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deepanshu9012/README.md

Hi there, I'm Deepanshu ๐Ÿ‘‹

๐Ÿค– AI/ML Engineer | ๐Ÿง  Generative AI & RAG Architect

I am a dedicated AI Engineer specializing in autonomous Agentic workflows, complex RAG architectures, and multimodal ML systems. I focus on engineering zero-hallucination inference pipelines and deploying high-performance machine learning backends for production.

๐ŸŽ“ Currently pursuing my B.Tech in Computer Science Engineering (Class of 2026).

๐Ÿ› ๏ธ Core Tech Stack

  • ๐Ÿง  AI & Machine Learning: PyTorch, LangChain, TensorFlow, Llama 3, Hugging Face, Transformers, OpenCV
  • โš™๏ธ Backend & Vector Databases: Python, FastAPI, Qdrant, FAISS, SQL, REST APIs
  • ๐Ÿณ Infrastructure & DevOps: Docker, Linux, Git, Microsoft Azure

๐Ÿš€ Featured Projects

  • ๐ŸŽฏ Nexus AI - Agentic Talent Intelligence ATS

    • Architected an autonomous AI Agent leveraging advanced RAG architectures to semantically evaluate resumes against job descriptions with zero hallucinations.
    • Built a robust, Docker-containerized backend pipeline using FastAPI and Pydantic to statefully manage document data within a Qdrant vector database.
  • ๐Ÿข Enterprise HR Policy Assistant

    • Engineered a completely local RAG pipeline using Llama 3, LangChain, and FAISS to deliver hallucination-free answers.
    • Utilized Server-Sent Events (SSE) via FastAPI to stream real-time LLM inference to client applications, decoupling heavy chunking processes to prevent local OOM crashes.
  • ๐ŸŽญ TriSense - Multimodal Emotion Recognition

    • Developed an advanced multimodal pipeline implementing Decision-Level Late Fusion to resolve conflicting signals across video, audio, and text streams.
    • Deployed the heavy ML inference engine via a Flask RESTful API, optimizing memory overhead with PyTorch Mixed Precision (Float16).

๐Ÿ“ซ Connect with me

Pinned Loading

  1. nexus-ai-ats nexus-ai-ats Public

    Enterprise AI Applicant Tracking System (ATS) powered by RAG. Built with Next.js, FastAPI, Qdrant, and Llama 3.1 for zero-hallucination resume parsing and semantic search.

    TypeScript 1

  2. enterprise-hr-assistant enterprise-hr-assistant Public

    Enterprise HR Policy Assistant (RAG Pipeline) โ€” An intelligent, local AI assistant built with FastAPI, LangChain, and React to navigate corporate policy documents with real-time streaming and sourcโ€ฆ

    Python 1

  3. team-task-manager team-task-manager Public

    A full-stack collaborative task management platform featuring Role-Based Access Control (RBAC). Built with Next.js, MongoDB, and Tailwind CSS.

    TypeScript

  4. TRISENSE-MMERaRS TRISENSE-MMERaRS Public

    TriSense is an advanced Multimodal Emotion Recognition System leveraging Decision-Level Late Fusion of Vision (FER), Speech (SER), and Text (TER) models to drive context-aware music recommendations.

    Jupyter Notebook

  5. Image-Caption-Generator Image-Caption-Generator Public

    In this Project we have developed Image Caption Generator

    Jupyter Notebook

  6. Text_to_Image_Generator Text_to_Image_Generator Public

    Text to Image Generator using GenAi

    Jupyter Notebook