Systems Engineer, HPC (APAC)
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What the team is looking for.
We are looking for Systems Engineers / System Administrators to help design, operate, and scale the infrastructure behind Mistral's AI platforms.
This is a hands-on, hybrid role combining:
- Systems administration (operating and troubleshooting large-scale Linux environments)
- Systems engineering (automation, scalability, and performance improvements)
You'll work closely with infrastructure, HPC, and research teams to ensure our clusters and platforms run reliably at scale.
Core Systems Operations
- Operate and maintain large-scale Linux environments (bare metal, clusters, cloud)
- Monitor system health, troubleshoot incidents, and ensure high availability
- Support production and research workloads across multiple environments
Scaling Infrastructure
- Help scale clusters toward hundreds to thousands of nodes
- Work on systems handling petabyte-scale storage
- Improve performance, reliability, and resource utilisation
Automation & Engineering
- Automate operational tasks using tools like Python, Bash, Ansible, or Terraform
- Improve deployment, provisioning, and system lifecycle management
- Contribute to system design and architecture decisions
Cross-Functional Collaboration
- Work closely with: HPC / infrastructure teams, Platform / DevOps engineers, Research teams
- Act as a bridge between users and infrastructure
What We're Looking For
Must-have
- Strong Linux systems administration experience (core requirement)
- Experience working in large-scale environments: HPC clusters or cloud infrastructure
- Experience with Job schedulers (e.g. Slurm)
- Solid troubleshooting skills across systems, hardware, and networks
Nice-to-have (any of these)
- Containers / orchestration (e.g. Kubernetes)
- Storage systems (e.g. Ceph, Lustre, NFS)
- Networking fundamentals (Ethernet; InfiniBand is a plus)
- Infrastructure as Code / automation tooling
- GPU or AI/ML experience
Why Join Mistral?
- Impact: Play a pivotal role in scaling Mistral's cutting-edge AI infrastructure.
- Growth: Opportunity to shape data centre operations from the ground up in a high-growth startup environment.
- Collaboration: Work with a talented, cross-functional team passionate about AI and technology.
- Flexibility: Competitive compensation, benefits, and the chance to contribute to revolutionary projects.
- Linux systems administration
- large-scale environments
- Job schedulers
- troubleshooting
- Containers
- orchestration
- Storage systems
- Networking fundamentals
- Infrastructure as Code
- GPU or AI/ML experience
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