Patents by Inventor Guanglei Xiong
Guanglei Xiong 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).
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Patent number: 12001951Abstract: A system for providing automated and domain specific contextual processing for context based verification may classify a plurality of extracted parameters from a set of digitized training document to assign a document similarity score with respect to a set of reference documents. The system may automatically detect a domain for the set of digitized training documents based on the document similarity score. The system may load a domain based neural model for the detected domain to generate a plurality of pre-defined contextual parameters. The system may receive a set of input documents and perform a contextual processing of the received set of documents based on the pre-defined contextual parameters to obtain an output in form of a plurality of filtered snippets, each bearing a corresponding rank. The context based verification may be performed based on the plurality of filtered snippets and the corresponding rank.Type: GrantFiled: March 23, 2021Date of Patent: June 4, 2024Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Kavita V V Ganeshan, Swati Tata, Soujanya Soni, Madhur Bhasini Chaini, Anjani Kumari, Omar Razi, Thyagarajan Delli, Ullas Balan Nambiar, Guanglei Xiong, Sivasubramanian Arumugam Jalajam, Srinivasan Krishnan Rajagopalan, Venkatesan Kamalakannan, Harbhajan Singh
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Patent number: 11954139Abstract: A document processing system processes documents including typewritten and/or handwritten data by converting them to document images for entity extraction. A received document is initially processed to generate a deep document data structured and for classification as one of a structured or an unstructured document. If the document is classified as a structured document, it is processed for entity extraction based on a matching template and image alignment of the document image with the matching template. If the document is classified as an unstructured document, entities are extracted by obtaining nodes and providing the nodes to a self-supervised masked visual language model.Type: GrantFiled: November 19, 2020Date of Patent: April 9, 2024Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Anwitha Paruchuri, Guanglei Xiong, Tsunghan Wu, Neeru Narang
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Patent number: 11900705Abstract: The validity of engineering drawings is automatically determined based on compliance of the specifications of the engineering drawings with automatically generated rules. A document package including images of the engineering drawings and related documents is received. Rules codifying the requirements to be fulfilled by the engineering drawings are automatically generated from the related documents. Data such as specifications of the various parts of the entities in the engineering drawings are automatically extracted. The extracted data is analyzed to determine compliance with the rules to validate the engineering drawings.Type: GrantFiled: April 2, 2021Date of Patent: February 13, 2024Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Neeru Narang, Guanglei Xiong, Ullas Balan Nambiar, Emmanuel Munguia Tapia, Ditty Mathew, Omar Razi, David Alfonso Guerra, Thyagarajan Delli
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Publication number: 20240005911Abstract: The present disclosure relates to a system, a method, and a product for using deep learning models to quantify and/or improve trust in conversations. The system includes a non-transitory memory storing instructions executable to construct a deep-learning network to quantify trust scores; and a processor in communication with the non-transitory memory. The processor executes the instructions to cause the system to: obtain a trust score for each voice sample in a plurality of audio samples, generate a predicated trust score by the deep-learning network based on each voice sample in the plurality of audio samples, wherein the deep-learning network comprises a plurality of branches and an aggregation network configured to aggregate results from the plurality of branches, and train the deep-learning network based on the predicated trust score and the trust score for each voice sample to obtain a training result.Type: ApplicationFiled: May 27, 2022Publication date: January 4, 2024Inventors: Lan GUAN, Neeraj D VADHAN, Guanglei XIONG, Anwitha PARUCHURI, Sukryool KANG, Sujeong CHA, Anupam Anurag TRIPATHI, Thomas Wayne HANCOCK, Jill GENGELBACH-WYLIE, Jayashree SUBRAHMONIA
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Patent number: 11823019Abstract: Implementations of the present disclosure include receiving a goal, providing a problem-specific knowledge graph that is responsive to at least a portion of the goal, determining a set of events from the problem-specific knowledge graph, processing data representative of events in the set of events through a first machine learning (ML) model to provide a set of event scores, each event score in the set of event scores being associated with a respective event in the set of events, determining a sub-set of events based on the set of event scores, for each event in the sub-set of events, determining at least one action by processing a sequence of actions through a second ML model, and outputting the sub-set of events and a set of actions for execution of at least one action in the set of actions.Type: GrantFiled: July 8, 2021Date of Patent: November 21, 2023Assignee: Accenture Global Solutions LimitedInventors: Lan Guan, Guanglei Xiong, Wenxian Zhang, Sukryool Kang, Anwitha Paruchuri, Jing Su Brewer, Ivan A. Wong, Christopher Yen-Chu Chan, Danielle Moffat, Jayashree Subrahmonia, Louise Noreen Barrere
