Active element machine computation

Data processing: artificial intelligence – Neural network

Reexamination Certificate

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Details

C706S014000, C709S202000

Reexamination Certificate

active

08010467

ABSTRACT:
An active element machine is a new kind of computing machine. When implemented in hardware, the Active element machine can execute multiple instructions simultaneously, because every one of its computing elements is active. This greatly enhances the computing speed. By executing a meta program whose instructions change the connections in a dynamic Active element machine, the Active element machine can perform tasks that digital computers are unable to compute.

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