Methodologygeneric

Applicant Screening

Screen job applications against requirements and score candidates

claude-office-skills/skills
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Install

npx skills add https://github.com/claude-office-skills/skills --skill applicant-screening

Use with your agent

ClaudeCursorOpenAIGemini

Install the Applicant Screening skill, then use it as build context. Run: npx skills add https://github.com/claude-office-skills/skills --skill applicant-screening. Then read the installed skill.md and follow its guidance to build or refactor my project.

Applicant Screening

Screen job applications against role requirements to identify top candidates efficiently.

Overview

This skill helps you:

  • Evaluate resumes against job requirements
  • Score candidates consistently
  • Identify must-have vs. nice-to-have qualifications
  • Flag potential concerns
  • Rank applicants for interviews

How to Use

Single Candidate

"Screen this resume against our [Job Title] requirements"
"Evaluate this application for the [Position] role"

Batch Screening

"Screen these 10 applications for the Senior Developer position"
"Rank these candidates based on our requirements"

With Criteria

"Screen for: 5+ years Python, AWS experience required, ML nice-to-have"

Screening Framework

Requirements Matrix

## Job Requirements: [Position]

### Must-Have (Required)
| Requirement | Weight | Criteria |
|-------------|--------|----------|
| [Skill 1] | 20% | [X] years experience |
| [Skill 2] | 15% | [Certification/level] |
| [Education] | 10% | [Degree type] |
| [Experience] | 25% | [Industry/role type] |

### Nice-to-Have (Preferred)
| Requirement | Bonus | Criteria |
|-------------|-------|----------|
| [Skill 3] | +5pts | [Description] |
| [Skill 4] | +5pts | [Description] |
| [Trait] | +3pts | [Indicator] |

### Disqualifiers
- [ ] No work authorization
- [ ] Below minimum experience
- [ ] Missing required certification
- [ ] Salary expectation mismatch

Output Formats

Individual Screening Report

# Candidate Screening: [Name]

## Quick Summary
| Attribute | Value |
|-----------|-------|
| **Position** | [Job Title] |
| **Score** | [X]/100 |
| **Recommendation** | ๐ŸŸข Interview / ๐ŸŸก Maybe / ๐Ÿ”ด Pass |

## Candidate Profile
- **Name**: [Full Name]
- **Location**: [City, State]
- **Current Role**: [Title] at [Company]
- **Total Experience**: [X] years
- **Education**: [Degree, School]

## Requirements Match

### Must-Have Requirements
| Requirement | Met? | Evidence | Score |
|-------------|------|----------|-------|
| [5+ years Python] | โœ… | 7 years at 2 companies | 20/20 |
| [AWS experience] | โœ… | AWS Certified, 3 years | 15/15 |
| [Bachelor's CS] | โœ… | BS Computer Science, MIT | 10/10 |
| [Team lead exp] | โš ๏ธ | Led 2-person team | 5/10 |

**Must-Have Score**: [X]/[Total]

### Nice-to-Have
| Requirement | Met? | Evidence | Bonus |
|-------------|------|----------|-------|
| [ML experience] | โœ… | Built recommendation system | +5 |
| [Startup exp] | โœ… | 2 early-stage startups | +5 |
| [Open source] | โŒ | Not mentioned | 0 |

**Nice-to-Have Bonus**: +[X] points

## Strengths ๐Ÿ’ช
1. [Strength 1 with evidence]
2. [Strength 2 with evidence]
3. [Strength 3 with evidence]

## Concerns โš ๏ธ
1. [Concern 1 - question to ask in interview]
2. [Concern 2 - what to verify]

## Red Flags ๐Ÿšฉ
- [If any - employment gaps, inconsistencies, etc.]

## Interview Questions
Based on this candidate's profile, consider asking:
1. [Question about specific experience]
2. [Question about concern area]
3. [Question about growth potential]

## Overall Assessment
[2-3 sentence summary of fit]

**Final Score**: [X]/100
**Recommendation**: [Interview / Phone Screen / Pass]
**Priority**: [High / Medium / Low]

Batch Ranking Report

# Applicant Ranking: [Position]

**Date**: [Date]
**Total Applications**: [X]
**Reviewed**: [X]

## Summary
| Category | Count | % |
|----------|-------|---|
| ๐ŸŸข Strong Interview | [X] | [%] |
| ๐ŸŸก Phone Screen | [X] | [%] |
| ๐Ÿ”ต Maybe/Hold | [X] | [%] |
| ๐Ÿ”ด Not a Fit | [X] | [%] |

## Top Candidates

### ๐Ÿฅ‡ Tier 1: Strong Interview (Score 80+)

| Rank | Name | Score | Key Strengths | Concerns |
|------|------|-------|---------------|----------|
| 1 | [Name] | 92 | [Strengths] | [Concerns] |
| 2 | [Name] | 88 | [Strengths] | [Concerns] |
| 3 | [Name] | 85 | [Strengths] | [Concerns] |

### ๐Ÿฅˆ Tier 2: Phone Screen (Score 65-79)

| Rank | Name | Score | Key Strengths | Gap to Address |
|------|------|-------|---------------|----------------|
| 4 | [Name] | 75 | [Strengths] | [Gap] |
| 5 | [Name] | 72 | [Strengths] | [Gap] |

### ๐Ÿฅ‰ Tier 3: Maybe/Hold (Score 50-64)

| Name | Score | Reason for Hold |
|------|-------|-----------------|
| [Name] | 58 | [Reason] |

### โŒ Not Proceeding (Score <50)

| Name | Score | Primary Reason |
|------|-------|----------------|
| [Name] | 45 | Missing required [X] |
| [Name] | 38 | Below minimum experience |

## Insights

### Applicant Pool Quality
[Assessment of overall pool quality]

### Common Strengths
- [Frequently seen strength]
- [Frequently seen strength]

### Common Gaps
- [What most candidates lack]
- [Skill shortage in pool]

### Recommendations
1. [Action for top candidates]
2. [Suggestion for sourcing if pool weak]

Scoring Rubric

Experience Scoring

YearsEntryMidSeniorLead
0-110/103/100/100/10
2-38/107/103/100/10
4-55/1010/107/103/10
6-83/108/1010/107/10
9+0/105/1010/1010/10

Education Scoring

LevelTechnical RoleNon-Technical
PhD10/108/10
Master's9/109/10
Bachelor's8/1010/10
Associate's5/107/10
Bootcamp6/10N/A
Self-taught4/10N/A

Best Practices

Fair Screening

  • Focus on job-related criteria only
  • Ignore protected characteristics
  • Use consistent scoring
  • Document decisions
  • Consider diverse backgrounds

Bias Awareness

  • Name/gender bias: Focus on qualifications
  • Affinity bias: Diverse interview panels
  • Confirmation bias: Score before gut feeling
  • Halo effect: Evaluate each criterion separately

Legal Considerations

  • Only use job-relevant criteria
  • Apply standards consistently
  • Keep screening records
  • Have HR review process
  • Consider adverse impact

Limitations

  • Cannot verify employment history
  • May miss context from non-traditional backgrounds
  • Scoring is guidance, not absolute
  • Cannot assess cultural fit or soft skills fully
  • Human judgment essential for final decisions