Patents by Inventor Manish Suthar

Manish Suthar 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: 20230132786
    Abstract: An optimization apparatus that receives data related to operational characteristics of a plurality of devices in a network, classifies the plurality of devices in the network into a plurality of clusters based on the data, builds a plurality of artificial intelligence (AI) models, each of the AI models corresponding to one of the plurality of clusters, determines a predicted operational characteristic for a first device based on an AI model, among the AI models, corresponding to a cluster to which the first device belongs, and outputs a recommendation for the first device based on the predicted operational characteristics.
    Type: Application
    Filed: October 29, 2021
    Publication date: May 4, 2023
    Applicant: RAKUTEN MOBILE, INC.
    Inventors: Krishnakumar KESAVAN, Alexander DORIA, Manish SUTHAR
  • Publication number: 20230071606
    Abstract: Server hardware failure is predicted, with a probability estimate, of a possible future server failure along with an estimated cause of the future server failure. Based on the prediction, the particular server can be evaluated and if the risk is confirmed, load balancing can be performed to move a load (e.g., virtual machines (VMs)) off of the at-risk server onto low-risk servers. High availability of deployed load (e.g., VMs) is then achieved. A flow of big data may be on the order of 1,000,000 parameters per minute. A scalable tree-based AI inference engine processes the flow. One or more leading indicators are identified (including server parameters and statistic types) which reliably predict hardware failure. This allows a telco operator to monitor cloud-based VMs and perform a hot-swap on virtual machines if needed by shifting virtual machines VMs from the at-risk server to low-risk servers. Servers having a health score indicating high risk are indicated on a visual display called a heat map.
    Type: Application
    Filed: January 21, 2022
    Publication date: March 9, 2023
    Applicant: RAKUTEN SYMPHONY SINGAPORE PTE. LTD.
    Inventors: Krishnakumar KESAVAN, Manish SUTHAR
  • Publication number: 20230060461
    Abstract: Server hardware failure is predicted, with a probability estimate, of a possible future server failure along with an estimated cause of the future server failure. Based on the prediction, the particular server can be evaluated and if the risk is confirmed, load balancing can be performed to move a load (e.g., virtual machines (VMs)) off of the at-risk server onto low-risk servers. High availability of deployed load (e.g., VMs) is then achieved. A flow of big data may be on the order of 1,000,000 parameters per minute. A scalable tree-based AI inference engine processes the flow. One or more leading indicators are identified (including server parameters and statistic types) which reliably predict hardware failure. This allows a telco operator to monitor cloud-based VMs and perform a hot-swap on virtual machines if needed by shifting virtual machines VMs from the at-risk server to low-risk servers. Servers having a health score indicating high risk are indicated on a visual display called a heat map.
    Type: Application
    Filed: January 21, 2022
    Publication date: March 2, 2023
    Applicant: Rakuten Symphony Singapore Pte. Ltd.
    Inventors: Krishnakumar KESAVAN, Manish SUTHAR
  • Publication number: 20230060199
    Abstract: Server hardware failure is predicted, with a probability estimate, of a possible future server failure along with an estimated cause of the future server failure. Based on the prediction, the particular server can be evaluated and if the risk is confirmed, load balancing can be performed to move a load (e.g., virtual machines (VMs)) off of the at-risk server onto low-risk servers. High availability of deployed load (e.g., VMs) is then achieved. A flow of big data may be on the order of 1,000,000 parameters per minute. A scalable tree-based AI inference engine processes the flow. One or more leading indicators are identified (including server parameters and statistic types) which reliably predict hardware failure. This allows a telco operator to monitor cloud-based VMs and perform a hot-swap on virtual machines if needed by shifting virtual machines VMs from the at-risk server to low-risk servers. Servers having a health score indicating high risk are indicated on a visual display called a heat map.
    Type: Application
    Filed: January 21, 2022
    Publication date: March 2, 2023
    Applicant: RAKUTEN SYMPHONY SINGAPORE PTE. LTD.
    Inventors: Krishnakumar Kesavan, Manish Suthar