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CodeUltr0n/README.md

👨‍💻 About Me

I'm a Full-Stack Developer & AI Engineer from India specializing in the MERN Stack and building intelligent systems. I work on RAG pipelines, Agentic AI architectures, and LLM evaluation & gateways — combining full-stack development with deep AI/ML expertise.

  • 🏆 Selected for Swiggy Builders Club — building MCP Orchestrator, an orchestration layer for Model Context Protocol servers on the Swiggy platform
  • 🏆 AMD Slingshot 2026 Finalist — Hyderabad, for an AI solution in Consumer Experience
  • 🔬 Built a RAG Agentic AI System and working on LLM evaluation & gateways
  • 🤝 Open to collaborating on AI/ML & Full-Stack Projects
  • ☁️ Exploring DevOps practices and cloud infrastructure
  • 📬 Reach me at [email protected]
  • 🌐 View my work at Portfolio

🚀 Currently Building

Swiggy MCP Orchestrator — Selected project for Swiggy Builders Club.
An orchestration & routing layer for Model Context Protocol (MCP) servers — enabling agents to dynamically discover, compose, and call MCP tools across the Swiggy ecosystem (food ordering, Instamart, Dineout, Genie).

🛠️ Tech Stack

JavaScript TypeScript React Node.js HTML5 CSS3 Python Java C++ MongoDB Express Docker Git PyTorch

🧠 Featured Projects

📄 Quick descriptions
Project Description
MCP-SERVER Model Context Protocol server implementation — exposes tools/resources to LLM agents via the MCP spec. Foundation for the Swiggy Builders Club MCP Orchestrator work.
Langchain-MCP LangChain ↔ MCP integration — lets LangChain agents discover and call any MCP-exposed tool seamlessly.
LangGraph-Ai-Agent Stateful, graph-based agentic AI workflows built with LangGraph — multi-step reasoning, branching, and human-in-the-loop.
LangChain-ai-agent ReAct-style AI agent built on LangChain — tool use, retrieval, and chain-of-thought orchestration.
Guardrails Output validation & safety guardrails for LLM responses — schema enforcement, content filtering, and policy checks.
LLM-products Collection of LLM-powered product features — RAG, summarization, and conversational UI patterns ready to ship.

📊 GitHub Stats

GitHub Stats GitHub Streak
Top Languages

🟡 Contribution Graph

Pacman Contribution Graph

🏆 Achievements

  • 🥇 Swiggy Builders Club — Selected (2026) Approved to build MCP Orchestrator on Swiggy's MCP platform. building live at mcp.swiggy.com/builders.

  • 🥈 AMD Slingshot 2026 — Finalist (Hyderabad) Built an AI solution for AI in Consumer Experience; selected as a finalist among teams nationwide.

  • 🤖 RAG Agentic AI System — designed and shipped a retrieval-augmented agentic pipeline with multi-tool orchestration.

  • 🧠 LLM Evaluation & Gateways — building evaluation harnesses and inference gateways for safe, observable, and production-grade LLM deployments.

Pinned Loading

  1. Guardrails Guardrails Public

    A healthcare AI project demonstrating guardrails for safe and responsible agent-based interactions using LangChain, LangGraph, and Groq.

    Jupyter Notebook 1

  2. Deep_Agent Deep_Agent Public

    production-ready workspace demonstrating agentic design patterns using the DeepAgents (LangGraph) harness, Groq Llama, and Tavily search.

    Jupyter Notebook