Skills job-hunter
Build and deploy an automated job hunting system with Telegram bot. Scrapes LinkedIn jobs, scores them by match percentage, sends notifications with apply buttons, and generates tailored CVs. Use when: setting up job search automation, building a job-matching bot, creating a Telegram-based job alert system, helping someone find a job automatically. Triggers: 'job search bot', 'automated job hunting', 'find jobs for', 'job alert system', 'build job bot'.
git clone https://github.com/openclaw/skills
T=$(mktemp -d) && git clone --depth=1 https://github.com/openclaw/skills "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/barleviatias/job-hunter-bot" ~/.claude/skills/openclaw-skills-job-hunter && rm -rf "$T"
T=$(mktemp -d) && git clone --depth=1 https://github.com/openclaw/skills "$T" && mkdir -p ~/.openclaw/skills && cp -r "$T/skills/barleviatias/job-hunter-bot" ~/.openclaw/skills/openclaw-skills-job-hunter && rm -rf "$T"
skills/barleviatias/job-hunter-bot/SKILL.mdJob Hunter - Automated Job Search System
Build a complete job hunting system: LinkedIn scraper, match scorer, and Telegram bot with inline buttons.
What This System Does
- Scrapes real jobs from LinkedIn (public guest API, no login needed)
- Scores each job 0-100% based on candidate profile (title, skills, experience, location)
- Sends matching jobs to Telegram with action buttons (details, apply, remove)
- Provides a clean foundation you can extend with CV generation later if needed
Setup Flow
1. Gather Candidate Profile
Ask the user for:
- Target roles (e.g. data analyst, BI developer, frontend developer)
- Core skills (e.g. SQL, Python, React, Power BI)
- Bonus skills (nice-to-have)
- Max years of experience they qualify for
- Preferred location and metro area cities
- Contact info (name, email, phone, LinkedIn URL)
- Work experience (companies, roles, dates, bullet points)
- Education (degree, institution, year)
2. Create Telegram Bot
Guide the user:
- Open Telegram, search for @BotFather
- Send
, choose a name and username/newbot - Copy the bot token
- Get their Telegram user ID (send a message to @userinfobot)
- Optionally add more authorized users (e.g. the job seeker)
3. Deploy the System
Create a project directory and deploy these scripts (from
scripts/):
job-hunter/ ├── config.json # Bot token, user IDs, candidate profile ├── jobs.db # SQLite database (auto-created) ├── scorer.py # Match scoring engine ├── linkedin_scraper.py # LinkedIn job scraper ├── bot.py # Telegram bot with inline buttons └── notify_new_jobs.py # Send new matches to Telegram
config.json Structure
{ "telegram_bot_token": "TOKEN_FROM_BOTFATHER", "telegram_user_id": 123456789, "authorized_users": [123456789], "notify_users": [123456789], "candidate": { "name": "Full Name", "email": "email@example.com", "phone": "054-1234567", "linkedin": "linkedin.com/in/username", "location": "Tel Aviv, Israel", "target_titles": ["data analyst", "bi developer"], "good_titles": ["business analyst"], "core_skills": ["sql", "python", "power bi"], "bonus_skills": ["etl", "dax", "pandas"], "max_years": 2, "preferred_locations": ["tel aviv", "herzliya", "ramat gan"], "metro_locations": ["petah tikva", "rishon lezion"] } }
4. Customize Scripts
After copying scripts from
scripts/, customize:
- Update PROFILE dict with candidate's profile from config.jsonscorer.py
- Update DEFAULT_QUERIES with relevant search termslinkedin_scraper.py
- Should work with just config.json changesbot.py
- Verify notification flow and recipientsnotify_new_jobs.py
5. Install Dependencies
Install Python dependencies required by the included scripts. At minimum, verify the libraries imported by the scraper and bot are available in your environment.
6. Initialize Database
The database auto-creates on first run. Schema:
CREATE TABLE jobs ( job_id TEXT PRIMARY KEY, title TEXT, company TEXT, location TEXT, url TEXT, career_url TEXT, description TEXT, requirements TEXT, required_years INTEGER, published_date TEXT, found_date TEXT, status TEXT DEFAULT 'new' );
7. Start the Bot
nohup python3 -u bot.py > bot.log 2>&1 &
8. Set Up Daily Search (Cron)
# Run daily job search + notify at 9 AM 0 9 * * * cd /path/to/job-hunter && python3 linkedin_scraper.py && python3 notify_new_jobs.py
Or use OpenClaw cron:
openclaw cron add --name daily-job-search --schedule "0 9 * * *" --prompt "Run job search and notify"
Bot Commands
| Command | What it does |
|---|---|
| Show top jobs (score >= 60%) |
| List all jobs with scores |
| Trigger new LinkedIn search |
| Show statistics |
| Show applied jobs |
| Show commands |
Scoring Weights
| Factor | Points | Logic |
|---|---|---|
| Title match | 0-30 | Perfect match = 30, partial = 15 |
| Skills match | 0-30 | Core skills = 5 each (max 20), bonus = 2 each (max 10) |
| Experience | 0-40 | 0yr = 40, 1yr = 30, 2yr = 10, 3+ = -20 |
| Location | 0-25 | Preferred = 25, metro = 15, country = 5 |
| Junior keywords | 0-10 | Entry-level indicators |
Thresholds: 🟢 >= 70% apply | 🟡 >= 50% review | 🔴 < 50% skip
Troubleshooting
- Bot not responding: Check only ONE instance is running (
)ps aux | grep bot.py - 409 Conflict: Multiple bot instances. Kill all, restart one.
- No jobs found: Check search queries match real LinkedIn job titles
- Scoring too high/low: Adjust weights in scorer.py