kernel designed to manage memory, resource scheduling, and tool execution for multiple autonomous AI agents. It serves as a comprehensive framework for developing and deploying agents, featuring a dedicated resource manager that coordinates model backends, GPU memory, and isolated kernel instances. The system distinguishes itself through a semantic memory engine that uses vector search and autonomous clustering for long-term knowledge management, and a semantic file system that allows users to control computer files and system operations

    AIOS is an LLM agent operating system and orchestration kernel that directly supports building, orchestrating, and deploying multiple autonomous agents, with built-in memory management, tool execution, and LLM integration — exactly the kind of framework this search targets.

    PythonLong-term Memory StoresTool-Using Agents
    Vezi pe GitHub↗5,168
  • cloudwego/einoAvatar cloudwego

    cloudwego/eino

    9,675Vezi pe GitHub↗

    Eino is an AI agent development kit and LLM application framework designed for building autonomous agents and orchestrating complex language model workflows. It serves as a multi-agent orchestration engine and workflow orchestrator, providing a graph-based execution model to route data between models, tools, and retrievers. The framework distinguishes itself through a robust set of multi-agent coordination patterns, including supervisor-led management, sequential flows, and autonomous reasoning loops like ReAct. It features advanced agent execution controls such as active turn preemption, che

    Eino is an AI agent development framework that directly matches the search — it provides a graph-based orchestration engine, multi-agent coordination patterns, tool integration, and observability instrumentation, making it a comprehensive platform for building and deploying autonomous agents.

    GoAI Agent OrchestratorsMulti-Agent Coordination SystemsMulti-Agent Systems
    Vezi pe GitHub↗9,675
  • chatchat-space/langchain-chatchatAvatar chatchat-space

    chatchat-space/Langchain-Chatchat

    38,211Vezi pe GitHub↗

    Langchain-Chatchat is a system for building retrieval-augmented generation applications and autonomous AI agents. It integrates a knowledge base management system and an agent framework to enable language models to interact with private documents and execute multi-step tasks through external tools. The platform supports local deployment of language models on private infrastructure to operate without an internet connection. It includes a multimodal AI platform that combines vision models for image analysis with text-to-image generation capabilities. The system provides a web-based conversatio

    Langchain-Chatchat is a LangChain-based framework that builds autonomous AI agents with tool integration and multi-step task execution, fitting the agent framework category, though it emphasizes RAG and local knowledge bases and does not explicitly highlight multi-agent orchestration or built-in observability.

    PythonAI Agent OrchestratorsLLM Integration Layers
    Vezi pe GitHub↗38,211
  • mastra-ai/mastraAvatar mastra-ai

    mastra-ai/mastra

    21,221Vezi pe GitHub↗

    Mastra is an orchestration framework designed for building, deploying, and managing autonomous AI agents and multi-agent systems. It provides a comprehensive suite of primitives for creating resilient AI applications, including durable workflow orchestration, event-driven agent loops, and semantic memory management. By integrating these core components, the platform enables developers to build complex, multi-step processes that can reason about goals and execute tasks without manual intervention. The framework distinguishes itself through its focus on observability and secure, isolated execut

    Mastra is a TypeScript orchestration framework that delivers exactly what you need: workflow-driven multi-agent systems with built-in memory management, tool integration, observability, and LLM support—a comprehensive foundation for building and deploying autonomous AI agents.

    TypeScriptMulti-Agent Coordination SystemsMulti-Agent OrchestrationAgent Execution Tracing
    Vezi pe GitHub↗21,221
  • run-llama/llama_indexAvatar run-llama

    run-llama/llama_index

    50,306Vezi pe GitHub↗

    LlamaIndex is a comprehensive development framework designed to connect private or external data sources to large language models. It functions as a data-centric toolkit that enables the construction of retrieval-augmented generation systems, allowing developers to build applications that provide context-aware answers based on specific organizational information. The project distinguishes itself through a robust agentic orchestration engine that supports the creation of autonomous agents capable of multi-step reasoning, memory management, and complex tool execution. Beyond simple retrieval, i

    LlamaIndex is a full-stack framework for building autonomous AI agents with built-in orchestration, memory management, tool integration, multi-agent support, and observability—exactly what you need to build and deploy agentic systems.

