Patents by Inventor Vadiraja S. Ramamurthy

Vadiraja S. Ramamurthy 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).

  • Patent number: 10839338
    Abstract: A predictive engine on a computer environment comprising a shared pool of configurable computing resources is executed to perform a predictive analysis on data pipelined into the computer environment, the data received from a plurality of sources and in a plurality of different formats, the predictive engine generating a network level cost information based on the predictive analysis on a dynamic and continuous basis. Asynchronous communication comprising the network level cost information from the predictive engine is received and a set of candidate nodes for order fulfillment is generated based on the network level cost information and a defined distance between the set of candidate nodes and a target destination. An optimization engine on the computer environment is invoked that filters the set of candidate nodes. A number of fulfillment nodes that meet one or more of a constraint and preconfigured rule is output.
    Type: Grant
    Filed: May 13, 2016
    Date of Patent: November 17, 2020
    Assignee: International Business Machines Corporation
    Inventors: Sanjay E. Cheeran, Ajay A. Deshpande, Saurabh Gupta, Arun Hampapur, Steve Igrejas, Ali Koc, Pradyumnha G. Kowlani, Yingjie Li, Ding Ding Lin, Xuan Liu, Christopher S. Milite, Brian L. Quanz, Vadiraja S. Ramamurthy, Sachin Sethiya, Chek Keong Tan, Dahai Xing, Michael Yesudas, Xiaobo Zheng
  • Publication number: 20170228812
    Abstract: A method and system optimizing source selection of an online order with the lowest fulfillment cost by considering multiple types of parameters, including shipping costs, backlog costs and markdown savings of the order. The method includes obtaining an order from the order retrieval subsystem of the OMS, selecting the candidate sources, and retrieving data from retailers or shipping companies of each selected candidate sources. The system then calculates the costs and savings parameters of the candidate sources from the retrieved data. The system identifies all possible candidate sourcing selections of the order and calculates the total fulfillment cost of each sourcing selection of the order by adding the shipping costs with the backlog costs, and subtracting the markdown savings of all candidate sources in each sourcing selection. The system identifies the optimized sourcing selection of the order with the lowest fulfillment cost and renders the selection to the OMS.
    Type: Application
    Filed: February 8, 2016
    Publication date: August 10, 2017
    Inventors: JoAnn P. Brereton, Ajay A. Deshpande, Hongliang Fei, Arun Hampapur, Miao He, Kimberly D. Hendrix, Steve Igrejas, Alan J. King, Yingjie Li, Xuan Liu, Christopher S. Milite, Jae-Eun Park, Vadiraja S. Ramamurthy, Joline Ann V. Uichanco, Songhua Xing, Xiao Bo Zheng
  • Publication number: 20170206481
    Abstract: A predictive engine on a computer environment comprising a shared pool of configurable computing resources is executed to perform a predictive analysis on data pipelined into the computer environment, the data received from a plurality of sources and in a plurality of different formats, the predictive engine generating a network level cost information based on the predictive analysis on a dynamic and continuous basis. Asynchronous communication comprising the network level cost information from the predictive engine is received and a set of candidate nodes for order fulfillment is generated based on the network level cost information and a defined distance between the set of candidate nodes and a target destination. An optimization engine on the computer environment is invoked that filters the set of candidate nodes. A number of fulfillment nodes that meet one or more of a constraint and preconfigured rule is output.
    Type: Application
    Filed: May 13, 2016
    Publication date: July 20, 2017
    Inventors: Sanjay E. Cheeran, Ajay A. Deshpande, Saurabh Gupta, Arun Hampapur, Steve Igrejas, Ali Koc, Pradyumnha G. Kowlani, Yingjie Li, Ding Ding Lin, Xuan Liu, Christopher S. Milite, Brian L. Quanz, Vadiraja S. Ramamurthy, Sachin Sethiya, Chek Keong Tan, Dahai Xing, Michael Yesudas, Xiaobo Zheng