<thead id="fflbj"><font id="fflbj"><cite id="fflbj"></cite></font></thead>
    <progress id="fflbj"><thead id="fflbj"><font id="fflbj"></font></thead></progress>

            課程目錄:Apache Spark Streaming with Scala培訓
            4401 人關注
            (78637/99817)
            課程大綱:

              Apache Spark Streaming with Scala培訓

             

             

             

            Introduction

            Scala Programming in Depth Review

            Syntax and structure
            Flow control and functions
            Spark Internals

            Resilient Distributed Datasets (RDD)
            Spark script to graph to cluster
            Overview of Spark Streaming

            Streaming architecture
            Intervals in streaming
            Fault tolerance
            Preparing the Development Environment

            Installing and configuring Apache Spark
            Installing and configuring the Scala IDE
            Installing and configuring JDK
            Spark Streaming Beginner to Advanced

            Working with key/value RDD's
            Filtering RDD's
            Improving Spark scripts with regular expressions
            Sharing data on a cluster
            Working with network data sets
            Implementing BFS algorithms
            Creating Spark driver scripts
            Tracking in real time with scripts
            Writing continuous applications
            Streaming linear regression
            Using Spark Machine Learning Library
            Spark and Clusters

            Bundling dependencies and Spark scripts using the SBT tool
            Using EMR for illustrating clusters
            Optimizing by partitioning RDD's
            Using Spark logs
            Integration in Spark Streaming

            Integrating Apache Kafka and working with Kafka topics
            Integrating Apache Fume and working with pull-based/push-based Flume configurations
            Writing a custom receiver class
            Integrating Cassandra and exposing data as real-time services
            In Production

            Packaging an application and running it with Spark-Submit
            Troubleshooting, tuning, and debugging Spark Jobs and clusters
            Summary and Conclusion

            538在线视频二三区视视频