{"id":2589003,"date":"2023-11-22T09:09:06","date_gmt":"2023-11-22T14:09:06","guid":{"rendered":"https:\/\/platoai.gbaglobal.org\/platowire\/learn-about-the-new-integration-of-apache-hudi-support-with-aws-glue-crawlers-on-amazon-web-services\/"},"modified":"2023-11-22T09:09:06","modified_gmt":"2023-11-22T14:09:06","slug":"learn-about-the-new-integration-of-apache-hudi-support-with-aws-glue-crawlers-on-amazon-web-services","status":"publish","type":"platowire","link":"https:\/\/platoai.gbaglobal.org\/platowire\/learn-about-the-new-integration-of-apache-hudi-support-with-aws-glue-crawlers-on-amazon-web-services\/","title":{"rendered":"Learn about the new integration of Apache Hudi support with AWS Glue crawlers on Amazon Web Services"},"content":{"rendered":"

\"\"<\/p>\n

Amazon Web Services (AWS) has recently announced the integration of Apache Hudi support with AWS Glue crawlers, providing users with enhanced data lake capabilities. This integration brings together the power of Apache Hudi, an open-source data management framework, and AWS Glue, a fully managed extract, transform, and load (ETL) service.<\/p>\n

Apache Hudi is designed to simplify incremental data processing and data pipeline development in big data environments. It provides features like record-level insert, update, and delete operations, along with efficient change data capture mechanisms. With Apache Hudi, users can easily manage large datasets and perform real-time analytics on their data lakes.<\/p>\n

AWS Glue crawlers, on the other hand, are used to automatically discover and catalog metadata from various data sources. They analyze the data structure and generate a table schema that can be used for querying and analysis. AWS Glue crawlers eliminate the need for manual metadata management, making it easier for users to work with their data.<\/p>\n

The integration of Apache Hudi support with AWS Glue crawlers brings several benefits to users. Firstly, it allows for efficient data ingestion and processing in real-time. Apache Hudi’s change data capture capabilities enable users to capture and process only the changed data, reducing the overall processing time and cost.<\/p>\n

Secondly, the integration enables users to perform upsert operations on their data lakes. Upsert operations refer to the ability to insert new records or update existing records based on a unique identifier. This is particularly useful when dealing with streaming data or when there is a need to update existing records in the data lake.<\/p>\n

Furthermore, the integration simplifies the management of schema evolution. As data evolves over time, it is common for the schema to change. With Apache Hudi support in AWS Glue crawlers, users can easily handle schema changes without any manual intervention. The crawlers automatically detect schema changes and update the table schema accordingly.<\/p>\n

Another advantage of this integration is the ability to leverage AWS Glue’s data catalog. The data catalog provides a centralized repository for storing and managing metadata, making it easier for users to discover and analyze their data. With Apache Hudi support, users can now leverage the data catalog to query and analyze their Hudi datasets seamlessly.<\/p>\n

To get started with the integration, users need to create an AWS Glue crawler and specify the Apache Hudi dataset as the data source. The crawler will automatically discover the schema and create a table in the AWS Glue Data Catalog. Users can then use AWS Glue ETL jobs or other AWS services like Amazon Athena or Amazon Redshift Spectrum to query and analyze the data.<\/p>\n

In conclusion, the integration of Apache Hudi support with AWS Glue crawlers on Amazon Web Services brings enhanced data lake capabilities to users. It enables efficient data ingestion, real-time processing, upsert operations, and simplified schema evolution management. With this integration, users can leverage the power of Apache Hudi and AWS Glue to build scalable and cost-effective data pipelines for their big data analytics needs.<\/p>\n