Connect to Live CSV Data in PostGresSQL Interface through CData Connect AI

Dibyendu Datta
Dibyendu Datta
Lead Technology Evangelist
Create a live connection to CSV in CData Connect AI and connect to your CSV data from PostgreSQL.

There are a vast number of PostgreSQL clients available on the Internet. PostgreSQL is a popular interface for data access. When you pair PostgreSQL with CData Connect AI, you gain database-like access to live CSV data from PostgreSQL. In this article, we walk through the process of connecting to CSV data in Connect AI and establishing a connection between Connect AI and PostgreSQL using a TDS foreign data wrapper (FDW).

CData Connect AI provides a pure SQL Server interface for CSV, allowing you to query data from CSV without replicating the data to a natively supported database. Using optimized data processing out of the box, CData Connect AI pushes all supported SQL operations (filters, JOINs, etc.) directly to CSV, leveraging server-side processing to return the requested CSV data quickly.

Connect to CSV in Connect AI

CData Connect AI uses a straightforward, point-and-click interface to connect to data sources.

  1. Log into Connect AI, click Sources, and then click Add Connection
  2. Select "CSV" from the Add Connection panel
  3. Enter the necessary authentication properties to connect to CSV.

    Connecting to Local or Cloud-Stored (Box, Google Drive, Amazon S3, SharePoint) CSV Files

    CData Drivers let you work with CSV files stored locally and stored in cloud storage services like Box, Amazon S3, Google Drive, or SharePoint, right where they are.

    Setting connection properties for local files

    Set the URI property to local folder path.

    Setting connection properties for files stored in Amazon S3

    To connect to CSV file(s) within Amazon S3, set the URI property to the URI of the Bucket and Folder where the intended CSV files exist. In addition, at least set these properties:

    • AWSAccessKey: AWS Access Key (username)
    • AWSSecretKey: AWS Secret Key

    Setting connection properties for files stored in Box

    To connect to CSV file(s) within Box, set the URI property to the URI of the folder that includes the intended CSV file(s). Use the OAuth authentication method to connect to Box.

    Dropbox

    To connect to CSV file(s) within Dropbox, set the URI proprerty to the URI of the folder that includes the intended CSV file(s). Use the OAuth authentication method to connect to Dropbox. Either User Account or Service Account can be used to authenticate.

    SharePoint Online (SOAP)

    To connect to CSV file(s) within SharePoint with SOAP Schema, set the URI proprerty to the URI of the document library that includes the intended CSV file. Set User, Password, and StorageBaseURL.

    SharePoint Online REST

    To connect to CSV file(s) within SharePoint with REST Schema, set the URI proprerty to the URI of the document library that includes the intended CSV file. StorageBaseURL is optional. If not set, the driver will use the root drive. OAuth is used to authenticate.

    Google Drive

    To connect to CSV file(s) within Google Drive, set the URI property to the URI of the folder that includes the intended CSV file(s). Use the OAuth authentication method to connect and set InitiateOAuth to GETANDREFRESH.

  4. Click Save & Test
  5. Navigate to the Permissions tab in the Add CSV Connection page and update the User-based permissions.

Add a Personal Access Token

When connecting to Connect AI through the REST API, the OData API, or the Virtual SQL Server, a Personal Access Token (PAT) is used to authenticate the connection to Connect AI. It is best practice to create a separate PAT for each service to maintain granularity of access.

  1. Click on the Gear icon () at the top right of the Connect AI app to open the settings page.
  2. On the Settings page, go to the Access Tokens section and click Create PAT.
  3. Give the PAT a name and click Create.
  4. The personal access token is only visible at creation, so be sure to copy it and store it securely for future use.

With the connection configured and a PAT generated, you are ready to connect to CSV data from PostgreSQL.

Build the TDS Foreign Data Wrapper

The Foreign Data Wrapper can be installed as an extension to PostgreSQL, without recompiling PostgreSQL. The tds_fdw extension is used as an example (https://github.com/tds-fdw/tds_fdw).

  1. You can clone and build the git repository via something like the following view source:
    sudo apt-get install git
    git clone https://github.com/tds-fdw/tds_fdw.git
    cd tds_fdw
    make USE_PGXS=1
    sudo make USE_PGXS=1 install
    
    Note: If you have several PostgreSQL versions and you do not want to build for the default one, first locate where the binary for pg_config is, take note of the full path, and then append PG_CONFIG= after USE_PGXS=1 at the make commands.
  2. After you finish the installation, then start the server:
    sudo service postgresql start
    
  3. Then go inside the Postgres database
    psql -h localhost -U postgres -d postgres
    
    Note: Instead of localhost you can put the IP where your PostgreSQL is hosted.

Connect to CSV data as a PostgreSQL Database and query the data!

After you have installed the extension, follow the steps below to start executing queries to CSV data:

  1. Log into your database.
  2. Load the extension for the database:
    CREATE EXTENSION tds_fdw;
    
  3. Create a server object for CSV data:
    CREATE SERVER "CSV1" FOREIGN DATA WRAPPER tds_fdw OPTIONS (servername'tds.cdata.com', port '14333', database 'CSV1');
    
  4. Configure user mapping with your email and Personal Access Token from your Connect AI account:
    CREATE USER MAPPING for postgres SERVER "CSV1" OPTIONS (username '[email protected]', password 'your_personal_access_token' );
    
  5. Create the local schema:
    CREATE SCHEMA "CSV1";
    
  6. Create a foreign table in your local database:
    #Using a table_name definition:
    
    CREATE FOREIGN TABLE "CSV1".Customer  (      
    id varchar,      
    TotalDue varchar)      
    SERVER "CSV1"
    OPTIONS(table_name 'CSV.Customer', row_estimate_method 'showplan_all');
    
    #Or using a schema_name and table_name definition:
    
    CREATE FOREIGN TABLE "CSV1".Customer (      
    id varchar,      
    TotalDue varchar)      
    SERVER "CSV1"
    OPTIONS (schema_name 'CSV', table_name 'Customer', row_estimate_method 'showplan_all');
    
    #Or using a query definition:
    
    CREATE FOREIGN TABLE  "CSV1".Customer (
    id varchar,      
    TotalDue varchar)      
    SERVER "CSV1"
    OPTIONS (query 'SELECT * FROM CSV.Customer', row_estimate_method 'showplan_all');
    
    #Or setting a remote column name:
    
    CREATE FOREIGN TABLE "CSV1".Customer (
    id varchar,
    col2 varchar OPTIONS (column_name 'TotalDue'))
    SERVER "CSV1"
    OPTIONS (schema_name 'CSV', table_name 'Customer', row_estimate_method 'showplan_all');
    
  7. You can now execute read/write commands to CSV:
    SELECT id, TotalDue
    FROM "CSV1".Customer;
    

More Information & Free Trial

Now, you have created a simple query from live CSV data. For more information on connecting to CSV (and more than 200 other data sources), visit the Connect AI page. Sign up for a free trial and start working with live CSV data in PostgreSQL.

Ready to get started?

Learn more about CData Connect AI or sign up for free trial access:

Free Trial