Stakeholder Matrix Generator
by a5c-ai
Generate stakeholder analysis matrices and engagement visualizations
Skill Details
Repository Files
1 file in this skill directory
name: stakeholder-matrix-generator description: Generate stakeholder analysis matrices and engagement visualizations allowed-tools:
- Read
- Write
- Glob
- Grep
- Bash metadata: specialization: project-management domain: business category: Stakeholder Management id: SK-008
Stakeholder Matrix Generator
Overview
The Stakeholder Matrix Generator skill creates comprehensive stakeholder analysis visualizations and matrices. It supports multiple analysis frameworks including Power-Interest grids, Mitchell-Agle-Wood Salience diagrams, and RACI matrices to enable effective stakeholder engagement planning.
Capabilities
Analysis Matrices
- Generate Power-Interest grids with quadrant placement
- Create Mitchell-Agle-Wood Salience diagrams (power, legitimacy, urgency)
- Build influence network visualizations
- Generate RACI matrices with validation
- Create stakeholder engagement assessment matrices
Tracking and Assessment
- Track engagement level changes over time
- Calculate stakeholder engagement index
- Monitor current vs. desired engagement levels
- Identify engagement gaps and risks
- Assess stakeholder satisfaction trends
Visualization and Export
- Generate visual stakeholder maps
- Create influence-impact diagrams
- Export to multiple formats (Markdown, CSV, image)
- Produce stakeholder communication matrices
- Build relationship network graphs
Advanced Features
- Model stakeholder coalitions
- Identify potential conflicts and alliances
- Calculate influence pathways
- Support multi-project stakeholder views
- Track stakeholder sentiment
Usage
Input Requirements
- Stakeholder identification list
- Assessment criteria (power, interest, influence, etc.)
- Current and desired engagement levels
- RACI role definitions (for RACI matrix)
- Optional: Historical engagement data
Output Deliverables
- Power-Interest grid visualization
- Salience diagram
- RACI matrix (validated)
- Engagement assessment matrix
- Stakeholder engagement index
Example Use Cases
- Project Initiation: Identify and analyze stakeholders
- Engagement Planning: Develop stakeholder strategies
- RACI Development: Define roles and responsibilities
- Stakeholder Review: Update engagement assessments
Process Integration
This skill integrates with the following processes:
- Stakeholder Analysis and Engagement Planning
- Status Reporting and Communication Management
- Team Formation and Development
- Change Control Management
Dependencies
- Visualization libraries
- Matrix templates
- Graph layout algorithms
- Export format converters
Related Skills
- SK-017: Project Charter Generator
- SK-012: Change Request Analyzer
- SK-018: Lessons Learned Repository
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