Big Data Hadoop and Spark Developer Certification - eLearning
450,00 EUR
- 50 hours
The Big Data Hadoop and Spark Developer Course is designed to provide you with an in-depth understanding of Apache Spark fundamentals and the Hadoop framework, equipping you with the skills needed to excel as a Big Data Developer. Through this program, you will gain hands-on knowledge of the Hadoop ecosystem and its integration with Spark, enabling you to process and analyze massive datasets efficiently. Learn how the multiple components of Hadoop, such as HDFS and MapReduce, fit seamlessly into the big data processing cycle, preparing you for success in today's data-driven world.
Key Features
Language
Course and material are in English
Level
Intermediate for aspiring data engineer
Access
1 year access to the self-paced study eLearning platform 24/7
11 hours of video content
with 50 hours study time recommended
Practices
Simulation test, Virtual lab and Course-end Project
No exam
No exam for the course but student will get certification of training completion

Learning Outcomes
This Big Data Hadoop and Spark Developer Course, you will learn to:
Hadoop Ecosystem
Learn how to navigate the Hadoop ecosystem and understand how to optimize its use
Ingest Data
Ingest data using Sqoop, Flume, and Kafka.
Hive
Implement partitioning, bucketing, and indexing in Hive
Apache Spark
Work with RDD in Apache Spark
Data Streaming
Process real-time streaming data and Perform DataFrame operations in Spark using SQL queries
Implementation
Implement User-Defined Functions (UDF) and User-Defined Attribute Functions (UDAF) in Spark
Course timeline

Introduction to Big Data and Hadoop
Lesson 01
- Introduction to Big Data and Hadoop
- Introduction to Big Data
- Big Data Analytics
- What is Big Data?
- Four vs of Big Data
- Case Study Royal Bank of Scotland
- Challenges of Traditional System
- Distributed Systems
- Introduction to Hadoop
- Components of Hadoop Ecosystem Part One
- Components of Hadoop Ecosystem Part Two
- Components of Hadoop Ecosystem Part Three
- Commercial Hadoop Distributions
- Demo: Walkthrough of Simplilearn Cloudlab
- Key Takeaways
- Knowledge CheckHadoop Architecture Distributed Storage (HDFS) and YARN
Lesson 02
- Hadoop Architecture Distributed Storage (HDFS) and YARN
- What is HDFS
- Need for HDFS
- Regular File System vs HDFS
- Characteristics of HDFS
- HDFS Architecture and Components
- High Availability Cluster Implementations
- HDFS Component File System Namespace
- Data Block Split
- Data Replication Topology
- HDFS Command Line
- Demo: Common HDFS Commands
- Practice Project: HDFS Command Line
- Yarn Introduction
- Yarn Use Case
- Yarn and its Architecture
- Resource Manager
- How Resource Manager Operates
- Application Master
- How Yarn Runs an Application
- Tools for Yarn Developers
- Demo: Walkthrough of Cluster Part One
- Demo: Walkthrough of Cluster Part Two
- Key Takeaways Knowledge Check
- Practice Project: Hadoop Architecture, distributed Storage (HDFS) and YarnData Ingestion into Big Data Systems and ETL
Lesson 03
- Data Ingestion Into Big Data Systems and Etl
- Data Ingestion Overview Part One
- Data Ingestion Overview Part Two
- Apache Sqoop
- Sqoop and Its Uses
- Sqoop Processing
- Sqoop Import Process
- Sqoop Connectors
- Demo: Importing and Exporting Data from MySQL to HDFS
- Practice Project: Apache Sqoop
- Apache Flume
- Flume Model
- Scalability in Flume
- Components in Flume’s Architecture
- Configuring Flume Components
- Demo: Ingest Twitter Data
- Apache Kafka Aggregating User Activity Using Kafka
- Kafka Data Model
- Partitions
