Dimensions Scoring
by frostaura
Life dimensions system, scoring algorithms, and dimension management. Use when working with the 8 life dimensions, dimension scores, weights, or formulas.
Skill Details
name: dimensions-scoring description: Life dimensions system, scoring algorithms, and dimension management. Use when working with the 8 life dimensions, dimension scores, weights, or formulas.
Dimensions & Scoring Skill
Overview
LifeOS tracks life across 8 configurable dimensions, each with a score (0-100), color, weight, and goal formulas.
Core Requirements
The 8 Life Dimensions
| Code | Name |
|---|---|
| health_recovery | Health & Recovery |
| relationships | Relationships |
| work_contribution | Work & Contribution |
| play_adventure | Play & Adventure |
| asset_care | Asset Care |
| create_craft | Create & Craft |
| growth_mind | Growth & Mind |
| community_meaning | Community & Meaning |
Dimension Properties
- Code/Name/Description: Identity
- Color: Hex color for visualization
- Weight: Importance (0-100, default 50)
- Score: Current score (0-100, calculated)
- IsEnabled: Active or disabled
LifeOS Score Calculation
LifeOS Score = Σ(Dimension Score × Weight) / Σ(Weights)
Dimension Score Components
- Metric adherence to targets (40%)
- Task completion rate (30%)
- Milestone progress (20%)
- Streak bonus (10%)
Goal Formulas
Custom formulas define scoring:
formula: "(sleep_hours >= 7 ? 20 : 0) + (steps >= 8000 ? 20 : 0)"
API Endpoints
| Method | Endpoint | Purpose |
|---|---|---|
| GET | /api/dimensions | List all dimensions |
| GET | /api/dimensions/{code} | Detail with metrics, tasks |
| PUT | /api/dimensions/{code} | Update (color, weight) |
| GET | /api/scores | Dimension scores by period |
User Flows
View Dimensions
- Navigate to
/dimensions - See all 8 dimensions with scores
- Click card for detail
View Detail
- Navigate to
/dimensions/{code} - See score breakdown
- View linked metrics, tasks, milestones
Customize
- Enter config mode
- Change color (picker)
- Adjust weight (slider)
- Auto-saves
LifeOS Score Rings
- 8 concentric rings (one per dimension)
- Percentage fill (0-100%)
- Center shows aggregate score
Testing (Playwright MCP)
- Verify all 8 dimensions display
- Test dimension detail page
- Test color picker
- Verify score calculations
Design Doc References
- Architecture:
.gaia/designs/architecture.md- Dimension system - Frontend:
.gaia/designs/frontend.md- Dimension UI
When to Invoke
Use when: dimensions, scoring algorithms, formulas, dimension-metric links, weights, customization.
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