Job Summary
Key Responsibilities
2. Design and manage CI/CD pipelines for ML projects utilizing Jenkins, GitLab CI/CD, CircleCI, and GitHub Actions to ensure seamless integration and delivery of machine learning models.
3. Develop infrastructure-as-code templates with Terraform and AWS CloudFormation to provision and manage scalable cloud environments for ML workloads.
4. Integrate monitoring and logging solutions using Prometheus, Grafana, ELK Stack, and Fluentd to enable real-time performance tracking and issue resolution for ML systems.
5. Lead the adoption of DevOps practices by configuring version control systems such as Git, GitHub, GitLab, and Bitbucket for collaborative development and reproducibility.
6. Serve as a technical SME for ML Ops, providing guidance on best practices, tool selection, and workflow optimization within the team.
7. Mentor and train team members on ML Ops tools, automation strategies, and cloud-native ML pipeline development to build technical capability and mitigate delivery risks.
8. Review and validate project deliverables to ensure alignment with client specifications, quality standards, and industry benchmarks.
9. Recommend and implement client-focused value creation initiatives by leveraging advanced ML Ops frameworks and industry best practices.
Skill Requirements
2. Excellent Skills In Python For Ml Pipeline Development And Automation.
3. Expert Knowledge Of Devops Tools Such As Jenkins, Gitlab Ci/Cd, Circleci, And Github Actions For Ci/Cd Orchestration.
4. Advanced Proficiency With Infrastructure Automation Using Terraform, Aws Cloudformation, And Ansible.
5. Excellent Understanding Of Cloud Platforms (Aws, Azure, Gcp) For Scalable Ml Deployments.
6. Expert In Monitoring And Logging Solutions Including Prometheus, Grafana, Elk Stack, And Fluentd.
7. Excellent Command Of Version Control Systems: Git, Github, Gitlab, Bitbucket.
8. Strong Scripting Abilities In Bash And Powershell For Automation Tasks.
9. Solid Experience In Designing, Implementing, And Optimizing Endtoend Ml Pipelines.
Other Requirements
2. AWS Certified Machine Learning � Specialty
3. - Google Professional Machine Learning Engineer
4. - HashiCorp Certified: Terraform Associat