Architectures, systems and methods for program defined state system
US-10713564-B2 · Jul 14, 2020 · US
US11042801B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-11042801-B2 |
| Application number | US-202016925813-A |
| Country | US |
| Kind code | B2 |
| Filing date | Jul 10, 2020 |
| Priority date | Feb 3, 2017 |
| Publication date | Jun 22, 2021 |
| Grant date | Jun 22, 2021 |
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In one aspect, the inventions include a system for control of a software defined computer network state system. First, an application plane layer is adapted to receive instructions regarding operation of the state system. Preferably, the application plane layer is coupled to an application plane layer interface. Second, a control plane layer includes an adaptive control unit, such as a cognitive computing unit, an artificial intelligence unit or a machine-learning unit. Third, a data plane layer includes an input interface to receive data input from one or more data sources. An adaptive control unit is trained at least in part on analyzing the behavioral responses of users in response to content provided on one or more displays to the users as sensed by one or more sensors.
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We claim: 1. A system for control of a software defined computer network state system, the system including an adaptive control unit that is trained at least in part on analyzing the behavioral responses of users in response to content provided on one or more displays to the users as sensed by one or more sensors, comprising: an application plane layer, the application layer adapted to receive instructions regarding operation of the state system, the application plane layer coupled to an application plane layer interface, a control plane layer, the control plane layer including an adaptive control unit, the control plane layer interfacing with the application plane layer interface to receive information related to the instructions regarding operation of the state system, the control plane coupled to a control plane layer interface, and a data plane layer, the data plane layer including an output adapted to provide the content to the display, the data plane layer including an input interface to receive data input from one or more data sources including the output from the sensors, the data plane layer being coupled to the control plane layer interface, and a behavior detection unit coupled to receive the output from the sensors and to provide an output to the control plane layer to train the adaptive control unit. 2. The system for the control of a software defined computer network state system of claim 1 wherein the adaptive control unit includes cognitive computing unit. 3. The system for control of a software defined computer network state system of claim 1 wherein the control plane layer includes an artificial intelligence unit. 4. The system for control of a software defined computer network state system of claim 1 wherein the control plane layer includes a machine-learning unit. 5. The system for control of a software defined computer network state system of claim 1 wherein the control plane layer includes a neural network. 6. The system for control of a software defined computer network state system of claim 5 wherein the neural network is a deep neural network. 7. The system for control of a software defined computer network state system of claim 5 wherein the neural network includes a graphics processing unit (GPU). 8. The system for control of a software defined computer network state system of claim 1 wherein the control plan layer further includes an analytics unit. 9. The system for control of a software defined computer network state system of claim 1 wherein the detector is a camera. 10. The system for control of a software defined computer network state system of claim 1 wherein the detector is a microphone. 11. The system for control of a software defined computer network state system of claim 1 wherein the detector is a physiologic sensor. 12. The system for control of a software defined computer network state system of claim 11 wherein the physiologic sensor is a heart rate sensor. 13. The system for control of a software defined computer network state system of claim 11 wherein the physiologic sensor is a mental activity sensor. 14. The system for control of a software defined computer network state system of claim 1 , wherein the detector is a facial detector. 15. The system for control of a software defined computer network state system of claim 1 wherein the detector is a motion detector. 16. The system for control of a software defined computer network state system of claim 1 wherein the motion detector is a three dimensional motion detector. 17. The system for control of a software defined computer network state system of claim 1 wherein the behavioral detection unit provides a positive weighting for training of the adaptive control unit. 18. The system for control of a software defined computer network state system of claim 1 wherein network receives updates. 19. The system for control of a software defined computer network state system of claim 1 wherein the data input to the data plane layer includes data from the Internet of Things (IoT). 20. The system for control of a software defined computer network state system of claim 1 wherein the data plane layer further includes a title transfer element.
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