Autopilot Jobhunt
БесплатноНе проверенScans 130+ company careers pages and scores every role against your resume with an LLM (0–100), surfacing top matches. Drafts tailored cover letters and resume
Описание
Scans 130+ company careers pages and scores every role against your resume with an LLM (0–100), surfacing top matches. Drafts tailored cover letters and resume bullets for any job on demand, and exports scan results to CSV.
README
Your AI job agent. Finds, scores, and drafts applications — while you sleep.
Scans 130+ company careers pages nightly → scores every role against your resume with an LLM → sends you the top matches on Telegram → drafts a tailored resume + cover letter on demand.
🔒 Drafts only — never applies. You review every draft and submit applications yourself. See PRIVACY.md for exactly what data leaves your machine.
CI codecov PyPI version PyPI downloads Python 3.11+ License: MIT GitHub Stars autopilot-jobhunt MCP server
Published on PyPI and listed on the Official MCP Registry (io.github.tarunlnmiit/autopilot-jobhunt), Glama (Quality A), and Smithery (MCPB bundle).
📖 Full setup guide with Claude Code MCP integration → SETUP.md
⭐ Star this repo if it helps you land a job
This tool is free, open source, and runs entirely on your machine — no subscription, no credit card. The only "payment" I ask: if it surfaces a role you apply to (or land), drop a star. It takes one click, costs you nothing, and it's the single thing that pushes the project in front of the next person grinding through 130 careers pages by hand. ⭐ Star it here →
How it works
flowchart LR
A["🌐 130+ Careers Pages"] -->|TinyFish API| B["Job Discovery"]
B --> C["LLM Batch Scorer\n(0–100 fit score)"]
C -->|score ≥ min| D["📱 Telegram Alert\nTop N matches"]
C -->|on demand| E["✉️ Cover Letter\n+ Resume Bullets"]
C --> F["📊 CSV Export"]
The scoring prompt uses your actual resume — not keywords. The LLM reads your full work history and the job description, then explains in one sentence why you fit or don't. No more guessing.
What a scan result looks like
Scanning Mistral AI...
3 new job URLs. Fetching details...
Scoring jobs...
Saved 2 jobs from Mistral AI
Scanning HuggingFace...
5 new job URLs. Fetching details...
Scoring jobs...
Saved 3 jobs from HuggingFace
Scanning Stripe...
No new jobs found
...
Scan complete.
Top 5 sent to Telegram.
What the Telegram notification looks like
Job Hunt — 06 Jun 2026
5 matches found
#1 | Mistral AI | Applied AI Engineer, ML Infrastructure
📍 Paris/London/Marseille, On-site
🔧 Python, LLMs, RAG, AWS, MLOps, DevOps
✅ Role combines applied AI + ML infrastructure in EU, aligns with MLOps/RAG expertise and relocation goal
Score: 85/100 → https://jobs.lever.co/mistral/...
#2 | HuggingFace | Staff ML Engineer
📍 Remote (EU)
🔧 Python, PyTorch, Transformers, CUDA, MLOps
✅ Open-source ML role matches deep learning and distributed training background
Score: 80/100 → https://apply.workable.com/huggingface/...
...
Reply "apply to #N" to draft a tailored application.
What it does
Every night at 2:30 AM:
┌─────────────────────────────────────────────────────────┐
│ Scans careers pages → Scores with LLM → Notifies │
│ (130+ cos) (0–100 fit) (Telegram) │
└─────────────────────────────────────────────────────────┘
On demand:
autopilot draft 1 → tailored resume + cover letter in 60s
Usage modes
Mode 1: Standalone CLI (no Claude Code required)
pip install autopilot-jobhunt
autopilot scan / autopilot draft 1 / autopilot export
Mode 2: Claude Code MCP (control via natural language)
pip install 'autopilot-jobhunt[mcp]'
claude mcp add autopilot-jobhunt ...
