Comprehensive 会話型アシスタント Tools for Every Need

Get access to 会話型アシスタント solutions that address multiple requirements. One-stop resources for streamlined workflows.

会話型アシスタント

  • Graph-centric AI agent framework orchestrating LLM calls and structured knowledge through customizable language graphs.
    0
    0
    What is Geers AI Lang Graph?
    Geers AI Lang Graph provides a graph-based abstraction layer for building AI agents that coordinate multiple LLM calls and manage structured knowledge. By defining nodes and edges representing prompts, data, and memory, developers can create dynamic workflows, track context across interactions, and visualize execution flows. The framework supports plugin integrations for various LLM providers, custom prompt templating, and exportable graphs. It simplifies iterative agent design, improves context retention, and accelerates prototyping of conversational assistants, decision-support bots, and research pipelines.
  • A lightweight C++ framework to build local AI agents using llama.cpp, featuring plugins and conversation memory.
    0
    0
    What is llama-cpp-agent?
    llama-cpp-agent is an open-source C++ framework for running AI agents entirely offline. It leverages the llama.cpp inference engine to provide fast, low-latency interactions and supports a modular plugin system, configurable memory, and task execution. Developers can integrate custom tools, switch between different local LLM models, and build privacy-focused conversational assistants without external dependencies.
  • Inngest AgentKit is a Node.js toolkit for creating AI agents with event workflows, templated rendering, and seamless API integrations.
    0
    0
    What is Inngest AgentKit?
    Inngest AgentKit provides a comprehensive framework for developing AI agents within a Node.js environment. It leverages Inngest’s event-driven architecture to trigger agent workflows based on external events such as HTTP requests, scheduled tasks, or webhook calls. The toolkit includes template rendering utilities for crafting dynamic responses, built-in state management to maintain context over sessions, and seamless integration with external APIs and language models. Agents can stream partial responses in real time, manage complex logic, and orchestrate multi-step processes with error handling and retries. By abstracting infrastructure and workflow concerns, AgentKit enables developers to focus on designing intelligent behaviors, reducing boilerplate code and accelerating deployment of conversational assistants, data-processing pipelines, and task automation bots.
Featured