@Karl Andrén :
Databricks is a great option for data engineering, data modeling, and governance across multiple clouds. It supports integrations with multiple cloud providers, including Azure, AWS, and GCP, and provides a unified interface to access data from these clouds.
You can use Databricks to query data from both BigQuery and Azure data sources, and then use Looker or Power BI to visualize the results. Databricks can also be used to perform data processing and transformation on data from both clouds, allowing you to consolidate and aggregate data before sending it to Looker or Power BI.
To manage data across multiple clouds, you can use Databricks Delta Lake, which provides a unified data management layer that works across different cloud storage platforms. Delta Lake supports ACID transactions, schema enforcement, and versioning, making it ideal for managing large, complex data sets across different clouds.
Databricks also provides a number of tools for managing and monitoring data across multiple clouds. For example, the Databricks Workspace allows you to manage notebooks, data, and clusters across multiple cloud providers from a single location. Additionally, the Databricks Monitoring Console provides a unified view of cluster activity and resource usage across different clouds.
Overall, Databricks provides a powerful platform for managing data across multiple clouds, and it's worth exploring as a solution for your data engineering, data modeling, and governance needs.