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Ring Terminates Partnership with Flock Safety Following Surveillance Backlash

Ring has announced the cancellation of its partnership with Flock Safety. This decision comes in the wake of significant backlash concerning surveillance practices. The original news content is limited to this announcement and the context of the 'surveillance backlash' as the reason for the termination. No further details regarding the nature of the partnership, the specific reasons for the backlash, or the implications of this cancellation are provided in the source material.

Hacker News

Ring has officially terminated its collaboration with Flock Safety. This move directly follows a period of intense public and media scrutiny, referred to as 'surveillance backlash.' The original news item, published on 2026-02-12T23:51:16.000Z by Hacker News, explicitly states the cancellation of the partnership due to this backlash. No additional information regarding the specifics of the partnership between Ring and Flock Safety, the exact nature or timeline of the surveillance concerns, or any future plans for either company is available in the provided source material. The news is concise, focusing solely on the termination of the partnership as a direct consequence of the aforementioned backlash.

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