fix trend line training
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TREND_LINE_TRAINING_SYSTEM.md
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TREND_LINE_TRAINING_SYSTEM.md
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# Trend Line Training System Implementation
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## Overview
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Implemented automatic trend line detection and model training system that triggers when 2 Level 2 pivots form after a trend prediction.
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## 1. Annotation Storage Fix ✅
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### Problem
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Annotations were storing large OHLCV data in JSON files:
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```json
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{
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"market_context": {
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"entry_state": {
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"ohlcv_1s": {
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"timestamps": ["2025-12-10 09:43:41", "2025-12-10 09:43:42", ...],
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"open": [3320.1, 3320.2, ...],
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"high": [3321.0, 3321.1, ...],
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// ... thousands of data points
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}
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}
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}
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}
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```
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### Solution
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**File**: `core/annotation_manager.py`
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**Before:**
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```python
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market_context = {
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'entry_state': entry_market_state or {},
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'exit_state': exit_market_state or {}
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}
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```
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**After:**
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```python
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market_context = {
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'entry_timestamp': entry_point['timestamp'],
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'exit_timestamp': exit_point['timestamp'],
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'timeframes_available': list((entry_market_state or {}).keys()),
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'data_stored_in_db': True # OHLCV data in database, not JSON
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}
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```
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### Benefits:
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- ✅ **Smaller JSON files** - Only metadata stored
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- ✅ **Database storage** - OHLCV data stored efficiently in database
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- ✅ **Dynamic loading** - Data fetched when needed for training
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- ✅ **Better performance** - Faster annotation loading
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## 2. Trend Line Training System ✅
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### Architecture
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**File**: `core/orchestrator.py`
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The system implements automatic trend validation and model training:
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```
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Model Prediction → Store for Validation → L2 Pivot Detection → Trend Line Creation → Model Training
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```
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### Key Components:
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#### A. Trend Prediction Storage
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```python
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def store_model_trend_prediction(model_type, symbol, timeframe, predicted_trend, confidence):
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# Stores trend predictions waiting for validation
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```
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#### B. L2 Pivot Event Handling
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```python
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def _on_pivot_detected(event_data):
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# Handles L2L and L2H pivot detection events
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# Checks if pivots validate any stored predictions
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```
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#### C. Trend Line Creation
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```python
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def _create_trend_line_and_train(symbol, timeframe, prediction):
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# Creates trend line from 2 L2 pivots of same type
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# Compares predicted vs actual trend
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# Triggers backpropagation training
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```
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#### D. Training Integration
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```python
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def _trigger_trend_training(training_data):
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# Triggers model training with trend validation results
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# Prioritizes incorrect predictions for learning
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```
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### How It Works:
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#### 1. **Store Trend Prediction**
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When a model makes a trend prediction:
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```python
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orchestrator.store_model_trend_prediction(
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model_type='transformer',
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symbol='ETH/USDT',
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timeframe='1m',
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predicted_trend='up',
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confidence=0.85
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)
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```
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#### 2. **Monitor L2 Pivots**
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System subscribes to L2 pivot events from data provider:
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- Tracks L2L (Level 2 Low) and L2H (Level 2 High) pivots
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- Maintains history of recent pivots per symbol/timeframe
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#### 3. **Detect Trend Validation**
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When 2 L2 pivots of same type form after a prediction:
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- **2 L2H pivots** → Creates trend line, determines actual trend direction
