Experience administering Databricks workspaces in a cloud environment - AWS |
8 | Required | Strong understanding of Databricks cluster configuration, job scheduling, and workspace management. |
8 | Required | Experience managing user access, roles, and permissions using IAM, SCIM, and role-based access control (RBAC). |
8 | Required | Proficiency with Apache Spark concepts, including performance tuning and troubleshooting. |
8 | Required | Experience integrating Databricks with cloud storage services (e.g., S3,) |
8 | Required | Experience implementing and enforcing cluster policies and workspace governance standards. |
8 | Required | Familiarity with Databricks SQL, notebooks, and job orchestration. |
8 | Required | Experience monitoring platform health, performance, and availability. |
8 | Required | Understanding of data security, encryption, and compliance requirements. |
8 | Required | Experience with DevOps or automation tools (Terraform, CI/CD pipelines, scripting). |
4 | Preferred | Experience administering Databricks in an enterprise or government environment. |
4 | Preferred | Experience with Databricks Unity Catalog for data governance and access control. |
4 | Preferred | Knowledge of cost management and optimization for Databricks workloads. |
4 | Preferred | Experience supporting AI/ML workloads using Databricks ML and MLflow. |
4 | Preferred | Familiarity with data lake and lakehouse architectures. |
4 | Preferred | Knowledge of Python, SQL, or Scala for administration and troubleshooting. |