Azure Databricks Cookbook: Accelerate and scale real-time analytics solutions using the Apache Spark-based analytics service

Raj, Phani, Jaiswal, Vinod

  • 出版商: Packt Publishing
  • 出版日期: 2021-09-17
  • 售價: $2,130
  • 貴賓價: 9.5$2,024
  • 語言: 英文
  • 頁數: 448
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 1789809711
  • ISBN-13: 9781789809718
  • 相關分類: Microsoft AzureSpark
  • 海外代購書籍(需單獨結帳)

相關主題

商品描述

Key Features

  • Integrate with Azure Synapse Analytics, Cosmos DB, and Azure HDInsight Kafka Cluster to scale and analyze your projects and build pipelines
  • Use Databricks SQL to run ad hoc queries on your data lake and create dashboards
  • Productionize a solution using CI/CD for deploying notebooks and Azure Databricks Service to various environments

Book Description

Azure Databricks is a unified collaborative platform for performing scalable analytics in an interactive environment. The Azure Databricks Cookbook provides recipes to get hands-on with the analytics process, including ingesting data from various batch and streaming sources and building a modern data warehouse.

The book starts by teaching you how to create an Azure Databricks instance within the Azure portal, Azure CLI, and ARM templates. You'll work through clusters in Databricks and explore recipes for ingesting data from sources, including files, databases, and streaming sources such as Apache Kafka and EventHub. The book will help you explore all the features supported by Azure Databricks for building powerful end-to-end data pipelines. You'll also find out how to build a modern data warehouse by using Delta tables and Azure Synapse Analytics. Later, you'll learn how to write ad hoc queries and extract meaningful insights from the data lake by creating visualizations and dashboards with Databricks SQL. Finally, you'll deploy and productionize a data pipeline as well as deploy notebooks and Azure Databricks service using continuous integration and continuous delivery (CI/CD).

By the end of this Azure book, you'll be able to use Azure Databricks to streamline different processes involved in building data-driven apps.

What you will learn

  • Understand Databricks cluster options and when to use them
  • Read and write data from and to Azure sources such as ADLS Gen-2, EventHub, and more
  • Build a data warehouse in Azure Databricks
  • Perform ad hoc analysis on data lakes using Databricks SQL Analytics
  • Integrate with Azure Key Vault to access hidden data and Log Analytics for telemetry and monitoring
  • Integrate Databricks with Azure DevOps for version control and for deployment and to productionize the solution using CI/CD pipelines
  • Build a data processing pipeline for near real-time data analytics

Who this book is for

This recipe-based book is for data scientists, data engineers, big data professionals, and machine learning engineers who want to perform data analytics on their applications. Prior experience of working with Apache Spark and Azure is necessary to get the most out of this book.

作者簡介

Phani Raj is an Azure data architect at Microsoft. He has more than 12 years of IT experience and works primarily on the architecture, design, and development of complex data warehouses, OLTP, and big data solutions on Azure for customers across the globe.

Vinod Jaiswal is a data engineer at Microsoft. He has more than 13 years of IT experience and works primarily on the architecture, design, and development of complex data warehouses, OLTP, and big data solutions on Azure using Azure data services for a variety of customers. He has also worked on designing and developing real-time data processing and analytics reports from the data ingested from streaming systems using Azure Databricks.

目錄大綱

  1. Creating an Azure Databricks Service
  2. Reading and Writing Data from and to Various Azure Services and File Formats
  3. Understanding Spark Query Execution
  4. Working with Streaming Data
  5. Integrating with Azure Key-Vault, App Configuration and Log Analytics
  6. Exploring Delta Lake in Azure Databricks
  7. Implementing Near-Real-Time Analytics and Building Modern Data Warehouse
  8. Azure Databricks SQL Analytics
  9. DevOps Integrations and Implementing CI/CD for Azure Databricks
  10. Understanding Security and Monitoring in Azure Databricks