Patents by Inventor Vivek Peter
Vivek Peter 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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Publication number: 20240338389Abstract: In accordance with an embodiment, systems and methods described herein can be used, for example with a content management system, to provide recommendations to categorize/classify content into user-defined categories, which in turn provides an opportunity for content managers to place new content into accurate categories effortlessly, based on previously evaluated/categorized content. A recommendation system or tool can use artificial intelligence (AI) techniques to continuously learn from past data, and assist in placing content into a relevant category through automatic categorization/classification of newly created/edited content. The recommendation tool can be implemented and applied across diverse domains by generating feature vectors from contents, creating clusters in the feature space based on previously categorized content, and recommending a category for new content through feature space distance calculation from the clusters.Type: ApplicationFiled: June 20, 2024Publication date: October 10, 2024Inventors: Sandip Ghoshal, Sreeharsha Kamireddy, Jaswanth Maryala, Vivek Peter, Hareesh S. Kadlabalu
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Patent number: 12056161Abstract: In accordance with an embodiment, systems and methods described herein can be used, for example with a content management system, to provide recommendations to categorize/classify content into user-defined categories, which in turn provides an opportunity for content managers to place new content into accurate categories effortlessly, based on previously evaluated/categorized content. A recommendation system or tool can use artificial intelligence (AI) techniques to continuously learn from past data, and assist in placing content into a relevant category through automatic categorization/classification of newly created/edited content. The recommendation tool can be implemented and applied across diverse domains by generating feature vectors from contents, creating clusters in the feature space based on previously categorized content, and recommending a category for new content through feature space distance calculation from the clusters.Type: GrantFiled: September 27, 2021Date of Patent: August 6, 2024Assignee: ORACLE INTERNATIONAL CORPORATIONInventors: Sandip Ghoshal, Sreeharsha Kamireddy, Jaswanth Maryala, Vivek Peter, Hareesh S. Kadlabalu
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Patent number: 11853705Abstract: Techniques describes herein include using software tools and feature vector comparisons to analyze and recommend images, text content, and other relevant media content from a content repository. A digital content recommendation tool may communicate with a number of back-end services and content repositories to analyze text and/or visual input, extract keywords or topics from the input, classify and tag the input content, and store the classified/tagged content in one or more content repositories. Input text and/or input images may be converted into vectors within a multi-dimensional vector space, and compared to a plurality of feature vectors within a vector space to identify relevant content items within a content repository. Such comparisons may include exhaustive deep searches and/or efficient tag-based filtered searches. Relevant content items (e.g., images, audio and/or video clips, links to related articles, etc.Type: GrantFiled: August 31, 2021Date of Patent: December 26, 2023Assignee: ORACLE INTERNATIONAL CORPORATIONInventors: Sandip Ghoshal, Nalini Pattanayak, Vivek Peter, Hareesh Kadlabalu
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Patent number: 11604798Abstract: Techniques describes herein include using software tools and feature vector comparisons to analyze and recommend images, text content, and other relevant media content from a content repository. A digital content recommendation tool may communicate with a number of back-end services and content repositories to analyze text and/or visual input, extract keywords or topics from the input, classify and tag the input content, and store the classified/tagged content in one or more content repositories. Input text and/or input images may be converted into vectors within a multi-dimensional vector space, and compared to a plurality of feature vectors within a vector space to identify relevant content items within a content repository. Such comparisons may include exhaustive deep searches and/or efficient tag-based filtered searches. Relevant content items (e.g., images, audio and/or video clips, links to related articles, etc.Type: GrantFiled: December 10, 2021Date of Patent: March 14, 2023Assignee: ORACLE INTERNATIONAL CORPORATIONInventors: Sandip Ghoshal, Nalini Kanta Pattanayak, Vivek Peter, Hareesh Kadlabalu
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Publication number: 20220100767Abstract: Techniques describes herein include using software tools and feature vector comparisons to analyze and recommend images, text content, and other relevant media content from a content repository. A digital content recommendation tool may communicate with a number of back-end services and content repositories to analyze text and/or visual input, extract keywords or topics from the input, classify and tag the input content, and store the classified/tagged content in one or more content repositories. Input text and/or input images may be converted into vectors within a multi-dimensional vector space, and compared to a plurality of feature vectors within a vector space to identify relevant content items within a content repository. Such comparisons may include exhaustive deep searches and/or efficient tag-based filtered searches. Relevant content items (e.g., images, audio and/or video clips, links to related articles, etc.Type: ApplicationFiled: December 10, 2021Publication date: March 31, 2022Inventors: SANDIP GHOSHAL, NALINI KANTA PATTANAYAK, VIVEK PETER, HAREESH KADLABALU
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Publication number: 20220012268Abstract: In accordance with an embodiment, systems and methods described herein can be used, for example with a content management system, to provide recommendations to categorize/classify content into user-defined categories, which in turn provides an opportunity for content managers to place new content into accurate categories effortlessly, based on previously evaluated/categorized content. A recommendation system or tool can use artificial intelligence (AI) techniques to continuously learn from past data, and assist in placing content into a relevant category through automatic categorization/classification of newly created/edited content. The recommendation tool can be implemented and applied across diverse domains by generating feature vectors from contents, creating clusters in the feature space based on previously categorized content, and recommending a category for new content through feature space distance calculation from the clusters.Type: ApplicationFiled: September 27, 2021Publication date: January 13, 2022Inventors: SANDIP GHOSHAL, SREEHARSHA KAMIREDDY, JASWANTH MARYALA, VIVEK PETER, HAREESH S. KADLABALU
