Design and build scalable distributed systems for machine learning infrastructure. Optimize infrastructure for performance and reliability. Work closely with ML researchers and product engineers to bring new models into production.
Key Highlights
Key Responsibilities
Technical Skills Required
Benefits & Perks
Nice to Have
Job Description
ML Infrastructure / Systems Engineer
Seattle, WA (5 days onsite)
Compensation: $250K โ $450K + equity
Relocation support and visa sponsorship available
About:
Our client is a well-funded AI startup building real-time visual conversational AI that allows users to interact with AI through live video and voice experiences. They recently raised a $50M Series A and are scaling their engineering team ahead of their first major product release. The founding team includes researchers and engineers from leading AI labs and technology companies, and they are building a small, highly technical team focused on developing core AI systems and infrastructure.
Looking to advance your Development & Programming career with relocation support? Explore Development & Programming Jobs with Relocation Packages that include comprehensive packages to help you move and settle in your new role.
What they are looking for
Our client is seeking engineers who enjoy building production-grade infrastructure for machine learning systems. The ideal candidate has experience designing scalable distributed systems, optimizing infrastructure for performance and reliability, and supporting machine learning workloads in production environments.
What you will work on
- Building and scaling the serving infrastructure for multimodal AI models
- Optimizing inference systems for latency, throughput, and cost
- Architecting real-time systems that support long-lived video and audio connections
- Designing distributed data pipelines for large-scale processing and evaluation
- Managing and optimizing GPU clusters using Kubernetes and Terraform
- Building CI/CD, evaluation, and deployment systems for safe and reliable model iteration
- Working closely with ML researchers and product engineers to bring new models into production
Discover our full range of relocation jobs with comprehensive support packages to help you relocate and settle in your new location.
What they are looking for in candidates
- 2+ years of experience building machine learning infrastructure or distributed systems
- Strong experience building or operating large-scale data pipelines
- Experience supporting production services, including monitoring, incident response, and capacity planning
- Proficiency in Python and either Rust or Go
- Strong experience with Kubernetes, Terraform, and cloud infrastructure
- Experience working in fast-paced engineering environments
Interested in relocating to United State? Check out our comprehensive Relocation Jobs in United State page with detailed relocation packages and benefits.
Experience with real-time systems, multimedia models, or GPU inference infrastructure is a strong plus.
This is a full-time role based in Seattle, and candidates should be open to working onsite five days per week.
Similar Jobs
Explore other opportunities that match your interests
GenAI Engineer
Abridge
Autonomy Software Engineer Lead
Skydio