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Volume

Automating Intelligence

The Definitive Guide to Neural Architecture Search

Stop manually tuning layers and start engineering the future of AI.

Strategic Objectives

• Discover state-of-the-art architectures without manual intervention.

• Master the search spaces and algorithms that define modern NAS.

• Reduce computational overhead while maximizing model performance.

• Implement automated pipelines for specific hardware constraints.

The Core Challenge

Designing neural networks is a tedious, trial-and-error process that consumes months of expert human labor.

01

The Dawn of AutoML

02

Foundations of Neural Networks

03

Defining the Search Space

04

The NAS Search Strategy

05

Reinforcement Learning in NAS

06

Neuroevolutionary Approaches

07

Gradient-Based Search

08

Bayesian Optimization Techniques

09

Performance Estimation Strategies

10

One-Shot Architecture Search

11

Evolutionary Computation Basics

12

Multi-Objective NAS

13

Hardware-Aware Search

14

Convolutional Neural Networks (CNNs) and NAS

15

Recurrent Structures and Transformers

16

Hyperparameter Optimization vs. NAS

17

Meta-Learning and NAS

18

Graph Neural Networks and Search

19

Computational Complexity and Scalability

20

Benchmarking and Evaluation

21

The Future of Automated Design

Available eBook Editions