February 17, 2026
by Sidharth Yadav / February 17, 2026
So far, plotting demand generation on the calendar has worked.
We have planned quarters, launched campaigns, reviewed performance, and tried to optimize the next cycle.
But now this approach is breaking, structurally.
In 2026, in an AI-altered space that never sleeps and clicks less, demand gen will no longer be something teams run. It will be something they operate in an always-on mode.
Demand today can’t always be planned, scheduled, and controlled in advance. Buyers may not always show up when campaigns go live. And influence doesn’t always happen inside funnels we can see and measure.
Today, you must respond to buyer behavior as it happens, not weeks later, after intent has already cooled and decisions have formed.
And no, AI didn’t cause this shift. Buyers did. They now research asynchronously, across channels, across devices, and increasingly through AI systems. They don’t move in straight lines that map neatly to our dashboards.
The uncomfortable reality is this: most demand gen teams are measuring outcomes, not influence.
In this playbook for demand gen teams, six leaders across industries share how you can detect intent, build trust, and structure teams when buying behavior is always on, thanks to AI.
Intent no longer announces itself through forms and hand-raises. AI gives demand teams the sensory layer to detect these patterns early and respond while influence is still forming. The themes below highlight what to watch for and how to translate buyer signals into timely demand activation.
When it comes to demand gen, AI isn’t just about automation. It lets teams sense intent continuously instead of inferring it retrospectively.
Traditional demand gen is backward-looking by design. Someone fills out a form. Someone attends a webinar. We record the activity, score it, and react. But these are artifacts of buyer activity and not signals of buyer momentum.
By the time a form fill shows up in a dashboard, the buyer has already learned something or formed early opinions. Teams aren’t shaping intent at that point; they’re responding to its residue. AI flips this model by aggregating patterns.
Once you accept that intent is emergent, not declarative, the core question changes.
Instead of asking: “Which leads should we score?”, the better question becomes: “Which buying groups are forming right now?”
AI is uniquely good at answering this because it detects weak signals humans routinely miss. This can include multiple researchers from the same company, synchronized engagement across channels, or increased activity around peer reviews.
Demand gen is no longer about capturing individuals. It has shifted to being about interpreting collective behavior, exposing another hard truth: most lead-based funnels are structurally incapable of doing this well.
Activation is not always automation.
The goal is not to trigger more emails, more ads, or more SDR outreach. The goal is to intervene only when the timing is right.
Abhishek GP, Senior Vice President of Growth and Brand at Everstage, points out that winning teams have moved away from static ABM lists. “The best teams use AI to constantly re-rank accounts based on fit, engagement, and live intent,” he explains. The outcome isn’t more activity. It’s better timing.
AI doesn’t make demand generation faster by doing more. It makes it more effective by doing less at precisely the right moment.
AI is no longer just a discovery channel. It’s turning into a marketplace, a space where buyers compare vendors, evaluate credibility, and form shortlists before ever visiting a website. As large language models (LLM) turn into researchers and recommenders, demand gen teams must rethink how they show up, earn trust, and influence decisions.
Traditional search rewarded whoever ranked highest. AI search rewards whoever is most credible.
When a buyer asks an AI system what software to consider, they’re not browsing. They’re outsourcing judgment. They’re asking the system to summarize the market, reduce options, and surface what’s “safe,” “proven,” or “recommended.”
“We’re building an agile track for AI visibility and GEO. This is our insurance policy. It protects our market share with the ‘power users’ who now bypass websites and go straight to AI for answers.”
Leandro Perez
CMO for Australia and New Zealand at Salesforce
Leandro notes that AI-powered search and recommendation engines are now overtaking traditional search as the starting point for many enterprise decisions. At that moment, demand gen teams are no longer marketing and creating content just to buyers but to the systems that advise buyers.
This changes the role of content. If your content can’t be retrieved, interpreted, and cited by AI systems, it doesn’t shape the decision.
