The Revenue Imperative: Why GTM Strategy Must Evolve in the AI Era

Analytics Insight
Jul 17, 2025 07:30
Arundhati Kumar
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Summary

The article argues that traditional go-to-market (GTM) strategies must adapt to the rapid advancements in AI, emphasizing the need for data-driven, agile approaches to capture new revenue opportunities. It highlights how AI is reshaping customer expectations and competitive dynamics, urging organizations to integrate AI capabilities into their GTM models to remain relevant and drive growth. This evolution is seen as essential for businesses aiming to thrive in the AI-driven marketplace.

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