Comprehensive 模組化框架 Tools for Every Need

Get access to 模組化框架 solutions that address multiple requirements. One-stop resources for streamlined workflows.

模組化框架

  • Easy-Agent is a Python framework that simplifies creation of LLM-based agents, enabling tool integration, memory, and custom workflows.
    0
    0
    What is Easy-Agent?
    Easy-Agent accelerates AI agent development by providing a modular framework that integrates LLMs with external tools, in-memory session tracking, and configurable action flows. Developers start by defining a set of tool wrappers that expose APIs or executables, then instantiate an agent with desired reasoning strategies—such as single-step, multi-step chain-of-thought, or custom prompts. The framework manages context, invokes tools dynamically based on model output, and tracks conversation history through session memory. It supports asynchronous execution for parallel tasks and solid error handling to ensure robust agent performance. By abstracting complex orchestration, Easy-Agent empowers teams to deploy intelligent assistants for use cases like automated research, customer support bots, data extraction pipelines, and scheduling assistants with minimal setup.
  • MCP Ollama Agent is an open-source AI agent automating tasks via web search, file operations, and shell commands.
    0
    0
    What is MCP Ollama Agent?
    MCP Ollama Agent leverages the Ollama local LLM runtime to provide a versatile agent framework for task automation. It integrates multiple tool interfaces, including web search via SERP API, file system operations, shell command execution, and Python environment management. By defining custom prompts and tool configurations, users can orchestrate complex workflows, automate repetitive tasks, and build specialized assistants tailored to various domains. The agent handles tool invocation and context management, maintaining conversation history and tool responses to generate coherent actions. Its CLI-based setup and modular architecture make it easy to extend with new tools and adapt to different use cases, from research and data analysis to development support.
  • A multi-agent AI framework that orchestrates specialized GPT-powered agents to collaboratively solve complex tasks and automate workflows.
    0
    0
    What is Multi-Agent AI Assistant?
    Multi-Agent AI Assistant is a modular Python-based framework that orchestrates multiple GPT-powered agents, each assigned to discrete roles such as planning, research, analysis, and execution. The system supports message passing between agents, memory storage, and integration with external tools and APIs, enabling complex task decomposition and collaborative problem-solving. Developers can customize agent behavior, add new toolkits, and configure workflows via simple configuration files. By leveraging distributed reasoning across specialized agents, the framework accelerates automated research, data analysis, decision support, and task automation. The repository includes sample implementations and templates, allowing rapid prototyping of intelligent assistants and digital workers capable of handling end-to-end workflows in business, education, and research environments.
  • A Python framework orchestrating multiple autonomous GPT agents for collaborative problem-solving and dynamic task execution.
    0
    0
    What is OpenAI Agent Swarm?
    OpenAI Agent Swarm is a modular framework designed to streamline the coordination of multiple GPT-powered agents across diverse tasks. Each agent operates independently with customizable prompts and role definitions, while the Swarm core manages agent lifecycle, message passing, and task scheduling. The platform includes tools for defining complex workflows, monitoring agent interactions in real time, and aggregating results into coherent outputs. By distributing workloads across specialized agents, users can tackle complex problem-solving scenarios, from content generation and research analysis to automated debugging and data summarization. OpenAI Agent Swarm integrates seamlessly with the OpenAI API, allowing developers to rapidly deploy multi-agent systems without building orchestration infrastructure from scratch.
  • Self-hosted AI assistant with memory, plugins, and knowledge base for personalized conversational automation and integration.
    0
    0
    What is Solace AI?
    Solace AI is a modular AI agent framework enabling you to deploy your own conversational assistant on your infrastructure. It offers context memory management, vector database support for document retrieval, plugin hooks for external integrations, and a web-based chat interface. With customizable system prompts and fine-grained control over knowledge sources, you can create agents for support, tutoring, personal productivity, or internal automation without relying on third-party servers.
  • AgentSmith is an open-source framework orchestrating autonomous multi-agent workflows using LLM-based assistants.
    0
    0
    What is AgentSmith?
    AgentSmith is a modular agent orchestration framework built in Python that enables developers to define, configure, and run multiple AI agents collaboratively. Each agent can be assigned specialized roles—such as researcher, planner, coder, or reviewer—and communicate via an internal message bus. AgentSmith supports memory management through vector stores like FAISS or Pinecone, task decomposition into subtasks, and automated supervision to ensure goal completion. Agents and pipelines are configured via human-readable YAML files, and the framework integrates seamlessly with OpenAI APIs and custom LLMs. It includes built-in logging, monitoring, and error handling, making it ideal for automating software development workflows, data analysis, and decision support systems.
  • ChainLite lets developers build LLM-driven agent applications via modular chains, tools integration, and live conversation visualization.
    0
    0
    What is ChainLite?
