首页> 外国专利> INTELLIGENT TASK SUGGESTIONS BASED ON AUTOMATED LEARNING AND CONTEXTUAL ANALYSIS OF USER ACTIVITY

INTELLIGENT TASK SUGGESTIONS BASED ON AUTOMATED LEARNING AND CONTEXTUAL ANALYSIS OF USER ACTIVITY

机译:基于自动学习和用户活动上下文分析的智能任务建议

摘要

The techniques disclosed herein improve existing systems by automatically identifying tasks from a number of different types of user activity and providing suggestions for the tasks to one or more selected delivery mechanisms. A system compiles the tasks and pushes each task to a personalized task list of a user. The delivery of each task may be based on any suitable user activity, which may include communication between one or more users or a user's interaction with a particular file or a system. The system can identify timelines, performance parameters, and other related contextual data associated with the task. The system can identify a delivery schedule for the task to optimize the effectiveness of the delivery of the task. The system can also provide smart notifications. When a task conflicts with a person's calendar, the system can resolve scheduling conflicts based on priorities of a calendar event.
机译:本文公开的技术通过自动从多种不同类型的用户活动中识别任务并将针对该任务的建议提供给一个或多个选定的传递机制来改善现有系统。系统编译任务并将每个任务推送到用户的个性化任务列表。每个任务的传递可以基于任何适当的用户活动,该活动可以包括一个或多个用户之间的通信或用户与特定文件或系统的交互。系统可以标识时间线,性能参数以及与任务相关的其他相关上下文数据。系统可以识别任务的交付时间表,以优化任务交付的有效性。该系统还可以提供智能通知。当任务与某人的日历发生冲突时,系统可以根据日历事件的优先级来解决计划冲突。

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