- Apache Kafka Architecture
- Demo: Setup Kafka Cluster
- Producer Side API Example
- Consumer Side API
- Consumer Side API Example
- Kafka Connect
- Demo: Creating Sample Kafka Data Pipeline Using Producer and Consumer
- Key Takeaways
- Knowledge Check
- Practice Project: Data Ingestion Into Big Data Systems and ETLDistributed Processing MapReduce Framework and Pig
Lesson 04
- Distributed Processing Mapreduce Framework and Pig
- Distributed Processing in Mapreduce
- Word Count Example
- Map Execution Phases
- Map Execution Distributed Two Node Environment
- Mapreduce Jobs
- Hadoop Mapreduce Job Work Interaction
- Setting Up the Environment for Mapreduce Development
- Set of Classes
- Creating a New Project
- Advanced Mapreduce
- Data Types in Hadoop
- Output formats in Mapreduce
- Using Distributed Cache
- Joins in MapReduce
- Replicated Join
- Introduction to Pig
- Components of Pig
- Pig Data Model
- Pig Interactive Modes
- Pig Operations
- Various Relations Performed by Developers
- Demo: Analyzing Web Log Data Using Mapreduce
- Demo: Analyzing Sales Data and Solving Kpis Using Pig Practice Project: Apache Pig- Demo: Wordcount
- Key Takeaways
- Knowledge Check
- Practice Project: Distributed Processing - Mapreduce Framework and PigApache Hive
Lesson 05
- Apache Hive
- Hive SQL over Hadoop MapReduce
- Hive Architecture
- Interfaces to Run Hive Queries
- Running Beeline from Command Line
- Hive Metastore
- Hive DDL and DML
- Creating New Table
- Data Types Validation of Data
- File Format Types
- Data Serialization
- Hive Table and Avro Schema
- Hive Optimization Partitioning Bucketing and Sampling
- Non-Partitioned Table
- Data Insertion
- Dynamic Partitioning in Hive
- Bucketing
- What Do Buckets Do?
- Hive Analytics UDF and UDAF
- Other Functions of Hive
- Demo: Real-time Analysis and Data Filtration
- Demo: Real-World Problem
- Demo: Data Representation and Import Using Hive
- Key Takeaways
- Knowledge Check
- Practice Project: Apache HiveNoSQL Databases HBase
Lesson 06
- NoSQL Databases HBase
- NoSQL Introduction
- Demo: Yarn Tuning
- Hbase Overview
- Hbase Architecture
- Data Model
- Connecting to HBase
- Practice Project: HBase Shell
- Key Takeaways
- Knowledge Check
- Practice Project: NoSQL Databases - HBaseBasics of Functional Programming and Scala
Lesson 07
- Basics of Functional Programming and Scala
- Introduction to Scala
- Demo: Scala Installation
- Functional Programming
- Programming With Scala
- Demo: Basic Literals and Arithmetic Programming
- Demo: Logical Operators
- Type Inference Classes Objects and Functions in Scala
- Demo: Type Inference Functions Anonymous Function and Class
- Collections
- Types of Collections
- Demo: Five Types of Collections
- Demo: Operations on List Scala REPL
- Demo: Features of Scala REPL
- Key Takeaways
- Knowledge Check
- Practice Project: Apache HiveApache Spark Next - Generation Big Data Framework
Lesson 08
- Apache Spark Next-Generation Big Data Framework
- History of Spark
- Limitations of Mapreduce in Hadoop
- Introduction to Apache Spark
- Components of Spark
- Application of In-memory Processing
- Hadoop Ecosystem vs Spark
- Advantages of Spark
- Spark Architecture
- Spark Cluster in Real World
- Demo: Running a Scala Programs in Spark Shell
- Demo: Setting Up Execution Environment in IDE
- Demo: Spark Web UI
- Key Takeaways
- Knowledge Check
- Practice Project: Apache Spark Next-Generation Big Data FrameworkSpark Core Processing RDD
Lesson 09
- Introduction to Spark RDD
- RDD in Spark
- Creating Spark RDD
- Pair RDD
- RDD Operations