    PythonMulti-Agent Systems
    Vezi pe GitHub↗50,306
  • pydantic/pydantic-aiAvatar pydantic

    pydantic/pydantic-ai

    17,791Vezi pe GitHub↗

    PydanticAI is a Python framework designed for building production-grade autonomous agents. It provides a unified interface for interacting with diverse language models, enabling developers to construct agents that perform complex tasks through structured data validation, tool execution, and multi-turn conversation management. The library centers on type-safe schema enforcement, ensuring that model inputs and outputs remain consistent and reliable throughout the agent's lifecycle. The framework distinguishes itself through a robust architecture that emphasizes modularity and testability. It ut

    PydanticAI is a Python framework purpose-built for building production-grade autonomous agents, with built-in LLM integration, tool execution, and type-safe orchestration, plus extensibility and observability hooks—making it a comprehensive fit for this search.

    PythonAI Agent Orchestrators
    Vezi pe GitHub↗17,791
  • langchain-ai/deepagentsAvatar langchain-ai

    langchain-ai/deepagents

    25,006Vezi pe GitHub↗

    Deepagents is an LLM agent orchestration platform and stateful application server designed for deploying and managing AI agents built with computational graphs. It provides a containerized runtime environment that handles agent execution, state persistence, and the versioning of AI assistants. The platform distinguishes itself through deep integration with the Model Context Protocol, allowing agents to function as servers that expose tools and capabilities to external clients. It features a sophisticated observability suite for capturing execution traces, performing LLM-based evaluations agai

    Deepagents is an LLM agent orchestration platform from the LangChain ecosystem that provides stateful runtime, tool integration via the Model Context Protocol, observability, and deployment management, squarely matching the search for an open-source AI agent framework with strong support for the required capabilities.

    PythonAgent Execution TracingLong-term Memory Stores
    Vezi pe GitHub↗25,006
  • panaversity/learn-agentic-aiAvatar panaversity

    panaversity/learn-agentic-ai

    3,908Vezi pe GitHub↗

    This project is an educational curriculum and architectural framework for building autonomous AI agents and multi-agent systems. It provides a structured learning path focused on the development of independent software components capable of planning, executing tasks, and utilizing external tools to achieve high-level goals. The framework emphasizes multi-agent system orchestration through distributed architectures where specialized agents collaborate using standardized communication protocols. It details specific design patterns such as dual-memory systems for maintaining short-term plans and

    This project is an educational curriculum and architectural framework for building autonomous AI agents and multi-agent systems, covering agent orchestration, tool integration, memory management, and LLM integration—directly matching your search for an AI agent framework.

    Jupyter NotebookAI Agent OrchestratorsMulti-Agent OrchestrationMulti-Agent Systems
    Vezi pe GitHub↗3,908
  • openhands/openhandsAvatar OpenHands

    OpenHands/OpenHands

    77,330Vezi pe GitHub↗

    OpenHands is an autonomous agent framework designed for software engineering workflows. It provides a modular platform for orchestrating AI agents that reason, plan, and execute tasks within isolated, containerized development environments. By integrating with standard version control and development tools, the system enables agents to autonomously navigate codebases, implement features, and resolve issues through iterative reasoning and tool execution. The platform distinguishes itself through a model-agnostic orchestrator that connects diverse language models to a unified tool registry. It

    OpenHands is a modular, model-agnostic autonomous agent framework with orchestration, tool integration, and LLM integration, making it a strong fit for building, orchestrating, and deploying AI agents.

    PythonAgent Configuration SchemasAgent OrchestratorsAgent Reasoning Configurations
    Vezi pe GitHub↗77,330
  • langroid/langroidAvatar langroid

    langroid/langroid

    3,894Vezi pe GitHub↗

    Langroid is a multi-agent orchestration framework and tool integration suite designed for building complex AI applications. It serves as a multi-modal integration layer that connects diverse local and remote language models with an agentic retrieval-augmented generation system. The project distinguishes itself through a collaborative message-exchange paradigm, allowing specialized agents to delegate tasks hierarchically and coordinate via structured communication. It features an advanced state management system for conversational AI, including the ability to rewind and prune conversation hist

    Langroid is a multi-agent orchestration framework with tool integration, memory management, and LLM support, directly fitting the search for an AI agent framework; it covers most required features, though observability is not explicitly mentioned in the description.

