Most B2B sales leaders today no longer wonder whether to adopt AI; instead, they’re focused on what adopting AI actually delivers. Does AI in sales create a lasting commercial advantage, or does it simply represent the minimum requirement to stay competitive? The uncomfortable truth is that AI in sales can quickly become table stakes, unless it fundamentally transforms how your organization learns and decides.

Why AI In Sales Can Become Table Stakes

  • AI tools spread rapidly. Sales AI capabilities spread quickly across the industry. Vendors offer similar models to multiple competitors, and experts frequently publish, package, and resell “best practices.” As organizations implement next-best-action recommendations, these approaches become increasingly similar across platforms. What initially seems like a unique differentiator soon turns into the industry standard. Ultimately, AI at the tool level often creates parity among organizations, rather than delivering a sustainable competitive advantage.
  • Data advantages fade quickly. Many organizations assume that proprietary data will deliver a lasting competitive edge in their AI strategies, but third-party data sources tend to converge over time and buyer behavior normalizes across markets. Historical data mostly reflects previous sales processes, not future ones. While data can provide some leverage, it rarely acts as a true barrier to competition.
  • Buyers adapt faster than sellers expect. Buyers quickly learn to recognize AI-driven outreach and personalization, so the impact of automated communications diminishes. What once impressed buyers soon becomes a standard expectation, while poorly managed AI can erode trust instead of strengthening it. As more organizations scale up AI-generated engagement, messaging volume surges, leading to signal inflation and making genuine or differentiated communication harder to distinguish.

Where Does A Sustainable Advantage With AI Come From?

Does long-term advantage come from superior AI models, or do organizations gain more by building better operating models around AI? At first glance, superior AI models seem like the obvious answer. In practice, however, better operating models create more lasting impact. Certain scenarios exist where having top AI models makes a real difference, such as foundational AI providers that build the models and platforms, technical fields where prediction accuracy drives the offering, or data-rich and closed environments where advancements outpace competitors’ ability to replicate them. In these specific contexts, model performance can temporarily shield organizations from competition. Yet for most B2B sales organizations, any edge gained from better models fades quickly as competitors catch up.

Why Better Models Rarely Create Durable Advantage In Sales

  • Model performance commoditizes rapidly. Frontier AI models advance quickly, and vendors adopt new features across competing products. Initial model differentiation shrinks to minor improvements, so what once appeared as competitive advantage soon becomes the industry baseline within months, not years.
  • Model accuracy shows diminishing returns. Improving model accuracy from 60% to 80% can dramatically impact sales outcomes, but once organizations reach a certain threshold, further model improvements may not drive meaningful commercial results — especially in complex, human-centric sales environments.
  • Models alone don’t change behavior. Even the most advanced AI models fall short if organizations fail to integrate them into daily operations. Sales representatives need to trust the models; managers should use them in coaching; and leaders must align incentives with their use. Otherwise, these models remain underutilized, offering only the appearance of intelligence without real business impact.

Your Revenue Operating Model Builds Sustainable Advantage

Organizations achieve sustainable advantage when they integrate AI into how they operate, rather than only enhancing predictive capabilities. A robust revenue operating model includes clear decision rights and governance, well-defined sales processes and workflows, thoughtful incentives and performance management, continuous feedback and learning mechanisms, and strong cultural norms that foster sound judgment and trust. Building these foundations takes considerable time, making them tough for competitors to replicate. Here’s how AI-powered revenue operating models create powerful advantages:

  • Operating models powered by AI accelerate decision velocity. When two companies use the same AI model, the organization that uncovers valuable insights sooner, responds more consistently, and adapts quickly gains the advantage. For example, promptly identifying bad deals, surfacing pipeline risk early, or reallocating resources swiftly drives superior outcomes. This advantage stems from organizational agility, not technology alone.
  • Operating models accelerate learning. Most sales organizations use AI to automate tasks and streamline execution, but few use it to accelerate organizational learning. By creating ongoing learning cycles that reinforce successful practices, these organizations gain significant competitive advantage. Their ability to adapt and improve makes it increasingly hard for others to catch up, even when competitors possess similar technology.
  • Operating models govern trust and ethics. As organizations embed AI deeper into go-to-market functions, trust becomes a critical success factor. Without strong governance, organizations risk damaging their reputations. Buyers care more about the intent behind interactions than the intelligence of the technology. Robust operating models ensure that organizations apply AI responsibly, aligning its use with broader business objectives rather than focusing solely on technical capabilities.
  • Revenue operating models leverage seller strengths. AI excels at pattern recognition, but sellers contribute contextual judgment, relationship-building, and adaptability. Revenue operating models and AI strategies that combine these strengths, leveraging AI’s analytics with seller insight, achieve superior results compared to approaches that rely on automation alone.

To learn more on how to provide strategic direction and ensure that AI drives measurable, scalable impact, read the new report, Introducing Forrester’s AI Deployment Model For Go-To-Market Functions.