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DevOps Engineer

About 

NeuroHire is building an AI-first SaaS platform transforming how companies hire. Our product relies on scalable infrastructure, reliable deployments, and secure systems that support AI-driven workloads and growing customer usage.

We’re looking for a DevOps Engineer who sees infrastructure as a product — someone who enjoys automation, reliability, and building systems that scale without constant firefighting.

If you care about uptime, performance, and clean deployment pipelines, you’ll fit right in.

What You’ll Work On

At NeuroHire, DevOps is core to how we build and ship.

  • Design and maintain scalable cloud infrastructure for a growing SaaS platform
  • Build and optimize CI/CD pipelines for fast and reliable deployments
  • Automate infrastructure provisioning using Infrastructure as Code
  • Improve system reliability, availability, and performance
  • Monitor production systems and proactively resolve issues
  • Strengthen security practices across environments
  • Optimize cloud resources for cost and efficiency
  • Collaborate closely with engineering teams to improve developer experience
  • Support AI/ML workloads and data pipelines where required

What We’re Looking For

We value ownership, automation-first thinking, and reliability.

  • 3+ years of experience in DevOps, SRE, or infrastructure engineering
  • Strong hands-on experience with cloud platforms (AWS, GCP, or Azure)
  • Experience with CI/CD tools and deployment workflows
  • Proficiency in containerization and orchestration (Docker, Kubernetes)
  • Experience with Infrastructure as Code tools (Terraform, CloudFormation, etc.)
  • Strong scripting skills (Python, Bash, or similar)
  • Familiarity with monitoring/logging tools (Prometheus, Grafana, ELK, Datadog, etc.)
  • Understanding of networking, security, and system architecture
  • Comfortable working in a fast-paced startup environment

Nice to Have (Not Required)

  • Experience supporting AI/ML systems in production
  • Exposure to microservices or distributed systems
  • Experience in high-growth SaaS environments
  • Background in incident response and reliability engineering
  • Familiarity with security best practices and compliance standards