Summarize this article with:


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.
- Inconsistent and inaccurate data
- Laborious and expensive
- Brittle and inflexible
- 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
Move Large Volumes, Fast
An Extensible Open-Source Standard
Full Control & Security
Fully Featured & Integrated
Enterprise Support with SLAs
What our users say

Andre Exner

"For TUI Musement, Airbyte cut development time in half and enabled dynamic customer experiences."

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."
Start by identifying the specific data you need from SonarCloud. Use SonarCloud's API to programmatically extract this data. You can make HTTP requests to the API endpoints to fetch data like project metrics, issues, and code quality reports. Store this data in a structured format such as JSON or CSV.
Once you have the data in a structured format, you may need to transform it to match the schema of your TiDB database. This might involve data cleaning, reformatting timestamps, or converting data types to ensure compatibility with TiDB's requirements.
Ensure that your TiDB database is up and running. If necessary, create a new database and tables to store the data from SonarCloud. Define the schema of the tables based on the transformed data, including the appropriate data types and constraints.
Before inserting the data into TiDB, decide on the method for data insertion. You can use TiDB's SQL client to write SQL queries for data insertion, or prepare SQL scripts that automate the insertion process. Ensure your SQL queries handle potential duplicates or conflicts.
Use the TiDB command-line interface or a client application to execute the SQL queries or scripts. This will insert the data into the appropriate tables in your TiDB database. Monitor the insertion process for any errors and ensure data integrity is maintained.
After the data has been inserted, verify its integrity by writing and executing SQL queries to check the consistency and accuracy of the data. Compare a sample of the data in TiDB with the original data from SonarCloud to ensure that no data has been lost or corrupted during the transfer.
If regular data transfers from SonarCloud to TiDB are needed, automate the process. You can write scripts or set up cron jobs to periodically extract data from SonarCloud, transform it, and insert it into TiDB. Ensure the automation handles any errors or exceptions gracefully.
By following these steps, you can manually move data from SonarCloud to TiDB without relying on third-party connectors or integrations, ensuring a smooth and controlled data transfer process.
FAQs
What is ETL?
ETL, an acronym for Extract, Transform, Load, is a vital data integration process. It involves extracting data from diverse sources, transforming it into a usable format, and loading it into a database, data warehouse or data lake. This process enables meaningful data analysis, enhancing business intelligence.
SonarCloud is a service that can be integrated into Azure DevOps via an extension. SonarCloud is a cloud-based solution to analyze code and that have also remaining code quality and security service to catch Security Vulnerabilities, Bugs, and Code. SonarCloud is an application that you can use to build robust and safe applications. One can use SonarCloud as a static analysis tool to analyze the code in the source graph repository for security vulnerabilities.
SonarCloud's API provides access to a wide range of data related to software development and code quality. The following are the categories of data that can be accessed through the API:
1. Code Quality Metrics: SonarCloud's API provides access to various code quality metrics such as code coverage, code duplication, code complexity, and code smells.
2. Security Vulnerabilities: The API provides information on security vulnerabilities in the code, including details on the type of vulnerability, its severity, and recommendations for remediation.
3. Technical Debt: The API provides information on technical debt in the code, including the estimated time required to fix the debt and the cost of fixing it.
4. Code Issues: The API provides information on code issues such as bugs, vulnerabilities, and code smells, along with details on their severity and recommendations for remediation.
5. Project and Repository Information: The API provides information on the project and repository, including details on the codebase, the number of lines of code, and the number of contributors.
6. Continuous Integration and Deployment: The API provides information on the status of continuous integration and deployment pipelines, including build and deployment success rates, and the time taken for each step.
Overall, SonarCloud's API provides developers with a comprehensive set of data to help them improve the quality of their code and streamline their development processes.
What is ELT?
ELT, standing for Extract, Load, Transform, is a modern take on the traditional ETL data integration process. In ELT, data is first extracted from various sources, loaded directly into a data warehouse, and then transformed. This approach enhances data processing speed, analytical flexibility and autonomy.
Difference between ETL and ELT?
ETL and ELT are critical data integration strategies with key differences. ETL (Extract, Transform, Load) transforms data before loading, ideal for structured data. In contrast, ELT (Extract, Load, Transform) loads data before transformation, perfect for processing large, diverse data sets in modern data warehouses. ELT is becoming the new standard as it offers a lot more flexibility and autonomy to data analysts.
What should you do next?
Hope you enjoyed the reading. Here are the 3 ways we can help you in your data journey:





