Azure Data Factory Tutorial Components by taik18 Azure Synapse Pipelines
This is a tutorial from Taik18 on Azure Data Factory components and Azure Synapse Pipelines. Through this tutorial, you will learn about the different components that make up Azure Data Factory and how they work together to enable data integration solutions. Taik18 highlights the key capabilities of Data Factory including data movement, data transformation, and data orchestration.
Furthermore, the tutorial explores Azure Synapse Pipelines and how it works in conjunction with Data Factory to deliver powerful big data processing services. By following along with the tutorial, you can enrich your knowledge in the data integration space and enhance your ability to develop effective data-driven solutions within Azure.
So hit that like button, share with your colleagues, and subscribe to Taik18's channel to stay up to date with the latest news and tutorials in Azure Data Factory and beyond.
The tutorial video can be accessed via the following link: https://www.youtube.com/watch?v=xOyQ3zC53c0
Published on:
Learn moreRelated posts
What’s new with Azure Repos?
We thought it was a good time to check in and highlight some of the work happening in Azure Repos. In this post, we’ve covered several recent ...
Part 1: Building Your First Serverless HTTP API on Azure with Azure Functions & FastAPI
Introduction This post is Part 1 of the series Serverless Application Development with Azure Functions and Azure Cosmos DB, where we explore ...
Announcing GPT 5.2 Availability in Azure for U.S. Government Secret and Top Secret Clouds
Today, we are excited to announce that GPT-5.2, Azure OpenAI’s newest frontier reasoning model, is available in Microsoft Azure for U.S. Gover...
Sync data from Dynamics 365 Finance & Operations Azure SQL Database (Tier2) to local SQL Server (AxDB)
A new utility to synchronize data from D365FO cloud environments to local AxDB, featuring incremental sync and smart strategies.
Azure Cosmos DB Conf 2026 — Call for Proposals Is Now Open
Every production system has a story behind it. The scaling limit you didn’t expect. The data model that finally clicked. The tradeoff you had ...