Patents by Inventor Christopher Mark Broadbent

Christopher Mark Broadbent 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: 12579137
    Abstract: The present disclosure is related to techniques for converting a natural language utterance to a logical form query and deriving a natural language interpretation of the logical form query. The techniques include accessing a Meaning Resource Language (MRL) query and converting the MRL query into a MRL structure including logical form statements. The converting includes extracting operations and associated attributes from the MRL query and generating the logical form statements from the operations and associated attributes. The techniques further include translating each of the logical form statements into a natural language expression based on a grammar data structure that includes a set of rules for translating logical form statements into corresponding natural language expressions, combining the natural language expressions into a single natural language expression, and providing the single natural language expression as an interpretation of the natural language utterance.
    Type: Grant
    Filed: May 22, 2023
    Date of Patent: March 17, 2026
    Assignee: ORACLE INTERNATIONAL CORPORATION
    Inventors: Chang Xu, Poorya Zaremoodi, Cong Duy Vu Hoang, Nitika Mathur, Philip Arthur, Steve Wai-Chun Siu, Aashna Devang Kanuga, Gioacchino Tangari, Mark Edward Johnson, Thanh Long Duong, Vishal Vishnoi, Stephen Andrew McRitchie, Christopher Mark Broadbent
  • Patent number: 12573380
    Abstract: Techniques are disclosed herein for managing ambiguous date mentions in natural language utterances in transforming natural language utterances to logical forms by encoding the uncertainties of the ambiguous date mentions and including the encoded uncertainties in the logical forms. In a training phase, training examples including natural language utterances, logical forms, and database schema information are automatically augmented and used to train a machine learning model to convert natural language utterances to logical form. In an inference phase, input database schema information is augmented and used by the trained machine learning model to convert an input natural language utterance to logical form.
    Type: Grant
    Filed: May 6, 2024
    Date of Patent: March 10, 2026
    Assignee: Oracle International Corporation
    Inventors: Gioacchino Tangari, Cong Duy Vu Hoang, Stephen Andrew McRitchie, Steve Wai-Chun Siu, Dalu Guo, Christopher Mark Broadbent, Thanh Long Duong, Srinivasa Phani Kumar Gadde, Vishal Vishnoi, Kenneth Khiaw Hong Eng, Chandan Basavaraju
  • Patent number: 12554929
    Abstract: Techniques are disclosed herein for using named entity recognition to resolve entity expression while transforming natural language to a meaning representation language. In one aspect, a method includes accessing natural language text, predicting, by a first machine learning model, a class label for a token in the natural language text, predicting, by a second machine-learning model, operators for a meaning representation language and a value or value span for each attribute of the operators, in response to determining that the value or value span for a particular attribute matches the class label, converting a portion of the natural language text for the value or value span into a resolved format, and outputting syntax for the meaning representation language. The syntax comprises the operators with the portion of the natural language text for the value or value span in the resolved format.
    Type: Grant
    Filed: July 13, 2023
    Date of Patent: February 17, 2026
    Assignee: ORACLE INTERNATIONAL CORPORATION
    Inventors: Aashna Devang Kanuga, Cong Duy Vu Hoang, Mark Edward Johnson, Vasisht Raghavendra, Yuanxu Wu, Steve Wai-Chun Siu, Nitika Mathur, Gioacchino Tangari, Shubham Pawankumar Shah, Vanshika Sridharan, Zikai Li, Diego Andres Cornejo Barra, Stephen Andrew McRitchie, Christopher Mark Broadbent, Vishal Vishnoi, Srinivasa Phani Kumar Gadde, Poorya Zaremoodi, Thanh Long Duong, Bhagya Gayathri Hettige, Tuyen Quang Pham, Arash Shamaei, Thanh Tien Vu, Yakupitiyage Don Thanuja Samodhve Dharmasiri
  • Publication number: 20250225342
    Abstract: Techniques are disclosed herein for resolving date/time expressions while transforming natural language to a logical form such as a meaning representation language. A class label for a token in a natural language utterance and a meaning representation for the natural language utterance can be predicted. The class label can be associated with a date/time expression. The meaning representation can include an operator and a value. When the value associated with the class label matches a predetermined value type or the operator matches a predetermined operator, the value and/or the operator can be modified, and an executable statement can be generated for the meaning representation. A query on a computing system can be executed using the executable statement.
