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Hacker News Discussion: Is Facebook 'Cooked'?

A recent Hacker News post titled "Facebook is cooked" has sparked a discussion among users. The original content provided for this news item consists solely of the word "Comments," indicating that the primary focus is on user reactions and opinions regarding the state of Facebook. Without further context from the original post or subsequent comments, the specific reasons or arguments behind the assertion that Facebook is 'cooked' remain unstated. This news item serves as an announcement of a discussion thread rather than a factual report on Facebook's status.

Hacker News

The news item, published on 2026-02-20T18:25:07.000Z from Hacker News, presents a provocative title: "Facebook is cooked." The entirety of the provided original content is the single word "Comments." This suggests that the news piece itself is not an article detailing why Facebook might be considered 'cooked,' but rather an invitation or a pointer to a discussion thread where users are expected to share their views on the topic. The phrase "Facebook is cooked" is an idiomatic expression implying that the company is in serious trouble, facing significant decline, or is no longer viable. However, without access to the actual comments or the original post on Hacker News, the specific arguments, evidence, or sentiments driving this assertion remain unknown. The news item, in its current form, functions as a meta-announcement about an ongoing or anticipated user discussion.

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