Adience: AudioEye Outperforms Competitors in Detecting WCAG Accessibility Issues
- AudioEye’s automated scanner detects 89%–253% more valid WCAG issues than competing tools across the sample set.
- AudioEye finds 509% more Level A issues and 380% more Level AA issues than the lowest-performing tools.
- AudioEye combines automation, human testing, custom fixes, and continuous monitoring to scale detection and improve compliance visibility.
Adience report finds major gaps in automated accessibility detection
TUCSON, Ariz. — A new B2B study from Adience finds wide variation in what automated accessibility tools detect, and positions AudioEye’s platform as a clear outlier in coverage. Adience evaluates five leading automated tools by scanning, measuring and validating issues mapped to WCAG Levels A, AA and AAA, and reports that AudioEye’s automated technology is detecting between 89% and 253% more valid Web Content Accessibility Guidelines (WCAG) issues than competing products across the sample set.
The report details stark differences at commonly referenced Level AA, where several tools return no findings on multiple sites while AudioEye consistently identifies issues at Levels A, AA and AAA across every tested website. At Level A, AudioEye finds 509% more valid accessibility issues than the lowest-performing tool and 68% more than the next closest; at Level AA the firm finds 380% more valid issues than the lowest-performing tool that returned results and 41% more than the next-closest tool. Adience’s Managing Director Chris Wells emphasizes that all tools are tested under identical conditions, underscoring the variation is not caused by methodology differences.
AudioEye’s CEO David Moradi frames the results in the context of rapid growth in digital content and AI tooling. He says the number of websites and apps increases 40–60% year over year as new coding tools multiply, and some large language models rely on automated detection methods with substantially lower detection rates. Moradi adds that this detection gap is driving a record number of digital accessibility lawsuits and that AudioEye leverages years of data across hundreds of thousands of sites and billions of visits, combining agentic tooling with human testing, custom fixes and continuous monitoring to scale detection and improve visibility into compliance gaps.
Testing methodology and limitations
Adience validates automated findings to separate true positives from noise, and notes that even the best automated scanners cannot fully replicate contextual human judgement. The firm concludes automation is the foundation for protection but that human evaluation remains essential to resolve complex, contextual barriers.
Regulatory and market implications
The report highlights heightened compliance risk for organizations relying solely on weaker automated detectors and signals demand for hybrid approaches that pair broad automated coverage with targeted human review, remediation and ongoing monitoring. AudioEye positions its mix of data-driven automation and human testing as a direct response to that market need.
Related Cashu News

CleanSpark Appoints Ruben Sahakyan as Senior VP of Finance Amid Strategic Growth Plans
CleanSpark, Inc. (Ticker: CLSK) strengthens its leadership as it announces the appointment of Ruben Sahakyan as Senior Vice President of Finance, effective May 20, 2026. Sahakyan brings over 15 years…

GDS Holdings Sees Strong Growth Amid Rising AI-Driven Data Center Demand
GDS Holdings demonstrates strong momentum in its data center operations, particularly as artificial intelligence (AI) adoption accelerates. Recently, the company has reported a significant uptick in b…

Q2 Holdings Positioned to Capitalize on AI Opportunities in the SaaS Industry
Q2 Holdings (Ticker: QTWO) is poised to leverage emerging opportunities in the AI-driven landscape of the SaaS industry. Investor apprehensions regarding the disruptive potential of artificial intelli…

Box's CEO Stresses Contextual Clarity for Responsible AI Integration and Management
Box emphasizes the importance of context in AI integration, as outlined by CEO Aaron Levie during a recent address. His insights bring attention to the challenges companies face as they implement AI a…