Patents by Inventor Ramakanth Kanagovi
Ramakanth Kanagovi 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: 11409826Abstract: A system, method, and computer-readable storage medium are disclosed that execute machine vision operations to categorize a locality. At least one embodiment accesses a map image of a locality, where the map image includes geographical artefacts corresponding to entities within the locality; analyzes the map image to detect the entities in the locality using the geographical artefacts; assigns entity classes to detected entities in the locality; assigns a locality score to the locality based on entity classes included in the locality; retrieves street view images for one or more of the detected entities in the locality; and analyzes street view images of the detected entities to assign one or more further classifications to the detected entities. Other embodiments include corresponding computer systems, apparatus, and computer programs recorded on one or more computer storage devices, each configured to perform the actions of the method.Type: GrantFiled: December 29, 2019Date of Patent: August 9, 2022Assignee: Dell Products L.P.Inventors: Prakash Sridharan, Arun Swamy, Sumant Sahoo, Ravi Shukla, Ramakanth Kanagovi
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Patent number: 11281517Abstract: A method for managing error messages includes obtaining, by a message resolution manager, a plurality of error messages, performing an error message consecutive deduplication on the plurality of error messages to obtain a plurality of deduplicated error messages, generating a plurality of message sequences using the plurality deduplicated error messages, applying a message sequence frequency algorithm to the plurality of message sequences to obtain a high severity message sequence list, and initiating an error message resolution on at least one message sequence specified in the high severity message sequence list.Type: GrantFiled: August 14, 2020Date of Patent: March 22, 2022Assignee: EMC IP Holding Company LLCInventors: Ramakanth Kanagovi, Ankur Gupta, Aurosikha
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Publication number: 20220050738Abstract: A method for managing error messages includes obtaining, by a message resolution manager, a plurality of error messages, performing an error message consecutive deduplication on the plurality of error messages to obtain a plurality of deduplicated error messages, generating a plurality of message sequences using the plurality deduplicated error messages, applying a message sequence frequency algorithm to the plurality of message sequences to obtain a high severity message sequence list, and initiating an error message resolution on at least one message sequence specified in the high severity message sequence list.Type: ApplicationFiled: August 14, 2020Publication date: February 17, 2022Inventors: Ramakanth Kanagovi, Ankur Gupta, Aurosikha
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Publication number: 20210217033Abstract: At least one embodiment is directed to a computer-implemented method for using machine vision to categorize a locality to conduct product positioning analyses, the method including: generating locality profile scores for each locality of a plurality of localities using deep learning networks, where the locality profile score includes distributions of entity classes within the locality; extracting a set of entities having the same entity class from a group of localities; retrieving historical purchasing data for the entity set; and generating a sequence of products likely to be purchased by a target entity as a function of: the similarity of purchasing characteristics of the target entity with respect to other entities, product sequences found in product purchase of other entities, and entity profile weights extracted from the locality profile scores of other entities that have purchased one or more of the same products as the target entity.Type: ApplicationFiled: January 14, 2020Publication date: July 15, 2021Applicant: Dell Products L.P.Inventors: Ramakanth Kanagovi, Ravi Shukla, Prakash Sridharan, Arun Swamy, Sumant Sahoo
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Publication number: 20210217051Abstract: At least one embodiment of the disclosed system is directed to computer-implemented method for using machine vision to categorize a locality to conduct lead mining analyses. Embodiments of the method may include: generating locality profile scores and economic categorization for each locality of a plurality of localities, the locality profile score for each locality being derived through neural network analyses of map images of the locality, the economic categorization being derived through neural network analyses of images of entities within the locality; and generating a lead score for each entity in the locality group as a function of the locality profile score for the locality in which the entity is located, the economic categorization of the locality in which the entity is located, and campaign vehicles used in the locality in which the entity is located.Type: ApplicationFiled: January 14, 2020Publication date: July 15, 2021Applicant: Dell Products L.P.Inventors: Arun Swamy, Ravi Shukla, Prakash Sridharan, Sumant Sahoo, Ramakanth Kanagovi
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Publication number: 20210199457Abstract: A system, method, and computer-readable storage medium are disclosed that execute machine vision operations to categorize a locality. At least one embodiment accesses a map image of a locality, where the map image includes geographical artefacts corresponding to entities within the locality; analyzes the map image to detect the entities in the locality using the geographical artefacts; assigns entity classes to detected entities in the locality; assigns a locality score to the locality based on entity classes included in the locality; retrieves street view images for one or more of the detected entities in the locality; and analyzes street view images of the detected entities to assign one or more further classifications to the detected entities. Other embodiments include corresponding computer systems, apparatus, and computer programs recorded on one or more computer storage devices, each configured to perform the actions of the method.Type: ApplicationFiled: December 29, 2019Publication date: July 1, 2021Applicant: Dell Products L.P.Inventors: Ravi Shukla, Sumant Sahoo, Prakash Sridharan, Ramakanth Kanagovi, Arun Swamy
