Most AI Work Looks Good Until You Try To Use It
Many companies struggle to achieve tangible business value from AI initiatives, with a vast majority of pilot projects failing to deliver measurable P&L impact. This failure often stems from a lack of focus on execution and foundational elements like data quality and process clarity, rather than the AI models themselves. Organizations that succeed in AI adoption prioritize redesigning workflows and standardizing data before selecting technology, ensuring that AI can be effectively integrated into live operations. AI
IMPACT Highlights that successful AI integration hinges on process clarity and data readiness, not just advanced models.