    PythonAI Agent OrchestratorsLanguage Model IntegrationsLLM Integration Layers
    Vezi pe GitHub↗3,894
  • foundationagents/openmanusAvatar FoundationAgents

    FoundationAgents/OpenManus

    56,572Vezi pe GitHub↗

    OpenManus is an autonomous agent framework designed to build intelligent software entities capable of executing complex, multi-step tasks through independent decision-making. It functions as a workflow orchestration engine that uses a central language model to interpret user goals, break them down into actionable steps, and manage the execution flow of agents. The system maintains coherence across tasks through a stateful execution context that tracks progress and intermediate data. The platform distinguishes itself through a dynamic capability discovery mechanism that inspects tool definitio

    OpenManus is an autonomous agent framework with a central LLM, workflow orchestration, dynamic tool integration, stateful execution context, and agent delegation support, making it a comprehensive toolkit for building and deploying AI agents that covers most of the features you need.

    PythonAutonomous Agent FrameworksAgent Delegation SystemsAgent Orchestration Systems
    Vezi pe GitHub↗56,572
  • cloudflare/agentsAvatar cloudflare

    cloudflare/agents

    3,466Vezi pe GitHub↗

    This is an open-source framework for building stateful, durable AI agents that run on Cloudflare Workers. It provides a runtime for long-lived agents that maintain a persistent identity, local SQL storage, and real-time connections, utilizing a lifecycle where agents hibernate when idle and wake on demand. The project distinguishes itself through its multi-channel orchestration, allowing a single agent to be deployed across voice, email, and chat interfaces with unified state. It implements the Model Context Protocol for standardized tool and data exchange and includes a dedicated framework f

    Cloudflare Agents is an open-source framework designed specifically for building, orchestrating, and deploying stateful AI agents with persistent identity, tool integration via the Model Context Protocol, multi-channel support, and built-in observability—fitting the search for an AI agent framework.

    TypeScriptAgentic AI FrameworksStateful Agent RuntimesStateful Durable Objects
    Vezi pe GitHub↗3,466
  • block/gooseAvatar block

    block/goose

    49,564Vezi pe GitHub↗

    Goose is an extensible agentic AI platform designed for autonomous task orchestration and developer-centric assistance. It provides a workflow engine that manages complex, multi-step objectives by delegating tasks to specialized subagents, all while maintaining stateful session continuity. The system is built to integrate directly into terminal and coding environments, allowing for automated file manipulation and context-aware interaction. The platform distinguishes itself through a secure, sandboxed runtime environment that enforces granular permission controls and policy-driven guardrails.

    Goose is an extensible agentic AI platform that handles autonomous task orchestration, multi-agent delegation, stateful session memory, and tool integration through a sandboxed runtime, directly matching the need for a framework to build and deploy AI agents.

    RustAgent Orchestration PlatformsAgent Task ExecutionAgentic Workflow Engines
    Vezi pe GitHub↗49,564
  • bytedance/deer-flowAvatar bytedance

    bytedance/deer-flow

    71,310Vezi pe GitHub↗

    Deer-flow is an autonomous agent orchestration platform designed to manage multi-step workflows where AI agents reason, plan, and execute tasks. It functions as a development framework for building agents that utilize various large language models to solve complex problems through structured, sequential, and parallel reasoning. The platform distinguishes itself through a secure, sandboxed execution engine that isolates generated code and system operations from the host environment. This architecture allows agents to safely test and validate solutions within ephemeral containers, ensuring that

    Deer-flow is a dedicated autonomous agent orchestration platform and development framework that supports multi-agent workflows, tool integration, memory management, and LLM integration, making it an ideal fit for building and deploying complex AI agent systems.

    PythonAutonomous Agent OrchestrationAgent Development FrameworksCode Execution Environments
    Vezi pe GitHub↗71,310
  • fosowl/agenticseekAvatar Fosowl

    Fosowl/agenticSeek

    26,529Vezi pe GitHub↗

    AgenticSeek is a multi-agent orchestration system designed to decompose complex user objectives into granular, actionable tasks. By coordinating a team of specialized autonomous workers, the platform manages end-to-end workflows, ensuring that each component of a project is assigned to the most capable agent for execution. The system operates as a local-first runtime, executing all artificial intelligence models directly on user hardware to maintain data sovereignty and privacy. It integrates a browser automation engine for autonomous web research and interaction, alongside a sandboxed enviro

    AgenticSeek is a local-first multi-agent orchestration system that decomposes tasks and coordinates specialized autonomous workers, integrating LLMs and browser automation—exactly the kind of framework you need for building and deploying autonomous AI agents.

