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Method and system for semi-supervised semantic task management from semi-structured heterogeneous data streams

机译:半结构性异构数据流半监督语义任务管理的方法和系统

摘要

Embodiments of the present invention are directed to a computer-implemented machine-learning method and system for automatically creating and updating tasks by reading signals from external data sources and understanding what users are doing. Embodiments of the present invention are directed to a computer-implemented machine-learning method and system for automatically completing tasks by reading signals from external sources and understanding when an existing task has been executed. Tasks created are representable and explainable in a human readable format that can be shown to users and used to automatically fill productivity applications including but not limited to task managers, to-do lists, project management, time trackers, and daily planners. Tasks created are representable in a way that can be interpreted by a machine such as a computer system or an artificial intelligence so that external systems can be delegated or connected to the system.
机译:本发明的实施例涉及一种计算机实现的机器学习方法和系统,用于通过读取来自外部数据源的信号来自动创建和更新任务,并理解用户正在进行的操作。 本发明的实施例涉及一种计算机实现的机器学习方法和系统,用于通过在执行现有任务时通过读取来自外部源和理解的信号来自动完成任务的系统。 创建的任务是可表示的并且以人类可读格式可说明,可以向用户展示并用于自动填充生产率应用程序,包括但不限于任务管理器,待办事务管理员,项目管理,时间跟踪器和日常计划人员。 创建的任务以可以通过计算机系统或人工智能的机器解释的方式来代表,以便可以委派或连接到系统。

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