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Serverless Design Patterns and Best Practices

You're reading from   Serverless Design Patterns and Best Practices Build, secure, and deploy enterprise ready serverless applications with AWS to improve developer productivity

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Product type Paperback
Published in Apr 2018
Publisher Packt
ISBN-13 9781788620642
Length 260 pages
Edition 1st Edition
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Author (1):
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Brian Zambrano Brian Zambrano
Author Profile Icon Brian Zambrano
Brian Zambrano
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Table of Contents (12) Chapters Close

Preface 1. Introduction FREE CHAPTER 2. A Three-Tier Web Application Using REST 3. A Three-Tier Web Application Pattern with GraphQL 4. Integrating Legacy APIs with the Proxy Pattern 5. Scaling Out with the Fan-Out Pattern 6. Asynchronous Processing with the Messaging Pattern 7. Data Processing Using the Lambda Pattern 8. The MapReduce Pattern 9. Deployment and CI/CD Patterns 10. Error Handling and Best Practices 11. Other Books You May Enjoy

Understanding the limitations of serverless MapReduce


MapReduce on a serverless platform can work very well. However, there are limitations that you need to keep in mind. First and foremost, memory, storage, and time limits will ultimately determine whether this pattern is possible for your dataset. Additionally, systems such as Hadoop are frameworks that one may use for any analysis. When implementing MapReduce in a serverless context, you will likely be implementing a system that will solve a particular problem.

I find that a serverless MapReduce implementation is viable when your final dataset is relatively small (a few hundred megabytes) such that your reducer can process all of the data without going over the memory limits for your FaaS provider. I will talk through some of the details behind that sentiment in the following.

Memory limits

In the reducer phase, all of the data produced from the mappers must, at some point, be read and stored in memory. In our example application, the reducer...

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