Demand gen teams are used to thinking in terms of traffic: clicks, sessions, conversions.
AI search breaks that mental model.
Adam Kaiser, Vice President of Growth Marketing at 6sense, points out that buyers are forming preferences long before they engage vendors. “Research tells us 81% of buyers have already selected a preferred vendor before they engage sales, and that preference rarely changes,” he shares.
In an AI-mediated discovery environment, influence doesn’t come from clever messaging. It comes from repeatable truth. “Marketers have a new job: train the AI to know all the key aspects of our brands,” says Andy Crestodina, Co-Founder and Chief Marketing Officer at Orbit Media Studios.
You can’t easily attribute an AI recommendation to a campaign. You can’t always see when your content influenced a shortlist. And you can’t retarget an AI system the way you retarget a visitor.
But that doesn’t make this influence any less real.
Abhishek argues that demand leaders need to stop thinking in terms of SEO mechanics and start thinking about how AI understands their brand. That means clarity over cleverness, consistency over volume, and presence in the places buyers actually spend time. “Make it easy for AI to explain what you do and who you’re for,” he advises.
The goal is no longer to drive the most traffic. It’s to become the most referenceable.
Once we accept that intent is continuous and that discovery is increasingly mediated by AI, we must admit that demand gen operating models are obsolete.
You cannot run an always-on demand engine with episodic planning.
Annual plans assume predictability. Quarterly plans assume stability. Campaign calendars assume buyers will wait.
Adam from 6sense admits AI has made rigid, long-term plans impractical. “Quick adaptation requires flexible planning cycles, with regular check-ins and room to adjust based on real-time buyer signals,” he says. Let us examine how AI in demand generation is prompting a rethink of team and role designs.
Traditional demand gen planning is built around what will be launched and when. AI-era demand gen needs to be built around how the system learns and adapts.
“In the age of AI, driving engagement, pipeline, and revenue is a team sport. It takes content strategy, customer marketing, social media, web, PR, and yes — demand gen — to effectively show up, be discovered, and win deals.”
Michael Pannone
Director of Demand Generation at G2
When demand gen becomes system-driven, every campaign is provisional. Every asset is a hypothesis. Every outcome feeds the next iteration. Success is no longer measured solely by pipeline contribution, but by how quickly insights compound into better decisions.
Michael reinforces this by noting that AI compresses timelines but raises expectations. What once took weeks now takes days.
As planning cycles shorten, organizational design has to change with them.
Abhishek observes that the best teams are intentionally staying lean, using AI to remove friction from scalable channels like SEO, paid, and lifecycle. “AI runs the engine while humans steer.”
The next moves demand gen leaders make will determine whether they’re shaping demand or reacting to it.
Here’s what that looks like in practice.
The work ahead is simple but not easy. Build a demand engine that notices those traces, interprets them correctly, and knows exactly when to act.
Deals aren't lost in a dramatic boardroom explosion. We lose them in the micro-moments we aren't even tracking. Discover these critical moments in our latest article.
Use AI to spot buying signals earlier and act at the right moment, not just to automate emails or ads. The most effective teams use AI to monitor patterns across content usage, account behavior, and research activity, then respond only when interest is real and timing is right.
Focus on being trusted and easy for AI to reference. That means publishing clear, consistent content, showing up in reviews and comparisons, and making it easy for AI tools to understand what you do, who you’re for, and why you’re credible.
Campaigns should be more flexible and signal-driven, not fixed in advance.
Instead of launching everything on a set date, teams should use AI to adjust targeting, messaging, and timing based on live buyer behavior.
Edited by Supanna Das
Sidharth Yadav is a senior editorial content specialist at G2, where he covers marketing technology and interviews industry leaders. Drawing from his experience as a journalist reporting on conflicts and the environment, he attempts to simplify complex topics and tell compelling stories. Outside work, he enjoys reading literature, particularly Russian fiction, and is passionate about fitness and long-distance running. He also likes to doodle and write about employee experience.