- Demo: Spark Transformation Detailed Exploration Using Scala Examples
- Demo: Spark Action Detailed Exploration Using Scala
- Caching and Persistence
- Storage Levels
- Lineage and DAG
- Need for DAG
- Debugging in Spark
- Partitioning in Spark
- Scheduling in Spark
- Shuffling in Spark
- Sort Shuffle Aggregating Data With Paired RDD
- Demo: Spark Application With Data Written Back to HDFS and Spark UI
- Demo: Changing Spark Application Parameters
- Demo: Handling Different File Formats
- Demo: Spark RDD With Real-world Application
- Demo: Optimizing Spark Jobs
- Key Takeaways
- Knowledge Check
- Practice Project: Spark Core Processing RDDSpark SQL Processing DataFrames
Lesson 10
- Spark SQL Processing DataFrames
- Spark SQL Introduction
- Spark SQL Architecture
- Dataframes
- Demo: Handling Various Data Formats
- Demo: Implement Various Dataframe Operations
- Demo: UDF and UDAF
- Interoperating With RDDs
- Demo: Process Dataframe Using SQL Query
- RDD vs Dataframe vs Dataset
- Practice Project: Processing Dataframes
- Key Takeaways
- Knowledge Check
- Practice Project: Spark SQL - Processing DataframesSpark MLib Modelling BigData with Spark
Lesson 11
- Spark Mlib Modeling Big Data With Spark
- Role of Data Scientist and Data Analyst in Big Data
- Analytics in Spark
- Machine Learning
- Supervised Learning
- Demo: Classification of Linear SVM
- Demo: Linear Regression With Real World Case Studies
- Unsupervised Learning
- Demo: Unsupervised Clustering K-means
- Reinforcement Learning
- Semi-supervised Learning
- Overview of Mlib
- Mlib Pipelines
- Key Takeaways
- Knowledge Check
- Practice Project: Spark Mlib - Modelling Big data With SparkStream Processing Frameworks and Spark Streaming
Lesson 12
- Streaming Overview
- Real-time Processing of Big Data
- Data Processing Architectures
- Demo: Real-time Data Processing Spark Streaming
- Demo: Writing Spark Streaming Application
- Introduction to DStreams
- Transformations on DStreams
- Design Patterns for Using Foreachrdd
- State Operations
- Windowing Operations
- Join Operations Stream-dataset Join
- Demo: Windowing of Real-time Data Processing Streaming Sources
- Demo: Processing Twitter Streaming Data
- Structured Spark Streaming-
- Use Case Banking Transactions
- Structured Streaming Architecture Model and Its Components
- Output Sinks
- Structured Streaming APIs
- Constructing Columns in Structured Streaming
- Windowed Operations on Event-time
- Use Cases
- Demo: Streaming Pipeline
- Practice Project: Spark Streaming
- Key Takeaways
- Knowledge Check
- Practice Project: Stream Processing Frameworks and Spark StreamingSpark GraphX
Lesson 13
- Spark GraphX
- Introduction to Graph
- GraphX in Spark
- GraphX Operators
- Join Operators
- GraphX Parallel System
- Algorithms in Spark
- Pregel API
- Use Case of GraphX
- Demo: GraphX Vertex Predicate
- Demo: Page Rank Algorithm
- Key Takeaways
- Knowledge Check
- Practice Project: Spark GraphX Project Assistance

Target Audience
Ideal for a wide range of professionals and individuals who want to advance their careers in big data analytics, data engineering, and data science.
Prerequisites: It is recommended that you have knowledge of Core Java and SQL
Analytics professionals
Senior IT professionals
Testing and mainframe professionals
Data management professionals
Business intelligence professionals
Project managers
Graduates looking to begin a career in big data analytics
Frequently Asked Question

Need corporate solutions or LMS integration?
Didn't find the course or program which would work for your business? Need LMS integration? Write us, we will solve everything!