Spark is one of the most widely used frameworks for data analytics that offers fast development of applications like machine learning and graph computations in distributed systems. In this paper, we present SPynq: A framework for the efficient utilization of hardware accelerators over the Spark framework on heterogeneous MPSoC FPGAs, such as Zynq. Spark has been mapped to the Pynq platform and the proposed framework allows the seamless utilization of the programmable logic for the hardware acceleration of computational intensive Spark kernels. We have also developed the required libraries in Spark that hide the accelerator’s details to minimize the design effort to utilize the accelerators. A cluster of 4 nodes (workers) based on the all-pr...
In the era of Big Data, machine learning has taken on a whole new role. With the amount of data pres...
workloads to run on hardware accelerators allowing for ad-vantages that come from the many-core arch...
Large-scale particle physics experiments face challenging demands for high- throughput computing res...
In this paper, we present a framework for the seamless utilization of hardware accelerators in heter...
Spark is one of the most widely used frameworks for data analytics. Spark allows fast development fo...
Emerging cloud applications like machine learning and data analytics need to process huge amount of ...
Abstract — A recent trend for big data analytics is to pro-vide heterogeneous architectures to allow...
2019 IEEE. Artificial intelligence based on deep learning has gained popularity in a broad range of ...
In the context of today’s artificial intelligence, the volume of data is exploding. Although scaling...
With the rapid development of the Internet of things (IoT), networks, software, and computing platfo...
The digital era's requirements pose many challenges related to deployment, implementation and effici...
The design of new streaming systems is becoming a major area of research to deploy services targeted...
Deep Learning algorithms are gaining momentum as main components in a large number of fields, from c...
In the past few years, using Machine and Deep Learning techniques has become more and more viable, t...
\ua9 2014 IEEE. The increasing demands of big data applications have led researchers and practitione...
In the era of Big Data, machine learning has taken on a whole new role. With the amount of data pres...
workloads to run on hardware accelerators allowing for ad-vantages that come from the many-core arch...
Large-scale particle physics experiments face challenging demands for high- throughput computing res...
In this paper, we present a framework for the seamless utilization of hardware accelerators in heter...
Spark is one of the most widely used frameworks for data analytics. Spark allows fast development fo...
Emerging cloud applications like machine learning and data analytics need to process huge amount of ...
Abstract — A recent trend for big data analytics is to pro-vide heterogeneous architectures to allow...
2019 IEEE. Artificial intelligence based on deep learning has gained popularity in a broad range of ...
In the context of today’s artificial intelligence, the volume of data is exploding. Although scaling...
With the rapid development of the Internet of things (IoT), networks, software, and computing platfo...
The digital era's requirements pose many challenges related to deployment, implementation and effici...
The design of new streaming systems is becoming a major area of research to deploy services targeted...
Deep Learning algorithms are gaining momentum as main components in a large number of fields, from c...
In the past few years, using Machine and Deep Learning techniques has become more and more viable, t...
\ua9 2014 IEEE. The increasing demands of big data applications have led researchers and practitione...
In the era of Big Data, machine learning has taken on a whole new role. With the amount of data pres...
workloads to run on hardware accelerators allowing for ad-vantages that come from the many-core arch...
Large-scale particle physics experiments face challenging demands for high- throughput computing res...