EVALUATING NEW FEATURE(S) FOR CLIENT DEVICE(S) BASED ON PERFORMANCE MEASURE(S)

Implementations disclosed herein are directed to systems and methods for evaluating new feature(s) for client device(s) based on performance measure(s) of the client device(s) and/or the new feature(s). The new feature(s) can include, for example, machine learning (ML) model(s), non-ML software-enab...

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Hauptverfasser: Lucassen, Tamar, Zivkovic, Dragan, Agrawal, Akash, Bleyan, Harry
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creator Lucassen, Tamar
Zivkovic, Dragan
Agrawal, Akash
Bleyan, Harry
description Implementations disclosed herein are directed to systems and methods for evaluating new feature(s) for client device(s) based on performance measure(s) of the client device(s) and/or the new feature(s). The new feature(s) can include, for example, machine learning (ML) model(s), non-ML software-enabled functionality, non-ML hardware-enabled functionality, and/or ML or non-ML software application features for a given software application utilized by the client device(s). The client device(s) can generate the performance measure(s) by processing a plurality of testing instances for the new feature(s). The performance measure(s) can include, for example, latency measure(s), memory consumption measure(s), CPU usage measure(s), precision and/or recall measure(s), and/or other measures. In some implementations, the new feature(s) may be activated for use locally at the client device(s) based on the performance measure(s), and optionally at other client device(s) that share the same device characteristics. In other implementations, the new feature(s) may be modified based on the performance measure(s).
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subjects CALCULATING
COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
COMPUTING
COUNTING
ELECTRIC DIGITAL DATA PROCESSING
PHYSICS
title EVALUATING NEW FEATURE(S) FOR CLIENT DEVICE(S) BASED ON PERFORMANCE MEASURE(S)
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