Job Description
Our Mission
Reflection is a research lab making intelligence open and accessible for everyone to use, customize, and build on. We build open models that let anyone control their intelligence and help shape the future of AI. Our mission: make intelligence open and accessible to all.
About the Role
Reflection’s Compute Platform team specializes in keeping our compute layer healthy and highly available. We run a K8s-based platform distributed across multiple neo-clouds. We manage multi-cloud scheduling, node health, and performance debugging at this scale presents genuinely hard systems problems. More broadly, you will work closely with Reflection's training teams to co-design fault tolerance, node health checks, and remediation strategies.
What You’ll Do
Cluster Management: Build and maintain tools for the automatic remediation, topology-aware scheduling, capacity planning and rapid hardware debugging.
Platform Engineering: Design and iterate on our cluster management stack for workloads across large, multi-GPU fleets
Monitoring & Observability: Implement comprehensive cluster-wide monitoring, focusing on durability and active performance benchmarking.
Roadmap Execution: Prepare the infrastructure for next-generation GPU deployments and increasingly larger cluster sizes. Long-term, you will help own multi-cloud storage, petabyte-scale data replication, and GPU-to-GPU network performance.
What We’re Looking For
• Systems-level engineering experience with a focus on cluster-wide behavior and maintenance.
• Strong coding ability and a demonstrated focus on systems or GPU infrastructure.
• Deep GPU hardware knowledge beyond standard Kubernetes,e.g., familiarity with NCCL.
• Alignment with a K8s-first architecture
• Cloud storage expertise, specifically managing high-performance data products (like VAST) across multiple data centers, connecting those storage environments together and handling datasets and checkpointing at scale.
What We Offer:
We believe that to make intelligence open and accessible to all, you need to start at the foundation. Joining Reflection means building from the ground up as part of a talent-dense team. You will help define our future as a company, and help define the future of open foundational models.
We want you to do the most impactful work of your career with the confidence that you and the people you care about most are supported.
Top-tier compensation: Salary and equity structured to recognize and retain our talent globally.
Stock options: Everyone who joins and contributes to Reflection's success gets to share in the upside through stock options.
Health & wellness: Comprehensive medical, dental, vision, and life, with an annual wellness allowance.
Meals: Lunch and dinner are provided in the office daily.
Life & family: 22 weeks paid parental leave for all new birthing and non-birthing parents, including adoptive and surrogate journeys.
Vacation days: Unlimited paid time off in the U.S. and 30 days in the U.K.
Sponsorship support: We sponsor visas to help exceptional talent join our team and support long-term immigration pathways where applicable.
Team building: We have regular off-sites, happy hours, and team celebrations.
Required Skills
Categories
Frequently asked questions
Is the Member of Technical Staff - Compute Platform position at Reflection AI remote?
The Member of Technical Staff - Compute Platform role at Reflection AI is an on-site or hybrid position.
What type of employment is the Member of Technical Staff - Compute Platform role?
Reflection AI is hiring for a full-time Member of Technical Staff - Compute Platform position.
What skills are needed for the Member of Technical Staff - Compute Platform job at Reflection AI?
Key skills for this role include Kubernetes, GPU.
How do I apply for the Member of Technical Staff - Compute Platform position at Reflection AI?
You can apply for the Member of Technical Staff - Compute Platform role directly through Reflection AI's official application link provided on this page.
Similar AI jobs
Technical Product Manager – Storage
Nebius · fulltime
Machine Learning Engineer, Platform
Scale AI · fulltime
Software Engineer in Test - ML API Features
Cerebras · fulltime
Head of Forward Deployment Engineering - Tavily
Nebius · fulltime
Solution Architect
Domino Data Lab · fulltime
SOX IT Control Manager
Nebius · fulltime