funnel-analysis
4
总安装量
4
周安装量
#51332
全站排名
安装命令
npx skills add https://github.com/manojbajaj95/gtm-skills --skill funnel-analysis
Agent 安装分布
gemini-cli
4
claude-code
4
codex
4
opencode
4
antigravity
3
github-copilot
3
Skill 文档
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 â 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)
2. 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
3. Output Deliverables
- Funnel visualization charts
- Conversion rate tables
- Segmented analysis reports
- Optimization recommendations
Example Usage Scenarios
E-commerce Purchase Funnel
# Steps: Promotion â Search â Product View â Add to Cart â Purchase
# Analyze by device type and customer segment
User Registration Funnel
# Steps: Landing Page â Sign Up â Email Verification â Profile Complete
# Identify where users drop off most
Content Consumption Funnel
# Steps: Article View â Comment â Share â 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 analysissegmented_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