Location
United States
United States
Salary
(Yearly)
(Yearly)
(Yearly)
(Yearly)
(Yearly)
Salary information is not provided for this position.
Undisclosed
-
Category
MLOps / DevOps Engineer
Date posted
July 15, 2025
Job type
Experience level
Mid level

Job Description

About xAI

xAI’s mission is to create AI systems that can accurately understand the universe and aid humanity in its pursuit of knowledge. Our team is small, highly motivated, and focused on engineering excellence. This organization is for individuals who appreciate challenging themselves and thrive on curiosity. We operate with a flat organizational structure. All employees are expected to be hands-on and to contribute directly to the company’s mission. Leadership is given to those who show initiative and consistently deliver excellence. Work ethic and strong prioritization skills are important. All engineers and researchers are expected to have strong communication skills. They should be able to concisely and accurately share knowledge with their teammates.

About the Role

As a Data Center Site Reliability Engineer (SRE) at xAI, you will play a pivotal role in ensuring the reliability, scalability, and performance of our state-of-the-art data center infrastructure, including the Colossus supercluster in Memphis—the world's largest AI training cluster with over 100,000 liquid-cooled Nvidia GPUs and plans for expansion to 1 million. This infrastructure powers advanced AI workloads, massive-scale model training, and products like Grok, enabling breakthroughs in understanding the universe. You will collaborate with cross-functional teams to automate operations, enhance observability, and maintain high availability for large-scale distributed systems. This is a hands-on technical position in a dynamic environment, offering the opportunity to tackle complex challenges at the intersection of AI, data center operations, and software reliability.

Key Responsibilities

  • Maintain and improve the reliability and uptime of xAI’s on-premises and cloud-based data center environments, including high-density GPU clusters for AI training.
  • Design, implement, and manage monitoring, logging, and alerting systems (e.g., Prometheus, Grafana, PagerDuty).
  • Develop and maintain infrastructure-as-code (Pulumi, Terraform) and continuous deployment pipelines (Buildkite, ArgoCD).
  • Participate in on-call rotations, respond to incidents, perform root cause analysis, and drive post-mortem processes.
  • Analyze system performance, forecast capacity needs, and optimize resource utilization for massive AI/ML workloads.
  • Collaborate with hardware, networking, and software engineering teams to design and implement resilient, scalable solutions, such as RDMA fabrics and liquid-cooling systems.
  • Create and maintain documentation and standard operating procedures.
  • Contribute to the efficiency of AI training pipelines by identifying and mitigating bottlenecks in compute, storage, and networking at unprecedented scales.

Required Qualifications

  • Bachelor’s degree in Computer Science, Engineering, or a related technical field (or equivalent experience).
  • 5+ years in site reliability engineering, data center operations, or large-scale infrastructure management.
  • Expert-level knowledge of Kubernetes (on-prem and cloud), infrastructure-as-code tools (Pulumi, Terraform), and CI/CD systems (Buildkite, ArgoCD).
  • Proficiency in at least one systems programming language (Rust, C++, Go) and strong scripting/automation skills.
  • Deep understanding of monitoring and observability technologies.
  • Strong troubleshooting skills across hardware, networking, and distributed software systems.
  • Proven experience with incident response, including on-call rotations, rapid incident resolution, root cause analysis, and implementation of preventative measures.
  • Excellent communication and documentation skills, with the ability to share knowledge concisely and accurately.

Preferred Qualifications

  • Experience supporting AI/ML workloads or high-density compute environments, including large-scale GPU clusters and HPC systems.
  • Familiarity with data center electrical, cooling, and network systems, such as liquid-cooling and high-bandwidth interconnects.
  • Certifications in SRE, Kubernetes, or data center operations.
  • Experience with both on-premises and cloud infrastructure at scale.

xAI is an equal opportunity employer.

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Companies size
11-50
employees
Founded in
2008
Headquaters
Alberic, Spain
Country
Spain
Industry
Civil Engineering
Social media
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