RS TRAINING'S is an outstanding ONLINE IT TRAINING and CLASSROOM IT TRAINING institute with State of Art infrastructure led by the finest trainers in the market. We offer Online training to the learners in all parts of the world with the implementation of modern technologies like Gotomeeting and WebEx and we provide online training,class room training and corporate training.
Online Training is simple; Join anywhere, learn from your own place,connect to the internet, decide your own pace and become a technical expert on specific domain.
Features:
- Live interactive sessions.
- Preeminent Training quality.
- Accessible in all geographical locations.
- Saves your valuable time and money for your journey.
Our Corporate IT Training service is a blend of ingenious customization and implementation of modules from our trainers to improve the efficiency of the company outputs.
We provide corporate Training in different ways:
We build the resumes of our students and provide placement assistance to them through our corporate clients.
We provide corporate Training in different ways:
- Onsite Training: The employees will get trained while performing their job roles. This type of training will be supervised by experienced trainers.
- Institution Training: This training is mainly focused on developing the skill levels of the employees.
- External Learning: This kind of knowledge imparting takes place through seminars or short courses or through online training outside the companies.
classroom training
The domain experts will provide highest level of training in the specific domain with real time scenarios. Their experience will be evident during their training sessions. Students will have the extra benefit of getting good exposure to the tips on domain expertise through the interactions with our trainers. The students will be provided with practice labs equipped with high configuration computers.We build the resumes of our students and provide placement assistance to them through our corporate clients.
- Instructor led training with proper training facilities.
- Free demo session to have a look and feel of our training quality.
- Friendly environment for gathering the domain specific knowledge.
- Reasonable fee structure.
- Practice lab under expert supervision.
- Soft copies and Hard copies of the Material for the benefit of students.
![]() |
Hadoop |
Course Objective Summary
During this course, you will learn:
• Introduction to Big Data and Analytics
• Introduction to Hadoop
• Hadoop ecosystem - Concepts
• Hadoop Map-reduce concepts and features
• Developing the map-reduce Applications
• Pig concepts
• Hive concepts
• Sqoop concepts
• Flume Concepts
• Oozie workflow concepts
• Impala Concepts
• Hue Concepts
• HBASE Concepts
• ZooKeeper Concepts
• Real Life Use Cases
Reporting Tool
• Tableau
1. Virtualbox/VM Ware
• Basics
• Installations
• Backups
• Snapshots
2. Linux
• Basics
• Installations
• Commands
3. Hadoop
• Why Hadoop?
• Scaling
• Distributed Framework
• Hadoop v/s RDBMS
• Brief history of hadoop
4. Setup hadoop
• Pseudo mode
• Cluster mode
• Ipv6
• Ssh
• Installation of java, hadoop
• Configurations of hadoop
• Hadoop Processes ( NN, SNN, JT, DN, TT)
• Temporary directory
• UI
• Common errors when running hadoop cluster, solutions
5. HDFS- Hadoop distributed File System
• HDFS Design and Architecture
• HDFS Concepts
• Interacting HDFS using command line
• Interacting HDFS using Java APIs
• Dataflow
• Blocks
• Replica
6. Hadoop Processes
• Name node
• Secondary name node
• Job tracker
• Task tracker
• Data node
7. Map Reduce
• Developing Map Reduce Application
• Phases in Map Reduce Framework
• Map Reduce Input and Output Formats
• Advanced Concepts
• Sample Applications
• Combiner
8. Joining datasets in Mapreduce jobs
• Map-side join
• Reduce-Side join
9. Map reduce – customization
• Custom Input format class
• Hash Partitioner
• Custom Partitioner
• Sorting techniques
• Custom Output format class
10. Hadoop Programming Languages :-
I.HIVE
• Introduction
• Installation and Configuration
• Interacting HDFS using HIVE
• Map Reduce Programs through HIVE
• HIVE Commands
• Loading, Filtering, Grouping….
• Data types, Operators…..
• Joins, Groups….
• Sample programs in HIVE
II. PIG
• Basics
• Installation and Configurations
• Commands….
