Backend and Devops Mid-Senior/Senior
Splash Tech- mid-senior to senior engineer with at least 5+ years of experience. - Mid-senior devops engineer, minimum 5+ years of experience.
Backend: Strong in backend development, ideally Java, but open to those willing to learn. DevOps experience is a plus, or a strong desire to learn it.You’ll be expected to do devops as part of this role. Devops: Your main role will be devops on AWS. Willingness to learn Java. Expected to have familiarity with terraform, kubernetes, ec2, ALBs, route53, cloudflare.
Our stack includes Java, Python, TypeScript, Angular, SQL, AWS, Kubernetes, Postgres, Trino, Flux, Flagger, and Terraform.
Our engineers must be able to think product-first, and take a task from idea to production, work across the full cycle. You must write your own code, AI assistance is fine, but you must be able to produce all your work independently. No Cursor. We are looking for candidates that can write SQL when needed, our approach when it comes to the DB is SQL first. We also value clear thinking and communication, you should be comfortable sketching simple architecture or flow diagrams (boxes and lines, nothing formal) to explain your ideas.
To apply, please send an email to jack[at]splash.tech with the subject “Backend Hackernews 2026” or “Devops Hackernews 2026”. Please send any git/bitbucket/source-forge project that represents your coding otherwise I’ll ask you to complete a small test project.
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