Enable job alerts via email!

[Hiring] Staff Site Reliability Engineer @Wikimedia Foundation

Wikimedia Foundation

United States

Remote

USD 129,000 - 201,000

Full time

30+ days ago

Boost your interview chances

Create a job specific, tailored resume for higher success rate.

Job summary

Join a forward-thinking organization as a Staff Site Reliability Engineer specializing in Machine Learning Infrastructure. In this remote role, you'll be responsible for designing and maintaining the foundational infrastructure that supports machine learning initiatives. Collaborate with diverse teams globally to enhance the reliability and scalability of ML systems, ensuring seamless workflows and high service quality. This innovative nonprofit organization values contributions from individuals worldwide and is committed to open-source principles. If you're passionate about technology and eager to make a difference, this opportunity is perfect for you.

Qualifications

  • 7+ years of experience in SRE, DevOps, or infrastructure engineering roles.
  • Expertise with on-premises infrastructure for ML workloads.
  • Strong communication skills for global collaboration.

Responsibilities

  • Design and implement ML infrastructure for training and deployment.
  • Collaborate with teams to identify infrastructure needs and resolve issues.
  • Monitor and optimize system performance and security.

Skills

Site Reliability Engineering
DevOps
Machine Learning Systems
Kubernetes
Docker
GPU Acceleration
Terraform
Ansible
Prometheus
Python

Tools

Helm
Argo CD
Grafana
ELK Stack
PyTorch
TensorFlow
scikit-learn

Job description

Mar 22, 2025 - Wikimedia Foundation is hiring a remote Staff Site Reliability Engineer. Salary: $129,347 to $200,824. Location: Americas, Europe, Africa.

The Wikimedia Foundation is looking for a Staff Site Reliability Engineer (SRE) focused on Machine Learning Infrastructure. You will join a distributed team working across UTC -5 to UTC +3 (Eastern Americas, Europe, and Africa) and report directly to the Director of Machine Learning, Chris Albon.

As a Staff SRE specializing in ML infrastructure, your primary responsibility is designing, developing, maintaining, and scaling the foundational infrastructure that enables Wikimedia's Machine Learning Engineers and Researchers to efficiently train, deploy, and monitor machine learning models in production.

You will be responsible for:

  • Designing and implementing robust ML infrastructure used for training, deployment, monitoring, and scaling of machine learning models.
  • Improving reliability, availability, and scalability of ML infrastructure, ensuring smooth and efficient workflows for internal ML engineers and researchers.
  • Collaborating closely with ML engineers, product teams, researchers, SREs, and the Wikimedia volunteer community to identify infrastructure requirements, resolve operational issues, and streamline the ML lifecycle.
  • Proactively monitoring and optimizing system performance, capacity, and security to maintain high service quality.
  • Providing expert guidance and documentation to teams across Wikimedia to effectively utilize the ML infrastructure and best practices.
  • Mentoring team members and sharing knowledge on infrastructure management, operational excellence, and reliability engineering.

Skills and Experience:

  • 7+ years of experience in Site Reliability Engineering (SRE), DevOps, or infrastructure engineering roles, with substantial exposure to production-grade machine learning systems.
  • Proven expertise with on-premises infrastructure for machine learning workloads (e.g., Kubernetes, Docker, GPU acceleration, distributed training systems).
  • Strong proficiency with infrastructure automation and configuration management tools (e.g., Terraform, Ansible, Helm, Argo CD).
  • Experience implementing observability, monitoring, and logging for ML systems (e.g., Prometheus, Grafana, ELK stack).
  • Familiarity with popular Python-based ML frameworks (e.g., PyTorch, TensorFlow, scikit-learn).
  • Strong English communication skills and comfort working asynchronously across global teams.

Qualities that are important to us:

  • Collaborative, proactive, and independently motivated.
  • Experienced working with diverse, remote teams.
  • Committed to open-source software and volunteer communities.
  • Systematic thinker focused on operational excellence and reliability.

Additionally, ideal candidates will excel in at least one of these areas:

  • Scalable ML Infrastructure: Deep understanding of scalable infrastructure design for high-performance machine learning training and inference workloads.
  • Reliability and Operations: Proven track record ensuring high reliability and robust operations of complex, distributed ML systems at scale.
  • Tooling and Automation: Demonstrated expertise creating robust tooling and automation solutions that simplify the deployment, management, and monitoring of ML infrastructure.

About the Wikimedia Foundation:

The Wikimedia Foundation is the nonprofit organization that operates Wikipedia and the other Wikimedia free knowledge projects. Our vision is a world in which every single human can freely share in the sum of all knowledge. We believe that everyone has the potential to contribute something to our shared knowledge, and that everyone should be able to access that knowledge freely.

The Wikimedia Foundation is a charitable, not-for-profit organization that relies on donations. We receive donations from millions of individuals around the world, with an average donation of about $15. We also receive donations through institutional grants and gifts.

The Wikimedia Foundation is a United States 501(c)(3) tax-exempt organization with offices in San Francisco, California, USA.

As an equal opportunity employer, the Wikimedia Foundation values having a diverse workforce and continuously strives to maintain an inclusive and equitable workplace. We encourage people with a diverse range of backgrounds to apply.

The Wikimedia Foundation is a remote-first organization with staff members including contractors based 40+ countries. Salaries at the Wikimedia Foundation are set in a way that is competitive, equitable, and consistent with our values and culture. The anticipated annual pay range of this position for applicants based within the United States is US$129,347 to US$200,824 with multiple individualized factors, including cost of living in the location, being the determinants of the offered pay.

*Please note that we are currently able to hire in the following countries: Australia, Austria, Bangladesh, Belgium, Brazil, Canada, Colombia, Costa Rica, Croatia, Czech Republic, Denmark, Egypt, Estonia, Finland, France, Germany, Ghana, Greece, India, Indonesia, Ireland, Israel, Italy, Kenya, Mexico, Netherlands, Nigeria, Peru, Poland, Singapore, South Africa, Spain, Sweden, Switzerland, Uganda, United Arab Emirates, United Kingdom, United States of America and Uruguay.

If you are a qualified applicant requiring assistance or an accommodation to complete any step of the application process due to a disability, you may contact us at recruiting@wikimedia.org or +1 (415) 839-6885.

Get your free, confidential resume review.
or drag and drop a PDF, DOC, DOCX, ODT, or PAGES file up to 5MB.

Similar jobs

Senior Site Reliability Engineer (Data Platforms SRE)

Wikimedia Foundation

Remote

USD 101,000 - 158,000

12 days ago

Senior Site Reliability Engineer - Wikimedia Enterprise

Wikimedia Foundation

Remote

USD 105,000 - 164,000

26 days ago

Senior Site Reliability Engineer (Database)

Wikimedia Foundation

Remote

USD 101,000 - 158,000

26 days ago

Staff Site Reliability Engineer

Wikimedia Foundation

Mississippi

Remote

USD 129,000 - 201,000

30+ days ago

Site Reliability Engineer (Network)

Wikimedia Foundation

Remote

USD 85,000 - 135,000

30+ days ago

Senior Site Reliability Engineer

Wikimedia Foundation

Remote

USD 105,000 - 164,000

30+ days ago

Staff Site Reliability Engineer

Wikimedia Foundation

Remote

USD 90,000 - 150,000

30+ days ago

Staff Site Reliability Engineer

Wikimedia Foundation

New York

On-site

USD 100,000 - 150,000

30+ days ago