![]() |
VOOZH | about |
Google BigQuery is a serverless, highly scalable, and cost-effective data warehouse designed to help organizations turn big data into actionable insights.
The CData SSIS Components enhance SQL Server Integration Services by enabling users to easily import and export data from various sources and destinations.
In this article, we explore the data type mapping considerations when exporting to BigQuery and walk through how to migrate JSON services to Google BigQuery using the CData SSIS Components for JSON and BigQuery.
| Google BigQuery Schema | CData Schema |
|---|---|
|
STRING, GEOGRAPHY, JSON, INTERVAL |
string |
|
BYTES |
binary |
|
INTEGER |
long |
|
FLOAT |
double |
|
NUMERIC, BIGNUMERIC |
decimal |
|
BOOLEAN |
bool |
|
DATE |
date |
|
TIME |
time |
|
DATETIME, TIMESTAMP |
datetime |
|
STRUCT |
See below |
|
ARRAY |
See below |
Google BigQuery supports two kinds of types for storing compound values in a single row, STRUCT and ARRAY. In some places within Google BigQuery, these are also known as RECORD and REPEATED types.
A STRUCT is a fixed-size group of values that are accessed by name and can have different types. The component flattens structs so their fields can be accessed using dotted names. Note that these dotted names must be quoted.
An ARRAY is a group of values with the same type that can have any size. The component treats the array as a single compound value and reports it as a JSON aggregate. These types may be combined such that a STRUCT type contains an ARRAY field, or an ARRAY field is a list of STRUCT values.
YEAR-MONTH DAY HOUR:MINUTE:SECOND.FRACTION
5-11 -10 -3:0:0.2.5
Follow the steps below to specify properties required to connect to JSON.
See the Getting Started chapter in the data provider documentation to authenticate to your data source: The data provider models JSON APIs as bidirectional database tables and JSON files as read-only views (local files, files stored on popular cloud services, and FTP servers). The major authentication schemes are supported, including HTTP Basic, Digest, NTLM, OAuth, and FTP. See the Getting Started chapter in the data provider documentation for authentication guides.
After setting the and providing any authentication values, set to more closely match the data representation to the structure of your data.
The property is the controlling property over how your data is represented into tables and toggles the following basic configurations.
See the Modeling JSON Data chapter for more information on configuring the relational representation. You will also find the sample data used in the following examples. The data includes entries for people, the cars they own, and various maintenance services performed on those cars.
π Configure the source connection (Salesforce is shown)With the JSON Source configured, we can configure the Google BigQuery connection and map the columns.
You can now run the project. After the SSIS Task has finished executing, data from your SQL table will be exported to the chosen table.
Download a free trial of the JSON SSIS Component to get started:
Download NowLearn more:
π JSON IconPowerful SSIS Source & Destination Components that allow you to easily connect SQL Server with live JSON web services through SSIS Workflows.
Use the JSON Data Flow Components to synchronize with JSON services. Perfect for data synchronization, local back-ups, workflow automation, and more!