To drive adoption, Axios's CEO gave all staff licensed AI access and a simple mandate: spend 10% of your day finding ways it can improve your specific job and share wins. This bottom-up, experimental approach fostered organic adoption and practical use cases more effectively than a top-down directive.

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Mandating AI usage can backfire by creating a threat. A better approach is to create "safe spaces" for exploration. Atlassian runs "AI builders weeks," blocking off synchronous time for cross-functional teams to tinker together. The celebrated outcome is learning, not a finished product, which removes pressure and encourages genuine experimentation.

An effective AI strategy pairs a central task force for enablement—handling approvals, compliance, and awareness—with empowerment of frontline staff. The best, most elegant applications of AI will be identified by those doing the day-to-day work.

Webflow accelerates AI tool adoption using company-wide "Builder Days." This combines a top-down executive mandate (e.g., "no meetings without a prototype") with bottoms-up enablement, including tool access, support channels, and prizes. The goal is to move the entire organization up the adoption curve, not just early adopters.

While empowering employees to experiment with AI is crucial, Snowflake found it's ineffective without an executive mandate. If the CEO doesn't frame AI as a top strategic initiative, employees will treat it as optional, hindering real adoption. Success requires combining top-down leadership with bottom-up innovation.

To drive AI adoption, CMO Laura Kneebush avoids appointing a single expert and instead makes experimentation "everybody's job." She encourages her team to start by simply playing with AI for personal productivity and hobbies, lowering the barrier to entry and fostering organic learning.

AI agent platforms are typically priced by usage, not seats, making initial costs low. Instead of a top-down mandate for one tool, leaders should encourage teams to expense and experiment with several options. The best solution for the team will emerge organically through use.

Snowflake established a cross-functional AI council with volunteers who dedicate 10-20% of their time to experimentation. This avoids chaotic, duplicated efforts from a company-wide mandate. The council then shares learnings and rolls out proven use cases to the broader team quarterly, ensuring structured adoption.

Moving beyond casual experimentation with AI requires a cultural mandate for frequent, deep integration. Employees should engage with generative AI tools multiple times every hour to ideate, create, or validate work, treating it as an ever-present collaborator rather than an occasional tool.

Webflow drove weekly Cursor adoption from 0% to 30% in its design team after one 'builder day' where every participant was required to demo a project. This combination of hands-on practice, peer support from champions, and clear expectations creates rapid, tangible adoption of new AI tools.

A successful AI transformation isn't just about providing tools. It requires a dual approach: senior leadership must clearly communicate that AI adoption is a strategic priority, while simultaneously empowering individual employees with the tools and autonomy to innovate and transform their own workflows.