
Over the last year, I’ve seen AI tools like Claude and ChatGPT transform from cool tech novelties into total game-changers. These technologies are no longer nice-to-haves — they’re critical for any organization looking to stay competitive.
Of course, implementing new AI-powered tools is often easier said than done. In this article, I’ll share some common roadblocks, including a few I’ve encountered as HubSpot’s senior director of global growth. Then, I’ll share some tips and tricks for becoming an AI champion on your marketing team.
By the end of this post, you’ll have the tools you need to drive effective AI adoption across your organization. Let’s dive in.
Table of Contents
The end result is lasting AI adoption that helps your marketing team grow.
For example, the first big AI initiative that I pitched to my team was for an AI-powered search grader. The project would use OpenAI’s API to tell prospects how well their brand was performing in AI answer engines like ChatGPT, Perplexity, and Gemini.
To get people on board, I didn’t just claim that the tool would be helpful. Instead, I explained how I was currently doing many hours of manual analysis each week to calculate how often HubSpot showed up — and how — in AI engine responses.
I also explained that our prospects and customers were going to face this challenge too (if they weren’t facing it already!). And it worked: Our leadership got it right away, and they quickly greenlit the project.
When it comes to AI, I’ve found that describing how the current system works now and how it could work with the new tool is usually successful. Be sure to outline the ROI and benefits of that future state clearly.
AI champions are often educators. After all, people probably won’t get excited about AI if they don’t know how it works — and even if they do, they’re unlikely to be able to use it successfully without at least a basic understanding of the underpinning technology.
With this in mind, whenever I work with colleagues who are less familiar with AI, I’ll start by explaining how the system will work. In some cases, I’ll share the basics of these technologies, including what a large language model (LLM) is and the best practices for using it. Beyond these general explanations of the technology, I’ll also explain how our particular implementation will work.
When acting as an AI educator, be sure to provide the information needed to understand and adopt the idea without drowning people in details.
Big ideas can be exciting, but I’ve found that starting with a rough proof-of-concept is often the best way to get buy-in and bring an idea to life. A low-risk, minimum viable product (MVP) can help illustrate the benefits of AI without requiring a large up-front investment.
By offering a smaller-scale proof-of-concept, you can help your executive team feel more comfortable greenlighting an AI project. You can also frame your investment as an experiment, rather than a long-term commitment.
On the other hand, when stakeholders are so enthusiastic about AI that they may rush implementation or ignore critical issues, I try to reign them in. Instead of directly squashing their ideas, I ask lots of questions.
For example, I might ask, “Why are you thinking about the project this way?”, “What are we trying to accomplish with AI?”, and “Why is AI valuable for this work?” Ultimately, I usually say, “Now that I better understand what you’re trying to do, can I suggest an alternative?”
Approaching over-enthusiasm with genuine curiosity and a willingness to solve for their end goal can help you steer them in a better direction while preserving the relationship.
I’ve learned firsthand how vital it is for marketers to leverage data from across their platforms to drive growth. That means knocking down silos and embracing an ecosystem approach. Making this shift involves engaging internal teams across the organization and external partners.
What does that look like in practice? Let’s start with the internal team. Say that your sales and service teams use Gong to track customer calls. Gong gives you access to extensive call transcripts that are rich in prospect data, offering insights into how you can best position your product.
Marketers can use AI tools to analyze this information and identify potential risks or opportunities for growth. However, this is only possible if teams know what data they’re collecting and share that information freely.
Now, onto the external ecosystem. When you work with partners, not every AI-driven innovation needs to be built by your team. You can work with external partner organizations in your ecosystem that can build solutions for your company.
Let’s use HubSpot as an example. Our Solutions Partners provide services that complement HubSpot’s platform offerings — from implementations to AI-driven analytics to advanced custom integrations. Independent Software Vendor (ISV) Partners build and sell apps that enhance our software’s capabilities, including those featuring AI. The average HubSpot customer uses 9+ apps — leveraging custom tools that help them better serve users in their industries or verticals.
It’s a win-win. Our partners get access to HubSpot customers, an ecosystem that represents a $30 billion opportunity for app and service partners by 2028. Our platform gets enhanced capabilities that can better serve and attract customers — all without any investment dollars from our internal team.
By building out AI capabilities as part of a larger, integrated ecosystem, companies can better serve and grow their customer base. In my experience, that speaks to leadership and drives buy-in.