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ai_real_time_learner [2025/05/29 16:59] – [Example 1: Basic Incremental Model Update] eagleeyenebulaai_real_time_learner [2025/05/29 17:01] (current) – [Advanced Features] eagleeyenebula
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 The **Real-Time Learner** can power predictive systems where frequent updates are required. Below is an example for stock price prediction: The **Real-Time Learner** can power predictive systems where frequent updates are required. Below is an example for stock price prediction:
- +<code> 
-```python+python
 import numpy as np import numpy as np
  
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         return self.model.predict(X)         return self.model.predict(X)
  
- +</code> 
-Initialize the learner+**Initialize the learner** 
 +<code>
 learner = StockPredictionLearner() learner = StockPredictionLearner()
 initial_data = np.array([[100, 1], [101, 2], [102, 3]]) initial_data = np.array([[100, 1], [101, 2], [102, 3]])
 initial_labels = [0, 1, 1] initial_labels = [0, 1, 1]
- +</code> 
-Fit initial model with stock trends+**Fit initial model with stock trends** 
 +<code>
 learner.update_model(initial_data, initial_labels) learner.update_model(initial_data, initial_labels)
- +</code> 
-Simulate new stock price streaming data+**Simulate new stock price streaming data** 
 +<code>
 stream_data = np.array([[103, 4], [104, 5]]) stream_data = np.array([[103, 4], [104, 5]])
 predictions = learner.predict(stream_data) predictions = learner.predict(stream_data)
 print(f"Predicted Trends: {predictions}") print(f"Predicted Trends: {predictions}")
-```+</code>
  
 ==== Example 3: Real-Time Fraud Detection ==== ==== Example 3: Real-Time Fraud Detection ====
  
 Design an AI fraud detection system where updates are required to account for evolving patterns in fraudulent activities. Design an AI fraud detection system where updates are required to account for evolving patterns in fraudulent activities.
- +<code> 
-```python+python
 class FraudDetectionLearner(RealTimeLearner): class FraudDetectionLearner(RealTimeLearner):
     """     """
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             predictions.append(self.model.predict([X])[0])             predictions.append(self.model.predict([X])[0])
         return predictions         return predictions
 +</code>
  
- +**Example transactions (X) and labels (y).** 
-Example transactions (X) and labels (y).+<code>
 transaction_data = [[5000, 1], [10000, 1], [7500, 0]] transaction_data = [[5000, 1], [10000, 1], [7500, 0]]
 class_labels = [1, 1, 0]  # Fraudulent (1) or Not (0). class_labels = [1, 1, 0]  # Fraudulent (1) or Not (0).
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 fraud_predictions = fraud_detector.handle_streaming_data(transaction_data, class_labels) fraud_predictions = fraud_detector.handle_streaming_data(transaction_data, class_labels)
 print(f"Fraud Predictions: {fraud_predictions}") print(f"Fraud Predictions: {fraud_predictions}")
-```+</code>
  
 ===== Advanced Features ===== ===== Advanced Features =====
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 The **Real-Time Learner** system enables a wide array of advanced features for various machine learning applications: The **Real-Time Learner** system enables a wide array of advanced features for various machine learning applications:
  
-  1. **Dynamic Model Evolution**: +1. **Dynamic Model Evolution**: 
-     Update models in response to system feedback in real-time without halting operations+       * Update models in response to system feedback in real-time without halting operations.
- +
-  2. **Large-Scale Data Handling**: +
-     Handle vast data streams by splitting it into smaller batches processed incrementally.+
  
-  3. **Online Machine Learning**: +2. **Large-Scale Data Handling**: 
-     Train models in environments where data arrives continuously or evolves over time, such as IoT, financial services, or supply chain systems.+       * Handle vast data streams by splitting it into smaller batches processed incrementally.
  
-  4. **Custom Streaming Pipelines**: +3. **Online Machine Learning**: 
-     Create models tailored to specific streaming applications, such as dynamic pricingrecommendation enginesand fraud detection.+       * Train models in environments where data arrives continuously or evolves over time, such as IoTfinancial servicesor supply chain systems.
  
 +4. **Custom Streaming Pipelines**:
 +       * Create models tailored to specific streaming applications, such as dynamic pricing, recommendation engines, and fraud detection.
 ===== Use Cases ===== ===== Use Cases =====
  
ai_real_time_learner.1748537958.txt.gz · Last modified: 2025/05/29 16:59 by eagleeyenebula