top of page
Image by Antoine Rault

I'M
Anish Panicker

DATA SCIENTIST/ ML ENGINEER

Hi, I’m Anish Panicker! I’m a Master’s student studying Data Science.

I’m highly passionate about building AI agents that optimize workflows by automating repetitive tasks, improving efficiency, and enhancing decision-making processes. I aim to leverage machine learning, natural language processing, and data-driven insights to create intelligent systems that streamline operations across various domains.

loader,gif
PORTFOLIO
Image by Antoine Rault

PROJECTS

 Experience

Feb 2025 - Present

New Jersey Courts

Data Science Intern

Currently designing and developing an advanced Guardian Fraud Detection System to protect vulnerable individuals from financial exploitation by caregivers this addresses an estimated $50 million in annual losses. This system is built by leveraging cutting-edge technologies, like LayoutLM for document understanding, Retrieval-Augmented Generation (RAG) for contextual analysis, MLOps for streamlined model deployment, and AWS for scalable cloud infrastructure. Simultaneously, building a Guardianship Application Platform using ReactJS, JavaScript, Docker, and MongoDB. This fraud detection pipeline enhances accessibility and efficiency for guardianship processes through a modern, containerized web application

Sept 2022- Jun 2023

Pittsburgh Technologies 

Machine Learning Developer
Developed and integrated advanced AML algorithms into the Nastel Xray platform using Python, TensorFlow, and machine learning techniques. I conducted in-depth research to enhance credit card fraud detection—boosting efficiency by 20% and reducing decision-making time by 50% through rule-based software. Additionally, I optimized algorithm runtime by 85% and built robust data pipelines and processing systems, while implementing advanced data visualization methods that increased customer satisfaction by 40%.I

Jul 2022- Sep 2022

TechNVision Ventures. 

Data Scientist
Developed and deployed an innovative ML/AI solution that automates data extraction from emails using NLP, NER, OCR, OpenCV, and advanced language processing technologies. This system transformed unstructured email content into organized tables, cutting data processing time by 30% and boosting overall productivity by 20%. Additionally, I played a key role in front-end development for the TAL (Giving) website, utilizing ReactJS, JavaScript, and MongoDB to design and build a seamless user experience.

April 2021- Oct 2021

LightSpeed AI labs

Research Intern

Conducted comprehensive study and rigorous testing of optical boards and FPGA systems while developing innovative AI algorithms for prototype opto-electronic CPUs. This role involved developing and running machine learning and AI algorithms to perform various real-world tasks, such as object detection, stock price prediction, natural language processing, and autonomous system decision-making, to optimize and validate the performance of cutting-edge hardware systems. 

October 2020- Feb 2021

Four M Technologies

PLC Programming Intern

Studied PLC programming and applied it across various equipment, streamlining operations and enhancing system automation.

EDUCATION

NEW JERSEY INSTITUTE OF TECHNOLOGY

Master’s in Data Science 

Sept 2023 - May 2025

GPA : 3.61

SSN COLLEGE OF ENGINEERING

B.E. Electronics and Communications Engineering

Jul 2019 - May 2023

GPA : 3.41

CERTIFICATIONS

AWS-Certified-AI-Practitioner_badge_150x150.bb2bb1cae960f5ee8b93d3e2ccc9dd64bff29180.webp

AWS AI Practitioner

download.webp

Bloomberg Market Concepts

download_(1).webp

Google Data Analytics Specialization- 8 courses

70551872.webp

IBM Developer Skills Network

download (2).png

Python Course

udemy_logo.jpeg

C++ Course

udemy_logo.jpeg

Blockchain, Crypto,Smart Contracts

CERTIFICATION
EXPERIENCE
EDUCATION
Image by Antoine Rault
CONTACT
CONTACT ME

I am currently seeking new opportunities and would love to connect with you.

panicker.anish27@gmail.com

Tel: +1(201)726-0589

  • GitHub
  • White LinkedIn Icon

© 2025 by Anish Panicker. 

bottom of page