Reader small image

You're reading from  Building Big Data Pipelines with Apache Beam

Product typeBook
Published inJan 2022
Reading LevelBeginner
PublisherPackt
ISBN-139781800564930
Edition1st Edition
Languages
Right arrow
Author (1)
Jan Lukavský
Jan Lukavský
author image
Jan Lukavský

Jan Lukavský is a freelance big data architect and engineer who is also a committer of Apache Beam. He is a certified Apache Hadoop professional. He is working on open source big data systems combining batch and streaming data pipelines in a unified model, enabling the rise of real-time, data-driven applications.
Read more about Jan Lukavský

Right arrow

Understanding how a runner handles state

As we already know, any complex computation will need to  group multiple data elements in order to do computation. Because the streaming processing cannot rely on sources being able to replay data (as opposed to pure batch processing, where this property is essential), any updates to the local state during the computation have to be fault-tolerant, and it is the responsibility of a runner to ensure this. The Beam state API is designed precisely to enable this. Any state access is handled by a runner-provided implementation of StateInternals (and TimerInternals for timers – in this discussion, we will treat timers as special cases of state, so we will not describe them independently). The StateInternals instances are responsible for creating the accessors for the state – for example, ValueState, BagState, MapState, and so on. The runner must create and manage these instances to ensure both fault tolerance and consistency...

lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Building Big Data Pipelines with Apache Beam
Published in: Jan 2022Publisher: PacktISBN-13: 9781800564930

Author (1)

author image
Jan Lukavský

Jan Lukavský is a freelance big data architect and engineer who is also a committer of Apache Beam. He is a certified Apache Hadoop professional. He is working on open source big data systems combining batch and streaming data pipelines in a unified model, enabling the rise of real-time, data-driven applications.
Read more about Jan Lukavský