01 · Roasts
Speed-ran the entire dev lifecycle
5 commits in approximately 5 minutes. That's not a development session, that's a coffee spill on a keyboard. python-api-using was born and abandoned before most people finish reading a README.
Hardcoded secrets speedrun
Requiring manual API key insertion directly into source code is the 'Hello World' of security anti-patterns. There's no .gitignore, no .env, no vault — just vibes and hope that nobody looks.
The heatmap tells a story
51 weeks of pure void, then 3 commits on a single Sunday. Your GitHub contribution graph looks like the universe before the Big Bang — except less promising.
Quality score: a perfect zero
No tests, no CI, no license, no .gitignore. The only quality artifact is a README, and it's doing the heavy lifting of an entire engineering culture all by itself. It's not enough.
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% weight15F
- Consistency20% weight5F
- Quality20% weight0F
- Depth15% weight5F
- Breadth10% weight25F
- Community10% weight5F
03 · Stats
365-day commit heatmap
1 active days
Language distribution
- Python100%
04 · Numbers
Owned repos
non-fork
1
Commits
last 12 months
5
Followers
1
Joined GitHub
Apr 2026
05 · Top repos
06 · Timeline
- Apr 26, 2026Joined GitHub
- Apr 26, 2026Created python-api-using — 一个用python调用siliconflow上大模型api的程序,类似大模型客户端
- Apr 26, 2026Most recent push to python-api-using
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.