    Type: Application
    Filed: January 10, 2024
    Publication date: July 10, 2025
    Applicant: Oracle International Corporation
    Inventors: Aashna Devang Kanuga, Cong Duy Vu Hoang, Mark Edward Johnson, Vasisht Raghavendra, Yuanxu Wu, Steve Wai-Chun Siu, Nikita Mathur, Gioacchino Tangari, Shubham Pawankumar Shah, Vanshika Sridharan, Thanh Long Duong, Zikai Li, Diego Andres Cornejo Barra, Stephen Andrew McRitchie, Christopher Mark Broadbent, Vishal Vishnoi, Srinivasa Phani Kumar Gadde, Poorya Zaremoodi, Arash Shamaei, Thanh Tien Vu, Yakupitiyage Don Thanuja Samodhye Dharmasiri
  • Publication number: 20250095635
    Abstract: Techniques are disclosed herein for managing ambiguous date mentions in natural language utterances in transforming natural language utterances to logical forms by encoding the uncertainties of the ambiguous date mentions and including the encoded uncertainties in the logical forms. In a training phase, training examples including natural language utterances, logical forms, and database schema information are automatically augmented and used to train a machine learning model to convert natural language utterances to logical form. In an inference phase, input database schema information is augmented and used by the trained machine learning model to convert an input natural language utterance to logical form.
    Type: Application
    Filed: May 6, 2024
    Publication date: March 20, 2025
    Applicant: Oracle International Corporation
    Inventors: Gioacchino Tangari, Cong Duy Vu Hoang, Stephen Andrew McRitchie, Steve Wai-Chun Siu, Dalu Guo, Christopher Mark Broadbent, Thanh Long Duong, Srinivasa Phani Kumar Gadde, Vishal Vishnoi, Kenneth Khiaw Hong Eng, Chandan Basavaraju
  • Publication number: 20250094737
    Abstract: Techniques are disclosed herein for managing date-time intervals in transforming natural language utterances to logical forms by providing an enhanced grammar, a natural language utterance comprising a date-time interval, and database schema information to a machine learning model that has been trained to convert natural language utterances to logical forms; and using the machine learning model to convert the natural language utterance to an output logical form, wherein the output logical form comprises at least one of the date-time interval and an extraction function for extracting date-time information corresponding to the date-time interval from at least one date-time attribute of the database schema information.
    Type: Application
    Filed: August 5, 2024
    Publication date: March 20, 2025
    Applicant: Oracle International Corporation
    Inventors: Gioacchino Tangari, Cong Duy Vu Hoang, Dalu Guo, Steve Wai-Chun Siu, Stephen Andrew McRitchie, Christopher Mark Broadbent, Thanh Long Duong, Srinivasa Phani Kumar Gadde, Vishal Vishnoi, Chandan Basavaraju, Kenneth Khiaw Hong Eng
  • Publication number: 20250068627
    Abstract: Techniques are disclosed herein for transforming natural language conversations into a visual output. In one aspect, a computer-implement method includes generating an input string by concatenating a natural language utterance with a schema representation comprising a set of entities for visualization actions, generating, by a first encoder of a machine learning model, one or more embeddings of the input string, encoding, by a second encoder of the machine learning model, relations between elements in the schema representation and words in the natural language utterance based on the one or more embeddings, generating, by a grammar-based decoder of the machine learning model and based on the encoded relations and the one or more embeddings, an intermediate logical form that represents at least the query, the one or more visualization actions, or the combination thereof, and generating, based on the intermediate logical form, a command for a computing system.
    Type: Application
    Filed: March 26, 2024
    Publication date: February 27, 2025
    Applicant: Oracle International Corporation
    Inventors: Cong Duy Vu Hoang, Gioacchino Tangari, Stephen Andrew McRitchie, Nitika Mathur, Aashna Devang Kanuga, Steve Wai-Chun Siu, Dalu Guo, Chang Xu, Mark Edward Johnson, Christopher Mark Broadbent, Thanh Long Duong, Srinivasa Phani Kumar Gadde, Vishal Vishnoi, Chandan Basavaraju, Kenneth Khiaw Hong Eng
  • Publication number: 20250068626
    Abstract: The present disclosure relates to manufacturing training data by leveraging an automated pipeline that manufactures visualization training datasets to train a machine learning model to convert a natural language utterance into meaning representation language logical form that includes one or more visualization actions. Aspects are directed towards accessing an original training dataset, a visualization query dataset, an incremental visualization dataset, a manipulation visualization dataset, or any combination thereof. One or more visualization training datasets are generated by: (i) modifying examples in the original training dataset, the visualization query dataset, or both to include visualization actions, (ii) generating examples, using the incremental visualization dataset, the manipulation visualization dataset, or both, that include visualization actions, or (iii) both (i) and (ii).
    Type: Application
    Filed: March 1, 2024
    Publication date: February 27, 2025
    Applicant: Oracle International Corporation
    Inventors: Gioacchino Tangari, Steve Wai-Chun Siu, Dalu Guo, Cong Duy Vu Hoang, Berk Sarioz, Chang Xu, Stephen Andrew McRitchie, Mark Edward Johnson, Christopher Mark Broadbent, Thanh Long Duong, Srinivasa Phani Kumar Gadde, Vishal Vishnoi, Chandan Basavaraju, Kenneth Khiaw Hong Eng
  • Publication number: 20240232187
    Abstract: The present disclosure is related to techniques for converting a natural language utterance to a logical form query and deriving a natural language interpretation of the logical form query. The techniques include accessing a Meaning Resource Language (MRL) query and converting the MRL query into a MRL structure including logical form statements. The converting includes extracting operations and associated attributes from the MRL query and generating the logical form statements from the operations and associated attributes. The techniques further include translating each of the logical form statements into a natural language expression based on a grammar data structure that includes a set of rules for translating logical form statements into corresponding natural language expressions, combining the natural language expressions into a single natural language expression, and providing the single natural language expression as an interpretation of the natural language utterance.