OVERVIEW HADOOP DEVELOPER
11. Introduction
12. The Motivation for Hadoop
• Problems with traditional large-scale systems
• Requirements for a new approach
13. Hadoop: Basic Concepts
• An Overview of Hadoop
• The Hadoop Distributed File System
• Hands-On Exercise
• How MapReduce Works
• Hands-On Exercise
• Anatomy of a Hadoop Cluster
• Other Hadoop Ecosystem Components
14. Writing a MapReduce Program
• The MapReduce Flow
• Examining a Sample MapReduce Program
• Basic MapReduce API Concepts
• The Driver Code
• The Mapper
• The Reducer
• Hadoop’s Streaming API
• Using Eclipse for Rapid Development
• Hands-on exercise
• The New MapReduce API
15. Common MapReduce Algorithms
• Sorting and Searching
• Indexing
• Machine Learning With Mahout
• Term Frequency – Inverse Document Frequency
• Word Co-Occurrence
• Hands-On Exercise.
16.PIG Concepts..
• Data loading in PIG.
• Data Extraction in PIG.
• Data Transformation in PIG.
• Hands on exercise on PIG.
17. Hive Concepts.
• Hive Query Language.
• Alter and Delete in Hive.
• Partition in Hive.
• Indexing.
• Joins in Hive.Unions in hive.
• Industry specific configuration of hive parameters.
• Authentication & Authorization.
• Statistics with Hive.
• Archiving in Hive.
• Hands-on exercise
18. Working with Sqoop
• Introduction.
• Import Data.
• Export Data.
• Sqoop Syntaxs.
• Databases connection.
• Hands-on exercise
19. Working with Flume
• Introduction.
• Configuration and Setup.
• Flume Sink with example.
• Channel.
• Flume Source with example.
• Complex flume architecture.
20. OOZIE Concepts
21. IMPALA Concepts
22. HUE Concepts
23. HBASE Concepts
24. ZooKeeper concepts
Reporting Tool..
Tableau
This course is designed for the beginner to intermediate-level Tableau user. It is for anyone who works with data – regardless of technical or analytical background. This course is designed to help you understand the important concepts and techniques used in Tableau to move from simple to complex visualizations and learn how to combine them in interactive dashboards.
Course Topics
Overview
• What is visual analysis?
• Strengths/weakness of the visual system.
Laying the Groundwork for Visual Analysis
• Analytical Process
• Preparing for analysis
Getting, Cleaning and Classifying Your Data
• Cleaning, formatting and reshaping.
• Using additional data to support your analysis.
• Data classification
Visual Mapping Techniques
• Visual Variables : Basic Units of Data Visualization
• Working with Color
• Marks in action: Common chart types
Solving Real-World Problems with Visual Analysis
• Getting a Feel for the Data- Exploratory Analysis.
• Making comparisons
• Looking at (co-)Relationships.
• Checking progress.
• Spatial Relationships.
• Try, try again.
Communicating Your Findings
• Fine-tuning for more effective visualization
• Storytelling and guided analytics
• Dashboards
related links:
hadoop training
During this course, you will learn:
• Introduction to Big Data and Analytics
• Introduction to Hadoop
• Hadoop ecosystem - Concepts
• Hadoop Map-reduce concepts and features
• Developing the map-reduce Applications
• Pig concepts
• Hive concepts
• Sqoop concepts
• Flume Concepts
• Oozie workflow concepts
• Impala Concepts
• Hue Concepts
• HBASE Concepts
• ZooKeeper Concepts
• Real Life Use Cases
Reporting Tool
• Tableau
1. Virtualbox/VM Ware
• Basics
• Installations
• Backups
• Snapshots
2. Linux
• Basics
• Installations
• Commands
3. Hadoop
• Why Hadoop?
