How to load data from Pendo to Convex
Learn how to use Airbyte to synchronize your Pendo data into Convex within minutes.


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How to Sync to Manually
Step 1: Export Data from Pendo
Start by logging into your Pendo account. Navigate to the Analytics section where you can access the data you wish to export. Use Pendo’s built-in data export functionality to download the data. Typically, you can export this data in CSV or Excel format. Ensure that the data exported contains all necessary fields for your needs.
Step 2: Prepare Data for Transformation
Once you have your data exported from Pendo, open the file in a spreadsheet application like Microsoft Excel or Google Sheets. Inspect the data to ensure it is complete and accurate. Clean the data by removing any unnecessary columns, fixing any inconsistent data entries, and ensuring the data types are consistent throughout the dataset.
Step 3: Define the Data Structure for Convex
Before importing data into Convex, define the data structure required by Convex. This includes understanding the database schema or data model that Convex expects. Document the fields and their types to ensure that your data matches these requirements.
Step 4: Transform Data to Match Convex Requirements
Use your spreadsheet application to transform the data to fit the Convex data model. You may need to rename columns, change data types, or combine fields to match the Convex schema. Ensure that every field in your dataset corresponds accurately to the fields defined in the Convex structure.
Step 5: Create a Script for Data Import into Convex
Write a script in a programming language such as Python, Node.js, or Ruby to import the data into Convex. Utilize Convex’s API to handle data import. Your script should read the transformed data file and make API calls to insert each data row into Convex. Handle any API authentication as required by Convex.
Step 6: Test Data Import Process
Before performing a full import, test your script with a small subset of data to ensure that everything works correctly. This helps to identify any issues with data types, field names, or API interactions. Verify that the data appears correctly in Convex after the test import.
Step 7: Perform Full Data Import and Validate
Once the test import is successful, run the script to perform a full data import. Monitor the process to ensure that all data is being transferred accurately. After the import, validate the data in Convex by cross-referencing with the original dataset from Pendo to ensure completeness and accuracy. If necessary, make adjustments and re-import any data as needed.