Design and build core product surfaces powered by AI while collaborating closely with product teams, AI researchers, and engineers in a dynamic startup environment.
Traversal is the AI Site Reliability Engineer (SRE) for the enterprise—already trusted by some of the largest companies in the world to troubleshoot, remediate, and even prevent the most complex production incidents. Our mission is to free engineers from endless firefighting and enable them to focus on creative, high-impact work.
Our roots remain deeply embedded in AI research, and we’re channeling that scientific rigor and creativity into building the premier AI agent lab for the enterprise. Hence, what we’re proudest of is assembling the most talented yet nicest group of individuals, including researchers from MIT, Harvard, and Berkeley, to world-class engineers from industry: Citadel Securities, Cockroach Labs, Datadog, DE Shaw, ServiceNow, Glean, Perplexity, Pinecone, and more, to take on one of the hardest problems for AI to solve. Without the entire team, none of this would be possible.
As a Full-Stack AI Engineer at Traversal, you’ll play a key role in designing and building the core product surfaces powered by our AI Site Reliability Engineer. This role is ideal for engineers who enjoy owning complex systems end-to-end—from user interface through backend services and infrastructure.
You’ll help translate advanced AI capabilities into reliable, production-grade product experiences used by engineers operating large-scale systems. The right person for this role combines strong product intuition with deep engineering judgment and is comfortable working across the stack, from distributed systems and data pipelines to highly interactive front-end applications.
You’ll partner closely with product, AI researchers, and infrastructure engineers to shape the architecture of the platform and build features that enable real-time incident detection, root cause analysis, and automated remediation across complex production environments.
Product Ownership: Drive end-to-end development of core product capabilities, translating AI-driven insights into intuitive workflows that empower engineers and reduce cognitive load.
Technical Architecture: Design scalable system architectures spanning frontend, backend services, and data infrastructure to support real-time observability and automated operations.
API & Platform Development: Design and implement high-performance APIs and service layers that power the product and enable seamless integration between AI systems, backend services, and the user interface.
User Experience: Build highly interactive interfaces for exploring operational data, rapidly iterating with users to refine product workflows and usability.
Data Systems: Design efficient strategies for storing, processing, and retrieving large-scale operational data using technologies like PostgreSQL, Redis, and distributed systems.
AI Integration: Collaborate with AI engineers and researchers to operationalize model outputs in production systems, building reliable pipelines, authentication systems, and platform abstractions that enable AI-powered features.
Technical Leadership: Help shape engineering best practices, influence technical direction, and raise the bar for system design, performance, and maintainability across the codebase.
Significant experience building and operating complex full-stack systems in production environments
Strong proficiency in Python and modern backend frameworks such as FastAPI or similar
Deep experience building modern frontend applications using React and TypeScript
Experience designing and operating scalable backend services and APIs
Experience deploying and operating applications in cloud environments (AWS), including containerized workloads using ECS or Kubernetes
Experience working with data-intensive systems, including relational databases such as Postgres and distributed storage systems
Strong product instincts and the ability to translate technical capabilities into intuitive user-facing functionality
Ability to operate effectively in early-stage startup environments with high ownership and evolving priorities
Experience building data-heavy interfaces, including time-series visualization or operational dashboards
Experience working with observability platforms, infrastructure tooling, or developer platforms
Familiarity with AI/LLM-powered products or agentic systems
Background working on large-scale, distributed, or data-driven applications
We offer competitive compensation, startup equity, health insurance, and additional benefits. The U.S. base salary range for this full-time, in-person role in New York is $150,000 - $300,000, plus equity and benefits. Our salary ranges are based on location, level, and role. Individual compensation is determined by experience, skills, and job-related knowledge.
We’ll make sure you’re fully supported with health insurance, a great tech setup, flexible time off, and plenty of in-office snacks. We offer competitive salary and equity packages, and take thoughtful consideration with every hire on our small, high-impact team.
Traversal is fully in-office, 5 days a week, based in New York near Madison Square Park. We have a collaborative, hard-working culture and are energized by building the future of AI-powered software maintenance.
Working here means owning meaningful parts of the product, having the flexibility to move fast, and learning constantly. This is a place to grow your career, make a real impact, and help define a new category of infrastructure software.
Flexible Work Hours
Flexible time off
Free Meals & Snacks
Plenty of in-office snacks
Health Insurance
Traversal is an AI-driven Site Reliability Engineering platform designed for enterprises, helping large companies troubleshoot, remediate, and prevent complex production incidents. By automating and enhancing reliability engineering, we enable teams to focus on more creative and impactful work.
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