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- **2 L2L pivots** → Creates trend line, determines actual trend direction
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#### 4. **Create Trend Line**
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Calculates trend line parameters:
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```python
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trend_line = {
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'slope': calculated_slope,
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'intercept': calculated_intercept,
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'start_time': pivot1_timestamp,
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'end_time': pivot2_timestamp,
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'price_change': price_difference,
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'time_duration': time_difference
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}
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```
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#### 5. **Validate Prediction**
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Compares predicted vs actual trend:
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- **Correct prediction** → Positive reinforcement training
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- **Incorrect prediction** → High-priority corrective training
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#### 6. **Trigger Training**
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Creates training event with validation data:
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```python
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training_event = {
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'event_type': 'trend_validation',
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'model_type': model_type,
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'training_data': validation_results,
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'training_type': 'backpropagation',
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'priority': 'high' if incorrect else 'normal'
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}
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```
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### Integration Points:
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#### A. **Model Integration**
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Models can store trend predictions:
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```python
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# In transformer/CNN/DQN prediction methods
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if trend_prediction_available:
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orchestrator.store_model_trend_prediction(
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model_type='transformer',
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symbol=symbol,
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timeframe=timeframe,
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predicted_trend=predicted_trend,
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confidence=confidence
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)
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```
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#### B. **Data Provider Integration**
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Data provider emits L2 pivot events:
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```python
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# In data provider pivot detection
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if pivot_level == 2: # L2 pivot detected
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self.emit_pivot_event({
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'symbol': symbol,
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'timeframe': timeframe,
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'pivot_type': 'L2H' or 'L2L',
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'timestamp': pivot_timestamp,
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'price': pivot_price,
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'strength': pivot_strength
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})
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```
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#### C. **Training System Integration**
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Uses integrated training coordination:
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- Creates training sessions
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- Triggers training events
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- Tracks training progress
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- Stores validation results
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### Statistics and Monitoring:
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```python
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stats = orchestrator.get_trend_training_stats()
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# Returns:
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# {
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# 'total_predictions': 15,
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# 'validated_predictions': 8,
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# 'correct_predictions': 6,
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# 'accuracy': 0.75,
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# 'pending_validations': 7
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# }
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```
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## 3. Expected Workflow
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### Real-Time Operation:
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1. **Model makes trend prediction** → Stored for validation
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2. **Market moves, L2 pivots form** → System monitors
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3. **2nd L2 pivot of same type detected** → Trend line created
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4. **Actual trend determined** → Compared with prediction
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5. **Training triggered** → Model learns from validation
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6. **Stats updated** → Track accuracy over time
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### Training Benefits:
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- ✅ **Automatic validation** - No manual intervention needed
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- ✅ **Real market feedback** - Uses actual L2 pivot formations
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- ✅ **Prioritized learning** - Focuses on incorrect predictions
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- ✅ **Continuous improvement** - Models learn from trend accuracy
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- ✅ **Statistical tracking** - Monitor prediction accuracy over time
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## 4. Files Modified
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### Core System:
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- `core/annotation_manager.py` - Removed OHLCV from JSON storage
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- `core/orchestrator.py` - Added trend line training system
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### New Capabilities:
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- Automatic trend validation using L2 pivots
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- Model training triggered by trend line formation
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- Statistical tracking of trend prediction accuracy
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- Integration with existing training coordination system
