migrateforce

candidate-screening

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# Install this skill:
npx skills add migrateforce/migrateforce-skills --skill "candidate-screening"

Install specific skill from multi-skill repository

# Description

Screen and rank job applicants against a job description, summarize top candidates, and flag potential concerns. Use when reviewing large applicant pools from ATS systems like Greenhouse, Ashby, or Workday.

# SKILL.md


name: candidate-screening
description: Screen and rank job applicants against a job description, summarize top candidates, and flag potential concerns. Use when reviewing large applicant pools from ATS systems like Greenhouse, Ashby, or Workday.
license: MIT
compatibility: claude-code, cursor, cline, windsurf
metadata:
industry: hr-software
segment: applicant-tracking
function: talent-acquisition
value_driver: efficiency
complexity: medium
source_systems: greenhouse, ashby, workday, lever, icims
allowed-tools: Read, Write, Edit, WebFetch


Summary

This skill enables AI agents to screen large volumes of job applicants efficiently. Instead of manually reviewing 500 resumes, the agent reads all applications, scores them against the job requirements, and produces a ranked shortlist with summaries.

The Problem: Recruiters spend 23 hours per hire just screening resumes. With 250+ applications per corporate job, most qualified candidates are never seen.

The Solution: Agent reads every application, scores against JD, surfaces the top 10% with 3-bullet summaries.

Inputs

Field Type Required Description
job_description text yes Full job description with requirements, responsibilities, qualifications
candidates array yes List of candidate objects with resume/application data
ranking_threshold number no Percentage of candidates to include in shortlist (default: 10)
must_have_skills array no Non-negotiable skills/qualifications
nice_to_have_skills array no Preferred but optional qualifications
location_preference string no Required location or "remote"
experience_range object no Min/max years of experience

Outputs

Field Type Description
ranked_candidates array Candidates sorted by match score (highest first)
candidate_summaries array 3-bullet summaries for shortlisted candidates
screening_flags array Concerns or notes (gaps, job hopping, missing skills)
match_scores object Detailed scoring breakdown per candidate
recommendation text Overall hiring recommendation

Workflow

1. Parse Job Requirements

Extract from job description:
- Required skills and qualifications
- Years of experience needed
- Education requirements
- Location/remote preferences
- Compensation range (if mentioned)

2. Normalize Candidate Data

For each candidate:
- Extract structured data from resume
- Identify skills, experience, education
- Calculate tenure at previous roles
- Note employment gaps

3. Score Candidates

Apply scoring rubric:
- Skills Match (40%): Required skills present
- Experience Match (25%): Years and relevance
- Education Match (15%): Degree and field
- Culture Signals (10%): Values alignment indicators
- Red Flags (-10%): Job hopping, gaps, inconsistencies

4. Generate Shortlist

  • Rank all candidates by total score
  • Select top N% based on threshold
  • Generate 3-bullet summary for each:
  • Strongest qualification
  • Relevant experience highlight
  • Potential concern or standout factor

5. Produce Report

Output structured report with:
- Ranked shortlist with summaries
- Full scoring breakdown
- Flagged concerns
- Recommended next steps

Scoring Rubric

SCORE RANGES:
90-100: Strong match - Recommend immediate interview
80-89:  Good match - Recommend phone screen
70-79:  Potential match - Review manually
60-69:  Weak match - Only if pipeline thin
<60:    No match - Do not proceed

RED FLAGS (auto-deduct points):
- 3+ jobs in 2 years: -10 points
- Employment gap >6mo unexplained: -5 points
- Missing required skill: -15 points per skill
- Overqualified (may not stay): -5 points

Integration Points

Source Systems

  • Greenhouse: GET /v1/candidates, GET /v1/applications
  • Ashby: GET /candidate.list, GET /application.list
  • Workday: Recruiting API endpoints
  • Lever: GET /v1/opportunities
  • iCIMS: Platform Connect API

Triggers

  • New job posted with 50+ applicants
  • Daily digest request
  • Manual "screen this role" command

Downstream Skills

  • interview-scheduler - Schedule interviews for shortlisted candidates
  • candidate-outreach - Send personalized messages to top candidates
  • offer-letter-generator - Generate offers for selected candidates

Example Usage

User: Screen the applicants for the Senior Engineer role

Agent: I'll screen all 247 applicants for the Senior Software Engineer position.

[Processing 247 resumes...]

## Screening Complete

**Top 10% Candidates (25 of 247):**

### 1. Sarah Chen - Score: 94/100
- 8 years Python/Django experience at scale (Netflix, Stripe)
- Led team of 6, shipped 3 major products
- Based in SF, open to hybrid

### 2. Marcus Johnson - Score: 91/100
- Ex-Google Staff Engineer, distributed systems expert
- Perfect skills match, strong system design
- ⚠️ May be overqualified for IC role

### 3. Priya Patel - Score: 89/100
- 5 years backend, promoted twice at current company
- Missing Kubernetes experience (trainable)
- Strong referral from current employee

[... 22 more candidates ...]

**Recommended Action:** Schedule phone screens with top 10 candidates this week.

**Flagged for Review:**
- 12 candidates in "potential match" range (70-79)
- 3 candidates flagged for job hopping pattern

Compliance Notes

  • Do not use protected characteristics in scoring (age, gender, race, disability)
  • Document scoring rationale for audit trail
  • Allow candidates to request explanation of decision
  • Retain screening data per local data retention laws
  • EEOC/OFCCP compliance: Ensure consistent criteria across all candidates

# Supported AI Coding Agents

This skill is compatible with the SKILL.md standard and works with all major AI coding agents:

Learn more about the SKILL.md standard and how to use these skills with your preferred AI coding agent.