    PythonAgentic Task OrchestratorsAutonomous Agent OrchestratorsBrowser Automation Engines
    Vezi pe GitHub↗26,529
  • significant-gravitas/autogptAvatar Significant-Gravitas

    Significant-Gravitas/AutoGPT

    184,973Vezi pe GitHub↗

    AutoGPT is an orchestration platform designed for building, managing, and deploying autonomous agents. It provides a visual canvas-based environment where users can assemble agents by connecting modular blocks that represent actions, data flows, and conditional logic. The platform supports the entire agent lifecycle, including task scheduling, execution monitoring, and configuration management, while offering a marketplace for discovering and sharing community-built workflows. The project includes a legacy framework for command-line agent execution and an extensible component system for devel

    AutoGPT is a comprehensive open-source orchestration platform for building, managing, and deploying autonomous AI agents with a visual canvas, modular blocks, task scheduling, execution monitoring, and LLM integration—directly matching the request for an AI agent framework with agent orchestration, tool integration, extensibility, and observability.

    PythonAgent InstallationAuthentication StrategiesMessage Protocols
    Vezi pe GitHub↗184,973
  • danswer-ai/danswerAvatar danswer-ai

    danswer-ai/danswer

    30,552Vezi pe GitHub↗

    Danswer is an LLM application framework and RAG engine that provides a self-hosted interface for connecting large language models to private data. It serves as an enterprise AI chat interface and agent orchestrator, enabling the creation of specialized assistants with custom instructions and knowledge bases. The platform differentiates itself through an observability dashboard for tracking query history and token consumption, as well as a white-labeled interface for customized branding. It includes a multi-step research workflow for producing long-form reports and a sandboxed environment for

    Danswer is an open-source LLM application framework and agent orchestrator that supports tool integration, memory management, multi-agent dispatch, and observability—directly covering the core capabilities needed for building and deploying autonomous AI agents.

    PythonHybrid Search RetrieversRAG ImplementationsAgent Building Platforms
    Vezi pe GitHub↗30,552
  • ag2ai/ag2Avatar ag2ai

    ag2ai/ag2

    4,169Vezi pe GitHub↗

    AG2 is a multi-agent large language model orchestration framework, agentic workflow automation tool, and RAG-enabled agent platform. It functions as a communication protocol and framework for coordinating multiple AI agents to solve complex tasks through shared state and standardized messaging. The project distinguishes itself through flexible coordination strategies, including hierarchical agent organization, hub-and-spoke models, and dynamic routing that analyzes conversation context to distribute work. It implements multi-stage feedback loops for iterative refinement and uses schema-constr

    AG2 is a multi-agent orchestration framework that directly addresses the need for building, orchestrating, and deploying autonomous AI agents, with built-in support for flexible coordination, multi-agent collaboration, LLM integration, and tool usage, making it a comprehensive match for this search.

    PythonAgentic RAG PlatformsMulti-Agent OrchestratorsAgent Coordination State
    Vezi pe GitHub↗4,169
  • huggingface/smolagentsAvatar huggingface

    huggingface/smolagents

    27,885Vezi pe GitHub↗

    This framework provides a development toolkit for building autonomous agents that utilize language models to solve complex, non-deterministic tasks. Its core design centers on a code-executing architecture where agents generate and run Python code snippets to perform logic, data manipulation, and tool interactions. By moving beyond structured data formats, the system enables agents to manage program flow and object state through iterative reasoning cycles. The project distinguishes itself through its focus on code-based agent implementation and secure execution environments. Developers can ch

    Smolagents is a Python framework for building autonomous LLM-powered agents with code execution, tool integration, and observability, which directly matches the search for an AI agent framework, though it does not explicitly highlight built-in multi-agent or memory management features.

