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Machine Learning Automation with TPOT

Machine Learning Automation with TPOT

By : Radečić
4.6 (7)
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Machine Learning Automation with TPOT

Machine Learning Automation with TPOT

4.6 (7)
By: Radečić

Overview of this book

The automation of machine learning tasks allows developers more time to focus on the usability and reactivity of the software powered by machine learning models. TPOT is a Python automated machine learning tool used for optimizing machine learning pipelines using genetic programming. Automating machine learning with TPOT enables individuals and companies to develop production-ready machine learning models cheaper and faster than with traditional methods. With this practical guide to AutoML, developers working with Python on machine learning tasks will be able to put their knowledge to work and become productive quickly. You'll adopt a hands-on approach to learning the implementation of AutoML and associated methodologies. Complete with step-by-step explanations of essential concepts, practical examples, and self-assessment questions, this book will show you how to build automated classification and regression models and compare their performance to custom-built models. As you advance, you'll also develop state-of-the-art models using only a couple of lines of code and see how those models outperform all of your previous models on the same datasets. By the end of this book, you'll have gained the confidence to implement AutoML techniques in your organization on a production level.
Table of Contents (14 chapters)
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1
Section 1: Introducing Machine Learning and the Idea of Automation
3
Section 2: TPOT – Practical Classification and Regression
8
Section 3: Advanced Examples and Neural Networks in TPOT

Q&A

  1. How would you define the term "deep learning"?
  2. What is the difference between traditional machine learning algorithms and algorithms used in deep learning?
  3. List and briefly describe five types of neural networks.
  4. Can you figure out how to calculate the number of trainable parameters in a network given the number of neurons per layer? For example, a neural network with the architecture [10, 8, 8, 2] has in total 178 trainable parameters (160 weights and 18 biases).
  5. Name four different activation functions and briefly explain them.
  6. In your own words, describe loss in neural networks.
  7. Explain why modeling imagine classification models with regular artificial neural networks isn't a good idea.
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