Building Streaming Data Analytics Solutions on AWS

WGAC-AWS-BSDASA

Amazon Web Services Training Courses Certification

Schedule

See all training events for this courseSee all CoursesProfessional Services & Support
Virtual Classroom
Open
Amazon Web Services

Building Streaming Data Analytics Solutions on AWS

WGAC-AWS-BSDASA

Virtual ILT

Language: English

GMT UTC+00:00

Start date:08 Jun 2023 09:00
End date:08 Jun 2023 17:00
Duration:1 day

$ 994

Classroom
Open
Amazon Web Services

Building Streaming Data Analytics Solutions on AWS

WGAC-AWS-BSDASA

Rome

Language: Italian

CET UTC+01:00

Start date:27 Jul 2023 09:30
End date:27 Jul 2023 17:30
Duration:1 day

$ 634

Virtual Classroom
Open
Amazon Web Services

Building Streaming Data Analytics Solutions on AWS

WGAC-AWS-BSDASA

Virtual ILT

Language: English

GMT UTC+00:00

Start date:05 Oct 2023 09:00
End date:05 Oct 2023 17:00
Duration:1 day

$ 994

Classroom
Open
Amazon Web Services

Building Streaming Data Analytics Solutions on AWS

WGAC-AWS-BSDASA

Milan

Language: Italian

CET UTC+01:00

Start date:09 Nov 2023 09:30
End date:09 Nov 2023 17:30
Duration:1 day

$ 634

Description

Module A: Overview of Data Analytics and the Data Pipeline

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

Module 1: Using Streaming Services in the Data Analytics Pipeline

  • The importance of streaming data analytics
  • The streaming data analytics pipeline
  • Streaming concepts

Module 2: Introduction to AWS Streaming Services

  • Streaming data services in AWS
  • Amazon Kinesis in analytics solutions
  • Demonstration: Explore Amazon Kinesis Data Streams
  • Practice Lab: Setting up a streaming delivery pipeline with Amazon Kinesis
  • Using Amazon Kinesis Data Analytics
  • Introduction to Amazon MSK
  • Overview of Spark Streaming

Module 3: Using Amazon Kinesis for Real-time Data Analytics

  • Exploring Amazon Kinesis using a clickstream workload
  • Creating Kinesis data and delivery streams
  • Demonstration: Understanding producers and consumers
  • Building stream producers
  • Building stream consumers
  • Building and deploying Flink applications in Kinesis Data Analytics
  • Demonstration: Explore Zeppelin notebooks for Kinesis Data Analytics
  • Practice Lab: Streaming analytics with Amazon Kinesis Data Analytics and Apache Flink

Module 4: Securing, Monitoring, and Optimizing Amazon Kinesis

  • Optimize Amazon Kinesis to gain actionable business insights
  • Security and monitoring best practices

Module 5: Using Amazon MSK in Streaming Data Analytics Solutions

  • Use cases for Amazon MSK
  • Creating MSK clusters
  • Demonstration: Provisioning an MSK Cluster
  • Ingesting data into Amazon MSK
  • Practice Lab: Introduction to access control with Amazon MSK
  • Transforming and processing in Amazon MSK

Module 6: Securing, Monitoring, and Optimizing Amazon MSK

  • Optimizing Amazon MSK
  • Demonstration: Scaling up Amazon MSK storage
  • Practice Lab: Amazon MSK streaming pipeline and application deployment
  • Security and monitoring
  • Demonstration: Monitoring an MSK cluster

Module 7: Designing Streaming Data Analytics Solutions

  • Use case review
  • Class Exercise: Designing a streaming data analytics workflow

Module B: Developing Modern Data Architectures on AWS

  • Modern data architectures

We recommend that attendees of this course have:

  • At least one year of data analytics experience or direct experience building real-time applications or streaming analytics solutions. We suggest the Streaming Data Solutions on AWS whitepaper for those that need a refresher on streaming concepts.
  • Completed either Architecting on AWS or Data Analytics Fundamentals
  • Completed Building Data Lakes on AWS

In this course, you will learn to:

  • Understand the features and benefits of a modern data architecture. Learn how AWS streaming services fit into a modern data architecture.
  • Design and implement a streaming data analytics solution
  • Identify and apply appropriate techniques, such as compression, sharding, and partitioning, to optimize data storage
  • Select and deploy appropriate options to ingest, transform, and store real-time and near real-time data
  • Choose the appropriate streams, clusters, topics, scaling approach, 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 streaming data at rest and in transit
  • Monitor analytics workloads to identify and remediate problems
  • Apply cost management best practices

The description for this course is currently being updated.