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Hey, I'm Shubham

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Full Stack Developer

Building innovative AI solutions that enhance performance and drive results.

Shubham Sarkar

My Professional Side

I'm Shubham Sarkar, a detail-oriented Machine Learning Engineer with expertise in deep learning, NLP, and computer vision. I thrive on collaborating with cross-functional teams to develop scalable AI applications that push the boundaries of technology.

Email
shubhamsarkarthe1@gmail.com
Location
36/F Sitalatala Lane, Kolkata, 700011
Education
Bachelor of Technology

Education

Bachelor of Technology

Jadavpur University, Kolkata
Nov 2023 – Dec 2027CGPA: 7.5

Higher Secondary

Hariyana Vidya Mandir, Kolkata
Apr 2020 – Apr 2022Percentage: 90%

Skills

Skills

Machine Learning
Deep Learning
Natural Language Processing (NLP)
Computer Vision
LLM Fine Tuning
RAG
TensorFlow
PyTorch
scikit-learn
Hugging Face
Pandas
NumPy
Langchain
Flask
FastAPI
Amazon Web Services (AWS)
Docker
MLflow
DVC
Streamlit
CI/CD
PostgreSQL
SQL
ETL Pipelines
Linux
Vector Databases (Chroma)
Python
C
JavaScript
HTML
CSS
Data Structures and Algorithms

Stuff I Built

TailorCV.ai

TailorCV.aiCheck out ↗

Python, FastAPI, LLM, AI agents, Amazon Web Services

  • Developed an AI web application that optimizes resumes to job descriptions using LLMs and NLP pipelines, improving resume relevance by up to 80%.
  • Designed a Python and FastAPI backend with HTML, CSS, and JavaScript for the frontend, dockerized the application, and deployed it on AWS ECS.
  • Achieved over 50 users within the first week of launch, demonstrating strong early adoption and real-world impact.
PythonFastAPILLMAI agentsAmazon Web Services
YouTube Sentiment Analysis

YouTube Sentiment AnalysisCheck out ↗

TensorFlow, NLP, AWS EC2, Scikit-learn

  • Created an end-to-end YouTube sentiment analysis pipeline processing over 10,000 user comments, enhancing sentiment classification performance through NLP preprocessing techniques.
  • Tracked multiple model experiments using MLflow and DVC, enabling reproducible training and systematic comparison of models built with scikit-learn and NLP libraries.
  • Deployed the pipeline on AWS using Docker and exposed predictions via Flask REST APIs, facilitating scalable and reproducible inference.
TensorFlowNLPAWS EC2Scikit-learn
Smart Product Pricing

Smart Product PricingCheck out ↗

Keras, Hugging Face Transformers, ResNet50, OpenCV

  • Developed an NLP and CV pipeline to analyze 150,000 image and text data using transformer-based text encoders and CNN-based image embeddings, integrating them through a fusion neural network for price prediction.
  • Implemented data preprocessing techniques, including text cleaning, tokenization, and streaming image feature extraction with ResNet and CLIP representations to manage large datasets.
  • Built and fine-tuned models using TensorFlow and scikit-learn, achieving a rank of 142 out of 50,000 participants.
KerasHugging Face TransformersResNet50OpenCV
RAG System

RAG SystemCheck out ↗

  • Made a production-ready RAG pipeline integrating semantic vector retrieval with LLM generation to produce context-grounded responses.
  • Engineered multiple chunking strategies and a scalable ingestion , retrieval , generation flow for efficient semantic search and generation.
  • Implemented history-aware and multimodal augmentations, and evaluated retrieval outputs to measure relevance and quality.

Work Experience

Machine Learning Engineer

Alignerr · Remote

Enhanced LLM evaluation precision by 15% through a comprehensive review of a rubric-based scoring framework across six reasoning categories. Analyzed over 50 audio files for integration into ASR pipelines. Evaluated AI agent responses, identifying failure points such as inference memory and self-coherence, resulting in a 20% improvement in model accuracy.

Jan 2026 – Present

Deep Learning Research Assistant

Jadavpur University CMATER Lab · Kolkata, India

Designed and implemented a self-attention mechanism (scaled dot-product) within a pre-trained VGG16, significantly enhancing feature extraction for lung cancer detection from CT scans. Developed a hybrid deep learning architecture achieving 99.54% peak accuracy with only 76k trainable parameters and 0.0256 GFLOPs, facilitating edge-device deployment. Engineered feature fusion through concatenation and element-wise multiplication of original and attention-modulated maps for refined, context-aware representations.

May 2025 – September 2025

Achievements

Core Member

Entrepreneurship Cell, Jadavpur University

Organized national-level events such as E-Summit 2025 and Hult Prize 2025, attracting over 5,000 registrations and 1,000+ attendees. Contributed to the establishment of an Incubation Center at Jadavpur University under the Institution’s Innovation Council (IIC).

May 2024 – Present

Coordinator

Jadavpur University Finance Club

Led planning and execution of Finspire 2025, a national-level finance event with 1,000+ registrations and 500+ on-ground attendees, strengthening the club’s national presence. Delivered high-impact trading and investment courses to 100+ students, improving engagement in financial markets

Say Hi, Don't Be Shy

Let's discuss your next project or just say hello!

Email
shubhamsarkarthe1@gmail.com
Phone
+91 8240044652
Location
36/F Sitalatala Lane, Kolkata, 700011
Connect With Me