 课程大纲:
        
    课程大纲:         Hadoop and Spark for Administrators培训
Introduction
Introduction to Cloud Computing and Big Data solutions
        Overview of Apache Hadoop Features and Architecture
        Setting up Hadoop
Planning a Hadoop cluster (on-premise, cloud, etc.)
        Selecting the OS and Hadoop distribution
        Provisioning resources (hardware, network, etc.)
        Downloading and installing the software
        Sizing the cluster for flexibility
        Working with HDFS
Understanding the Hadoop Distributed File System (HDFS)
        Overview of HDFS Command Reference
        Accessing HDFS
        Performing Basic File Operations on HDFS
        Using S3 as a complement to HDFS
        Overview of the MapReduce
Understanding Data Flow in the MapReduce Framework
        Map, Shuffle, Sort and Reduce
        Demo: Computing Top Salaries
        Working with YARN
Understanding resource management in Hadoop
        Working with ResourceManager, NodeManager, Application Master
        Scheduling jobs under YARN
        Scheduling for large numbers of nodes and clusters
        Demo: Job scheduling
        Integrating Hadoop with Spark
Setting up storage for Spark (HDFS, Amazon, S3, NoSQL, etc.)
        Understanding Resilient Distributed Datasets (RDDs)
        Creating an RDD
        Implementing RDD Transformations
        Demo: Implementing a Text Search Program for Movie Titles
        Managing a Hadoop Cluster
Monitoring Hadoop
        Securing a Hadoop cluster
        Adding and removing nodes
        Running a performance benchmark
        Tuning a Hadoop cluster to optimizing performance
        Backup, recovery and business continuity planning
        Ensuring high availability (HA)
        Upgrading and Migrating a Hadoop Cluster
Assessing workload requirements
        Upgrading Hadoop
        Moving from on-premise to cloud and vice-versa
        Recovering from failures
        Troubleshooting
Summary and Conclusion
 
     
     
         
     加入高级会员获得助教答疑
 加入高级会员获得助教答疑 
                