SYSTEM AND A METHOD FOR OPTIMIZING SPRINT-BASED TASKS IN AGILE METHODOLOGY

    公开(公告)号:US20240346447A1

    公开(公告)日:2024-10-17

    申请号:US18212385

    申请日:2023-06-21

    CPC classification number: G06Q10/103 G06Q10/06311

    Abstract: The present invention provides for a system for optimizing sprint-based tasks implemented in an agile methodology. The system comprises a memory and a processor configured to execute a task optimization engine to receive input data comprising story point data associated with historical user stories captured during previous sprints, where the input data is analyzed to determine a first feature dataset. A timeseries dataset is determined for forecasting unplanned task for upcoming sprint based on analysis of the input data associated with unplanned task of the previous sprints and a dataset associated with attributes is determined based on the input data associated with the previous sprints for story point data of an upcoming sprint. The datasets are combined to generate a persistent identifier for sprint capacity buffer data values to optimize sprint-based tasks in agile methodology.

    SYSTEM AND METHOD FOR OPTIMIZING SOFTWARE QUALITY ASSURANCE DURING SOFTWARE DEVELOPMENT PROCESS

    公开(公告)号:US20210173642A1

    公开(公告)日:2021-06-10

    申请号:US16788481

    申请日:2020-02-12

    Abstract: A system and a method for optimizing software quality assurance during various phases of Software Development Process (SDP) is provided. In particular, the present invention provides for generating machine learning (ML) models corresponding to respective phases of the SDP based on historical data. Further, each of the generated ML models associated with respective phases of the SDP are configured with a set of parameters. Furthermore, a model configuration corresponding to each phase of SDP is identified by executing configured models on the historical data and a set of predefined result-parameters is analyzed. Yet further, quality assurance events are optimized by analyzing real-time data associated with respective phases of SDP using the identified model configuration corresponding to respective phases. Finally, the prediction-results of the identified model configuration are monitored for respective phases and another model configuration(s) is selected if the performance metrics of the identified model configuration are unsatisfactory.

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