Distributed Algorithms to Find Similar Time Series

european conference on machine learning(2019)

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摘要
As sensors improve in both bandwidth and quantity over time, the need for high performance sensor fusion increases. This requires both better (quasi-linear time if possible) algorithms and paral-lelism. This demonstration uses financial and seismic data to show how two state-of-the-art algorithms construct indexes and answer similarity queries using Spark. Demo visitors will be able to choose query time series, see how each algorithm approximates nearest neighbors and compare times in a parallel environment.
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关键词
Time series, Indexing, Similarity search, Distributed data processing, Spark
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