Google BigQuery Connector for Talend StudioRead / write Google BigQuery data inside your app without coding using easy to use high performance API Connector In this article you will learn how to quickly and efficiently integrate Google BigQuery data in Talend Studio without coding. We will use high-performance Google BigQuery Connector to easily connect to Google BigQuery and then access the data inside Talend Studio. Let's follow the steps below to see how we can accomplish that! Google BigQuery Connector for Talend Studio is based on ZappySys API Driver which is part of ODBC PowerPack. It is a collection of high-performance ODBC drivers that enable you to integrate data in SQL Server, SSIS, a programming language, or any other ODBC-compatible application. ODBC PowerPack supports various file formats, sources and destinations, including REST/SOAP API, SFTP/FTP, storage services, and plain files, to mention a few. |
Connect to Google BigQuery in other apps
|
Create Data Source in ZappySys Data Gateway based on API Driver
-
Download and install ODBC PowerPack.
-
Search for gateway in start menu and Open ZappySys Data Gateway:
-
Go to Users Tab to add our first Gateway user. Click Add; we will give it a name tdsuser and enter password you like to give. Check Admin option and click OK to save. We will use these details later when we create linked server:
-
Now we are ready to add a data source. Click Add, give data source a name (Copy this name somewhere, we will need it later) and then select Native - ZappySys API Driver. Finally, click OK. And it will create the Data Set for it and open the ZS driver UI.
GoogleBigqueryDSN
-
When the Configuration window appears give your data source a name if you haven't done that already, then select "Google BigQuery" from the list of Popular Connectors. If "Google BigQuery" is not present in the list, then click "Search Online" and download it. Then set the path to the location where you downloaded it. Finally, click Continue >> to proceed with configuring the DSN:
GoogleBigqueryDSNGoogle BigQuery -
Now it's time to configure the Connection Manager. Select Authentication Type, e.g. Token Authentication. Then select API Base URL (in most cases, the default one is the right one). More info is available in the Authentication section.
User accounts represent a developer, administrator, or any other person who interacts with Google APIs and services. User accounts are managed as Google Accounts, either with Google Workspace or Cloud Identity. They can also be user accounts that are managed by a third-party identity provider and federated with Workforce Identity Federation. [API reference]
Steps how to get and use Google BigQuery credentials
Follow these steps on how to create Client Credentials (User Account principle) to authenticate and access BigQuery API in SSIS package or ODBC data source:
WARNING: If you are planning to automate processes, we recommend that you use a Service Account authentication method. In case, you still need to use User Account, then make sure you use a system/generic account (e.g.automation@my-company.com
). When you use a personal account which is tied to a specific employee profile and that employee leaves the company, the token may become invalid and any automated processes using that token will start to fail.Step-1: Create project
This step is optional, if you already have a project in Google Cloud and can use it. However, if you don't, proceed with these simple steps to create one:
-
First of all, go to Google API Console.
-
Then click Select a project button and then click NEW PROJECT button:
-
Name your project and click CREATE button:
-
Wait until the project is created:
- Done! Let's proceed to the next step.
Step-2: Enable Google Cloud APIs
In this step we will enable BigQuery API and Cloud Resource Manager API:
-
Select your project on the top bar:
-
Then click the "hamburger" icon on the top left and access APIs & Services:
-
Now let's enable several APIs by clicking ENABLE APIS AND SERVICES button:
-
In the search bar search for
bigquery api
and then locate and select BigQuery API: -
If BigQuery API is not enabled, enable it:
-
Then repeat the step and enable Cloud Resource Manager API as well:
- Done! Let's proceed to the next step.
Step-3: Create OAuth application
-
First of all, click the "hamburger" icon on the top left and then hit VIEW ALL PRODUCTS:
-
Then access Google Auth Platform to start creating an OAuth application:
-
Start by pressing GET STARTED button:
-
Next, continue by filling in App name and User support email fields:
-
Choose Internal option, if it's enabled, otherwise select External:
-
Optional step if you used
Internal
option in the previous step. Nevertheless, if you had to useExternal
option, then click ADD USERS to add a user: -
Then add your contact Email address:
-
Finally, check the checkbox and click CREATE button:
- Done! Let's create Client Credentials in the next step.
Step-4: Create Client Credentials
-
In Google Auth Platform, select Clients menu item and click CREATE CLIENT button:
-
Choose
Desktop app
as Application type and name your credentials: -
Continue by opening the created credentials:
-
Finally, copy Client ID and Client secret for the later step:
-
Done! We have all the data needed for authentication, let's proceed to the last step!
Step-5: Configure connection
-
Now go to SSIS package or ODBC data source and use previously copied values in User Account authentication configuration:
- In the ClientId field paste the Client ID value.
- In the ClientSecret field paste the Client secret value.
-
Press Generate Token button to generate Access and Refresh Tokens.
-
Then choose ProjectId from the drop down menu.
-
Continue by choosing DatasetId from the drop down menu.
-
Finally, click Test Connection to confirm the connection is working.
-
Done! Now you are ready to use Google BigQuery Connector!
