Class Central is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

LinkedIn Learning

Cloud Hadoop: Scaling Apache Spark

via LinkedIn Learning

Write review

Overview

Google, IBM & Meta Certificates – 40% Off
One plan covers every Professional Certificate on Coursera.
Unlock All Certificates
Generate genuine business insights from big data. Learn to implement Apache Hadoop and Spark workflows on AWS.

Syllabus

Introduction
  • Scaling Apache Hadoop and Spark
1. Hadoop and Spark Fundamentals
  • Modern Hadoop and Spark
  • File systems used with Hadoop and Spark
  • Apache or commercial Hadoop distros
  • Hadoop and Spark libraries
  • Hadoop on Google Cloud Platform
  • Spark Job on Google Cloud Platform
2. AWS Cloud Spark Environments
  • Sign up for Databricks Community Edition
  • Add Hadoop libraries
  • Databricks AWS Community Edition
  • Load data into tables
  • Hadoop and Spark cluster on AWS EMR
  • Run Spark job on AWS EMR
  • Review batch architecture for ETL on AWS
3. Spark Basics
  • Apache Spark libraries
  • Spark data interfaces
  • Select your programming language
  • Spark session objects
  • Spark shell
4. Using Spark
  • Tour the Databricks Environment
  • Tour the notebook
  • Import and export notebooks
  • Calculate Pi on Spark
  • Run WordCount of Spark with Scala
  • Import data
  • Transformations and actions
  • Caching and the DAG
  • Architecture: Streaming for prediction
5. Spark Libraries
  • Spark SQL
  • SparkR
  • Spark ML: Preparing data
  • Spark ML: Building the model
  • Spark ML: Evaluating the model
  • Advanced machine learning on Spark
  • MXNet
  • Spark with ADAM for genomics
  • Spark architecture for genomics
6. Spark Streaming
  • Reexamine streaming pipelines
  • Spark Streaming
  • Streaming ingest services
  • Advanced Spark Streaming with MLeap
7. Scaling Spark on AWS and GCP
  • Scale Spark on the cloud by example
  • Build a quick start with Databricks AWS
  • Scale Spark cloud compute with VMs
  • Optimize cloud Spark virtual machines
  • Use AWS EKS containers and data lake
  • Optimize Spark cloud data tiers on Kubernetes
  • Build reproducible cloud infrastructure
  • Scale on GCP Dataproc or on Terra.bio
  • Serverless Spark with Dataproc Notebook
Conclusion
  • Continue learning for scaling

Taught by

Lynn Langit

Reviews

4.6 rating at LinkedIn Learning based on 214 ratings

Start your review of Cloud Hadoop: Scaling Apache Spark

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.