Patents by Inventor Arvind MAHESWARAN
Arvind MAHESWARAN 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: 12602650Abstract: Systems and methods for evaluating attributes in supply chain management is disclosed. The system may receive data from a set of data sources corresponding to a supply chain associated with at least a product, pre-process the data based on integration of the data from each of the set of data sources, generate supply chain data based on the integrated data, analyze, via an orchestration engine, the supply chain data to assess an impact of the supply chain data on the supply chain, predict, via the orchestration engine, a state associated with a purchase event of the product in the supply chain, and generate a resolution flow to be executed in the supply chain for managing the predicted state associated with the purchase event of the product.Type: GrantFiled: March 30, 2023Date of Patent: April 14, 2026Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Swati Sharma, Kishore P. Durg, Melissa Twining-Davis, Antoni Bardají Cusó, Tamal Das, Nirav Jagdish Sampat, Saran Prasad, Surya N S Chavali, Arvind Maheswaran, Hitesh Bhagchandani, Vinu Varghese, Rishi Sareen, Shiv Kamal Sinha, Anuradha Chari, Mateenuddin Shaikh, Ajay Divakar Naik
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Patent number: 12430535Abstract: An Artificial Intelligence (AI) based delivery time estimation system employs a plurality of delivery time estimation models or actual time of arrival (ATA) estimation models to provide ATA estimates for shipments. Each of the ATA estimation models is trained on historical data from a plurality of external data sources to generate an ATA estimate for a given delivery route via a specific delivery mode. The ATA estimates are generated based on current data retrieved for a shipment from the external data sources. The time series data sets retrieved from the external data sources for the historical data and the current data are transformed into corresponding categorical data. The categorical data is converted into binary data to be provided to the plurality of ATA estimation models for training purposes or to a trained, selected ATA estimation model for generating an ATA estimate.Type: GrantFiled: January 28, 2021Date of Patent: September 30, 2025Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Abhijit Kumar, Amartya Ray, Arvind Maheswaran, Pratap Simha, C. S, Ravikant Singh
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Patent number: 12406517Abstract: Systems and methods for estimating freight costs are disclosed herein. The system receives, from a user interacting with the system, a first document and a second document, where an actual value is associated with the second document. Further, the system determines a set of variables for each of the first document and the second document based on a statistical analysis of historical data. Furthermore, the system estimates, using a trained artificial neural network model, a cost associated with each of the first document and the second document based on the determined set of variables. The cost associated with the first document includes an estimated freight cost for the first document, and the cost associated with the second document includes an estimated true value for the second document.Type: GrantFiled: February 17, 2023Date of Patent: September 2, 2025Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Abhijit Kumar, Arvind Maheswaran, Amartya Ray, Jenoy Easow, Glanda Meera Nazareth
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Publication number: 20250173330Abstract: A Generative Artificial Intelligence (Gen. AI) based chatbot apparatus implements classical AI models and Generative AI models to answer user queries with results retrieved from relational databases and unstructured knowledge bases. When a user query is received, it is determined if the intent of the user query can be determined with a confidence greater than a configured confidence limit. If yes, a structured query mapped to the intent is employed to answer the user query. If the intent determination confidence is less than the configured confidence limit then Gen. AI-based techniques using a plurality of LLMs are used to respond to the query. A Gen. AI switch is also implemented to switch between the plurality of LLMs to answer user queries with greater accuracy.Type: ApplicationFiled: November 28, 2023Publication date: May 29, 2025Applicant: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Kishore P. DURG, Surya N S CHAVALI, Dharmesh SHAH, Swati SHARMA, Arvind MAHESWARAN, Pratik PREMCHAND JAIN, Krishna KUMMAMURU, Tabish Sayeed SIDDIQUE, Shruti CHHABRA, Hitesh BHAGCHANDANI, Tamal DAS, Ajay DIVAKAR NAIK, Saran PRASAD, Vinu VARGHESE
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Publication number: 20240282135Abstract: Systems and methods for estimating freight costs are disclosed herein. The system receives, from a user interacting with the system, a first document and a second document, where an actual value is associated with the second document. Further, the system determines a set of variables for each of the first document and the second document based on a statistical analysis of historical data. Furthermore, the system estimates, using a trained artificial neural network model, a cost associated with each of the first document and the second document based on the determined set of variables. The cost associated with the first document includes an estimated freight cost for the first document, and the cost associated with the second document includes an estimated true value for the second document.Type: ApplicationFiled: February 17, 2023Publication date: August 22, 2024Applicant: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Abhijit KUMAR, Arvind Maheswaran, Amartya Ray, Jenoy Easow, Glanda Meera Nazareth
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Publication number: 20230351322Abstract: Systems and methods for evaluating attributes in supply chain management is disclosed. The system may receive data from a set of data sources corresponding to a supply chain associated with at least a product, pre-process the data based on integration of the data from each of the set of data sources, generate supply chain data based on the integrated data, analyze, via an orchestration engine, the supply chain data to assess an impact of the supply chain data on the supply chain, predict, via the orchestration engine, a state associated with a purchase event of the product in the supply chain, and generate a resolution flow to be executed in the supply chain for managing the predicted state associated with the purchase event of the product.Type: ApplicationFiled: March 30, 2023Publication date: November 2, 2023Applicant: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Swati SHARMA, Kishore P. DURG, Melissa TWINING-DAVIS, Antoni BARDAJÍ CUSÓ, Tamal DAS, Nirav Jagdish SAMPAT, Saran PRASAD, Surya N S CHAVALI, Arvind MAHESWARAN, Hitesh BHAGCHANDANI, Vinu VARGHESE, Rishi SAREEN, Shiv Kamal SINHA, Anuradha CHARI, Mateenuddin SHAIKH, Ajay DIVAKAR NAIK
