Daily AI deployments are a rarity, with just 7% of organizations achieving this benchmark, according to the CNCF's 2025 Annual Survey. For traditional software, this pace would signal a crisis, prompting urgent investigations into bottlenecks and automation. Yet, for AI, this sluggishness is often accepted.
While AI models are complex and data science workflows differ from software engineering, the data suggests a deeper problem. A combined 93% of organizations deploy AI models only occasionally or somewhere in between. This points to a significant gap in delivery infrastructure, where practices enabling rapid application delivery, CI/CD automation, GitOps, and observability, are largely absent for AI.
