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name:-0.0075390338897705
name:-0.0062439441680908
name:-0.010816097259521
Srinivasabagavathar; Anand Patent Filings

Srinivasabagavathar; Anand

Patent Applications and Registrations

Patent applications and USPTO patent grants for Srinivasabagavathar; Anand.The latest application filed is for "determining a user-specific approach for disambiguation based on an interaction recommendation machine learning model".

Company Profile
11.6.8
  • Srinivasabagavathar; Anand - Santa Clara CA
  • Srinivasabagavathar; Anand - Fremont CA
*profile and listings may contain filings by different individuals or companies with the same name. Review application materials to confirm ownership/assignment.
Patent Activity
PatentDate
Intent-based natural language processing system
Grant 11,269,872 - Moo , et al. March 8, 2
2022-03-08
Navigating hierarchical components based on an expansion recommendation machine learning model
Grant 11,170,016 - Das , et al. November 9, 2
2021-11-09
Suggesting follow-up queries based on a follow-up recommendation machine learning model
Grant 11,120,344 - Das , et al. September 14, 2
2021-09-14
Translating a natural language request to a domain-specific language request using templates
Grant 10,885,026 - Das , et al. January 5, 2
2021-01-05
Determining a presentation format for search results based on a presentation recommendation machine learning model
Grant 10,713,269 - Das , et al.
2020-07-14
Determining A User-specific Approach For Disambiguation Based On An Interaction Recommendation Machine Learning Model
App 20200183930 - Das; Dipock ;   et al.
2020-06-11
Determining a user-specific approach for disambiguation based on an interaction recommendation machine learning model
Grant 10,565,196 - Das , et al. Feb
2020-02-18
Translating A Natural Language Request To A Domain-specific Language Request Using Templates
App 20190034429 - Das; Dipock ;   et al.
2019-01-31
Disambiguating A Natural Language Request Based On A Disambiguation Recommendation Machine Learning Model
App 20190034430 - Das; Dipock ;   et al.
2019-01-31
Navigating Hierarchical Components Based On An Expansion Recommendation Machine Learning Model
App 20190034499 - Das; Dipock ;   et al.
2019-01-31
Suggesting Follow-up Queries Based On A Follow-up Recommendation Machine Learning Model
App 20190034813 - Das; Dipock ;   et al.
2019-01-31
Translating A Natural Language Request To A Domain Specific Language Request Based On Multiple Interpretation Algorithms
App 20190034555 - Das; Dipock ;   et al.
2019-01-31
Determining A Presentation Format For Search Results Based On A Presentation Recommendation Machine Learning Model
App 20190034498 - Das; Dipock ;   et al.
2019-01-31
Determining A User-specific Approach For Disambiguation Based On An Interaction Recommendation Machine Learning Model
App 20190034484 - Das; Dipock ;   et al.
2019-01-31

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