Dataflow Gen1 vs Gen2 by taik18
In this video, taik18 discusses the major updates and differences between Dataflow Gen1 and Gen2. Microsoft Fabric provides an all-in-one analytics platform that streamlines the data flow process, allowing for a more efficient and unified data analysis experience.
With the recent updates to Dataflow Gen2, users can expect a more comprehensive and robust set of capabilities, such as improved scalability and performance, advanced data transformation options, and simplified data preparation workflows.
Throughout the video, taik18 delves into these key updates in detail, providing valuable insights into how they can enhance your data analysis efforts. So if you're looking to stay ahead of the curve and maximize the potential of your analytics platform, be sure to watch the entire video to gain a comprehensive understanding of Dataflow Gen1 and Gen2.
The video can be found at: https://www.youtube.com/watch?v=mkZsVL8IPCE
Published on:
Learn moreRelated posts
Optimizing Data Management with Gen1 Dataflow Settings - Microsoft Fabric | Episode 21
In this podcast episode, you'll dive deep into Gen1 Dataflow Settings and explore how you can optimize data management in Microsoft Fabric. Th...
Incrementally loading files from SharePoint to Azure Data Lake using Data Factory
If you're looking to enhance your data platform with useful information stored in files like Excel, MS Access, and CSV that are usually kept i...
Microsoft Fabric Dataflows Gen2 - Beginner
Are you a beginner looking to create powerful dataflows with Microsoft Fabric? Look no further! This video tutorial is designed to help you u...
Getting Started with Dataflow in Microsoft Fabric Data Factory
The Dataflow in Microsoft Fabric is an element for getting the data from the source, transforming it, and loading it into a destination. In th...
Refreshing a Power BI Dataset using Azure Data Factory
If you're looking for a more efficient way to refresh your Power BI dataset, this article has got you covered. While the built-in schedule in ...
Change Data Capture and Managed Airflow in Azure Data Factory | Azure Friday
"Change Data Capture and Managed Airflow in Azure Data Factory | Azure Friday" is a video focused on showcasing how Change Data Capture (CDC) ...
Streamline Your Big Data Projects Using Databricks Workflows
Databricks Workflows can be an incredibly handy tool for data engineers and scientists alike, streamlining the process of executing complex pi...
Dealing with ParquetInvalidColumnName error in Azure Data Factory
Azure Data Factory and Integrated Pipelines within the Synapse Analytics suite are powerful tools for orchestrating data extraction. It is a c...
Azure Data Factory (ADF) Quick Tip: Implement Easy Data Validations Using Assert Transform
Learn how to quickly and easily implement data validations in Azure Data Factory (ADF) with the Assert Transform feature. This brief but infor...