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Debugging Machine Learning Models with Python

Debugging Machine Learning Models with Python

By : Ali Madani
4.9 (16)
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Debugging Machine Learning Models with Python

Debugging Machine Learning Models with Python

4.9 (16)
By: Ali Madani

Overview of this book

Debugging Machine Learning Models with Python is a comprehensive guide that navigates you through the entire spectrum of mastering machine learning, from foundational concepts to advanced techniques. It goes beyond the basics to arm you with the expertise essential for building reliable, high-performance models for industrial applications. Whether you're a data scientist, analyst, machine learning engineer, or Python developer, this book will empower you to design modular systems for data preparation, accurately train and test models, and seamlessly integrate them into larger technologies. By bridging the gap between theory and practice, you'll learn how to evaluate model performance, identify and address issues, and harness recent advancements in deep learning and generative modeling using PyTorch and scikit-learn. Your journey to developing high quality models in practice will also encompass causal and human-in-the-loop modeling and machine learning explainability. With hands-on examples and clear explanations, you'll develop the skills to deliver impactful solutions across domains such as healthcare, finance, and e-commerce.
Table of Contents (26 chapters)
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1
Part 1:Debugging for Machine Learning Modeling
5
Part 2:Improving Machine Learning Models
10
Part 3:Low-Bug Machine Learning Development and Deployment
15
Part 4:Deep Learning Modeling
19
Part 5:Advanced Topics in Model Debugging

Differential privacy

The objective of differential privacy is to ensure that the removal or addition of individual data points does not affect the outcome of the modeling. For example, by adding random noise to a normal distribution, it tries to make the features of individual data points obscure. The effect of noise in learning could be eliminated based on the law of large numbers (Dekking et al., 2005) if a large number of data points is accessible. To better understand this concept, we want to generate a random list of numbers and add noise to them from a normal distribution to help you better understand why this technique works. In this process, we will also define some widely used technical terminology.

We first define a function called gaussian_add_noise() to add Gaussian noise to a query list of values:

def gaussian_add_noise(query_result: float,    sensitivity: float, epsilon: float):
        std_dev = sensitivity...
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