Machine Learning & Cloud Infra Engineer

Reposted 15 Days Ago
Be an Early Applicant
2 Locations
In-Office
Mid level
Artificial Intelligence • Information Technology • Software • Generative AI
The Role
The role involves building and maintaining ML and cloud infrastructure for training large-scale generative models. Responsibilities include designing GPU clusters, supporting distributed training, managing storage systems, and collaborating with researchers and engineers.
Summary Generated by Built In

SpAItial is pioneering the next generation of World Models, pushing the boundaries of generative AI, computer vision, and simulation. We are moving beyond 2D pixels to build models that natively understand the physics and geometry of our world. Our mission is to redefine how industries, from robotics and AR/VR to gaming and cinema, generate and interact with physically-grounded 3D environments.

We’re looking for bold, innovative individuals driven by a passion for tackling hard problems in generative 3D AI. You should thrive in an environment where creativity meets technical challenge, take pride in craft, and collaborate closely with a small team building frontier systems.

We are seeking a Machine Learning & Cloud Infra Engineer to build and own the infrastructure that powers our World Model research and productization. You will design, implement, and operate scalable training and data systems for large diffusion-based generative models, spanning GPU clusters, storage, orchestration, and reliable model serving. This role is hands-on and systems-focused, enabling researchers and engineers to train, evaluate, and deploy world-scale models efficiently and safely.

Responsibilities

  • Own and evolve the ML + cloud infrastructure that enables training and evaluation of massive foundation models.

  • Design and operate GPU clusters: Provision, scale, and maintain multi-node, multi-GPU training environments (on cloud and/or on-prem), including scheduling, quotas, and capacity planning.

  • Distributed training enablement: Support high-throughput training stacks (e.g., PyTorch DDP/FSDP, NCCL) and ensure performance, stability, and reproducibility across large runs.

  • Storage and data throughput: Build and optimize storage systems and networking for petabyte-scale datasets and high-bandwidth training (object storage, NVMe, shared filesystems, caching, data locality).

  • Containerization and orchestration: Package and deploy workloads with Docker and Kubernetes (or comparable systems); maintain infrastructure-as-code (Terraform) and reliable release processes.

  • Observability and reliability: Implement monitoring, logging, and alerting for cluster health, job performance, and cost; define SLOs and on-call/incident response practices.

  • Security and access: Manage secrets, IAM, and secure network boundaries for research and production systems.

  • Collaboration: Partner closely with ML researchers and engineers to unblock training, iterate on tooling, and improve developer experience.

  • Production pathways: Support model evaluation and serving infrastructure where needed, and ensure smooth transitions from research to deployable systems.

Key Qualifications:

  • 3+ years of professional experience in infrastructure, platform, or cloud engineering (ML infrastructure experience strongly preferred).

  • Hands-on experience with GPU compute and performance debugging (CUDA/NCCL concepts, GPU utilization, networking bottlenecks, profiling).

  • Strong experience operating cloud environments (AWS, GCP, or Azure), including networking, IAM, and cost management.

  • Proficiency with containers and orchestration (Docker, Kubernetes) and infrastructure-as-code (Terraform).

  • Strong scripting and automation skills (Python plus Bash/PowerShell).

  • Familiarity with distributed training and modern ML stacks (PyTorch; DDP/FSDP or comparable).

  • Experience with monitoring and observability tooling (Prometheus/Grafana, OpenTelemetry, ELK, or similar).

  • Experience building CI/CD for infra and ML workflows (e.g., CircleCI, GitHub Actions).

At SpAItial, we are committed to creating a diverse and inclusive workplace. We welcome applications from people of all backgrounds, experiences, and perspectives. We are an equal opportunity employer and ensure all candidates are treated fairly throughout the recruitment process.

Skills Required

  • 3+ years of professional experience in infrastructure, platform, or cloud engineering
  • Hands-on experience with GPU compute and performance debugging
  • Strong experience operating cloud environments (AWS, GCP, Azure)
  • Proficiency with containers and orchestration (Docker, Kubernetes)
  • Strong scripting and automation skills (Python plus Bash/PowerShell)
  • Familiarity with distributed training and modern ML stacks (PyTorch)
  • Experience with monitoring and observability tooling (Prometheus/Grafana, OpenTelemetry, ELK)
  • Experience building CI/CD for infra and ML workflows
Am I A Good Fit?
beta
Get Personalized Job Insights.
Our AI-powered fit analysis compares your resume with a job listing so you know if your skills & experience align.

The Company
HQ: London
14 Employees
Year Founded: 2024

What We Do

SpAItial is pioneering Spatial Foundation Models (SFMs), a groundbreaking AI paradigm designed to generate and reason about the appearance and physics of real and imagined environments. SFMs possess an intrinsic understanding of space-time, enabling transformative shifts in applications at the intersection of virtual and physical worlds. Unlike existing generative AI technologies such as LLMs, image, or video models, SFMs operate natively in physical space. This significantly advances their cognitive capabilities, which mimics human understanding. SFMs promise to revolutionize various applications across industries, from creating immersive virtual worlds for gaming and entertainment, to advancing CAD engineering and construction, to powering next-generation VR/AR experiences, and enabling sophisticated, physically-intelligent robotics.

Similar Jobs

Pricefx Logo Pricefx

Business Development Representative

Artificial Intelligence • Cloud • Enterprise Web • Information Technology • Software • Analytics • Business Intelligence
In-Office
Munich, Bayern, DEU
400 Employees
50K-55K Annually

Vercel Logo Vercel

Developer Success Engineer

Artificial Intelligence • Cloud • Software
Easy Apply
Remote or Hybrid
2 Locations

Navan Logo Navan

Consultant

Fintech • Information Technology • Payments • Productivity • Software • Travel • Automation
Easy Apply
Remote or Hybrid
Germany
3300 Employees

Zscaler Logo Zscaler

Director, Partner Sales

Cloud • Information Technology • Security • Software • Cybersecurity
Easy Apply
Remote or Hybrid
Germany
8697 Employees

Similar Companies Hiring

Golden Pet Brands Thumbnail
Digital Media • eCommerce • Information Technology • Marketing Tech • Pet • Retail • Social Media
El Segundo, California
178 Employees
Kepler  Thumbnail
Fintech • Software
New York, New York
6 Employees
Onshore Thumbnail
Artificial Intelligence • Fintech • Software • Financial Services
New York, New York
60 Employees

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account