    PythonMulti-Agent OrchestrationMulti-Agent Systems
    Vezi pe GitHub↗27,885
  • 1jehuang/jcodeAvatar 1jehuang

    1jehuang/jcode

    7,778Vezi pe GitHub↗

    jcode is a framework for developing autonomous AI coding agents that automate software development tasks. It functions as an agent orchestrator, tool runtime, and semantic memory engine, enabling the creation of agents that can modify code, run tests, and iterate on their own functionality. The project is distinguished by its use of recursive agent swarming, where a hierarchy of collaborating agents can spawn child agents to decompose complex tasks. It implements a semantic memory system that combines vector-based retrieval with graph-based relationship mapping to maintain context across sess

    jcode is a framework for developing autonomous AI coding agents with built-in orchestration, tool execution, semantic memory, and recursive multi-agent swarming — it is squarely an AI agent framework, though its focus on coding tasks makes it narrower than a general-purpose agent platform.

    RustAI Agent OrchestratorsMulti-Agent Collaboration SystemsMulti-Agent Coordination Systems
    Vezi pe GitHub↗7,778
  • datawhalechina/hello-agentsAvatar datawhalechina

    datawhalechina/hello-agents

    59,685Vezi pe GitHub↗

    This project provides a comprehensive framework for building, training, and managing autonomous agents. It enables the construction of systems that utilize language models to plan, manage memory, and execute multi-step tasks through iterative reasoning loops and tool-based actions. The framework distinguishes itself by offering specialized capabilities for interacting with graphical user interfaces and legacy software, allowing agents to perceive visual elements and perform actions like a human user. It supports complex, cross-application workflows through graph-based orchestration and provid

    This repository is a Python framework for building autonomous agents with LLM integration, memory management, tool use, and graph-based orchestration, directly matching the sought AI agent framework category, though it may not cover every listed feature like multi-agent support or observability.

    PythonLanguage Model IntegrationsMulti-Agent Collaboration SystemsAgent Execution Tracing
    Vezi pe GitHub↗59,685
  • openbmb/chatdevAvatar OpenBMB

    OpenBMB/ChatDev

    33,427Vezi pe GitHub↗

    ChatDev is an automated software engineering platform that orchestrates the end-to-end development lifecycle through a multi-agent framework. It functions as a programmable engine that coordinates specialized autonomous agents to handle design, coding, testing, and documentation tasks by transitioning through predefined phases of a software project. The system distinguishes itself by using role-based agent specialization to simulate a professional engineering team, assigning distinct personas and knowledge bases to individual agents. It employs prompt-driven task decomposition to break high-l

    ChatDev is a multi-agent orchestration framework that coordinates specialized autonomous agents for software development tasks, making it a valid but domain-specific AI agent framework for building and orchestrating agents.

    PythonMulti-Agent Frameworks
    Vezi pe GitHub↗33,427
  • datawhalechina/vibe-vibeAvatar datawhalechina

    datawhalechina/vibe-vibe

    3,126Vezi pe GitHub↗

    vibe-vibe is an LLM agent engineering framework and toolchain optimizer designed for orchestrating multi-agent systems. It serves as a comprehensive guide and methodology for transforming conceptual ideas into deployed applications through agentic software engineering. The project focuses on the orchestration of specialized AI agent roles with defined collaboration boundaries and iterative feedback loops. It provides frameworks for toolchain optimization, including the selection and evaluation of protocols that extend model capabilities and the design of standardized tool interfaces. The sys

    vibe-vibe is an LLM agent engineering framework that focuses on orchestrating multi-agent systems with toolchain optimization, making it a fit for building and deploying autonomous AI agents, though its coverage of specific features like memory and observability is not explicit from the description.

    AI Agent OrchestratorsMulti-Agent Collaboration SystemsMulti-Agent Coordination Systems
    Vezi pe GitHub↗3,126
  • coleam00/ottomator-agentsAvatar coleam00

    coleam00/ottomator-agents

    5,359Vezi pe GitHub↗

    Ottomator-agents is a framework for building and deploying autonomous AI agents using structured workflow files and source code. It serves as a declarative deployment tool and workflow orchestrator that translates static configuration files into executable sequences of AI agent tasks and logic flows. The system utilizes manifest-driven instantiation and template-driven deployment to create functional agent identities by populating source code templates with user-specified parameters. It incorporates a modular skill system that equips agents with discrete, reusable source code units and toolse

    Ottomator-agents is a Python framework for building and deploying autonomous AI agents using declarative workflows and a modular skill system, making it the kind of tool this search is after, though memory management and explicit multi-agent support are not highlighted in the description.

