Training for Apache HBase
Overview:
Take your knowledge to the next level with Cloudera Training for Apache HBase. Cloudera University’s three-day training course enables participants to store and access massive quantities of multi-structured data and perform hundreds of thousands of operations per second.
Delivery Method and Course Duration:
OnDemand: 180 days
Classroom: 3 days
Objectives:
Through instructor-led discussion and interactive, hands-on exercises, participants will navigate the Hadoop ecosystem, learning topics such as:
- The use cases and usage occasions for HBase, Hadoop, and RDBMS
- Using the HBase shell to directly manipulate HBase tables
- Designing optimal HBase schemas for efficient data storage and recovery
- How to connect to HBase using the Java API to insert and retrieve data in real time
- Best practices for identifying and resolving performance bottlenecks
Intended Audience & Prerequisites:
This course is appropriate for developers and administrators who intend to use HBase. Prior experience with databases and data modeling is helpful, but not required. Knowledge of Java is assumed. Prior knowledge of Hadoop is not required, but Cloudera Developer Training for Spark and Hadoop provides an excellent foundation for this course
Advance your ecosystem expertise:
Apache HBase is a distributed, scalable, NoSQL database for big data built on Hadoop. HBase can store data in massive tables consisting of billions of rows and millions of columns, serve data to many users in near real time, and provide fast, random read/write access to applications
Course outlines:
1. Introduction
2. Introduction to Hadoop and HBase
- Introducing Hadoop
- Core Hadoop Components
- What Is HBase?
- Why Use HBase?
- Strengths of HBase
- HBase in Production
- Weaknesses of HBase
3. HBase Tables
- HBase Concepts
- HBase Table Fundamentals
- Thinking About Table Design
4. HBase Shell
- Creating Tables with the HBase Shell
- Working with Tables
- Working with Table Data
5. HBase Architecture Fundamentals
- HBase Regions
- HBase Cluster Architecture
- HBase and HDFS Data Locality
6. HBase Schema Design
- General Design Considerations
- Application-Centric Design
- Designing HBase Row Keys
- Other HBase Table Features
7. Basic Data Access with the HBase API
- Options to Access HBase Data
- Creating and Deleting HBase Tables
- Retrieving Data with Get
- Retrieving Data with Scan
- Inserting and Updating Data
- Deleting Data
8. More Advanced HBase API Features
- Filtering Scans
- Best Practices
- HBase Coprocessors
9. HBase Write Path
- HBase Write Path
- Compaction
- Splits
10. HBase Read Path
- How HBase Reads Data
- Block Caches for Reading
11. HBase Performance Tuning
- Column Family Considerations
- Schema Design Considerations
- Configuring for Caching
- Memory Considerations
- Dealing with Time Series and Sequential Data
- Pre-Splitting Regions
12. HBase Administration and Cluster Management
- HBase Daemons
- ZooKeeper Considerations
- HBase High Availability
- Using the HBase Balancer
- Fixing Tables with hbck
- HBase Security
13. HBase Replication and Backup
- HBase Replication
- HBase Backup
- MapReduce and HBase Clusters
14. Using Hive and Impala with HBase
- How to Use Hive and Impala to Access HBase
15. Conclusion
16. Appendix A: Accessing Data with Python and Thrift
- Thrift Usage
- Working with Tables
- Getting and Putting Data
- Scanning Data
- Deleting Data
- Counters
- Filters
17. Appendix B: OpenTSDB
Học trực tuyến
Học tại Hồ Chí Minh
Học tại Hà Nội