18 348 614 livres à l’intérieur 175 langues
2 878 505 livres numériques à l’intérieur 110 langues
Cela ne vous convient pas ? Aucun souci à se faire ! Vous pouvez retourner les articles jusqu'à 30 jours
Impossible de faire fausse route avec un bon d’achat. Le destinataire du cadeau peut choisir ce qu'il veut parmi notre sélection.
Jusqu'à 30 jours pour les retours
Understanding Explainable AI is a clear and practical guide to making sense of how modern AI systems think, decide, and justify their predictions. This book introduces the foundations of Explainable Artificial Intelligence (XAI), explaining why interpretability matters, what types of explanations exist, and how ethical, fair, and responsible AI can be achieved.
Beginning with core concepts such as black-box versus white-box models and interpretable data representations, the book builds a strong conceptual and mathematical base, supported by intuitive Python examples that make complex ideas accessible to students, practitioners, and early-career researchers. Guiding you from simple linear models and decision trees to advanced local and global explanation techniques, the book explores widely used XAI methods such as LIME, SHAP, counterfactuals, partial dependence plots, and surrogate models. It then moves deeper into neural network interpretability, feature visualization, and concept detection, helping you understand what deep models actually learn. The final chapters demonstrate how XAI techniques are applied in real-world scenarios across industries, showing how interpretability improves confidence, accountability, and decision-making.
By the end of the book, you will be equipped to design, analyze, and deploy AI systems that are not only accurate, but also transparent and trustworthy.
What You Will Learn:
Who This Book Is For:
AI Engineers, Researchers, and Students
Bonjour ! Je suis Libroamiko, votre conseiller littéraire.
Comment puis-je vous aider ?