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santifer/career-ops

AI-powered job search system built on Claude Code. 14 skill modes, Go dashboard, PDF generation, batch processing.

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What it does

Career-Ops is an AI-powered job search system that automates the most tedious parts of finding a new role — scanning job boards, scoring opportunities on a structured scale, and generating customized resumes tailored to each listing. Rather than replacing human judgment, it acts as a tireless filter that helps you focus only on the handful of jobs actually worth pursuing out of hundreds.

Why it matters

With nearly 56,000 stars, this project signals strong market demand for AI tools that tackle high-stakes personal workflows beyond coding — job searching being one of the most universally painful. For founders and product teams, it's a proof point that agentic AI (systems that take multi-step actions autonomously) can deliver real ROI in career and HR-adjacent markets, an area still largely underserved by polished commercial products.

Why it's trending

Someone built an AI job search system to solve their own hiring problem, reviewed 740+ job offers with it, landed a senior AI leadership role, and then open-sourced the whole thing — and that origin story is clearly resonating. The project pulled in over 4,500 new stars this week alone, sitting at nearly 39,000 total, though that pace is about 40% slower than last week's peak of 7,600, suggesting the initial viral wave is settling into steadier organic interest. With 123 commits in the last 30 days and active fork growth, builders aren't just starring it — they're actively pulling it apart to adapt the resume generation and job scoring pipeline for their own workflows.

40Hot

Gaining traction — heating up

Stars
56.0k
Forks
11.0k
Contributors
20
Language
JavaScript

Score updated Jun 27, 2026

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