Self-learning automated information technology change risk prediction

    公开(公告)号:US12294503B2

    公开(公告)日:2025-05-06

    申请号:US18331361

    申请日:2023-06-08

    Applicant: Kyndryl, Inc.

    Abstract: Embodiments relate to providing self-learning automated information technology change risk prediction. A processor inputs a change request to a first machine learning model, the first machine learning model determining at least one word pair in the change request, the change request being a modification in an IT environment. The processor classifies the at least one word pair into a change category for the IT environment using a second machine learning model, the change category identifying a type of the modification to be executed in the IT environment. The processor determines a likelihood of causing a problem in the IT environment as a result of executing the modification. The processor automatically performs an action to prevent the modification of the change request in the IT environment.

    SELF-LEARNING AUTOMATED INFORMATION TECHNOLOGY CHANGE RISK PREDICTION

    公开(公告)号:US20240414064A1

    公开(公告)日:2024-12-12

    申请号:US18331361

    申请日:2023-06-08

    Applicant: Kyndryl, Inc.

    Abstract: Embodiments relate to providing self-learning automated information technology change risk prediction. A processor inputs a change request to a first machine learning model, the first machine learning model determining at least one word pair in the change request, the change request being a modification in an IT environment. The processor classifies the at least one word pair into a change category for the IT environment using a second machine learning model, the change category identifying a type of the modification to be executed in the IT environment. The processor determines a likelihood of causing a problem in the IT environment as a result of executing the modification. The processor automatically performs an action to prevent the modification of the change request in the IT environment.

    EARLY DETECTION OF INFORMATION TECHNOLOGY (IT) FAILURES USING MULTIMODAL CORRELATON AND PREDICTION

    公开(公告)号:US20250053469A1

    公开(公告)日:2025-02-13

    申请号:US18447512

    申请日:2023-08-10

    Applicant: Kyndryl, Inc.

    Abstract: Embodiments relate to early detection of information technology (IT) failures in a computing system. A technique is executed by one or more processors and includes receiving multiple IT records including past and recent historical data, extracting first and second time series sections from the past and recent historical data, respectively, training a failure detection model to correlate metric patterns in the first time series sections with at least one of other metric patterns and previous IT failures and, in response to the training, using the failure detection model to predict at least one of upcoming metric patterns and upcoming IT failures from metric patterns in the second time series sections.

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