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Tutorial 1

机译:教程1

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摘要

Summary form only given. The Internet of Things (IoT) comprises objects that have the ability to communicate with other objects that are ultimately connected to the Internet. A majority of IoT objects in use at the moment are RFID (Radio-Frequency Identification) tags. These tags generate a large amount of data due to their real-time communication ability as well as the amount of data generated during each such communication instance. The availability of such rich real-time data is unprecedented in a large number of these applications. While it is nice to have access to such data, it is even more important to be able to process that data for actionable intelligence. Scalability is a significant issue that is faced by learning algorithms that are used in all Big Data applications. We discuss some steps that can be taken to preprocess the data in order to reduce its complexity, and thereby improve ease of learning/analysis.
机译:摘要表格仅给出。事物互联网(IOT)包括具有与最终连接到因特网的其他对象通信的对象。目前使用的大多数IOT对象是RFID(射频识别)标签。由于它们的实时通信能力以及在每个这样的通信实例期间产生的数据量,这些标签产生了大量数据。在大量这些应用程序中,这种丰富的实时数据的可用性是前所未有的。虽然可以访问此类数据很好,但能够处理可操作智能的数据更为重要。可伸缩性是一个重要的问题,它面临着所有大数据应用中使用的学习算法。我们讨论了一些步骤可以采取预处理数据以降低其复杂性,从而提高易于学习/分析。

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