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Publication number: 20210200827Abstract: A system, method, and computer-readable storage medium are disclosed that execute machine vision operations to categorize a locality. At least one embodiment accesses a map image of a locality, where the map image includes geographical artefacts corresponding to entities within the locality; analyzes the map image to detect the entities in the locality using the geographical artefacts; assigns entity classes to detected entities in the locality; assigns a locality score to the locality based on entity classes included in the locality; retrieves street view images for one or more of the detected entities in the locality; and analyzes street view images of the detected entities to assign one or more further classifications to the detected entities. Other embodiments include corresponding computer systems, apparatus, and computer programs recorded on one or more computer storage devices, each configured to perform the actions of the method.Type: ApplicationFiled: December 29, 2019Publication date: July 1, 2021Applicant: Dell Products L.P.Inventors: Prakash Sridharan, Arun Swamy, Sumant Sahoo, Ravi Shukla, Ramakanth Kanagovi
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Patent number: 11017452Abstract: A method, system and computer readable medium for performing a purchase prediction operation. The purchase prediction operation includes: selecting a target purchaser, the purchase prediction operation providing a purchase prediction for the target purchaser; capturing a product term associated with a most recent purchase period of the target purchaser; performing a sequential recommendation operation, the sequential recommendation operation providing a sequence recommendation score; and, generating a purchase pattern prediction for the target user based upon the sequential recommendation score.Type: GrantFiled: October 9, 2018Date of Patent: May 25, 2021Assignee: Dell Products L.P.Inventors: Ramakanth Kanagovi, Arnab Chowdhury, Sumant Sahoo
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Publication number: 20210133210Abstract: A system, method, and computer-readable medium are provided that engages in a data-driven and machine learning-based approach to arrive at high-value, system under test configurations for validation. Embodiments determine all the possible configurations for a computer platform, considering the variety of processors, boards, adapters, and the like, and then utilize a pseudo-ensemble clustering methodology that combines a k-means clustering technique with a neural-network based Kohenon self-organizing map competitive clustering technique to associate like configurations, and then utilizes a data-driven scoring methodology on the clustered configurations to prioritize those configurations to be validation tested.Type: ApplicationFiled: October 31, 2019Publication date: May 6, 2021Applicant: Dell Products L.P.Inventors: Ramakanth Kanagovi, Saheli Saha, Kevin P. Olalde, Geoffrey S. Meyer, Sunil A. Vyas, Erik Reyes
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Publication number: 20210110423Abstract: A system, method, and computer-readable medium are disclosed for management of a distributed ledger technology customer loyalty program, by establishing a distributed ledger technology network of customer and entity nodes. The entity nodes support products and/or services purchased by customers, providing a distributed ledger technology platform accessible by the nodes. Transactions between nodes go through the distributed ledger technology platform. A distributed ledger technology ledger which tracks the transactions. Coins/credits are provided to customers based on their transactions.Type: ApplicationFiled: October 11, 2019Publication date: April 15, 2021Applicant: Dell Products L.P.Inventors: Sumant Sahoo, Prakash Sridharan, Ramakanth Kanagovi, Ravi Shukla, Arun Swamy
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Patent number: 10937070Abstract: A system, method, and computer-readable medium are disclosed for performing a recommendation operation, comprising: optimizing a product list to provide an optimized product list for use when generating a recommendation for an account; optimizing a neighbor set to provide an optimized neighbor set for use when generating the recommendation for the account; boosting a self-cosine similarity metric to provide a boosted self-cosine similarity metric, the self-cosine similarity metric corresponding to the account; and, providing a recommendation for the account, the recommendation being based on the optimized product list, the optimized neighbor set and the boosted self-cosine similarity metric.Type: GrantFiled: January 17, 2018Date of Patent: March 2, 2021Assignee: Dell Products L.P.Inventors: Sumant Sahoo, Ramakanth Kanagovi
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Publication number: 20200380336Abstract: A system, method, and computer-readable medium are provided for a hardware component failure prediction system that can incorporate a time-series dimension as an input while also addressing issues related to a class imbalance problem associated with failure data. Embodiments utilize a double-stacked long short-term memory (DS-LSTM) deep neural network with a first layer of the DS-LSTM passing hidden cell states learned from a sequence of multi-dimensional parameter time steps to a second layer of the DS-LSTM that is configured to capture a next sequential prediction output. Output from the second layer is combined with a set of categorical variables to an input layer of a fully-connected dense neural network layer. Information generated by the dense neural network provides prediction of whether a hardware component will fail in a given future time interval.Type: ApplicationFiled: June 3, 2019Publication date: December 3, 2020Applicant: Dell Products L.P.Inventors: Arnab Chowdhury, Ramakanth Kanagovi
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Publication number: 20200111147Abstract: A method, system and computer readable medium for performing a purchase prediction operation. The purchase prediction operation includes: selecting a target purchaser, the purchase prediction operation providing a purchase prediction for the target purchaser; capturing a product term associated with a most recent purchase period of the target purchaser; performing a sequential recommendation operation, the sequential recommendation operation providing a sequence recommendation score; and, generating a purchase pattern prediction for the target user based upon the sequential recommendation score.Type: ApplicationFiled: October 9, 2018Publication date: April 9, 2020Applicant: Dell Products L.P.Inventors: Ramakanth Kanagovi, Arnab Chowdhury, Sumant Sahoo
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Publication number: 20190220909Abstract: A system, method, and computer-readable medium are disclosed for performing a recommendation operation, comprising: optimizing a product list to provide an optimized product list for use when generating a recommendation for an account; optimizing a neighbor set to provide an optimized neighbor set for use when generating the recommendation for the account; boosting a self-cosine similarity metric to provide a boosted self-cosine similarity metric, the self-cosine similarity metric corresponding to the account; and, providing a recommendation for the account, the recommendation being based on the optimized product list, the optimized neighbor set and the boosted self-cosine similarity metric.Type: ApplicationFiled: January 17, 2018Publication date: July 18, 2019Applicant: Dell Products L.P.Inventors: Sumant Sahoo, Ramakanth Kanagovi