Synthetic-to-realistic image conversion using generative adversarial network (gan) or other machine learning model
US-2024428568-A1 · Dec 26, 2024 · US
US2025053866A1 · US · A1
| Field | Value |
|---|---|
| Publication number | US-2025053866-A1 |
| Application number | US-202418618238-A |
| Country | US |
| Kind code | A1 |
| Filing date | Mar 27, 2024 |
| Priority date | Aug 8, 2023 |
| Publication date | Feb 13, 2025 |
| Grant date | — |
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A method for sharing data between machine learning (ML) applications with a network training platform. The method includes: receiving a request to register a first ML application with the network training platform, wherein the request comprises first one or more parameters related to the first ML application; identifying at least one second ML application registered with the network training platform based on the first one or more parameters; identifying second one or more parameters related to the at least one second ML application; comparing the first one or more parameters with the second one or more parameters related to the at least one second ML application; and sharing, with the first ML application, predicted data corresponding to the at least one second ML application based on the comparing.
Opening claim text (preview).
What is claimed is: 1 . A method for sharing data between machine learning (ML) applications by a network training platform, the method comprising: receiving a request to register a first ML application with the network training platform, wherein the request comprises first one or more parameters related to the first ML application; identifying at least one second ML application registered with the network training platform based on the first one or more parameters; identifying second one or more parameters related to the at least one second ML application; comparing the first one or more parameters with the second one or more parameters related to the at least one second ML application; and sharing, with the first ML application, predicted data corresponding to the at least one second ML application based on the comparing. 2 . The method of claim 1 , wherein the first one or more parameters comprises at least one of cell identification, slice identification, site identification, key performance indicator (KPI) to train, timestamp of data to use, an accuracy of predicted data, and an identification of a ML model associated with the first ML application. 3 . The method of claim 1 , comprising: identifying a level of similarity between the first ML application and the at least one second ML application based on the comparison of the first one or more parameters with the second one or more parameters; comparing the identified level of similarity with a specified threshold; and sharing, with the first ML application, the predicted data corresponding to the at least one second ML application based on the level of similarity between the first ML application and the at least one second ML application being greater than the specified threshold. 4 . The method of claim 1 , further comprising: prior to sharing the predicted data corresponding to the at least one second ML application with the first ML application, modifying the predicted data based on the first one or more parameters. 5 . The method of claim 1 , further comprising: transmitting, to the at least one second ML application, a request to modify the predicted data corresponding to the at least one second ML application based on the first one or more parameters. 6 . The method of claim 3 , comprising: training the first ML application, to obtain predicted data corresponding to the first one or more parameters of the first ML application based on the level of similarity between the first ML application and the at least one second ML application being less than the specified threshold. 7 . The method of claim 1 , wherein sharing the predicted data corresponding to the at least one the second ML application based on the comparing comprises: validating a policy corresponding to sharing of the predicted data of the at least one second ML application; and sharing the predicted data of the at least one of the plurality of second ML applications based on successful validation of the policy. 8 . An apparatus for a network training platform for sharing data between machine learning (ML) applications, comprising: a memory storing instructions; and at least one processor configured to, when executing the instructions, cause the apparatus to perform operations comprising: receiving a request to register a first ML application with the network training platform, wherein the request comprises first one or more parameters corresponding related to the first ML application; identifying at least one second ML application registered with the network training platform based on the first one or more parameters; identifying second one or more parameters related to the at least one second ML application; comparing the first one or more parameters with the second one or more parameters related to the at least one second ML application; and sharing, with the first ML application, predicted data corresponding to the at least one second ML application based on the comparing. 9 . The apparatus of claim 8 , wherein the first one or more parameters comprises at least one of cell identification, slice identification, site identification, key performance indicator (KPI) to train, timestamp of data to use, an accuracy of predicted data, and an identification of a ML model associated with the first ML application. 10 . The apparatus of claim 8 , wherein the operations comprises: identifying a level of similarity between the first ML application and the at least one second ML application based on the comparison of the first one or more parameters with the second one or more parameters; comparing the identified level of similarity with a specified threshold; and sharing, with the first ML application, the predicted data corresponding to the at least one second ML application based on the level of similarity between the first ML application and the at least one second ML application being greater than the specified threshold. 11 . The apparatus of claim 8 , wherein the operations further comprises: prior to sharing the predicted data corresponding to at least one second ML application, modifying the predicted data based on the first one or more parameters. 12 . The apparatus of claim 8 , wherein the operations further comprises: transmitting, to the at least one second ML application, a request to modify the predicted data corresponding to the at least one second ML application based on the first one or more parameters. 13 . The apparatus of claim 10 , wherein the operations further comprises: training, the first ML application, to obtain predicted data corresponding to the first one or more parameters based on the level of similarity between the first ML application and the at least one second ML application being less than the predefined threshold. 14 . The apparatus of claim 8 , wherein sharing the predicted data corresponding to the at least one second ML application based on the comparison comprises: validating a policy corresponding to sharing of the predicted data corresponding to the at least one second ML application; and sharing the predicted data corresponding to the at least one of the plurality of second ML applications based on successful validation of the policy. 15 . A non-transitory computer readable storage medium storing instructions which, when executed by at least one processor of an apparatus for a network training platform for sharing data between machine learning (ML) applications, cause the apparatus to perform operations, the operations comprising: receiving a request to register a first ML application with the network training platform, wherein the request comprises first one or more parameters related to the first ML application; identifying at least one second ML application registered with the network training platform based on the first one or more parameters; identifying second one or more parameters related to the at least one second ML application; comparing the first one or more parameters with the second one or more parameters related to the at least one second ML application; and sharing, with the first ML application, predicted data corresponding to the at least one second ML application based on the comparing. 16 . The non-transitory computer readable storage medium of claim 15 , wherein the first one or more parameters comprises at least one of cell identification, slice identification, site identification, key performance indicator (KPI) to train, timestamp of data to use, an accuracy of predicted data, and an identification of a ML model associated with the first
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