01 · Roasts
Commit Comet
36 commits in a year, concentrated in two short bursts — the heatmap looks like someone sneezed on a calendar. 42 out of 52 weeks are completely blank.
License to Ignore
Two repos, zero licenses, zero CI pipelines, zero tests. Ferdinand has mastered the art of shipping code that technically exists but legally can't be used by anyone.
Monolingual Monk
100% Python across both repos, both academic scripts, zero language diversity. The breadth score has nowhere to go but down from here.
Ghost Town Profile
2 followers, 0 PRs, 0 issues, 0 stars — the only person who knows this account exists is Ferdinand, and some days that seems questionable given the heatmap.
Sprint-and-Disappear
Seminararbeit was last touched January 2024 — 18 months ago. TeX Transformer is only 2 weeks old. The pattern is clear: build for a deadline, abandon, repeat.
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
- Impact25% weight25F
- Consistency20% weight20F
- Quality20% weight43D
- Depth15% weight50D
- Breadth10% weight25F
- Community10% weight25F
03 · Stats
365-day commit heatmap
9 active days
Language distribution
- Python100%
04 · Numbers
Owned repos
non-fork
2
Commits
last 12 months
36
Followers
2
Joined GitHub
May 2022
05 · Top repos
ferdibck /
Seminararbeit
Seminar work on lattice-based random walk and conductivity simulation using Python; functional OOP implementation with visualization but lacks tests, CI, type hints, and professional documentation.
ferdibck /
TeX-to-English-Transformer
Young experimental project (2 weeks old) training transformer seq-to-seq models to verbalize LaTeX math expressions. Has README with sample data and model metrics, but lacks source code visibility, tests, CI, license, or type annotations. ~25 commits show focused development on model training.
06 · Timeline
- May 28, 2022Joined GitHub
- Jul 22, 2023Created Seminararbeit
- Aug 6, 2025Created TeX-to-English-Transformer
- Aug 19, 2025Most recent push to TeX-to-English-Transformer
07 · Compare
08 · Rubric
How this score was produced
Overall = Σ (category × weight) + gentle top-end curve
Tier thresholds
▸ How the pipeline works
- 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.
- 02Triage.A small model reads every repo's file tree + README and picks the 20 files per repo that actually reveal how you code.
- 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.
- 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.
- 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.