Книга Ethical AI and Responsible Coding Nathan Westwood

Ethical AI and Responsible Coding

Learn fairness, bias prevention, and transparent design

Автор: Nathan Westwood
Език: Английски език
Корици: С меки корици
Издател: Independently published
Наличност: Външен склад
Изпращаме след 9-15 дни
16.12 31.53 лв
Code is Power. Handle it with Care.We are building the brain of the future. The question is: will it...

Информация за книгата

Автор
Език
Английски език
Корици
Книга - С меки корици
Издадена
2026
страници
214
EAN
9798246654286
Enbook ID
51050171
Издател
Теглоt
294
Размери
152 x 229 x 11

Пълно описание

Code is Power. Handle it with Care.

We are building the brain of the future. The question is: will it be fair?

As developers, we are no longer just writing scripts; we are defining the rules of society. From hiring algorithms to loan approvals and criminal justice predictions, the code we write today impacts real human lives tomorrow. But what happens when that code is biased? What happens when a "black box" model makes a life-altering decision that no one can explain?

Ethical AI and Responsible Coding is the field manual for the conscientious engineer. It moves beyond high-level philosophy to provide concrete, technical solutions for building trustworthy systems. You will learn to detect the invisible prejudices hidden in your datasets, math-proof your models against discrimination, and design software that is transparent by default.

Don't Just Build Smart. Build Right.

This book equips you with the tools to audit, explain, and secure your AI applications.

  • The Anatomy of Bias: Learn to identify the mathematical footprints of systemic prejudice in training data before it corrupts your model.

  • Explainable AI (XAI): Master libraries like SHAP and LIME to crack open "black box" models and generate human-readable explanations for every prediction.

  • Fairness Metrics: Implement code to measure Individual Fairness, Demographic Parity, and Equalized Odds, ensuring your software treats every user with dignity.

  • Privacy-Preserving ML: An introduction to Differential Privacy and Federated Learning techniques that allow you to train smart models without compromising user data.

  • Robustness & Security: Protect your models from "data poisoning" and adversarial attacks that seek to exploit your system's ethical vulnerabilities.

Whether you are a data scientist striving for neutrality, a backend engineer worried about user privacy, or a CTO defining company standards, this book proves that ethical software is better software.

The future is watching. Write code you can be proud of. Scroll up and grab your copy to become a pioneer of Responsible AI.

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