Book Image

Hands-On Explainable AI (XAI) with Python

By : Denis Rothman
Book Image

Hands-On Explainable AI (XAI) with Python

By: Denis Rothman

Overview of this book

Effectively translating AI insights to business stakeholders requires careful planning, design, and visualization choices. Describing the problem, the model, and the relationships among variables and their findings are often subtle, surprising, and technically complex. Hands-On Explainable AI (XAI) with Python will see you work with specific hands-on machine learning Python projects that are strategically arranged to enhance your grasp on AI results analysis. You will be building models, interpreting results with visualizations, and integrating XAI reporting tools and different applications. You will build XAI solutions in Python, TensorFlow 2, Google Cloud’s XAI platform, Google Colaboratory, and other frameworks to open up the black box of machine learning models. The book will introduce you to several open-source XAI tools for Python that can be used throughout the machine learning project life cycle. You will learn how to explore machine learning model results, review key influencing variables and variable relationships, detect and handle bias and ethics issues, and integrate predictions using Python along with supporting the visualization of machine learning models into user explainable interfaces. By the end of this AI book, you will possess an in-depth understanding of the core concepts of XAI.
Table of Contents (16 chapters)
14
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15
Index

Chapter 3, Explaining Machine Learning with Facets

  1. Datasets in real-life projects are rarely reliable. (True|False)

    True. In most cases, the datasets require a fair amount of quality control before they can be used as input data for ML models. In rare cases, the data is perfect in some companies that constantly check the quality of their data.

  2. In a real-life project, there are no missing records in a dataset. (True|False)

    False. In most cases, data is missing.

    True. In some critical areas, such as aerospace projects, the data is clean.

  3. The distribution distance is the distance between two data points. (True|False)

    False. The distribution distance is measured between two data distributions.

  4. Non-uniformity does not affect an ML model. (True|False)

    False. Non-uniformity has profound effects on the outputs of an ML model. However, in some cases, non-uniform datasets reflect the reality of the problem...