Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Вивчайте What is Explainable AI? | Understanding Explainable AI
Explainable AI (XAI) Basics

bookWhat is Explainable AI?

Explainable AI, often abbreviated as XAI, refers to a set of processes and methods that make the outcomes and operations of artificial intelligence systems understandable to humans. The main purpose of Explainable AI is to provide clear, human-friendly explanations for how AI models make decisions, predictions, or classifications. This is especially important as AI technologies are increasingly used in areas like healthcare, finance, and legal systems, where stakeholders need to trust, verify, and sometimes challenge the decisions made by algorithms. By making AI models more transparent, XAI helps developers, users, and regulators understand why a system behaved in a certain way, which builds trust, supports accountability, and enables better decision-making.

Note
Definition

Black box models are AI or machine learning systems whose internal logic and decision-making processes are not easily understood by humans. These models can produce highly accurate results but are problematic because they offer little insight into how or why they reached a specific outcome. This lack of transparency can lead to issues with trust, accountability, and the ability to detect or correct errors and biases.

question mark

Which of the following best describes the main goal of Explainable AI?

Select the correct answer

Все було зрозуміло?

Як ми можемо покращити це?

Дякуємо за ваш відгук!

Секція 1. Розділ 1

Запитати АІ

expand

Запитати АІ

ChatGPT

Запитайте про що завгодно або спробуйте одне із запропонованих запитань, щоб почати наш чат

Suggested prompts:

Can you give examples of Explainable AI in real-world applications?

Why is explainability important in fields like healthcare and finance?

What are some common techniques used in Explainable AI?

Awesome!

Completion rate improved to 6.67

bookWhat is Explainable AI?

Свайпніть щоб показати меню

Explainable AI, often abbreviated as XAI, refers to a set of processes and methods that make the outcomes and operations of artificial intelligence systems understandable to humans. The main purpose of Explainable AI is to provide clear, human-friendly explanations for how AI models make decisions, predictions, or classifications. This is especially important as AI technologies are increasingly used in areas like healthcare, finance, and legal systems, where stakeholders need to trust, verify, and sometimes challenge the decisions made by algorithms. By making AI models more transparent, XAI helps developers, users, and regulators understand why a system behaved in a certain way, which builds trust, supports accountability, and enables better decision-making.

Note
Definition

Black box models are AI or machine learning systems whose internal logic and decision-making processes are not easily understood by humans. These models can produce highly accurate results but are problematic because they offer little insight into how or why they reached a specific outcome. This lack of transparency can lead to issues with trust, accountability, and the ability to detect or correct errors and biases.

question mark

Which of the following best describes the main goal of Explainable AI?

Select the correct answer

Все було зрозуміло?

Як ми можемо покращити це?

Дякуємо за ваш відгук!

Секція 1. Розділ 1
some-alt