Automated Server Testing: an Industrial Experience Report

Chao Peng, Yujun Gao, Ping Yang
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Abstract

A server API bug could have a huge impact on the operation of other servers and clients relying on that API, resulting in service downtime and financial losses. A common practice of server API testing inside enterprises is writing test inputs and assertions manually, and the test effectiveness depends largely on testers’ carefulness, expertise and domain knowledge. Writing test cases for complicated business scenarios with multiple and ordered API calls is also a heavy task that requires a lot of human effort. In this paper, we present the design and deployment of SIT, a fully automated server interface reliability testing platform at ByteDance that provides capabilities including (1) traffic data generation based on combinatorial testing and fuzzing, (2) scenario testing for complicated business logics and (3) automated test execution with fault localisation in a controlled environment that does not affect online services. SIT has been integrated into the source control system and is triggered when new code change is submitted or configured as scheduled tasks. During the year of 2021, SIT blocked 434 valid issues before they were introduced into the production system.
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自动化服务器测试:工业经验报告
服务器API错误可能会对依赖该API的其他服务器和客户端的操作产生巨大影响,从而导致服务停机和经济损失。企业内部服务器API测试的一个常见做法是手动编写测试输入和断言,测试的有效性在很大程度上取决于测试人员的细心程度、专业知识和领域知识。为具有多个有序API调用的复杂业务场景编写测试用例也是一项繁重的任务,需要大量人力。在本文中,我们介绍了SIT的设计和部署,SIT是ByteDance的一个全自动服务器接口可靠性测试平台,它提供的功能包括:(1)基于组合测试和模糊测试的流量数据生成,(2)复杂业务逻辑的场景测试,以及(3)在不影响在线服务的受控环境中进行故障定位的自动化测试执行。SIT已经集成到源代码控制系统中,并且在提交新的代码更改或配置为计划任务时触发。在2021年,SIT在引入生产系统之前阻止了434个有效问题。
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