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שתתחיל
מתחיל 4 June 2026 04:36
נגמר 4 June 2026
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ימים
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שעות
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דקות
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שניות
2 hours
שדרוג אופציונלי זמין
בינוני
התקדמות בקצב שלך
Free Certificate
שדרוג אופציונלי זמין
סקירה כללית
This course builds upon single layers to construct a complete Multi-Layer Perceptron (MLP). You'll learn to stack layers, explore different activation functions like ReLU and Softmax, and understand the importance of weight initialization for effective training.
סילבוס
- Unit 1: The MLP Architecture: Activations & Initialization
- Unit 2: ReLU Activation and Flexible Layer Design in R MLPs
- Unit 3: Output Layer Activation Functions: Softmax and Linear in R MLPs
- Unit 4: Weight Initialization Strategies for Neural Networks in R
Implementing Forward Propagation in a Multi-Layer Perceptron
Fixing Layer Dimensions in a Multi-Layer Perceptron
Building a Multi-Layer Perceptron Function in R
Expanding an MLP with an Additional Layer
Building a Multi-Layer Perceptron from Scratch in R
Fixing the ReLU Activation Function for Matrix Inputs
Implementing ReLU Activation in Your Neural Network
Implementing the ReLU Activation Function in R
Implementing Numerically Stable Softmax in R
Verifying Softmax Outputs as Valid Probability Distributions
Implementing the Linear Activation Function for Regression Tasks
Debugging Output Activation Functions in Neural Networks
Building Neural Networks with Classification and Regression Output Activations
Implementing Random Scaled Weight Initialization for Neural Networks
Fixing He Uniform Weight Initialization for Neural Networks
Implementing Xavier Normal Weight Initialization for Neural Networks
Implementing He Uniform Weight Initialization in Neural Networks
נושאים
Artificial Intelligence