Building a High-performance Fine-grained Deduplication Framework for Backup Storage with High Deduplication Ratio

Authors: 

Xiangyu Zou and Wen Xia, Harbin Institute of Technology, Shenzhen; Philip Shilane, Dell Technologies; Haijun Zhang and Xuan Wang, Harbin Institute of Technology, Shenzhen

Abstract: 

Fine-grained deduplication, which first removes identical chunks and then eliminates redundancies between similar but non-identical chunks (i.e., delta compression), could exploit workloads' compressibility to achieve a very high deduplication ratio but suffers from poor backup/restore performance. This makes it not as popular as chunk-level deduplication thus far. This is because allowing workloads to share more references among similar chunks further reduces spatial/temporal locality, causes more I/O overhead, and leads to worse backup/restore performance.

In this paper, we address issues for different forms of poor locality with several techniques, and propose MeGA, which achieves backup and restore speed close to chunk-level deduplication while preserving fine-grained deduplication's significant deduplication ratio advantage. Specifically, MeGA applies (1) a backup-workflow-oriented delta selector to address poor locality when reading base chunks, and (2) a delta-friendly data layout and "Always-Forward-Reference" traversing in the restore workflow to deal with the poor spatial/temporal locality of deduplicated data.

Evaluations on four datasets show that MeGA achieves a better performance than other fine-grained deduplication approaches. In particular, compared with the traditional greedy approach, MeGA achieves a 4.47–34.45 times higher backup performance and a 30–105 times higher restore performance while maintaining a very high deduplication ratio.

Open Access Media

USENIX is committed to Open Access to the research presented at our events. Papers and proceedings are freely available to everyone once the event begins. Any video, audio, and/or slides that are posted after the event are also free and open to everyone. Support USENIX and our commitment to Open Access.

BibTeX
@inproceedings {280714,
author = {Xiangyu Zou and Wen Xia and Philip Shilane and Haijun Zhang and Xuan Wang},
title = {Building a High-performance Fine-grained Deduplication Framework for Backup Storage with High Deduplication Ratio},
booktitle = {2022 USENIX Annual Technical Conference (USENIX ATC 22)},
year = {2022},
isbn = {978-1-939133-29-26},
address = {Carlsbad, CA},
pages = {19--36},
url = {https://www.usenix.org/conference/atc22/presentation/zou},
publisher = {USENIX Association},
month = jul
}

Presentation Video