Fill in all required parameters and set optional parameters if needed:
GoogleBigqueryDSNGoogle BigQueryUser Account [OAuth]https://www.googleapis.com/bigquery/v2Required Parameters UseCustomApp Fill-in the parameter... ProjectId (Choose after [Generate Token] clicked) Fill-in the parameter... DatasetId (Choose after [Generate Token] clicked and ProjectId selected) Fill-in the parameter... Optional Parameters ClientId ClientSecret Scope https://www.googleapis.com/auth/bigquery https://www.googleapis.com/auth/bigquery.insertdata https://www.googleapis.com/auth/cloud-platform https://www.googleapis.com/auth/cloud-platform.read-only https://www.googleapis.com/auth/devstorage.full_control https://www.googleapis.com/auth/devstorage.read_only https://www.googleapis.com/auth/devstorage.read_write RetryMode RetryWhenStatusCodeMatch RetryStatusCodeList 429|503 RetryCountMax 5 RetryMultiplyWaitTime True Job Location Redirect URL (Only for Web App) Service accounts are accounts that do not represent a human user. They provide a way to manage authentication and authorization when a human is not directly involved, such as when an application needs to access Google Cloud resources. Service accounts are managed by IAM. [API reference]
Steps how to get and use Google BigQuery credentials
Follow these steps on how to create Service Account to authenticate and access BigQuery API in SSIS package or ODBC data source:
Step-1: Create project
This step is optional, if you already have a project in Google Cloud and can use it. However, if you don't, proceed with these simple steps to create one:
-
First of all, go to Google API Console.
-
Then click Select a project button and then click NEW PROJECT button:
-
Name your project and click CREATE button:
-
Wait until the project is created:
- Done! Let's proceed to the next step.
Step-2: Enable Google Cloud APIs
In this step we will enable BigQuery API and Cloud Resource Manager API:
-
Select your project on the top bar:
-
Then click the "hamburger" icon on the top left and access APIs & Services:
-
Now let's enable several APIs by clicking ENABLE APIS AND SERVICES button:
-
In the search bar search for
bigquery api
and then locate and select BigQuery API: -
If BigQuery API is not enabled, enable it:
-
Then repeat the step and enable Cloud Resource Manager API as well:
- Done! Let's proceed to the next step and create a service account.
Step-3: Create Service Account
Use the steps below to create a Service Account in Google Cloud:
-
First of all, go to IAM & Admin in Google Cloud console:
-
Once you do that, click Service Accounts on the left side and click CREATE SERVICE ACCOUNT button:
-
Then name your service account and click CREATE AND CONTINUE button:
-
Continue by clicking Select a role dropdown and start granting service account BigQuery Admin and Project Viewer roles:
-
Find BigQuery group on the left and then click on BigQuery Admin role on the right:
-
Then click ADD ANOTHER ROLE button, find Project group and select Viewer role:
-
Finish adding roles by clicking CONTINUE button:
You can always add or modify permissions later in IAM & Admin. -
Finally, in the last step, just click button DONE:
-
Done! We are ready to add a Key to this service account in the next step.
Step-4: Add Key to Service Account
We are ready to add a Key (JSON or P12 key file) to the created Service Account:
-
In Service Accounts open newly created service account:
-
Next, copy email address of your service account for the later step:
-
Continue by selecting KEYS tab, then press ADD KEY dropdown, and click Create new key menu item:
-
Finally, select JSON (Engine v19+) or P12 option and hit CREATE button:
- Key file downloads into your machine. We have all the data needed for authentication, let's proceed to the last step!
Step-5: Configure connection
-
Now go to SSIS package or ODBC data source and configure these fields in Service Account authentication configuration:
- In the Service Account Email field paste the service account Email address value you copied in the previous step.
- In the Service Account Private Key Path (i.e. *.json OR *.p12) field use downloaded certificate's file path.
- Done! Now you are ready to use Google BigQuery Connector!
Fill in all required parameters and set optional parameters if needed:
GoogleBigqueryDSNGoogle BigQueryService Account [OAuth]https://www.googleapis.com/bigquery/v2Required Parameters Service Account Email Fill-in the parameter... Service Account Private Key Path (i.e. *.json OR *.p12) Fill-in the parameter... ProjectId Fill-in the parameter... DatasetId (Choose after ProjectId) Fill-in the parameter... Optional Parameters Scope https://www.googleapis.com/auth/bigquery https://www.googleapis.com/auth/bigquery.insertdata https://www.googleapis.com/auth/cloud-platform https://www.googleapis.com/auth/cloud-platform.read-only https://www.googleapis.com/auth/devstorage.full_control https://www.googleapis.com/auth/devstorage.read_only https://www.googleapis.com/auth/devstorage.read_write RetryMode RetryWhenStatusCodeMatch RetryStatusCodeList 429 RetryCountMax 5 RetryMultiplyWaitTime True Job Location Impersonate As (Enter Email Id) -
-
Once the data source connection has been configured, it's time to configure the SQL query. Select the Preview tab and then click Query Builder button to configure the SQL query:
ZappySys API Driver - Google BigQueryRead / write Google BigQuery data inside your app without coding using easy to use high performance API ConnectorGoogleBigqueryDSN -
Start by selecting the Table or Endpoint you are interested in and then configure the parameters. This will generate a query that we will use in Talend Studio to retrieve data from Google BigQuery. Hit OK button to use this query in the next step.
