Patents by Inventor Sai Hareesh Anamandra

Sai Hareesh Anamandra 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: 20240104153
    Abstract: A method includes receiving, at a search toolbar, a search query from a machine in a network. The machine has an associated machine profile for participating in the network as an entity. The machine profile includes a machine identifier and machine metadata. A query type is determined from the search query. A search context for the machine is determined using a semantic graph of the network. From a set of services for the network, one or more relevant services to respond to the search query are identified based on the query type and the search context. The search query is applied to the one or more relevant services to obtain a set of responses. A set of relevant results for the search query is determined from the set of responses. The set of relevant results is transmitted to the machine.
    Type: Application
    Filed: September 23, 2022
    Publication date: March 28, 2024
    Applicant: SAP SE
    Inventors: Gopi Kishan, Rohit Jalagadugula, Kavitha Krishnan, Sai Hareesh Anamandra, Akash Srivastava
  • Publication number: 20240095525
    Abstract: A computer-implemented method for building a machine learning (ML) model is provided. The method includes training a ML model using a set of input data, wherein the ML model includes a plurality of layers and each layer includes a plurality of filters, and wherein the set of input data includes class labels; obtaining a set of output data from training the ML model, wherein the set of output data includes class probabilities values; determining, for each layer in the ML model, by using the class labels and the class probabilities values, a working value for each filter in the layer; determining, for each layer in the ML model, a dominant filter, wherein the dominant filter is determined based on whether the working value for the filter exceeds a threshold; and building a subset ML model based on each dominant filter for each layer, wherein the subset ML model is a subset of the ML model.
    Type: Application
    Filed: February 4, 2021
    Publication date: March 21, 2024
    Applicant: Telefonaktiebolaget LM Ericsson (publ)
    Inventors: Perepu SATHEESH KUMAR, M SARAVANAN, Sai Hareesh ANAMANDRA
  • Publication number: 20240095105
    Abstract: A method includes receiving a message query from an entity identifier participating in a social network. The message query specifies one or more entities, one or more requirements, and one or more constraints. A set of message query parameters is generated based on the message query. A set of queries for a semantic graph of the social network is generated based on the set of message query parameters. The set of queries is applied to the semantic graph to obtain a set of query results. A message context of the entity identifier is determined based on the set of query results and the set of message query parameters. A set of messages from a message repository is determined based on the message context. The set of messages can be presented on a client computer associated with the entity identifier.
    Type: Application
    Filed: September 20, 2022
    Publication date: March 21, 2024
    Applicant: SAP SE
    Inventors: Sai Hareesh Anamandra, Gopi Kishan, Kavitha Krishnan, Rohit Jalagadugula, Akash Srivastava
  • Publication number: 20240086766
    Abstract: A computer-implemented method performed by a network node is provided. The method includes receiving a request for retrieving or executing a machine learning (ML) model or a combination of ML models. The request includes a first description of a specified output feature and specified input data type and distribution of input values for a ML model or combination of ML models. The method further includes obtaining an identification of a ML model, or a combination of ML models, having a second description that at least partially satisfies a match to the first description; identifying a candidate ML model, or combination of ML models, that produces the specified output feature of the first description based on a comparison of the first and second descriptions. The method further includes selecting a third description of the identified candidate ML model, or combination of ML models, based on a convergence.
    Type: Application
    Filed: January 29, 2021
    Publication date: March 14, 2024
    Inventors: Athanasios KARAPENTELAKIS, Alessandro PREVITI, Konstantinos VANDIKAS, Lackis ELEFTHERIADIS, Marin ORLIC, Marios DAOUTIS, Maxim TESLENKO, Sai Hareesh ANAMANDRA
  • Publication number: 20240078495
    Abstract: Systems, methods, and computer media for determining compatible users through machine learning are provided herein. Previous interactions between some users in a group can be used to determine a first set of user-to-user compatibility scores. Both the first set of compatibility scores and attributes for the users in the group can be provided as inputs to a machine learning model that can be used to determine a second set of user-to-user compatibility scores for user pairs who do not have an interaction history. Along with input constraints, the first and second sets of user-to-user compatibility scores can be used to select compatible user groups.
    Type: Application
    Filed: August 29, 2022
    Publication date: March 7, 2024
    Applicant: SAP SE
    Inventors: Sai Hareesh Anamandra, Gopi Kishan, Rohit Jalagadugula, Akash Srivastava, Kavitha Krishnan, Vinay George Roy
  • Patent number: 11853950
    Abstract: A method may include collecting data from a variety of data sources associated with a user. The data sources may include personal data sources, corporate data sources, and public data source. The data collected from the variety of data sources may be enriched through categorization and aggregation. For example, browser history may be categorized based on types of website and aggregated to reflect the quantity of interactions with each category of website. A multi-dimensional digital profile may be generated based on the enriched data. For instance, the digital profile may include a social, emotional, spiritual, environmental, occupational, intellectual, and physical dimension. One or more recommendation corresponding to one or more of a burnout prediction, wellness recommendation, learning plan, skill gap, and personality type may be generated based on the digital profile. Related systems and computer program products are also provided.
