About Me
AI/ML engineering student with hands-on experience in fine-tuning LLMs, building multi-agent reasoning systems, and deploying scalable data pipelines. Skilled in Python, PyTorch, TensorFlow, and LangGraph.
Experience
Summer Internship
Fine-tuned LLMs for domain-specific tasks, improving contextual accuracy by 15%., Deployed Crawl4AI pipelines, reducing preprocessing time by 30%., Designed multi-node reasoning flows with LangGraph, enabling structured logic chains for complex queries.
Summer Intern
Developed domain-adaptive LLM solutions through full-cycle experimentation with advanced tooling and data workflows.
Fine-tuned LLMs for domain-specific tasks, improving contextual accuracy by 15%.
Deployed Crawl4AI pipelines, reducing preprocessing time by 30%.
Designed multi-node reasoning flows with LangGraph, enabling structured logic chains for complex queries.
PROJECTS
Projects in Engineering
Dynamic Spatiotemporal Crime Analysis Built predictive models on Toronto crime dataset using DBSCAN clustering and LSTM/TCN architectures, achieving accurate hotspot forecasting for public safety planning.Lecture Notes Generator Automated structured note creation from recordings using Transformers, Hugging Face, CLIP, and Groq, improving study efficiency by 40% in pilot tests.Agentic AI Web Research Agent Developed autonomous multi‑agent system with LangGraph and NLP, enabling scalable web research and summarization with measurable accuracy gains.PEStivity: Created an arcade game site using react and tailwind along with HTML and JS.Blackjack: Developed a multiplayer Blackjack game using Python Socket Programming.Adaptive project management using Retrieval Augmented Generation.