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The Deep Learning Architect's Handbook

You're reading from   The Deep Learning Architect's Handbook Build and deploy production-ready DL solutions leveraging the latest Python techniques

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Product type Paperback
Published in Dec 2023
Publisher Packt
ISBN-13 9781803243795
Length 516 pages
Edition 1st Edition
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Author (1):
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Ee Kin Chin Ee Kin Chin
Author Profile Icon Ee Kin Chin
Ee Kin Chin
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Table of Contents (25) Chapters Close

Preface 1. Part 1 – Foundational Methods
2. Chapter 1: Deep Learning Life Cycle FREE CHAPTER 3. Chapter 2: Designing Deep Learning Architectures 4. Chapter 3: Understanding Convolutional Neural Networks 5. Chapter 4: Understanding Recurrent Neural Networks 6. Chapter 5: Understanding Autoencoders 7. Chapter 6: Understanding Neural Network Transformers 8. Chapter 7: Deep Neural Architecture Search 9. Chapter 8: Exploring Supervised Deep Learning 10. Chapter 9: Exploring Unsupervised Deep Learning 11. Part 2 – Multimodal Model Insights
12. Chapter 10: Exploring Model Evaluation Methods 13. Chapter 11: Explaining Neural Network Predictions 14. Chapter 12: Interpreting Neural Networks 15. Chapter 13: Exploring Bias and Fairness 16. Chapter 14: Analyzing Adversarial Performance 17. Part 3 – DLOps
18. Chapter 15: Deploying Deep Learning Models to Production 19. Chapter 16: Governing Deep Learning Models 20. Chapter 17: Managing Drift Effectively in a Dynamic Environment 21. Chapter 18: Exploring the DataRobot AI Platform 22. Chapter 19: Architecting LLM Solutions 23. Index 24. Other Books You May Enjoy

Implementing an MLP from scratch

Today, the process to create a neural network and its layers along with the backpropagation process has been encapsulated in deep learning frameworks. The differentiation process has been automated, where there is no actual need to define the derivative formulas manually. Removing the abstraction layer provided by the deep learning libraries will help to solidify your understanding of neural network internals. So, let’s create this neural network manually and explicitly with the logic to forward pass and backward pass instead of using the deep learning libraries:

  1. We’ll start by importing numpy and the methods from the scikit-learn library to load sample datasets and perform data partitioning:
    import numpy as np
    from sklearn import datasets
    from sklearn.model_selection import train_test_split
  2. Next, we define ReLU, the method that makes an MLP non-linear:
    def ReLU(x):
      return np.maximum(x, 0)
  3. Now, let’s define...
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