Learn how to build robust ETL pipelines using Python, Docker, and Airbyte. A guide for data engineers covering setup, implementation, & best practices.
Learn to build efficient data pipelines using Airbyte, dbt, and DuckDB. A comprehensive guide for data engineers with practical implementation steps.
Learn how to build a robust Large Language Model application using ChromaDB for vector storage and Airbyte for data integration, simplifying your AI development workflow.
Discover how to build efficient knowledge management systems using PyAirbyte and vector databases for streamlined data access.
Automate customer support analytics with Zendesk, Airbyte, and OpenAI integration. Unlock insights and enhance support efficiency.
Streamline healthcare data integration with Airbyte's AI Assistant and FHIR API connector. Simplify workflows and improve insights.
Discover financial market monitoring using Airbyte and Polygon.io integration. Streamline data for actionable insights
Build a social media sentiment analyzer using Airbyte and Twitter API. Simplify data integration and analyze trends effectively.
Learn how to build a GitHub documentation chatbot with PyAirbyte and PG Vector for seamless data retrieval and enhanced user experience.
Build a quick full-stack AI application which arranges your Asana tasks for you in order of priority using MIlvus, Airbyte Cloud, and Next.js.
Learn how to install and set up Qdrant, a powerful vector database for AI applications. This beginner's guide walks you through basic operations to manage and query embeddings.
Learn how to use PyAirbyte to extract product-related data from Shopify, followed by a series of transformations and analyses to derive meaningful insights from this data.
Learn how to add custom sources built from the Connector Builder to PyAirbyte, Airbyte's open-source Python library.
Learn how to build an end-to-end Retrieval-Augmented Generation (RAG) pipeline. We will extract data from Google Drive using Airbyte Cloud to load it on Snowflake Cortex.
Learn how to build an end-to-end RAG pipeline, extracting data from Microsoft Sharepoint using Airbyte Cloud, loading it on Milvus (Zilliz), and then using LangChain to perform RAG on the stored data.
Learn how to build an end-to-end RAG pipeline, extracting data from Salesforce using Airbyte Cloud to load it on Weaviate and set up a RAG there.
Learn how to build a full data stack using Airbyte Cloud, Terraform, and dbt to move data from Notion -> BigQuery -> Pinecone for interacting with fetched data through an LLM and form a full fledged RAG.
Configure an error analysis stack utilizing Sentry, Airbyte, Snowflake, dbt, and Dagster.
Learn how to build an end-to-end RAG pipeline, extracting data from S3 using Airbyte Cloud to load it on Vectara and set up a RAG there.
Learn how to easily set up a data stack using Shopify, Airbyte, dbt, BigQuery, and Dagster. Pull Shopify data, put it into BigQuery, and play around with it using dbt and Dagster.
Easily set up a data stack using Airbyte, dbt, BigQuery, and Dagster to pull weather data from WeatherStack API, put it into BigQuery, and play around with it using dbt and Dagster.
Build a Low-Latency Data Availability solution that syncs data from an existing Postgres database to a BigQuery dataset using Airbyte, using Change Data Capture (CDC) and Postgres Write Ahead Log (WAL).
Build an "ELT simplified Stack" repository to pull Github data, put it into BigQuery, and play around with it using dbt and Prefect.
Build a full data stack that creates a table snapshot from a database and stores it in an Amazon S3 bucket as a JSONL file using Airbyte and then loads the snapshot file to a preferred data warehouse.
Learn how to use data stored in Airbyte's Vectara destination to perform RAG.
This is a demo of how you can leverage PyAirbyte to load the source data and read it from PyAirbyte cache, read its progress, create graphs and more.
Lean how to use data stored in Airbyte's Snowflake Cortex destination to perform RAG by building a Product Assistant—an AI chatbot capable of answering product-related questions using data from multiple Airbyte-related sources.
Learn how to use PyAirbyte to extract data from Google Analytics 4, followed by a series of transformations and analyses to derive meaningful insights from this data.
Learn how to use the PyAirbyte library to read records from Github, converts those records to documents, which can then be passed to LangChain for RAG.
Learn how to use PyAirbyte to extract cryptocurrency data from CoinAPI.io, followed by a series of transformations and analyses to derive meaningful insights from this data.
Airbyte is an open-source data integration engine that helps you consolidate your data in your data warehouses, lakes and databases.
© 2022Airbyte, Inc.

SOC2 Type II

Hi there! Did you know our Slack is the most active Slack community on data integration? It’s also the easiest way to get help from our vibrant community.