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gee-46/README.md

Gautam N Chipkar

Applied AI Engineer | RAG Systems | Computer Vision | ML Systems


Profile

AI & Data Science Engineering student at SGBIT, building end-to-end AI systems with a focus on:

  • Retrieval-Augmented Generation (RAG)
  • Computer Vision
  • Production-oriented ML pipelines

Currently developing a modular RAG system from scratch with:

  • FAISS-based semantic retrieval
  • Local + pluggable LLM backend (Ollama / OpenAI)
  • Context-grounded answer generation

Focus: turning LLMs into reliable, knowledge-aware systems instead of generic text generators.

Currently Working On

  • Improving retrieval quality using document chunking
  • Optimizing context construction for LLM responses
  • Preparing the system for API deployment (FastAPI)

Experience

Python Developer Intern — Infosys Springboard

  • Developed structured Python solutions for real-world problem statements
  • Focused on code quality, debugging, and modular design

Machine Learning Intern — Cognifyz Technologies

  • Built supervised learning models on real datasets
  • Implemented preprocessing pipelines and evaluated model performance

Selected Work

RAG System (In Progress)

  • Designed a modular Retrieval-Augmented Generation pipeline from scratch
  • Implemented semantic embeddings + FAISS vector search
  • Integrated local LLM (Ollama) with pluggable backend architecture
  • Built full pipeline: query → retrieval → context → grounded answer
  • Built without high-level frameworks (e.g., LangChain) to understand system internals

Key Focus: reducing hallucination using external knowledge grounding


Disaster Visual Question Answering (VQA)

  • Built a multimodal system combining image understanding and NLP
  • Extracts insights from disaster-related imagery
  • Explored real-world applications of image-text reasoning

Gesture-Based Volume Control

  • Real-time computer vision system using OpenCV and MediaPipe
  • Hand gesture tracking mapped to system-level audio control

Tech Stack

Languages Python, SQL

AI / ML SentenceTransformers, scikit-learn, TensorFlow, PyTorch

Systems & Tools FAISS, FastAPI, OpenCV, Flask

Data Pandas, NumPy, Matplotlib


Achievements & Recognition

  • 4th Place — INNOVATEx 4.0 (International Tech Fest, Presidency University, Bangalore) 24-hour hackathon focused on AI-based solutions

  • Active Hackathon Participant — Hack2Skill Platform

    • Participated in multiple AI-focused hackathons
    • Proposed and developed solutions for real-world problem statements
    • Worked in fast-paced, team-based environments
  • Solution Challenge Badge — Build with AI (Hack2Skill, India)

  • IBM Skill Badges in AI & Data Science


Contribution Graph


🐍 My Contribution Activity (Live)


📊 GitHub Insights & Activity

🌐 Connect with Me


⚡ Fun Fact

I’m the go-to person for debugging… and I actually enjoy it 😄

Pinned Loading

  1. SlumSafe-AI SlumSafe-AI Public

    Built for InnovateX 4.0, SlumSafe AI secured 4th place out of 100 teams at the International Tech Fest, standing among the top 10 finalists. A 24-hour sprint that turned ideas into impact and effor…

    Python 2

  2. -Disaster-VQA-Response-System -Disaster-VQA-Response-System Public

    "An adaptable, AI-powered Disaster VQA system that performs real-time visual assessment of disaster imagery. By defaulting to the highly efficient BLIP model for rapid inference—while maintaining f…

    CSS 8

  3. gesture-volume-control gesture-volume-control Public

    Real-time gesture-based microphone volume control using MediaPipe, OpenCV & PyCAW — enabling touchless human-computer interaction.

    Python 8

  4. mannmitra-2.0 mannmitra-2.0 Public

    TypeScript 8 1