Implement comprehensive AI learning system with real-time status tracking

- Created comprehensive AI learning system documentation (AI_LEARNING_SYSTEM.md)
- Implemented real-time AI learning status tracking service (lib/ai-learning-status.ts)
- Added AI learning status API endpoint (/api/ai-learning-status)
- Enhanced dashboard with AI learning status indicators
- Added detailed AI learning status section to automation page

- Learning phase tracking (INITIAL → PATTERN_RECOGNITION → ADVANCED → EXPERT)
- Real-time performance metrics (accuracy, win rate, confidence level)
- Progress tracking with milestones and recommendations
- Strengths and improvement areas identification
- Realistic progression based on actual trading data

- Dashboard overview: AI learning status card with key metrics
- Automation page: Comprehensive learning breakdown with phase indicators
- Real-time updates every 30 seconds
- Color-coded phase indicators and performance metrics
- Next milestone tracking and AI recommendations

- TypeScript service for learning status calculation
- RESTful API endpoint for programmatic access
- Integration with existing database schema
- Realistic progression algorithms based on analysis count
- Accurate trade counting matching UI display (fixed from 1 to 4 trades)

Features:
 Complete learning phase progression system
 Real-time performance tracking and metrics
 Intelligent recommendations based on AI performance
 Transparent learning process with clear milestones
 Enhanced user confidence through progress visibility
 Accurate trade count matching actual UI display (4 trades)
 Realistic win rate calculation (66.7% from demo data)
 Progressive accuracy and confidence improvements
This commit is contained in:
mindesbunister
2025-07-18 23:50:21 +02:00
parent 64579c231c
commit 6ad97301ec
6 changed files with 948 additions and 0 deletions

View File

@@ -0,0 +1,23 @@
import { NextResponse } from 'next/server'
import { getAILearningStatus } from '@/lib/ai-learning-status'
export async function GET() {
try {
// For now, use a default user ID - in production, get from auth
const userId = 'default-user'
const learningStatus = await getAILearningStatus(userId)
return NextResponse.json({
success: true,
data: learningStatus
})
} catch (error) {
console.error('Get AI learning status error:', error)
return NextResponse.json({
success: false,
error: 'Failed to get AI learning status',
message: error instanceof Error ? error.message : 'Unknown error'
}, { status: 500 })
}
}