3WI2026 Machine Learning Fundamentals

Anchit Thakur

Software Engineer · ML Practitioner · Builder

Bridging the gap between large-scale distributed systems and intelligent machine learning solutions.

Explore Portfolio

Professional Bio

Education

Indiana Wesleyan University

Master of Science — Artificial Intelligence, Data Analytics (In Progress)

Carnegie Mellon University

Master of Software Engineering — Scalable Systems (Dec 2022)

Jaypee Institute of Information Technology

Bachelor of Technology in Engineering (May 2021)

Current Role

Software Development Engineer II

Amazon — Tax Engine Artisans, Seattle

Leading development of the Tax Auditor North Star project, using LLM and ML techniques to automatically audit tax records and identify mis-charge patterns for the world's largest transactional tax service (millions of requests/minute).

Technical DNA

Java Python TypeScript AWS React Node.js LLMs ML Pipelines DynamoDB CI/CD

I'm a software engineer who thrives at the intersection of scalable systems and machine learning. Currently pursuing a Master of Science in AI & Data Analytics at Indiana Wesleyan University, I'm deepening my expertise in ML fundamentals while bringing years of production experience from Carnegie Mellon and Amazon.

My journey has taken me from building autograder platforms that scale across 27+ universities (SAIL 2.0 at CMU) to architecting tax calculation APIs handling millions of requests per minute at Amazon. Today, I'm leading projects that leverage LLMs and ML to automate complex audit workflows — proving that AI isn't just a buzzword but a production-grade engineering discipline.

Personal Value Proposition

I turn complex machine learning concepts into production-grade, scalable systems that deliver measurable business impact — combining deep software engineering foundations with a relentless drive to make AI accessible and practical.
01

Systems at Scale

Experience building and maintaining services that process millions of requests per minute. I understand that ML models are only as good as the infrastructure that serves them.

02

ML in Production

Currently applying LLM and ML techniques to real-world audit problems at Amazon scale. I don't just train models — I ship them into production pipelines that matter.

03

Making AI Accessible

From interactive timelines to developer tools, I believe in making complex AI concepts understandable. Contributed to Amazon's internal MCP server improving developer productivity across teams.

Portfolio Artifacts

Each artifact demonstrates a specific competency with documented objectives, process, tools, and value delivered.