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公开(公告)号:US12210937B2
公开(公告)日:2025-01-28
申请号:US16194157
申请日:2018-11-16
Applicant: SAP SE
Inventor: Karthik S J , Amy He , Prajesh K , Georg Glantschnig , Riya Thosar , Arjun Karat , Yann Le Biannic , Jing Ye , Subhobrata Dey , Prerna Makanawala , Xiaoqing He
IPC: G06N20/00 , G06F9/445 , G06F16/215 , G06N20/20
Abstract: A method of improving usability and transparency of machine-learning aspects of applications providing various types of services is disclosed. Based on a request submitted through an administrative user interface, a data readiness check is performed on underlying data associated with the application. Based on a successful completion of the data readiness check, a configuration file is retrieved from an application server. The configuration file specifies a plurality of keys for generating a machine-learned model for the application. The machine-learned model is trained based on the plurality of keys specified in the configuration file. The machine-learned model is selected from a plurality of machine-learned models based on dry runs of the each of the plurality of models. The machine-learned model is activated with respect to the application. Scores are identified from the underlying data items based on the selected machine-learned model.
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公开(公告)号:US20200159690A1
公开(公告)日:2020-05-21
申请号:US16194157
申请日:2018-11-16
Applicant: SAP SE
Inventor: Karthik S. J , Amy He , Prajesh K , Georg Glantschnig , Riya Thosar , Arjun Karat , Yann Le Biannic , Jing Ye , Subhobrata Dey , Prerna Makanawala , Xiaoqing He
Abstract: A method of improving usability and transparency of machine-learning aspects of applications providing various types of services is disclosed. Based on a request submitted through an administrative user interface, a data readiness check is performed on underlying data associated with the application. Based on a successful completion of the data readiness check, a configuration file is retrieved from an application server. The configuration file specifies a plurality of keys for generating a machine-learned model for the application. The machine-learned model is trained based on the plurality of keys specified in the configuration file. The machine-learned model is selected from a plurality of machine-learned models based on dry runs of the each of the plurality of models. The machine-learned model is activated with respect to the application. Scores are identified from the underlying data items based on the selected machine-learned model.
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