Applying Real-time Processing Using Apache Storm
Offered By: Pluralsight
Course Description
Overview
Storm lets you to work with large scale streaming data using it's distributed real-time processing architecture. This course discusses the components of Storm topologies and how to use Storm for applying machine learning in real-time.
Storm is meant to be to used for distributed real-time processing, the way Hadoop is used for distributed batch processing. With Storm, you can process informations such as trends and breaking news and react to it in real-time. In this course, Applying Real-time Processing Using Apache Storm, you'll learn how to apply Storm for real-time processing. First, you'll discover how to set up a data processing pipeline using Storm topologies. Next, you'll explore parallelization by controlling data flows between components. Then, you'll cover how to perform complex data transforms using the Trident API. Finally, you'll learn how to apply machine learning models in real-time. By the end of this course, you'll be able to build your own Storm applications for different real-time processing tasks.
Storm is meant to be to used for distributed real-time processing, the way Hadoop is used for distributed batch processing. With Storm, you can process informations such as trends and breaking news and react to it in real-time. In this course, Applying Real-time Processing Using Apache Storm, you'll learn how to apply Storm for real-time processing. First, you'll discover how to set up a data processing pipeline using Storm topologies. Next, you'll explore parallelization by controlling data flows between components. Then, you'll cover how to perform complex data transforms using the Trident API. Finally, you'll learn how to apply machine learning models in real-time. By the end of this course, you'll be able to build your own Storm applications for different real-time processing tasks.
Syllabus
- Course Overview 1min
- Understanding the Components of Storm 35mins
- Parallelizing Data Processing Using Storm Components 32mins
- Customizing Storm Components for Better Reliability 16mins
- Querying Storm Data Streams Using Trident 25mins
- Applying Machine Learning to Storm Data Streams 22mins
Taught by
Swetha Kolalapudi
Related Courses
Cloud Computing Concepts, Part 1University of Illinois at Urbana-Champaign via Coursera Cloud Computing Concepts: Part 2
University of Illinois at Urbana-Champaign via Coursera Reliable Distributed Algorithms - Part 1
KTH Royal Institute of Technology via edX Introduction to Apache Spark and AWS
University of London International Programmes via Coursera Réalisez des calculs distribués sur des données massives
CentraleSupélec via OpenClassrooms