March 17, 2023
Teaching

Identifying viable opportunities for innovation requires structured and creative workflows that enable stakeholders to explore new solutions and business models. Traditional methods for opportunity identification (OI) often rely on brainstorming sessions, expert-driven assessments, and industry best practices. While these methods have proven valuable, they can be limited by cognitive biases, siloed thinking, and a lack of real-time data integration. Approaches such as design thinking, lateral thinking, and open innovation have been widely adopted to structure ideation processes, enabling teams to systematically develop and refine new concepts.
AI-driven tools have the potential to address these limitations by augmenting traditional creativity workflows with computational intelligence. Machine learning, natural language processing, and data analytics can help identify emerging trends, generate novel idea prompts, and enhance collaborative ideation in real-time. By integrating AI into OI processes, organizations can benefit from more structured, data-driven, and scalable approaches to innovation.
This master’s thesis aims to explore and analyze OI creativity workflows, assessing how structured methods such as design thinking and lateral thinking contribute to innovation. The study will examine AI’s role in supporting these workflows and investigate how AI-driven ideation techniques can enhance creativity. By gaining a deeper understanding of existing creativity workflows and their challenges, the research will lay the foundation for developing an AI-based assistant designed to support OI processes. While the AI assistant will be designed for general use, it will be tested in the specific domain of a circular economy, to evaluate its applicability and effectiveness.