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Neural Networks for Image Classification

Unlock the potential of image classification with neural networks. This course will teach you to extract features, build, and evaluate models using TensorFlow, and explore advanced architectures with transfer learning.

Axel Sirota - Pluralsight course - Neural Networks for Image Classification
by Axel Sirota

What you'll learn

In the digital age, the ability to categorize and understand images through neural networks is a skill with increasing relevance across various fields. In this course, Neural Networks for Image Classification, you'll learn to harness the power of neural networks for advanced image classification.

First, you’ll explore the fundamentals of image data preparation, feature extraction, and critical steps in creating effective classification models. Next, you’ll discover how to build and evaluate robust image classifiers using TensorFlow, diving into the mechanics of neural network design. Finally, you’ll learn how to amplify your models' capabilities with advanced architectures such as ResNet, Inception, and MobileNets, employing transfer learning for enhanced performance.

When you’re finished with this course, you’ll have the skills and knowledge of neural network-driven image classification needed to apply these techniques in various real-world scenarios.

Table of contents

About the author

Axel Sirota - Pluralsight course - Neural Networks for Image Classification
Axel Sirota

Axel Sirota has a Masters degree in Mathematics with a deep interest in Deep Learning and Machine Learning Operations. After researching in Probability, Statistics and Machine Learning optimization, he is currently working at JAMPP as a Machine Learning Research Engineer leveraging customer data for making accurate predictions at Real Time Bidding.

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