End-to-End Agentic AI Automation Lab
@MDalamin5
About End-to-End Agentic AI Automation Lab
This repository contains hands-on projects, code examples, and deployment workflows. Explore multi-agent systems, LangChain, LangGraph, AutoGen, CrewAI, RAG, MCP, automation with n8n, and scalable agent deployment using Docker, AWS, and BentoML.
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"End-to-End-Agentic-Ai-Automation-Lab": {
"command": "python",
"args": [
"-m",
"venv",
"venv"
]
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is End-to-End Agentic AI Automation Lab?
A comprehensive, production-grade repository for building, deploying, and managing intelligent AI agents, RAG pipelines, and automated workflows. It covers frameworks like LangGraph, AutoGen, MCP, n8n, and LangFlow, and is designed for developers transitioning from basic LLM calls to complex multi-agent autonomous systems.
How to use End-to-End Agentic AI Automation Lab?
Clone the repository, set up a Python 3.10+ virtual environment, navigate to a specific module folder, install its dependencies from requirements.txt, and configure a .env file with required API keys (e.g., OpenAI, Anthropic). Each module is self-contained and can be run independently.
Key features of End-to-End Agentic AI Automation Lab
- 24 modules spanning foundations, agentic frameworks, and full-stack products.
- Advanced agentic implementations with LangGraph, AutoGen, and MCP.
- Production RAG Pipelines including hybrid search, BM25, and LlamaParse.
- Zero-code orchestration using n8n and LangFlow.
- LLM fine-tuning with LoRA/Unsloth and deployment via vLLM.
- End-to-end projects: AI Interviewer, Applicant Tracking System, SynapseAI chatbot.
Use cases of End-to-End Agentic AI Automation Lab
- Build multi-agent LangGraph workflows with memory and human-in-the-loop.
- Implement production-grade RAG systems with hybrid search and re-ranking.
- Fine-tune and deploy local LLMs with high-throughput inference endpoints.
- Create full-stack AI applications like persistent chatbots and ATS systems.
FAQ from End-to-End Agentic AI Automation Lab
What agentic frameworks does the lab cover?
It covers LangGraph (state graphs, subgraphs, memory), AutoGen (round-robin, swarm, custom tools), and Anthropic's Model Context Protocol (MCP) for tool execution and web search.
What are the runtime requirements?
Python 3.10 or higher is required. Dependencies vary per module; each module contains its own requirements.txt. API keys for services like OpenAI, Anthropic, and Tavily are needed.
Is the code production-ready?
Yes, the lab emphasizes production-grade implementations, including full-stack projects, Alembic-backed databases, and high-throughput model serving via vLLM.
Can I run the examples in Google Colab?
Yes, a Colab badge is provided in the repository, indicating compatibility with Google Colab for certain modules.
What license applies?
The repository is distributed under the MIT License.
More Reasoning MCP servers
Agenticstore — The Open Source Standard For Local Mcp Tooling
agenticstoreAgenticStore: The secure toolkit for AI agents. Instantly equip Claude Desktop, Cursor, and Windsurf with 27+ MCP tools, persistent memory, and SearXNG search, all protected by a built-in PII prompt firewall to protect your data from being exposed to AI agents.
Agentic Tools MCP Server
PimzinoA comprehensive Model Context Protocol (MCP) server providing AI assistants with powerful task management and agent memories capabilities with project-specific storage.
🚀 Aider-MCP: AI Coding Server with Universal Auto-Detection
jacv888Aider-MCP-Upgraded is a production-grade multi-agent AI coding system that combines Desktop Commander (DC) investigation capabilities with Aider's implementation power. Features 70%+ token reduction, modular architecture, and intelligent workflow automation through strategic agen
n8n Workflow Builder MCP Server
salacosteAI-powered n8n workflow automation through natural language. MCP server enabling Claude AI & Cursor IDE to create, manage, and monitor workflows via Model Context Protocol. Multi-instance support, 17 tools, comprehensive docs. Build workflows conversationally without manual JSON
Agentic Radar
splx-aiA security scanner for your LLM agentic workflows
Comments