GIT_FEED

santifer/career-ops

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

View on GitHub

What it does

Career-Ops is an AI-powered job search assistant that automatically scans job postings, scores them on a structured scale, and generates customized resumes tailored to each specific role — all without manual spreadsheet tracking. It was built by someone who used it to review over 740 job offers and ultimately land a senior AI leadership position.

Why it matters

With 35,000+ stars, this project signals strong demand for AI tools that bring structure and quality control to high-stakes personal decisions — not just productivity tasks. For founders and PMs, it's a proof of concept that agentic AI workflows (where software takes multi-step actions autonomously) can replace entire manual processes in markets like recruiting, where the pain is deep and the incumbents are slow.

Why it's trending

The job search grind has clearly hit a nerve — this project added nearly 5,000 stars in a single week against a base of 38,000, signaling a viral moment rather than slow organic growth. The hook is hard to ignore: someone built a tool out of personal necessity, used it to process 740 real job applications, and landed a senior AI role, turning a working proof-of-concept into something builders immediately want to copy or adapt. With 123 commits in the last 30 days and over 1,000 new forks this week, the momentum looks genuine, though the low contributor ratio suggests this remains largely a one-person project that the community is adopting rather than building together.

43Hot

Gaining traction — heating up

Stars
38.5k
Forks
7.8k
Contributors
20
Language
JavaScript

Score updated Apr 23, 2026

Related projects

This is Google's official collection of tutorials, code examples, and ready-to-run notebooks showing builders how to create AI-powered applications using Google's Gemini models on its cloud platform. It covers everything from basic AI conversations to complex multi-step AI agents that can reason and take actions autonomously.

// why it matters With over 15,000 stars and nearly 300 contributors, this repository signals where serious enterprise AI development is heading — Google's cloud ecosystem is positioning itself as a primary destination for teams building production AI products. For founders and PMs evaluating AI infrastructure, this gives a clear picture of Google's capabilities and provides a fast track to building on the same models powering consumer Google products.

Jupyter Notebook16.7k stars4.2k forks292 contrib

Hermes Agent is an AI assistant that gets smarter the more you use it — it remembers past conversations, learns new skills from experience, and builds a profile of who you are over time, all without being tied to any single AI provider or device. It runs in the cloud and connects to messaging apps like Telegram, Slack, and WhatsApp, so you can interact with it anywhere while it handles complex tasks in the background.

// why it matters As AI assistants become a core part of how teams and products operate, the ability to avoid vendor lock-in while building a continuously improving, memory-rich agent is a significant competitive advantage — this is the kind of infrastructure layer that could sit underneath entire products or workflows. With nearly 9,000 stars and over 100 contributors, it signals strong developer demand for agents that persist, learn, and work autonomously rather than resetting with every session.

Python110.8k stars16.1k forks458 contrib

AITER is AMD's open-source library of high-performance building blocks that make AI models run faster on AMD hardware, supporting everything from basic AI operations to complex training and multi-GPU coordination. Think of it as a toolbox that lets AI software teams tap into AMD's chip capabilities without having to write low-level hardware code themselves.

// why it matters As AI infrastructure costs soar, builders are actively exploring alternatives to Nvidia's dominant GPU ecosystem, and AMD is positioning AITER as the key compatibility layer that makes switching or diversifying hardware more practical. For founders and PMs building AI products, this means AMD GPUs become a more credible option for cost reduction or supply chain diversification — especially relevant as demand for AI compute continues to outpace supply.

Python412 stars289 forks200 contrib

Last30Days is a plug-in skill for the Claude AI coding assistant that automatically researches any topic across Reddit, X, YouTube, Hacker News, Polymarket, and Bluesky, then produces a cited summary of what people are actually talking about right now. Think of it as a one-command briefing tool that scans the social web for the past 30 days and distills the signal into a readable report, saved automatically to your computer.

// why it matters As AI tools and markets shift weekly, founders and product teams who can quickly validate what's gaining traction — before it becomes mainstream knowledge — have a real edge in prioritization and positioning. The 15,000+ stars suggest strong demand for ambient, automated trend intelligence baked directly into developer workflows rather than requiring separate research tools.

Python23.4k stars1.9k forks16 contrib
// SUBSCRIBE

The repos that moved this week, why they matter, and what to watch next. One email. No noise.