Time series analysis is an important research topic and a key step in monitoring and predicting events in many felds. Recently, the Matrix Profle method, and particularly two of its Euclidean-distance-based implementations—SCRIMP and SCAMP—have become the state-of-the-art approaches in this feld. Those algorithms bring the possibility of obtaining exact motifs and discords from a time series, which can be used to infer events, predict outcomes, detect anomalies and more. While matrix profle is embarrassingly parallelizable, we fnd that auto-vectorization techniques fail to fully exploit the SIMD capabilities of modern CPU architectures. In this paper, we develop custom-vectorized SCRIMP and SCAMP implementations based on AVX2 and AVX-512 e...
Presented at HiPEAC Conference 2020, Bologna (Italy)Time series analysis is an important research to...
The need for increased application performance in high-integrity systems like those in avionics is o...
Time series classification (TSC) methods discover and exploit patterns in time series and other one-...
Presented at HiPEAC Conference 2020, Bologna (Italy)Time series analysis is an important research to...
Companies are increasingly measuring their products and services, resulting in a rising amount of av...
Primitives such as motifs, discords, shapelets, etc., are widely used in time series data mining. A ...
Presented at NiPS Summer School 2019, Perugia (Italy)This work presents results using transprecision...
As companies are increasingly measuring their products and services, the amount of time series data ...
Time series motif (similarities) and discords discovery is one of the most important and challenging...
Time series motifs have been in the literature for about fifteen years, but have only recently begun...
Two methods of time series analysis were applied to naturalistic driving data. The SAX method reduce...
The matrix profile (MP) is a data structure computed from a time series which encodes the data requi...
Current microarchitectures are equipped with SIMD instruction sets enabling massive data parallelism...
This technical report describes the steps taken to optimize and parallelize a time series classifica...
A motif is a pair of subsequences of a longer time series, which are very similar to each other. Mot...
Presented at HiPEAC Conference 2020, Bologna (Italy)Time series analysis is an important research to...
The need for increased application performance in high-integrity systems like those in avionics is o...
Time series classification (TSC) methods discover and exploit patterns in time series and other one-...
Presented at HiPEAC Conference 2020, Bologna (Italy)Time series analysis is an important research to...
Companies are increasingly measuring their products and services, resulting in a rising amount of av...
Primitives such as motifs, discords, shapelets, etc., are widely used in time series data mining. A ...
Presented at NiPS Summer School 2019, Perugia (Italy)This work presents results using transprecision...
As companies are increasingly measuring their products and services, the amount of time series data ...
Time series motif (similarities) and discords discovery is one of the most important and challenging...
Time series motifs have been in the literature for about fifteen years, but have only recently begun...
Two methods of time series analysis were applied to naturalistic driving data. The SAX method reduce...
The matrix profile (MP) is a data structure computed from a time series which encodes the data requi...
Current microarchitectures are equipped with SIMD instruction sets enabling massive data parallelism...
This technical report describes the steps taken to optimize and parallelize a time series classifica...
A motif is a pair of subsequences of a longer time series, which are very similar to each other. Mot...
Presented at HiPEAC Conference 2020, Bologna (Italy)Time series analysis is an important research to...
The need for increased application performance in high-integrity systems like those in avionics is o...
Time series classification (TSC) methods discover and exploit patterns in time series and other one-...