Presented at HiPEAC Conference 2020, Bologna (Italy)Time series analysis is an important research topic of great interest in many fields. However, the memory-bound nature of the state-of-the-art algorithms limits the execution performance in some processor architectures. We analyze the Matrix Profile algorithm from the performance viewpoint in the context of the Intel Xeon Phi Knights Landing architecture (KNL). The experimental evaluation shows a performance improvement up to 190x with respect to the sequential execution and that the use of the HBM memory improves performance in a factor up to 5x with respect to the DDR4 memory.Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tech
Energy consumption of processors and memories is quickly becoming a limiting factor in the deploymen...
As we move towards exascale computing, the efficiency of application performance and energy utilizat...
The emergence of new manycore architectures, such as the Intel Xeon Phi, poses new challenges in how...
Presented at HiPEAC Conference 2020, Bologna (Italy)Time series analysis is an important research to...
The Roofline Performance Model is a visually intuitive method used to bound the sustained peak float...
The KNL processors offers unique features concerning memory hierarchy and vectorization capabilities...
This technical report describes the steps taken to optimize and parallelize a time series classifica...
In this session we show, in two case studies, how the roofline feature of Intel Advisor has been uti...
The explosion of the Internet-Of-Things and Big Data era has resulted in the continuous generation o...
The article is devoted to the vectorization of calculations for Intel Xeon Phi Knights Landing (KNL)...
One of the emerging architectures in HPC systems is Intel’s Knights Landing (KNL) many core chip, wh...
In this whitepaper, we propose outer-product-parallel and inner-product-parallel sparse matrix-matri...
A motif is a pair of subsequences of a longer time series, which are very similar to each other. Mot...
학위논문 (석사)-- 서울대학교 대학원 : 자연과학대학 수리과학부, 2018. 2. 신동우.This paper presents the design and implementation...
In this paper, we propose a lightweight optimization methodology for the ubiquitous sparse matrix-ve...
Energy consumption of processors and memories is quickly becoming a limiting factor in the deploymen...
As we move towards exascale computing, the efficiency of application performance and energy utilizat...
The emergence of new manycore architectures, such as the Intel Xeon Phi, poses new challenges in how...
Presented at HiPEAC Conference 2020, Bologna (Italy)Time series analysis is an important research to...
The Roofline Performance Model is a visually intuitive method used to bound the sustained peak float...
The KNL processors offers unique features concerning memory hierarchy and vectorization capabilities...
This technical report describes the steps taken to optimize and parallelize a time series classifica...
In this session we show, in two case studies, how the roofline feature of Intel Advisor has been uti...
The explosion of the Internet-Of-Things and Big Data era has resulted in the continuous generation o...
The article is devoted to the vectorization of calculations for Intel Xeon Phi Knights Landing (KNL)...
One of the emerging architectures in HPC systems is Intel’s Knights Landing (KNL) many core chip, wh...
In this whitepaper, we propose outer-product-parallel and inner-product-parallel sparse matrix-matri...
A motif is a pair of subsequences of a longer time series, which are very similar to each other. Mot...
학위논문 (석사)-- 서울대학교 대학원 : 자연과학대학 수리과학부, 2018. 2. 신동우.This paper presents the design and implementation...
In this paper, we propose a lightweight optimization methodology for the ubiquitous sparse matrix-ve...
Energy consumption of processors and memories is quickly becoming a limiting factor in the deploymen...
As we move towards exascale computing, the efficiency of application performance and energy utilizat...
The emergence of new manycore architectures, such as the Intel Xeon Phi, poses new challenges in how...