Reader small image

You're reading from  Azure Data Engineer Associate Certification Guide

Product typeBook
Published inFeb 2022
PublisherPackt
ISBN-139781801816069
Edition1st Edition
Tools
Concepts
Right arrow
Author (1)
Newton Alex
Newton Alex
author image
Newton Alex

Newton Alex leads several Azure Data Analytics teams in Microsoft, India. His team contributes to technologies including Azure Synapse, Azure Databricks, Azure HDInsight, and many open source technologies, including Apache YARN, Apache Spark, and Apache Hive. He started using Hadoop while at Yahoo, USA, where he helped build the first batch processing pipelines for Yahoo's ad serving team. After Yahoo, he became the leader of the big data team at Pivotal Inc., USA, where he was responsible for the entire open source stack of Pivotal Inc. He later moved to Microsoft and started the Azure Data team in India. He has worked with several Fortune 500 companies to help build their data systems on Azure.
Read more about Newton Alex

Right arrow

Handling late-arriving data

We haven't yet covered this scenario, so let's dive deeper into handling late-arriving data.

A late-arriving data scenario can be considered at three different stages in a data pipeline – during the data ingestion phase, the transformation phase, and the serving phase.

Handling late-arriving data in the ingestion/transformation stage

During the ingestion and transformation phases, the activities usually include copying data into the data lake and performing data transformations using engines such as Spark, Hive, and so on. In such scenarios, the following two methods can be used:

  • Drop the data, if your application can handle some amount of data loss. This is the easiest option. You can keep a record of the last timestamp that has been processed. And if the new data has an older timestamp, you can just ignore that message and move forward.
  • Rerun the pipeline from the ADF Monitoring tab, if your application cannot handle...
lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Azure Data Engineer Associate Certification Guide
Published in: Feb 2022Publisher: PacktISBN-13: 9781801816069

Author (1)

author image
Newton Alex

Newton Alex leads several Azure Data Analytics teams in Microsoft, India. His team contributes to technologies including Azure Synapse, Azure Databricks, Azure HDInsight, and many open source technologies, including Apache YARN, Apache Spark, and Apache Hive. He started using Hadoop while at Yahoo, USA, where he helped build the first batch processing pipelines for Yahoo's ad serving team. After Yahoo, he became the leader of the big data team at Pivotal Inc., USA, where he was responsible for the entire open source stack of Pivotal Inc. He later moved to Microsoft and started the Azure Data team in India. He has worked with several Fortune 500 companies to help build their data systems on Azure.
Read more about Newton Alex