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tobinsia123/README.md

Tobin Sia

Computer Science @ UC Irvine
Security • Systems • Applied AI


About

I build systems that are meant to run, not just demo.

Most of my experiences involve identity infrastructure, distributed systems, and applied AI, from securing authentication flows to designing pipelines that handle real data at scale.

Currently:

  • Building Anirgi: a distributed network of on-demand power bank stations
  • Working on authentication systems (OAuth2, JWT, RBAC, secure flows)
  • Running bioinformatics pipelines across large genomic datasets
  • Exploring AI systems with constraints (structured outputs, validation, execution layers)

Stack


Selected Work

  • Anirgi
    Distributed infrastructure for power access. QR-based interaction, real-time machine communication, and backend systems handling payments + device orchestration.

  • AI Systems / Agents
    Designed structured LLM pipelines with validation layers, separating reasoning from execution to ensure deterministic outcomes.

  • Bioinformatics Pipelines
    Built scalable workflows for genomic analysis using Python, R, and HPC clusters. Focus on reproducibility, parallelization, and data integrity.


Activity


Stats


Contact


build things that solve real problems

Pinned Loading

  1. TradeStreet TradeStreet Public

    TypeScript 1 1

  2. chAIn chAIn Public

    JavaScript

  3. Matchaverse Matchaverse Public

    CSS 3

  4. carbonfirst/CarbonCast carbonfirst/CarbonCast Public

    A system to predict hourly carbon intensity in the electrical grids using machine learning. CarbonCast provides average carbon intensity forecasts for up to 96 hours.

    Python 45 23

  5. MarkRyanGarcia/IrvineHacks26 MarkRyanGarcia/IrvineHacks26 Public

    TypeScript 1

  6. onflow/May-The-Flow-Be-With-You onflow/May-The-Flow-Be-With-You Public

    May The Flow Be With You - A Vibe Coding Journey

    Cadence 9 31