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Home Technology

AI Investment Value Gap Widens Dangerously Fast

Linda Torries – Tech Writer & Digital Trends Analyst by Linda Torries – Tech Writer & Digital Trends Analyst
September 30, 2025
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Introduction to AI and Business

The Boston Consulting Group (BCG) has conducted a study that reveals a significant gap between companies that are successfully utilizing Artificial Intelligence (AI) and those that are struggling to generate value from their AI investments. According to the study, only 5% of companies are achieving bottom-line value from AI at scale, while 60% are failing to achieve any material value.

The AI Value Gap

The top-performing organizations, which BCG refers to as "future-built," are not only succeeding but are also creating a significant AI value gap. These companies generate 1.7 times more revenue growth and 1.6 times higher EBIT margins than the lagging majority. They have moved beyond isolated experiments and have fundamentally reinvented their operations, driving shareholder returns through revenue increases and measurable workflow improvements.

Characteristics of Future-Built Companies

Future-built companies approach AI as a board and CEO-sponsored multiyear program with ambitious, clearly defined targets. Nearly all C-level leaders in these organizations are deeply engaged with AI, and they foster a model of shared ownership between business and IT departments. These leaders focus on reshaping and inventing core business workflows, where the majority of value lies, rather than just automating existing processes.

The Role of Agentic AI

Agentic AI, which combines predictive and generative capabilities, is emerging as a key driver of the AI value gap. This type of AI allows companies to "reason, learn, and act autonomously" with minimal human input, and it is already accounting for 17% of total AI value. The top firms are moving quickly to adopt agentic AI, with a third already using agents, compared to almost none of the laggards.

Talent and Upskilling

Talent is another key differentiator between future-built companies and those that are struggling. Rather than focusing on job losses, future-built companies are aggressively upskilling their workforce to collaborate with AI. They plan to upskill more than 50% of their internal staff, making investments in broad-based employee AI enablement and carving out dedicated time for structured learning.

Building on a Central AI Platform

Leading organizations avoid the "GenAI burden" of siloed, unscalable proofs-of-concept by building on a central, integrated AI platform. They are three times more likely to operate such a platform, allowing them to build common capabilities for security and monitoring just once and then reuse them, accelerating deployment and ensuring enterprise-wide scale.

Advice for Lagging Companies

For the 95% of companies that are falling behind, the message is urgent. The path to success is clearly delineated, but it requires a fundamental shift in mindset and organization. BCG advises following a "10-20-70 rule," where transformation efforts should focus 70% on people and processes, 20% on technology, and only 10% on the algorithms themselves.

Conclusion

The AI value gap is a significant challenge for companies that are struggling to generate value from their AI investments. However, by following the example of future-built companies, which approach AI as a board and CEO-sponsored multiyear program, focus on reshaping and inventing core business workflows, and prioritize talent and upskilling, lagging companies can close the gap and achieve success with AI.

FAQs

Q: What percentage of companies are successfully achieving bottom-line value from AI at scale?
A: According to the BCG study, only 5% of companies are achieving bottom-line value from AI at scale.
Q: What is the main reason for the AI value gap?
A: The main reason for the AI value gap is a failure of leadership, with top management often delegating AI strategy to middle or lower management and failing to articulate a clear vision for value from investments.
Q: How can companies close the AI value gap?
A: Companies can close the AI value gap by following the example of future-built companies, which approach AI as a board and CEO-sponsored multiyear program, focus on reshaping and inventing core business workflows, and prioritize talent and upskilling.
Q: What is agentic AI, and how is it being used by top firms?
A: Agentic AI is a type of AI that combines predictive and generative capabilities, allowing companies to "reason, learn, and act autonomously" with minimal human input. Top firms are moving quickly to adopt agentic AI, with a third already using agents, compared to almost none of the laggards.
Q: How can companies upskill their workforce to collaborate with AI?
A: Companies can upskill their workforce by making investments in broad-based employee AI enablement, carving out dedicated time for structured learning, and involving employees in the process of co-designing and reshaping workflows to incorporate AI agents.

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Linda Torries – Tech Writer & Digital Trends Analyst

Linda Torries – Tech Writer & Digital Trends Analyst

Linda Torries is a skilled technology writer with a passion for exploring the latest innovations in the digital world. With years of experience in tech journalism, she has written insightful articles on topics such as artificial intelligence, cybersecurity, software development, and consumer electronics. Her writing style is clear, engaging, and informative, making complex tech concepts accessible to a wide audience. Linda stays ahead of industry trends, providing readers with up-to-date analysis and expert opinions on emerging technologies. When she's not writing, she enjoys testing new gadgets, reviewing apps, and sharing practical tech tips to help users navigate the fast-paced digital landscape.

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