Dynamic, parameterized image resource selection
US-2016328421-A1 · Nov 10, 2016 · US
US11023517B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-11023517-B2 |
| Application number | US-201815995116-A |
| Country | US |
| Kind code | B2 |
| Filing date | May 31, 2018 |
| Priority date | May 31, 2018 |
| Publication date | Jun 1, 2021 |
| Grant date | Jun 1, 2021 |
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Various embodiments, methods and systems for implementing a distributed computing frameset assembly engine are provided. Initially, a synthetic data scene is accessed. A first set of values for scene-variation parameters is determined. The first set of values is automatically determined for generating a synthetic data scene frameset. The synthetic data scene frameset is generated based on the first set of values. The synthetic data scene frameset comprises at least a first frame in the frameset comprising the synthetic data scene updated based on a value for a scene-variation parameter. The synthetic data scene frameset is stored.
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The invention claimed is: 1. A system for implementing a distributed computing system frameset assembly engine, the system comprising: one or more hardware computer processors; and computer memory storing computer-useable instructions, that when used by the one or more computer processors, cause the one or more hardware computer processors to perform operations comprising: a frameset assembly engine configured to: access a synthetic data scene; determine a first set of values for scene-variation parameters, wherein the first set of values are automatically determined for generating a synthetic data scene frameset using a synthetic data as a service (SDaaS) integrated development environment (IDE) associated with both SDaaS distributed computing service operations and SDaaS machine-learning training service operations that are part of a service-oriented architecture of an SDaaS service, wherein the service-oriented architecture abstracts underlying the SDaaS distributed computing service operations that are managed via the SDaaS service from the SDaaS machine-learning training service operations, wherein the SDaaS distributed computing service operations comprise storing and retrieving source assets at varying levels of detail for performing the SDaaS machine-learning training service operations on the source assets associated with the synthetic data scene; based on the SDaaS service, generate the synthetic data scene frameset based on the first set of values, wherein the synthetic data scene frameset comprises at least a first frame in the frameset comprising the synthetic data scene updated based on a value for a scene-variation parameter; and storing the synthetic data scene frameset. 2. The system of claim 1 , wherein a second set of values for scene-variation parameters are manually selected for generating the synthetic data scene frameset. 3. The system of claim 2 , wherein the second set of values are manually selected using the SDaaS IDE that supports a machine-learning synthetic data standard comprising a file format and a dataset-training architecture. 4. The system of claim 1 , wherein the value for the scene-variation parameter is based on a training dataset report of a previous synthetic data scene frameset associated with the synthetic data scene. 5. The system of claim 1 , wherein generating the synthetic data scene frameset comprises iteratively generating frames for the synthetic data scene frameset based on updating the synthetic data scene based on the first set of values. 6. The system of claim 1 , wherein at least one SDaaS distributed computing service operation, managed via the SDaaS service, supports distributed computing availability of synthetic data assets, wherein the at least one SDaaS distributed computing service operation is different from the SDaaS machine-learning training service operations. 7. The system of claim 1 , the synthetic data scene comprises a synthetic data asset, wherein the synthetic data asset is associated with asset-variation parameters and the scene-variation parameters, wherein the asset-variation parameters and the scene-variation parameters are programmable for machine-learning. 8. One or more computer storage media storing instructions thereon for implementing a distributed computing system frameset assembly engine, which, when executed by one or more processors of a computing device cause the computing device to perform actions comprising: accessing a synthetic data scene; determining a first set of values for scene-variation parameters, wherein the first set of values are automatically determined for generating a synthetic data scene frameset using a synthetic data as a service (SDaaS) integrated development environment (IDE) associated with both SDaaS distributed computing service operations and SDaaS machine-learning training service operations that are part of a service-oriented architecture of an SDaaS service, wherein the service-oriented architecture abstracts underlying the SDaaS distributed computing service operations that are managed via the SDaaS service from the SDaaS machine-learning training service operations, wherein the SDaaS distributed computing service operations comprise storing and retrieving source assets at varying levels of detail for performing the SDaaS machine-learning training service operations on the source assets associated with the synthetic data scene; based on the SDaaS service, generating the synthetic data scene frameset based on the first set of values, wherein the synthetic data scene frameset comprises at least a first frame in the frameset comprising the synthetic data scene updated based on a value for a scene-variation parameter; and storing the synthetic data scene frameset. 9. The media of claim 8 , wherein a second set of values for scene-variation parameters are manually selected for generating the synthetic data scene frameset. 10. The media of claim 8 , wherein the value for the scene-variation parameter is based on a training dataset report of a previous synthetic data scene frameset associated with the synthetic data scene. 11. The media of claim 8 , wherein generating the synthetic data scene frameset comprises iteratively generating frames for the synthetic data scene frameset based on updating the synthetic data scene based on the first set of values. 12. The media of claim 8 , wherein the synthetic data scene comprises a synthetic data asset. 13. The media of claim 12 , wherein the synthetic data scene comprises a mapping to the synthetic data asset. 14. The media of claim 12 , wherein the synthetic data asset is associated with asset-variation parameters and the scene-variation parameters, wherein the asset-variation parameters and the scene-variation parameters are programmable for machine-learning. 15. A computer-implemented method for implementing a distributed computing system frameset assembly engine, the method comprising: accessing a synthetic data scene; determining a first set of values for scene-variation parameters using a synthetic data as a service (SDaaS) integrated development environment (IDE) associated with both SDaaS distributed computing service operations and SDaaS machine-learning training service operations that are part of a service-oriented architecture of an SDaaS service, wherein the service-oriented architecture abstracts underlying the SDaaS distributed computing service operations that are managed via the SDaaS service from the SDaaS machine-learning training service operations, wherein the SDaaS distributed computing service operations comprise storing and retrieving source assets at varying levels of detail for performing the SDaaS machine-learning training service operations on the source assets associated with the synthetic data scene; based on the SDaaS service, generating the synthetic data scene frameset based on the first set of values, wherein the synthetic data scene frameset comprises at least a first frame in the frameset comprising the synthetic data scene updated based on a value for a scene-variation parameter; and storing the synthetic data scene frameset. 16. The method of claim 15 , wherein the first set of values for scene-variation parameters are automatically selected for generating the synthetic data scene frameset. 17. The method of claim 15 , wherein the first set of values for scene-variation parameters are manually selected for generating the synthetic data scene frameset. 18. The method of claim 15 , wherein the value for the scene-variation parameter is based on a training datase
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