loadpatents
name:-0.013965129852295
name:-0.011740922927856
name:-0.0030851364135742
MCFALL; Jason Derek Patent Filings

MCFALL; Jason Derek

Patent Applications and Registrations

Patent applications and USPTO patent grants for MCFALL; Jason Derek.The latest application filed is for "method or system for querying a sensitive dataset".

Company Profile
3.13.13
  • MCFALL; Jason Derek - London GB
  • MCFALL; Jason Derek - Cambridge GB
  • - London GB
*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
Method Or System For Querying A Sensitive Dataset
App 20220277097 - CABOT; Charles Codman ;   et al.
2022-09-01
Data Product Release Method Or System
App 20210012028 - CABOT; Charles Codman ;   et al.
2021-01-14
Computer-implemented Privacy Engineering System And Method
App 20200327252 - MCFALL; Jason Derek ;   et al.
2020-10-15
Distributed scalable incrementally updated models in decisioning systems
Grant 9,524,472 - Newnham , et al. December 20, 2
2016-12-20
Online temporal difference learning from incomplete customer interaction histories
Grant 9,367,820 - Newnham , et al. June 14, 2
2016-06-14
Real-time adaptive binning through partition modification
Grant 9,076,156 - Newnham , et al. July 7, 2
2015-07-07
Online Temporal Difference Learning From Incomplete Customer Interaction Histories
App 20150100526 - NEWNHAM; Leonard Michael ;   et al.
2015-04-09
Online asynchronous reinforcement learning from concurrent customer histories
Grant 8,924,318 - Newnham , et al. December 30, 2
2014-12-30
Online asynchronous reinforcement learning from concurrent customer histories
Grant 08924318 -
2014-12-30
Online temporal difference learning from incomplete customer interaction histories
Grant 8,914,314 - Newnham , et al. December 16, 2
2014-12-16
Real-time adaptive binning
Grant 8,909,644 - Newnham , et al. December 9, 2
2014-12-09
Online asynchronous reinforcement learning from concurrent customer histories
Grant 8,909,590 - Newnham , et al. December 9, 2
2014-12-09
Method of storing and analysing data produced from interactions between external agents and a system
Grant 8,768,879 - Phillips , et al. July 1, 2
2014-07-01
Distributed Scalable Incrementally Updated Models In Decisioning Systems
App 20140114891 - NEWNHAM; Leonard Michael ;   et al.
2014-04-24
Distributed scalable incrementally updated models in decisioning systems
Grant 8,620,840 - Newnham , et al. December 31, 2
2013-12-31
Online Temporal Difference Learning From Incomplete Customer Interaction Histories
App 20130110750 - Newnham; Leonard Michael ;   et al.
2013-05-02
Online Asynchronous Reinforcement Learning From Concurrent Customer Histories
App 20130080358 - Newnham; Leonard Michael ;   et al.
2013-03-28
Online Asynchronous Reinforcement Learning From Concurrent Customer Histories
App 20130080377 - Newnham; Leonard Michael ;   et al.
2013-03-28
Distributed Scalable Incrementally Updated Models In Decisioning Systems
App 20130024405 - Newnham; Leonard Michael ;   et al.
2013-01-24
Real-time Adaptive Binning
App 20120303598 - Newnham; Leonard Michael ;   et al.
2012-11-29
Real-time Adaptive Binning Through Partition Modification
App 20120303621 - Newnham; Leonard Michael ;   et al.
2012-11-29
Method Of Storing And Analysing Data Produced From Interactions Between External Agents And A System
App 20110184905 - PHILLIPS; Alan Paul Rolleston ;   et al.
2011-07-28

uspto.report is an independent third-party trademark research tool that is not affiliated, endorsed, or sponsored by the United States Patent and Trademark Office (USPTO) or any other governmental organization. The information provided by uspto.report is based on publicly available data at the time of writing and is intended for informational purposes only.

While we strive to provide accurate and up-to-date information, we do not guarantee the accuracy, completeness, reliability, or suitability of the information displayed on this site. The use of this site is at your own risk. Any reliance you place on such information is therefore strictly at your own risk.

All official trademark data, including owner information, should be verified by visiting the official USPTO website at www.uspto.gov. This site is not intended to replace professional legal advice and should not be used as a substitute for consulting with a legal professional who is knowledgeable about trademark law.

© 2024 USPTO.report | Privacy Policy | Resources | RSS Feed of Trademarks | Trademark Filings Twitter Feed