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Python Machine Learning By Example

Python Machine Learning By Example

By : Yuxi (Hayden) Liu
4.9 (9)
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Python Machine Learning By Example

Python Machine Learning By Example

4.9 (9)
By: Yuxi (Hayden) Liu

Overview of this book

The fourth edition of Python Machine Learning By Example is a comprehensive guide for beginners and experienced machine learning practitioners who want to learn more advanced techniques, such as multimodal modeling. Written by experienced machine learning author and ex-Google machine learning engineer Yuxi (Hayden) Liu, this edition emphasizes best practices, providing invaluable insights for machine learning engineers, data scientists, and analysts. Explore advanced techniques, including two new chapters on natural language processing transformers with BERT and GPT, and multimodal computer vision models with PyTorch and Hugging Face. You’ll learn key modeling techniques using practical examples, such as predicting stock prices and creating an image search engine. This hands-on machine learning book navigates through complex challenges, bridging the gap between theoretical understanding and practical application. Elevate your machine learning and deep learning expertise, tackle intricate problems, and unlock the potential of advanced techniques in machine learning with this authoritative guide.
Table of Contents (18 chapters)
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16
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Index

Building neural networks

This practical section will start with implementing a shallow network from scratch, followed by a deep network with two layers using scikit-learn. We will then implement a deep network with TensorFlow and PyTorch.

Implementing neural networks from scratch

To demonstrate how activation functions work, we will use sigmoid as the activation function in this example.

We first define the sigmoid function and its derivative function:

>>> def sigmoid_derivative(z):
...     return sigmoid(z) * (1.0 - sigmoid(z))

You can derive the derivative yourself if you are interested in verifying it.

We then define the training function, which takes in the training dataset, the number of units in the hidden layer (we will only use one hidden layer as an example), and the number of iterations:

>>> def train(X, y, n_hidden, learning_rate, n_iter):
...     m, n_input = X.shape
...     W1 = np.random.randn(n_input, n_hidden)
...    ...
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