DocumentCode :
668111
Title :
Lit: A high performance massive data computing framework based on CPU/GPU cluster
Author :
Yanlong Zhai ; Mbarushimana, Emmanuel ; Wei Li ; Jing Zhang ; Ying Guo
Author_Institution :
Beijing Eng. Res. Center of Massive Language Inf. Process. & Cloud Comput. Applic., Beijing Inst. of Technol., Beijing, China
fYear :
2013
fDate :
23-27 Sept. 2013
Firstpage :
1
Lastpage :
8
Abstract :
Big data processing is receiving significant amount of interest as an important technology to reveal the information behind the data, such as trends, characteristics, etc. MapReduce is considered as the most efficient distributed parallel data processing framework. However, some high-end applications, especially some scientific analyses have both data-intensive and computation-intensive features. Current big data processing techniques like Hadoop are not designed for computation-intensive applications, thus have insufficient computation power. In this paper, we presented Lit, a high performance massive data computing framework based on CPU/GPU cluster. Lit integrated GPU with Hadoop to improve the computational power of each node in the cluster. Since the architecture and programming model of GPU is different from CPU, Lit provided an annotation based approach to automatically generate CUDA codes from Hadoop codes. Lit hided the complexity of programming on CPU/GPU cluster by providing extended compiler and optimizer. To utilize the simplified programming, scalability and fault tolerance benefits of Hadoop and combine them with the high performance computation power of GPU, Lit extended the Hadoop by applying a GPUClassloader to detect the GPU, generate and compile CUDA codes, and invoke the shared library. Our experimental results show that Lit can achieve an average speedup of 1x to 3x on three typical applications over Hadoop.
Keywords :
Big Data; fault tolerant computing; graphics processing units; parallel architectures; program compilers; Big Data processing; CPU cluster; CUDA code compiling; CUDA code generation; GPU cluster; GPU detection; GPUClassloader; Hadoop codes; Lit; MapReduce; annotation based approach; computation-intensive feature; data-intensive feature; distributed parallel data processing framework; extended compiler; extended optimizer; fault tolerance; high performance computation power; high performance massive data computing framework; programming model; Computational modeling; Data models; Graphics processing units; Handheld computers; Load modeling; Semantics;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Cluster Computing (CLUSTER), 2013 IEEE International Conference on
Conference_Location :
Indianapolis, IN
Type :
conf
DOI :
10.1109/CLUSTER.2013.6702614
Filename :
6702614
Link To Document :
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