Enhanced time series forecasting
    1.
    发明授权

    公开(公告)号:US11609970B1

    公开(公告)日:2023-03-21

    申请号:US17877588

    申请日:2022-07-29

    Applicant: Snowflake Inc.

    Abstract: A processing device may analyze a set of time series data using a time series forecasting model comprising an attributes model and a trend detection model. The attributes model may comprise a modified gradient boosting decision tree (GBDT) based algorithm. Analyzing the set of time series data comprises determining a set of features of the set of time series data, the set of features including periodic components as well as arbitrary components. A trend of the set of time series data may be determined using the trend detection model and the set of features and the trend may be combined to generate a time series forecast.

    ENHANCED TIME SERIES FORECASTING
    2.
    发明公开

    公开(公告)号:US20230401283A1

    公开(公告)日:2023-12-14

    申请号:US18112944

    申请日:2023-02-22

    Applicant: Snowflake Inc.

    CPC classification number: G06F17/18

    Abstract: Using an attributes model of a time series forecasting model, determine a set of features based on time series data, the set of features including periodic components. The time series data may be divided into a set of segments. For each segment of the set of segments, a weight may be assigned using an age of the segment, resulting in a set of weighted segments of time series data. Using a trend detection model of the time series forecasting model, trend data from the set of weighted segments of time series data may be determined. A time series forecast may be generated by combining the set of features and the trend data.

    Enhanced time series forecasting
    3.
    发明授权

    公开(公告)号:US12026221B2

    公开(公告)日:2024-07-02

    申请号:US18112944

    申请日:2023-02-22

    Applicant: Snowflake Inc.

    CPC classification number: G06F17/18

    Abstract: Using an attributes model of a time series forecasting model, determine a set of features based on time series data, the set of features including periodic components. The time series data may be divided into a set of segments. For each segment of the set of segments, a weight may be assigned using an age of the segment, resulting in a set of weighted segments of time series data. Using a trend detection model of the time series forecasting model, trend data from the set of weighted segments of time series data may be determined. A time series forecast may be generated by combining the set of features and the trend data.

Patent Agency Ranking