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Publication number: 20220237432Abstract: An Artificial Intelligence (AI) based delivery time estimation system employs a plurality of delivery time estimation models or actual time of arrival (ATA) estimation models to provide ATA estimates for shipments. Each of the ATA estimation models is trained on historical data from a plurality of external data sources to generate an ATA estimate for a given delivery route via a specific delivery mode. The ATA estimates are generated based on current data retrieved for a shipment from the external data sources. The time series data sets retrieved from the external data sources for the historical data and the current data are transformed into corresponding categorical data. The categorical data is converted into binary data to be provided to the plurality of ATA estimation models for training purposes or to a trained, selected ATA estimation model for generating an ATA estimate.Type: ApplicationFiled: January 28, 2021Publication date: July 28, 2022Applicant: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Abhijit KUMAR, Amartya RAY, Arvind MAHESWARAN, Pratap SIMHA, C. S, Ravikant SINGH
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Patent number: 11030409Abstract: A device may receive information associated with an entity. The information may include a first resource and a second resource. The first resource may be associated with a first file type, and the second resource may be associated with a second file type that is different than the first file type. The first resource may be associated with a first source, and the second resource may be associated with a second source that is different than the first source. The device may extract a plurality of attributes associated with the entity based on the information. The device may implement a natural language processing technique to extract the plurality of attributes. The device may associate the plurality of attributes with a plurality of elements based on extracting the plurality of attributes. The device may provide information that identifies the plurality of elements and the plurality of attributes to permit and/or cause an action to be performed.Type: GrantFiled: August 19, 2016Date of Patent: June 8, 2021Assignee: Accenture Global Solutions LimitedInventors: Abhishek Datta Sharma, Madhura Shivaram, Suraj Govind Jadhav, Kaushal Mody, Deepak Kumar, Guruprasad Dasappa, Arvind Maheswaran
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Patent number: 10956631Abstract: A machine learning (ML) based intermittent data processing system accesses a collection of intermittent data points, determines a data distribution associated with the collection and generates one or more calculated values based on the data distribution. A simulation can be employed to determine the accuracy of the calculated values based on which, the calculated values can be employed for further processing. The collection of intermittent data points is initially processed to determine if one or more of the data distribution identification, bootstrapping or variability capping techniques are to be applied in order to obtain the calculated values. The calculated values are used to generate visualizations and recommendations.Type: GrantFiled: October 18, 2018Date of Patent: March 23, 2021Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Hitesh Bhagchandani, Arvind Maheswaran, Abhijit Kumar, Rajarajan Thangavel Ramalingam, Siddhartha Chakravarty, Neha Kagwad, Renuka R. Jogade, Mahadevaswamy Basavanna, Sunny Balani
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Publication number: 20200074020Abstract: A machine learning (ML) based intermittent data processing system accesses a collection of intermittent data points, determines a data distribution associated with the collection and generates one or more calculated values based on the data distribution. A simulation can be employed to determine the accuracy of the calculated values based on which, the calculated values can be employed for further processing. The collection of intermittent data points is initially processed to determine if one or more of the data distribution identification, bootstrapping or variability capping techniques are to be applied in order to obtain the calculated values. The calculated values are used to generate visualizations and recommendations.Type: ApplicationFiled: October 18, 2018Publication date: March 5, 2020Applicant: ACCENTURE GLOBAL SOLUTIONS LIMITEDInventors: Hitesh BHAGCHANDANI, Arvind MAHESWARAN, Abhijit KUMAR, Rajarajan THANGAVEL RAMALINGAM, Siddhartha CHAKRAVARTY, Neha KAGWAD, Renuka R. JOGADE, Mahadevaswamy BASAVANNA, Sunny BALANI
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Publication number: 20190163736Abstract: A device may receive information associated with an entity. The information may include a first resource and a second resource. The first resource may be associated with a first file type, and the second resource may be associated with a second file type that is different than the first file type. The first resource may be associated with a first source, and the second resource may be associated with a second source that is different than the first source. The device may extract a plurality of attributes associated with the entity based on the information. The device may implement a natural language processing technique to extract the plurality of attributes. The device may associate the plurality of attributes with a plurality of elements based on extracting the plurality of attributes. The device may provide information that identifies the plurality of elements and the plurality of attributes to permit and/or cause an action to be performed.Type: ApplicationFiled: August 19, 2016Publication date: May 30, 2019Inventors: Abhishek Datta SHARMA, Madhura SHIVARAM, Suraj Govind JADHAV, Kaushal MODY, Deepak KUMAR, Guruprasad DASAPPA, Arvind MAHESWARAN