#DirectSQL SELECT * FROM bigquery-public-data.samples.wikipedia LIMIT 1000 /* try your own dataset or Some FREE dataset like nyc-tlc.yellow.trips -- 3 parts ([Project.]Dataset.Table) */
Some parameters configured in this window will be passed to the Google BigQuery API, e.g. filtering parameters. It means that filtering will be done on the server side (instead of the client side), enabling you to get only the meaningful datamuch faster . -
Now hit Preview Data button to preview the data using the generated SQL query. If you are satisfied with the result, use this query in Talend Studio:
ZappySys API Driver - Google BigQueryRead / write Google BigQuery data inside your app without coding using easy to use high performance API ConnectorGoogleBigqueryDSN#DirectSQL SELECT * FROM bigquery-public-data.samples.wikipedia LIMIT 1000 /* try your own dataset or Some FREE dataset like nyc-tlc.yellow.trips -- 3 parts ([Project.]Dataset.Table) */
You can also access data quickly from the tables dropdown by selecting <Select table>.AWHERE
clause,LIMIT
keyword will be performed on the client side, meaning that thewhole result set will be retrieved from the Google BigQuery API first, and only then the filtering will be applied to the data. If possible, it is recommended to use parameters in Query Builder to filter the data on the server side (in Google BigQuery servers). -
Click OK to finish creating the data source.
Read Google BigQuery data in Talend Studio
To read Google BigQuery data in Talend Studio, we'll need to complete several steps. Let's get through them all right away!
Create connection for input
- First of all, open Talend Studio
-
Create a new connection:
-
Select Microsoft SQL Server connection:
-
Name your connection:
-
Fill-in connection parameters and then click Test connection:
GoogleBigqueryDSN
-
If the List of modules not installed for this operation window shows up, then download and install all of them:
Review and accept all additional module license agreements during the process
-
Finally, you should see a successful connection test result at the end:
Add input
-
Once we have a connection to ZappySys Data Gateway created, we can proceed by creating a job:
-
Simply drag and drop ZappySys Data Gateway connection onto the job:
-
Then create an input based on ZappySys Data Gateway connection:
-
Continue by configuring a SQL query and click Guess schema button:
-
Finish by configuring the schema, for example:
Add output
We are ready to add an output. From Palette drag and drop a tFileOutputDelimited output and connect it to the input:
Run the job
Finally, run the job and integrate your Google BigQuery data:
Actions supported by Google BigQuery Connector
Learn how to perform common Google BigQuery actions directly in Talend Studio with these how-to guides:
- [Dynamic Endpoint]
- Create Dataset
- Delete Dataset
- Delete Table
- Get Query Schema (From SQL)
- Get Table Schema
- insert_table_data
- List Datasets
- List Projects
- List Tables
- post_[Dynamic Endpoint]
- Read Data using SQL Query -OR- Execute Script (i.e. CREATE, SELECT, INSERT, UPDATE, DELETE)
- Read Table Rows
- Generic Request
- Generic Request (Bulk Write)
Conclusion
In this article we showed you how to connect to Google BigQuery in Talend Studio and integrate data without any coding, saving you time and effort. It's worth noting that ZappySys API Driver allows you to connect not only to Google BigQuery, but to any Java application that supports JDBC (just use a different JDBC driver and configure it appropriately).
We encourage you to download Google BigQuery Connector for Talend Studio and see how easy it is to use it for yourself or your team.
If you have any questions, feel free to contact ZappySys support team. You can also open a live chat immediately by clicking on the chat icon below.
Download Google BigQuery Connector for Talend Studio Documentation
More integrations
Other connectors for Talend Studio
Other application integration scenarios for Google BigQuery
How to connect Google BigQuery in Talend Studio?
How to get Google BigQuery data in Talend Studio?
How to read Google BigQuery data in Talend Studio?
How to load Google BigQuery data in Talend Studio?
How to import Google BigQuery data in Talend Studio?
How to pull Google BigQuery data in Talend Studio?
How to push data to Google BigQuery in Talend Studio?
How to write data to Google BigQuery in Talend Studio?
How to POST data to Google BigQuery in Talend Studio?
Call Google BigQuery API in Talend Studio
Consume Google BigQuery API in Talend Studio
Google BigQuery Talend Studio Automate
Google BigQuery Talend Studio Integration
Integration Google BigQuery in Talend Studio
Consume real-time Google BigQuery data in Talend Studio
Consume real-time Google BigQuery API data in Talend Studio
Google BigQuery ODBC Driver | ODBC Driver for Google BigQuery | ODBC Google BigQuery Driver | SSIS Google BigQuery Source | SSIS Google BigQuery Destination
Connect Google BigQuery in Talend Studio
Load Google BigQuery in Talend Studio
Load Google BigQuery data in Talend Studio
Read Google BigQuery data in Talend Studio
Google BigQuery API Call in Talend Studio