Recommendations for Efficient and Responsible LLM Adoption within Industrial Software Development
Krishna Ronanki, Beatriz Cabrero-Daniel, Tomas Herda, Stefan Sitkovich, Jennifer Horkoff, Christian Berger

TL;DR
This paper provides seven actionable recommendations for the efficient and responsible adoption of large language models in industrial software development, based on multi-case studies and practitioner surveys.
Contribution
It introduces a set of practical guidelines for integrating LLMs into industrial SE, addressing stakeholder satisfaction, workflow impact, oversight, and required skills.
Findings
High agreement among practitioners on the relevance of recommendations
Recommendations focus on user preferences and stakeholder satisfaction
Future work includes aligning recommendations with EU AI Act principles
Abstract
Context: Large language models (LLMs) are observed to have a significant positive impact on various software engineering (SE) activities. With improved accessibility, the adoption of powerful LLMs in industry has surged recently. However, there is a lack of actionable best practices for the efficient and responsible adoption of LLMs within industrial software settings. Objectives: We developed seven actionable recommendations to address this research gap. Methods: We conducted a multi-case study with three organisations that use LLMs within their SE activities and synthesised seven recommendations through qualitative thematic analysis. We conducted a complementary online survey with software practitioners from various industries to evaluate the perceived relevance of our recommendations. Results: Our results and recommendations focus on (i) users' preference to use LLMs as AI…
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