Senior DevOps Engineer
Ecosmic · Aerospace
seniorRemote
Salary Range (USD)
$50k - $60k
Location
Italy
Visa Support
Not mentioned
Funding Stage
Unknown
Job Responsibilities
- • Aid the effort of unlocking on‑premises deployments of algorithms with Kubernetes
- • Contribute to the evolution of the platform
- • Help tackle new infrastructure challenges alongside a small software engineering team
Required Skills
KubernetesAWSTerraformPython
Engineering Culture & Tech Stack
PythonC++AWSRustKubernetes
Raw Post
Show original text
Ecosmic | Senior DevOps Engineer | Remote (Italy) | €50,000–€60,000
Ecosmic is on a mission to reduce threat exposure in space by building software for Space Situational Awareness. To achieve this, we built a team of flight dynamics engineers and computer scientists to build & package in-house algorithms into easy-to-use, reliable, and secure products. As an example, our platform recently allowed us to identify a series of close approaches in GEO involving Russia's Luch/Olymp-2 and a Western telecommunications satellite, possibly attributed to SIGINT activity.
We're hiring a Senior DevOps Engineer (mid-level candidates are welcome too!) to aid the effort of unlocking on-premises deployments of our algorithms with Kubernetes, and to contribute to the evolution of our platform.
Our stack includes Python for backend services and high-level algorithm tooling, C++ for performance-critical components, AWS for cloud infrastructure, and Terraform for IaC. We currently use managed serverless services, and we’re beginning a gradual migration from C++ to Rust for its reliability guarantees.
You’d join a team of three software engineers who love working in such a fantastic domain. I currently take care of most of the infrastructure work with the team, and we’re looking for someone who can help us tackle this new challenge.
Apply here, mentioning HN in the cover letter: https://careers.ecosmic.space/jobs/7609407-senior-devops-eng...
AI Risk Insights
No major risk signals detected.
Recent News
No recent updates
Data Source
Content parsed by LLM from Hacker News raw data. Confidence:HIGH