/install resume-match
Resume Match
Use this skill when the user wants to compare their resume(s) against a specific job description and get a quantified match score, gap analysis, and tailored rewrite suggestions.
Good triggers
- "Check if my resume fits this job posting."
- "Score my resume against this JD."
- "What's missing from my resume for this role?"
- "Optimize my resume for this job application."
- "A/B test two versions of my resume against the same JD."
Workflow
-
Extract resume structure. Parse the resume input into:
- Education (degrees, institutions, graduation year)
- Work experience (companies, titles, dates, key achievements)
- Skills (technical and soft, explicitly listed or embedded)
- Projects or publications (if any)
- Certifications / languages / awards
-
Extract JD requirements. Parse the job description into:
- Must-have — explicit requirements ("5+ years Python", "Bachelor's required")
- Nice-to-have — preferred qualifications ("experience with Kubernetes is a plus")
- Soft skills — inferred or stated ("team player", "strong communication")
- Hidden signals — industry keywords, hard-to-find experience the JD emphasizes
-
Compute match score (0-100). Break down by dimension:
- Technical skills match (weighted by must-have vs nice-to-have)
- Experience level match
- Education/certification match
- Soft skills evidence
- Overall keyword density in resume vs JD
-
Gap analysis. For each JD requirement the resume does not satisfy:
- Label GAP, PARTIAL, or MATCH
- Suggest: upskill, rephrase, or add hidden experience
- Estimate impact on scoring if fixed
-
2×2 skills matrix. Plot:
JD Requires JD Doesn't Require Resume Has Strength zone Overqualified zone Resume Missing Gap zone Irrelevant zone -
Prioritize changes. P0 → P1 → P2:
- P0: Must-fix gaps blocking interview (missing JD critical skill)
- P1: Strengthen weak areas (rephrase to match JD language)
- P2: Nice-to-have additions (low effort, moderate impact)
-
Resume rewrite. For each section, rewrite the resume to match JD language without fabricating facts:
- Replace generic verbs with JD-aligned action words
- Reorder bullet points to surface most relevant achievements first
- Add missing keywords naturally (if true)
- Adjust summary/objective to mirror JD tone
-
Keyword density check. Extract top 20 TF-IDF keywords from JD and count occurrences in original vs optimized resume. Flag density \x3C 30% of JD frequency.
-
Deliver match report. Structured output:
- Overall score and dimension breakdown
- Gap analysis table
- 2×2 matrix
- Prioritized change list
- Original vs optimized resume (side by side)
- Keyword density comparison
Sample prompt
resume-match match --resume resume.pdf --jd "https://example.com/job/123"
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install resume-match - After installation, invoke the skill by name or use
/resume-match - Provide required inputs per the skill's parameter spec and get structured output
What is Resume Match?
Match resume against a job description. Quantified scoring and prioritized improvement tips. It is an AI Agent Skill for Claude Code / OpenClaw, with 35 downloads so far.
How do I install Resume Match?
Run "/install resume-match" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Resume Match free?
Yes, Resume Match is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Resume Match support?
Resume Match is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Resume Match?
It is built and maintained by haidong (@harrylabsj); the current version is v1.0.0.