Job Title:
DevOps Engineer•
Data & AI Platforms Location:
Remote /
Hybrid Employment Type:
Contract / Full-Time Overview We are seeking a skilled DevOps Engineer
- Data & AI Platforms to support the automation, deployment, and reliability of modern data and AI environments.
This role is ideal for someone who can bridge traditional DevOps practices with the unique demands of data engineering, machine learning, and AI-driven systems. The ideal candidate will play a key role in enabling scalable, secure, and production-ready platforms for analytics and AI workloads. Responsibilities Build and maintain CI/CD pipelines for data platforms, analytics applications, ML models, and AI services Automate infrastructure provisioning and deployment workflows using infrastructure-as-code tools Support and manage cloud environments across AWS, Azure, GCP, or hybrid ecosystems Collaborate with data engineers, ML engineers, and platform teams to standardize deployment practices Implement monitoring, logging, alerting, and observability for pipelines and services Manage containerized workloads using Docker, Kubernetes, OpenShift, or similar platforms Enforce secure DevOps practices including secrets management, access control, and compliance checks Troubleshoot deployment issues, pipeline failures, and performance bottlenecks Required Qualifications Proven experience in DevOps supporting cloud, data, or AI/ML platforms Hands-on experience with CI/CD tools (Jenkins, GitHub Actions, GitLab CI, Azure DevOps, etc.) Strong experience with infrastructure-as-code tools (Terraform, CloudFormation, ARM/Bicep, Ansible) Working knowledge of cloud platforms (AWS, Azure, or GCP) Experience with containerization and orchestration (Docker, Kubernetes, OpenShift) Strong scripting skills (Python, Bash, PowerShell, etc.) Understanding of monitoring, logging, and production support practices Preferred Qualifications Experience supporting data pipelines, analytics platforms, or ML workflows Familiarity with MLOps tools and AI deployment pipelines Experience in enterprise or regulated environments Knowledge of security best practices in cloud and DevOps environments Must-Have Skills Experience building DevOps pipelines for data, analytics, or AI/ML environments Strong hands-on experience with cloud automation, CI/CD, containers, and infrastructure-as-code Ability to support production-grade systems with reliability and scalability For more details reach at resumes@navitassols.com DevOps Engineer — Data & AI Platforms
AIRLKLHV
Aurora, IL Remote From $40 an hour- Full-time From $40 an hour
Full-time Job Title:
DevOps Engineer
•
Data & AI Platforms Location:
Remote /
Hybrid Employment Type:
Contract / Full-Time Overview We are seeking a skilled DevOps Engineer
- Data & AI Platforms to support the automation, deployment, and reliability of modern data and AI environments.
This role is ideal for someone who can bridge traditional DevOps practices with the unique demands of data engineering, machine learning, and AI-driven systems. The ideal candidate will play a key role in enabling scalable, secure, and production-ready platforms for analytics and AI workloads. Responsibilities Build and maintain CI/CD pipelines for data platforms, analytics applications, ML models, and AI services Automate infrastructure provisioning and deployment workflows using infrastructure-as-code tools Support and manage cloud environments across AWS, Azure, GCP, or hybrid ecosystems Collaborate with data engineers, ML engineers, and platform teams to standardize deployment practices Implement monitoring, logging, alerting, and observability for pipelines and services Manage containerized workloads using Docker, Kubernetes, OpenShift, or similar platforms Enforce secure DevOps practices including secrets management, access control, and compliance checks Troubleshoot deployment issues, pipeline failures, and performance bottlenecks Required Qualifications Proven experience in DevOps supporting cloud, data, or AI/ML platforms Hands-on experience with CI/CD tools (Jenkins, GitHub Actions, GitLab CI, Azure DevOps, etc.) Strong experience with infrastructure-as-code tools (Terraform, CloudFormation, ARM/Bicep, Ansible) Working knowledge of cloud platforms (AWS, Azure, or GCP) Experience with containerization and orchestration (Docker, Kubernetes, OpenShift) Strong scripting skills (Python, Bash, PowerShell, etc.) Understanding of monitoring, logging, and production support practices Preferred Qualifications Experience supporting data pipelines, analytics platforms, or ML workflows Familiarity with MLOps tools and AI deployment pipelines Experience in enterprise or regulated environments Knowledge of security best practices in cloud and DevOps environments Must-Have Skills Experience building DevOps pipelines for data, analytics, or AI/ML environments Strong hands-on experience with cloud automation, CI/CD, containers, and infrastructure-as-code Ability to support production-grade systems with reliability and scalability For more details reach at resumes@navitassols.com