    Type: Grant
    Filed: September 27, 2021
    Date of Patent: December 26, 2023
    Assignee: SAP SE
    Inventors: Martin Wezowski, Hans-Martin Will, Rohit Jalagadugula, Kavitha Krishnan, Sai Hareesh Anamandra, Vinay George Roy, Parthasarathy Menon, Alexander Schaefer
  • Patent number: 11651584
    Abstract: A system is presented. The system includes an acquisition subsystem configured to obtain images corresponding to a target domain. Moreover, the system includes a processing subsystem in operative association with the acquisition subsystem and including a memory augmented domain adaptation platform configured to compute one or more features of an input image corresponding to a target domain, identify a set of support images based on the features of the input image, where the set of support images corresponds to the target domain, augment an input to a machine-learnt model with a set of features, a set of masks, or both corresponding to the set of support images to adapt the machine-learnt model to the target domain, and generate an output based at least on the set of features, the set of masks, or both. Additionally, the system includes an interface unit configured to present the output for analysis.
    Type: Grant
    Filed: October 16, 2018
    Date of Patent: May 16, 2023
    Assignee: General Electric Company
    Inventors: Rahul Venkataramani, Rakesh Mullick, Sandeep Kaushik, Hariharan Ravishankar, Sai Hareesh Anamandra
  • Publication number: 20230131099
    Abstract: A method may include training one or more machine learning models to predict a decline in employee performance. The machine learning models may be trained in a federated manner to avoid the exchange of personal data. The trained machine learning models may be applied to data associated with an employee that corresponds to one or more leading indicators of employee burnout. In response to the trained machine learning models predicting a decline in the performance of the employee, the root causes of the predicted decline in the performance of the employee may be identified by applying an explainability algorithm such as Shapley Additive Explanations (SHAP). A report including a corrective action for the predicted decline in employee performance may be generated based on the root causes. Related systems and computer program products are also provided.
    Type: Application
    Filed: October 22, 2021
    Publication date: April 27, 2023
    Inventors: Sai Hareesh Anamandra, Kavitha Krishnan, Rohit Jalagadugula, Parthasarathy Menon, Aditi D'Souza, Shrusti Mohanty, Lingyun Bu, Vinay George Roy
  • Publication number: 20230096720
    Abstract: A method may include collecting data from a variety of data sources associated with a user. The data sources may include personal data sources, corporate data sources, and public data source. The data collected from the variety of data sources may be enriched through categorization and aggregation. For example, browser history may be categorized based on types of website and aggregated to reflect the quantity of interactions with each category of website. A multi-dimensional digital profile may be generated based on the enriched data. For instance, the digital profile may include a social, emotional, spiritual, environmental, occupational, intellectual, and physical dimension. One or more recommendation corresponding to one or more of a burnout prediction, wellness recommendation, learning plan, skill gap, and personality type may be generated based on the digital profile. Related systems and computer program products are also provided.
    Type: Application
    Filed: September 27, 2021
    Publication date: March 30, 2023
    Inventors: Martin Wezowski, Hans-Martin Will, Rohit Jalagadugula, Kavitha Krishnan, Sai Hareesh Anamandra, Vinay George Roy, Parthasarathy Menon, Alexander Schaefer
  • Patent number: 11580384
    Abstract: The present approach relates to a system capable of life-long learning in a deep learning context. The system includes a deep learning network configured to process an input dataset and perform one or more tasks from among a first set of tasks. As an example, the deep learning network may be part of an imaging system, such as a medical imaging system, or may be used in industrial applications. The system further includes a learning unit communicatively coupled to the deep learning network 102 and configured to modify the deep learning network so as to enable it to perform one or more tasks in a second task list without losing the ability to perform the tasks from the first list.
    Type: Grant
    Filed: July 25, 2019
    Date of Patent: February 14, 2023
    Assignee: GE Precision Healthcare LLC
    Inventors: Rahul Venkataramani, Sai Hareesh Anamandra, Hariharan Ravishankar, Prasad Sudhakar
  • Publication number: 20200118043
    Abstract: A system is presented. The system includes an acquisition subsystem configured to obtain images corresponding to a target domain. Moreover, the system includes a processing subsystem in operative association with the acquisition subsystem and including a memory augmented domain adaptation platform configured to compute one or more features of an input image corresponding to a target domain, identify a set of support images based on the features of the input image, where the set of support images corresponds to the target domain, augment an input to a machine-learnt model with a set of features, a set of masks, or both corresponding to the set of support images to adapt the machine-learnt model to the target domain, and generate an output based at least on the set of features, the set of masks, or both. Additionally, the system includes an interface unit configured to present the output for analysis.
    Type: Application
    Filed: October 16, 2018
    Publication date: April 16, 2020
    Inventors: Rahul Venkataramani, Rakesh Mullick, Sandeep Kaushik, Hariharan Ravishankar, Sai Hareesh Anamandra
  • Publication number: 20200104704
    Abstract: The present approach relates to a system capable of life-long learning in a deep learning context. The system includes a deep learning network configured to process an input dataset and perform one or more tasks from among a first set of tasks. As an example, the deep learning network may be part of an imaging system, such as a medical imaging system, or may be used in industrial applications. The system further includes a learning unit communicatively coupled to the deep learning network 102 and configured to modify the deep learning network so as to enable it to perform one or more tasks in a second task list without losing the ability to perform the tasks from the first list.
    Type: Application
    Filed: July 25, 2019
    Publication date: April 2, 2020
    Inventors: Rahul Venkataramani, Sai Hareesh Anamandra, Hariharan Ravishankar, Prasad Sudhakar