Agent Skills: Turnover Analytics Skill

Analyze turnover patterns and develop retention strategies with predictive modeling

HR AnalyticsID: a5c-ai/babysitter/turnover-analytics

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plugins/babysitter/skills/babysit/process/specializations/domains/business/human-resources/skills/turnover-analytics/SKILL.md

Skill Metadata

Name
turnover-analytics
Description
Analyze turnover patterns and develop retention strategies with predictive modeling

Turnover Analytics Skill

Overview

The Turnover Analytics skill provides capabilities for analyzing turnover patterns, building predictive models, and developing data-driven retention strategies. This skill enables comprehensive turnover understanding and proactive intervention.

Capabilities

Turnover Calculation

  • Calculate turnover rates by segment
  • Differentiate voluntary vs. involuntary
  • Track regrettable vs. non-regrettable
  • Compute annualized rates
  • Compare to benchmarks

Survival Analysis

  • Perform survival analysis on tenure
  • Build tenure curves by segment
  • Identify critical tenure periods
  • Calculate hazard rates
  • Compare cohort survival

Predictive Modeling

  • Build turnover prediction models
  • Identify risk factors
  • Calculate flight risk scores
  • Validate model accuracy
  • Update models with new data

Risk Identification

  • Identify high-risk employees and teams
  • Flag at-risk talent segments
  • Monitor risk score changes
  • Alert managers proactively
  • Track intervention effectiveness

Cost Analysis

  • Analyze turnover cost impacts
  • Calculate replacement costs
  • Estimate productivity loss
  • Model cost avoidance
  • Support business case

Intervention Design

  • Generate retention intervention recommendations
  • Prioritize interventions by impact
  • Design targeted programs
  • Track retention program effectiveness
  • Measure ROI of retention

Usage

Turnover Analysis

const turnoverAnalysis = {
  period: {
    start: '2025-01-01',
    end: '2026-01-01'
  },
  segments: [
    'department', 'location', 'level', 'tenure-band',
    'performance-rating', 'manager', 'age-group'
  ],
  metrics: [
    'overall-turnover',
    'voluntary-turnover',
    'regrettable-turnover',
    'first-year-turnover'
  ],
  benchmarks: {
    industry: 'technology',
    internal: 'prior-year'
  },
  analysis: {
    survivalCurves: true,
    rootCauses: true,
    costImpact: true
  }
};

Predictive Model

const flightRiskModel = {
  target: 'voluntary-termination',
  predictionWindow: 6,
  features: [
    'tenure-months',
    'time-since-promotion',
    'time-since-raise',
    'performance-trend',
    'manager-tenure',
    'commute-distance',
    'market-demand-score',
    'engagement-score',
    'training-hours'
  ],
  model: {
    type: 'logistic-regression',
    crossValidation: 5,
    threshold: 0.7
  },
  output: {
    employeeScores: true,
    riskSegments: ['high', 'medium', 'low'],
    managerAlerts: true
  }
};

Process Integration

This skill integrates with the following HR processes:

| Process | Integration Points | |---------|-------------------| | turnover-analysis-retention.js | Full analysis workflow | | workforce-planning.js | Attrition forecasting | | employee-engagement-survey.js | Engagement correlation |

Best Practices

  1. Root Cause Focus: Understand why, not just what
  2. Segment Deeply: Aggregate metrics hide important patterns
  3. Proactive Action: Act on predictions before resignations
  4. Manager Enablement: Equip managers with actionable insights
  5. Privacy Respect: Handle individual scores carefully
  6. Continuous Learning: Update models with new data

Metrics and KPIs

| Metric | Description | Target | |--------|-------------|--------| | Overall Turnover | Annual turnover rate | Below industry benchmark | | Regrettable Turnover | High performer departures | <10% | | First-Year Turnover | New hires leaving in year 1 | <15% | | Model Accuracy | Prediction accuracy (AUC) | >0.75 | | Intervention Success | Retention rate of intervened employees | +20% vs. control |

Related Skills

  • SK-017: Exit Analysis (departure reasons)
  • SK-020: Engagement Survey (engagement link)
  • SK-018: Workforce Planning (attrition forecasts)