Intel Corporation
DYNAMIC CONTROL OF SHARED RESOURCES BASED ON A NEURAL NETWORK
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Abstract:
Examples described herein relate to circuitry to utilize a proportional, derivative, integral neural network (PIDNN) controller to adjust one or more parameters allocated to a first group of one or more workloads based on one or more target parameters for a second group of one or more workloads. In some examples, the second group of one or more workloads are a same, lower, or higher priority level than that of the first group of one or more workloads.
Status:
Application
Type:
Utility
Filling date:
31 Mar 2022
Issue date:
14 Jul 2022