Summary
In this chapter, we presented several Spark SQL-based application architectures for building highly-scalable applications. We explored the main concepts and challenges in batch processing and stream processing. We discussed the features of Spark SQL that can help in building robust ETL pipelines. We also presented some code towards building a scalable monitoring application. Additionally, we explored an efficient deployment technique for machine learning pipelines, and some basic concepts involved in using cluster managers such as Mesos and Kubernetes.
In conclusion, this book attempts to help you build a strong foundation in Spark SQL and Scala. However, there are still many areas that you can explore in greater depth to build deeper expertise. Depending on your specific domain, the nature of data and problems could vary widely and your approach to solving them would typically encompass one or more areas described in this book. However, in all cases EDA and data munging skills will...