Summary:
1. Global spending on AI is expected to double by 2028, but many organizations struggle to turn their AI ambitions into operational success.
2. The main barriers to AI scalability are structural inefficiencies within enterprise operations, not technical limitations.
3. Implementing comprehensive AI governance can lead to significant improvements in operational efficiency and business outcomes.
Article:
Enterprise artificial intelligence (AI) investment is on the rise, with IDC forecasting a doubling of global spending on AI and Generative AI (GenAI) to reach $631 billion by 2028. However, despite the substantial budget allocations and enthusiasm from boardrooms, many organizations are facing challenges in translating their AI aspirations into operational success.
A recent ModelOp report highlighted the disconnect between AI aspirations and execution. While over 80% of enterprises have more than 51 generative AI projects in the proposal phase, only 18% have successfully deployed over 20 models into production. This execution gap is one of the most significant obstacles facing enterprise AI, with generative AI projects taking 6 to 18 months to go live, if they reach production at all.
The root cause of AI scalability challenges lies in structural inefficiencies within enterprise operations, rather than technical limitations. Fragmented systems, reliance on manual processes, lack of standardization, and a lack of enterprise-level oversight are identified as key barriers to adopting governance platforms. These inefficiencies create a “time-to-market quagmire” that hampers AI initiatives.
However, a shift is underway in how enterprises view AI governance. Rather than seeing it as a compliance burden, forward-thinking organizations are recognizing governance as a crucial enabler of scale and speed. Leadership alignment, strategic investments in AI governance software, and the allocation of resources for AI Portfolio Intelligence are indicative of this shift.
High-performing organizations that successfully bridge the execution gap share common characteristics in their approach to AI implementation. They prioritize standardized processes, maintain centralized documentation and inventory, embed automated governance checkpoints, and ensure end-to-end traceability of AI models.
Implementing comprehensive AI governance not only ensures compliance but also leads to significant improvements in operational efficiency and business outcomes. Organizations that adopt lifecycle automation platforms report faster time-to-value, increased confidence among stakeholders, and the ability to scale AI initiatives across multiple business units.
In conclusion, organizations that can overcome the execution challenge and implement structured governance will have a competitive advantage in bringing AI solutions to market faster and scaling efficiently. The data suggests that the opportunity to lead in the AI-driven economy is greater for those willing to embrace governance as an enabler, rather than an obstacle.