• Scaling
• Distributed Framework
• Hadoop v/s RDBMS
• Brief history of hadoop
4. Setup hadoop
• Pseudo mode
• Cluster mode
• Ipv6
• Ssh
• Installation of java, hadoop
• Configurations of hadoop
• Hadoop Processes ( NN, SNN, JT, DN, TT)
• Temporary directory
• UI
• Common errors when running hadoop cluster, solutions
5. HDFS- Hadoop distributed File System
• HDFS Design and Architecture
• HDFS Concepts
• Interacting HDFS using command line
• Interacting HDFS using Java APIs
• Dataflow
• Blocks
• Replica
6. Hadoop Processes
• Name node
• Secondary name node
• Job tracker
• Task tracker
• Data node
7. Map Reduce
• Developing Map Reduce Application
• Phases in Map Reduce Framework
• Map Reduce Input and Output Formats
• Advanced Concepts
• Sample Applications
• Combiner
8. Joining datasets in Mapreduce jobs
• Map-side join
• Reduce-Side join
9. Map reduce – customization
• Custom Input format class
• Hash Partitioner
• Custom Partitioner
• Sorting techniques
• Custom Output format class
10. Hadoop Programming Languages :-
I.HIVE
• Introduction
• Installation and Configuration
• Interacting HDFS using HIVE
• Map Reduce Programs through HIVE
• HIVE Commands
• Loading, Filtering, Grouping….
• Data types, Operators…..
• Joins, Groups….
• Sample programs in HIVE
II. PIG
• Basics
• Installation and Configurations
• Commands….
OVERVIEW HADOOP DEVELOPER
11. Introduction
12. The Motivation for Hadoop
• Problems with traditional large-scale systems
• Requirements for a new approach
13. Hadoop: Basic Concepts
• An Overview of Hadoop
• The Hadoop Distributed File System
• Hands-On Exercise
• How MapReduce Works
• Hands-On Exercise
• Anatomy of a Hadoop Cluster
• Other Hadoop Ecosystem Components
14. Writing a MapReduce Program
• The MapReduce Flow
• Examining a Sample MapReduce Program
• Basic MapReduce API Concepts
• The Driver Code
• The Mapper
• The Reducer
• Hadoop’s Streaming API
• Using Eclipse for Rapid Development
• Hands-on exercise
• The New MapReduce API
15. Common MapReduce Algorithms
• Sorting and Searching
• Indexing
• Machine Learning With Mahout
• Term Frequency – Inverse Document Frequency
• Word Co-Occurrence
• Hands-On Exercise.
16.PIG Concepts..
• Data loading in PIG.
• Data Extraction in PIG.
• Data Transformation in PIG.
• Hands on exercise on PIG.
17. Hive Concepts.
• Hive Query Language.
• Alter and Delete in Hive.
• Partition in Hive.
• Indexing.
• Joins in Hive.Unions in hive.
• Industry specific configuration of hive parameters.
• Authentication & Authorization.
• Statistics with Hive.
• Archiving in Hive.
• Hands-on exercise
18. Working with Sqoop
• Introduction.
• Import Data.
• Export Data.
• Sqoop Syntaxs.
• Databases connection.
• Hands-on exercise
19. Working with Flume
• Introduction.
• Configuration and Setup.
• Flume Sink with example.
• Channel.
• Flume Source with example.
• Complex flume architecture.
20. OOZIE Concepts
21. IMPALA Concepts
22. HUE Concepts
23. HBASE Concepts
24. ZooKeeper concepts
Reporting Tool..
Tableau
This course is designed for the beginner to intermediate-level Tableau user. It is for anyone who works with data – regardless of technical or analytical background. This course is designed to help you understand the important concepts and techniques used in Tableau to move from simple to complex visualizations and learn how to combine them in interactive dashboards.
Course Topics
Overview
• What is visual analysis?
• Strengths/weakness of the visual system.
Laying the Groundwork for Visual Analysis
• Analytical Process
• Preparing for analysis
Getting, Cleaning and Classifying Your Data
• Cleaning, formatting and reshaping.
• Using additional data to support your analysis.
• Data classification
Visual Mapping Techniques
• Visual Variables : Basic Units of Data Visualization
• Working with Color
• Marks in action: Common chart types
Solving Real-World Problems with Visual Analysis
• Getting a Feel for the Data- Exploratory Analysis.
• Making comparisons
• Looking at (co-)Relationships.
• Checking progress.
• Spatial Relationships.
• Try, try again.
Communicating Your Findings
• Fine-tuning for more effective visualization
• Storytelling and guided analytics
• Dashboards
related links:
hadoop training
No comments:
Post a Comment