Building Batch Data Analytics Solutions on AWS
1 DAY COURSE

Price: $488.00
Course Outline

In this Building Batch Data Analytics Solutions on AWS course, you will learn to build batch data analytics solutions using Amazon EMR, an enterprise-grade Apache Spark and Apache Hadoop managed service. You will learn how Amazon EMR integrates with open-source projects such as Apache Hive, Hue, and HBase, and with AWS services such as AWS Glue and AWS Lake Formation. The course addresses data collection, ingestion, cataloging, storage, and processing components in the context of Spark and Hadoop. You will learn to use EMR Notebooks to support both analytics and machine learning workloads. You will also learn to apply security, performance, and cost management best practices to the operation of Amazon EMR.

Building Batch Data Analytics Solutions on AWS Benefits

  • In this Building Batch Data Analytics Solutions on AWS course, you will learn how to:

    • Compare the features and benefits of data warehouses, data lakes, and modern data architectures.
    • Design and implement a batch data analytics solution.
    • Identify and apply appropriate techniques, including compression, to optimize data storage.
    • Select and deploy appropriate options to ingest, transform, and store data.
    • Choose the appropriate instance and node types, clusters, auto scaling, and network topology for a particular business use case.
    • Understand how data storage and processing affect the analysis and visualization mechanisms needed to gain actionable business insights.
    • Secure data at rest and in transit.
    • Monitor analytics workloads to identify and remediate problems.
    • Apply cost management best practices.
  • Building Batch Data Analytics Solutions on AWS Prerequisites

    We recommend that attendees of this course have:

    • Completed the AWS Technical Essentials classroom course.
    • One year of experience building data analytics pipelines or have completed the Data Analytics Fundamentals digital course.

Building Batch Data Analytics Solutions on AWS Course Outline

Module A: Overview of Data Analytics and the Data Pipeline

  • Data analytics use cases
  • Using the data pipeline for analytics

Module 1: Introduction to Amazon EMR

  • Using Amazon EMR in analytics solutions
  • Amazon EMR cluster architecture

Interactive Demo 1: Launching an Amazon EMR cluster

  • Cost management strategies

Module 2: Data Analytics Pipeline Using Amazon EMR: Ingestion and Storage

  • Storage optimization with Amazon EMR
  • Data ingestion techniques

Module 3: High-Performance Batch Data Analytics Using Apache Spark on Amazon EMR

  • Apache Spark on Amazon EMR use cases
  • Why Apache Spark on Amazon EMR
  • Spark concepts

Interactive Demo 2: Connect to an EMR cluster and perform Scala commands using the Spark shell

  • Transformation, processing, and analytics
  • Using notebooks with Amazon EMR

Practice Lab 1: Low-latency data analytics using Apache Spark on Amazon EMR

Module 4: Processing and Analyzing Batch Data with Amazon EMR and Apache Hive

  • Using Amazon EMR with Hive to process batch data
  • Transformation, processing, and analytics

Practice Lab 2: Batch data processing using Amazon EMR with Hive

  • Introduction to Apache HBase on Amazon EMR

Module 5: Serverless Data Processing

  • Serverless data processing, transformation, and analytics
  • Using AWS Glue with Amazon EMR workloads

Practice Lab 3: Orchestrate data processing in Spark using AWS Step Functions

Module 6: Security and Monitoring of Amazon EMR Clusters

  • Securing EMR clusters

Interactive Demo 3: Client-side encryption with EMRFS

  • Monitoring and troubleshooting Amazon EMR clusters

Demo: Reviewing Apache Spark cluster history

Module 7: Designing Batch Data Analytics Solutions

  • Batch data analytics use cases
Course Dates
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Private Team Training

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