I’m an AI ML Engineer focused on building production-grade Generative AI systems — from LLM-powered chatbots to retrieval-augmented and agentic workflows — backed by strong software engineering fundamentals.
Currently, I contribute to the IndiGo AI Chatbot, where I design and deploy LLM-driven conversational systems using Python, FastAPI, Azure OpenAI, Redis, and RAG architectures to support real-time, high-scale customer interactions.
💡 My work sits at the intersection of AI system design and backend engineering — ensuring AI solutions are accurate, scalable, observable, and reliable.
-
🎓 Education
B.Tech — Computer Science & Engineering - Specialization: Artificial Intelligence & Machine Learning -
🌐 Portfolio & Work
-
🧠 Current Focus
- Designing and optimizing LLM-based applications
- Building RAG pipelines with vector search and document intelligence
- Developing agentic AI systems using LangChain, LangGraph, and MCP Server
- Productionizing AI workflows with FastAPI, Redis, and Azure
-
📬 Connect with Me
LLMs • RAG • Agentic AI • LangChain • LangGraph • Prompt Engineering • NLP • Embeddings • Vector Search
🚀 Developing and scaling IndiGo’s AI-powered chatbot platform
- LLM orchestration using Azure OpenAI
- High-accuracy RAG pipelines with Azure Cognitive Search
- Prompt engineering and intent routing for real-world queries
- Backend services with FastAPI and Redis caching
- Secure API integrations and cloud deployment on Microsoft Azure
Focused on accuracy, latency, scalability, and production reliability.
- 🚀 Enhancing the IndiGo AI Chatbot backend with scalable and robust architecture
- 🧠 Exploring RAG, LangChain, and LLMOps for context-aware chat automation
- ☁️ Strengthening skills in Azure, Docker, and microservice deployments
- 💻 Building full-stack projects and contributing to open-source
✨ "Code. Learn. Build. Repeat."
🌟 Always exploring how AI and software engineering can create real-world impact.