Job Summary
Key Responsibilities
2. Support deployment automation of ML models utilizing Jenkins, GitLab CI/CD, and AWS CloudFormation, ensuring consistent and reliable delivery.
3. Monitor ML workflows and infrastructure using Prometheus and Grafana, identifying and escalating operational issues for timely resolution.
4. Participate in documentation of ML pipeline enhancements and operational procedures, aligning with CMMi and client standards.
5. Collaborate within the team to gather requirements and present data using ELK Stack and Fluentd, supporting day-to-day operational needs.
6. Assist in version control and code management using Git and GitHub, contributing to the maintenance of ML Ops repositories.
Skill Requirements
2. Experience With Python For Scripting And Ml Pipeline Development.
3. Good Familiarity With Devops Tools Including Jenkins, Gitlab Ci/Cd, And Aws Cloudformation.
4. Good Knowledge Of Monitoring Tools Such As Prometheus And Grafana.
5. Experience With Version Control Systems Like Git And Github.
6. Familiarity With Ml Pipeline Frameworks Such As Mlflow And Kubeflow Pipelines.
7. Basic Understanding Of Infrastructure As Code Tools Like Terraform And Ansible.
Other Requirements
2. AWS Certified DevOps Engineer � Associate
3. - Certified Kubernetes Administrator (CKA