SFr. 76.00
€ 82.08


vorbestellen

Artikel-Nr. 44211194


Diesen Artikel in meine
Wunschliste
Diesen Artikel
weiterempfehlen
Diesen Preis
beobachten

Weitersagen:



Autor(en): 
  • Nilesh Patil
  • Nonita Sharma
  • Monika Mangla
  • Ramchandra S Mangrulkar
  • Understanding Explainable AI: Interpreting XAI Models 
     

    (Buch)
    Dieser Artikel gilt, aufgrund seiner Grösse, beim Versand als 3 Artikel!


    Übersicht

    Auf mobile öffnen
     
    Lieferstatus:   Vorankündigung
    Veröffentlichung:  ANGEKÜNDIGT (Februar 2027)  
    Genre:  EDV / Informatik 
     
    Artificial Intelligence / Deep Learning Interpretation / Explainable AI / Künstliche Intelligenz / LIME / Machine Learning Explainability / Microsoft / model transparency
    ISBN:  9798868830228 
    EAN-Code: 
    9798868830228 
    Verlag:  Springer EN 
    Einband:  Kartoniert  
    Sprache:  English  
    Dimensionen:  H 254 mm / B 178 mm / D  
    Illustration:  Approx. 250 p. 
    Zus. Info:  EUDR exemption - product or manufacturing materials placed on the market prior to 31.12.2025. 
    Bewertung: Keine Bewertung vor Veröffentlichung möglich.
    Inhalt:
    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:

    • Ethics, Fairness, and Responsible AI
    • Understanding Models and Data with Black-Box vs White-Box Models
    • Implementing models and principles with simple Python Examples
    • Demonstrating Local Model-Agnostic XAI Methods
    • Applications of XAI in Healthcare, Finance, Agriculture, and more

    Who This Book Is For:

    AI Engineers, Researchers, and Students

      



    Wird aktuell angeschaut...
     

    Zurück zur letzten Ansicht


    AGB | Datenschutzerklärung | Mein Konto | Impressum | Partnerprogramm
    Newsletter | 1Advd.ch RSS News-Feed Newsfeed | 1Advd.ch Facebook-Page Facebook | 1Advd.ch Twitter-Page Twitter
    Forbidden Planet AG © 1999-2026
    Alle Angaben ohne Gewähr
     
    SUCHEN

     
     Kategorien
    Im Sortiment stöbern
    Genres
    Hörbücher
    Aktionen
     Infos
    Mein Konto
    Warenkorb
    Meine Wunschliste
     Kundenservice
    Recherchedienst
    Fragen / AGB / Kontakt
    Partnerprogramm
    Impressum
    © by Forbidden Planet AG 1999-2026