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Please use this identifier to cite or link to this item: https://libeldoc.bsuir.by/handle/123456789/31357
Title: Reducing the dimensionality of real-time sensor data
Authors: Heger, D. A.
Keywords: материалы конференций;sensor data;analys;massive;dimensionality
Issue Date: 2018
Publisher: БГУИР
Citation: Heger, D. A. Reducing the dimensionality of real-time sensor data / D. A. Heger // BIG DATA Advanced Analytics: collection of materials of the fourth international scientific and practical conference, Minsk, Belarus, May 3 – 4, 2018 / editorial board: М. Batura [etc.]. – Minsk, BSUIR, 2018. – Р. 95.
Abstract: In many scientific field such as oil & gas, physics, or weather analysis, as well as in domains such as security or risk assessment, massive amounts of sensor generated measurement data is produced that has to be analyzed and mined to gain insights. The actual data is collected over time and the vast amount of observations lead to a collection of ordered data on a time line. Traditionally, time series data reflects high-dimensional data that requires large amounts of memory and storage space. In oil & gas, data collected on rigs may exceed the capacity potential of the network link (for uploading the data), as well as the actual local storage that is available. Hence, the traditional approach of defining machine learning algorithms that operate on the stored datasets is not feasible. This talk focuses on bringing machine learning to the source (sensors) and so reduce the dimensionality of the data in flight. The major challenge is to represent the meaningful information of the time series' data via a low-dimensional representation while capturing the essence of the data pattern in flight.
URI: https://libeldoc.bsuir.by/handle/123456789/31357
Appears in Collections:BIG DATA and Advanced Analytics. Использование BIG DATA для оптимизации бизнеса и информационных технологий (2018)

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