通用软件和机器学习初创公司的软件工程实践分析

Bishal Lakha, Kalyan Bhetwal, Nasir U. Eisty
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引用次数: 1

摘要

背景:除了初创软件公司在应用适当的软件工程实践时面临的固有挑战之外,机器学习技术的不确定性使得机器学习(ML)初创公司更加困难。目标:因此,我们研究的目标是了解机器学习初创公司所遵循的软件工程实践的全貌,并确定额外的需求。方法:为了达到我们的目的,我们对近21年来发表的37篇论文进行了系统的文献回顾研究。我们选择了关于一般软件创业和机器学习创业的论文。我们收集数据来理解软件开发生命周期的五个阶段中的软件工程(SE)实践:需求工程、设计、开发、质量保证和部署。结果:我们发现在机器学习初创公司和一般软件初创公司的软件工程实践中存在一些有趣的差异。其中数据管理和模型学习阶段最为突出。结论:虽然机器学习创业公司面临着许多与一般软件创业公司相似的挑战,但使用随机机器学习模型的额外困难需要使用不同的策略来使用软件工程实践来生产高质量的产品。
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Analysis of Software Engineering Practices in General Software and Machine Learning Startups
Context: On top of the inherent challenges startup software companies face applying proper software engineering practices, the non-deterministic nature of machine learning techniques makes it even more difficult for machine learning (ML) startups. Objective: Therefore, the objective of our study is to understand the whole picture of software engineering practices followed by ML startups and identify additional needs. Method: To achieve our goal, we conducted a systematic literature review study on 37 papers published in the last 21 years. We selected papers on both general software startups and ML startups. We collected data to understand software engineering (SE) practices in five phases of the software development life-cycle: requirement engineering, design, development, quality assurance, and deployment. Results: We find some interesting differences in software engineering practices in ML startups and general software startups. The data management and model learning phases are the most prominent among them. Conclusion: While ML startups face many similar challenges to general software startups, the additional difficulties of using stochastic ML models require different strategies in using software engineering practices to produce high-quality products.
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