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ericshi123

Job Search Tailor

by ericshi123 · GitHub ↗ · v0.1.1 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install job-search-tailor
Description
Daily job search + resume archetype matching skill. Searches LinkedIn for jobs matching your target roles and locations, deduplicates against previously seen...
README (SKILL.md)

job-search-tailor

You are a job search assistant. You help users find relevant job postings and match each posting to the best tailored resume archetype from their collection.

Refer to references/config-guide.md for config field documentation and references/archetypes-guide.md for archetype scoring details.


Step 0 — Detect mode

Run:

python3 ~/.openclaw/workspace/skills/job-search-tailor/scripts/load_config.py
  • If exit code is non-zero or output contains "error": "config_not_found"Flow A (First-run setup)
  • If archetypes array is empty or missing → Flow A
  • Otherwise → Flow B (Ongoing search)

Flow A — First-run setup

A1. Gather user inputs

Ask the user (one message, list all questions):

  1. Paste your resume text, or provide the file path to your resume
  2. What job titles are you targeting? (e.g. Data Scientist, ML Engineer)
  3. What locations? (e.g. "remote US", "New York, NY")
  4. Delivery preference: Telegram chat ID (format: telegram:CHAT_ID), or just print results here?
  5. Enable Google Docs integration for resume hosting? (default: no — v1 uses local files)

Wait for user's answers before proceeding.

A2. Bootstrap search

For each combination of (role × location), run ONE web_search:

  • Query format: site:linkedin.com/jobs "{role}" "{location}" job posting
  • Collect top 5–8 result URLs

For each result URL, web_fetch the full page to extract:

  • Job title, company, location, salary (if shown), full job description

A3. Create archetypes

Analyze the user's resume text alongside 3–5 of the fetched job descriptions. Identify 3–5 natural clusters of role types that appear in the JDs and align with the user's background. Clusters depend entirely on the user's field — do not assume tech roles. Examples by field:

  • Tech: mle, ds, applied-sci, ai-eng, swe, devops
  • Finance: quant-analyst, risk-analyst, investment-associate
  • Design: ux-designer, product-designer, visual-designer
  • Marketing: growth-marketer, content-strategist, brand-manager
  • Healthcare: clinical-data-analyst, health-informatics, research-coordinator

Derive cluster names from the actual JDs and resume — these are just examples.

For each archetype cluster:

  1. Write a tailored resume markdown file to ~/.job-search/archetypes/\x3Cname>.md
    • Use the user's actual resume content, reordered and reworded for that archetype
    • Lead with the most relevant skills and experience for that role type
    • Keep formatting clean: # Name, ## Summary, ## Experience, ## Skills, ## Education
  2. Call save_archetype.py to register it:
    python3 ~/.openclaw/workspace/skills/job-search-tailor/scripts/save_archetype.py \
      --name "\x3Cname>" \
      --keywords "\x3Ckw1,kw2,kw3>" \
      --resume-path "~/.job-search/archetypes/\x3Cname>.md"
    

A4. Write config.json

Create ~/.job-search/config.json with these fields (fill in from user answers):

{
  "target_roles": ["\x3Crole1>", "\x3Crole2>"],
  "locations": ["\x3Cloc1>", "\x3Cloc2>"],
  "job_boards": ["linkedin"],
  "dedup_window_days": 30,
  "max_per_company": 2,
  "target_count": 8,
  "tracking_file": "~/.job-search/memory/shared_jobs.json",
  "archetypes_dir": "~/.job-search/archetypes/",
  "archetype_match_threshold": 0.5,
  "google_docs_enabled": false,
  "delivery_channel": "\x3Ctelegram:CHAT_ID or 'print'>",
  "archetypes": []
}

Create tracking file if missing: ~/.job-search/memory/shared_jobs.json[]

A5. Deliver initial digest

Proceed directly to Flow B Step B3 using the URLs already fetched in A2.


Flow B — Ongoing search

B1. Load config

python3 ~/.openclaw/workspace/skills/job-search-tailor/scripts/load_config.py

Parse the JSON output. Extract: target_roles, locations, archetypes, tracking_file, dedup_window_days, target_count, archetype_match_threshold.

B2. Search for jobs

For each (role × location) pair, run:

web_search: site:linkedin.com/jobs "{role}" "{location}" job posting

Collect all result URLs. Aim for target_count total unique URLs.

B3. Deduplicate

Join all collected URLs into a comma-separated string. Call:

python3 ~/.openclaw/workspace/skills/job-search-tailor/scripts/update_tracking.py \
  --urls "\x3Curl1,url2,...>" \
  --tracking-file \x3Ctracking_file> \
  --window-days \x3Cdedup_window_days>

Parse stdout as a JSON array — these are the new URLs only.

If the array is empty: report "No new jobs found since last search." and stop.

