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urav06/README.md

Hey 👋

I'm Urav. I build things with code.


📌 Featured Commit

This section auto-updates daily. It features one of my recent commits, or something interesting from my network, or a random gem from the wild. The commit gets roasted by an opinionated AI and rendered as a strange attractor.

Last updated: 2025-12-25

Entropy

Commit: srbhr/Resume-Matcher by @srbhr · 8780069

Message: "Merge pull request #558 from srbhr/dependabot/pip/apps/backend/urllib3-2.6.0"


Review: Dependabot delivering another urllib3 update is less innovation and more like scheduled preventative maintenance. It's utterly boring, but essential work that saves future headaches—a quiet testament to proper dev practices, assuming the tests are actually robust enough to catch breaking changes.

Chaos: 5% · Mood: #2196F3


What is this?

The Pipeline:

  1. A GitHub Action runs daily and picks a commit (my own → network → starred repos → fallback)
  2. The commit diff is fed to Gemini, which produces a witty critique, a chaos score (0-100), and a mood color
  3. A Lorenz attractor is rendered using these parameters:
    • Chaos score → modulates ρ (rho), affecting how chaotic the butterfly looks
    • Mood color → tints the gradient from black → color → white
    • Commit hash → seeds the initial conditions, so every commit is unique

The Math:

The Lorenz system is a set of differential equations that exhibit deterministic chaos. Small changes in initial conditions produce wildly different trajectories. It's the "butterfly effect", fitting for visualizing commits.

Links:

Browse the museum → · See the code →

Pinned Loading

  1. dialectic dialectic Public

    A Rebuttal Engine for Computational Argumentation in Claude Code CLI

    Python 5

  2. research research Public

    The Meta-Learning Gap: Combining Hydra & Quant for Large-Scale Time Series Classification

    Python

  3. career-gradient-descent/content-optimizer career-gradient-descent/content-optimizer Public

    Content engine to minimize the loss function of job applications.

    Jinja 1

  4. career-gradient-descent/www career-gradient-descent/www Public

    The public-facing interface.

  5. career-gradient-descent career-gradient-descent Public

    Personal Branding

    TypeScript 1

  6. chess chess Public

    şahmat

    Python 3