Google Cloud Platform IAM (using Azure Functions) connector for Microsoft Sentinel
The Google Cloud Platform Identity and Access Management (IAM) data connector provides the capability to ingest GCP IAM logs into Microsoft Sentinel using the GCP Logging API. Refer to GCP Logging API documentation for more information.
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Connector attributes
Connector attribute | Description |
---|---|
Azure function app code | https://aka.ms/sentinel-GCPIAMDataConnector-functionapp |
Log Analytics table(s) | GCP_IAM_CL |
Data collection rules support | Not currently supported |
Supported by | Microsoft Corporation |
Query samples
All GCP IAM logs
GCP_IAM_CL
| sort by TimeGenerated desc
Prerequisites
To integrate with Google Cloud Platform IAM (using Azure Functions) make sure you have:
- Microsoft.Web/sites permissions: Read and write permissions to Azure Functions to create a Function App is required. See the documentation to learn more about Azure Functions.
- GCP service account: GCP service account with permissions to read logs is required for GCP Logging API. Also json file with service account key is required. See the documentation to learn more about required permissions, creating service account and creating service account key.
Vendor installation instructions
Note
This connector uses Azure Functions to connect to the GCP API to pull logs into Microsoft Sentinel. This might result in additional data ingestion costs. Check the Azure Functions pricing page for details.
(Optional Step) Securely store workspace and API authorization key(s) or token(s) in Azure Key Vault. Azure Key Vault provides a secure mechanism to store and retrieve key values. Follow these instructions to use Azure Key Vault with an Azure Function App.
Note
This data connector depends on a parser based on a Kusto Function to work as expected GCP_IAM which is deployed with the Microsoft Sentinel Solution.
STEP 1 - Configuring GCP and obtaining credentials
Make sure that Logging API is enabled.
(Optional) Enable Data Access Audit logs.
Create service account with required permissions and get service account key json file.
Prepare the list of GCP resources (organizations, folders, projects) to get logs from. Learn more about GCP resources.
STEP 2 - Choose ONE from the following two deployment options to deploy the connector and the associated Azure Function
IMPORTANT: Before deploying the data connector, have the Workspace ID and Workspace Primary Key (can be copied from the following), as well as Azure Blob Storage connection string and container name, readily available.
Option 1 - Azure Resource Manager (ARM) Template
Use this method for automated deployment of the data connector using an ARM Template.
Click the Deploy to Azure button below.
Select the preferred Subscription, Resource Group and Location.
Enter the Google Cloud Platform Resource Names, Google Cloud Platform Credentials File Content, Microsoft Sentinel Workspace Id, Microsoft Sentinel Shared Key
Mark the checkbox labeled I agree to the terms and conditions stated above.
Click Purchase to deploy.
Option 2 - Manual Deployment of Azure Functions
Use the following step-by-step instructions to deploy the data connector manually with Azure Functions (Deployment via Visual Studio Code).
1. Deploy a Function App
NOTE: You will need to prepare VS code for Azure function development.
Download the Azure Function App file. Extract archive to your local development computer.
Start VS Code. Choose File in the main menu and select Open Folder.
Select the top level folder from extracted files.
Choose the Azure icon in the Activity bar, then in the Azure: Functions area, choose the Deploy to function app button. If you aren't already signed in, choose the Azure icon in the Activity bar, then in the Azure: Functions area, choose Sign in to Azure If you're already signed in, go to the next step.
Provide the following information at the prompts:
a. Select folder: Choose a folder from your workspace or browse to one that contains your function app.
b. Select Subscription: Choose the subscription to use.
c. Select Create new Function App in Azure (Don't choose the Advanced option)
d. Enter a globally unique name for the function app: Type a name that is valid in a URL path. The name you type is validated to make sure that it's unique in Azure Functions.
e. Select a runtime: Choose Python 3.11.
f. Select a location for new resources. For better performance and lower costs choose the same region where Microsoft Sentinel is located.
Deployment will begin. A notification is displayed after your function app is created and the deployment package is applied.
Go to Azure Portal for the Function App configuration.
2. Configure the Function App
- In the Function App, select the Function App Name and select Configuration.
- In the Application settings tab, select + New application setting.
- Add each of the following application settings individually, with their respective string values (case-sensitive): RESOURCE_NAMES CREDENTIALS_FILE_CONTENT WORKSPACE_ID SHARED_KEY logAnalyticsUri (Optional)
- Use logAnalyticsUri to override the log analytics API endpoint for dedicated cloud. For example, for public cloud, leave the value empty; for Azure GovUS cloud environment, specify the value in the following format:
https://WORKSPACE_ID.ods.opinsights.azure.us
.
- Once all application settings have been entered, click Save.
Next steps
For more information, go to the related solution in the Azure Marketplace.