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Legal Aspects for Software Developers Interested in Generative AI Applications

2024-04-25 14:17:34
Steffen Herbold, Brian Valerius, Anamaria Mojica-Hanke, Isabella Lex, Joel Mittel

Abstract

Recent successes in Generative Artificial Intelligence (GenAI) have led to new technologies capable of generating high-quality code, natural language, and images. The next step is to integrate GenAI technology into products, a task typically conducted by software developers. Such product development always comes with a certain risk of liability. Within this article, we want to shed light on the current state of two such risks: data protection and copyright. Both aspects are crucial for GenAI. This technology deals with data for both model training and generated output. We summarize key aspects regarding our current knowledge that every software developer involved in product development using GenAI should be aware of to avoid critical mistakes that may expose them to liability claims.

Abstract (translated)

近年来在生成人工智能(GenAI)方面的成功已经催生出能够生成高质量代码、自然语言和图像的新技术。接下来的任务是将GenAI技术集成到产品中,通常由软件开发者来完成。这种产品开发总是伴随着一定的责任风险。在这篇文章中,我们想阐明目前与GenAI相关的两个风险:数据保护和版权。这两个方面对GenAI至关重要。这项技术处理的是数据,用于模型训练和生成输出。我们总结了所有使用GenAI进行产品开发的软件开发者应该了解的关键方面,以便避免可能使自己面临责任诉讼的严重错误。

URL

https://arxiv.org/abs/2404.16630

PDF

https://arxiv.org/pdf/2404.16630.pdf


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