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."
Begin by familiarizing yourself with the data structures and formats used by LaunchDarkly and your AWS Data Lake. LaunchDarkly typically uses JSON formats for its data, whereas AWS Data Lake can handle multiple formats. Understanding these structures is crucial for ensuring compatibility during data transfer.
Access your LaunchDarkly account and utilize its API to export data. You can use the LaunchDarkly REST API to fetch feature flags, user events, and other relevant data. Use the `curl` command or a custom script in Python or another language to pull data from the API and save it locally in JSON format.
After exporting the data, ensure it's in a format compatible with AWS. If necessary, convert JSON files to CSV or Parquet, which are better suited for data lakes. Use tools like Pandas in Python for conversion, ensuring data types and structures match what AWS Data Lake can ingest.
Log into your AWS Management Console and create an S3 bucket if you don't already have one. This bucket will serve as the storage location for your LaunchDarkly data. Configure the bucket policies and permissions to allow data upload and access as needed.
Transfer the prepared data files to your S3 bucket. Use the AWS CLI for efficient data upload by running commands like `aws s3 cp path/to/local/file s3://your-bucket-name/`. Ensure the filenames and folder structure in S3 are organized to facilitate easy access and processing.
Utilize AWS Glue to catalog the data you've uploaded to S3. AWS Glue can automatically discover and catalog data sources, which helps in defining your data schema and making it queryable in AWS Athena. Create a Glue Crawler to scan your S3 bucket and update the AWS Glue Data Catalog.
Once your data is cataloged, use AWS Lake Formation to manage and analyze it. Lake Formation provides a secure and straightforward way to manage access to your data and perform queries using AWS Athena. Set up appropriate permissions and start querying your data to extract insights and generate reports as needed.
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.
LaunchDarkly enables software engineers and non-engineers to collaborate more effectively on releases by giving them the visibility they need. LaunchDarkly is a SaaS platform for developers to manage feature flags. By decoupling feature rollout and code deployment, LaunchDarkly enables developers to test their code live in production, gradually release features to groups of users, and manage flags throughout their lifecycle. This allows developers to release better software with less risk.
LaunchDarkly's API provides access to a wide range of data related to feature flags and their usage. The following are the categories of data that can be accessed through the API:
1. Feature flags: Information about the feature flags themselves, including their names, descriptions, and targeting rules.
2. Environments: Details about the environments in which the feature flags are being used, such as their names and descriptions.
3. Users: Information about the users who are interacting with the feature flags, including their user IDs and attributes.
4. Events: Data related to the events triggered by the feature flags, such as impressions, clicks, and conversions.
5. Metrics: Metrics related to the performance of the feature flags, such as error rates, latency, and throughput.
6. Projects: Information about the projects in which the feature flags are being used, including their names and descriptions.
7. Teams: Details about the teams responsible for managing the feature flags, such as their names and contact information.
Overall, LaunchDarkly's API provides a comprehensive set of data that can be used to monitor and optimize the use of feature flags in software development.
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:





