Back to Search Start Over

Lifetime-Based Memory Management for Distributed Data Processing Systems

Authors :
Yuanzhen Geng
Hai Jin
Xuanhua Shi
Cheng Pei
Ligang He
Yongluan Zhou
Lu Lu
Xiong Zhang
Chaudhuri, Surajit
Haritsa, Jayant
Source :
Lu, L, Shi, X, Zhou, Y, Zhang, X, Jin, H, Pei, C, He, L & Geng, Y 2016, Lifetime-Based Memory Management for Distributed Data Processing Systems . in S Chaudhuri & J Haritsa (eds), Proceedings of the VLDB Endowment . vol. 9, Proceedings of the VLDB Endowment, no. 12, vol. 9, pp. 936-947, 42nd International Conference On Very Large Data Bases, New Delhi, India, 05/09/2016 . https://doi.org/10.14778/2994509.2994513
Publication Year :
2016

Abstract

In-memory caching of intermediate data and eager combining of data in shuffle buffers have been shown to be very effective in minimizing the re-computation and I/O cost in distributed data processing systems like Spark and Flink. However, it has also been widely reported that these techniques would create a large amount of long-living data objects in the heap, which may quickly saturate the garbage collector, especially when handling a large dataset, and hence would limit the scalability of the system. To eliminate this problem, we propose a lifetime-based memory management framework, which, by automatically analyzing the user-defined functions and data types, obtains the expected lifetime of the data objects, and then allocates and releases memory space accordingly to minimize the garbage collection overhead. In particular, we present Deca, a concrete implementation of our proposal on top of Spark, which transparently decomposes and groups objects with similar lifetimes into byte arrays and releases their space altogether when their lifetimes come to an end. An extensive experimental study using both synthetic and real datasets shows that, in comparing to Spark, Deca is able to 1) reduce the garbage collection time by up to 99.9%, 2) to achieve up to 22.7x speed up in terms of execution time in cases without data spilling and 41.6x speedup in cases with data spilling, and 3) to consume up to 46.6% less memory.

Details

Language :
English
Database :
OpenAIRE
Journal :
Lu, L, Shi, X, Zhou, Y, Zhang, X, Jin, H, Pei, C, He, L & Geng, Y 2016, Lifetime-Based Memory Management for Distributed Data Processing Systems . in S Chaudhuri & J Haritsa (eds), Proceedings of the VLDB Endowment . vol. 9, Proceedings of the VLDB Endowment, no. 12, vol. 9, pp. 936-947, 42nd International Conference On Very Large Data Bases, New Delhi, India, 05/09/2016 . https://doi.org/10.14778/2994509.2994513
Accession number :
edsair.doi.dedup.....976b7a620c6b97fb3e93817dcc204462
Full Text :
https://doi.org/10.14778/2994509.2994513