CommonAI C.I.C.

AI Infrastructure Engineer (Storage)

🇬🇧 Cambridge, Royaume-Uni Sur site IT Temps plein Publié Avr 28, 2026
Mode de travail Sur site
Contrat Temps plein
Catégorie IT
Catégorie IT DevOps / SRE
Langue English
Publié 28 avril 2026
Dernière vérification 29 mai 2026
Contexte JobGrid

Résumé du poste par JobGrid

AI Infrastructure Engineer (Storage) at CommonAI C.I.C.: Cambridge, Royaume-Uni; Sur site; Temps plein; IT; DevOps / SRE. JobGrid adds normalized role facts, source context, and a path to the employer application page so candidates can compare the listing before applying.

  • Location and workplace: Cambridge, Royaume-Uni, Sur site
  • Role classification: IT, DevOps / SRE, Temps plein
  • Source freshness: checked by JobGrid on 2026-05-29.
  • Application path: candidates continue to the employer application page with non-personal referral tags.

CommonAI CIC is a non-profit membership organisation, founded on a belief in collaborative engineering for the safe and responsible development of foundational AI technologies. A place where AI startups, enterprises large and small, public sector bodies and academia can share resources and knowledge, to codevelop and grow businesses, fast.

We support technology-focused start ups, each with unique data management challenges, and are seeking an experienced Infrastructure Engineer to help them design, deploy and maintain high-performance storage systems for their AI and data-driven workloads. The successful candidate will combine deep experience architecting and managing distributed, cloud, and tiered storage solutions with strong Linux and automation skills.

In this role you will:

  • Design, implement, and maintain storage platforms that support large-scale AI and data pipelines
  • Manage distributed storage systems such as Ceph, Lustre, or BeeGFS.
  • Oversee tiered storage architectures, optimising data movement across high-performance, object, and archival tiers.
  • Ensure data integrity, availability, and security across on-premises and cloud environments.
  • Develop automation and monitoring tools using Bash, Python, or similar scripting languages.
  • Manage and secure container images and related storage used for AI and ML workloads.
  • Integrate storage systems with public cloud services (AWS, Azure, GCP) and hybrid environments.
  • Troubleshoot complex storage and data flow issues, collaborating closely with AI platform and infrastructure teams.
  • Contribute to ongoing architecture improvements, performance tuning, and capacity planning.