Patents by Inventor Kaushik Sanyal

Kaushik Sanyal 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: 11657411
    Abstract: The present invention provides a system, method, software and data structure for independently predicting attitudinal and message responsiveness, using a plurality of attitudinal or other identification classifications and a plurality of message content or version classifications, for a selected population of a plurality of entities, such as individuals or households, represented in a data repository. The plurality of predictive attitudinal (or identification) classifications and plurality of predictive message content (ore version) classifications have been determined using a plurality of predictive models developed from a sample population and applied to a reference population represented in the data repository, such as attitudinal, behavioral, or demographic models. For each predictive attitudinal (or identification) classification, at least one predominant predictive message content or version classification is independently determined.
    Type: Grant
    Filed: October 15, 2020
    Date of Patent: May 23, 2023
    Assignee: Experian Marketing Solutions, LLC
    Inventors: Marc Christian Fanelli, Patricia Kay Gormley, Kymberly Ann Kulle, Thomas G. Nocerino, Kaushik Sanyal
  • Patent number: 11252052
    Abstract: Embodiments provide for prediction and mitigation of network faults. Information associated network nodes may be compiled and used to generate network analytical records (NARs). A first model may be executed against the NARs to predict faults associated with one or more nodes of the network. Tickets are generated for predicted faults and stored in a ticket database. The tickets may be analyzed to predict executable actions to mitigate the faults associated with each ticket. To analyze the tickets, ticket data may be compiled and used to generate ticket analytical records (TARs). A second model may be executed against the TARs predict actions to resolve the predicted faults. The predicted actions may be executed to mitigate the impact that the faults have on the network, which may include preventing the faults entirely (e.g., via preventative maintenance) or minimizing the impact of the faults via use of the predicted actions.
    Type: Grant
    Filed: February 19, 2021
    Date of Patent: February 15, 2022
    Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITED
    Inventors: Shoban Babu Balasubramani, Meet Navinchandra Jivani, Ruchi Chaudhary, Kaushik Sanyal
  • Patent number: 10978054
    Abstract: In some implementations, a device may receive unstructured interaction data identifying an interaction of a user with a user device. The device may receive historical unstructured interaction data identifying historical interactions of users and historical unstructured resolution data identifying historical resolutions to the historical interactions. The device may process the historical unstructured interaction data and the historical unstructured resolution data to determine historical structured interaction data and historical structured resolution data. The device may process the unstructured interaction data and the historical structured interaction data to determine pretext identifiers for the interaction of the user. The device may process the pretext identifiers and the historical structured resolution data to generate a resolution network identifying possible resolutions to the interaction of the user.
    Type: Grant
    Filed: November 3, 2020
    Date of Patent: April 13, 2021
    Assignee: Accenture Global Solutions Limited
    Inventors: Gurpreet Singh Bawa, Kaustav Pakira, Souvik Chakraborty, Sanjay S. Sharma, Kaushik Sanyal
  • Patent number: 10810605
    Abstract: The present invention provides a system, method, software and data structure for independently predicting attitudinal and message responsiveness, using a plurality of attitudinal or other identification classifications and a plurality of message content or version classifications, for a selected population of a plurality of entities, such as individuals or households, represented in a data repository. The plurality of predictive attitudinal (or identification) classifications and plurality of predictive message content (ore version) classifications have been determined using a plurality of predictive models developed from a sample population and applied to a reference population represented in the data repository, such as attitudinal, behavioral, or demographic models. For each predictive attitudinal (or identification) classification, at least one predominant predictive message content or version classification is independently determined.
    Type: Grant
    Filed: October 23, 2017
    Date of Patent: October 20, 2020
    Assignee: Experian Marketing Solutions, LLC
    Inventors: Marc Christian Fanelli, Patricia Kay Gormley, Kymberly Ann Kulle, Thomas G. Nocerino, Kaushik Sanyal
  • Patent number: 10616299
    Abstract: A device may communicate with a group of devices to obtain data regarding a set of events occurring for the group of devices. The device may process the data regarding the set of events to remove a subset of data entries, from the data, that is associated with an anomalous event. A first layer of analysis may relate to the group of devices, a second layer of analysis relating to a set of sessions of operating a user interface via the group of devices, and a third layer of analysis relating to information provided via the user interface. The device may perform the multiple layers of analysis via a machine learning technique to identify an alteration relating to the information provided via the user interface. The device may alter the information provided via the user interface based on performing the multiple layers of analysis.