→ "Scan for ML jobs" / "Draft application for job #2"
Both modes use the same config and produce the same output.
Quick start
Option A — pip install
pip install autopilot-jobhunt # or: pip install 'autopilot-jobhunt[mcp]' for Claude Code
mkdir my-job-hunt && cd my-job-hunt
autopilot init # creates config.json, companies.json, resume/, .env
# Fill in config.json (API keys + your profile) and resume/YOUR_RESUME.md, then:
autopilot scan
Option B — clone (recommended if you want to customize companies or contribute)
git clone https://github.com/tarunlnmiit/autopilot-jobhunt.git
cd autopilot-jobhunt
pip install -e '.' # standalone CLI
# pip install -e '.[mcp]' # + Claude Code MCP integration
cp config.example.json config.json && cp .env.example .env
# Fill in your API keys and candidate profile, then:
autopilot scan
For the full walkthrough — API key setup, Claude Code MCP registration, rate limit details, and troubleshooting — see SETUP.md.
📚 Documentation
Step-by-step guides live in docs/:
| Guide | Covers |
|---|---|
| Install | pip / from source / autopilot init scaffolding |
| LLM providers | OpenRouter fallback chain, Claude CLI (keyless), Anthropic API |
| API keys | TinyFish + OpenRouter keys, where each goes |
| Companies & scanning | companies.json, discovery + scoring, scan pacing |
| Integrations | Telegram notifications |
| MCP server & Skill | Drive the hunt from Claude Code |
| Config & scoring | Candidate profile, min_score, top_n |
| Troubleshooting | Every error we've hit, and the fix |
| Testing checklist | Reproducible independent verification |
API keys needed
| Service | Cost | Required | Where to get it |
|---|---|---|---|
| TinyFish | Free — no credit card | Always | agent.tinyfish.ai |
| OpenRouter | Free — 4-model fallback chain | Unless using Claude CLI / Anthropic | openrouter.ai |
| Telegram | Free | Optional | @BotFather on Telegram |
Claude Code / MCP integration
Use autopilot-jobhunt as an MCP server inside Claude Code (CLI) or Claude Desktop.
Step 1: Install with MCP support
git clone https://github.com/tarunlnmiit/autopilot-jobhunt.git
cd autopilot-jobhunt
pip install -e '.[mcp]'
Step 2: Register with Claude Code
Option A — one command:
claude mcp add autopilot-jobhunt \
--env TINYFISH_API_KEY=your_key \
--env OPENROUTER_API_KEY=your_key \
--env TELEGRAM_TOKEN=your_token \
--env TELEGRAM_CHAT_ID=your_chat_id \
-- python -m job_hunt.mcp_server
Option B — edit ~/.claude.json manually:
{
"mcpServers": {
"autopilot-jobhunt": {
"command": "python",
"args": ["-m", "job_hunt.mcp_server"],
"cwd": "/absolute/path/to/autopilot-jobhunt",
"env": {
"TINYFISH_API_KEY": "your_key",
"OPENROUTER_API_KEY": "your_key",
"TELEGRAM_TOKEN": "your_token",
"TELEGRAM_CHAT_ID": "your_chat_id"
}
}
}
}
Note:
cwdmust point to the cloned repo — the server readsconfig.jsonandcompanies.jsonfrom there.
Step 3: Use it
In any Claude Code session:
"Scan for ML jobs"
"Draft an application for job #2"
"Export jobs from the last 7 days with score above 70"
Claude Desktop
Same JSON block — add it under mcpServers in Claude Desktop → Settings → Developer.
Customize your target companies
Edit companies.json. Each entry needs:
{
"name": "Stripe",
"careers_url": "https://stripe.com/jobs",
"search_domain": "stripe.com",
"location": "Remote / San Francisco, CA",
"region": "Remote"
}
The repo ships with 130+ pre-configured EU, NZ, and remote-friendly tech companies. Add or remove as you like.
