📉 Why Generative AI Projects Fail and How to Succeed Podcast By  cover art

📉 Why Generative AI Projects Fail and How to Succeed

📉 Why Generative AI Projects Fail and How to Succeed

Listen for free

View show details

About this listen

Send us a text

Why Generative AI (GenAI) projects frequently fail, highlighting that the majority do not achieve their intended value or return on investment. It categorizes these failures into five core areas: strategic misalignment, where projects lack clear business objectives; data deficiencies, including poor quality or biased training data; technical hurdles in scaling prototypes to production; human factors such as distrust, fear of job displacement, and inadequate change management; and governance gaps, leading to ethical, legal, and compliance risks. The document concludes by proposing a five-phase framework for success, emphasizing the need for a holistic, proactive approach that addresses these challenges through careful planning, robust data management, agile development, human-centric adoption strategies, and continuous measurement. Ultimately, it suggests that embracing intelligent failure and learning from missteps are crucial for mastering this transformative technology.

No reviews yet