    Type: Grant
    Filed: August 19, 2016
    Date of Patent: April 7, 2020
    Assignee: Accenture Global Solutions Limited
    Inventors: Ketaki Deshpande, Muthumari Shanmugasundaram, Ruchika Sachdeva, Laura Chittick, Youssef D. Tuma, Jonathan Saginaw, Juhi Munjal, Michael Baldino, III, Jonathan Stribley, Kaushik Sanyal, Arnab D. Chakraborty, Deepthi Adimulam
  • Patent number: 10069684
    Abstract: A method may include determining first network data corresponding to a first time period, including alarm data and incident data collected by a set of network devices of a core network during the first time period. The method may include creating, based on the first network data, an incident prediction model. The method may include receiving second network data, associated with the core network, corresponding to a second time period. The second network data may include alarm data and incident data collected by a network device, of the set of network devices, during the second time period. The method may include generating, based on the second network data and the incident prediction model, an incident prediction that includes a prediction whether the network device will experience an incident during a third time period.
    Type: Grant
    Filed: April 12, 2016
    Date of Patent: September 4, 2018
    Assignee: Accenture Global Services Limited
    Inventors: Mayank Kant, Rajan Shingari, Kaushik Sanyal, Arnab D. Chakraborty, Kumar Saurabh, Saket Bhardawaj, Vinoth Venkataraman, Vikas Kumar, Juan Morlanes Montesinos, Fernando Rex Lopez
  • Publication number: 20180121940
    Abstract: The present invention provides a system, method, software and data structure for independently predicting attitudinal and message responsiveness, using a plurality of attitudinal or other identification classifications and a plurality of message content or version classifications, for a selected population of a plurality of entities, such as individuals or households, represented in a data repository. The plurality of predictive attitudinal (or identification) classifications and plurality of predictive message content (ore version) classifications have been determined using a plurality of predictive models developed from a sample population and applied to a reference population represented in the data repository, such as attitudinal, behavioral, or demographic models. For each predictive attitudinal (or identification) classification, at least one predominant predictive message content or version classification is independently determined.
    Type: Application
    Filed: October 23, 2017
    Publication date: May 3, 2018
    Inventors: Marc Christian Fanelli, Patricia Kay Gormley, Kymberly Ann Kulle, Thomas G. Nocerino, Kaushik Sanyal
  • Publication number: 20170289226
    Abstract: A device may communicate with a group of devices to obtain data regarding a set of events occurring for the group of devices. The device may process the data regarding the set of events to remove a subset of data entries, from the data, that is associated with an anomalous event. A first layer of analysis may relate to the group of devices, a second layer of analysis relating to a set of sessions of operating a user interface via the group of devices, and a third layer of analysis relating to information provided via the user interface. The device may perform the multiple layers of analysis via a machine learning technique to identify an alteration relating to the information provided via the user interface. The device may alter the information provided via the user interface based on performing the multiple layers of analysis.
    Type: Application
    Filed: August 19, 2016
    Publication date: October 5, 2017
    Inventors: Ketaki DESHPANDE, Muthumari SHANMUGASUNDARAM, Ruchika SACHDEVA, Laura CHITTICK, Youssef D. TUMA, Jonathan SAGINAW, Juhi MUNJAL, Michael BALDINO, III, Jonathan STRIBLEY, Kaushik SANYAL, Arnab D. CHAKRABORTY, Deepthi ADIMULAM
  • Publication number: 20170048109
    Abstract: A method may include determining first network data corresponding to a first time period, including alarm data and incident data collected by a set of network devices of a core network during the first time period. The method may include creating, based on the first network data, an incident prediction model. The method may include receiving second network data, associated with the core network, corresponding to a second time period. The second network data may include alarm data and incident data collected by a network device, of the set of network devices, during the second time period. The method may include generating, based on the second network data and the incident prediction model, an incident prediction that includes a prediction whether the network device will experience an incident during a third time period.
    Type: Application
    Filed: April 12, 2016
    Publication date: February 16, 2017
    Inventors: Mayank KANT, Rajan SHINGARI, Kaushik SANYAL, Arnab D. CHAKRABORTY, Kumar SAURABH, Saket BHARDAWAJ, Vinoth VENKATARAMAN, Vikas KUMAR, Juan MORLANES MONTESINOS, Fernando REX LOPEZ
  • Publication number: 20170032393
    Abstract: The present invention provides a system, method, software and data structure for independently predicting attitudinal and message responsiveness, using a plurality of attitudinal or other identification classifications and a plurality of message content or version classifications, for a selected population of a plurality of entities, such as individuals or households, represented in a data repository. The plurality of predictive attitudinal (or identification) classifications and plurality of predictive message content (ore version) classifications have been determined using a plurality of predictive models developed from a sample population and applied to a reference population represented in the data repository, such as attitudinal, behavioral, or demographic models. For each predictive attitudinal (or identification) classification, at least one predominant predictive message content or version classification is independently determined.
