Patents by Inventor Sidharth Sharma

Sidharth Sharma 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: 11310119
    Abstract: Methods and apparatuses for using a neural network based model to predict an output port for a destination Internet Protocol (IP) address in a network are described. Some embodiments can construct an untrained model comprising a graph neural network (GNN), a first artificial feed-forward neural network (ANN), and a second ANN. Next, the embodiments can train the untrained model to obtain a trained model by: training the first ANN using at least IP addresses of destination nodes in the network, training the GNN using at least an adjacency matrix of the network and initial node features computed using the IP addresses of destination nodes in the network, and training the second ANN by combining the output of the first ANN and an output of the GNN using an attention mechanism. The embodiments can then use the trained model to predict the output port for the destination IP address.
    Type: Grant
    Filed: April 30, 2020
    Date of Patent: April 19, 2022
    Assignee: Indian Institute of Technology, Bombay
    Inventors: Abhiram Singh, Sidharth Sharma, Ashwin Gumaste
  • Publication number: 20210297324
    Abstract: Methods and apparatuses for using a neural network based model to predict an output port for a destination Internet Protocol (IP) address in a network are described. Some embodiments can construct an untrained model comprising a graph neural network (GNN), a first artificial feed-forward neural network (ANN), and a second ANN. Next, the embodiments can train the untrained model to obtain a trained model by: training the first ANN using at least IP addresses of destination nodes in the network, training the GNN using at least an adjacency matrix of the network and initial node features computed using the IP addresses of destination nodes in the network, and training the second ANN by combining the output of the first ANN and an output of the GNN using an attention mechanism. The embodiments can then use the trained model to predict the output port for the destination IP address.
    Type: Application
    Filed: April 30, 2020
    Publication date: September 23, 2021
    Applicant: Indian Institute of Technology, Bombay
    Inventors: Abhiram Singh, Sidharth Sharma, Ashwin Gumaste
  • Patent number: 10728139
    Abstract: Methods and apparatuses for building a programmable dataplane are described. Specifically, the programmable dataplane can work on a list of identifiers, such as those part of OpenFlow 1.5. Specifically, the programmable dataplane can be built by creating a virtual network graph at a controller node using binary identifiers such that a node is broken into an n-ary tree and the tree has 1×2 or 1×1 nodes.
    Type: Grant
    Filed: September 26, 2018
    Date of Patent: July 28, 2020
    Assignees: Indian Institute of Technology, Bombay, Defence Research & Development Organisation
    Inventors: Ashwin Gumaste, Aniruddha Kushwaha, Sidharth Sharma, Mahesh Jagtap
  • Publication number: 20190319876
    Abstract: Methods and apparatuses for building a programmable dataplane are described. Specifically, the programmable dataplane can work on a list of identifiers, such as those part of OpenFlow 1.5. Specifically, the programmable dataplane can be built by creating a virtual network graph at a controller node using binary identifiers such that a node is broken into an n-ary tree and the tree has 1×2 or 1×1 nodes.
    Type: Application
    Filed: September 26, 2018
    Publication date: October 17, 2019
    Applicant: Indian Institute of Technology, Bombay
    Inventors: Ashwin Gumaste, Aniruddha Kushwaha, Sidharth Sharma