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You're reading from  The Applied TensorFlow and Keras Workshop

Product typeBook
Published inJul 2020
Reading LevelIntermediate
PublisherPackt
ISBN-139781800201217
Edition1st Edition
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Authors (2):
Harveen Singh Chadha
Harveen Singh Chadha
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Harveen Singh Chadha

Harveen Singh Chadha is an experienced researcher in deep learning and is currently working as a self-driving car engineer. He is focused on creating an advanced driver assistance systems (ADAS) platform. His passion is to help people who want to enter the data science universe. He is the author of the video course Hands-On Neural Network Programming with TensorFlow.
Read more about Harveen Singh Chadha

Luis Capelo
Luis Capelo
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Luis Capelo

Luis Capelo is a Harvard-trained analyst and a programmer, who specializes in designing and developing data science products. He is based in New York City, America. Luis is the head of the Data Products team at Forbes, where they investigate new techniques for optimizing article performance and create clever bots that help them distribute their content. He worked for the United Nations as part of the Humanitarian Data Exchange team (founders of the Center for Humanitarian Data). Later on, he led a team of scientists at the Flowminder Foundation, developing models for assisting the humanitarian community. Luis is a native of Havana, Cuba, and the founder and owner of a small consultancy firm dedicated to supporting the nascent Cuban private sector.
Read more about Luis Capelo

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Introduction

In the previous chapter, you trained your model. But how will you check its performance and whether it is performing well or not? Let's find out by evaluating a model. In machine learning, it is common to define two distinct terms: parameter and hyperparameter. Parameters are properties that affect how a model makes predictions from data, say from a particular dataset. Hyperparameters refer to how a model learns from data. Parameters can be learned from the data and modified dynamically. Hyperparameters, on the other hand, are higher-level properties defined before the training begins and are not typically learned from data. In this chapter, you will learn about these factors in detail and understand how to use them with different evaluation techniques to improve the performance of a model.

Note

For a more detailed overview of machine learning, refer to Python Machine Learning, Sebastian Raschka and Vahid Mirjalili, Packt Publishing, 2017).

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You have been reading a chapter from
The Applied TensorFlow and Keras Workshop
Published in: Jul 2020Publisher: PacktISBN-13: 9781800201217

Authors (2)

author image
Harveen Singh Chadha

Harveen Singh Chadha is an experienced researcher in deep learning and is currently working as a self-driving car engineer. He is focused on creating an advanced driver assistance systems (ADAS) platform. His passion is to help people who want to enter the data science universe. He is the author of the video course Hands-On Neural Network Programming with TensorFlow.
Read more about Harveen Singh Chadha

author image
Luis Capelo

Luis Capelo is a Harvard-trained analyst and a programmer, who specializes in designing and developing data science products. He is based in New York City, America. Luis is the head of the Data Products team at Forbes, where they investigate new techniques for optimizing article performance and create clever bots that help them distribute their content. He worked for the United Nations as part of the Humanitarian Data Exchange team (founders of the Center for Humanitarian Data). Later on, he led a team of scientists at the Flowminder Foundation, developing models for assisting the humanitarian community. Luis is a native of Havana, Cuba, and the founder and owner of a small consultancy firm dedicated to supporting the nascent Cuban private sector.
Read more about Luis Capelo