About us: Where elite tech talent meets world-class opportunities! At Xenon7, we work with leading enterprises and innovative startups on exciting, cutting edge projects that leverage the latest technologies across various domains of IT including Data, Web, Infrastructure, AI, and many others. Our expertise in IT solutions development and on-demand resources allows us to partner with clients on transformative initiatives, driving innovation and business growth. Whether it's empowering global organizations or collaborating with trailblazing startups, we are committed to delivering advanced, impactful solutions that meet today’s most complex challenges. About the client Location: Remote (India / UK) Experience: 5-7 years Employment Type: Full-time About the Role We are seeking a skilled Infrastructure & DevOps Engineer to support the development and deployment of AWS SageMaker Unified Studio, building on the existing SageMaker ecosystem. The role involves designing, automating, and maintaining cloud-native infrastructure that enables scalable, secure, and efficient machine learning workflows. You will collaborate with data scientists, ML engineers, and platform teams to ensure seamless integration of new features into Unified Studio, focusing on reliability, automation, and operational excellence. Key Responsibilities Design and implement cloud infrastructure to support SageMaker Unified Studio features. Automate deployment pipelines using CI/CD tools (CodePipeline, Jenkins, GitHub Actions, etc.). Manage infrastructure as code (IaC) with Terraform/CloudFormation. Ensure scalability, security, and compliance of ML workloads in AWS. Monitor and optimize SageMaker Studio environments, including notebooks, pipelines, and endpoints. Collaborate with ML engineers to integrate new Unified Studio capabilities into existing workflows. Implement observability solutions (CloudWatch, Prometheus, Grafana) for proactive monitoring. Troubleshoot infrastructure and deployment issues across distributed ML systems. Drive DevOps best practices for automation, testing, and release management. Qualifications Bachelor’s degree in Computer Science, Engineering, or related field. 3–5 years of experience in Infrastructure/DevOps roles. Strong expertise in AWS services: SageMaker, EC2, S3, IAM, CloudFormation, Lambda, EKS. Hands-on experience with CI/CD pipelines and automation frameworks. Proficiency in Terraform, CloudFormation, or Ansible for IaC. Solid understanding of Docker & Kubernetes for containerized ML workloads. Familiarity with ML workflows and SageMaker Studio (preferred). Strong scripting skills in Python, Bash, or Go. Experience with monitoring/logging tools (CloudWatch, ELK, Prometheus). Excellent problem-solving and communication skills. Preferred Skills Exposure to SageMaker Unified Studio or similar ML orchestration platforms. Knowledge of data engineering pipelines and ML lifecycle management. Experience working in financial services or regulated industries (bonus).
Get similar opportunities delivered to your inbox. Free, no account needed!
You're currently viewing 1 out of 32,673 available remote opportunities
🔒 32,672 more jobs are waiting for you
Access every remote opportunity
Find your perfect match faster
New opportunities every day
Never miss an opportunity
Join thousands of remote workers who found their dream job
Premium members get unlimited access to all remote job listings, advanced search filters, job alerts, and the ability to save favorite jobs.
Yes! You can cancel your subscription at any time from your account settings. You'll continue to have access until the end of your billing period.
We offer a 7-day money-back guarantee on all plans. If you're not satisfied, contact us within 7 days for a full refund.
Absolutely! We use Stripe for payment processing, which is trusted by millions of businesses worldwide. We never store your payment information.