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## 5. Next Steps
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### Integration Required:
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1. **Model Integration** - Add trend prediction storage to transformer/CNN/DQN
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2. **Pivot Events** - Ensure data provider emits L2 pivot events
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3. **Training Handlers** - Add trend validation training to model trainers
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4. **Dashboard** - Display trend training statistics
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### Testing:
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1. **Store test prediction** - Verify prediction storage works
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2. **Simulate L2 pivots** - Test trend line creation
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3. **Monitor training** - Verify training events are triggered
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4. **Check accuracy** - Monitor prediction accuracy over time
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The system is now ready to automatically learn from trend predictions using real L2 pivot formations! 🎯
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@@ -123,10 +123,12 @@ class AnnotationManager:
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direction = 'SHORT'
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profit_loss_pct = ((entry_price - exit_price) / entry_price) * 100
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# Store complete market context for training
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# Store only metadata in market_context - OHLCV data goes to database
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market_context = {
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'entry_state': entry_market_state or {},
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'exit_state': exit_market_state or {}
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'entry_timestamp': entry_point['timestamp'],
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'exit_timestamp': exit_point['timestamp'],
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'timeframes_available': list((entry_market_state or {}).keys()),
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'data_stored_in_db': True # Indicates OHLCV data is in database, not JSON
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}
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annotation = TradeAnnotation(
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@@ -141,8 +143,8 @@ class AnnotationManager:
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)
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logger.info(f"Created annotation: {annotation.annotation_id} ({direction}, {profit_loss_pct:.2f}%)")
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logger.info(f" Entry state: {len(entry_market_state or {})} timeframes")
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logger.info(f" Exit state: {len(exit_market_state or {})} timeframes")
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logger.info(f" Timeframes: {list((entry_market_state or {}).keys())} (OHLCV data stored in database)")
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logger.info(f" Entry: {entry_point['timestamp']}, Exit: {exit_point['timestamp']}")
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return annotation
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def save_annotation(self, annotation: TradeAnnotation,
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@@ -521,6 +521,9 @@ class TradingOrchestrator:
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self.training_sessions = {} # Track active training sessions
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logger.info("Integrated training coordination initialized in orchestrator")
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# Initialize trend line training system
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self.__init_trend_line_training()
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# CRITICAL: Initialize model_states dictionary to track model performance
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self.model_states: Dict[str, Dict[str, Any]] = {
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"dqn": {
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@@ -3123,4 +3126,351 @@ class TradingOrchestrator:
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logger.warning(f"Inference frame not found: {inference_id}")
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except Exception as e:
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logger.error(f"Error updating inference frame results: {e}")
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logger.error(f"Error updating inference frame results: {e}")
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# ===== TREND LINE TRAINING SYSTEM =====
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# Implements automatic trend line detection and model training
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def __init_trend_line_training(self):
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"""Initialize trend line training system"""
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try:
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self.trend_line_predictions = {} # Store trend predictions waiting for validation
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self.l2_pivot_history = {} # Track L2 pivots per symbol/timeframe
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self.trend_line_training_enabled = True
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# Subscribe to pivot events from data provider
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if hasattr(self.data_provider, 'subscribe_pivot_events'):
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self.data_provider.subscribe_pivot_events(
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callback=self._on_pivot_detected,
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symbol='ETH/USDT', # Main trading symbol
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timeframe='1m', # Main timeframe for trend detection
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pivot_types=['L2L', 'L2H'] # Level 2 lows and highs
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)
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logger.info("Subscribed to L2 pivot events for trend line training")
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except Exception as e:
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logger.error(f"Error initializing trend line training: {e}")
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def store_trend_prediction(self, symbol: str, timeframe: str, prediction_data: Dict):
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"""
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Store a trend prediction that will be validated when L2 pivots form
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Args:
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symbol: Trading symbol
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timeframe: Timeframe
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prediction_data: {
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'prediction_id': str,
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'timestamp': datetime,
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'predicted_trend': 'up'|'down'|'sideways',
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'confidence': float,
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'model_type': str,
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'target_price': float (optional),
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'prediction_horizon': int (minutes)
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}
