AI Priorities That Actually Move Revenue
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Headlines scream about AI every day, but the real story is quieter: the teams winning with AI aren’t chasing shiny tools, they’re rebuilding how revenue work gets done. We sat down with Dan Morgese, Director of Content Strategy and Research at Gong, to unpack the new State of AI report and reveal what separates impact from noise. The report pairs a survey of 3,000 director-plus leaders with Gong Labs analysis of 7.1 million closed opportunities, giving us both market sentiment and inside-the-workflow evidence.
What stood out first is a mindset shift: productivity just jumped to the number one growth lever, reframed from time saved to revenue per rep. That changes everything. Instead of using AI to draft more emails, top teams use it to guide seller actions, expose deal risk, and align coaching with what actually moves win rates, cycle time, and ASP. Depth of adoption beats breadth—leaders who treat AI as a core driver of strategy, not a sidecar, see stronger commercial outcomes across the board.
We also dig into the underappreciated frontier: forecasting, strategic planning, and initiative tracking. Adoption for these systemic use cases surged as teams realized forecasting improves when you combine call intelligence, pipeline dynamics, and engagement signals. Planning gets smarter when AI informs territory design and compensation scenarios. And tracking initiatives in the wild lets leaders see whether new messaging lands with customers and whether it moves revenue, closing the loop from strategy to impact.
Trust inevitably comes up. Sixty-seven percent of leaders say they trust AI, but the smarter framing is trust in data. Domain-specific systems that capture reality—conversations, signals, and activity—beat manual CRM fields when accuracy and explainability matter. With AI quickly becoming table stakes, the advantage shifts from “Are you using AI?” to “Are you using it well?” If you’re ready to move beyond pilots, this conversation offers a blueprint: pick systemic use cases, build depth, measure what matters, and let revenue per rep be your scoreboard.
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