Summarization: Mutual Information (MI) and Transfer Entropy (TE) algorithms compute statistical measurements on the information shared between two dependent random processes. These measurements have focused on pairwise computations of time series in a broad range of fields, such as Econometrics, Neuroscience, Data Mining and Computer Vision. Unlike previous works which mostly focus on 8-bit Computer Vision applications, this work proposes the first generic hardware architectures for the acceleration of the MI and TE algorithms to target any dataset for a realistic, multi-FPGA platform. We evaluate and compare two such systems, the Maxeler MAX3A Vectis and the Convey HC-2ex platforms, and provide insight into each one's benefits and limitati...
Summarization: Stream join is a fundamental and computationally expensive data mining operation for ...
In recent years, the big data era has produced an increasing volume and complexity of data that requ...
We present a GPU implementation to compute both mu-tual information and its derivatives. Mutual info...
Summarization: It is a foregone conclusion that contemporary applications are bounded by massive com...
Entropy is one of the most fundamental notions for understanding complexity. Among all the methods t...
Recent literature has reported the use of entropy measurements for anomaly detection purposes in IP ...
Image Registration is a highly compute-intensive optimization procedure that determines the geometri...
Exploration tasks are essential to many emerging robotics applications, ranging from search and resc...
Network traffic monitoring uses empirical entropy to detect anomalous events such as various types o...
The performance and the efficiency of recent computing platforms have been deeply influenced by the ...
Data for the paper Brejza, Matthew, Maunder, Rob, Al-Hashimi, Bashir and Hanzo, Lajos (2016) A hig...
<p>Measurements of the propagation delays in the carry-chains of Spartan 6 Xilinx and Cyclone IV Int...
Summarization: The ever-increasing genomic dataset sizes, fueled by continuous advances in DNA seque...
This article discusses the use of entropy calculation on Field Programmable Gate Array (FPGA) for id...
Growing demand for computation power requires high speed interconnects between FPGA devices. While t...
Summarization: Stream join is a fundamental and computationally expensive data mining operation for ...
In recent years, the big data era has produced an increasing volume and complexity of data that requ...
We present a GPU implementation to compute both mu-tual information and its derivatives. Mutual info...
Summarization: It is a foregone conclusion that contemporary applications are bounded by massive com...
Entropy is one of the most fundamental notions for understanding complexity. Among all the methods t...
Recent literature has reported the use of entropy measurements for anomaly detection purposes in IP ...
Image Registration is a highly compute-intensive optimization procedure that determines the geometri...
Exploration tasks are essential to many emerging robotics applications, ranging from search and resc...
Network traffic monitoring uses empirical entropy to detect anomalous events such as various types o...
The performance and the efficiency of recent computing platforms have been deeply influenced by the ...
Data for the paper Brejza, Matthew, Maunder, Rob, Al-Hashimi, Bashir and Hanzo, Lajos (2016) A hig...
<p>Measurements of the propagation delays in the carry-chains of Spartan 6 Xilinx and Cyclone IV Int...
Summarization: The ever-increasing genomic dataset sizes, fueled by continuous advances in DNA seque...
This article discusses the use of entropy calculation on Field Programmable Gate Array (FPGA) for id...
Growing demand for computation power requires high speed interconnects between FPGA devices. While t...
Summarization: Stream join is a fundamental and computationally expensive data mining operation for ...
In recent years, the big data era has produced an increasing volume and complexity of data that requ...
We present a GPU implementation to compute both mu-tual information and its derivatives. Mutual info...