Sana is an AI lab building superintelligence for work. We believe organizations can accomplish their missions faster when humans can effortlessly access knowledge, automate repetitive work, and learn anything with the help of agentic AI. As part of Workday, we are committed to building AI that augments humans. If that is a mission that excites you, you are in the right place.
About the roleYou will join the core team building the agent and search infrastructure that powers Sana’s mission to bring superintelligence to work. You will work at the intersection of agent architecture, context and tool engineering, search and retrieval, and production infrastructure, designing systems that reliably handle real-world enterprise complexity at scale.
We are hiring for two closely related roles:
AI Engineer, Agents
AI Engineer, Search (Agents)
What you will do
Architect multi-step planning, orchestration, and tool routing for agents
Implement code generation agents and sandboxed code execution
Engineer memory, state, and context packing and grounding strategies
Balance latency, quality, and cost controls for agent execution
Develop safe fallbacks, graceful degradation, and robust error handling
Collaborate with platform and search teams to deliver reusable agent infrastructure
Establish safety guarantees and measurable quality improvements in agent behavior
Your background looks something like
What success looks like
Agent architectures are robust, reliable, and ready for enterprise use
Context and tool engineering enable agents to act intelligently at scale
Clear metrics, automated evaluation, and continuous improvement in agent capabilities
Quality and safety are measurable and improving over time
Durable building blocks accelerate product teams and unlock new capabilities
What you will do
Scale search infrastructure to billions of documents in multi-tenant environments
Design hybrid retrieval that combines semantic vector search with traditional information retrieval techniques
Build ranking systems that learn from user behavior to improve relevance
Optimize the full search stack, including query understanding, indexing, and distributed retrieval
Establish observability frameworks to measure and improve search quality
Partner with product and design teams to shape the future of knowledge discovery for agents
What success looks like
Search scales to enterprise volumes with sub-second latency and high availability
Retrieval combines proven information retrieval techniques with modern agentic search
Quality metrics and regression detection catch issues before they impact users
You balance hands-on implementation with system design and mentorship
Performance bottlenecks are identified and resolved proactively across the stack
Agents consistently find and use the right context to serve users
We build on a simple modern stack optimized for both humans and AI:
Backend: TypeScript, Node.js
Frontend: TypeScript, React, Tailwind
Databases: Postgres, Redis
Cloud infrastructure: GCP, Kubernetes, Terraform
Help shape AI's future alongside brilliant minds from Notion, Dropbox, Slack, Databricks, Google, McKinsey, and BCG.
Competitive salary and compensation package
Swift professional growth in an evolving environment, supported by a culture of continuous feedback and mentorship from senior leaders.
Work with talented teammates across 5+ countries, and collaborate with customers globally
Regular team gatherings and events (recently in Italy and South Africa)
Top Skills
What We Do
Sana is an AI company building the next generation of knowledge tools. Our products are trusted by the world's most pioneering companies.
Backed by world-leading investors including NEA, Menlo Ventures, and EQT Ventures, Sana has raised over $130m to date.
We believe advancing human knowledge is the world's most important problem to solve.
Come and do your life’s work: sanalabs.com/careers
Offices
Stockholm
London
NYC
Products
Sana Learn — AI-native learning platform
Sana Agents — AI agents for every team







