Model Context Protocol (MCP) finally gives AI models a way to access the business data needed to make them really useful at work. CData MCP Servers have the depth and performance to make sure AI has access to all of the answers.
Try them now for free →Build AI/ML Models with Live Sage 300 Data using Dataiku
Connect Sage 300 Data with Dataiku using the CData JDBC Driver for Sage 300.
Dataiku is a data science and machine learning platform used for data preparation, analysis, visualization, and AI/ML model deployment, enabling collaborative and efficient data-driven decision-making. When paired with the CData JDBC Driver for Sage 300, Dataiku enhances data integration, preparation, real-time analysis, and reliable model deployment for Sage 300 data.
With built-in optimized data processing, the CData JDBC Driver offers unmatched performance for interacting with live Sage 300 data. When you issue complex SQL queries to Sage 300, the driver pushes supported SQL operations, like filters and aggregations, directly to Sage 300 and utilizes the embedded SQL engine to process unsupported operations client-side (often SQL functions and JOIN operations). Its built-in dynamic metadata querying allows you to work with and analyze Sage 300 data using native data types.
This article shows how you can easily integrate to Sage 300 using CData JDBC Driver for Sage 300 in Dataiku DSS (Data Science Studio) platform, allowing you to prepare the data and build custom AI/ML models.
Preparing the Dataiku DSS environment
In this section, we will explore how to set up Dataiku, as previously introduced, with Sage 300 data. Be sure to install Dataiku DSS (On-Prem version) for your preferred operating system, beforehand.
Install the CData JDBC Driver for Sage 300
First, install the CData JDBC Driver for Sage 300 on the same machine as Dataiku. The JDBC Driver will be installed in the following path:
C:\Program Files\CData[product_name] 20xx\lib\cdata.jdbc.sage300.jar
Connecting the JDBC Driver in Dataiku DSS
To use the CData JDBC driver in Dataiku, you must create a new SQL database connection and add the JDBC Driver JAR file in the DSS connection settings.
- Log into Dataiku DSS platform. It should open locally in your browser (e.g. localhost:11200)
- Click on Navigate to other sections of Dataiku menu on the top right section of the platform and select Administration.
- Select the Connections tab.
- In Connections, click on New Connections button.
- Now, scroll down and select Other SQL databases.
Generate a JDBC URL for connecting to Sage 300, beginning with jdbc:sage300: followed by a series of semicolon-separated connection string properties.
Sage 300 requires some initial setup in order to communicate over the Sage 300 Web API.
- Set up the security groups for the Sage 300 user. Give the Sage 300 user access to the
option under Security Groups (per each module required). - Edit both web.config files in the /Online/Web and /Online/WebApi folders; change the key AllowWebApiAccessForAdmin to true. Restart the webAPI app-pool for the settings to take.
- Once the user access is configured, click https://server/Sage300WebApi/ to ensure access to the web API.
Authenticate to Sage 300 using Basic authentication.
Connect Using Basic Authentication
You must provide values for the following properties to successfully authenticate to Sage 300. Note that the provider reuses the session opened by Sage 300 using cookies. This means that your credentials are used only on the first request to open the session. After that, cookies returned from Sage 300 are used for authentication.
- Url: Set this to the url of the server hosting Sage 300. Construct a URL for the Sage 300 Web API as follows: {protocol}://{host-application-path}/v{version}/{tenant}/ For example, http://localhost/Sage300WebApi/v1.0/-/.
- User: Set this to the username of your account.
- Password: Set this to the password of your account.
Built-in Connection String Designer
For assistance in constructing the JDBC URL, use the connection string designer built into the Sage 300 JDBC Driver. Either double-click the JAR file or execute the jar file from the command-line.
java -jar cdata.jdbc.sage300.jar
Fill in the connection properties and copy the connection string to the clipboard.
A typical JDBC URL is given below:
jdbc:sage300:User=SAMPLE;Password=password;URL=http://127.0.0.1/Sage300WebApi/v1/-/;Company=SAMINC;
- Set up the security groups for the Sage 300 user. Give the Sage 300 user access to the
- On the New SQL database (JDBC) connection screen, enter a name in the New connection name field and specify the basic parameters:
- JDBC Driver Class: cdata.jdbc.sage300.Sage300Driver
- JDBC URL: JDBC connection URL obtained in the previous step
- Driver jars directory: the folder path where the JAR file is installed on your system
Next, select the SQL dialect of your choice. Here, we have selected 'SQL Server' as the preferred dialect. Click on Create. If the connection is successful, a prompt will display, saying 'Connection OK'.
- The Data Catalog window will appear. Select the desired connection, catalog, and schema from the Connection to browse, Restrict to catalog, and Restrict to schema dropdowns, then click on List Tables. The Dataiku platform will list all the required tables.
- Select any table from the list and click Preview to view the table data. Click Close to exit the window.
Creating a new project
To prepare data flows, create dashboards, analyze the Sage 300 data, and build AI and ML models in the Dataiku DSS platform, you need to first create a new project.
- Select Projects from the Navigate to other sections of Dataiku menu.
- In the Projects screen, click New Project and select + Blank Project.
- In the New Project window, assign a Name and Project Key. Click Create. The new project dashboard opens up.
- Select Notebooks from the menu at the top of the project screen.
- Click on + Create Your First Notebook dropdown menu and select Write your own option.
- In the New Notebook window, select SQL.
- Now, select the required connection from the Connection dropdown and enter a name in the Notebook Name field.
Testing the connection
To test the Sage 300 connection and analyze the Sage 300 data, write a query in the query compiler and click Run. The queried/filtered Sage 300 data results will then appear on the screen.

Get Started Today
Download a free, 30-day trial of the CData JDBC Driver for Sage 300 to integrate with Dataiku, and effortlessly build custom AI/ML models from Sage 300 data.
Reach out to our Support Team if you have any questions.