Cloudera Developer for Apache Hadoop (CCDH) Certification
Description
Cloudera offers enterprise and express versions of its Cloudera Distribution including Apache Hadoop. Cloudera’s view of the importance of qualified big data talent shines through the elements of its certification. It includes the following:
Cloudera Certified Hadoop Developer (CCDH) – This certification is for Developers who are responsible for coding, maintaining, and optimizing Apache Hadoop projects. The CCHD exam features questions that deliver a consistent exam experience
Cloudera Certified Developer for Apache Hadoop (CCDH)
Individuals who gain Cloudera Developer Certification for Apache Hadoop (CCDH) have exhibited their technical knowledge, skill, and ability to write, maintain, and optimize Apache Hadoop development projects. This certification establishes you as a trusted and invaluable resource for those looking for an Apache Hadoop expert. Cloudera Certification undeniably proves your ability to solve problems using Hadoop.
The Motivation for Hadoop
- Problems with traditional large-scale systems
- Introducing Hadoop
- Hadoopable problems
Hadoop: Basic Concepts and HDFS
- The Hadoop project and Hadoop components
- The Hadoop Distributed File System
Introduction to MapReduce
- MapReduce overview
- Example: WordCount
- Mappers
- Reducers
Hadoop Clusters and the Hadoop Ecosystem
- Hadoop cluster overview
- Hadoop jobs and tasks
- Other Hadoop ecosystem components
Writing a MapReduce Program in Java
- Basic MapReduce API Concepts
- Writing MapReduce Drivers, Mappers, and Reducers in Java
- Speeding up Hadoop development by using eclipse
- Differences between the old and new MapReduce APIs
Writing a MapReduce Program Using Streaming
- Writing Mappers and Reducers with the streaming API
Unit Testing MapReduce Programs
- Unit testing
- The JUnit and MRUnit testing frameworks
- Writing unit tests with MRUnit
- Running unit tests
Delving Deeper into the Hadoop API
- Using the ToolRunner class
- Setting up and tearing down Mappers and Reducers
- Decreasing the amount of intermediate data with combiners
- Accessing HDFS programmatically
- Using the distributed cache
- Using the Hadoop API’s Library of Mappers, Reducers, and Partitioners
Practical Development Tips and Techniques
- Strategies for debugging MapReduce code
- Testing MapReduce code locally by using LocalJobRunner
- Writing and viewing log files
- Retrieving job information with counters
- Reusing objects
- Creating map-only MapReduce jobs
Partitioners and Reducers
- How partitioners and Reducers work together
- Determining the optimal number of Reducers for a job
- Writing customer partitioners
Data Input and Output
- Creating custom writable and WritableComparable implementations
- Saving binary data using sequenceFile and Avro data files
- Issues to consider when using file compression
- Implementing custom InputFormats and OutputFormats
Common MapReduce Algorithms
- Sorting and searching large data sets
- Indexing data
- Computing term frequency — Inverse Document Frequency
- Calculating word co-occurrence
- Performing Secondary Sort
Joining Data Sets in MapReduce Jobs
- Writing a Map-Side Join
- Writing a Reduce-Side Join
Integrating Hadoop into the Enterprise Workflow
- Integrating Hadoop into an existing enterprise
- Loading data from an RDBMS into HDFS by using Sqoop
- Managing real-time data using Flume
- Accessing HDFS from legacy systems with FuseDFS and HttpFS
An Introduction to Hive, Imapala, and Pig
- The motivation for Hive, Impala, and Pig
- Hive overview
- Impala overview
- Pig overview
- Choosing Between Hive, Impala, and Pig
An Introduction to Oozie
- Introduction to Oozie
- Creating Oozie workflows
Who this course is for:
- All Levels