Big Data Analytic Toolkit: A General-Purpose, Modular, and Heterogeneous Acceleration Toolkit for Data Analytical Engines
-
Published:2023-08
Issue:12
Volume:16
Page:3702-3714
-
ISSN:2150-8097
-
Container-title:Proceedings of the VLDB Endowment
-
language:en
-
Short-container-title:Proc. VLDB Endow.
Author:
Li Jiang1,
Xie Qi1,
Ma Yan1,
Ma Jian1,
Ji Kunshang1,
Zhang Yizhong1,
Zhang Chaojun1,
Chen Yixiu1,
Wu Gangsheng1,
Zhang Jie1,
Yang Kaidi1,
He Xinyi1,
Shen Qiuyang1,
Tao Yanting1,
Zhao Haiwei1,
Jiao Penghui1,
Zhu Chengfei1,
Qian David1,
Xu Cheng1
Abstract
Query compilation and hardware acceleration are important technologies for optimizing the performance of data processing engines. There have been many works on the exploration and adoption of these techniques in recent years. However, a number of engines still refrain from adopting them because of some reasons. One of the common reasons claims that the intricacies of these techniques make engines too complex to maintain. Another major barrier is the lack of widely accepted architectures and libraries of these techniques, which leads to the adoption often starting from scratch with lots of effort. In this paper, we propose Intel Big Data Analytic Toolkit (BDTK), an open-source C++ acceleration toolkit library for analytical data processing engines. BDTK provides lightweight, easy-to-connect, reusable components with interoperable interfaces to support query compilation and hardware accelerators. The query compilation in BDTK leverages vectorized execution and data-centric code generation to achieve high performance. BDTK could be integrated into different engines and helps them to adapt query compilation and hardware accelerators to optimize performance bottlenecks with less engineering effort.
Publisher
Association for Computing Machinery (ACM)
Subject
General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development
Reference33 articles.
1. Amazon Redshift Re-invented
2. System R
3. Photon: A Fast Query Engine for Lakehouse Systems
4. BlazingDB. 2023. Home - SQL-Bblaz Ing. https://blazingsql.com/. (Accessed on 02/23/2023). BlazingDB. 2023. Home - SQL-Bblaz Ing. https://blazingsql.com/. (Accessed on 02/23/2023).
5. MonetDB/X100: Hyper-Pipelining Query Execution;Boncz Peter A;Cidr,2005