Agent skill
exit-analysis
Analyze exit interview data and identify retention insights and patterns
Install this agent skill to your Project
npx add-skill https://github.com/a5c-ai/babysitter/tree/main/library/specializations/domains/business/human-resources/skills/exit-analysis
Metadata
Additional technical details for this skill
- domain
- business
- category
- Employee Relations
- skill id
- SK-017
- dependencies
-
[ "NLP libraries", "Exit survey data" ] - specialization
- human-resources
SKILL.md
Exit Interview Analysis Skill
Overview
The Exit Interview Analysis skill provides capabilities for analyzing exit interview data to identify retention insights, patterns, and actionable improvements. This skill enables systematic exit data collection, theme analysis, and retention strategy recommendations.
Capabilities
Interview Design
- Create exit interview question templates
- Design survey instruments
- Configure voluntary vs. involuntary paths
- Include skip logic and branching
- Support multiple collection methods
Theme Analysis
- Analyze exit data for themes and patterns
- Apply NLP to open-ended responses
- Cluster related feedback
- Identify emerging issues
- Track theme prevalence
Turnover Analysis
- Calculate voluntary turnover drivers
- Segment analysis by demographics
- Identify high-risk populations
- Compare regrettable vs. non-regrettable
- Track trends over time
Departmental Reporting
- Generate department-level exit reports
- Compare managers and teams
- Identify outlier departments
- Create benchmark comparisons
- Support manager feedback
Issue Identification
- Identify management and culture issues
- Detect compensation concerns
- Surface career development gaps
- Flag work-life balance issues
- Highlight recognition deficits
Recommendations
- Create retention recommendation reports
- Prioritize interventions
- Estimate impact of changes
- Connect to specific actions
- Track recommendation implementation
Usage
Exit Survey Template
const exitSurvey = {
name: 'Standard Exit Survey',
sections: [
{
title: 'Overall Experience',
questions: [
{
type: 'scale',
text: 'How likely are you to recommend this company as a place to work?',
scale: { min: 0, max: 10 },
isNPS: true
},
{
type: 'multiselect',
text: 'What were your primary reasons for leaving?',
options: [
'Compensation', 'Career advancement', 'Management',
'Work-life balance', 'Company culture', 'Job fit',
'Relocation', 'Personal reasons', 'Other opportunity'
]
}
]
},
{
title: 'Manager Relationship',
questions: [
{
type: 'scale',
text: 'How would you rate your relationship with your direct manager?',
scale: { min: 1, max: 5 }
},
{
type: 'openText',
text: 'What could your manager have done differently?'
}
]
}
]
};
Analysis Configuration
const analysisConfig = {
dateRange: {
start: '2025-01-01',
end: '2026-01-24'
},
segments: [
'department', 'manager', 'tenure', 'level', 'performance'
],
themeAnalysis: {
enabled: true,
minMentions: 5,
categories: [
'compensation', 'management', 'culture', 'growth',
'workload', 'recognition', 'flexibility'
]
},
benchmarks: {
internal: true,
external: 'industry-benchmark'
},
output: {
executiveSummary: true,
departmentReports: true,
trendAnalysis: true,
recommendations: true
}
};
Process Integration
This skill integrates with the following HR processes:
| Process | Integration Points |
|---|---|
| employee-exit-offboarding.js | Exit data collection |
| turnover-analysis.js | Retention strategy input |
| employee-engagement-survey.js | Cross-reference engagement |
Best Practices
- Consistency: Use standardized questions for trending
- Timing: Conduct exit interviews after resignation, before departure
- Multiple Channels: Offer survey and live interview options
- Confidentiality: Aggregate data to protect individuals
- Action Loop: Connect insights to retention actions
- Share Results: Report findings to leadership regularly
Metrics and KPIs
| Metric | Description | Target |
|---|---|---|
| Participation Rate | Exiting employees who complete survey | >80% |
| Regrettable Turnover | High performers leaving | <10% |
| Theme Resolution | Issues addressed after identification | Track |
| Manager Coaching | Managers with exit feedback addressed | 100% |
| Stay Interview Follow-up | Exit insights used proactively | Yes |
Related Skills
- SK-019: Turnover Analytics (predictive analysis)
- SK-020: Engagement Survey (current employee input)
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