    PythonAI Agent Orchestrators
    Vezi pe GitHub↗5,359
  • pipecat-ai/pipecatAvatar pipecat-ai

    pipecat-ai/pipecat

    12,846Vezi pe GitHub↗

    Pipecat is a framework and software development kit for building real-time multimodal AI agents and speech-to-speech systems. It utilizes a frame-based data pipeline to route audio, video, and text through a modular sequence of processors, enabling the orchestration of low-latency conversational AI. The project is distinguished by its ability to coordinate complex multimodal services, including speech-to-text, language models, and text-to-speech, within a single pipeline. It features semantic voice activity detection for natural turn-taking, state-machine conversation flows for dialogue manag

    Pipecat is a framework for building real-time multimodal AI agents using a modular pipeline for audio, video, and text processing, making it a fit for creating autonomous AI agents with LLM and tool integration, though it focuses on conversational voice agents and may not fully cover memory management or multi-agent orchestration.

    PythonLanguage Model IntegrationsLLM Model IntegrationsMessage-Passing Agent Orchestrators
    Vezi pe GitHub↗12,846
  • livekit/livekitAvatar livekit

    livekit/livekit

    19,358Vezi pe GitHub↗

    LiveKit is a comprehensive framework for building and orchestrating real-time, multimodal AI agents that interact with users through voice, video, and text. It provides a centralized, event-driven architecture to manage the entire lifecycle of automated participants, from initialization and session state management to graceful shutdown. By utilizing a selective forwarding unit, the platform efficiently routes media streams between participants and agents, ensuring low-latency communication and secure, token-based authentication for all connections. The platform distinguishes itself through it

    LiveKit is an open-source framework for building and orchestrating real-time, multimodal AI agents that interact via voice, video, and text, with an event-driven lifecycle and secure media routing—fitting the search for an AI agent framework, though its primary focus on real-time interactions may leave some requested features like general-purpose tool integration or memory management less prominent.

    GoLanguage Model IntegrationsLanguage Model IntegrationsLLM Provider Integrations
    Vezi pe GitHub↗19,358
  • claude-code-best/claude-codeAvatar claude-code-best

    claude-code-best/claude-code

    20,272Vezi pe GitHub↗

    Claude Code is a command-line interface and multi-agent orchestration framework designed for autonomous software engineering. It enables AI agents to perform codebase modifications, debugging, and Git workflow management while coordinating multiple specialized agents to decompose and execute complex engineering tasks in parallel. The system distinguishes itself through a high degree of isolation and safety, utilizing Git worktrees to create independent working directories for concurrent agents and implementing a tiered permission system that combines user rules, project policies, and OS-level

    Claude Code is a multi-agent orchestration framework that coordinates specialized AI agents for autonomous software engineering, fitting the AI agent framework category with built-in agent orchestration, tool integration, and LLM support, though its focus on codebase tasks means general memory management and broad extensibility are less emphasized than in general-purpose agent frameworks.

    TypeScriptMulti-Agent CoordinationMulti-Agent OrchestrationAgent Execution Tracing
    Vezi pe GitHub↗20,272
  • copilotkit/copilotkitAvatar CopilotKit

    CopilotKit/CopilotKit

    35,194Vezi pe GitHub↗

    CopilotKit is an agentic framework designed to integrate large language models into application frontends, enabling natural language control over software features and data. It provides the infrastructure to build intelligent assistants that manage conversation history, track application state, and execute complex workflows through conversational prompts. The framework distinguishes itself by its ability to render dynamic, interactive user interface components in real time based on model outputs. By utilizing a standardized communication protocol, it maps natural language intents to executabl

    CopilotKit is a framework for building AI agents that integrate LLMs into application frontends, handling orchestration, memory, tool use, and dynamic UI—fitting the core needs of an AI agent framework, though multi-agent coordination and observability features are less explicit.

