Previously, we discussed how Sales and Marketing benefit from using AI in their Account-based Marketing (ABM) strategy, a space where most of the attention traditionally goes. However, the other functional teams of the ETS companies that make ABM operate fully are often left out of the picture. In this final piece of our ABM series, we shift the lens to these critical players. By highlighting how AI can transform their contributions, we hope to offer a more complete, company-wide picture of what ABM can truly look like when every cog in the machine turns in harmony.
We’ll now discuss the remaining “cogs” of the ETS x ABM machine: founders/Leaders, BizOps, Account Management, and Delivery. We'll examine how each of these teams can harness AI to drive precision, scale, and insight within an Account-Based Marketing (ABM) framework.
Founders and leaders play a strategic role by sharing the same vision across the board to align all the teams with the same targets. They also guide the allocation of resources and which ICPs are to be targeted in the niche emerging tech market. They also share how ABM aligns with the long-term goals of the ETS firms. However, this requires a lot of trial and error to find out what the actual customers look like and a lot of effort to keep the teams consistently aligned with their firm’s positioning in the evolving market. With AI, they can:
Example prompts:
"Analyze inbound engagement over the last 60 days and identify which personas are most responsive to our compliance narrative."
“Rank our top 20 customers by fit and engagement. Suggest changes to our ICP.”
“Using historical deal cycles and delivery timelines, identify accounts with long-term profitability potential.”
“Analyze cross-departmental ABM performance metrics and recommend resource shifts or training needs to improve account retention.”
BizOps gives organizations operational foresight. With AI, they analyze patterns on a deeper level, which can be used to forecast risks and recommend pivots early, along with ensuring that operational scalability comes without loss of quality of operations. AI can further push the ABM pipeline by supporting BizOps through:
Example Prompts:
"If an account visits our pricing page and downloads a case study, auto-notify Sales and tag as ‘Lead’.”
“Analyze conversion rates per outreach sequence.”
“Map lead scores from CRM with pipeline status in the dashboard.”
"Simulate revenue scenarios for the next quarter based on current ABM pipeline and churn trends."
In ETS, where relationships are often long-term and highly technical, Account Managers must be part relationship builder, part product expert, and part strategist. With AI, they can anticipate client needs before the client even articulates them. AI gives them a sixth sense by helping them detect churn risk, identify upsell moments, and scale their attention across different target accounts without losing the human touch.
Example Prompts:
"Summarize the last 3 attempts at outreach for support from <target account> and detect tone shifts or frustration markers."
"Generate a quarterly relationship review template personalized for the CIO persona."
"List potential upsell products based on <target account>’s current solution usage and market trends."
While Sales and Marketing shape the narrative, the Delivery teams ensure that the promises made during account targeting and conversion are fulfilled. In ETS firms, especially those dealing with complex solutions like AI services, cloud migrations, or data architecture, Delivery is where value is tangibly realized. AI is helping delivery teams operate smarter, faster, and more predictably by aligning execution with the exact needs of each target account.
Example Prompts:
"Match internal consultants/experts to upcoming projects based on AI-tagged past project success patterns."
"Analyze all post-project client feedback across accounts in the emerging tech market. Flag pain points that could lead to churn or upsell opportunities."
“Predict delivery bottlenecks for a new project with an existing client, using past similar projects as a reference. Suggest timeline adjustments."
Here are a few examples of the types of AI used and their abilities.
As Emerging Technology Services (ETS) firms push the boundaries of innovation, staying ahead in the AI adoption curve isn’t just an advantage; it has become a necessity. In a market where niche, high-value solutions define your positioning, your firm must also reflect operational excellence. Failing to integrate AI effectively across your internal teams could mean not only slowing your growth trajectory but also risking irrelevance in an ecosystem that is evolving by the minute.
Here's how to ensure your ETS firm doesn't fall behind:
Founders and leaders must first define their vision for AI integration as a core driver of the company’s evolution. A clear roadmap helps communicate intent, aligns teams, and prioritizes investments. Without it, you risk missing high-value accounts due to vague or inconsistent AI strategies.
Adopting AI without preparing your teams can be counterproductive. Prioritize foundational training to build digital fluency. Equip different teams with the relevant knowledge to interpret AI insights, leverage automation tools, and engage confidently with intelligent platforms.
Avoid the immediate, full-scale workflow automation, which is unrealistic and will fail as soon as you start. Instead, begin by integrating AI into accessible, high-impact processes, such as content personalization and market/account research. This builds comfort and familiarity with AI tools while delivering measurable value early in the transformation journey.
AI is only as effective as the data it is trained on. That’s why data hygiene is non-negotiable. A clean, shared data environment ensures that AI models can deliver accurate forecasts, actionable insights, and meaningful personalization, especially when targeting key accounts. To do this, you must standardize the data collection process and conduct regular maintenance for a unified data repository, which will act as your company’s single source of truth.
Although AI can be a good tool to speed up internal processes and create personalized content within a few seconds, it can also hurt the strategy, by undermining efforts and wasting resources. These are a few things you should be careful of:
Overly robotic messaging or irrelevant personalization can backfire. Human touch and constant review still matter.
If your data is messy, your AI-driven targeting and messaging will be too.
AI might automate many processes, but without sales and marketing alignment, deals still fall through the cracks.
AI can surface too many signals. It's important to define clear filters and success metrics, or teams may get lost in dashboards.
As ABM becomes more data-driven and customer expectations continue to evolve, your ETS firm’s ability to orchestrate AI across all internal teams will define your place in the market.
At Vixul, we put AI into practice through our AI agent, Vixie. From refining our market positioning by stress-testing different strategies to identifying Ideal Customer Profiles (ICPs) and generating impactful client case studies, Vixie plays a key role in accelerating our strategic initiatives. We’re especially excited to extend Vixie’s capabilities to our portfolio companies, empowering them to tap into the same AI-driven insights that fuel our own growth.
Want to stay ahead of the curve with us?
Sign up to stay in the loop and get the latest Vixul updates.
Read more of our ABM articles here: