Title
On the design of scalable and reusable accelerators for big data applications.
Abstract
Accelerators are becoming key elements of computing platforms for both data centers and mobile devices as they deliver energy-efficient high performance for key computational kernels. However, the design and integration of such components is complex, especially for Big Data applications where they have very large workloads to elaborate. Properly customizing the accelerators' private local memories (PLMs) is of critical importance. To analyze this problem we design an accelerator for Collaborative Filtering by applying a system-level design methodology that allows us to synthesize many alternative micro-architectures as we vary the PLM sizes. We then evaluate the resulting accelerators in terms of resource requirements for both embedded architectures and data centers as we vary the size and density of the workloads.
Year
DOI
Venue
2016
10.1145/2903150.2906141
Conf. Computing Frontiers
Field
DocType
Citations 
Collaborative filtering,Computer science,Parallel computing,Real-time computing,Design methods,Mobile device,Local memories,Big data,Scalability
Conference
3
PageRank 
References 
Authors
0.38
21
5
Name
Order
Citations
PageRank
Christian Pilato132932.19
Qirui Xu230.38
Paolo Mantovani310610.58
Giuseppe Di Guglielmo410715.57
Luca P. Carloni51713120.17