Algorithms for Verifying Deep Neural Networks in Optimization

Algorithms for Verifying Deep Neural Networks in Optimization

Changliu Liu , Tomer Arnon , Christopher Lazarus
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Feb 10, 2021 · Inglés · Tapa blanda (178 páginas)
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Detalles del libro

Formato Tapa blanda
Páginas 178
Idioma Inglés
Publicado Feb 10, 2021
Editorial Now Publishers
ISBN-10 1680837869
ISBN-13 9781680837865

Descripción

This work delves into the rapidly evolving field of deep neural networks, focusing on the critical aspect of verification. The authors seek to illuminate the complexities involved in ensuring that these models perform reliably in their intended applications. Given the rise of AI systems across various industries, the need for robust methods to validate neural networks has never been more pressing.

By combining theoretical insights with practical methodologies, the authors provide a comprehensive exploration of different verification algorithms. They examine the challenges of formal verification in complex models, outlining the implications for safety and trustworthiness. Through meticulous research and clear explanations, the authors aim to equip practitioners and researchers alike with the knowledge needed to navigate this intricate domain, fostering a better understanding of how to secure AI systems against failures and biases.
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