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Publication number: 20230352003Abstract: The present disclosure relates to a system, a method, and a product for using machine learning models to quantify and/or improve trust in conversations. The system includes a non-transitory memory; and a processor in communication with the non-transitory memory. The processor executes the instructions to cause the system to: obtain a set of vocal features and a set of text features for each sample in audio samples; obtain a trust score for each sample; perform a preprocess to obtain a set of input features for each sample; determine a type of machine-learning algorithm for the machine-learning network; tune a set of hyper parameters for the machine-learning network; generate a predicated trust score by the machine-learning network with the sets of input features for each sample; and train the machine-learning network based on the predicated trust score and the trust score for each sample to obtain the training result.Type: ApplicationFiled: April 29, 2022Publication date: November 2, 2023Inventors: Lan GUAN, Neeraj D VADHAN, Guanglei XIONG, Anwitha PARUCHURI, Sukryool KANG, Sujeong CHA, Anupam Anurag TRIPATHI, Thomas Wayne HANCOCK, Jill GENGELBACH-WYLIE, Jayashree SUBRAHMONIA
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Publication number: 20230177581Abstract: Implementations are directed to receiving a product profile comprising an image of a product and a text description of the product; encoding the image and the text description of the product to obtain an image vector and a textual vector in a latent space; wherein the encoding comprises encoding the image and the text description using one or more encoders, each encoder corresponding to a respective data type; concatenating the image vector and the textual vector to provide a total latent vector; processing the total latent vector through a neural recommendation model to generate a score for each feature included in a plurality of features, wherein the score for a feature indicates a likelihood of the feature being included as a feature of the product for product development; and generating a recommendation comprising a set of candidate features for the product based on the score of each feature.Type: ApplicationFiled: December 3, 2021Publication date: June 8, 2023Inventors: Hongyi Ren, Sujeong Cha, Lan Guan, Jayashree Subrahmonia, Anwitha Paruchuri, Sukryool Kang, Guanglei Xiong, Heather M. Murphy
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Patent number: 11657373Abstract: The proposed systems and methods describe an autonomous asset detection system that leverages artificial intelligence (AI) models for three-dimensional asset identification and damage detection, asset damage classification, automatic in-field asset tag readings, and real-time asset management. In some embodiments, a deep learning-based system receives a set of aerial images of one or more assets and automatically identifies each asset in the image(s) using rotational coordinates. In some embodiments, an image annotation tool labels the images either manually or automatically. The system then detects whether the asset is damaged and, if so, determine the type of damage, and further captures and stores asset tag information for the target asset. The collected and processed data is then provided to end-users via a comprehensive user interface platform for managing the assets in real-time.Type: GrantFiled: August 21, 2020Date of Patent: May 23, 2023Assignee: Accenture Global Solutions LimitedInventors: Guanglei Xiong, Neeru Narang, Anwitha Paruchuri, Angela Yang Sanford, Armando Ferreira Gomes
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Publication number: 20230111633Abstract: A system and method for lead conversion using conversational virtual avatar is disclosed. System comprising processor causes Conversation Virtual Avatar Platform (CVAP) to receive, for first entity, from lead prioritization engine, leads applicable to first entity via lead repository based on scores associated with respective leads. Processor causes CVAP to receive, through conversation management engine (CME) configured in CVAP, from leads, responses to questions pertaining to product attributes and information pertaining to lead.Type: ApplicationFiled: October 8, 2021Publication date: April 13, 2023Applicant: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Anwitha PARUCHURI, Guanglei XIONG, Lan GUAN, Jayashree SUBRAHMONIA, Yuan HE, Louise Noreen BARRERE
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Patent number: 11615331Abstract: Examples of artificial intelligence-based reasoning explanation are described. In an example implementation, a knowledge model having a plurality of ontologies and a plurality of inferencing rules is generated. Once the knowledge model is generated, based on a real-world problem, a knowledge model from amongst various knowledge models is selected to be used for resolving a real-world problem. The data procured from the real-world problem is clustered and classified into an ontology of the determined knowledge model. Inferencing rules to be used for deconstructing the real-world problem are identified, and a machine reasoning is generated to provide a hypothesis for the problem and an explanation to accompany the hypothesis.Type: GrantFiled: June 26, 2018Date of Patent: March 28, 2023Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Chung-Sheng Li, Guanglei Xiong, Ashish Jain, Emmanuel Munguia Tapia, Sukryool Kang, Benjamin Nathan Grosof
