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GoFundMe took a contrarian approach to AI adoption. Instead of first focusing on developer productivity, the team prioritized building new, customer-facing features with LLMs. This directly improved user experience and increased donations before they turned to internal efficiency.

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Leaders feeling pressure to deploy AI should focus it internally first. Using AI to enrich and manage product data catalogs is a low-risk, high-reward application that improves efficiency and builds the necessary foundation for future, more complex customer-facing AI features.

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").

Marketers win with AI not by making existing tasks faster, but by using it to unlock new growth opportunities. The focus should be on game-changing programs that drive revenue, rather than on simply achieving incremental efficiency gains.

When employees are 'too busy' to learn AI, don't just schedule more training. Instead, identify their most time-consuming task and build a specific AI tool (like a custom GPT) to solve it. This proves AI's value by giving them back time, creating the bandwidth and motivation needed for deeper learning.

Teams embrace AI more quickly when it enables them to perform entirely new tasks they couldn't do before, like coding or advanced data analysis. This is more motivating than using AI for incremental improvements on existing workflows, which can feel less exciting and impactful.

C-suites are more motivated to adopt AI for revenue-generating "front office" activities (like investment analysis) than for cost-saving "back office" automation. The direct, tangible impact on making more money overcomes the organizational inertia that often stalls efficiency-focused technology deployments.

Recognizing that asking for help is psychologically difficult, GoFundMe built an AI agent that provides empathy and validation. This "smart coach" guides users through creating a fundraiser, reducing friction and resulting in an additional $125 million raised.

The path to enterprise AI adoption follows a typical change curve. To bypass initial fear and rejection, organizations should first apply AI to transform familiar, high-friction workflows. This strategy builds momentum and demonstrates value before tackling entirely new, innovative business models.

For companies wondering where to start with AI, target the most labor-intensive, process-driven functions. Customer support is an ideal starting point, as AI can handle repetitive tasks, leading to lower costs, faster response times, and an improved customer experience while freeing up human agents for more complex issues.

Avoid paralysis of choice in the crowded AI tool market. Instead of chasing trends, identify the single most inefficient process in your marketing organization—in budget, time, or headcount—and apply a targeted, best-of-breed AI solution to solve that specific problem first.