    ChainLite streamlines creation of AI agents by abstracting the complexities of LLM orchestration into reusable chain modules. Using simple Python decorators and configuration files, developers define agent behaviors, tool interfaces and memory structures. The framework integrates with popular LLM providers (OpenAI, Cohere, Hugging Face) and external data sources (APIs, databases), allowing agents to fetch real-time information. With a built-in browser-based UI powered by Streamlit, users can inspect token-level conversation history, debug prompts, and visualize chain execution graphs. ChainLite supports multiple deployment targets, from local development to production containers, enabling seamless collaboration between data scientists, engineers, and product teams.
  • An open-source engine for creating and managing AI persona agents with customizable memory and behavior policies.
    0
    0
    What is CoreLink-Persona-Engine?
    CoreLink-Persona-Engine is a modular framework that empowers developers to create AI agents with unique personas by defining personality traits, memory behaviors, and conversation flows. It provides a flexible plugin architecture to integrate knowledge bases, custom logic, and external APIs. The engine manages both short-term and long-term memory, enabling contextual continuity across sessions. Developers can configure persona profiles using JSON or YAML, connect to LLM providers like OpenAI or local models, and deploy agents on various platforms. With built-in logging and analytics, CoreLink facilitates monitoring agent performance and refining behavior, making it suitable for customer support chatbots, virtual assistants, role-playing applications, and research prototypes.
  • A Python framework for constructing multi-step reasoning pipelines and agent-like workflows with large language models.
    0
    0
    What is enhance_llm?
    enhance_llm provides a modular framework for orchestrating large language model calls in defined sequences, allowing developers to chain prompts, integrate external tools or APIs, manage conversational context, and implement conditional logic. It supports multiple LLM providers, custom prompt templates, asynchronous execution, error handling, and memory management. By abstracting the boilerplate of LLM interaction, enhance_llm streamlines the development of agent-like applications—such as automated assistants, data processing bots, and multi-step reasoning systems—making it easier to build, debug, and extend sophisticated workflows.
  • LemLab is a Python framework enabling you to build customizable AI agents with memory, tool integrations, and evaluation pipelines.
    0
    0
    What is LemLab?
    LemLab is a modular framework for developing AI agents powered by large language models. Developers can define custom prompt templates, chain multi-step reasoning pipelines, integrate external tools and APIs, and configure memory backends to store conversation context. It also includes evaluation suites to benchmark agent performance on defined tasks. By providing reusable components and clear abstractions for agents, tools, and memory, LemLab accelerates experimentation, debugging, and deployment of complex LLM applications within research and production environments.
  • Minerva is a Python AI agent framework enabling autonomous multi-step workflows with planning, tool integration, and memory support.
    0
    0
    What is Minerva?
    Minerva is an extensible AI agent framework designed to automate complex workflows using large language models. Developers can integrate external tools—such as web search, API calls, or file processors—define custom planning strategies, and manage conversational or persistent memory. Minerva supports both synchronous and asynchronous task execution, configurable logging, and a plugin architecture, making it easy to prototype, test, and deploy intelligent agents capable of reasoning, planning, and tool use in real-world scenarios.
  • An open-source reinforcement learning agent that learns to play Pacman, optimizing navigation and ghost avoidance strategies.
    0
    0
    What is Pacman AI?
    Pacman AI offers a fully functional Python-based environment and agent framework for the classic Pacman game. The project implements key reinforcement learning algorithms—Q-learning and value iteration—to allow the agent to learn optimal policies for pill collection, maze navigation, and ghost avoidance. Users can define custom reward functions and adjust hyperparameters such as learning rate, discount factor, and exploration strategy. The framework supports metric logging, performance visualization, and reproducible experiment setups. It is designed for easy extension, letting researchers and students integrate new algorithms or neural network-based learning approaches and benchmark them against baseline grid-based methods within the Pacman domain.
  • Rawr Agent is a Python framework enabling creation of autonomous AI agents with customizable task pipelines, memory and tool integrations.
    0
    0
    What is Rawr Agent?
    Rawr Agent is a modular, open-source Python framework that empowers developers to build autonomous AI agents by orchestrating complex workflows of LLM interactions. Leveraging LangChain under the hood, Rawr Agent lets you define task sequences either through YAML configurations or Python code, specifying tool integrations such as web APIs, database queries, and custom scripts. It includes memory components for storing conversational history and vector embeddings, caching mechanisms to optimize repeated calls, and robust logging and error handling to monitor agent behavior. Rawr Agent’s extensible architecture allows adding custom tools and adapters, making it suitable for tasks like automated research, data analysis, report generation, and interactive chatbots. With its simple API, teams can rapidly prototype and deploy intelligent agents for diverse applications.
  • Open-source Python framework enabling developers to build customizable AI agents with tool integration and memory management.
    0
    0
    What is Real-Agents?
