Skip to main content
HomeArtificial Intelligence

Explainable Artificial Intelligence (XAI) Concepts

Understand the role and real-world realities of Explainable Artificial Intelligence (XAI) with this beginner friendly course.

Start Course for Free
1 hour12 videos36 exercises

Create Your Free Account

GoogleLinkedInFacebook

or

By continuing, you accept our Terms of Use, our Privacy Policy and that your data is stored in the USA.
Group

Training 2 or more people?

Try DataCamp for Business

Loved by learners at thousands of companies


Course Description

Understand the Core Concepts of Explainable Artificial Intelligence (XAI)

This course introduces the crucial field of XAI, focusing on making complex AI algorithms understandable and accessible. The need for transparency and trust in these technologies grows as AI systems become increasingly integrated into various sectors. This course covers the core concepts of XAI, including transparency, interpretability, and accountability, and explores the balance between model complexity and explainability.

Learn XAI Techniques

You will learn about model-specific and model-agnostic explanations, gaining practical insights and tools to apply XAI principles effectively in your projects. The course aims to equip you with the knowledge to make AI systems more transparent, ethical, and aligned with societal values, ensuring that AI decisions are not only effective but also justifiable and understandable.

Implement XAI in the Real World

By the end of this course, you will have a solid understanding of XAI and its importance in the development of AI solutions, and you will be ready to implement these principles to enhance the clarity and trustworthiness of AI systems in real-world applications.
For Business

Training 2 or more people?

Get your team access to the full DataCamp platform, including all the features.
DataCamp for BusinessFor a bespoke solution book a demo.

In the following Tracks

Artificial Intelligence (AI) Leadership

Go To Track
  1. 1

    Introduction To Explainable AI

    Free

    We delve into Explainable AI (XAI), emphasizing its role in rendering AI systems transparent, interpretable, and trustworthy. We explore AI's capabilities in prediction and content generation, underscoring the necessity for clear decision-making processes. Additionally, we investigate methods to make complex AI models more comprehensible to a wide range of audiences.

    Play Chapter Now
    Why Explainable AI matters
    50 xp
    Transparency or interpretability
    50 xp
    Interpretable scenarios
    50 xp
    XAI objectives
    50 xp
    The technicalities of XAI
    50 xp
    Understanding the fundamentals of XAI
    100 xp
    Accuracy and interpretability
    50 xp
    Communicating about XAI
    50 xp
    Audience segmentation
    50 xp
    Balancing accuracy and simplicity
    50 xp
  2. 2

    Techniques in Explainable AI

    We explore Explainable AI (XAI) techniques, categorizing them into model-specific, model-agnostic, local, and global explanations to clarify AI decision-making. We discuss regression and classification for model-specific insights and introduce SHAP and LIME to interpret black box models. Additionally, we address the complexity of Large Language Models (LLMs), emphasizing the need for transparency in their decision-making processes.

    Play Chapter Now
  3. 3

    Implementing and Applying XAI

    We explore the transformative impact of XAI in making artificial intelligence more accessible and user-friendly across various sectors. By integrating explainability from the outset, we ensure AI systems are transparent, fostering trust and facilitating a deeper collaboration between humans and machines. Through real-world case studies, we highlight how XAI demystifies complex AI decisions, empowering users with diverse technical backgrounds to leverage AI insights for more informed decision-making.

    Play Chapter Now
For Business

Training 2 or more people?

Get your team access to the full DataCamp platform, including all the features.

In the following Tracks

Artificial Intelligence (AI) Leadership

Go To Track

collaborators

Collaborator's avatar
Joe Franklin
Collaborator's avatar
Jordan Beecher
Folkert Stijnman HeadshotFolkert Stijnman

ML Engineer

Machine Learning Engineer with 5+ years of expertise in fintech, logistics, and telecom. Specializes in developing scalable ML models, designing end-to-end pipelines, and deploying AI solutions to production, seamlessly aligning with business goals.
See More

What do other learners have to say?

Join over 15 million learners and start Explainable Artificial Intelligence (XAI) Concepts today!

Create Your Free Account

GoogleLinkedInFacebook

or

By continuing, you accept our Terms of Use, our Privacy Policy and that your data is stored in the USA.