How to load data from Auth0 to Convex
Learn how to use Airbyte to synchronize your Auth0 data into Convex within minutes.


Building your pipeline or Using Airbyte
Airbyte is the only open source solution empowering data teams to meet all their growing custom business demands in the new AI era.
Building in-house pipelines
- Inconsistent and inaccurate data
- Laborious and expensive
- Brittle and inflexible
After Airbyte
- Reliable and accurate
- Extensible and scalable for all your needs
- Deployed and governed your way
Start syncing with Airbyte in 3 easy steps within 10 minutes



Take a virtual tour
Demo video of Airbyte Cloud
Demo video of AI Connector Builder
Setup Complexities simplified!
Simple & Easy to use Interface
Airbyte is built to get out of your way. Our clean, modern interface walks you through setup, so you can go from zero to sync in minutes—without deep technical expertise.
Guided Tour: Assisting you in building connections
Whether you’re setting up your first connection or managing complex syncs, Airbyte’s UI and documentation help you move with confidence. No guesswork. Just clarity.
Airbyte AI Assistant that will act as your sidekick in building your data pipelines in Minutes
Airbyte’s built-in assistant helps you choose sources, set destinations, and configure syncs quickly. It’s like having a data engineer on call—without the overhead.
What sets Airbyte Apart
Modern GenAI Workflows
Streamline AI workflows with Airbyte: load unstructured data into vector stores like Pinecone, Weaviate, and Milvus. Supports RAG transformations with LangChain chunking and embeddings from OpenAI, Cohere, etc., all in one operation.
Move Large Volumes, Fast
Quickly get up and running with a 5-minute setup that enables both incremental and full refreshes for databases of any size, seamlessly scaling to handle large data volumes. Our optimized architecture overcomes performance bottlenecks, ensuring efficient data synchronization even as your datasets grow from gigabytes to petabytes.
An Extensible Open-Source Standard
More than 1,000 developers contribute to Airbyte’s connectors, different interfaces (UI, API, Terraform Provider, Python Library), and integrations with the rest of the stack. Airbyte’s AI Connector Builder lets you edit or add new connectors in minutes.
Full Control & Security
Airbyte secures your data with cloud-hosted, self-hosted or hybrid deployment options. Single Sign-On (SSO) and Role-Based Access Control (RBAC) ensure only authorized users have access with the right permissions. Airbyte acts as a HIPAA conduit and supports compliance with CCPA, GDPR, and SOC2.
Fully Featured & Integrated
Airbyte automates schema evolution for seamless data flow, and utilizes efficient Change Data Capture (CDC) for real-time updates. Select only the columns you need, and leverage our dbt integration for powerful data transformations.
Enterprise Support with SLAs
Airbyte Self-Managed Enterprise comes with dedicated support and guaranteed service level agreements (SLAs), ensuring that your data movement infrastructure remains reliable and performant, and expert assistance is available when needed.
What our users say

Raman Singh
Predictable, straightforward pricing model that simplified budgeting and significantly reduced overall spend

Chase Zieman

“Airbyte helped us accelerate our progress by years, compared to our competitors. We don’t need to worry about connectors and focus on creating value for our users instead of building infrastructure. That’s priceless. The time and energy saved allows us to disrupt and grow faster.”

Rupak Patel
"With Airbyte, we could just push a few buttons, allow API access, and bring all the data into Google BigQuery. By blending all the different marketing data sources, we can gain valuable insights."
How to Sync to Manually
Step 1: Understand Auth0 Data Structure
Begin by thoroughly understanding the data structure within your Auth0 account. Identify the types of data you need to transfer, such as user profiles, authentication logs, and user metadata. Familiarize yourself with Auth0's Management API documentation to understand how to access and export this data programmatically.
Step 2: Set Up Auth0 Management API Access
Create a Machine-to-Machine application in your Auth0 dashboard to get API credentials. This involves generating a Client ID and Client Secret, which will be used to authenticate requests to the Auth0 Management API. Ensure that the required permissions are granted to access the necessary endpoints for data extraction.
Step 3: Export Data from Auth0
Develop a script or application using a programming language like Python or Node.js to interact with the Auth0 Management API. Use this script to fetch the data you need by calling relevant endpoints, such as `/api/v2/users` for user data. Handle pagination if there is a large amount of data, and ensure you manage API rate limits effectively.
Step 4: Prepare Data for Convex
Once you have the data exported, transform it into a format compatible with Convex. This might involve converting JSON data into a specific schema or structure required by Convex. Ensure data consistency and clean up any unnecessary fields to optimize the import process.
Step 5: Set Up Convex Environment
If you haven’t already, create an account and set up your environment in Convex. Define your data models within Convex to match the transformed data structure. This sets the foundation for a seamless data import process.
Step 6: Develop a Data Import Script for Convex
Create a script or application to import the prepared data into Convex. This might involve using Convex's REST API or a direct database connection, depending on the available options. Ensure that the script handles data insertion efficiently and can log any errors for troubleshooting.
Step 7: Verify Data Integrity and Accuracy
After the import process is complete, verify that all data has been accurately transferred and matches the original data from Auth0. Perform checks on random data samples and ensure that relationships and fields are correctly mapped. Address any discrepancies by re-importing or adjusting the data transformation process as necessary.