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AIBench: An Industry Standard Internet Service AI Benchmark Suite

13 August 2019
Wanling Gao
Fei Tang
Lei Wang
Jianfeng Zhan
Chunxin Lan
Chunjie Luo
Yunyou Huang
Chen Zheng
Jiahui Dai
Zheng Cao
Daoyi Zheng
Haoning Tang
Kunlin Zhan
Biao Wang
Defei Kong
Tong Wu
Minghe Yu
Chongkang Tan
Huan Li
Xinhui Tian
Yatao Li
Junchao Shao
Zhenyu Wang
Xiaoyu Wang
Hainan Ye
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Abstract

Today's Internet Services are undergoing fundamental changes and shifting to an intelligent computing era where AI is widely employed to augment services. In this context, many innovative AI algorithms, systems, and architectures are proposed, and thus the importance of benchmarking and evaluating them rises. However, modern Internet services adopt a microservice-based architecture and consist of various modules. The diversity of these modules and complexity of execution paths, the massive scale and complex hierarchy of datacenter infrastructure, the confidential issues of data sets and workloads pose great challenges to benchmarking. In this paper, we present the first industry-standard Internet service AI benchmark suite---AIBench with seventeen industry partners, including several top Internet service providers. AIBench provides a highly extensible, configurable, and flexible benchmark framework that contains loosely coupled modules. We identify sixteen prominent AI problem domains like learning to rank, each of which forms an AI component benchmark, from three most important Internet service domains: search engine, social network, and e-commerce, which is by far the most comprehensive AI benchmarking effort. On the basis of the AIBench framework, abstracting the real-world data sets and workloads from one of the top e-commerce providers, we design and implement the first end-to-end Internet service AI benchmark, which contains the primary modules in the critical paths of an industry scale application and is scalable to deploy on different cluster scales. The specifications, source code, and performance numbers are publicly available from the benchmark council web site http://www.benchcouncil.org/AIBench/index.html.

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