Nuevo

Data Engineering With Aws Learn How To Design And Build Clo, De Eagar, Gar. Editorial Packt Publishing, Tapa Blanda En Inglés, 2021

en 6 cuotas de

Precio sin impuestos nacionales:

Lo que tenés que saber de este producto

  • Año de publicación: 2021.
  • Tapa del libro: Blanda.
  • Novela.
  • Número de páginas: 482.
  • ISBN: 09781800560413.
Ver características

Opciones de compra:

Características del producto

Características principales

Título del libro
Data Engineering With Aws Learn How To Design And Build Clo
Autor
Eagar, Gar
Idioma
Inglés
Editorial del libro
Packt Publishing
Tapa del libro
Blanda
Año de publicación
2021

Otros

Cantidad de páginas
482
Tipo de narración
Novela
ISBN
09781800560413

Descripción

Start your AWS data engineering journey with this easy-to-follow, hands-on guide and get to grips with foundational concepts through to building data engineering pipelines using AWS

Key Features

Learn about common data architectures and modern approaches to generating valor from big data
Explore AWS tools for ingesting, transforming, and consuming data, and for orchestrating pipelines
Learn how to architect and implement data lakes and data lakehouses for big data analytics

Book Description

Knowing how to architect and implement complex data pipelines is a highly sought-after skill. Data engineers are responsible for building these pipelines that ingest, transform, and join raw datasets - creando nuevo valor from the data in the process. Amazon Web Services (AWS) offers a range of tools to simplify a data engineer's job, making it the preferred platform for performing data engineering tasks.

This book will take you through the services and the skills you need to architect and implement data pipelines on AWS. You’ll begin by reviewing important data engineering concepts and some of the core AWS services that form a part of the data engineer's toolkit. You’ll then architect a data pipeline, review raw data sources, transform the data, and learn how the transformed data is used by various data consumers. The book also teaches you about populating data marts and data warehouses along with how a data lakehouse fits into the picture. Later, you’ll be introduced to AWS tools for analyzing data, including those for ad-hoc SQL queries and creating visualizations. In the final chapters, you’ll understand how the power of machine learning and artificial intelligence can be used to draw new insights from data.

By the end of this AWS book, you’ll be able to carry out data engineering tasks and implement a data pipeline on AWS independently.

What you will learn

Understand data engineering concepts and emerging technologies
Ingest streaming data with Amazon Kinesis Data Firehose
Optimize, denormalize, and join datasets with AWS Glue Studio
Use Amazon S3 events to trigger a Lambda process to transform a file
Run complex SQL queries on data lake data using Amazon Athena
Load data into a Redshift data warehouse and run queries
Create a visualization of your data using Amazon QuickSight
Extract sentiment data from a dataset using Amazon Comprehend

Who this book is for

This book is for data engineers, data analysts, and data architects who are new to AWS and looking to extend their skills to the AWS cloud. Anyone who is new to data engineering and wants to learn about the foundational concepts while gaining practical experience with common data engineering services on AWS will also find this book útil. A basic understanding of big data-related topics and Python coding will help you get the most out of this book but is not needed. Familiarity with the AWS console and core services is also useful but not necessary.

Table of Contents

An Introduction to Data Engineering
Data Management Architectures for Analytics
The AWS Data Engineers Toolkit
Data Cataloging, Security and Governance
Architecting Data Engineering Pipelines
Ingesting Batch and Streaming Data
Transforming Data to Optimize for Analytics
Identifying and Enabling Data Consumers
Loading Data into a Data Mart
Orchestrating the Data Pipeline
Ad Hoc Queries with Amazon Athena
Visualizing Data with Amazon QuickSight
Enabling Artificial Intelligence and Machine Learning
Wrapping Up the First Part of Your Learning Journey

About the Author

Gareth Eagar has worked in the IT industry for over 25 years, starting in South Africa, then working in the United Kingdom, and now based in the United States. In 2017, he started working at Amazon Web Services (AWS) as a solution architect, working with enterprise customers in the NYC metro area. Gareth has become a recognized subject matter expert for building data lakes on AWS.

Envío gratis a todo el país

Conocé los tiempos y las formas de envío.

Disponible 20 días después de tu compra

LIBERATE

Tienda oficial de Mercado Libre

MercadoLíder Platinum

¡Uno de los mejores del sitio!

+100mil

Ventas concretadas

Brinda buena atención

Despacha sus productos a tiempo

Otras opciones de compra

  • Mejor opción en cuotas
      • Mismo precio en 6 cuotas

      • Envío gratis a todo el país

Medios de pago

Cuotas sin Tarjeta

Mercado Crédito

Tarjetas de crédito

Visa
American Express
Mastercard
Naranja

Tarjetas de débito

Visa Débito
Maestro
Cabal Débito
Mastercard Débito

Efectivo

PagoFacil
Rapipago

Preguntas y respuestas

¿Qué querés saber?

Nadie hizo preguntas todavía.

¡Hacé la primera!