Going beyond pilots with composable and sovereign AI
摘要
当前企业AI应用面临关键转折点。尽管生成式AI投资巨大,但仅有5%的试点项目能产生可衡量的商业价值,近半数企业在AI项目投产前便已放弃。瓶颈并非模型本身,而是受限于数据可访问性不足、集成僵化及部署路径脆弱等基础设施问题,导致AI难以超越早期LLM和RAG实验实现规模化。为此,企业正转向可组合与主权AI架构,以降低成本、保障数据所有权并适应AI快速演变。IDC
Today marks an inflection point for enterprise AI adoption. Despite billions invested in generative AI, only 5% of integrated pilots deliver measurable business value and nearly one in two companies abandons AI initiatives before reaching production.
DOWNLOAD THE ARTICLEThe bottleneck is not the models themselves. What’s holding enterprises back is the surrounding infrastructure: Limited data accessibility, rigid integration, and fragile deployment pathways prevent AI initiatives from scaling beyond early LLM and RAG experiments. In response, enterprises are moving toward composable and sovereign AI architectures that lower costs, preserve data ownership, and adapt to the rapid, unpredictable evolution of AI—a shift IDC expects 75% of global businesses to make by 2027.
The concept to production reality
AI pilots almost always work, and that’s the problem. Proofs of concept (PoCs) are meant to validate feasibility, surface use cases, and build confidence for larger investments. But they thrive in conditions that rarely resemble the realities of production.
Source: Compiled by MIT Technology Review Insights with data from Informatica, CDO Insights 2025 report, 2026“PoCs live inside a safe bubble” observes Cristopher Kuehl, chief data officer at Continent 8 Technologies. Data is carefully curated, integrations are few, and the work is often handled by the most senior and motivated teams.
The result, according to Gerry Murray, research director at IDC, is not so much pilot failure as structural mis-design: Many AI initiatives are effectively “set up for failure from the start.”
转载信息
评论 (0)
暂无评论,来留下第一条评论吧