End-to-End-Agentic-Ai-Automation-Lab
End-to-End Agentic AI Automation Labは、エージェントAIシステムやマルチエージェントフレームワークの実装を通じて、AIエージェントの構築と管理に関する実践的な知識を提供します。特に、RAGパイプラインやワークフロー自動化に焦点を当てており、開発者や研究者にとって価値のあるリソースです。
GitHubスター
10
ユーザー評価
未評価
フォーク
5
イシュー
0
閲覧数
1
お気に入り
0
End-to-End Agentic AI Automation Lab
Welcome to the official repository for End-to-End Agentic AI Automation Lab, a comprehensive and hands-on project portfolio developed as part of the Agentic AI and GenAI v2.0 course.
This repository showcases real-world projects and advanced implementations of agentic AI systems, multi-agent frameworks, RAG pipelines, and AI workflow automation. It is designed for developers, researchers, and enthusiasts interested in building, deploying, and managing intelligent AI agents at scale.
📄 About the Course
This work is based on the curriculum from Agentic AI v2.0, which provides in-depth knowledge and practical experience with:
- LangChain, LangGraph, LangFlow
- CrewAI, AutoGen, Agno
- Retrieval-Augmented Generation (RAG), Adaptive RAG
- Workflow automation with n8n
- Monitoring tools: LangSmith, Opik, ClearML
- Deployment tools: GitHub Actions, Docker, AWS, BentoML
- Model Context Protocol (MCP) for standardized tool and data integration
📈 Features Covered
- ✅ AI Agent Frameworks (LangChain, LangGraph, CrewAI, Agno, AutoGen)
- ✅ Multi-Agent Collaboration & Memory Management
- ✅ LangFlow UI-based App Building
- ✅ Adaptive & Agentic RAG Systems
- ✅ Model Context Protocol (MCP) Integration
- ✅ End-to-End Deployment with CI/CD
- ✅ Monitoring, Debugging & Human Feedback Integration
- ✅ Cloud-Native Deployment using AWS, Docker
- ✅ Real-World Agentic AI Use Cases (Chatbots, Financial Agents, Automation)
🎓 Learning Objectives
By exploring this repository, you will:
- Understand the architecture of agentic AI systems
- Gain experience with LLM orchestration tools
- Build scalable and intelligent multi-agent applications
- Learn how to automate and monitor AI workflows
- Integrate standardized protocols like MCP into real-world AI pipelines
🏃♂️ Getting Started
To clone the repository:
git clone https://github.com/MDalamin5/End-to-End-Agentic-Ai-Automation-Lab.git
Each folder will contain:
README.md
with module overviewnotebooks/
orscripts/
for implementationsconfigs/
for deployment & environment setup
📊 Tech Stack
- Languages: Python
- Frameworks: LangChain, LangGraph, CrewAI, AutoGen
- Orchestration: n8n, LangFlow
- Deployment: GitHub Actions, Docker, AWS EC2/S3/ECR, BentoML
- Monitoring: LangSmith, Opik, ClearML
- Databases: FAISS, ChromaDB, vector stores
- Protocols & Standards: Model Context Protocol (MCP)
🌐 Licensing
This project is licensed under the MIT License.
📢 Final Notes
This repository reflects a complete and evolving body of work in agentic AI systems and automation. Contributions, suggestions, and forks are welcome as part of the open-source learning community.
For questions or collaborations, feel free to reach out via GitHub Issues.
Generative AI Developer | Building agents that remember & reason with LangChain, LangGraph & RAG. | Open to AI/ML Engineer roles.
19
フォロワー
64
リポジトリ
0
Gist
117
貢献数