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tnt07-t/README.md

Helloo I'm Tran² :)

CS @ Cornell Engineering, minor in Business.

I build full-stack and backend systems that actually ship!

Apps with 7k+ downloads and research that matters.

Currently: 💻 building software @ AppDev & SupplyBistro, 🔬 researching graph routing @ uTECH, exploring ML for keyboard boundary adaptation, and craving pho.. 🍜


🛠 Tech Stack

Tools I work with, and more!

Languages Python JavaScript TypeScript Java Go SQL

Backend & Infra React Node.js AWS Docker PostgreSQL FastAPI Flask GraphQL Firebase GCP


🚀 What I'm Up To

  • 💻 Backend Engineer @ Cornell AppDev — serving 15,000+ users across Python & Go services
  • 💼 Full-stack Engineer Intern @ SupplyBistro — dev & QA testing at a fast-moving B2B SaaS startup serving SMBs
  • 🔬 Researcher @ uTECH Lab — Building the backend for Pareto-ptimal graph routing for commuter pollution exposure
  • 📚 TA for CS 1998 @ Cornell — teaching APIs, databases, and DevOps to 100+ students

📫 Reach Me

LinkedIn Email Coffee Chat

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  1. cuappdev/uplift-backend cuappdev/uplift-backend Public

    An open-sourced backend for Uplift, a fitness application for Cornell students.

    Python 4 2

  2. cuappdev/chimes-backend cuappdev/chimes-backend Public

    Go

  3. luminary-backend luminary-backend Public

    Backend for study app built using Python, Flask, and SQLAlchemy

    Python 1

  4. Boroughs Boroughs Public

    Forked from aayanhussainw07/Boroughs

    A full-stack web application that helps users find their ideal NYC neighborhood by combining ML-based price predictions with lifestyle compatibility scoring.

    Python