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name:-0.0096480846405029
name:-0.00838303565979
name:-0.0054919719696045
Haws; David C. Patent Filings

Haws; David C.

Patent Applications and Registrations

Patent applications and USPTO patent grants for Haws; David C..The latest application filed is for "using recurrent neural network for partitioning of audio data into segments that each correspond to a speech feature cluster ide".

Company Profile
6.7.9
  • Haws; David C. - New York NY
  • Haws; David C. - Yorktown Heights NY
*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
Feature selection for efficient epistasis modeling for phenotype prediction
Grant 11,335,434 - Haws , et al. May 17, 2
2022-05-17
Feature selection for efficient epistasis modeling for phenotype prediction
Grant 11,335,433 - Haws , et al. May 17, 2
2022-05-17
Using recurrent neural network for partitioning of audio data into segments that each correspond to a speech feature cluster identifier
Grant 10,902,843 - Dimitriadis , et al. January 26, 2
2021-01-26
Using Recurrent Neural Network For Partitioning Of Audio Data Into Segments That Each Correspond To A Speech Feature Cluster Ide
App 20200082809 - DIMITRIADIS; DIMITRIOS B. ;   et al.
2020-03-12
Using recurrent neural network for partitioning of audio data into segments that each correspond to a speech feature cluster identifier
Grant 10,546,575 - Dimitriadis , et al. Ja
2020-01-28
Using long short-term memory recurrent neural network for speaker diarization segmentation
Grant 10,249,292 - Dimitriadis , et al.
2019-04-02
Feature Selection For Efficient Epistasis Modeling For Phenotype Prediction
App 20190012426 - HAWS; David C. ;   et al.
2019-01-10
Feature Selection For Efficient Epistasis Modeling For Phenotype Prediction
App 20190012427 - HAWS; David C. ;   et al.
2019-01-10
Using Recurrent Neural Network For Partitioning Of Audio Data Into Segments That Each Correspond To A Speech Feature Cluster Identifier
App 20180166067 - Dimitriadis; Dimitrios B. ;   et al.
2018-06-14
Using Long Short-term Memory Recurrent Neural Network For Speaker Diarization Segmentation
App 20180166066 - Dimitriadis; Dimitrios B. ;   et al.
2018-06-14
Lossless compression of the enumeration space of founder line crosses
Grant 9,075,748 - Haws , et al. July 7, 2
2015-07-07
Lossless compression of the enumeration space of founder line crosses
Grant 9,041,566 - Haws , et al. May 26, 2
2015-05-26
Lossless Compression Of The Enumeration Space Of Founder Line Crosses
App 20150061903 - HAWS; David C. ;   et al.
2015-03-05
Lossless Compression Of The Enumeration Space Of Founder Line Crosses
App 20150065361 - HAWS; David C. ;   et al.
2015-03-05
Modeling Multiple Interactions Between Multiple Loci
App 20140156235 - Haws; David C. ;   et al.
2014-06-05
Modeling Multiple Interactions Between Multiple Loci
App 20140156236 - HAWS; David C. ;   et al.
2014-06-05

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