funnel-analysis

Funnel Analysis Skill

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Install skill "funnel-analysis" with this command: npx skills add manojbajaj95/gtm-skills/manojbajaj95-gtm-skills-funnel-analysis

Funnel Analysis Skill

Analyze user behavior through multi-step conversion funnels to identify bottlenecks and optimization opportunities in marketing campaigns, user journeys, and business processes.

Quick Start

This skill helps you:

  • Build conversion funnels from multi-step user data

  • Calculate conversion rates between each step

  • Perform segmentation analysis by different user attributes

  • Create interactive visualizations with Plotly

  • Generate business insights and optimization recommendations

When to Use

  • Marketing campaign analysis (promotion → purchase)

  • User onboarding flow analysis

  • Website conversion funnel optimization

  • App user journey analysis

  • Sales pipeline analysis

  • Lead nurturing process analysis

Key Requirements

Install required packages:

pip install pandas plotly matplotlib numpy seaborn

Core Workflow

  1. Data Preparation

Your data should include:

  • User journey steps (clicks, page views, actions)

  • User identifiers (customer_id, user_id, etc.)

  • Timestamps or step indicators

  • Optional: user attributes for segmentation (gender, device, location)

  1. Analysis Process
  • Load and merge user journey data

  • Define funnel steps and calculate metrics

  • Perform segmentations (by device, gender, etc.)

  • Create visualizations

  • Generate insights and recommendations

  1. Output Deliverables
  • Funnel visualization charts

  • Conversion rate tables

  • Segmented analysis reports

  • Optimization recommendations

Example Usage Scenarios

E-commerce Purchase Funnel

Steps: Promotion → Search → Product View → Add to Cart → Purchase

Analyze by device type and customer segment

User Registration Funnel

Steps: Landing Page → Sign Up → Email Verification → Profile Complete

Identify where users drop off most

Content Consumption Funnel

Steps: Article View → Comment → Share → Subscribe

Measure engagement conversion rates

Common Analysis Patterns

  • Bottleneck Identification: Find steps with highest drop-off rates

  • Segment Comparison: Compare conversion across user groups

  • Temporal Analysis: Track conversion over time

  • A/B Testing: Compare different funnel variations

  • Optimization Impact: Measure changes before/after improvements

Integration Examples

See examples/ directory for:

  • basic_funnel.py

  • Simple funnel analysis

  • segmented_funnel.py

  • Advanced segmentation analysis

  • Sample datasets for testing

Best Practices

  • Ensure data quality and consistency

  • Define clear funnel steps

  • Consider user journey time windows

  • Validate statistical significance

  • Focus on actionable insights

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