Development in times of hype: How freelancers explore Generative AI?
January 11, 2024 ยท Declared Dead ยท ๐ International Conference on Software Engineering
"No code URL or promise found in abstract"
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Authors
Mateusz Dolata, Norbert Lange, Gerhard Schwabe
arXiv ID
2401.05790
Category
cs.SE: Software Engineering
Citations
19
Venue
International Conference on Software Engineering
Last Checked
3 months ago
Abstract
The rise of generative AI has led many companies to hire freelancers to harness its potential. However, this technology presents unique challenges to developers who have not previously engaged with it. Freelancers may find these challenges daunting due to the absence of organizational support and their reliance on positive client feedback. In a study involving 52 freelance developers, we identified multiple challenges associated with developing solutions based on generative AI. Freelancers often struggle with aspects they perceive as unique to generative AI such as unpredictability of its output, the occurrence of hallucinations, and the inconsistent effort required due to trial-and-error prompting cycles. Further, the limitations of specific frameworks, such as token limits and long response times, add to the complexity. Hype-related issues, such as inflated client expectations and a rapidly evolving technological ecosystem, further exacerbate the difficulties. To address these issues, we propose Software Engineering for Generative AI (SE4GenAI) and Hype-Induced Software Engineering (HypeSE) as areas where the software engineering community can provide effective guidance. This support is essential for freelancers working with generative AI and other emerging technologies.
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