Early Formalization of AI-tools Usage in Software Engineering in Europe: Study of 2023

Denis S. Pashchenko
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Abstract

This scientific article presents the results of a study focused on the current practices and future prospects of AI-tools usage, specifically large language models (LLMs), in software development (SD) processes within European IT companies. The Pan-European study covers 35 SD teams from all regions of Europe and consists of three sections: the first section explores the current adoption of AI-tools in software production, the second section addresses common challenges in LLMs implementation, and the third section provides a forecast of the tech future in AI-tools development for SD. The study reveals that AI-tools, particularly LLMs, have gained popularity and approbation in European IT companies for tasks related to software design and construction, coding, and software documentation. However, their usage for business and system analysis remains limited. Nevertheless, challenges such as resource constraints and organizational resistance are evident. The article also highlights the potential of AI-tools in the software development process, such as automating routine operations, speeding up work processes, and enhancing software product excellence. Moreover, the research examines the transformation of IT paradigms driven by AI-tools, leading to changes in the skill sets of software developers. Although the impact of LLMs on the software development industry is perceived as modest, experts anticipate significant changes in the next 10 years, including AI-tools integration into advanced IDEs, software project management systems, and product management tools. Ethical concerns about data ownership, information security and legal aspects of AI-tools usage are also discussed, with experts emphasizing the need for legal formalization and regulation in the AI domain. Overall, the study highlights the growing importance and potential of AI-tools in software development, as well as the need for careful consideration of challenges and ethical implications to fully leverage their benefits.
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欧洲软件工程中人工智能工具使用的早期正规化:2023 年研究
这篇科学文章展示了一项研究的结果,该研究关注的是欧洲IT公司软件开发(SD)过程中人工智能工具使用的当前实践和未来前景,特别是大型语言模型(llm)。泛欧研究涵盖了来自欧洲所有地区的35个SD团队,由三个部分组成:第一部分探讨了软件生产中人工智能工具的当前采用情况,第二部分解决了法学硕士实施中的常见挑战,第三部分提供了SD人工智能工具开发的技术未来预测。该研究表明,人工智能工具,特别是法学硕士,在欧洲IT公司中获得了与软件设计和构建、编码和软件文档相关的任务的普及和认可。然而,它们在业务和系统分析中的使用仍然有限。然而,诸如资源限制和组织阻力等挑战是显而易见的。本文还强调了人工智能工具在软件开发过程中的潜力,例如自动化日常操作、加快工作流程和增强软件产品的卓越性。此外,该研究还考察了由人工智能工具驱动的IT范式的转变,从而导致软件开发人员技能组合的变化。尽管法学硕士对软件开发行业的影响被认为是有限的,但专家们预计未来10年将发生重大变化,包括将人工智能工具集成到高级ide、软件项目管理系统和产品管理工具中。还讨论了关于数据所有权、信息安全和人工智能工具使用的法律方面的伦理问题,专家们强调了人工智能领域法律形式化和监管的必要性。总体而言,该研究强调了人工智能工具在软件开发中日益增长的重要性和潜力,以及仔细考虑挑战和伦理影响以充分利用其优势的必要性。
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