About Assembled
Great customer support requires human agents and AI in perfect balance, and Assembled is the only unified platform that orchestrates both at scale. Companies like Canva, Etsy, and Robinhood use Assembled to coordinate their entire support operation - in-house agents, BPOs, and AI - in a single operating system. With AI Agents that resolve cases end-to-end, AI Copilot for agent assistance, and AI-powered workforce management that optimizes both human and AI capacity, Assembled helps teams deliver faster, better service while making smarter decisions about how to staff and automate. Backed by $70M from NEA, Emergence Capital, and Stripe, we're building the platform that makes AI and human collaboration actually work.
The Role
We're looking for an experienced software engineer to help shape the foundation of Assembled's data systems. You'll join our Data Infrastructure team, a close partner to both our Core Infrastructure and AI Infrastructure teams, to own how data is modeled, stored, and served across the company. This work powers everything from customer-facing dashboards to internal analytics and AI-driven product features.
We're currently rebuilding our metrics infrastructure from the ground up. Our legacy Go-based system made it difficult to scale, maintain, and trust the metrics we expose. We're building a new analytics stack that enables fast, reliable metric queries and simplifies the development of new reports. You'll be joining at a pivotal moment-early prototypes are in place, and we're working toward a full-scale production rollout and long-term migration.
The team also plays a central role in the development of Assembled's AI platform, Assist. As we unify our WFM and AI products into a single Human + AI experience, the Data Infrastructure team is responsible for the analytics that help customers understand how Assist is adopted, how it impacts performance, and where to optimize. You'll collaborate closely with the Assist team to build robust data models and systems that support this functionality.
One of the more unique challenges in this role is that our data infrastructure doesn't just support internal analytics-it powers customer-facing product experiences. While some outputs are traditional dashboards, others require near real-time responsiveness. As a result, our stack must support both large-scale analytical queries and low-latency, user-triggered interactions-capabilities that most analytics systems are not architected to handle simultaneously. We're building a unified system that can do both, without introducing mismatched data or duplicated definitions.
In this role you'll :
You may be a good fit if you :
Nice to have (but not required) :
Our U.S. benefits
Software Engineer Infrastructure • New York, NY, United States