Invention Grant
- Patent Title: Hyper-parameter space optimization for machine learning data processing pipeline
-
Application No.: US17395094Application Date: 2021-08-05
-
Publication No.: US11544136B1Publication Date: 2023-01-03
- Inventor: Isil Pekel , Steven Jaeger , Manuel Zeise
- Applicant: SAP SE
- Applicant Address: DE Walldorf
- Assignee: SAP SE
- Current Assignee: SAP SE
- Current Assignee Address: DE Walldorf
- Agency: Mintz Levin Cohn Ferris Glovsky and Popeo, P.C.
- Main IPC: G06F11/07
- IPC: G06F11/07 ; G06N20/00 ; G06F11/36 ; G06N20/20

Abstract:
A data processing pipeline may be generated to include an orchestrator node, a preparator node, and an executor node. The preparator node may generate a training dataset. The executor node may execute machine learning trials by applying, to the training dataset, a machine learning model and/or a different set of trial parameters. The orchestrator node may identify, based on a result of the machine learning trials, a machine learning model for performing a task. Data associated with the execution of the data processing pipeline may be collected for storage in a tracking database. A report including de-normalized and enriched data from the tracking database may be generated. The hyper-parameter space of the machine learning model may be analyzed based on the report. A root cause of at least one fault associated with the execution of the data processing pipeline may be identified based on the analysis.
Information query