← USPTO Patent Grants

Tuning large data infrastructures

Grant US12579120B2 Kind: B2 Mar 17, 2026

Assignee

Microsoft Technolgy Licensing, LLC.

Inventors

Yiwen Zhu, Subramaniam Venkatraman Krishnan, Konstantinos Karanasos, Carlo Curino, Isha Tarte, Sudhir Darbha

Abstract

An automated tuning service is used to automatically tune, or modify, the operational parameters of a large-scale cloud infrastructure. The tuning service performs automated and fully data/model-driven configuration based from learning various real-time performance of the cloud infrastructure. Such performance is identified through monitoring various telemetric data of the cloud infrastructure. The tuning service leverages a mix of domain knowledge and principled data-science to capture the essence of our cluster dynamic behavior in a collection of descriptive machine learning (ML) models. The ML models power automated optimization procedures for parameter tuning, and inform administrators in most tactical and strategical engineering/capacity decisions (such as hardware and datacenter design, software investments, etc.). Rich “observational” models (models collected without modifying the system) are combined with judicious use of “fighting” (testing in production), allowing the tuning service to automatically configure operational parameters of a large cloud infrastructure for a broad range of applications.

CPC Classifications

G06F 16/217 G06F 16/182 G06F 16/188 G06F 16/1727 G06F 16/1734 G06F 16/1834 G06F 11/3006 G06F 11/3433 G06F 11/3093 G06F 11/3495 G06N 20/00

Filing Date

2023-12-08

Application No.

18534559

Claims

20