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US Patent 10257275 Tuning software execution environments using Bayesian models

Patent 10257275 was granted and assigned to Amazon on April, 2019 by the United States Patent and Trademark Office.

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Is a
Patent
Patent
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Patent attributes

Patent Applicant
Amazon
Amazon
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Current Assignee
Amazon
Amazon
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Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
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Patent Number
102572750
Patent Inventor Names
Rodolphe Jenatton0
Leo Parker Dirac0
Date of Patent
April 9, 2019
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Patent Application Number
149232370
Date Filed
October 26, 2015
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Patent Citations Received
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US Patent 12118184 Efficiently augmenting images with related content
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US Patent 11853017 Machine learning optimization framework
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US Patent 11868810 Resource adaptation using nonlinear relationship between system performance metric and resource usage
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US Patent 12026612 Optimization of parameter values for machine-learned models
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0
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US Patent 12073298 Machine learning service
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US Patent 10678971 Space exploration with Bayesian inference
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US Patent 11586474 Adaptation of resource allocation for multiple workloads using interference effect of resource allocation of additional workloads on performance
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Patent Primary Examiner
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Viet D Vu
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Patent abstract

An optimizer for a software execution environment determines an objective function and permitted settings for various tunable parameters of the environment. To represent the execution environment, the optimizer generates a Bayesian optimization model employing Gaussian process priors. The optimizer implements a plurality of iterations of execution of the model, interleaved with observation collection intervals. During a given observation collection interval, tunable parameter settings suggested by the previous model execution iteration are used in the execution environment, and the observations collected during the interval are used as inputs for the next model execution iteration. When an optimization goal is attained, the tunable settings that led to achieving the goal are stored.

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