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Publication number: 20210390108Abstract: Techniques describes herein include using software tools and feature vector comparisons to analyze and recommend images, text content, and other relevant media content from a content repository. A digital content recommendation tool may communicate with a number of back-end services and content repositories to analyze text and/or visual input, extract keywords or topics from the input, classify and tag the input content, and store the classified/tagged content in one or more content repositories. Input text and/or input images may be converted into vectors within a multi-dimensional vector space, and compared to a plurality of feature vectors within a vector space to identify relevant content items within a content repository. Such comparisons may include exhaustive deep searches and/or efficient tag-based filtered searches. Relevant content items (e.g., images, audio and/or video clips, links to related articles, etc.Type: ApplicationFiled: August 31, 2021Publication date: December 16, 2021Inventors: SANDIP GHOSHAL, NALINI PATTANAYAK, VIVEK PETER, HAREESH KADLABALU
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Patent number: 11200240Abstract: Techniques describes herein include using software tools and feature vector comparisons to analyze and recommend images, text content, and other relevant media content from a content repository. A digital content recommendation tool may communicate with a number of back-end services and content repositories to analyze text and/or visual input, extract keywords or topics from the input, classify and tag the input content, and store the classified/tagged content in one or more content repositories. Input text and/or input images may be converted into vectors within a multi-dimensional vector space, and compared to a plurality of feature vectors within a vector space to identify relevant content items within a content repository. Such comparisons may include exhaustive deep searches and/or efficient tag-based filtered searches. Relevant content items (e.g., images, audio and/or video clips, links to related articles, etc.Type: GrantFiled: October 18, 2019Date of Patent: December 14, 2021Assignee: ORACLE INTERNATIONAL CORPORATIONInventors: Sandip Ghoshal, Nalini Kanta Pattanayak, Vivek Peter, Hareesh Kadlabalu
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Patent number: 11163777Abstract: Techniques describes herein include using software tools and feature vector comparisons to analyze and recommend images, text content, and other relevant media content from a content repository. A digital content recommendation tool may communicate with a number of back-end services and content repositories to analyze text and/or visual input, extract keywords or topics from the input, classify and tag the input content, and store the classified/tagged content in one or more content repositories. Input text and/or input images may be converted into vectors within a multi-dimensional vector space, and compared to a plurality of feature vectors within a vector space to identify relevant content items within a content repository. Such comparisons may include exhaustive deep searches and/or efficient tag-based filtered searches. Relevant content items (e.g., images, audio and/or video clips, links to related articles, etc.Type: GrantFiled: September 24, 2019Date of Patent: November 2, 2021Assignee: ORACLE INTERNATIONAL CORPORATIONInventors: Sandip Ghoshal, Nalini Kanta Pattanayak, Vivek Peter, Hareesh Kadlabalu
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Publication number: 20200349635Abstract: In accordance with an embodiment, described herein is a system and method for providing a content creation tool for use with shoppable content data. A content management system, such as, for example, an Oracle Content and Experience Cloud (OCE) environment, enables the creation of shoppable content that provides a purchasing opportunity directly from the content itself. The system can include, support, or operate in accordance with a content creation tool, that can incorporate aspects of artificial intelligence, for use with shoppable content data, including, for example, performing automatic detection of objects in an image; and automatic discovery of products to be mapped with the shoppable objects or shoppable content; for use in publishing the shoppable content in mobile application, web, or other document formats.Type: ApplicationFiled: July 22, 2020Publication date: November 5, 2020Inventors: Sandip Ghoshal, Vinod Kandukuri, Vivek Peter, Hareesh S. Kadlabalu
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Publication number: 20200125575Abstract: Techniques describes herein include using software tools and feature vector comparisons to analyze and recommend images, text content, and other relevant media content from a content repository. A digital content recommendation tool may communicate with a number of back-end services and content repositories to analyze text and/or visual input, extract keywords or topics from the input, classify and tag the input content, and store the classified/tagged content in one or more content repositories. Input text and/or input images may be converted into vectors within a multi-dimensional vector space, and compared to a plurality of feature vectors within a vector space to identify relevant content items within a content repository. Such comparisons may include exhaustive deep searches and/or efficient tag-based filtered searches. Relevant content items (e.g., images, audio and/or video clips, links to related articles, etc.Type: ApplicationFiled: October 18, 2019Publication date: April 23, 2020Applicant: Oracle International CorporationInventors: Sandip Ghoshal, Nalini Kanta Pattanayak, Vivek Peter, Hareesh Kadlabalu
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Publication number: 20200125574Abstract: Techniques describes herein include using software tools and feature vector comparisons to analyze and recommend images, text content, and other relevant media content from a content repository. A digital content recommendation tool may communicate with a number back-end services and content repositories to analyze text and/or visual input, extract keywords or topics from the input, classify and tag the input content, and store the classified/tagged content in one or more content repositories. Input text and/or input images may be converted into vectors within a multi-dimensional vector space, and compared to a plurality of feature vectors within a vector space to identify relevant content items within a content repository. Such comparisons may include exhaustive deep searches and/or efficient tag-based filtered searches. Relevant content items (e.g., images, audio and/or video clips, links to related articles, etc.Type: ApplicationFiled: September 24, 2019Publication date: April 23, 2020Applicant: Oracle International CorporationInventors: Sandip Ghoshal, Nalini Kanta Pattanayak, Vivek Peter, Hareesh Kadlabalu