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πŸ‘‹ Hi, I'm Oshin Dutta! πŸ€–βœ¨

Applied AI Researcher | Applied AI Engineer | Ph.D., IIT Delhi

I specialize in Agentic Frameworks, LLM Optimization, and turning wild AI ideas into scalable production reality. If it hallucinates, I tame it. If it's too big, I compress it! πŸ—œοΈπŸ§ 

🌐 Website β€’ πŸ“« Email β€’ πŸ’Ό LinkedIn β€’ πŸŽ“ Google Scholar β€’ πŸ“„ Resume/CV


πŸš€ What I'm building...

  • AI Consultant / Applied AI Engineer @ KPMG: Architecting and deploying Enterprise-Scale Agentic Solutions. I recently engineered to production a globally adopted skill-based agentic platform using FastAPI, React, and Azure OpenAI.
  • Vibe-Coding Full-Stack: Bridging the gap between cutting-edge AI research and slick, scalable, containerised applications.
  • Trusted AI Governance: Applied entropy-based metrics and Bayesian estimation for pre- and post-generation hallucination detection
  • Explored next-generation agent generation paradigms through two PoCs: an "Agentic Factory" for dynamic synthesis and deployment of task-specific autonomous agents from natural language instructions, and a skill-based agentic orchestration framework for automated, multi-step enterprise workflows.

🌟 Featured Open Source

To get a taste of how I architect AI systems, check out my open-source work:

  • πŸ—οΈ EvalAgent – An open-source architecture demo of a full-stack agentic evaluation platform. Built with a FastAPI backend, async SQLAlchemy, redis, celery , Azure OpenAI integration, and a React frontend.
  • 🧠 Efficient AI & LLM Compression – During my Ph.D., I developed VTrans (10Γ— speed-up for LLM fine-tuning) and its upgraded version, TVA-prune (60% GPU inference speed-up for LLaMA/Mistral).
  • πŸƒ Action Recognition Compression – Designed algorithm achieving over 70x compression and ~100x Raspberry Pi speedup vs. full LSTMs. Code Repo

🧰 Tech Stack & Superpowers

  • AI/ML Jedi Skills: Multi-Agent Systems, Structured Tool Calling, LLM Compression & Quantization (LoRA, PEFT), Hardware-Aware NAS.
  • Languages & Frameworks: Python, PyTorch, LangChain, FastAPI, React.
  • MLOps & Deployment: Docker, Azure (App Service, OpenAI, Blob Storage), CI/CD pipelines, async architectures.
  • Research Chops: Published at top-tier venues including ICML and WACV.

⚑ Fun Facts

  • I can accelerate LLM fine-tuning by 10x, but I still can't speed up my morning coffee brewing process. β˜•
  • From coding precise lunar landings (IISc Internship) to deploying enterprise multi-agent systems, I love making complex architectures land smoothly! πŸŒ•πŸš€

πŸ“« Let's Collaborate!

Looking for an Senior AI Engineer or an AI Solution Architect or an Applied Researcher who can speak both "deep learning math" and "production architecture"? Let's talk!

Twitter β€’ GitHub

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