Enterprise artificial intelligence (AI) pilots are everywhere, yet scaled deployment remains elusive, with many initiatives stalling before they deliver any measurable impact. The organizations that are able to move beyond experimentation are rethinking leadership itself, embedding go-to-market (GTM) execution directly into the operational core of AI adoption to convert technical potential into commercial conviction.
At the center of that shift is a new kind of operator: an embedded GTM executive who serves as a bridge between technical capability and commercial viability. The role isn’t advisory in name only. It’s operational, cross functional, and deeply involved in how AI moves from pilot to production, aligning product decisions, risk controls, and revenue strategy in real time.
By sitting inside the motion rather than observing from above, this leader reduces the hesitation that often surrounds AI initiatives, clarifies ambiguous risk conversations, and converts abstract model performance into concrete business decisions. “I think the biggest hurdle for AI isn’t necessarily the technology. It’s this uncertainty tax,” says Eric Maida, Vice President at TrustModel AI, pointing to the gap between what a model can technically do and what an organization feels confident deploying at scale. Without someone accountable for closing that gap, even the most advanced systems can remain trapped in pilot mode.
From Risk Management to Revenue Confidence
If embedded leadership is the structural shift, its practical impact is felt in how organizations manage risk and demonstrate value. Moving AI into production requires more than technical validation. It demands operational discipline and financial clarity, especially when scrutiny from boards and buying committees intensifies.
Managing risk is the first mandate. “You aren’t just identifying risks, you’re operationalizing them,” Maida explains. Instead of flagging that a model might hallucinate, an embedded leader builds feedback loops and guardrails that allow a sales team to demo with confidence. The second mandate is building confidence through proof of value, not just proof of concept. “You prove that AI solves a specific P and L problem, profit and loss problem, which gives the board the green light to scale.” By tying model performance directly to financial outcomes, the conversation shifts from experimentation to investment.
The Cost of Staying in the Boardroom
When executives attempt to steer complex AI initiatives from the boardroom alone, Maida sees a predictable pattern in which leaders lose sight of what he calls the “middle mile friction.” Strategy may be sound, but execution falters in the space between product development and market adoption.
Boardroom-only leadership often treats AI as a magic wand, setting aggressive key performance indicators (KPIs) without fully understanding data latency or model drift. The result is what Maida calls “zombie AI,” projects that are technically live but have zero adoption because the sales team doesn’t know how to pitch them or the product fails to solve a real user pain.
That breakdown exposes a deeper structural flaw. In previous eras, companies could toss a product over the wall to sales and rely on traditional enablement to drive uptake. “With AI, the wall has to come down,” Maida says. Complex models require tight coordination across product, revenue, and risk from the outset, or adoption will stall before value is realized.
Eliminating Silos Through Embedded Leadership
The embedded model works primarily because it eliminates silos. Maida describes it as a hub and spoke structure, with the GTM executive positioned at the intersection of sales, product, and risk. The role is equal parts translator and integrator.
Trust is built by demonstrating fluency in each stakeholder’s pressures. When risk teams see that their security concerns are understood and sales teams see that quota realities are acknowledged, alignment accelerates. That alignment enables what Maida calls parallel processing, or building the product while simultaneously preparing the market.
“The best leaders have a deep dive conversation with the data scientists about RAG systems at 9:00am and then a strategic partnership lunch with the CEO at noon,” he says, underscoring that this ability to translate across technical and commercial domains reduces friction and accelerates momentum.
For embedded GTM leaders, translation is a core skill, turning complexity into the language of revenue, cost, and reputation. “Bias equals brand equity risk. Security equals business continuity,” Maida says. Instead of debating training data skew, the conversation focuses on the potential legal exposure or public fallout from data leakage, a threat to competitive advantage and customer retention. Done well, this reframing builds executive confidence and positions AI governance as a lever for resilience and growth.
Scaling Trust, Not Just Software
The pace of change around AI leaves little room for static planning, and these embedded GTM roles will likely become standard as AI matures. “AI is the first technology that evolves as fast as the market does. If your GTM market strategy stays static, then your product will be obsolete before it even hits the market.”
What separates the most effective leaders is the ability to remain agile; market feedback loops matter more than rigid five year plans. “At the end of the day, we aren’t just scaling software. It’s really about scaling trust with your clients, with the market.” For enterprises navigating AI adoption, that distinction may define the difference between experimentation and enduring impact.
Follow Eric Maida on LinkedIn for more insights.