    Type: Application
    Filed: October 13, 2016
    Publication date: February 2, 2017
    Inventors: Marc Christian Fanelli, Patricia Kay Gormley, Kymberly Ann Kulle, Thomas G. Nocerino, Kaushik Sanyal
  • Patent number: 9471928
    Abstract: The present invention provides a system, method, software and data structure for independently predicting attitudinal and message responsiveness, using a plurality of attitudinal or other identification classifications and a plurality of message content or version classifications, for a selected population of a plurality of entities, such as individuals or households, represented in a data repository. The plurality of predictive attitudinal (or identification) classifications and plurality of predictive message content (ore version) classifications have been determined using a plurality of predictive models developed from a sample population and applied to a reference population represented in the data repository, such as attitudinal, behavioral, or demographic models. For each predictive attitudinal (or identification) classification, at least one predominant predictive message content or version classification is independently determined.
    Type: Grant
    Filed: November 29, 2012
    Date of Patent: October 18, 2016
    Assignee: Experian Marketing Solutions, Inc.
    Inventors: Marc Christian Fanelli, Patricia Kay Gormley, Kymberly Ann Kulle, Thomas G. Nocerino, Kaushik Sanyal
  • Publication number: 20160036718
    Abstract: A device may determine a performance metric associated with a network service management process. The device may determine a key question that may identify a business issue associated with improving the performance metric. The device may perform a root cause analysis that identifies a solution to the key question. The solution may identify a manner in which the network service management process is to be modified in order to improve the performance metric. The device may forecast, based on the solution, a network service demand that may identify a quantity of expected future network service actions expected based on implementing the solution. The device may perform, based on the forecasted network service demand, capacity planning that may identify network service resources required to satisfy the forecasted network service demand. The device may schedule the network service resources such that the solution is implemented within the network service management process.
    Type: Application
    Filed: September 9, 2014
    Publication date: February 4, 2016
    Inventors: Rajan SHINGARI, Kaushik Sanyal, Dimas Hartz Pinto, Arnab Chakraborty, Wallace Silva, Garvit Gupta, Shilpa Taneja, Saurabh Mathur, Luiz C. Nunes, Francisco M. Vasconcelos, Marco T. Baptista
  • Publication number: 20130332230
    Abstract: The present invention provides a system, method, software and data structure for independently predicting attitudinal and message responsiveness, using a plurality of attitudinal or other identification classifications and a plurality of message content or version classifications, for a selected population of a plurality of entities, such as individuals or households, represented in a data repository. The plurality of predictive attitudinal (or identification) classifications and plurality of predictive message content (ore version) classifications have been determined using a plurality of predictive models developed from a sample population and applied to a reference population represented in the data repository, such as attitudinal, behavioral, or demographic models. For each predictive attitudinal (or identification) classification, at least one predominant predictive message content or version classification is independently determined.
    Type: Application
    Filed: November 29, 2012
    Publication date: December 12, 2013
    Applicant: EXPERIAN MARKETING SOLUTIONS, INC.
    Inventors: Marc Christian Fanelli, Patricia Kay Gormley, Kymberly Ann Kulle, Thomas G. Nocerino, Kaushik Sanyal
  • Patent number: 8346593
    Abstract: The present invention provides a system, method, software and data structure for independently predicting attitudinal and message responsiveness, using a plurality of attitudinal or other identification classifications and a plurality of message content or version classifications, for a selected population of a plurality of entities, such as individuals or households, represented in a data repository. The plurality of predictive attitudinal (or identification) classifications and plurality of predictive message content (ore version) classifications have been determined using a plurality of predictive models developed from a sample population and applied to a reference population represented in the data repository, such as attitudinal, behavioral, or demographic models. For each predictive attitudinal (or identification) classification, at least one predominant predictive message content or version classification is independently determined.
    Type: Grant
    Filed: June 30, 2004
    Date of Patent: January 1, 2013
    Assignee: Experian Marketing Solutions, Inc.
    Inventors: Marc Christian Fanelli, Patricia Kay Gormley, Kymberly Ann Kulle, Thomas G. Nocerino, Kaushik Sanyal
  • Publication number: 20060004622
    Abstract: The present invention provides a system, method, software and data structure for independently predicting attitudinal and message responsiveness, using a plurality of attitudinal or other identification classifications and a plurality of message content or version classifications, for a selected population of a plurality of entities, such as individuals or households, represented in a data repository. The plurality of predictive attitudinal (or identification) classifications and plurality of predictive message content (ore version) classifications have been determined using a plurality of predictive models developed from a sample population and applied to a reference population represented in the data repository, such as attitudinal, behavioral, or demographic models. For each predictive attitudinal (or identification) classification, at least one predominant predictive message content or version classification is independently determined.
    Type: Application
    Filed: June 30, 2004
    Publication date: January 5, 2006
    Applicant: Experian Marketing Solutions, Inc.
    Inventors: Marc Fanelli, Patricia Gormley, Kymberly Kulle, Thomas Nocerino, Kaushik Sanyal