Towards AI-centric Requirements Engineering for Industrial Systems
Engineering large-scale industrial systems mandate an effective Requirements Engineering (RE) process. Such systems necessitate RE process optimization to align with standards, infrastructure specifications, and customer expectations. Recently, artificial intelligence (AI) based solutions have been proposed, aiming to enhance the efficiency of requirements management within the RE process. Despite their advanced capabilities, generic AI solutions exhibit limited adaptability within real-world contexts, mainly because of the complexity and specificity inherent to industrial domains. This limitation notably leads to the continued prevalence of manual practices that not only cause the RE process to be heavily dependent on practitioners’ experience, making it prone to errors, but also often contributes to project delays and inefficient resource utilization. To address these challenges, this Ph.D. dissertation focuses on two primary directions: i) conduct a comprehensive focus group study with a large-scale industry to determine the requirements evolution process and their inherent challenges and ii) propose AI solutions tailored for industrial case studies to streamline their RE process and optimize the development of large-scale systems. We anticipate that our research will significantly contribute to the RE domain by providing empirically validated insights in the industrial context.
Tue 16 AprDisplayed time zone: Lisbon change
16:00 - 17:30 | Paper Presentations IIDoctoral Symposium at Fernando Pessoa Chair(s): Marsha Chechik University of Toronto, Sonia Haiduc Florida State University | ||
16:00 25mTalk | Towards AI-centric Requirements Engineering for Industrial Systems Doctoral Symposium Sarmad Bashir RISE Research Institutes of Sweden Pre-print | ||
16:25 25mTalk | Understandable Test Generation Through Capture/Replay and LLMs Doctoral Symposium Amirhossein Deljouyi Delft University of Technology | ||
16:50 25mTalk | Towards Automatic Inference of Behavioral Component Models for ROS-Based Robotics Systems Doctoral Symposium Tobias Dürschmid Carnegie Mellon University, USA | ||
17:15 15mDay closing | Reflections and Closing Doctoral Symposium |