The Brutal Truth About Enterprise AI Adoption
Manage episode 485485910 series 2833920
In this episode, Amir speaks with Ameya Brid, Global Director of Data & Analytics at Invista, about the maturation of GenAI conversations in the enterprise. They dive into the shift from hype to implementation, real-world challenges like data quality and change management, and how composable architecture is helping organizations adapt to rapid innovation cycles.
đ Key Takeaways
From Hype to Value: GenAI conversations are moving beyond experimentation into outcome-driven initiativesâbut most companies still struggle to define measurable KPIs.
Top Barriers to Scale: Poor data quality, fragmented systems, unclear use cases, and skills gaps continue to stall enterprise GenAI efforts.
Composable > Monolith: Modular, API-driven architectures provide agility to swap components as the tech rapidly evolves.
Change Management Rebooted: Adoption now means embedding insights directly into workflowsânot just âviewing reports.â
Upskilling is Social: Peer-driven learning and internal documentation are outperforming formal training in the GenAI era.
đ Timestamped Highlights
00:00 â Introduction to Ameya and Invistaâs work in manufacturing and chemicals
01:58 â How GenAI conversations have evolved over the past 18 months
03:52 â Marrying business outcomes with AI capabilities
06:04 â The five biggest barriers to GenAI implementation: use case clarity, data quality, skills gap, governance, and change management
11:53 â Managing constant tech evolution with composable architectures
15:02 â Data qualityâs outsized impact on GenAI success
17:46 â Why CFOs must now invest in data quality
20:41 â Change management: From âread the dashboardâ to âintegrate AI into your workflowâ
24:03 â Upskilling through shared learning and internal knowledge loops
đŹ Quote of the Episode
"The cost of bad data today is far higher than it was 10 or 20 years agoânot just in decision-making, but in the process itself." â Ameya Brid
465 episodes