    Type: Application
    Filed: May 22, 2023
    Publication date: July 11, 2024
    Applicant: Oracle International Corporation
    Inventors: Chang Xu, Poorya Zaremoodi, Cong Duy Vu Hoang, Nitika Mathur, Philip Arthur, Steve Wai-Chun Siu, Aashna Devang Kanuga, Gioacchino Tangari, Mark Edward Johnson, Thanh Long Duong, Vishal Vishnoi, Stephen Andrew McRitchie, Christopher Mark Broadbent
  • Publication number: 20240134850
    Abstract: The present disclosure is related to techniques for converting a natural language utterance to a logical form query and deriving a natural language interpretation of the logical form query. The techniques include accessing a Meaning Resource Language (MRL) query and converting the MRL query into a MRL structure including logical form statements. The converting includes extracting operations and associated attributes from the MRL query and generating the logical form statements from the operations and associated attributes. The techniques further include translating each of the logical form statements into a natural language expression based on a grammar data structure that includes a set of rules for translating logical form statements into corresponding natural language expressions, combining the natural language expressions into a single natural language expression, and providing the single natural language expression as an interpretation of the natural language utterance.
    Type: Application
    Filed: May 21, 2023
    Publication date: April 25, 2024
    Applicant: Oracle International Corporation
    Inventors: Chang Xu, Poorya Zaremoodi, Cong Duy Vu Hoang, Nitika Mathur, Philip Arthur, Steve Wai-Chun Siu, Aashna Devang Kanuga, Gioacchino Tangari, Mark Edward Johnson, Thanh Long Duong, Vishal Vishnoi, Stephen Andrew McRitchie, Christopher Mark Broadbent
  • Publication number: 20240062011
    Abstract: Techniques are disclosed herein for using named entity recognition to resolve entity expression while transforming natural language to a meaning representation language. In one aspect, a method includes accessing natural language text, predicting, by a first machine learning model, a class label for a token in the natural language text, predicting, by a second machine-learning model, operators for a meaning representation language and a value or value span for each attribute of the operators, in response to determining that the value or value span for a particular attribute matches the class label, converting a portion of the natural language text for the value or value span into a resolved format, and outputting syntax for the meaning representation language. The syntax comprises the operators with the portion of the natural language text for the value or value span in the resolved format.
    Type: Application
    Filed: July 13, 2023
    Publication date: February 22, 2024
    Applicant: Oracle International Corporation
    Inventors: Aashna Devang Kanuga, Cong Duy Vu Hoang, Mark Edward Johnson, Vasisht Raghavendra, Yuanxu Wu, Steve Wai-Chun Siu, Nitika Mathur, Gioacchino Tangari, Shubham Pawankumar Shah, Vanshika Sridharan, Zikai Li, Diego Andres Cornejo Barra, Stephen Andrew McRitchie, Christopher Mark Broadbent, Vishal Vishnoi, Srinivasa Phani Kumar Gadde, Poorya Zaremoodi, Thanh Long Duong, Bhagya Gayathri Hettige, Tuyen Quang Pham, Arash Shamaei, Thanh Tien Vu, Yakupitiyage Don Thanuja Samodhve Dharmasiri
  • Publication number: 20240061832
    Abstract: Techniques are disclosed herein for converting a natural language utterance to an intermediate database query representation. An input string is generated by concatenating a natural language utterance with a database schema representation for a database. Based on the input string, a first encoder generates one or more embeddings of the natural language utterance and the database schema representation. A second encoder encodes relations between elements in the database schema representation and words in the natural language utterance based on the one or more embeddings. A grammar-based decoder generates an intermediate database query representation based on the encoded relations and the one or more embeddings. Based on the intermediate database query representation and an interface specification, a database query is generated in a database query language.
    Type: Application
    Filed: June 14, 2023
    Publication date: February 22, 2024
    Applicant: Oracle International Corporation
    Inventors: Cong Duy Vu Hoang, Stephen Andrew McRitchie, Mark Edward Johnson, Shivashankar Subramanian, Aashna Devang Kanuga, Nitika Mathur, Gioacchino Tangari, Steve Wai-Chun Siu, Poorya Zaremoodi, Vasisht Raghavendra, Thanh Long Duong, Srinivasa Phani Kumar Gadde, Vishal Vishnoi, Christopher Mark Broadbent, Philip Arthur, Syed Najam Abbas Zaidi