karpathy/jobs — explained in plain English
Analysis updated 2026-07-17 · repo last pushed 2026-03-16
Explore the interactive treemap to find fast-growing jobs that only require a high school diploma.
Compare occupations by median salary versus estimated AI exposure to spot high-pay, low-exposure roles.
Use the underlying JSON dataset of 342 BLS occupations for your own labor-market research or visualization.
Study the data pipeline as a template for scraping a government website and scoring text with an LLM.
| karpathy/jobs | op7418/guizang-social-card-skill | n8n-io/n8n-docs | |
|---|---|---|---|
| Stars | 1,834 | 1,763 | 1,635 |
| Language | HTML | HTML | HTML |
| Last pushed | 2026-03-16 | — | — |
| Maintenance | Maintained | — | — |
| Setup difficulty | easy | easy | moderate |
| Complexity | 2/5 | 2/5 | 2/5 |
| Audience | researcher | vibe coder | pm founder |
Figures from each repo's GitHub metadata at analysis time.
The visualization is a static site, no setup needed to explore it, regenerating the JSON requires running the scrape and LLM-scoring pipeline.
An interactive treemap that visualizes all 342 US job categories from government labor data, colored by growth, salary, education, or estimated AI exposure.
Mainly HTML. The stack also includes HTML, JavaScript, Python.
Maintained — commit in last 6 months (last push 2026-03-16).
No license information was mentioned in the explanation.
Setup difficulty is rated easy, with roughly 5min to a first successful run.
Mainly researcher.
This repo across BitVibe Labs
double-check against the repo, no cap.