Patents by Inventor Gilberto Dos Santos

Gilberto Dos Santos 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: 11829490
    Abstract: Aspects of the disclosure relate to resource allocation and rebating during in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. Secure connection(s) to the data store can be established. Sensitive information can be redacted into a sanitized dataset based on one or more data obfuscation types. RAM requirements and current RAM allocation can be diagnosed. Portion(s) of the current RAM allocation exceeding the RAM requirements can be rebated. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Grant
    Filed: March 9, 2022
    Date of Patent: November 28, 2023
    Assignee: Bank of America Corporation
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Patent number: 11379603
    Abstract: Aspects of the disclosure relate to resource allocation and rebating during in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. Secure connection(s) to the data store can be established. Sensitive information can be redacted into a sanitized dataset based on one or more data obfuscation types. State point information for previously reached safe points can be stored and progressively released such that only the incomplete portion(s) of task(s) need to be resubmitted. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Grant
    Filed: January 8, 2020
    Date of Patent: July 5, 2022
    Assignee: Bank of America Corporation
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Publication number: 20220198030
    Abstract: Aspects of the disclosure relate to resource allocation and rebating during in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. Secure connection(s) to the data store can be established. Sensitive information can be redacted into a sanitized dataset based on one or more data obfuscation types. RAM requirements and current RAM allocation can be diagnosed. Portion(s) of the current RAM allocation exceeding the RAM requirements can be rebated. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Application
    Filed: March 9, 2022
    Publication date: June 23, 2022
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Publication number: 20220198029
    Abstract: Aspects of the disclosure relate to resource allocation and rebating during in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. Secure connection(s) to the data store can be established. Sensitive information can be redacted into a sanitized dataset based on one or more data obfuscation types. RAM requirements and current RAM allocation can be diagnosed. Portion(s) of the current RAM allocation exceeding the RAM requirements can be rebated. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Application
    Filed: March 9, 2022
    Publication date: June 23, 2022
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Patent number: 11363029
    Abstract: Aspects of the disclosure relate to resource allocation and rebating during in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. Secure connection(s) to the data store can be established. The big data dataset can be uncompressed based on a codec and uncompressed data blocks can be distributed for processing. Sensitive information can be redacted into a sanitized dataset based on one or more data obfuscation types. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Grant
    Filed: January 8, 2020
    Date of Patent: June 14, 2022
    Assignee: Bank of America Corporation
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Patent number: 11334408
    Abstract: Aspects of the disclosure relate to resource allocation and rebating during in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. Secure connection(s) to the data store can be established. Sensitive information can be redacted into a sanitized dataset based on one or more data obfuscation types. Crashed executor(s) can be detected and caged to prevent further use. Uncompleted task(s) for crashed executor(s) can be reassigned. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Grant
    Filed: January 8, 2020
    Date of Patent: May 17, 2022
    Assignee: Bank of America Corporation
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Patent number: 11321430
    Abstract: Aspects of the disclosure relate to in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data, in a data store based on credentials received from a source. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. A secure connection to the data store can be established. The sensitive information in the big data dataset can be redacted into a sanitized dataset based on one or more data obfuscation types. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Grant
    Filed: January 8, 2020
    Date of Patent: May 3, 2022
    Assignee: Bank of America Corporation
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Patent number: 11314874
    Abstract: Aspects of the disclosure relate to resource allocation and rebating during in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. Secure connection(s) to the data store can be established. Sensitive information can be redacted into a sanitized dataset based on one or more data obfuscation types. RAM requirements and current RAM allocation can be diagnosed. Portion(s) of the current RAM allocation exceeding the RAM requirements can be rebated. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Grant
    Filed: January 8, 2020
    Date of Patent: April 26, 2022
    Assignee: Bank of America Corporation
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Publication number: 20210211430
    Abstract: Aspects of the disclosure relate to resource allocation and rebating during in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. Secure connection(s) to the data store can be established. The big data dataset can be uncompressed based on a codec and uncompressed data blocks can be distributed for processing. Sensitive information can be redacted into a sanitized dataset based on one or more data obfuscation types. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Application
    Filed: January 8, 2020
    Publication date: July 8, 2021
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Publication number: 20210208960
    Abstract: Aspects of the disclosure relate to resource allocation and rebating during in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. Secure connection(s) to the data store can be established. Sensitive information can be redacted into a sanitized dataset based on one or more data obfuscation types. Crashed executor(s) can be detected and caged to prevent further use. Uncompleted task(s) for crashed executor(s) can be reassigned. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Application
    Filed: January 8, 2020
    Publication date: July 8, 2021
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Publication number: 20210209244
    Abstract: Aspects of the disclosure relate to resource allocation and rebating during in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. Secure connection(s) to the data store can be established. Sensitive information can be redacted into a sanitized dataset based on one or more data obfuscation types. State point information for previously reached safe points can be stored and progressively released such that only the incomplete portion(s) of task(s) need to be resubmitted. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Application
    Filed: January 8, 2020
    Publication date: July 8, 2021
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Publication number: 20210209202
    Abstract: Aspects of the disclosure relate to in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data, in a data store based on credentials received from a source. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. A secure connection to the data store can be established. The sensitive information in the big data dataset can be redacted into a sanitized dataset based on one or more data obfuscation types. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Application
    Filed: January 8, 2020
    Publication date: July 8, 2021
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan
  • Publication number: 20210209235
    Abstract: Aspects of the disclosure relate to resource allocation and rebating during in-flight data masking and on-demand encryption of big data on a network. Computer machine(s), cluster managers, nodes, and/or multilevel platforms can request, receive, and/or authenticate requests for a big data dataset, containing sensitive and non-sensitive data. Profiles can be auto provisioned, and access rights can be assigned. Server configuration and data connection properties can be defined. Secure connection(s) to the data store can be established. Sensitive information can be redacted into a sanitized dataset based on one or more data obfuscation types. RAM requirements and current RAM allocation can be diagnosed. Portion(s) of the current RAM allocation exceeding the RAM requirements can be rebated. The encrypted data can be transmitted, in response to the request, to a source, a target, and/or another computer machine and can be decrypted back into the sanitized dataset.
    Type: Application
    Filed: January 8, 2020
    Publication date: July 8, 2021
    Inventors: Pratap Dande, Gilberto Dos Santos, JayaBalaji Murugan