Member of Technical Staff, Backend Engineering at Radical Numerics
San Francisco, California, United States -
Full Time


Start Date

Immediate

Expiry Date

23 Jun, 26

Salary

0.0

Posted On

25 Mar, 26

Experience

5 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Backend Services, APIs, Distributed Systems, Python, Go, Java, Rust, Software Design, API Design, Scalability, Reliability, Observability, Monitoring, Tracing, Data Modeling, Concurrency

Industry

Research Services

Description
Member of Technical Staff, Backend Engineering Location: SF Bay Area or Tokyo, Japan Type: Full-time About Radical Numerics Radical Numerics is an AI lab bringing the rigor of distributed systems, model architecture, and numerics research to the challenges of biology. We are building the infrastructure needed to unlock scaling on vast biological sequence, structure, and image datasets so that biological world models become a reality. Our team introduced hybrid architectures for million-token context windows, enabling work toward AI-designed whole genomes and gene-editing tools. We believe the next generation of biological foundation models will require not only better models and training systems, but also robust backend infrastructure that makes those systems usable in practice. This role focuses on the backend services and APIs that connect our research platform to internal tools, external products, and real-world scientific workflows. About the Role As a Member of Technical Staff, Backend Engineering at Radical Numerics, you will design, build, and operate backend services that power APIs and platform capabilities across the company. You will help create the systems that make model capabilities accessible, reliable, and easy to integrate, whether for internal researchers, external users, or downstream scientific applications. This is a hands-on role for someone who wants to own backend systems end-to-end. You should be excited to move from API design to implementation to deployment to observability, while working closely with researchers and product-minded engineers to ensure the systems we build are useful, scalable, and maintainable. What You’ll Do Build backend services for APIs and platform products. Design and implement backend systems that expose model capabilities, data services, and internal platform functionality through clean, reliable APIs. Own services end-to-end. Take backend systems from design docs through implementation, testing, deployment, monitoring, and iteration based on real usage patterns and operational feedback. Design for scalability and reliability. Build services that can handle growing traffic, large datasets, and demanding internal workloads while maintaining correctness, low latency, and operational robustness. Develop developer-friendly APIs and abstractions. Create clear, well-documented interfaces that make it easy for internal teams and external users to build on top of our systems. Improve backend architecture and platform foundations. Analyze existing systems, identify bottlenecks, and improve the maintainability, fault tolerance, and self-serve usability of our backend stack. Work closely with research and product teams. Partner with model researchers, infrastructure engineers, and application teams to understand requirements and translate them into backend systems that support real workflows. Build observability and operational tooling. Develop logging, monitoring, tracing, and alerting systems that help us understand service behavior in production and respond quickly when things go wrong. What We’re Looking For Strong track record building production backend systems, distributed systems, APIs, or data services. Proficiency in at least one backend language such as Python, Go, Java, or Rust, along with strong software design fundamentals. Experience designing and operating production APIs, including interface design, authentication, versioning, reliability, and monitoring. Ability to own services end-to-end: architecture, implementation, testing, deployment, and operational support. Strong understanding of scalable systems design, including data modeling, concurrency, failure modes, and performance tradeoffs. Excellent written and verbal communication skills, especially the ability to collaborate across engineering, research, and scientific teams. Nice to Have Experience with event-driven systems, streaming infrastructure, or workflow orchestration. Experience with SQL, OLTP/OLAP systems, or data platforms that support analytics or model-facing applications. Experience building self-serve internal platforms, multi-tenant services, or control-plane-style systems. Familiarity with ML or AI product infrastructure, including telemetry, metadata services, inference-facing APIs, or evaluation-related backend systems. Experience with security, governance, auditability, data retention, or privacy-aware backend design. Background in distributed systems, infrastructure, computational biology, or another quantitative technical field. Why Radical Numerics Help build the backend platform that makes multimodal biological world models usable in research and product settings. Work in an environment that combines distributed systems, model architecture, and numerics research with real biological applications. Join a collaborative culture that values rigor, creativity, and cross-disciplinary partnership across AI labs, biotechs, hospital systems, and research institutes. Competitive compensation, comprehensive benefits, and support for continual learning.
Responsibilities
The role involves designing, building, and operating backend services that power APIs and platform capabilities, ensuring model capabilities are accessible, reliable, and easy to integrate for various users. Responsibilities include owning services end-to-end from design through deployment and iteration, while focusing on scalability and reliability.
Loading...