Skip to main content

Microsoft Dynamics 365 connector

Preview

This feature is in Public Preview.

The managed Microsoft Dynamics 365 connector in Lakeflow Connect allows you to ingest data from Dynamics 365 into Databricks. The connector accesses data through Azure Synapse Link, which exports Dynamics 365 data to Azure Data Lake Storage Gen2.

What to know before you start

Topic

Why it matters

Databricks user persona

The workflow depends on your Databricks user persona:

  • Single-user: An admin user creates a Unity Catalog connection and an ingestion pipeline.
  • Multi-user: An admin user creates a connection for non-admin users to create pipelines with.

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 Dynamics 365

The following table provides an overview of the end-to-end Dynamics 365 ingestion flow, based on user type:

User

Steps

Admin

  1. Configure Dynamics 365 to enable ingestion from Databricks. See Configure data source for Microsoft Dynamics 365 ingestion.
  2. Either:

Non-admin

Use any supported interface to create a pipeline from an existing connection. See Ingest data from Microsoft Dynamics 365.

Feature availability

Feature

Availability

UI-based pipeline authoring

Green check icon Supported

API-based pipeline authoring

Green check icon Supported

Declarative Automation Bundles

Green check icon Supported

Incremental ingestion

Green check icon Supported

Unity Catalog governance

Green check icon Supported

Orchestration using Databricks Workflows

Green check icon Supported

SCD type 2

Green check icon Supported

API-based column selection and deselection

Green check icon Supported

API-based row filtering

Green check icon Supported

Automated schema evolution: New and deleted columns

Green check icon Supported

Automated schema evolution: Data type changes

Red X icon Not supported

Automated schema evolution: Column renames

Green check icon Supported

Treated as a new column (new name) and deleted column (old name).

Automated schema evolution: New tables

N/A

Maximum number of tables per pipeline

250

Authentication methods

Authentication method

Availability

OAuth U2M

Green check icon Supported

OAuth M2M

Red X icon Not supported

OAuth (manual refresh token)

Red X icon Not supported

Basic authentication (username/password)

Red X icon Not supported

Basic authentication (API key)

Red X icon Not supported

Basic authentication (service account JSON key)

Red X icon Not supported