A Case Study on AI Engineering Practices: Developing an Autonomous Stock Trading System

M. Grote, J. Bogner
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Abstract

Today, many systems use artificial intelligence (AI) to solve complex problems. While this often increases system effectiveness, developing a production-ready AI-based system is a difficult task. Thus, solid AI engineering practices are required to ensure the quality of the resulting system and to improve the development process. While several practices have already been proposed for the development of AI-based systems, detailed practical experiences of applying these practices are rare.In this paper, we aim to address this gap by collecting such experiences during a case study, namely the development of an autonomous stock trading system that uses machine learning functionality to invest in stocks. We selected 10 AI engineering practices from the literature and systematically applied them during development, with the goal to collect evidence about their applicability and effectiveness. Using structured field notes, we documented our experiences. Furthermore, we also used field notes to document challenges that occurred during the development, and the solutions we applied to overcome them. Afterwards, we analyzed the collected field notes, and evaluated how each practice improved the development. Lastly, we compared our evidence with existing literature.Most applied practices improved our system, albeit to varying extent, and we were able to overcome all major challenges. The qualitative results provide detailed accounts about 10 AI engineering practices, as well as challenges and solutions associated with such a project. Our experiences therefore enrich the emerging body of evidence in this field, which may be especially helpful for practitioner teams new to AI engineering.
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人工智能工程实践的案例研究:开发自主股票交易系统
今天,许多系统使用人工智能(AI)来解决复杂的问题。虽然这通常会提高系统的效率,但开发一个生产就绪的基于ai的系统是一项艰巨的任务。因此,需要可靠的人工智能工程实践来确保最终系统的质量并改进开发过程。虽然已经提出了一些用于开发基于人工智能的系统的实践,但应用这些实践的详细实践经验很少。在本文中,我们的目标是通过在案例研究中收集这些经验来解决这一差距,即开发一个使用机器学习功能来投资股票的自主股票交易系统。我们从文献中选择了10个人工智能工程实践,并在开发过程中系统地应用它们,目的是收集有关它们的适用性和有效性的证据。使用结构化的现场笔记,我们记录了我们的经验。此外,我们还使用现场记录来记录开发过程中出现的挑战,以及我们为克服这些挑战所采用的解决方案。之后,我们分析收集到的现场记录,并评估每个实践如何改善开发。最后,我们将我们的证据与现有文献进行了比较。大多数应用实践改进了我们的系统,尽管程度不同,并且我们能够克服所有主要的挑战。定性结果提供了关于10个人工智能工程实践的详细描述,以及与此类项目相关的挑战和解决方案。因此,我们的经验丰富了这一领域的新证据,这可能对新接触人工智能工程的从业者团队特别有帮助。
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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