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Frame Debuts as First Linux Assembly-Written X Server

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A new X server called Frame has been released for Linux, notable for being written entirely in assembly language. The project was announced via a personal blog post by its developer. Frame represents an unconventional approach to X server development, as most modern software avoids low-level assembly in favor of higher-level languages. The project has attracted attention in the Hacker News community, though details about its full feature set and intended use cases remain limited in the initial announcement.

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Frame Debuts as First Linux Assembly-Written X Server · ShortSingh