Dylan Bristot

Senior AI Product Marketing Manager, Nebius

About the Expert

Dylan Bristot is the Senior AI Product Marketing Manager at Nebius, where he focuses on bridging the gap between high-performance AI infrastructure and the market. With a background in hyper-growth sectors like Cybersecurity and Fintech, Dylan specializes in translating complex technical solutions into marketable, value-driven outcomes. At Nebius, he works at the intersection of machine learning engineering and business strategy, helping organizations navigate the shift from AI hype to concrete implementation.

The Core Challenge: Translating Complexity into Outcomes

Does the role of a Product Marketer change when you enter the world of AI? Dylan Bristot argues that while the fundamental goal—translating technical specs into public-facing value—remains the same, the pace has accelerated beyond anything seen in Cybersec or Fintech. In this interview, we explore how to stay relevant in an industry where the "latest" models can become obsolete in months.

Beating the Hype: The ROI of Outcome-Based AI

The AI industry is currently saturated with "overpromising" and noise. Dylan emphasizes that the only way to truly distinguish a successful AI product is through its tangible return on investment (ROI). Key insights include:

  • Moving beyond "selling the vision" to showing day-to-day process efficiency.
  • Replicating the "Aha!" moment: How tools like ChatGPT and Claude have lowered the barrier for people to understand the value of LLMs.
  • Why startups should start with the expected outcome rather than the model.

Building a Go-To-Market Strategy: Outcome First, Model Second

A common pitfall for AI startups is "falling in love with the model" before defining the problem. Dylan outlines a more strategic approach:

  1. Define the specific business achievement.
  2. Break it down into sub-tasks.
  3. Select the provider and model based on speed, cost, and specific task requirements.

The Education Challenge: Upskilling in a Fast-Paced Industry

Educating professionals across HR, Finance, and Marketing is one of the industry's biggest bottlenecks. Dylan discusses the "three-fold problem" of AI education:

  • Overcoming the initial hype.
  • Breaking long-standing habits and processes.
  • Staying up-to-date with the blistering pace of new releases.

He highlights the crucial role of AI education platforms in doing the "heavy lifting" of breaking down complex tasks into actionable learning paths.

Marketing the "Invisible" Layer: Hardware and Sovereignty

Most users interact with the software layer, but Dylan sheds light on the critical infrastructure powering the "brains" of AI. We discuss:

  • Why data centers, chips, and servers matter to the end-user.
  • The rise of "Sovereign AI" in Europe: Why data location and sustainability are becoming key competitive advantages.
  • Speaking "Hardware language" to an audience that only speaks "Software."

Advice for the Ecosystem: Building Dynamic Learning

Dylan offers a strategic tip for those building AI curriculums: Education must be as dynamic as the technology itself. A "solid" class today might be out of date in six months, requiring a move away from static facts toward a curriculum that evolves alongside industry breakthroughs.

🎥 Watch the full interview with Dylan Bristot to learn how to bridge the gap between AI infrastructure and business value.

🌐 Explore Kampster AI — the platform for AI education, knowledge testing, and practical learning — and start building the skills needed for the future of enterprise AI.

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