--- name: cohort-analysis description: "Perform cohort analysis on user engagement data — retention curves, feature adoption trends, and segment-level insights. Use when analyzing user retention by cohort, studying feature adoption over time, investigating churn patterns, or identifying engagement trends." --- # Cohort Analysis & Retention Explorer ## Purpose Analyze user engagement and retention patterns by cohort to identify trends in user behavior, feature adoption, and long-term engagement. Combine quantitative insights with qualitative research recommendations. ## How It Works ### Step 1: Read and Validate Your Data - Accept CSV, Excel, or JSON data files with user cohort information - Verify data structure: cohort identifier, time periods, engagement metrics - Check for missing values and data quality issues - Summarize key statistics (cohort sizes, date ranges, metrics available) ### Step 2: Generate Quantitative Analysis - Calculate cohort retention rates and engagement trends - Identify retention curves, drop-off patterns, and anomalies - Compute feature adoption rates across cohorts - Calculate month-over-month or period-over-period changes - Generate Python analysis scripts using pandas and numpy if requested ### Step 3: Create Visualizations - Generate retention heatmaps (cohorts vs. time periods) - Create line charts showing cohort progression - Build comparison charts for feature adoption - Visualize drop-off points and engagement trends - Output as interactive charts or static images ### Step 4: Identify Insights & Patterns - Spot one or more significant patterns: - Early churn in specific cohorts - Late-stage engagement changes - Feature adoption clusters - Seasonal or temporal trends - Highlight surprising findings and deviations - Compare cohort performance to establish baselines ### Step 5: Suggest Follow-Up Research - Recommend qualitative research methods: - Targeted user interviews with churning users - Feature usage surveys with engaged cohorts - Session replays of key interaction patterns - Win/loss analysis for high vs. low retention cohorts - Design follow-up quantitative studies - Suggest A/B tests or feature experiments ## Usage Examples **Example 1: Upload CSV Data** ``` Upload cohort_engagement.csv with columns: cohort_month, weeks_active, user_id, feature_x_usage, engagement_score Request: "Analyze retention patterns and identify why Q4 2025 cohorts underperform compared to Q3" ``` **Example 2: Describe Data Format** ``` "I have monthly user cohorts from Jan-Dec 2025. Each row shows: cohort date, user ID, purchase frequency, and support tickets. Analyze which cohorts show best long-term retention." ``` **Example 3: Feature Adoption Analysis** ``` Upload feature_usage.xlsx with cohort adoption data. Request: "Compare adoption curves for our new feature across cohorts. Which cohorts adopted fastest? Any patterns?" ``` ## Key Capabilities - **Data Reading**: Import CSV, Excel, JSON, SQL query results - **Retention Analysis**: Calculate and visualize retention rates over time - **Cohort Comparison**: Compare metrics across cohort groups - **Anomaly Detection**: Flag unusual patterns or drop-offs - **Python Scripts**: Generate reusable analysis code for ongoing analysis - **Visualizations**: Create heatmaps, charts, and interactive dashboards - **Research Design**: Suggest targeted follow-up studies and interview approaches - **Statistical Summary**: Provide quantitative metrics and correlation analysis ## Tips for Best Results 1. **Include time dimension**: Provide data across multiple time periods 2. **Define cohort clearly**: Make cohort grouping explicit (signup month, feature launch date, etc.) 3. **Provide context**: Explain product changes, launches, or events during the period 4. **Multiple metrics**: Include retention, engagement, feature usage, revenue, etc. 5. **Sufficient data**: At least 3-4 cohorts for meaningful pattern identification 6. **Request specific output**: Ask for visualizations, Python scripts, or research recommendations ## Output Format You'll receive: - **Data Summary**: Cohort overview and data quality assessment - **Quantitative Findings**: Key metrics, retention rates, and trend analysis - **Visualizations**: Charts showing retention curves, adoption patterns - **Pattern Identification**: 2-3 significant insights from the data - **Research Recommendations**: Specific qualitative and quantitative follow-ups - **Analysis Scripts** (if requested): Python code for reproducible analysis - **Next Steps**: Prioritized actions based on findings --- ### Further Reading - [Cohort Analysis 101: How to Reduce Churn and Make Better Product Decisions](https://www.productcompass.pm/p/cohort-analysis) - [The Product Analytics Playbook: AARRR, HEART, Cohorts & Funnels for PMs](https://www.productcompass.pm/p/the-product-analytics-playbook-aarrr) - [Are You Tracking the Right Metrics?](https://www.productcompass.pm/p/are-you-tracking-the-right-metrics)