Comprehensive AI фреймворк Tools for Every Need

Get access to AI фреймворк solutions that address multiple requirements. One-stop resources for streamlined workflows.

AI фреймворк

  • AI Agents is a Python framework for building modular AI agents with customizable tools, memory, and LLM integration.
    0
    0
    What is AI Agents?
    AI Agents is a comprehensive Python framework designed to streamline the development of intelligent software agents. It offers plug-and-play toolkits for integrating external services such as web search, file I/O, and custom APIs. With built-in memory modules, agents maintain context across interactions, enabling advanced multi-step reasoning and persistent conversations. The framework supports multiple LLM providers, including OpenAI and open-source models, allowing developers to switch or combine models easily. Users define tasks, assign tools and memory policies, and the core engine orchestrates prompt construction, tool invocation, and response parsing for seamless agent operation.
  • AgentIn is an open-source Python framework for building AI agents with customizable memory, tool integration, and auto-prompting.
    0
    0
    What is AgentIn?
    AgentIn is a Python-based AI agent framework designed to accelerate the development of conversational and task-driven agents. It offers built-in memory modules to persist context, dynamic tool integration to call external APIs or local functions, and a flexible prompt templating system for customized interactions. Multi-agent orchestration enables parallel workflows, while logging and caching improve reliability and auditability. Easily configurable via YAML or Python code, AgentIn supports major LLM providers and can be extended with custom plugins for domain-specific capabilities.
  • AI-Agent-Solana integrates autonomous AI agents with Solana blockchain for decentralized smart contract interactions and secure data orchestration.
    0
    0
    What is AI-Agent-Solana?
    AI-Agent-Solana is a specialized framework that bridges the gap between AI-driven decision making and blockchain execution. By leveraging Solana’s high-throughput network, it enables developers to author intelligent agents in TypeScript that autonomously trigger smart contract transactions based on real-time data. The SDK includes modules for secure wallet management, on-chain data retrieval, event listeners for Solana clusters, and customizable workflows that define agent behaviors. Whether the use case involves automated liquidity management, NFT minting bots, or governance voting agents, AI-Agent-Solana orchestrates complex on-chain interactions while ensuring secure key handling and efficient parallel task processing. Its modular design and extensive documentation make it simple to extend functionality or integrate with existing decentralized applications.
  • CrewAI is a Python framework enabling development of autonomous AI Agents with tool integration, memory, and task orchestration.
    0
    0
    What is CrewAI?
    CrewAI is a modular Python framework designed for building fully autonomous AI Agents. It provides core components such as an Agent Orchestrator for planning and decision making, a Tool Integration layer for connecting external APIs or custom actions, and a Memory Module to store and recall context across interactions. Developers define tasks, register tools, configure memory backends, and then launch Agents that can plan multi-step workflows, execute actions, and adapt based on results, making CrewAI ideal for creating intelligent assistants, automated workflows, and research prototypes.
  • AI Library is a developer platform for building and deploying customizable AI agents using modular chains and tools.
    0
    1
    What is AI Library?
    AI Library offers a comprehensive framework for designing and running AI agents. It includes agent builders, chain orchestration, model interfaces, tool integration, and vector store support. The platform features an API-first approach, extensive documentation, and sample projects. Whether you’re creating chatbots, data retrieval agents, or automation assistants, AI Library’s modular architecture ensures each component—such as language models, memory stores, and external tools—can be easily configured, combined, and monitored in production environments.
  • Exo is an open-source AI agent framework enabling developers to build chatbots with tool integration, memory management, and conversation workflows.
    0
    0
    What is Exo?
    Exo is a developer-centric framework enabling the creation of AI-driven agents capable of communicating with users, invoking external APIs, and preserving conversational context. At its core, Exo uses TypeScript definitions to describe tools, memory layers, and dialogue management. Users can register custom actions for tasks like data retrieval, scheduling, or API orchestration. The framework automatically handles prompt templates, message routing, and error handling. Exo’s memory module can store and recall user-specific information across sessions. Developers deploy agents in Node.js or serverless environments with minimal configuration. Exo also supports middleware for logging, authentication, and metrics. Its modular design ensures components can be reused across multiple agents, accelerating development and reducing redundancy.
  • Camel is an open-source AI agent orchestration framework enabling multi-agent collaboration, tool integration, and planning with LLMs & knowledge graphs.
    0
    0
    What is Camel AI?
    Camel AI is an open-source framework designed to simplify the creation and orchestration of intelligent agents. It offers abstractions for chaining large language models, integrating external tools and APIs, managing knowledge graphs, and persisting memory. Developers can define multi-agent workflows, decompose tasks into subplans, and monitor execution through a CLI or web UI. Built on Python and Docker, Camel AI allows seamless swapping of LLM providers, custom tool plugins, and hybrid planning strategies, accelerating development of automated assistants, data pipelines, and autonomous workflows at scale.
