Senior Platform Engineer

November 21

Apply Now
Logo of Vultr

Vultr

Cloud Computing • Artificial Intelligence

Vultr is a cloud infrastructure provider offering a wide range of services including compute instances, storage, managed databases, and GPU clusters. The company focuses on providing high-performance and accessible cloud solutions, leveraging both AMD and NVIDIA technologies to power applications in artificial intelligence, high-performance computing, and general workloads. Vultr offers services that are designed to be simpler and more cost-effective than major competitors like AWS, GCP, and Azure, with global data center locations to support diverse deployment needs.

51 - 200 employees

Founded 2014

🤖 Artificial Intelligence

📋 Description

• Design, implement, and optimize GitLab CI/CD pipelines that power all internal software delivery. • Automate infrastructure deployments using Terraform and Puppet or Kubernetes to deliver consistent, repeatable environments. • Enhance internal development environments and tooling to streamline onboarding and local testing workflows. • Collaborate with various Engineering teams to ensure observability, reliability, and automation are built into every delivery pipeline. • Contribute to Puppet manifests, Helm charts and Terraform modules for core platform systems. • Work cross-functionally with developers, QA Engineering, and engineering teams to enable reliable, efficient deployments. • Author clear, maintainable documentation for CI/CD workflows, automation scripts, and infrastructure processes.

🎯 Requirements

• Experience with CI/CD systems, ideally GitLab, including pipeline templating, runners, and integrations. • Strong background in Infrastructure-as-Code, using Terraform and configuration management tools (Puppet and/or Ansible). • Proficiency in scripting and automation with Python, PHP, Bash, or similar languages. • Hands-on experience with Linux environments, especially Debian-based distributions. • Understanding of containerization and orchestration (Docker, Kubernetes). • Knowledge of version control and branching strategies in Git-based workflows. • Strong problem-solving and debugging skills, with a focus on performance and reliability. • Effective communication and documentation skills to support collaboration across teams. • Commitment to continuous improvement, automation, and DevOps best practices.

🏖️ Benefits

• Excellent Medical Benefits w/ 100% company paid premiums for employee only plan + 100% company paid dental & vision premiums • 401(k) plan that matches 100% up to 4% with immediate vesting • Professional Development Reimbursement of $2,500 each year • 11 Holidays + Paid Time Off Accrual + Rollover Plan • Increased PTO at 3 year & 10 year anniversary + 1 month paid sabbatical every 5 years + Anniversary Bonus each year • $500 first year remote office setup + $400 each following year for new equipment • Internet reimbursement up to $75 per month • Gym membership reimbursement up to $50 per month • Company paid Wellable subscription

Apply Now

Similar Jobs

November 21

Senior Platform Engineer designing and maintaining scalable systems for The Motley Fool. Focus on AWS infrastructure, CI/CD processes, and developer collaboration in a fast-paced environment.

🇺🇸 United States – Remote

💵 $180k - $210k / year

💰 $25M Private Equity Round on 2009-11

⏰ Full Time

🟠 Senior

🏗️ Platform Engineer

AWS

Cloud

Django

JavaScript

Kubernetes

Next.js

Terraform

November 21

Sysco

10,000+ employees

🤝 B2B

Senior Platform Owner leading platform engineering at Sysco, delivering cloud services for thousands of developers. Responsible for product vision, lifecycle management, and developer adoption strategies.

AWS

Cloud

Google Cloud Platform

Microservices

November 20

Platform Engineer optimizing API access and enhancing developer experience for a mission-driven healthcare company. Focusing on security, compliance, and AWS infrastructure management.

AWS

Docker

TypeScript

November 20

AI/ML Platform Engineer designing core infrastructure for machine learning at Whatnot. Collaborating with machine learning scientists to bring models into production.

Apache

AWS

Cloud

DynamoDB

EC2

ElasticSearch

Grafana

Kafka

Postgres

Python

Redis

November 20

AI/ML Engineer designing feature ingestion infrastructure for Whatnot’s AI and ML applications. Collaborating with machine learning scientists to enhance product experiences through real-time data.

Apache

AWS

Cloud

DynamoDB

EC2

ElasticSearch

Grafana

Kafka

Postgres

Python

Redis

Built by Lior Neu-ner. I'd love to hear your feedback — Get in touch via DM or support@remoterocketship.com