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Developer Audits 15 Android Apps for Accessibility, Finds Major Gaps in Local Apps

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A developer spent a week stepping away from coding to conduct accessibility audits on 15 Android applications. The audit found that mainstream apps like WhatsApp and Google's suite were fully automatable and accessibility-friendly. However, local banking and government apps were found to be largely invisible to accessibility tools, revealing significant gaps. The findings have shifted the direction of the developer's AI project, which is now evolving into a dedicated accessibility audit tool.

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