How scoring works
The LLM reads your full resume + the full job description and assigns a score 0–100:
| Score | Meaning |
|---|---|
| 80–100 | Near-perfect fit — apply immediately |
| 60–79 | Good fit — worth applying |
| 40–59 | Partial fit — apply if pipeline is thin |
| < 40 | Poor fit — skipped |
Set min_score in config to filter. Default: 60.
Project structure
autopilot-jobhunt/
├── job_hunt/
│ ├── main.py # CLI entry point
│ ├── scanner.py # Job discovery + LLM scoring
│ ├── drafter.py # Resume tailoring + cover letter
│ ├── notifier.py # Telegram notifications
│ ├── llm_utils.py # OpenRouter wrapper with fallback
│ ├── tools.py # Protocol-agnostic tool layer
│ └── mcp_server.py # MCP server (Claude/AI assistant integration)
├── demo/ # Demo scripts for recording GIF
├── resume/ # Put your resume here (gitignored)
├── state/ # Scan state (gitignored)
├── output/ # Generated applications (gitignored)
├── companies.json # 130+ target companies
├── config.example.json # Config template (copy to config.json — gitignored)
└── config.json # Your config (gitignored — never committed)
LLM options
Default: OpenRouter (free)
Uses a 4-model fallback chain — all free, no credit card needed:
| Model | Role |
|---|---|
meta-llama/llama-3.3-70b-instruct:free |
Primary — best quality |
nvidia/nemotron-3-super-120b-a12b:free |
Fallback 1 — 120B |
google/gemma-4-31b-it:free |
Fallback 2 |
qwen/qwen3-coder:free |
Fallback 3 |
If one model hits its daily free-tier quota, the tool automatically tries the next. Zero LLM cost by default.
Alternative A: Claude Code CLI (no API key needed)
If you have Claude Code installed and authenticated, you can use it as the LLM backend — no separate API key required:
In config.json:
"llm_provider": "claude_cli"
Or via environment variable: LLM_PROVIDER=claude_cli autopilot scan
Optionally set a model: "claude_cli_model": "sonnet" (or "opus", "haiku", empty = Claude's default).
Note: Requires the
claudebinary in your PATH. Verify withclaude --print "hi"first. The MCP server and cron jobs must run in an environment where yourclaudeauth session is active.Rate-limit note: Each call loads your global Claude Code context (~25–30k tokens). A nightly scan (5–15 LLM calls) burns significantly against your subscription's 7-day rate limit. Prefer OpenRouter for nightly automation; use Claude CLI for occasional on-demand drafts.
Alternative B: Anthropic API
If you have an Anthropic API key:
pip install 'autopilot-jobhunt[claude]'
In config.json:
"llm_provider": "anthropic",
"anthropic_api_key": "sk-ant-...",
"anthropic_model": "claude-haiku-4-5-20251001"
claude-haiku-4-5-20251001 is fast and cheap; claude-sonnet-4-6 gives higher quality scores. A nightly scan uses ~5–15 LLM calls total (jobs scored in batches of 10).
Contributing
See CONTRIBUTING.md. PRs welcome for:
- Adding companies to
companies.json - New ATS platform support (Rippling, Lever variants, Workday)
- OpenAI / Gemini MCP adapters
- Better scoring prompts
License
MIT — see LICENSE.
Built by @tarunlnmiit. If this saved you hours of job searching, a ⭐ means a lot.
Установка Autopilot Jobhunt
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/tarunlnmiit/autopilot-jobhuntFAQ
Autopilot Jobhunt MCP бесплатный?
Да, Autopilot Jobhunt MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Autopilot Jobhunt?
Нет, Autopilot Jobhunt работает без API-ключей и переменных окружения.
Autopilot Jobhunt — hosted или self-hosted?
Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.
Как установить Autopilot Jobhunt в Claude Desktop, Claude Code или Cursor?
Открой Autopilot Jobhunt на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
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