
Reducing the integration tax of enterprise AI
The ability to share AI assets without creating duplicate copies could help reduce integration complexity, improve governance, and limit the operational overhead associated with operationalizing AI systems across environments for CIOs, said Ashish Chaturvedi, leader of executive research at HFS Research.
“Every organization building AI, such as multi-agentic systems, is hitting the same wall, i.e., the model, the skill, and the consumer reside on three different platforms. The integration tax is enormous, and it grows exponentially with every new partner, customer, or internal team,” Chaturvedi said.
Echoing Chaturvedi, The Futurum Group’s lead of the CIO practice, Dion Hinchcliffe, pointed out that the reduction in operational overhead could help CIOs cut down on the hidden costs of integration around AI deployments: “Today, hidden costs include more than just model development. It is the endless packaging, translation, sync, and governance effort required to operationalize AI assets across organizational boundaries.”
From data sharing to AI asset sharing
That cost reduction is becoming even more important because enterprises are beginning to treat AI assets as business assets that need to be shared, said Stephanie Walter, practice lead of the AI stack at HyperFRAME Research.

