Summary of the Fourth International Workshop on Deep Learning for Testing and Testing for Deep Learning (DeepTest 2023)

Matteo Biagiola, Nicolás Cardozo, Donghwan Shin, Foutse Khomh, Andrea Stocco, Vincenzo Riccio
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引用次数: 0

Abstract

Deep Learning (DL) techniques help software developers thanks to their ability to learn from historical information which is useful in several program analysis and testing tasks (e.g., malware detection, fuzz testing, bug-finding, and type-checking). DL-based software systems are also increasingly adopted in safety-critical domains, such as autonomous driving, medical diagnosis, and aircraft collision avoidance systems. In particular, testing the correctness and reliability of DL-based systems is paramount, since a failure of such systems would cause a significant safety risk for the involved people and/or environment. The 4th International Workshop on Deep Learning for Testing and Testing for Deep Learning (DeepTest 2023) was co-located with the 45th International Conference on Software Engineering (ICSE), with the goal of targeting research at the intersection of software engineering and deep learning and devise novel approaches and tools to ensure the interpretability and dependability of software systems that depends on DL components.
第四届深度学习测试与深度学习测试国际研讨会(DeepTest 2023)综述
深度学习(DL)技术帮助软件开发人员,因为它们能够从历史信息中学习,这在几个程序分析和测试任务(例如,恶意软件检测、模糊测试、bug发现和类型检查)中很有用。基于dl的软件系统也越来越多地应用于安全关键领域,如自动驾驶、医疗诊断和飞机防撞系统。特别是,测试基于dl的系统的正确性和可靠性是至关重要的,因为此类系统的故障会给相关人员和/或环境带来重大的安全风险。第四届深度学习测试和深度学习测试国际研讨会(DeepTest 2023)与第45届国际软件工程会议(ICSE)在同一地点举行,其目标是针对软件工程和深度学习交叉的研究,并设计新的方法和工具,以确保依赖深度学习组件的软件系统的可解释性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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