Patents by Inventor Shubham Pawankumar Shah

Shubham Pawankumar Shah 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: 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: 20250118398
    Abstract: Techniques are disclosed for automatically generating Subjective, Objective, Assessment and Plan (SOAP) notes. Particularly, techniques are disclosed for training data collection and evaluation for automatic SOAP note generation. Training data is accessed, and evaluation process is performed on the training data to result in evaluated training data. A fine-tuned machine-learning model is generated using the evaluated training data. The fine-tuned machine-learning model can be used to perform a task associated with generating a SOAP note.
    Type: Application
    Filed: September 13, 2024
    Publication date: April 10, 2025
    Applicant: Oracle International Corporation
    Inventors: Shubham Pawankumar Shah, Syed Najam Abbas Zaidi, Xu Zhong, Poorya Zaremoodi, Srinivasa Phani Kumar Gadde, Arash Shamaei, Ganesh Kumar, Thanh Tien Vu, Nitika Mathur, Chang Xu, Shiquan Yang, Sagar Kalyan Gollamudi
  • Publication number: 20250095798
    Abstract: Techniques are disclosed for automatically evaluating SOAP notes. A method comprises accessing a Subjective, Objective, Assessment and Plan (SOAP) note and a checklist that includes checklist facts; using a first machine-learning model prompt to extract SOAP note facts from the SOAP note; using one or more second machine-learning model prompts to generate feedback for the SOAP note, the feedback indicating whether individual checklist facts are supported by at least one of the SOAP note facts, and whether individual SOAP note facts are supported by at least one of the checklist facts; and generating a score for the SOAP note based on the feedback.
    Type: Application
    Filed: September 11, 2024
    Publication date: March 20, 2025
    Applicant: Oracle International Corporation
    Inventors: Arash Shamaei, Sagar Kalyan Gollamudi, Poorya Zaremoodi, Nitika Mathur, Shubham Pawankumar Shah, Syed Najam Abbas Zaidi, Shiquan Yang
  • Publication number: 20250095804
    Abstract: Techniques are disclosed for automatically generating Subjective, Objective, Assessment and Plan (SOAP) notes. Particularly, techniques are disclosed for automatic SOAP note generation using task decomposition. A text transcript is accessed and segmented into portions. The text transcript can correspond to an interaction between a first entity and a second entity. Machine-learning model prompts are used to extract entities and facts for the respective portions and generate SOAP note sections based at least in-part on the facts. A SOAP note is generated by combining the SOAP note sections. The SOAP note can be stored in a database in association with at least one of the first entity and the second entity.
    Type: Application
    Filed: September 11, 2024
    Publication date: March 20, 2025
    Applicant: Oracle International Corporation
    Inventors: Syed Najam Abbas Zaidi, Shiquan Yang, Poorya Zaremoodi, Nitika Mathur, Shubham Pawankumar Shah, Arash Shamaei, Sagar Kalyan Gollamudi
  • Publication number: 20250095806
    Abstract: Techniques are disclosed for automatically generating Subjective, Objective, Assessment and Plan (SOAP) notes. Particularly, techniques are disclosed for identifying entities for automatic SOAP note generation. A text transcript is accessed and segmented into portions. The text transcript can correspond to an interaction between a first entity and a second entity. Entities for the respective portions are identified using machine-learning models. A SOAP note is generated using the one or more machine-learning models and facts are derived from the text transcript based at least in-part on the entities. The SOAP note can be stored in a database in association with at least one of the first entity and the second entity.
    Type: Application
    Filed: September 12, 2024
    Publication date: March 20, 2025
    Applicant: Oracle International Corporation
    Inventors: Syed Najam Abbas Zaidi, Shiquan Yang, Poorya Zaremoodi, Nitika Mathur, Shubham Pawankumar Shah, Arash Shamaei, Sagar Kalyan Gollamudi
  • Publication number: 20250095807
    Abstract: Techniques are disclosed for automatically generating prompts. A method comprises accessing first prompts, wherein each of the first prompts is a prompt for generating a portion of a SOAP note using a machine-learning model. For each respective first prompt of the first prompts: (i) using the respective first prompt to obtain a first result from a first machine-learning model, (ii) using the respective first prompt and the first result to obtain a second result from a second machine-learning model, the second result including an assessment of the first result, (iii) using the second result to obtain a third result from a third machine-learning model, the third result including a second prompt, (iv) setting the second prompt as the respective first prompt, (v) repeating steps (i)-(iv) a number of times to obtain a production prompt, (vi) adding the production prompt to a collection of prompts; and storing the collection of prompts.
    Type: Application
    Filed: September 12, 2024
    Publication date: March 20, 2025
    Applicant: Oracle International Corporation
    Inventors: Syed Najam Abbas Zaidi, Poorya Zaremoodi, Shiquan Yang, Nitika Mathur, Shubham Pawankumar Shah, Arash Shamaei, Sagar Kalyan Gollamudi
  • Publication number: 20250095803
    Abstract: Techniques are disclosed for automatically generating Subjective, Objective, Assessment and Plan (SOAP) notes. Particularly, techniques are disclosed for identifying entities for automatic SOAP note generation. A text transcript is accessed and segmented into portions. The text transcript can correspond to an interaction between a first entity and a second entity. One or more entities for the respective portions are identified using one or more machine-learning models. Facts are from the respective portions using the one or more machine-learning models based at least in-part on the context of the respective portions. A SOAP note is generated using the one or more machine-learning models and based at least in-part on the facts. The SOAP note can be stored in a database in association with at least one of the first entity and the second entity.
    Type: Application
    Filed: September 10, 2024
    Publication date: March 20, 2025
    Applicant: Oracle International Corporation
    Inventors: Syed Najam Abbas Zaidi, Shiquan Yang, Poorya Zaremoodi, Nitika Mathur, Shubham Pawankumar Shah, Arash Shamaei, Sagar Kalyan Gollamudi
  • 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: 20240062112
    Abstract: Techniques are disclosed herein for adaptive training data augmentation to facilitate training named entity recognition (NER) models. Adaptive augmentation techniques are disclosed herein that take into consideration the distribution of different entity types within training data. The adaptive augmentation techniques generate adaptive numbers of augmented examples (e.g., utterances) based on the distribution of entities to make sure enough numbers of examples for minority class entities are generated during augmentation of the training data.
    Type: Application
    Filed: August 16, 2023
    Publication date: February 22, 2024
    Applicant: Oracle International Corporation
    Inventors: Omid Mohamad Nezami, Thanh Tien Vu, Budhaditya Saha, Shubham Pawankumar Shah
  • Publication number: 20230325599
    Abstract: Techniques are provided for augmenting training data using gazetteers and perturbations to facilitate training named entity recognition models. The training data can be augmented by generating additional utterances from original utterances in the training data and combining the generated additional utterances with the original utterances to form the augmented training data. The additional utterances can be generated by replacing the named entities in the original utterances with different named entities and/or perturbed versions of the named entities in the original utterances selected from a gazetteer. Gazetteers of named entities can be generated from the training data and expanded by searching a knowledge base and/or perturbing the named entities therein. The named entity recognition model can be trained using the augmented training data.
    Type: Application
    Filed: March 17, 2023
    Publication date: October 12, 2023
    Applicant: Oracle International Corporation
    Inventors: Omid Mohamad Nezami, Shivashankar Subramanian, Thanh Tien Vu, Tuyen Quang Pham, Budhaditya Saha, Aashna Devang Kanuga, Shubham Pawankumar Shah