ML Ops Support Engineer
Indexed description
- Mandatory Skills:
Responsibilities: Incident Management & Support:
- Provide L2 support for MLOps production environments, ensuring uptime and reliability.
- Troubleshoot ML pipelines, data processing jobs, and API issues.
- Monitor logs, alerts, and performance metrics using Dataiku, Prometheus, Grafana, or AWS tools such CloudWatch.
- Perform root cause analysis (RCA) and resolve incidents within SLAs.
- Escalate unresolved issues to L3 engineering teams when needed. Dataiku Platform Management:
- Manage Dataiku DSS workflows, troubleshoot job failures, and optimize performance.
- Monitor and support Dataiku plugins, APIs, and automation scenarios.
- Collaborate with Data Scientists and Data Engineers to debug ML model deployments.
- Perform version control and CI/CD integration for Dataiku projects. Deployment & Automation:
- Support CI/CD pipelines for ML model deployment (Bamboo, Bitbucket etc).
- Deploy ML models and data pipelines using Docker, Kubernetes, or Dataiku Flow.
- Automate monitoring and alerting for ML model drift, data quality, and performance.
- Monitor AWS-based ML workloads (SageMaker, Lambda, ECS, S3, RDS).
- Manage storage and compute resources for ML workflows.
- Support database connections, data ingestion, and ETL pipelines (SQL, Spark, Kafka).
- Ensure secure access control for ML models and data pipelines.
- Support audit, compliance, and governance for Dataiku and MLOps workflows.
- Respond to security incidents related to ML models and data access.
✅ Dataiku DSS: Strong experience in Dataiku workflows, scenarios, plugins, and APIs.
✅ Cloud Platforms: Hands-on experience with AWS ML services (SageMaker, Lambda, S3, RDS, ECS, IAM).
✅ CI/CD & Automation: Familiarity with GitHub Actions, Jenkins, or Terraform.
✅ Scripting & Debugging: Proficiency in Python, Bash, SQL for automation & debugging.
✅ Monitoring & Logging: Experience with Prometheus, Grafana, CloudWatch, or ELK Stack.
✅ Incident Response: Ability to handle on-call support, weekend shifts, and SLA-based issue resolution.
Preferred Qualifications
Containerization: Experience with Docker, Kubernetes, or OpenShift.
ML Model Deployment: Familiarity with TensorFlow Serving, MLflow, or Dataiku Model API.
Data Engineering: Experience with Spark, Databricks, Kafka, or Snowflake.
ITIL/DevOps Certifications: ITIL Foundation, AWS ML certifications; Dataiku certification Work Schedule & On-Call Requirements:
Rotational on-call support (including weekends and nights).
Shift-based monitoring for ML workflows and Dataiku jobs.
Flexible work schedule to handle production incidents and critical ML model failures.
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