    TypeScriptAgent Development FrameworksConversational State ManagersGenerative AI Integrations
    Vezi pe GitHub↗35,194
  • openinterpreter/open-interpreterAvatar openinterpreter

    openinterpreter/open-interpreter

    63,998Vezi pe GitHub↗

    Open Interpreter is an autonomous agent runtime that translates natural language instructions into executable code to interact with local software and operating systems. It functions as an orchestration framework that connects language models to a secure execution environment, enabling the development of agents capable of managing system resources and performing complex tasks. To ensure safety, the system mandates explicit user verification before executing any generated code and provides robust isolation through containerized sandboxing. The project distinguishes itself through its deep inte

    Open Interpreter is an agent runtime and orchestration framework that connects LLMs to local system execution for building autonomous agents, fitting the search for an open-source AI agent framework with tool integration and LLM connectivity, though its focus on local computer use makes it narrower than a general multi-agent platform.

    RustAgentic Systems FrameworksAutonomous Agent RuntimesCode Execution Sandboxes
    Vezi pe GitHub↗63,998
  • mpaepper/llm_agentsAvatar mpaepper

    mpaepper/llm_agents

    1,043Vezi pe GitHub↗

    This project is a development framework for building autonomous agents that utilize language models to reason through multi-step tasks. It functions as an orchestrator that manages iterative loops of thought, action, and observation, allowing systems to process information and reach solutions without manual intervention. The framework distinguishes itself through a modular tool abstraction that connects language models to external data sources and code execution environments. By injecting tool-binding metadata into the prompt context, the system enables models to dynamically invoke custom fun

    This repository provides a way to build LLM-controlled agents, placing it squarely in the AI agent framework category, though its brief description and limited topics suggest a basic, likely code-first tool rather than a full-featured orchestration platform.

    PythonAgent Tooling FrameworksAgentic LLM FrameworksAgentic Reasoning Loops
    Vezi pe GitHub↗1,043
  • dynamiq-ai/dynamiqAvatar dynamiq-ai

    dynamiq-ai/dynamiq

    1,053Vezi pe GitHub↗

    Dynamiq is an agent development platform designed for building, orchestrating, and monitoring autonomous agents. It provides a framework for constructing complex, multi-step workflows using a graph-based engine that supports conditional branching, feedback loops, and iterative task execution. The platform distinguishes itself through its focus on secure, private infrastructure, allowing for the deployment of language models and orchestration services within virtual private clouds to maintain data sovereignty. It integrates retrieval-augmented generation pipelines to ground model responses in

    Dynamiq is an orchestration framework for agentic AI and LLM applications, directly matching the need for building and orchestrating autonomous AI agents, though specific features like memory management and multi-agent support are not explicitly confirmed in the description.

    PythonAI Agent Development ToolsAgentic LLM FrameworksAgentic Workflow Orchestration
    Vezi pe GitHub↗1,053
  • bmad-code-org/bmad-methodAvatar bmad-code-org

    bmad-code-org/BMAD-METHOD

    49,528Vezi pe GitHub↗

    BMAD-METHOD is a multi-agent orchestration framework designed to automate the entire software development lifecycle. It functions as a programmable engine that coordinates autonomous agents to handle complex tasks, ranging from initial requirement elicitation and project planning to code generation and system maintenance. By embedding architectural constraints into a central context file, the system ensures that all automated actions remain aligned with project goals and organizational standards. The platform distinguishes itself through an adversarial review process, where a dual-agent syste

    BMAD-METHOD is a multi-agent orchestration framework that coordinates autonomous agents for tasks like code generation and project planning, which fits the intent for an AI agent framework, though its focus is the software development lifecycle rather than general-purpose agent building.

    JavaScriptAdversarial Agent OrchestrationAgent Orchestration FrameworksAutonomous Agent Frameworks
    Vezi pe GitHub↗49,528
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foundationagents/metagpt68.8KPythonMIT21 ian. 2026
camel-ai/owl19.9KPython—12 iun. 2026
nirdiamant/genai_agents20KJupyter Notebookother17 feb. 2026
cline/cline63.8KTypeScriptApache-2.023 iun. 2026
camel-ai/camel17.3KPythonApache-2.023 iun. 2026
microsoft/agent-framework7.3KPythonmit20 feb. 2026
awslabs/agent-squad7.7KPythonApache-2.022 iun. 2026

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