Smarter Reps: Using AI to Give Field Teams Context


Smarter Reps: Using AI to Give Field Teams Context, Not Noise

How event signals and conversation intelligence close the gap between HCP data and rep action.

Now available on-demand

 

David Williams

Founder & CEO

KAI Conversations

Pierre Metrailler

CEO

Onomi

About the webinar

Pharma teams have spent years building next-best-action engines. The investment is real. So is the problem it created: reps are getting more suggestions than ever, and trusting them less.

The issue isn’t AI. It’s the data feeding it. Thin CRM records produce generic suggestions. Generic suggestions get ignored. And when reps default to instinct, the entire omnichannel model quietly breaks down.

In this on-demand episode, Pierre Metrailler and David Williams break down why the data feeding your next-best-action engine matters more than the engine itself, and what it takes to fix it.

David’s diagnosis: the algorithm isn’t broken. The data feeding it is. CRM records are thin. A rep selects “efficacy” from a dropdown after 2 completely different conversations, one where the HCP was genuinely moved and one where they politely ignored it. The machine sees the same thing. And so the suggestion it generates is the same too, generic, easy to dismiss.

David put it plainly: pharma knows everything outside of the conversation. But nothing inside it.

A blurry input doesn’t get sharper when you run it through a sophisticated engine. It just amplifies the blur. That’s what happens when CRM records are built from category indicators instead of behavioral signals.

The difference between “HCP raised tolerability objection” and “HCP raised tolerability objection and belief visibly shifted” is everything for what you do next. One requires follow-up on tolerability. The other probably doesn’t. Without that signal in the system, the engine guesses.

David’s solution: apply AI to real rep-HCP call recordings. Not to monitor reps, but to surface what actually happened: which clinical questions came up, how the HCP responded, where belief shifted and where it didn’t. Structured, compliant summaries that flow into CRM so the next interaction, whether it’s a different rep, a different channel, or an AI-generated suggestion, starts from the right place.

On consent: 80% of HCPs say yes when it’s framed correctly. The bigger factor is whether field teams feel the tool is there to help them, not to performance-manage them. Get that right first.

Where Onomi fits in

Pierre walked through a problem that’s specific to congresses. A rep visiting a known account can open Veeva, find the record, log the call. At a congress, none of that scaffolding exists. The HCP might not be in your territory. You might not even be their rep. It’s noisy, international, and inherently unstructured.

The result: teams capture, but they don’t follow up. Because there isn’t much to follow up on.

Pierre’s team looked at every point of friction in that process, badge scanning, identity resolution, logging the interaction, and rebuilt the app around removing it. AI matches the badge scan to the right CRM record, returning confidence scores when there’s ambiguity. Instead of checkboxes (the same shallow dropdowns David had just diagnosed as the core problem), reps can record a voice note or, increasingly, the actual conversation. The AI transcribes it, summarizes it, and maps it to the right fields.

What they heard from reps who resisted wasn’t a privacy concern. It was: “This is beneath me.” The checkbox workflow felt like admin. Recording a real conversation doesn’t. And once the friction is gone, the door opens to everything David described: coaching, behavioral signals, suggestions that actually land.

How to move from suggestion volume to suggestion quality

David laid out 3 things that actually move the needle:

Engage legal early, frame the tool as a mirror for reps, not a monitoring layer. The compliance teams who understand what’s being captured typically get behind it.

Explain to reps why a suggestion is being made. When the logic is visible (“we heard this, which usually means this, so we think you should do that”), buy-in follows. Fewer suggestions that earn trust beat more suggestions that get skipped.

Thumbs up, thumbs down. Simple. It’s how you improve the engine over time without a major re-architecture.

The starting point for all of it: get behavioral signals from inside the conversation into the system. Everything else builds on that.

Watch the full session on demand

Speakers

About Onomi

Onomi is a platform that helps pharma instrument scientific exchanges at congresses, webinars and advisory boards – connecting KOL engagement, booth insights, and symposium data into a single evidence layer integrated with your CRM.

With over 22 years of experience & trusted by 15 of the top 20 life science companies, Onomi creates engaging HCP experiences, measures real impact & is more cost-effective than traditional point solutions.

For more information, reach out today.

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David Williams

Founder & CEO

KAI Conversations

David is CEO and Founder of KAI Conversations, the leading Behaviour Intelligence Platform for Life Sciences. David describes himself as a “Customer Guy with a passion for tech” having created the world’s largest Customer Management Benchmarking business over 25 years ago and led over 30 customer transformation programmes in the largest blue-chips. For the last 6 years, he has focused specifically on AI in Life Sciences field interactions. How we measure and improve human connection to drive Behaviour Change, through KAI’s NetKonnector (r) Framework.

Pierre Metrailler

CEO

Onomi & SpotMe

Pierre has spent over two decades helping enterprises engage their live audiences. After joining SpotMe in 2001, he led its pivot to SaaS in 2011, and as CEO since 2016 has built the company around making every face-to-face interaction count where it matters most: inside the CRM.

That conviction led him to launch Onomi, a customer engagement platform for life sciences. Pierre is a computer scientist by trade and holds degrees from EPFL and INSEAD.