Software Engineer -- Infrastructure
Zivid · technology
unknown
Salary Range (USD)
Negotiable
Location
Oslo, Norway
Visa Support
Not mentioned
Funding Stage
Unknown
Job Responsibilities
- • Experience with on-premises infrastructure (servers or consumer hardware, storage, network)
- • Deep understanding of build pipelines, Docker, GitHub Actions/Jenkins/GitLab CI, and modern DevOps tooling
- • Python and Shell scripting, C/C++ is a plus
- • Familiarity with monitoring, scaling, and optimizing build/test infrastructure
- • Experience with virtualization/cluster management platforms (Proxmox) is a plus
- • Experience with mono-repos and handling LFS at scale
Required Skills
on-premises infrastructurebuild pipelinesDockerGitHub Actions/Jenkins/GitLab CIPythonShell scripting
Engineering Culture & Tech Stack
DockerGitHub ActionsJenkinsGitLab CI
Raw Post
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Software Engineer -- Infrastructure | Oslo, Norway | Onsite
Zivid is one of Norway's most ambitious new technology companies, serving the global robotics market with our 3D computer vision solutions. Our 3D cameras, serving as the eyes of robots, are essential in automating manufacturing and logistics worldwide. With nearly 100 employees, offices in six countries, and a diverse global customer base, Zivid is shaping the future of machine vision and robotics.
We are looking for a Software Engineer for our Infrastructure team to add capacity to our team.
- Experience with on-premises infrastructure (servers or consumer hardware, storage, network).
- Deep understanding of build pipelines, Docker, GitHub Actions/Jenkins/GitLab CI, and modern DevOps tooling.
- Python and Shell scripting, C/C++ is a plus.
- Familiarity with monitoring, scaling, and optimizing build/test infrastructure.
- Experience with virtualization/cluster management platforms (Proxmox) is a plus
- Experience with mono-repos and handling LFS at scale
Apply: https://zivid.bamboohr.com/careers/150?source=aWQ9MTE%3D
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