ORCHESTRATOR FOR MACHINE LEARNING PIPELINE
    1.
    发明公开

    公开(公告)号:US20230206137A1

    公开(公告)日:2023-06-29

    申请号:US18111839

    申请日:2023-02-20

    Applicant: SAP SE

    CPC classification number: G06N20/20 G06F16/355

    Abstract: Provided is a system and method for training and validating models in a machine learning pipeline for failure mode analytics. The machine learning pipeline may include an unsupervised training phase, a validation phase and a supervised training and scoring phase. In one example, the method may include receiving an identification of a machine learning model, executing a machine learning pipeline comprising a plurality of services which train the machine learning model via at least one of an unsupervised learning process and a supervised learning process, the machine learning pipeline being controlled by an orchestration module that triggers ordered execution of the services, and storing the trained machine learning model output from the machine learning pipeline in a database associated with the machine learning pipeline.

    ORCHESTRATOR FOR MACHINE LEARNING PIPELINE
    2.
    发明申请

    公开(公告)号:US20200272947A1

    公开(公告)日:2020-08-27

    申请号:US16284291

    申请日:2019-02-25

    Applicant: SAP SE

    Abstract: Provided is a system and method for training and validating models in a machine learning pipeline for failure mode analytics. The machine learning pipeline may include an unsupervised training phase, a validation phase and a supervised training and scoring phase. In one example, the method may include receiving an identification of a machine learning model, executing a machine learning pipeline comprising a plurality of services which train the machine learning model via at least one of an unsupervised learning process and a supervised learning process, the machine learning pipeline being controlled by an orchestration module that triggers ordered execution of the services, and storing the trained machine learning model output from the machine learning pipeline in a database associated with the machine learning pipeline.

    FAILURE MODE ANALYTICS
    3.
    发明申请

    公开(公告)号:US20200272112A1

    公开(公告)日:2020-08-27

    申请号:US16284369

    申请日:2019-02-25

    Applicant: SAP SE

    Abstract: Provided is a system and method for training and validating models in a machine learning pipeline for failure mode analytics. The machine learning pipeline may include an unsupervised training phase, a validation phase and a supervised training and scoring phase. In one example, the method may include receiving a request to create a machine learning model for failure mode detection associated with an asset, retrieving historical notification data of the asset, generating an unsupervised machine learning model via unsupervised learning on the historical notification data, wherein the unsupervised learning comprises identifying failure topics from text included in the historical notification data and mapping the identified failure topics to a plurality of predefined failure modes for the asset, and storing the generated unsupervised machine learning model via a storage device.

    Predicting leading indicators of an event

    公开(公告)号:US11262743B2

    公开(公告)日:2022-03-01

    申请号:US16276876

    申请日:2019-02-15

    Applicant: SAP SE

    Abstract: Provided is a system and method for predicting leading indicators for predicting occurrence of an event at a target asset. Rather than rely on traditional manufacturer-defined leading indicators for an asset, the examples herein predict leading indicators for a target asset based on actual operating conditions at the target asset. Accordingly, unanticipated operating conditions can be considered. In one example, the method may include receiving operating data of a target resource, the operating data being associated with previous occurrences of an event at the target resource, predicting one or more leading indicators of the event at the target resource based on the received operating data, each leading indicator comprising a variable and a threshold value for the variable, and outputting information about the one or more predicted leading indicators of the target resource for display via a user interface.

    Orchestrator for machine learning pipeline

    公开(公告)号:US12223408B2

    公开(公告)日:2025-02-11

    申请号:US18111839

    申请日:2023-02-20

    Applicant: SAP SE

    Abstract: Provided is a system and method for training and validating models in a machine learning pipeline for failure mode analytics. The machine learning pipeline may include an unsupervised training phase, a validation phase and a supervised training and scoring phase. In one example, the method may include receiving an identification of a machine learning model, executing a machine learning pipeline comprising a plurality of services which train the machine learning model via at least one of an unsupervised learning process and a supervised learning process, the machine learning pipeline being controlled by an orchestration module that triggers ordered execution of the services, and storing the trained machine learning model output from the machine learning pipeline in a database associated with the machine learning pipeline.