    Real-Agents is designed to simplify the creation and orchestration of AI-powered agents that can perform complex tasks autonomously. Built on Python and compatible with major large language models, the framework features a modular design comprising core components for language understanding, reasoning, memory storage, and tool execution. Developers can rapidly integrate external services like web APIs, databases, and custom functions to extend agent capabilities. Real-Agents supports memory mechanisms to retain context across interactions, enabling multi-turn conversations and long-running workflows. The platform also includes utilities for logging, debugging, and scaling agents in production environments. By abstracting low-level details, Real-Agents streamlines the development cycle, allowing teams to focus on task-specific logic and deliver powerful automated solutions.
  • An RL-based AI agent that learns optimal betting strategies to play heads-up limit Texas Hold'em poker efficiently.
    0
    0
    What is TexasHoldemAgent?
    TexasHoldemAgent provides a modular environment built on Python to train, evaluate, and deploy an AI-powered poker player for heads-up limit Texas Hold’em. It integrates a custom simulation engine with deep reinforcement learning algorithms, including DQN, for iterative policy improvement. Key capabilities include hand state encoding, action space definition (fold, call, raise), reward shaping, and real-time decision evaluation. Users can customize learning parameters, leverage CPU/GPU acceleration, monitor training progress, and load or save trained models. The framework supports batch simulation to test various strategies, generate performance metrics, and visualize win rates, empowering researchers, developers, and poker enthusiasts to experiment with AI-driven gameplay strategies.
  • ADK-Golang empowers Go developers to build AI-driven agents with integrated tools, memory management, and prompt orchestration.
    0
    0
    What is ADK-Golang?
    ADK-Golang is an open-source Agent Development Kit for the Go ecosystem. It provides a modular framework to register and manage tools (APIs, databases, external services), build dynamic prompt templates, and maintain conversation memory for multi-turn interactions. With built-in orchestration patterns and logging support, developers can easily configure, test, and deploy AI agents that perform tasks such as data retrieval, automated workflows, and contextual chat. ADK-Golang abstracts low-level API calls and streamlines end-to-end agent lifecycles—from initialization and planning to execution and response handling—entirely in Go.
  • An open-source Python framework to prototype and deploy customizable AI agents with memory management and tool integrations.
    0
    0
    What is AI Agent Playground?
    AI Agent Playground provides a modular environment for developers and researchers to build sophisticated AI-driven agents capable of reasoning, planning, and executing tasks autonomously. By leveraging pluggable memory systems, customizable tool interfaces, and an extensible plugin architecture, users can define agents that interact with web services, databases, and custom APIs. The framework offers prebuilt templates for common agent roles such as information retrieval, data analysis, and automated testing, while also supporting deep customization of decision-making logic. Users can monitor agent workflows through a command-line interface, integrate with CI/CD pipelines, and deploy on any platform supporting Python. Its open-source nature encourages community contributions, enabling rapid innovation in autonomous agent capabilities.
  • Open-source Python framework that builds modular autonomous AI agents to plan, integrate tools, and execute multi-step tasks.
    0
    0
    What is Autonomais?
    Autonomais is a modular AI agent framework designed for full autonomy in task planning and execution. It integrates large language models to generate plans, orchestrates actions via a customizable pipeline, and stores context in memory modules for coherent multi-step reasoning. Developers can plug in external tools like web scrapers, databases, and APIs, define custom action handlers, and fine-tune agent behavior through configurable skills. The framework supports logging, error handling, and step-by-step debugging, ensuring reliable automation of research tasks, data analysis, and web interactions. With its extensible plugin architecture, Autonomais enables rapid development of specialized agents capable of complex decision-making and dynamic tool usage.
  • GPT Agent dynamically executes task workflows like data retrieval, text summarization, and automated scheduling using GPT models.
    0
    0
    What is GPT Agent?
    GPT Agent provides a modular framework to build intelligent agents powered by the latest GPT models. Users start by defining task workflows through a visual editor, specifying inputs, actions, and output formats. The platform supports integration with external data sources and custom knowledge bases, enabling agents to perform complex research and summarization tasks. It also features API access for headless deployments and a web dashboard to monitor performance, tune model parameters, and review conversation logs. Whether automating customer interactions, generating reports, or managing schedules, GPT Agent offers end-to-end support from agent creation to scalable production rollout.
  • An open-source Python framework to build Retrieval-Augmented Generation agents with customizable control over retrieval and response generation.
    0
    0
    What is Controllable RAG Agent?
    The Controllable RAG Agent framework provides a modular approach to building Retrieval-Augmented Generation systems. It allows you to configure and chain retrieval components, memory modules, and generation strategies. Developers can plug in different LLMs, vector databases, and policy controllers to adjust how documents are fetched and processed before generation. Built on Python, it includes utilities for indexing, querying, conversation history tracking, and action-based control flows, making it ideal for chatbots, knowledge assistants, and research tools.
Featured