AI-Capacity Class Implementation
Overview
This document outlines the implementation of AI-capacity classes throughout the SELF Chain system, replacing the legacy Mini* classes with more AI-focused counterparts.
Core Components
1. AI-Capacity Classes
- AIData: Replaces MiniData for AI-focused data representation
- AICapacityNumber: Replaces MiniNumber for AI-capacity focused numeric calculations
2. System Components Updated
Governance System
- GovernanceContract: Manages stake and proposal operations using AICapacityNumber
- GovernanceProposal: Handles proposal creation and voting using AICapacityNumber
- ProposalEvaluator: Evaluates proposals using AI metrics with AICapacityNumber
- MLModel: Predicts proposal success using AI-capacity metrics
- PointBasedVoting: Manages point-based voting operations with AICapacityNumber
- Proposal: Manages proposal lifecycle with AICapacityNumber
Proposal Features
- AICapacityNumber-based vote tracking
- AICapacityNumber-based scoring system
- Parameter management
- Status tracking
- Timestamp support
- String formatting support
- Integration with governance system
Governance Contract Features
- Stake Management:
- Stake operations using AICapacityNumber
- Precise stake calculations
- Stake distribution tracking
- Total stake tracking
- Proposal Management:
- Proposal creation with AICapacityNumber thresholds
- Voting with stake-weighted AICapacityNumber
- Approval percentage calculations
- Active proposal tracking
- Integration:
- Cloud node registry integration
- SelfLogger integration
- Parameter threshold integration
Point-Based Voting System
- Voting Power Calculation: Uses AICapacityNumber for precise calculations
- Reputation Bonus: Uses AICapacityNumber for reputation-based bonuses
- Proposal Points: Tracks proposal points using AICapacityNumber
- Approval Threshold: Uses AICapacityNumber for threshold calculations
- User Votes Tracking: Uses AIData for user and proposal IDs
- Vote Recording: Uses AICapacityNumber for vote weights
Vote Features
- AICapacityNumber-based vote value
- AIData-based ID tracking (vote, proposal, validator)
- Vote reason tracking
- Timestamp support
- String formatting support
- Integration with governance system
Reward System
- RewardMetrics: Tracks reward distributions and validations
- RewardDistribution: Manages reward amount calculations
- RewardValidation: Handles validation scoring
- RewardMonitor: Monitors system metrics
- CloudNodeManager: Manages cloud node resources and rewards
Cloud Node Management Features
- AICapacityNumber-based resource allocation
- AICapacityNumber-based reputation tracking
- AICapacityNumber-based uptime tracking
- Node participation tracking
- Resource allocation validation
- Reputation score validation
- Uptime validation
- Reward calculation support
- Integration with AI validator system
Node Participation
- NodeParticipation: Manages node metrics and rewards
- CloudNodeManager: Handles cloud node operations
- CloudNodeRegistry: Manages node registration
3. Key Changes
Type System
- Replaced
MiniData
withAIData
for all identifier types - Replaced
MiniNumber
withAICapacityNumber
for all numeric calculations - Updated all arithmetic operations to use AICapacityNumber methods
- Updated comparison operations to use AICapacityNumber
Data Structures
- Updated stake maps to use AICapacityNumber
- Updated proposal metrics to use AICapacityNumber
- Updated reward distributions to use AICapacityNumber
- Updated validation scores to use AICapacityNumber
4. Benefits
-
Type Safety
- More explicit type usage across the system
- Better reflection of AI-capacity focused functionality
- Reduced risk of type-related errors
-
Precision
- Enhanced precision in stake and reward calculations
- Better handling of floating-point operations
- Improved arithmetic operations
-
Integration
- Better integration with AI validator system
- Improved compatibility with ML models
- Enhanced resource efficiency tracking
5. Implementation Details
AI Validator Features
- Hex-based color validation system
- Stake-weighted voting
- Random validator selection
- Efficiency-based bonus points
- Reputation-based validation
ML Evaluation Features
- Feature-based scoring:
- Stake-based scoring
- Reputation scoring using AICapacityNumber
- Resource efficiency
- Network impact
- Consensus score
- Self-learning capabilities
- Resource efficiency tracking
Reputation Update Features
- AICapacityNumber-based reputation calculations
- Precise reputation changes
- Validator reputation tracking
- Timestamped updates
- String formatting support
- Integration with AI validator system
AICapacityNumber Usage
// Example usage:
AICapacityNumber stake = new AICapacityNumber(1000);
AICapacityNumber resources = new AICapacityNumber(500);
AICapacityNumber total = stake.add(resources);
AIData Usage
// Example usage:
AIData nodeId = new AIData("node_123");
AIData proposalId = new AIData("proposal_456");
6. Migration Path
-
Phase 1: Core Components
- Governance Contract
- Reward System
- Node Participation
-
Phase 2: AI Components
- ML Model
- Proposal Evaluator
- Validator System
-
Phase 3: Integration Components
- Cloud Node System
- Bridge Services
- Monitoring System
7. Testing Strategy
-
Unit Tests
- Verify arithmetic operations
- Test comparison operations
- Validate type conversions
-
Integration Tests
- Test stake management
- Verify reward calculations
- Validate proposal evaluation
-
System Tests
- Test full governance flow
- Validate reward distribution
- Verify node participation