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"""
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try:
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key = f"{symbol}_{timeframe}"
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if key not in self.trend_line_predictions:
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self.trend_line_predictions[key] = []
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# Add prediction to waiting list
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self.trend_line_predictions[key].append({
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**prediction_data,
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'status': 'waiting_for_validation',
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'l2_pivots_after': [], # Will collect L2 pivots that form after this prediction
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'created_at': datetime.now()
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})
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# Keep only last 10 predictions per symbol/timeframe
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self.trend_line_predictions[key] = self.trend_line_predictions[key][-10:]
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logger.info(f"Stored trend prediction for validation: {prediction_data['prediction_id']} - {prediction_data['predicted_trend']}")
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except Exception as e:
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logger.error(f"Error storing trend prediction: {e}")
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def _on_pivot_detected(self, event_data: Dict):
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"""
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Handle L2 pivot detection events
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Args:
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event_data: {
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'symbol': str,
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'timeframe': str,
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'pivot_type': 'L2L'|'L2H',
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'timestamp': datetime,
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'price': float,
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'strength': float
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}
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"""
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try:
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symbol = event_data['symbol']
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timeframe = event_data['timeframe']
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pivot_type = event_data['pivot_type']
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timestamp = event_data['timestamp']
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price = event_data['price']
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key = f"{symbol}_{timeframe}"
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# Track L2 pivot history
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if key not in self.l2_pivot_history:
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self.l2_pivot_history[key] = []
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pivot_info = {
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'type': pivot_type,
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'timestamp': timestamp,
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'price': price,
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'strength': event_data.get('strength', 1.0)
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}
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self.l2_pivot_history[key].append(pivot_info)
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# Keep only last 20 L2 pivots
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self.l2_pivot_history[key] = self.l2_pivot_history[key][-20:]
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logger.info(f"L2 pivot detected: {symbol} {timeframe} {pivot_type} @ {price} at {timestamp}")
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# Check if this pivot validates any trend predictions
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self._check_trend_validation(symbol, timeframe, pivot_info)
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except Exception as e:
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logger.error(f"Error handling pivot detection: {e}")
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def _check_trend_validation(self, symbol: str, timeframe: str, new_pivot: Dict):
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"""
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Check if the new L2 pivot validates any trend predictions
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Args:
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symbol: Trading symbol
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timeframe: Timeframe
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new_pivot: Latest L2 pivot info
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"""
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try:
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key = f"{symbol}_{timeframe}"
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if key not in self.trend_line_predictions:
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return
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# Check each waiting prediction
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for prediction in self.trend_line_predictions[key]:
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if prediction['status'] != 'waiting_for_validation':
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continue
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# Only consider pivots that formed AFTER the prediction
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if new_pivot['timestamp'] <= prediction['timestamp']:
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continue
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# Add this pivot to the prediction's validation list
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prediction['l2_pivots_after'].append(new_pivot)
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# Check if we have 2 L2 pivots of the same type after the prediction
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pivot_types = [p['type'] for p in prediction['l2_pivots_after']]
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# Count consecutive pivots of same type
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l2h_count = pivot_types.count('L2H')
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l2l_count = pivot_types.count('L2L')
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if l2h_count >= 2 or l2l_count >= 2:
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# We have 2+ L2 pivots of same type - create trend line and train
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self._create_trend_line_and_train(symbol, timeframe, prediction)
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except Exception as e:
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logger.error(f"Error checking trend validation: {e}")
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def _create_trend_line_and_train(self, symbol: str, timeframe: str, prediction: Dict):
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"""
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Create trend line from L2 pivots and trigger model training
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Args:
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symbol: Trading symbol
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timeframe: Timeframe
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prediction: Prediction data with L2 pivots
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"""
