Comprehensive 思考の連鎖 Tools for Every Need

Get access to 思考の連鎖 solutions that address multiple requirements. One-stop resources for streamlined workflows.

思考の連鎖

  • A minimal TypeScript library enabling developers to create autonomous AI agents for task automation and natural language interactions.
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    What is micro-agent?
    micro-agent provides a minimalistic yet powerful set of abstractions for creating autonomous AI agents. Built in TypeScript, it runs seamlessly in both browser and Node.js contexts, allowing you to define agents with custom prompt templates, decision logic, and extensible tool integrations. Agents can leverage chain-of-thought reasoning, interact with external APIs, and maintain conversational or task-specific memory. The library includes utilities for handling API responses, error management, and session persistence. With micro-agent, developers can prototype and deploy agents for a range of tasks—such as automating workflows, building conversational interfaces, or orchestrating data-processing pipelines—without the overhead of larger frameworks. Its modular design and clear API surface make it easy to extend and integrate into existing applications.
    micro-agent Core Features
    • TypeScript-based agent abstraction
    • Custom prompt template support
    • Extensible tool and API integration
    • In-memory and persistent memory layers
    • Chain-of-thought reasoning utilities
    • Error handling and session persistence
  • An open-source multi-agent framework orchestrating LLMs for dynamic tool integration, memory management, and automated reasoning.
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    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.
  • Easy-Agent is a Python framework that simplifies creation of LLM-based agents, enabling tool integration, memory, and custom workflows.
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    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.
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