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At Kestra, we’re on a mission to make orchestration and automation simpler for everyone. Our open-source platform helps teams manage complex workflows with confidence, and we’re already making a big impact in businesses around the world. We embrace modern development tools, including AI assistants and coding agents, and we encourage engineers to leverage them to move faster, explore ideas, and improve productivity. At Kestra, we’re passionate about solving real-world challenges through orchestration and automation. We move fast, we learn constantly, and we’re always looking for ways to improve.
Developer Advocate, Infrastructure Orchestration
Location
France
Posted
52 days ago
Salary
0
Seniority
Mid Level
Job Description
Developer Advocate, Infrastructure Orchestration
Kestra Technologies
Role Description We're hiring a Developer Advocate dedicated to infrastructure orchestration. You'll work directly with the engineering and product team building Kestra's infrastructure orchestration capabilities, ship content that shows infrastructure teams what's possible, and become Kestra's public voice in this area. Your main output is content: - Blog posts - Walkthroughs - Reference architectures - Integration guides - YouTube videos showing how Kestra fits into the rest of an infrastructure stack The demos you record cover the operations that infrastructure teams run every day, for example: - VM lifecycle automation - Server patching - Ansible playbook orchestration - vSphere / VMware / Proxmox / Nutanix integrations - Terraform-driven workflows You'll build a dedicated Kestra Academy course for the infrastructure audience, covering: - Fundamentals (modeling ops workflows in Kestra) - Advanced patterns (long-running approval-gated workflows, multi-cloud provisioning, ITSM integration, ticket-gated execution) Webinars are a regular part of the role. Conferences are a nice-to-have on top: when a talk gets accepted at an event like HashiConf, AnsibleFest, KubeCon, or FOSDEM, you'd represent Kestra there. We're a small company and CFP acceptance isn't guaranteed, so this is an opportunity when it happens, not a fixed quota. You'll engage with the infrastructure community in Slack, GitHub, and Reddit, answering questions and bringing feedback back to the product team so it lands on the roadmap. You'll also train our sales and solution engineering teams on infrastructure use cases, and join customer calls when deep technical context helps. Qualifications - 2+ years working on infrastructure automation - Hands-on experience with one or more infrastructure orchestration platforms (for example, vRA, RunDeck, Spacelift, Terraform Cloud, Red Hat AAP / Ansible Tower, Puppet Enterprise, SaltStack Enterprise) - Strong technical depth - you can build and demo non-trivial flows yourself, and you're comfortable in YAML and at least one scripting language (Python, Bash, Go) - Public speaking and presentation skills - comfortable on camera, in webinars, and at conferences - Strong technical writing for an engineer audience - you speak the language of infrastructure engineers using Kestra - Comfort with self-direction - we're looking for someone who can spot a gap and fill it without waiting for a detailed spec or approval - A clear point of view - opinions about what makes infrastructure automation tools good or bad, and the ability to articulate Kestra's strengths Requirements - A prior Developer Advocate, Solutions Engineer, or technical evangelist role at an infrastructure or DevOps platform vendor (nice to have) - Experience running a YouTube channel or technical podcast (nice to have) - An existing audience in the infrastructure orchestration community (nice to have) Benefits - Real ownership of Kestra's infrastructure orchestration content and course - Direct exposure to product strategy in an open-core company - A product used for mission-critical workloads - Competitive compensation, equity, and health insurance
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