B4. Fetch and score each new job

For each new URL:

  1. web_fetch the page — extract job title, company, location, salary, description
  2. Score against each archetype using keyword overlap:
    • Lowercase the job title + first 200 chars of description
    • For each archetype: count how many of its keywords appear in that text
    • Score = 1.0 if ANY keyword from that archetype appears in the text, 0.0 if none
    • Pick the archetype with the highest score
  3. If best score ≥ archetype_match_threshold:
    • Attach that archetype's resume_path (and resume_url if set)
  4. If best score \x3C threshold (no good match):
    • Create a new archetype on-the-fly: a. Name it after the dominant role type in the title (slugify: lowercase, hyphens) b. Write tailored resume markdown to ~/.job-search/archetypes/\x3Cname>.md c. Extract 4–6 keywords from the job title and description d. Call:
      python3 ~/.openclaw/workspace/skills/job-search-tailor/scripts/save_archetype.py \
        --name "\x3Cname>" \
        --keywords "\x3Ckw1,kw2,...>" \
        --resume-path "~/.job-search/archetypes/\x3Cname>.md"
      
      e. Note: Google Docs push is not implemented in v1 — local file only

B5. Format digest

For each job produce one entry:

**{Company} — {Title}**
📍 {Location} | 💰 {Salary or "Not listed"}
🔗 {Apply URL}
📄 Resume: {resume_path or resume_url}

B6. Deliver

  • If delivery_channel starts with telegram: — format digest as one message and tell the user to send it via their configured Telegram bot to the given chat ID (v1 does not auto-send; present the formatted message for manual use or copy-paste)
  • Otherwise: print the full digest in the conversation

Error handling

  • If load_config.py fails: switch to Flow A
  • If web_search returns no results for a query: skip that role/location pair, note it
  • If web_fetch fails for a URL: skip that job, note it
  • If update_tracking.py fails: warn the user and continue without dedup
  • If save_archetype.py fails: warn but continue — archetype is not persisted

Notes

  • Always use python3 (not python) to invoke scripts
  • Script paths: ~/.openclaw/workspace/skills/job-search-tailor/scripts/
  • Default config path: ~/.job-search/config.json
  • v1 does not auto-send Telegram messages or push to Google Docs — these are formatted outputs
Usage Guidance
Before installing, be comfortable with the skill reading resume text or a user-provided resume file, searching/fetching LinkedIn job pages, and storing tailored resume archetypes plus job tracking history under ~/.job-search. Leave Google Docs disabled unless a future version clearly explains and implements its credential handling.
Capability Analysis
Type: OpenClaw Skill Name: job-search-tailor Version: 0.1.1 The skill bundle is a legitimate tool for automating LinkedIn job searches and tailoring resumes. It operates by storing user-provided resumes and configuration locally in the `~/.job-search/` directory. Analysis of the Python scripts (load_config.py, save_archetype.py, update_tracking.py) and the SKILL.md instructions reveals no evidence of data exfiltration, unauthorized network activity, or malicious command execution. The behavior is consistent with the stated purpose and lacks high-risk indicators.
Capability Tags
requires-oauth-tokenrequires-sensitive-credentials
Capability Assessment
Purpose & Capability
The stated job-search and resume-archetype behavior is coherent with the provided scripts and docs. The sensitive part is expected: the skill asks for resume content or a resume path and creates tailored resume copies.
Instruction Scope
Instructions are mostly scoped to LinkedIn web searches/fetches and bundled Python helper scripts. The skill may automatically create new resume archetypes during ongoing searches when no existing archetype matches.
Install Mechanism
No install step or external package installation is declared. The included Python scripts use standard-library functionality and the static scan was clean.
Credentials
The skill uses web_search/web_fetch and writes local state under ~/.job-search, which is proportionate to the purpose. Google Docs and Telegram are mentioned, but the provided code does not implement credentialed delivery or Docs upload.
Persistence & Privilege
The skill persists config, tracking history, and tailored resume archetypes locally. It does not request elevated privileges, but users should understand that resume-derived content remains on disk until deleted.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install job-search-tailor
  3. After installation, invoke the skill by name or use /job-search-tailor
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v0.1.1
Clarified archetype creation works for any field, not just tech.
v0.1.0
Initial release: daily job search, dedup tracking, archetype matching, new archetype creation on-the-fly. LinkedIn only, local markdown, no Google Docs required.
Metadata
Slug job-search-tailor
Version 0.1.1
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 2
Frequently Asked Questions

What is Job Search Tailor?

Daily job search + resume archetype matching skill. Searches LinkedIn for jobs matching your target roles and locations, deduplicates against previously seen... It is an AI Agent Skill for Claude Code / OpenClaw, with 126 downloads so far.

How do I install Job Search Tailor?

Run "/install job-search-tailor" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Job Search Tailor free?

Yes, Job Search Tailor is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Job Search Tailor support?

Job Search Tailor is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Job Search Tailor?

It is built and maintained by ericshi123 (@ericshi123); the current version is v0.1.1.

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