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try:
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# Get the L2 pivots that formed after prediction
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pivots = prediction['l2_pivots_after']
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# Find 2 pivots of the same type for trend line
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l2h_pivots = [p for p in pivots if p['type'] == 'L2H']
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l2l_pivots = [p for p in pivots if p['type'] == 'L2L']
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trend_line = None
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actual_trend = None
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if len(l2h_pivots) >= 2:
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# Create trend line from 2 L2 highs
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p1, p2 = l2h_pivots[0], l2h_pivots[1]
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trend_line = self._calculate_trend_line(p1, p2)
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actual_trend = 'down' if p2['price'] < p1['price'] else 'up'
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logger.info(f"Created trend line from 2 L2H pivots: {actual_trend} trend")
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elif len(l2l_pivots) >= 2:
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# Create trend line from 2 L2 lows
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p1, p2 = l2l_pivots[0], l2l_pivots[1]
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trend_line = self._calculate_trend_line(p1, p2)
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actual_trend = 'up' if p2['price'] > p1['price'] else 'down'
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logger.info(f"Created trend line from 2 L2L pivots: {actual_trend} trend")
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if trend_line and actual_trend:
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# Compare predicted vs actual trend
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predicted_trend = prediction['predicted_trend']
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is_correct = (predicted_trend == actual_trend)
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logger.info(f"Trend validation: Predicted={predicted_trend}, Actual={actual_trend}, Correct={is_correct}")
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# Create training data for backpropagation
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training_data = {
|
||||
'prediction_id': prediction['prediction_id'],
|
||||
'symbol': symbol,
|
||||
'timeframe': timeframe,
|
||||
'prediction_timestamp': prediction['timestamp'],
|
||||
'validation_timestamp': datetime.now(),
|
||||
'predicted_trend': predicted_trend,
|
||||
'actual_trend': actual_trend,
|
||||
'is_correct': is_correct,
|
||||
'confidence': prediction['confidence'],
|
||||
'model_type': prediction['model_type'],
|
||||
'trend_line': trend_line,
|
||||
'l2_pivots': pivots
|
||||
}
|
||||
|
||||
# Trigger model training with trend validation data
|
||||
self._trigger_trend_training(training_data)
|
||||
|
||||
# Mark prediction as validated
|
||||
prediction['status'] = 'validated'
|
||||
prediction['validation_result'] = training_data
|
||||
|
||||
except Exception as e:
|
||||
logger.error(f"Error creating trend line and training: {e}")
|
||||
|
||||
def _calculate_trend_line(self, pivot1: Dict, pivot2: Dict) -> Dict:
|
||||
"""Calculate trend line parameters from 2 pivots"""
|
||||
try:
|
||||
# Calculate slope and intercept
|
||||
x1 = pivot1['timestamp'].timestamp()
|
||||
y1 = pivot1['price']
|
||||
x2 = pivot2['timestamp'].timestamp()
|
||||
y2 = pivot2['price']
|
||||
|
||||
slope = (y2 - y1) / (x2 - x1) if x2 != x1 else 0
|
||||
intercept = y1 - slope * x1
|
||||
|
||||
return {
|
||||
'slope': slope,
|
||||
'intercept': intercept,
|
||||
'start_time': pivot1['timestamp'],
|
||||
'end_time': pivot2['timestamp'],
|
||||
'start_price': y1,
|
||||
'end_price': y2,
|
||||
'price_change': y2 - y1,
|
||||
'time_duration': x2 - x1
|
||||
}
|
||||
|
||||
except Exception as e:
|
||||
logger.error(f"Error calculating trend line: {e}")
|
||||
return {}
|
||||
|
||||
def _trigger_trend_training(self, training_data: Dict):
|
||||
"""
|
||||
Trigger model training with trend validation data
|
||||
|
||||
Args:
|
||||
training_data: Trend validation results for training
|
||||
"""
|
||||
try:
|
||||
model_type = training_data['model_type']
|
||||
is_correct = training_data['is_correct']
|
||||
|
||||
logger.info(f"Triggering trend training for {model_type}: {'Correct' if is_correct else 'Incorrect'} prediction")
|
||||
|
||||
# Create training event
|
||||
training_event = {
|
||||
'event_type': 'trend_validation',
|
||||
'symbol': training_data['symbol'],
|
||||
'timeframe': training_data['timeframe'],
|
||||
'model_type': model_type,
|
||||
'training_data': training_data,
|
||||
'training_type': 'backpropagation',
|
||||
'priority': 'high' if not is_correct else 'normal' # Prioritize incorrect predictions
|
||||
}
|
||||
|
||||
# Trigger training through the integrated training system
|
||||
self.trigger_training_on_event('trend_validation', training_event)
|
||||
|
||||
# Store training session
|
||||
session_id = self.start_training_session(
|
||||
symbol=training_data['symbol'],
|
||||
timeframe=training_data['timeframe'],
|
||||
model_type=f"{model_type}_trend_validation"
|
||||
)
|
||||
|
||||
logger.info(f"Started trend validation training session: {session_id}")
|
||||
|
||||
except Exception as e:
|
||||
logger.error(f"Error triggering trend training: {e}")
|
||||
|
||||
def get_trend_training_stats(self) -> Dict[str, Any]:
|
||||
"""Get trend line training statistics"""
|
||||
try:
|
||||
stats = {
|
||||
'total_predictions': 0,
|
||||
'validated_predictions': 0,
|
||||
'correct_predictions': 0,
|
||||
'accuracy': 0.0,
|
||||
'pending_validations': 0,
|
||||
'recent_trend_lines': []
|
||||
}
|
||||
|
||||
for key, predictions in self.trend_line_predictions.items():
|
||||
stats['total_predictions'] += len(predictions)
|
||||
|
||||
for pred in predictions:
|
||||
if pred['status'] == 'validated':
|
||||
stats['validated_predictions'] += 1
|
||||
if pred.get('validation_result', {}).get('is_correct'):
|
||||
stats['correct_predictions'] += 1
|
||||
elif pred['status'] == 'waiting_for_validation':
|
||||
stats['pending_validations'] += 1
|
||||
|
||||
if stats['validated_predictions'] > 0:
|
||||
stats['accuracy'] = stats['correct_predictions'] / stats['validated_predictions']
|
||||
|
||||
return stats
|
||||
|
||||
except Exception as e:
|
||||
logger.error(f"Error getting trend training stats: {e}")
|
||||
return {}
|
||||
|
||||
def store_model_trend_prediction(self, model_type: str, symbol: str, timeframe: str,
|
||||
predicted_trend: str, confidence: float,
|
||||
target_price: float = None, horizon_minutes: int = 60):
|
||||
"""
|
||||
Store a trend prediction from a model for later validation
|
||||
|
||||
Args:
|
||||
model_type: 'transformer', 'cnn', 'dqn', etc.
|
||||
symbol: Trading symbol
|
||||
timeframe: Timeframe
|
||||
predicted_trend: 'up', 'down', or 'sideways'
|
||||
confidence: Prediction confidence (0.0 to 1.0)
|
||||
target_price: Optional target price
|
||||
horizon_minutes: Prediction horizon in minutes
|
||||
"""
|
||||
try:
|
||||
prediction_data = {
|
||||
'prediction_id': f"{model_type}_{symbol}_{int(datetime.now().timestamp())}",
|
||||
'timestamp': datetime.now(),
|
||||
'predicted_trend': predicted_trend,
|
||||
'confidence': confidence,
|
||||
'model_type': model_type,
|
||||
'target_price': target_price,
|
||||
'prediction_horizon': horizon_minutes
|
||||
}
|
||||
|
||||
self.store_trend_prediction(symbol, timeframe, prediction_data)
|
||||
|
||||
logger.info(f"Stored {model_type} trend prediction: {predicted_trend} (confidence: {confidence:.2f})")
|
||||
|
||||
except Exception as e:
|
||||
logger.error(f"Error storing model trend prediction: {e}")
|
||||
Reference in New Issue
Block a user