  • OmniMind0 is an open-source Python framework enabling autonomous multi-agent workflows with built-in memory management and plugin integration.
    0
    0
    What is OmniMind0?
    OmniMind0 is a comprehensive agent-based AI framework written in Python that allows creation and orchestration of multiple autonomous agents. Each agent can be configured to handle specific tasks—such as data retrieval, summarization, or decision-making—while sharing state through pluggable memory backends like Redis or JSON files. The built-in plugin architecture lets you extend functionality with external APIs or custom commands. It supports OpenAI, Azure, and Hugging Face models, and offers deployment via CLI, REST API server, or Docker for flexible integration into your workflows.
  • HyperChat enables multi-model AI chat with memory management, streaming responses, function calling, and plugin integration in applications.
    0
    0
    What is HyperChat?
    HyperChat is a developer-centric AI agent framework that simplifies embedding conversational AI into applications. It unifies connections to various LLM providers, handles session context and memory persistence, and delivers streamed partial replies for responsive UIs. Built-in function calling and plugin support enable executing external APIs, enriching conversations with real-world data and actions. Its modular architecture and UI toolkit allow rapid prototyping and production-grade deployments across web, Electron, and Node.js environments.
  • An open-source multi-agent framework orchestrating LLMs for dynamic tool integration, memory management, and automated reasoning.
    0
    0
    What is Avalon-LLM?
    Avalon-LLM is a Python-based multi-agent AI framework that allows users to orchestrate multiple LLM-driven agents in a coordinated environment. Each agent can be configured with specific tools—including web search, file operations, and custom APIs—to perform specialized tasks. The framework supports memory modules for storing conversation context and long-term knowledge, chain-of-thought reasoning to improve decision making, and built-in evaluation pipelines to benchmark agent performance. Avalon-LLM provides a modular plugin system, enabling developers to easily add or replace components such as model providers, toolkits, and memory stores. With simple configuration files and command-line interfaces, users can deploy, monitor, and extend autonomous AI workflows tailored to research, development, and production use cases.
  • bedrock-agent is an open-source Python framework enabling dynamic AWS Bedrock LLM-based agents with tool chaining and memory support.
    0
    0
    What is bedrock-agent?
    bedrock-agent is a versatile AI agent framework that integrates with AWS Bedrock’s suite of large language models to orchestrate complex, task-driven workflows. It offers a plugin architecture for registering custom tools, memory modules for context persistence, and a chain-of-thought mechanism for improved reasoning. Through a simple Python API and command-line interface, it enables developers to define agents that can call external services, process documents, generate code, or interact with users via chat. Agents can be configured to automatically select relevant tools based on user prompts and maintain conversational state across sessions. This framework is open-source, extensible, and optimized for rapid prototyping and deployment of AI-powered assistants on local or AWS cloud environments.
  • An open-source framework for developers to build, customize, and deploy autonomous AI agents with plugin support.
    0
    0
    What is BeeAI Framework?
    BeeAI Framework provides a fully modular architecture for building intelligent agents that can perform tasks, manage state, and interact with external tools. It includes a memory manager for long-term context retention, a plugin system for custom skill integration, and built-in support for API chaining and multi-agent coordination. The framework offers Python and JavaScript SDKs, a command-line interface for scaffolding projects, and deployment scripts for cloud, Docker, or edge devices. Monitoring dashboards and logging utilities help track agent performance and troubleshoot issues in real time.
  • Kin Kernel is a modular AI agent framework enabling automated workflows through LLM orchestration, memory management, and tool integrations.
    0
    0
    What is Kin Kernel?
    Kin Kernel is a lightweight, open-source kernel framework for constructing AI-powered digital workers. It provides a unified system for orchestrating large language models, managing contextual memory, and integrating custom tools or APIs. With an event-driven architecture, Kin Kernel supports asynchronous task execution, session tracking, and extensible plugins. Developers define agent behaviors, register external functions, and configure multi-LLM routing to automate workflows ranging from data extraction to customer support. The framework also includes built-in logging and error handling to facilitate monitoring and debugging. Designed for flexibility, Kin Kernel can be integrated into web services, microservices, or standalone Python applications, enabling organizations to deploy robust AI agents at scale.
  • An AI-powered assistant for code repositories offering context-aware code queries, summarization, documentation generation, and automated testing support.
    0
    0
    What is RepoAgent?
    RepoAgent is an AI framework that transforms any code repository into an interactive knowledge base. It indexes source files, functions, classes, and documentation into a vector store, enabling fast retrieval and context-aware responses. Developers can ask natural language questions about code functionality, architecture, or dependencies. It supports automated code summarization, documentation generation, and test case creation by integrating with LLMs. RepoAgent also analyzes issues, pull requests, and commit history to provide insights on code quality and potential bugs. Its modular design allows customization of retrieval pipelines, model selection, and output formatting. By embedding directly into CI/CD pipelines or IDEs, RepoAgent streamlines development, reduces onboarding time, and boosts team productivity.
Featured