With nearly every public B2B company now featuring AI, the novelty has worn off. 'AI washing' by adding a simple co-pilot is no longer a differentiator. To succeed, companies must use AI to create genuinely disruptive products that solve problems in ways that were previously impossible.

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Many B2B companies failed by launching AI "co-pilots" that were too expensive for the minimal value they provided. The winning strategy, exemplified by Notion, is to create an AI add-on so valuable that users willingly pay a 50-100% premium, which in turn re-accelerates the company's growth.

Before launch, product leaders must ask if their AI offering is a true product or just a feature. Slapping an AI label on a tool that automates a minor part of a larger workflow is a gimmick. It will fail unless it solves a core, high-friction problem for the customer in its entirety.

Unlike cloud or mobile, which incumbents initially ignored, AI adoption is consensus. Startups can't rely on incumbents being slow. The new 'white space' for disruption exists in niche markets large companies still deem too small to enter.

Focusing on AI for cost savings yields incremental gains. The transformative value comes from rethinking entire workflows to drive top-line growth. This is achieved by either delivering a service much faster or by expanding a high-touch service to a vastly larger audience ("do more").

In the current market, AI companies see explosive growth through two primary vectors: attaching to the massive AI compute spend or directly replacing human labor. Companies merely using AI to improve an existing product without hitting one of these drivers risk being discounted as they lack a clear, exponential growth narrative.

Data from RAMP indicates enterprise AI adoption has stalled at 45%, with 55% of businesses not paying for AI. This suggests that simply making models smarter isn't driving growth. The next adoption wave requires AI to become more practically useful and demonstrate clear business value, rather than just offering incremental intelligence gains.

The novelty of new AI model capabilities is wearing off for consumers. The next competitive frontier is not about marginal gains in model performance but about creating superior products. The consensus is that current models are "good enough" for most applications, making product differentiation key.

The most durable moat for enterprise software is established user workflows. The current AI platform shift is powerful because it actively drives new behaviors, creating a rare opportunity to displace incumbents. The core disruption isn't just the tech, but its ability to change how people work.

While AI-driven efficiency is an obvious first step, it often results in workforce reduction if company growth is flat. True differentiation and sustainable advantage come from using AI for innovation—creating new products, markets, and business models to fuel growth.

As foundational AI models become commoditized, the key differentiator is shifting from marginal improvements in model capability to superior user experience and productization. Companies that focus on polish, ease of use, and thoughtful integration will win, making product managers the new heroes of the AI race.

Adding a Co-Pilot Isn't Enough; 94% of Public Companies Already Claim AI Use | RiffOn