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#978 — Top 18.1%

Lawrence-Blackbourne

Lawrence David Blackbourne

F

GitHub tourist

Overall

0.0

/ 100

01 · Roasts

The Invisible Man

1 follower, 0 following, 0 stars — your GitHub presence is so low-key it's technically a rumour. Even your mom hasn't starred the repo.

Burst Coder Syndrome

47 commits spread across ~15 active days in a full year. Your heatmap looks like someone sneezed on a calendar and called it a development cycle.

README? Never Heard of Her

Rendering-Project has no README, no CI, and a swapchain that panics. The GPU is not the only thing rendering nothing here.

Monolingual Monk

100% Rust, 1 repo, 1 domain. Admirable commitment to the bit, but breadth-wise you're basically a very niche fortune cookie.

PR Phantom

11 PRs this year but 0 issues and 1 follower — you're contributing to other people's code while your own repo sits in the dark with no documentation. Altruism, but backwards.

Built using

Zoral

Shadows one worker for a week, then takes over their job with zero extra setup. Behaves exactly like the original.

zoral.ai

02 · Category breakdown

  • Impact
    25% weight
    25F
  • Consistency
    20% weight
    20F
  • Quality
    20% weight
    45D
  • Depth
    15% weight
    35F
  • Breadth
    10% weight
    25F
  • Community
    10% weight
    25F

03 · Stats

365-day commit heatmap

21 active days

Less
More

Language distribution

1 langs
  • Rust100%

04 · Numbers

Owned repos

non-fork

1

Commits

last 12 months

47

Followers

1

Joined GitHub

Mar 2023

05 · Top repos

06 · Timeline

  1. Mar 15, 2023
    Joined GitHub
  2. Dec 31, 2025
    Created Rendering-Project
  3. May 23, 2026
    Most recent push to Rendering-Project

07 · Compare

github.com/
Lawrence-Blackbourne · 6dmedian coder

08 · Rubric

How this score was produced

Overall = Σ (category × weight) + gentle top-end curve

CategoryWeightScoreContrib.
Raw total29.5
Top-end curve-0.3
Final overall29.2

Tier thresholds

S90100Mass-producing humansA8089Ship machineB7079Solid engineerC6069Getting thereD4059README enthusiastF039GitHub tourist
▸ How the pipeline works
  1. 01Scrape.Pull every non-fork repo pushed in the last 90 days, plus your contribution calendar, followers, and language byte counts — straight from GitHub's REST & GraphQL APIs.
  2. 02Triage.A small model reads every repo's file tree + README and picks the 20 files per repo that actually reveal how you code.
  3. 03Grade each repo. All repos run in parallel through a fast scoring model that reads the picked files and rates each one independently on Impact, Quality, and Depth — with evidence citations.
  4. 04Aggregate. A larger reasoning model combines the per-repo scores with server-computed stats (heatmap, commit cadence, language entropy, follower count) to produce the 6-dimension profile score + roasts.
  5. 05Correct.Deterministic server-side checks enforce anchor-scale floors (e.g. a profile with 2,000+ public commits can't score 30 Consistency) and recompute the final verdict.

~90 seconds per profile, ~$0.25 in compute. Total of ~240 files read across your top-12 repos. One rating per GitHub account per day.

▸ Data sources & caveats
  • Heatmap & commit totals: GitHub GraphQL contributionsCollection — covers the last 365 days, includes private repos when the user has opted in (default).
  • Language %: byte totals across the top 30 owned non-fork repos.
  • Curve: a small upward nudge centered on raw score ≈ 70, capping at 100. Prevents specialists from being unfairly penalised for narrow breadth.
  • Anchor corrections: when server-measured signals (e.g. privateWorkLikely, multiRepoVolume, follower count) mandate a minimum category score, the aggregation step enforces it. These are signal-conditional, not identity-based floors.
Lawrence-Blackbourne · 29.2/100 — Rate My GitHub