Patents by Inventor Neha KESHARI

Neha KESHARI has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20250045088
    Abstract: Described are examples for recommending increase in worker instance count for an availability zone in a cloud-based computing platform. A machine learning (ML) model can be used to predict a time series forecast of a workload for the availability zone in a future time period. A predicted number of worker instances to handle the predicted workload can be computed, and if the number of worker instances in the availability zone is less than the predicted number of worker instances, a recommendation to increase the number of worker instances in the availability zone can be generated.
    Type: Application
    Filed: August 4, 2023
    Publication date: February 6, 2025
    Inventors: Neha KESHARI, Abhisek PAN, David Allen DION, Brendon MACHADO, Karthik Subramaniam HARIHARAN, Karthikeyan SUBRAMANIAN, Thomas MOSCIBRODA, Karel Trueba NOBREGAS
  • Publication number: 20240419472
    Abstract: A search space for allocating a virtual machine is pruned. An allocation request for allocating a virtual machine to a plurality of clusters is received. A valid set of clusters is generated. The valid set of clusters includes clusters of the plurality of clusters that satisfy the allocation request. An attribute associated with the allocation request is identified. A truncation parameter is determined, by a trained search space classification model, based on the identified attribute. The valid set of clusters is filtered based on the truncation parameter. A server is selected from the filtered valid set of clusters. The virtual machine is allocated to the selected server. In an aspect of the disclosure, a search space pruner generates an analysis summary based on an analysis of received telemetry data. The search space pruner trains the search space classification model to determine truncation parameters based on the analysis summary.
    Type: Application
    Filed: June 19, 2023
    Publication date: December 19, 2024
    Inventors: Saurabh AGARWAL, Abhisek PAN, Brendon MACHADO, David Allen DION, Ishai MENACHE, Karthikeyan SUBRAMANIAN, Luke Jonathon MARSHALL, Neha KESHARI, Thomas MOSCIBRODA, Yiran WEI
  • Patent number: 11550634
    Abstract: A method for minimizing allocation failures in a cloud computing system without overprovisioning may include determining a predicted supply for a virtual machine series in a system unit of the cloud computing system during an upcoming time period. The predicted supply may be based on a shared available current capacity and a shared available future added capacity for the virtual machine series in the system unit. The method may also include predicting an available capacity for the virtual machine series in the system unit during the upcoming time period. The predicted available capacity may be based at least in part on a predicted demand for the virtual machine series in the system unit during the upcoming time period and the predicted supply. The method may also include taking at least one mitigation action in response to determining that the predicted demand exceeds the predicted supply during the upcoming time period.
    Type: Grant
    Filed: March 8, 2019
    Date of Patent: January 10, 2023
    Assignee: Microsoft Technology Licensing, LLC
    Inventors: Saurabh Agarwal, Maitreyee Ramprasad Joshi, Vinayak Ramnath Karnataki, Neha Keshari, Gowtham Natarajan, Yash Purohit, Sanjay Ramanujan, Karthikeyan Subramanian, Ambrose Thomas Treacy, Shandan Zhou
  • Publication number: 20200285525
    Abstract: A method for minimizing allocation failures in a cloud computing system without overprovisioning may include determining a predicted supply for a virtual machine series in a system unit of the cloud computing system during an upcoming time period. The predicted supply may be based on a shared available current capacity and a shared available future added capacity for the virtual machine series in the system unit. The method may also include predicting an available capacity for the virtual machine series in the system unit during the upcoming time period. The predicted available capacity may be based at least in part on a predicted demand for the virtual machine series in the system unit during the upcoming time period and the predicted supply. The method may also include taking at least one mitigation action in response to determining that the predicted demand exceeds the predicted supply during the upcoming time period.
    Type: Application
    Filed: March 8, 2019
    Publication date: September 10, 2020
    Inventors: Saurabh AGARWAL, Maitreyee Ramprasad JOSHI, Vinayak Ramnath KARNATAKI, Neha KESHARI, Gowtham NATARAJAN, Yash PUROHIT, Sanjay RAMANUJAN, Karthikeyan SUBRAMANIAN, Ambrose Thomas TREACY, Shandan ZHOU