fastapi-langgraph-agent-production-ready-template and langgraph-agents

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Language: Python
License: MIT
Stars: 36
Forks: 6
Downloads:
Commits (30d): 0
Language: Python
License:
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About fastapi-langgraph-agent-production-ready-template

wassim249/fastapi-langgraph-agent-production-ready-template

A production-ready FastAPI template for building AI agent applications with LangGraph integration. This template provides a robust foundation for building scalable, secure, and maintainable AI agent services.

This is a comprehensive development template for building intelligent AI agent applications. It helps developers create AI agents that can handle complex workflows, maintain context over time through long-term memory, and interact in real-time. Developers would use this to quickly launch robust AI agent services, integrating various AI capabilities like tool calling and streaming responses into their products.

AI-Agent-Development Backend-Development LLM-Application-Frameworks API-Development AI-Workflow-Automation

About langgraph-agents

shamspias/langgraph-agents

A production-ready, scalable multi-agent system built with LangGraph, featuring specialized agents for different tasks with best coding practices.

This system helps you get immediate, smart answers to a wide range of questions without needing to switch between different tools. You input your question or request, and it automatically provides detailed answers, calculations, recommendations, or information from stored knowledge. It's designed for anyone needing quick, specialized assistance, from researchers to customer support teams, or even individuals looking for food recommendations and recipes.

knowledge-management computational-assistance culinary-discovery information-retrieval smart-assistant

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