CYAIMar 21

Artificial Intelligence in Experimental Approaches: Growth Hacking, Lean Startup, Design Thinking, and Agile

arXiv:2603.2068839.0h-index: 2
Predicted impact top 64% in CY · last 90 daysOriginality Synthesis-oriented
AI Analysis

It addresses how organizations can integrate AI into experimental approaches to improve performance, but it is incremental as it synthesizes existing literature without new empirical results.

This study examined how organizations implement AI in experimental methodologies like growth hacking, lean startup, design thinking, and agile to enhance efficiency and effectiveness, finding that AI plays a pivotal role by offering tools for data analysis, real-time feedback, automation, and process optimization, with real-world cases showing improved performance across industries.

Organizations increasingly adopt AI technologies to accelerate their performance and capacity to adapt to market dynamics. This study examines how organizations implement AI in experimental methodologies such as growth hacking, lean startup, design thinking, and agile methodology to enhance efficiency and effectiveness. We performed a systematic literature review following the PRISMA 2020 framework, analyzing 37 articles from Web of Science (WOS) and Scopus databases published between 2018 and 2024 to assess AI integration with experimental approaches. Our findings indicate that AI plays a pivotal role in enhancing these methodologies by offering advanced tools for data analysis, real-time feedback, automation, and process optimization. For instance, AI-driven analytics improves decision-making in growth hacking, streamlines iterative cycles in lean startups, enhances creativity in design thinking, and optimizes task prioritization in agile methodology. Furthermore, we identified several real-world cases that successfully utilized AI in experimental strategies and improved their performance across various industries. However, despite the clear advantages of AI integration, organizations face barriers such as skill gaps, ethical concerns, and data governance issues. Addressing these challenges requires a strategic approach to AI adoption, including workforce training, strict data management, and following ethical standards.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes