Plus 3 use cases
We attended Microsoft’s AI Tour in NYC and learned about the latest cutting-edge advancements in AI. The one question I keep getting is: how is agentic AI different from generative AI? So let’s break that down, specifically for one of my favorite groups of people—fellow life sciences marketers.
Artificial intelligence isn’t new to the life sciences. From early drug discovery to clinical trial design and real-world evidence analysis, AI tools are already transforming how healthcare moves forward. We know this.
But as the market grows, marketers in biotech, pharma, and health tech need to understand the evolving AI capabilities behind the buzzwords, specifically for what we do.
Two terms in particular—agentic AI and generative AI—are reshaping how marketers think about automation, creativity, and efficiency. Understanding the difference can help you stay ahead of the curve and unlock practical use cases that deliver real ROI.
What’s the difference between agentic AI and generative AI?
The easiest way to understand the difference is this:
Here’s a simple analogy. Think of generative AI as a digital chef that can whip up a recipe when you ask for one. Agentic AI is a digital sous-chef who sees you’re running late, plans the whole dinner, orders groceries, preps the ingredients, and texts your guests with an update. One answers. The other acts.
|
Feature |
Generative AI |
Agentic AI |
|
Primary function |
Creates content, text, images, or code |
Performs multi-step tasks and automates workflows |
|
User interaction |
Prompt-based |
Goal-based |
|
Example tool |
ChatGPT, DALL·E, Midjourney |
AutoGPT, ReAct agents, Adept, LangChain workflows |
|
Dependency |
Requires continuous user input |
Operates semi-independently once a goal is set |
|
Strengths |
Fast content creation, language generation |
Workflow automation, process execution, decision assistance |
|
Best use cases for marketers |
Blogs, social posts, email copy, design |
Campaign deployment, CRM updates, lead routing |
How this impacts life sciences marketing
Marketers in life sciences face unique challenges:
Generative AI can help with creative production at scale, but agentic AI has the potential to truly transform marketing operations.
You need ten versions of an email announcing a new clinical milestone for different HCP personas. Generative AI tools like ChatGPT can:
This saves hours of manual writing while still allowing for regulatory review.
After attending ASCO, your team gathers 150+ leads. An agentic AI system can:
This is where generative AI alone isn’t enough. You need a system that acts.
Marketing leaders often juggle dozens of content initiatives. Agentic AI tools can:
Think of this as an always-on strategist helping your team focus on what works.
As generative AI becomes more embedded in marketing workflows, it’s tempting to stop there. But agentic AI is where the real transformation happens—especially in a field like life sciences, where precision, timing, and personalization are everything.
Google’s Search Generative Experience (SGE), Microsoft Copilot, and enterprise tools like Salesforce Einstein are all exploring more agentic functionalities. These systems are moving beyond answering questions to making marketing decisions, executing tasks, and optimizing continuously.
At KNB Communications, we help life sciences clients stay ahead of the curve by implementing smart, scalable AI solutions that respect compliance requirements while driving visibility, efficiency, and engagement.
Life sciences marketers don’t need to become AI developers. But understanding the difference between generative and agentic AI can unlock smarter strategy and better execution.
Start by asking:
Then, look for partners who can help you assess and implement the right AI models and integrations.
Because in a world where visibility in AI search is becoming just as important as Google, and where speed matters more than ever, agentic AI won’t just be a nice-to-have. It’ll be a competitive advantage.