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Patent number: 11586955Abstract: In an example, an ontology analyzer may generate an ontology, based on a claim adjudication request. The claim adjudication request may be processed, based on the ontology to provide an ontology based inference. A rule based analyzer may identify a predefined rule corresponding to the claim adjudication request and process the request, based on the predefined rule. A conflict resolver may resolve a conflict which may occur between the ontology based inference and the rule based inference. When a conflict is detected, a predefined criteria may be selected for resolving the conflict, the predefined criteria comprising rules to select one of the ontology based inference and the rule based inference to maximize a probability of accurately processing the claim adjudication request in case of a conflict.Type: GrantFiled: July 17, 2018Date of Patent: February 21, 2023Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Chung-Sheng Li, Guanglei Xiong, Mohammad Ghorbani, Emmanuel Munguia Tapia, Sukryool Kang, Benjamin Nathan Grosof, Ashish Jain, Colin Connors
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Publication number: 20220318546Abstract: The validity of engineering drawings is automatically determined based on compliance of the specifications of the engineering drawings with automatically generated rules. A document package including images of the engineering drawings and related documents is received. Rules codifying the requirements to be fulfilled by the engineering drawings are automatically generated from the related documents. Data such as specifications of the various parts of the entities in the engineering drawings are automatically extracted. The extracted data is analyzed to determine compliance with the rules to validate the engineering drawings.Type: ApplicationFiled: April 2, 2021Publication date: October 6, 2022Applicant: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Neeru NARANG, Guanglei XIONG, Ullas Balan NAMBIAR, Emmanuel MUNGUIA TAPIA, Ditty MATHEW, Omar RAZI, David Alfonso GUERRA, Thyagarajan DELLI
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Publication number: 20220309332Abstract: A system for providing automated and domain specific contextual processing for context based verification may classify a plurality of extracted parameters from a set of digitized training document to assign a document similarity score with respect to a set of reference documents. The system may automatically detect a domain for the set of digitized training documents based on the document similarity score. The system may load a domain based neural model for the detected domain to generate a plurality of pre-defined contextual parameters. The system may receive a set of input documents and perform a contextual processing of the received set of documents based on the pre-defined contextual parameters to obtain an output in form of a plurality of filtered snippets, each bearing a corresponding rank. The context based verification may be performed based on the plurality of filtered snippets and the corresponding rank.Type: ApplicationFiled: March 23, 2021Publication date: September 29, 2022Applicant: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Kavita V V GANESHAN, Swati TATA, Soujanya SONI, Madhur BHASINI CHAINI, Anjani KUMARI, Omar RAZI, Thyagarajan DELLI, Ullas Balan NAMBIAR, Guanglei XIONG, Sivasubramanian ARUMUGAM JALAJAM, Srinivasan Krishnan RAJAGOPALAN, Venkatesan KAMALAKANNAN, Harbhajan SINGH
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Publication number: 20220300854Abstract: Implementations of the present disclosure include receiving a goal, providing a problem-specific knowledge graph that is responsive to at least a portion of the goal, determining a set of events from the problem-specific knowledge graph, processing data representative of events in the set of events through a first machine learning (ML) model to provide a set of event scores, each event score in the set of event scores being associated with a respective event in the set of events, determining a sub-set of events based on the set of event scores, for each event in the sub-set of events, determining at least one action by processing a sequence of actions through a second ML model, and outputting the sub-set of events and a set of actions for execution of at least one action in the set of actions.Type: ApplicationFiled: July 8, 2021Publication date: September 22, 2022Inventors: Lan Guan, Guanglei Xiong, Wenxian Zhang, Sukryool Kang, Anwitha Paruchuri, Jing Su Brewer, Ivan A. Wong, Christopher Yen-Chu Chan, Danielle Moffat, Jayashree Subrahmonia, Louise Noreen Barrere
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Publication number: 20220300804Abstract: Implementations are directed to receiving a set of tuples, each tuple including an entity and a product from a set of products, for each tuple: generating, by an embedding module, a total latent vector as input to a recommender network, the total latent vector generated based on a structural vector, a textual vector, and a categorical vector, each generated based on a product profile of a respective product and an entity profile of the entity, generating, by a context integration module, a latent context vector based on a context vector representative of a context of the entity, and inputting the total latent vector and the latent context vector to the recommender network, the recommender network being trained by few-shot learning using a multi-task loss function, and generating, by the recommender network, a prediction including a set of recommendations specific to the entity.Type: ApplicationFiled: June 17, 2021Publication date: September 22, 2022Inventors: Lan Guan, Guanglei Xiong, Christopher Yen-Chu Chan, Jayashree Subrahmonia, Aaron James Sander, Sukryool Kang, Wenxian Zhang, Anwitha Paruchuri
