How a Small RA Team Should Measure AI Impact, Choose the Right Level of Adoption, and Navigate Transition
After laying out the five levels of AI adoption, the next natural question is: how do you measure the impact, and how do you know which level fits your team?
If you’re running a small RA team—three people, heavy workload, and a long list of markets to open—you don’t have the luxury of experimenting endlessly. You need to know what works, what moves the needle, and what’s noise.
Here’s a practical framework that cuts straight to it.
Different levels of AI adoption yield varying types of value.
Trying to apply the same KPIs to all of them creates confusion.
Let’s break it down.
Level 1 – Basic Productivity
This is the “ChatGPT on the side” phase. You’re not automating work — you’re speeding up thinking.
What to measure:
Simple but useful. Think of it as warming up the engine.
Level 2 – Structured Assistance
Now the team starts using templates, guided prompts, and standardized RA structures.
What to measure:
This is the first “real” performance level. You start seeing repeatable results.
Level 3 – Integrated Workflow Automation
Here, AI steps into the daily workflow.
Research, comparisons, and checklists — the groundwork is starting to get automated.
What to measure:
This level is where things really start moving at a faster pace.
Level 4 – Full Enablement
The AI doesn’t just help — it participates. It drafts large parts of the dossier and predicts issues.
What to measure:
Now your small team starts performing like a whole department.
Level 5 – RA Digital Twin
This is the “autonomous RA intern that never sleeps” level.
Most of the groundwork is automated.
What to measure:
This level changes not just performance — it changes the whole budget structure.
I’ve seen teams jump too high too fast, and others stay too low because they don’t yet trust the technology.
The decision is actually simpler than it looks.
Focus on three things:
Expansion plans should drive the AI level, not the other way around.
AI must match the reality of your workload.
If your documents, product information, and templates are clean and consistent, you can quickly advance to Level 3–4.
If not?
Start with Level 2 and clean your base first.
AI can scale a mess — and you do not want that.
Let’s be honest — every team has different constraints.
The right level is the one that yields meaningful progress without overstressing the team.
Moving to Level 2:
Problem: No templates, no standardization, and everyone writes in their own style.
Effect: AI ultimately amplifies inconsistency.
Fix: Get your templates straight. Even a light cleanup helps massively.
Moving to Level 3:
Problem: People lack trust in AI-generated research and comparisons.
Fix: Start with AI as the assistant.
Let humans review everything at first.
Trust builds naturally once the team sees consistent accuracy.
Moving to Level 4:
Problem: Product data, labeling data, and risk data are scattered across 20 places.
Fix: Create one “source of truth.”
This is the backbone for every automated submission.
Moving to Level 5:
Problem: Fear.
People worry that AI replaces judgment.
Fix: Position AI as the automation layer — the “hands,” not the “brain.”
All the real decisions stay with the team.
This shift is empowering when done right.
You may be interested in our next companion post:
How to Build a 12-Month AI Roadmap for a 3-Person RA Team.