AI Engineer with 5+ years of experience, specializing in Generative AI, Agentic Systems, and building scalable AI solutions.
I am an AI Engineer with 5 years of experience, skilled in deep research, building end-to-end ML pipelines, and scalable AI solutions.
- Current Focus: Developing a multimodal No-Code Agentic AI platform at IBM Labs, utilizing LLMs, VITs, and Reinforcement Learning. This work currently reduces incident resolution time for IaaS teams from 24 hours to under 1 hour through intelligent triage and self-healing agents.
- Expertise: Agentic AI frameworks, Reinforcement Learning for model alignment (RLHF, PPO), Multimodal systems, and RAG pipelines.
- Experience: Software Developer II at Johnson Controls, where I co-developed a patented NLP+CV pipeline for automatic incident detection. I also received the "Pat on the Back" award 4 times for exceptional engineering contributions.
My research interests primarily revolve around developing autonomous, aligned, and efficient AI systems.
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Agentic AI & Reinforcement Learning (RL):
- Leading research on autonomous agent behavior targeting critical automation use cases across various verticals.
- Extensive work in developing Agentic flows and using Reinforcement Learning for model alignment.
- Researched LLM-based agents optimized using RLHF, PPO, and epsilon-greedy, focusing on capabilities for self-reflection and deep tool reasoning to build scalable autonomous AI systems.
- Developed and deployed a modular Multimodal Agentic AI framework that improved flexibility and reduced response latency by over 80% in incident resolution workflows.
- Relevant Coursework: Deep Reinforcement Learning.
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Generative Models & Recommender Systems (RecSys):
- Currently developing a domain-specific foundation model for E-Commerce personalization using a BERT-based architecture and Contrastive Learning.
- Exploring novel pretext tasks and custom loss functions to improve semantic representation and pretraining efficiency.
- Fine-tuned DistillBERT on the AmazonReviews23 dataset for multi-label classification, achieving a hit rate of 0.7 using TF-IDF and confidence thresholding.
- Built a movie recommendation app (Moviemate) using collaborative filtering algorithms.
- Research Interests: Recommender Systems, Agentic Patterns, and Generative Models.
- Relevant Coursework: Recommendation System, Self-Supervised Learning.
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Alignment & RAG:
- Contributed to the open-source InstructLab framework, fine-tuning LLMs for education by aligning them to domain-specific datasets.
- Boosted chatbot response accuracy to 0.8 and relevance score to 0.9 by developing a Retrieval-Augmented Generation (RAG) pipeline.
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Reinforcement Unlearning:
- Exploring different existing unlearning algorithms like sample space shrinking, poisining etc to understand how unlearning is done also exploring philosophically how unlearning can be achieved.
- Exploring novel ways to do unlearning using Measure Theory, Stochastic Calculus, Martingales etc.
- Master of Technology in Artificial Intelligence
- International Institute of Information Technology, Bangalore (IIIT-B)
- Jul 2023 - Jul 2025
- Bachelor of Technology in Computer Science
- Netaji Subhash Engineering College, Kolkata
- Aug 2014 - Jun 2018
I am also a contributor and a co-author in the patent titled "Building system with automatic incident identification": [Link to Patent]
| Category | Skills |
|---|---|
| Languages | Python, C, C++, Java, JavaScript, Kotlin |
| Frameworks & Libs | PyTorch, Scikit-learn, TensorFlow, Pandas, NumPy, FastAPI, Flask, ReactJS, Next.js, OpenCV |
| ML/AI Concepts | LLMs, ViTs, Reinforcement Learning, RAG, NLP, Computer Vision, Transformers, Contrastive Learning |
| DevOps & Cloud | Docker, Kubernetes, Jenkins, Git, GitHub, CI/CD, GCP, IBM Cloud |
| Databases & Tools | MySQL, PostgreSQL, MongoDB, Elasticsearch, REST APIs, Microservices, OOP |
- I am ambidextrous.
- I know how to play 4 different musical instruments (Guitar, Ukulele, Harmonica, Mandolin).
- I received the "Pat on the Back" award 4 times at Johnson Controls for exceptional engineering contributions.
- Email: [email protected]