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Google AI Pro/Ultra Subscribers Report Account Restrictions for Using OpenClaw

Reports have emerged from Google AI Pro/Ultra subscribers detailing account restrictions without prior warning. The restrictions appear to be linked to the use of OpenClaw, specifically when authenticating via OAuth with Google AI Ultra. The original news, published on February 22, 2026, on Hacker News, consists solely of 'Comments,' indicating a community discussion or user-generated content regarding this issue. No further details or official statements from Google are provided in the original source, leaving the exact reasons and scope of these restrictions unclear.

Hacker News

Reports have surfaced from users subscribed to Google AI Pro/Ultra services, indicating that their accounts have been restricted. The primary point of contention highlighted in these reports is the use of OpenClaw, particularly when utilizing OAuth for authentication with Google AI Ultra. The original news, published on February 22, 2026, on Hacker News, is notably brief, consisting only of the word 'Comments.' This suggests that the information originates from user discussions or complaints rather than an official announcement or detailed journalistic piece. Consequently, the original source does not provide specific details regarding the nature of these restrictions, the exact criteria for their implementation, or any official explanation from Google. The lack of further information means that the scope of affected users, the duration of the restrictions, and potential remedies remain unaddressed in the provided content. The situation points to an ongoing issue being discussed within the user community, with subscribers experiencing unexpected limitations on their Google AI Pro/Ultra accounts due to their interaction with OpenClaw.

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