Conceptualizing the Processing Model for Azure Databricks Service
In this course, you will learn about the Spark based Azure Databricks platform. You will see how Spark Structured Streaming processing model works, and then use it to build end-to-end production ready streaming pipeline on Azure Databricks platform.
Modern data pipelines often include streaming data, that needs to be processed in real-time. While Apache Spark is very popular for big data processing and can help us build reliable streaming pipelines, managing the Spark environment is no cakewalk. In this course, Conceptualizing the Processing Model for Azure Databricks Service, you will learn how to use Spark Structured Streaming on Databricks platform, which is running on Microsoft Azure, and leverage its features to build an end-to-end streaming pipeline quickly and reliably. And all this while learning about collaboration options and optimizations that it brings, but without worrying about the infrastructure management. First, you will learn about the processing model of Spark Structured Streaming, about the Databricks platform and features, and how it is runs on Microsoft Azure. Next, you will see how to setup the environment, like workspace, clusters, and security; configure streaming sources and sinks, and see how Structured Streaming fault tolerance works. Followed by this, you will learn how to build each phase of streaming pipeline, by extracting the data from source, transforming it, and loading it in a sink. And then make it production ready, and run it using Databricks jobs. You will also see, how to customize the cluster using Initialization scripts and Docker containers, to suit your business requirements. Finally, you will explore other aspects. You will see what are the different workloads available, and how pricing works. We will also talk about best practices, in terms of development, performance, stability and cost. And lastly, you will see how Spark Structured Streaming on Azure Databricks compares to other managed services, like Flink on AWS, Azure Stream Analytics, Beam on Google Cloud etc. By the end of this course, you will have the skills and knowledge of Azure Databricks platform needed to build an end-to-end streaming pipeline, using Spark Structured streaming.
Author Name: Mohit Batra
Author Description:
Mohit is a Data Engineer, a Microsoft Certified Trainer (MCT) and a consultant. Mohit has 15+ years of extensive experience in architecting large scale Business Intelligence, Data Warehousing and Big Data solutions with companies like Microsoft and some leading investment banks. As an expert in his field, Mohit has often shared his knowledge in Azure, Spark, SQL Server and Power BI at various public forums and as a corporate trainer. Mohit truly loves to teach and enjoys producing high-quality,… more
Table of Contents
- Course Overview
1min - Getting Started with Structured Streaming on Azure Databricks
42mins - Setting up Databricks Environment
27mins - Configuring Source and Sink Stores
29mins - Building Streaming Pipeline Using Structured Streaming
21mins - Making Streaming Pipeline Production Ready
14mins - Understanding Pricing, Workloads, and Competition
15mins - Customizing the Cluster
19mins
There are no reviews yet.