    Failure mode analytics
    6.
    发明授权

    公开(公告)号:US12055902B2

    公开(公告)日:2024-08-06

    申请号:US18096080

    申请日:2023-01-12

    Applicant: SAP SE

    CPC classification number: G05B13/0265 G06F9/542 G06N7/01 G06N20/20

    Abstract: Provided is a system and method for training and validating models in a machine learning pipeline for failure mode analytics. The machine learning pipeline may include an unsupervised training phase, a validation phase and a supervised training and scoring phase. In one example, the method may include receiving a request to create a machine learning model for failure mode detection associated with an asset, retrieving historical notification data of the asset, generating an unsupervised machine learning model via unsupervised learning on the historical notification data, wherein the unsupervised learning comprises identifying failure topics from text included in the historical notification data and mapping the identified failure topics to a plurality of predefined failure modes for the asset, and storing the generated unsupervised machine learning model via a storage device.

    Determining failure modes of devices based on text analysis

    公开(公告)号:US11922377B2

    公开(公告)日:2024-03-05

    申请号:US15927068

    申请日:2018-03-20

    Applicant: SAP SE

    Abstract: Some embodiments provide a program that retrieves a set of notifications describing failures that occurred on a set of monitored devices. The program further determines a set of topics based on the set of notifications. The program also determines failure modes associated with the set of topic from a plurality of failure modes defined for the set of monitored devices. The program further determines failure modes associated with the set of notifications based on the set of topics and the failure modes associated with the set of topics. The program also receives a particular notification that includes a particular set of words describing a failure that occurred on a particular monitored device in the set of monitored devices. The program further determines a failure mode associated with the particular notification based on the particular set of words and the determined failure modes associated with the set of notifications.

    FAILURE MODE ANALYTICS
    8.
    发明公开

    公开(公告)号:US20230168639A1

    公开(公告)日:2023-06-01

    申请号:US18096080

    申请日:2023-01-12

    Applicant: SAP SE

    CPC classification number: G05B13/0265 G06F9/542 G06N20/20 G06N7/01

    Abstract: Provided is a system and method for training and validating models in a machine learning pipeline for failure mode analytics. The machine learning pipeline may include an unsupervised training phase, a validation phase and a supervised training and scoring phase. In one example, the method may include receiving a request to create a machine learning model for failure mode detection associated with an asset, retrieving historical notification data of the asset, generating an unsupervised machine learning model via unsupervised learning on the historical notification data, wherein the unsupervised learning comprises identifying failure topics from text included in the historical notification data and mapping the identified failure topics to a plurality of predefined failure modes for the asset, and storing the generated unsupervised machine learning model via a storage device.

    DETERMINING FAILURE MODES OF DEVICES BASED ON TEXT ANALYSIS

    公开(公告)号:US20190317480A1

    公开(公告)日:2019-10-17

    申请号:US15927068

    申请日:2018-03-20

    Applicant: SAP SE

    Abstract: Some embodiments provide a program that retrieves a set of notifications describing failures that occurred on a set of monitored devices. The program further determines a set of topics based on the set of notifications. The program also determines failure modes associated with the set of topic from a plurality of failure modes defined for the set of monitored devices. The program further determines failure modes associated with the set of notifications based on the set of topics and the failure modes associated with the set of topics. The program also receives a particular notification that includes a particular set of words describing a failure that occurred on a particular monitored device in the set of monitored devices. The program further determines a failure mode associated with the particular notification based on the particular set of words and the determined failure modes associated with the set of notifications.

    Orchestrator for machine learning pipeline

    公开(公告)号:US11586986B2

    公开(公告)日:2023-02-21

    申请号:US16284291

    申请日:2019-02-25

    Applicant: SAP SE

    Abstract: Provided is a system and method for training and validating models in a machine learning pipeline for failure mode analytics. The machine learning pipeline may include an unsupervised training phase, a validation phase and a supervised training and scoring phase. In one example, the method may include receiving an identification of a machine learning model, executing a machine learning pipeline comprising a plurality of services which train the machine learning model via at least one of an unsupervised learning process and a supervised learning process, the machine learning pipeline being controlled by an orchestration module that triggers ordered execution of the services, and storing the trained machine learning model output from the machine learning pipeline in a database associated with the machine learning pipeline.

Patent Agency Ranking