Note
Access to this page requires authorization. You can try signing in or changing directories.
Access to this page requires authorization. You can try changing directories.
Important
This feature is in Beta. Workspace admins can control access to this feature from the Previews page. See Manage Azure Databricks previews.
The managed Meta Ads connector in Lakeflow Connect allows you to ingest advertising data from Meta Ads into Azure Databricks.
Feature availability
| Feature | Availability |
|---|---|
| UI-based pipeline authoring | |
| API-based pipeline authoring | |
| Declarative Automation Bundles | |
| Incremental ingestion | Report tables support incremental ingestion. Resource tables are fully refreshed on each update. |
| Unity Catalog governance | |
| Lakeflow Jobs | |
| SCD type 2 | Supported for the ads, ad_sets, and campaigns tables using updated_time as the cursor column. Not supported for the other tables: ad_insights is an aggregated metric whose values Meta continuously refines within the attribution lookback window, ad_images is immutable in the source, and the remaining tables are fetched as full snapshots. |
| Column selection and deselection | You can select specific tables. |
| API-based row filtering | |
| Automated schema evolution: New and deleted columns | |
| Automated schema evolution: Data type changes | |
| Automated schema evolution: Column renames | |
| Automated schema evolution: New tables | N/A |
| Maximum number of tables per pipeline | 250 |
Authentication methods
| Authentication method | Availability |
|---|---|
| OAuth U2M | |
| OAuth M2M | |
| OAuth (manual refresh token) | |
| Basic authentication (username/password) | |
| Basic authentication (API key) | |
| Basic authentication (service account JSON key) |
What to know before you start
| Topic | Why it matters |
|---|---|
| Azure Databricks user persona | The workflow depends on your Azure Databricks user persona:
|
| Authentication method | The steps to create a connection depend on the authentication method you choose. |
| Interface | The steps to create a pipeline depend on the interface. |
| Ingestion frequency | The pipeline schedule depends on your latency and cost requirements. |
| Common patterns | Depending on your ingestion needs, the pipeline might use configurations like history tracking, column selection, and row filtering. Supported configurations vary by connector. See Feature availability. |
Start ingesting from Meta Ads
The following table provides an overview of the end-to-end Meta Ads ingestion flow, based on user type:
| User | Steps |
|---|---|
| Admin |
|
| Non-admin | Use any supported interface to create a pipeline from an existing connection. See Ingest data from Meta Ads. |