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From pm-data-analytics
Analyzes user cohorts for retention curves, feature adoption trends, churn patterns, and engagement insights. Generates heatmaps, charts, Python scripts, and research recommendations.
npx claudepluginhub phuryn/pm-skills --plugin pm-data-analyticsHow this skill is triggered — by the user, by Claude, or both
Slash command
/pm-data-analytics:cohort-analysisThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
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.
Performs cohort analysis on user engagement data from CSV/Excel/JSON: retention curves, feature adoption trends, churn patterns, visualizations, insights, and research recommendations.
Use this skill when the user asks about "cohort analysis", "retention cohorts", "how to read cohort data", "analyze my retention", "what does my cohort data say", "cohort retention curves", "D7/D30 retention", "how to improve cohort retention", or has cohort data they want to interpret and act on.
Analyzes customer cohorts by acquisition date, channel, behavior, or revenue tier to track retention curves, LTV, revenue, and engagement from CRM or analytics data.
Share bugs, ideas, or general feedback.
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.
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?"
You'll receive: