The patent badge is an abbreviated version of the USPTO patent document. The patent badge does contain a link to the full patent document.
The patent badge is an abbreviated version of the USPTO patent document. The patent badge covers the following: Patent number, Date patent was issued, Date patent was filed, Title of the patent, Applicant, Inventor, Assignee, Attorney firm, Primary examiner, Assistant examiner, CPCs, and Abstract. The patent badge does contain a link to the full patent document (in Adobe Acrobat format, aka pdf). To download or print any patent click here.
Patent No.:
Date of Patent:
Sep. 05, 2023
Filed:
Apr. 03, 2020
Microsoft Technology Licensing, Llc, Redmond, WA (US);
Irene Rogan Shaffer, Cambridge, MA (US);
Remmelt Herbert Lieve Ammerlaan, Cambridge, MA (US);
Gilbert Antonius, Cambridge, MA (US);
Marc T. Friedman, Seattle, WA (US);
Abhishek Roy, Bellevue, WA (US);
Lucas Rosenblatt, Somerville, MA (US);
Vijay Kumar Ramani, Boston, MA (US);
Shi Qiao, Mercer Island, WA (US);
Alekh Jindal, Sammamish, WA (US);
Peter Orenberg, Braintree, MA (US);
H M Sajjad Hossain, Waltham, MA (US);
Soundararajan Srinivasan, Cambridge, MA (US);
Hiren Shantilal Patel, Bothell, WA (US);
Markus Weimer, Kirkland, WA (US);
MICROSOFT TECHNOLOGY LICENSING, LLC, Redmond, WA (US);
Abstract
Methods of machine learning for system deployments without performance regressions are performed by systems and devices. A performance safeguard system is used to design pre-production experiments for determining the production readiness of learned models based on a pre-production budget by leveraging big data processing infrastructure and deploying a large set of learned or optimized models for its query optimizer. A pipeline for learning and training differentiates the impact of query plans with and without the learned or optimized models, selects plan differences that are likely to lead to most dramatic performance difference, runs a constrained set of pre-production experiments to empirically observe the runtime performance, and finally picks the models that are expected to lead to consistently improved performance for deployment. The performance safeguard system enables safe deployment not just for learned or optimized models but also for additional of other ML-for-Systems features.