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Introducing Decagon Labs

Posted on March 24, 2026

Max Lu
Member of Technical Staff, Research

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Today, over 80% of all model traffic at Decagon runs on models we trained ourselves. They outperform the best foundation models on our real-world use cases. 

The team behind that work is Decagon Labs.

Why we built our own models

When we started Decagon, we relied on the same foundation models as everyone else. They are very powerful, but they aren’t specifically built for what we do.

Enterprise customer experience (CX) demands precision, speed, and reliability at a level that general-purpose models aren't optimized for. As the major labs push toward broader reasoning capabilities, the gap between what they prioritize and what enterprise CX actually requires has only widened.

Our answer was to build a different architecture entirely: a network of specialized models, each responsible for a distinct function—identifying the end of user speech, executing workflows, detecting hallucinations, and more. Post-training models specifically for each role lets us hit the low latency customers expect and the high accuracy they depend on. We wrote about this in depth in our post on fine-tuning AI agents.

That architecture demanded a team capable of building it.

Meet Decagon Labs

Decagon Labs is the research and agent orchestration arm of our engineering team. We focus on frontier AI research with a singular goal: make the Decagon product better

That means developing state-of-the-art training techniques, new model architectures, and rigorous evaluation methods, all in direct service of the agents our customers deploy. We've built the infrastructure to support it: human annotators, end-to-end evaluation pipelines, training and inference platforms, and a research team that ships to production.

We're publishing four deep dives alongside this post that give a window into our current work:

Research that ships

Our thesis is that the future of enterprise CX isn't a bigger general-purpose model, but a system of smarter, more specialized models.

The major foundation labs are solving massive, important problems: general reasoning, coding, scientific discovery. Our focus is narrower and more applied: building the best models for delivering concierge customer experiences. That specialization lets us move faster and build deeper in the areas that matter most.

Every member of the Decagon Labs team has a direct line from their work to production impact. The models they build power millions of customer interactions. The architectures they design get deployed to the largest brands in the world. Research here is operational rather than theoretical.

What's next

Our current focus is building frontier post-training techniques and agent architectures that push the boundaries of what our real-world agents can do. We're also prioritizing our voice agents, an area where we believe there's enormous room to improve on the off-the-shelf components available today.

As we scale, we're expanding the scope of our proprietary model stack and deepening our investments in evaluation, training infrastructure, and the research team itself. You'll be hearing a lot more from us through technical blog posts, conference talks, and more.

If you're an engineer or researcher who wants to do frontier work that ships to production and impacts real customers at scale, we're hiring. Come build with us.

“With Decagon Voice, we’re able to combine high performance and seamless brand customization with cross-channel memory, ensuring every interaction is connected and true to Chime’s member-first values.”
Janelle Sallenave
Chief Operating Officer

Start improving your workflow with Decagon

With Decagon, CX teams don’t have to guess whether a change will improve CSAT or deflection. They can move quickly, measure what matters, and act on what works.

Get a demo

Join us

There are very few places where you can prototype with frontier LLMs, ship to production in days, and watch users engage with the systems you built—all while owning the entire stack, from intent parsing and tool usage to API integration and observability. This role at Decagon is one of those places.

From my own experience working across both agent development and broader engineering initiatives at Decagon, I’ve seen firsthand how uniquely impactful this work can be. Whether I’m building intelligent workflows for customers or designing infrastructure that supports our agent platform, it’s rare to find an environment where the work transitions from concept to production within days, actively powering user experiences and transforming how businesses operate.

If you’re looking for a role where you can:

  • Build at the frontier of LLMs, automation, and user interaction
  • Deploy AI agents that solve high-value business use cases across industries including retail, travel and hospitality, fintech, edtech, and more
  • Work directly with customers on high-impact use cases
  • Ship fast, iterate constantly, and own your work from idea to production
  • Join a fast-moving, collaborative team solving real-world challenges with AI

We’d love to hear from you!

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