Design February 5, 2026 2 min read W3C WAI EN

For Review: W3C Accessibility Guidelines Evaluation Methodology (WCAG-EM) 2.0 — First Draft Note

A new draft methodology evaluates digital products' accessibility. It affects developers of websites, apps, and other digital products.

Design

W3C Accessibility Guidelines Evaluation Methodology (WCAG-EM) 2.0 is available as a first Draft Note. WCAG-EM describes a methodology with a step-by-step process to evaluate how well digital products conform to Web Content Accessibility Guidelines (WCAG) 2. WCAG-EM 1 is specifically for testing websites and web pages. WCAG-EM 2 also applies to apps and other digital products. For an introduction to WCAG-EM and more information about the WCAG-EM 2 draft, see WCAG-EM Overview.

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