From recruiter
Analyzes resume text for LLM generation patterns including sentence length variance, em-dash density, and generic phrasing. Helps recruiters screen resumes while avoiding false positives.
How this skill is triggered — by the user, by Claude, or both
Slash command
/recruiter:ai-resume-detectorThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
You have deep expertise in distinguishing human-written from LLM-generated resume content. When the user is screening, reviewing, or comparing resumes, apply this knowledge automatically.
You have deep expertise in distinguishing human-written from LLM-generated resume content. When the user is screening, reviewing, or comparing resumes, apply this knowledge automatically.
AI-assisted resumes are not disqualifying. Most strong candidates today edit with an LLM. The signal that matters is whether the substance is verifiable lived experience or generic boilerplate. Style-only flags should never be the basis of a rejection.
LLM lexical fingerprints:
Sentence-length variance:
Suspect accomplishment phrasing:
Verifiable specifics absent:
The most reliable verification is a structured interview probe. For any flagged claim, the recruiter should ask a question that requires lived experience to answer:
If the candidate cannot describe the system at the level a real owner would, the resume claim was likely unverified — regardless of whether AI wrote it.
When assisting with resume screening:
All content generated with this plugin is for informational and drafting purposes only. It does not constitute legal advice. Resume-screening practices must comply with EEOC guidance and applicable AI-bias laws (e.g., NYC Local Law 144). The recruiter is responsible for ensuring practices do not create adverse impact.
More recruiting AI tools and resources at https://theaicareerlab.com/professions/recruiter
npx claudepluginhub alexclowe/awesome-claude-cowork-plugins --plugin recruiterBuilds, critiques, rewrites, and quality-controls resumes to 8.5+ scores using hallucination-free expert panels. Tailors for roles, handles from-scratch creation, and exports to .docx.
Generates ATS-optimized resumes tailored to job postings from master resumes or experience data, producing .docx files via Python rendering.
Optimizes CV and resume content for ATS parser safety and recruiter readability. Handles formatting, keyword strategy, bullet rewrites, section ordering, and job-tailoring.