Google BigQuery
Learn how to setup an import job using Google BigQuery
Last updated
Learn how to setup an import job using Google BigQuery
Last updated
Copyright © 2023 Arize AI, Inc
Navigate to the 'Upload Data' page on the left navigation bar in the Arize platform. From there, select the 'Google BQ' card or navigate to the Data Warehouse tab to start a new table import job to begin a new table import job.
Storage Selection: Google BQ
Locate the Project ID, Dataset, and Table or View name of the table/view you would like to sync from Google BigQuery.
The GBQ Project ID is a unique identifier for a project. See here for steps on how to retrieve this ID.
The dataset and table name correspond to the path where your table is located
Add your Table ID Arize. Arize will automatically parse your Dataset, Table Name, and GCP Project ID.
Tag your dataset/table/view with the arize-ingestion-key
and the provided label value using the steps below. For more details, see docs on Adding labels to resources for BigQuery.
In Arize UI: Copy arize-ingestion-key
value
You can grant access to a single table or view or all the tables/views in a dataset.
Consider creating an authorized view if you don't want to grant access to the underlying tables, or granting access to each underlying table is too cumbersome.
In Google Cloud console: Navigate to the BigQuery SQL Workspace
Select the desired table or view, navigate to the Details tab and click "Edit Details". Under the Labels section, click "Add Labels". Add the following label:
Key as "arize-ingestion-key"
Value as the arize-ingestion-key value from the Arize UI
Grant the roles/bigquery.jobUser
role to our service account. Go to the IAM page and click "Grant Access"
Navigate to your table/view from the Bigquery SQL Explorer page.
Select "Share" and click on "Permissions"
Click "Add Principal"
Add our service account: fileimporter@production-269901.iam.gserviceaccount.com
as a BigQuery Data Viewer, and click "Save"
For a view, you must grant access to all underlying tables, so you must repeat these step for all the underlying tables.
For more details: see the official documentation for granting access here
In Google Cloud console: Navigate to the BigQuery SQL Workspace
Select the desired dataset, and click "Edit Details". Under the Labels section, click "Add Labels". Add the following label:
Key as "arize-ingestion-key"
Value as the arize-ingestion-key value copied from the Arize UI
Grant the roles/bigquery.jobUser
role to the Arize service account. Go to the IAM page and click "Grant Access"
Navigate to your dataset from the Bigquery SQL Explorer page.
Select "Sharing" and click on "Permissions"
Click "Add Principal"
Add Arize service account: fileimporter@production-269901.iam.gserviceaccount.com
as a BigQuery Data Viewer, and click "Save"
For additional details: see the official documentation for granting access here
Match your model schema to your model type and define your model schema through the form input or a json schema.
Learn more about Schema fields here.
Once finished, Arize will begin querying your table and ingesting your records as model inferences.
Once you fill in your applicable predictions, actuals, and model inputs, click 'Validate Schema' to visualize your model schema in the Arize UI. Check that your column names and corresponding data match for a successful import job.
Arize will run queries to ingest records from your table based on your configured refresh interval.
Arize will attempt a dry run to validate your job for any access, schema, or record-level errors. If the dry run is successful, you can proceed to create the import job.
From there, you will be taken to the 'Job Status' tab where you can see the status of your import jobs.
All active jobs will regularly sync new data from your data source with Arize. You can view the job details and import progress by clicking on the job ID, which reveals more information about the job.
To pause or edit your table schema, click on 'Job Options'.
Delete a job if it is no longer needed or if you made an error connecting to the wrong bucket. This will set your job status as 'deleted' in Arize.
Pause a job if you have a set cadence to update your table. This way, you can 'start job' when you know there will be new data to reduce query costs. This will set your job status as 'inactive' in Arize.
An import job may run into a few problems. Use the dry run and job details UI to troubleshoot and quickly resolve data ingestion issues.
If there is an error validating a file or table against the model schema, Arize will surface an actionable error message. From there, click on the 'Fix Schema' button to adjust your model schema.
If your dry run is successful, but your job fails, click on the job ID to view the job details. This uncovers job details such as information about the file path or query id, the last import job, potential errors, and error locations.
Within the Job Details section, you can select More Details on a specific query to view the start time and end time that was used in that query. The query start time represents the max value of the change_timestamp based on the previous query, and the query end time is the current day/time that the query was run. The query start time will then be updated after each query to reflect the current max change_timestamp
. This can help debug issues specifically related to the change_timestamp
field.
Once you've identified the job failure point, append the edited row to the end of your table with an updated change_timestamp value.