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Patent number: 11392835Abstract: Examples of employee concierge are provided. In an example, an issue may be determined for an employee. The issue may be determined based on a query shared by the employee or upon occurrence of an unusual event. The unusual event may be indicative of a deviation in behaviour and routine of the employee. A session may be initiated and the issue may be parsed to determine a context. A bot may be selected from multiple bots for the issue where each bot includes information relating to a solution to address the issue. Data associated with the issue may be collected from a central database and other bots. The data may then be analyzed to determine a solution. The solution comprises a response to the query and a suggestion to mitigate the unusual event.Type: GrantFiled: August 31, 2018Date of Patent: July 19, 2022Assignee: ACCENTUREGLOBAL SOLUTIONS LIMITEDInventors: Chung-Sheng Li, Emmanuel Munguia Tapia, Guanglei Xiong, Jill K. Goldstein, Jingyun Fan, Rajeev Sinha, Manoj Shroff, Golnaz Ghasemiesfeh, Kayhan Moharreri, Swati Tata, Pratip Samanta, Madhura Shivaram, Akanksha Juneja, Anshul Solanki, Jorjeta Jetcheva, Priyanka Chowdhary, Rishi Vig, Kyle Patrick Johnson, Mohammad Jawad Ghorbani
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Patent number: 11373101Abstract: Examples of analyzing documents are defined. In an example, a request to analyze a document may be received. A knowledge model corresponding to a guideline associated with the document may be obtained. The knowledge model may include at least one of a hypothetical question and a logical flow to determine an inference to the hypothetical question. The hypothetical question relates to an element of the guideline. Based on the knowledge model, data from the document may be extracted for analysis using an artificial intelligence (AI) component. The Ai component may be configured to extract and analyze data, based on the knowledge model. Based on the analysis, a report indicating whether the document falls within a purview of the guideline may be generated.Type: GrantFiled: April 6, 2018Date of Patent: June 28, 2022Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Chung-Sheng Li, Guanglei Xiong, Swati Tata, Pratip Samanta, Madhura Shivaram, Golnaz Ghasemiesfeh, Giulio Cattozzo, Lisa Blackwood, Nagendra Kumar M R, Priyanka Chowdhary
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Publication number: 20220156300Abstract: A document processing system processes documents including typewritten and/or handwritten data by converting them to document images for entity extraction. A received document is initially processed to generate a deep document data structured and for classification as one of a structured or an unstructured document. If the document is classified as a structured document, it is processed for entity extraction based on a matching template and image alignment of the document image with the matching template. If the document is classified as an unstructured document, entities are extracted by obtaining nodes and providing the nodes to a self-supervised masked visual language model.Type: ApplicationFiled: November 19, 2020Publication date: May 19, 2022Applicant: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Anwitha PARUCHURI, Guanglei XIONG, Tsunghan WU, Neeru NARANG
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Patent number: 11282035Abstract: Systems and methods for orchestrating a process are disclosed. In an implementation, a system is configured to extract process information associated with the process. Based on the process information, the system is configured to determine a current model of performing the process based on the process information. The system is further configured to retrieve regulatory information associated with the process, wherein the regulatory information is indicative of at least one of a predefined policy, a predefined rule, and a predefined regulation associated with the process. Further, the system is configured to update the current model based on at least one of the process information and the regulatory information for obtaining a predefined outcome of the process.Type: GrantFiled: June 21, 2017Date of Patent: March 22, 2022Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Chung-Sheng Li, Suraj Govind Jadhav, Saurabh Mahadik, Prakash Ghatage, Guanglei Xiong, Emmanuel Munguia Tapia, Mohammad Jawad Ghorbani, Kyle Johnson, Colin Patrick Connors, Benjamin Nathan Grosof
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Patent number: 11270253Abstract: Examples of cognitive procurement and proactive continuous sourcing are defined. In an example, the system receives a procurement request. The system implements an artificial intelligence component to sort the supplier data into a plurality of domains. The system modifies a domain from the plurality of data domains based on new supplier data being received. The system generates user procurement behavior data based on the procurement interaction and a domain from the plurality of data domains. The system establishes a user procurement behavior model corresponding to a guideline associated with the procurement interaction. The system determines whether the user procurement behavior model should be updated based on modification in the plurality of data domains and updates the same. The system notifies the user regarding change in the user procurement behavior model due to change in a domain of the received supplier data selected by the user.Type: GrantFiled: January 7, 2019Date of Patent: March 8, 2022Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Chung-Sheng Li, Guruprasad Dasappa, Krishna Kummamuru, Colin Connors, Guanglei Xiong, Christopher Banschbach, Thomas Michael Fahey