Apache Spark Hands on Specialization for Big Data Analytics
Apache Spark Hands on Specialization for Big Data Analytics, available at $54.99, has an average rating of 3.75, with 73 lectures, 2 quizzes, based on 544 reviews, and has 12453 subscribers.
You will learn about Understand the relationship between Apache Spark and Hadoop Ecosystem Understand Apache Spark use-cases and advanced characteristics Understand Apache Spark Architecture and how it works Understand how Apache Spark on YARN (Hadoop) works in multiple modes Understand development life-cycle of Apache Spark Applications in Python and Scala Learn the foundations of Scala programming language Understand Apache Spark's primary data abstraction (RDDs) Understand and use RDDs advanced characteristics (e.g. partitioning) Learn nuances in loading files in Hadoop Distributed File system in Apache Spark Learn implications of delimiters in text files and its processing in Spark Create and use RDDs by parallelizing Scala's collection objects and implications Learn the usage of Spark and YARN Web UI to gain in-depth operational insights Understand Spark's Direct Acyclic Graph (DAG) based execution model and implications Learn Transformations and their lazy execution semantics Learn Map transformation and master its applications in real-world challenges Learn Filter transformation and master its usage in real-world challenges Learn Apache Spark's advanced Transformations and Actions Learn and use RDDs of different JVM objects including collections and understanding critical nuances Learn and use Apache Spark for statistical analysis Learn and master Key Value Pair RDDs and their applications in complex Big Data problems Learn and master Join Operations on complex Key Value Pair RDDs in Apache Spark Learn how RDDs caching works and use it for advanced performance optimization Learn how to use Apache Spark for Data Ranking problems Learn how to use Apache Spark for handling and processing structured and unstructured data Learn how to use Apache Spark for advanced Business Analytics Learn how to use Apache Spark for advanced data integrity and quality checks Learn how to use Scala's advanced features like functional programming and pattern matching Learn how to use Apache Spark for logs processing This course is ideal for individuals who are Anyone who has the passion to develop expertise in Big Data and specifically Apache Spark or Software Engineers or Developers or Data Warehousing or Business Intelligence Professionals or Data Scientist and Machine Learning Enthusiasts or Data Engineers and Big Data Architects It is particularly useful for Anyone who has the passion to develop expertise in Big Data and specifically Apache Spark or Software Engineers or Developers or Data Warehousing or Business Intelligence Professionals or Data Scientist and Machine Learning Enthusiasts or Data Engineers and Big Data Architects.
Enroll now: Apache Spark Hands on Specialization for Big Data Analytics
Summary
Title: Apache Spark Hands on Specialization for Big Data Analytics
Price: $54.99
Average Rating: 3.75
Number of Lectures: 73
Number of Quizzes: 2
Number of Published Lectures: 73
Number of Published Quizzes: 1
Number of Curriculum Items: 75
Number of Published Curriculum Objects: 74
Number of Practice Tests: 1
Number of Published Practice Tests: 1
Original Price: $129.99
Quality Status: approved
Status: Live
What You Will Learn
- Understand the relationship between Apache Spark and Hadoop Ecosystem
- Understand Apache Spark use-cases and advanced characteristics
- Understand Apache Spark Architecture and how it works
- Understand how Apache Spark on YARN (Hadoop) works in multiple modes
- Understand development life-cycle of Apache Spark Applications in Python and Scala
- Learn the foundations of Scala programming language
- Understand Apache Spark's primary data abstraction (RDDs)
- Understand and use RDDs advanced characteristics (e.g. partitioning)
- Learn nuances in loading files in Hadoop Distributed File system in Apache Spark
- Learn implications of delimiters in text files and its processing in Spark
- Create and use RDDs by parallelizing Scala's collection objects and implications
- Learn the usage of Spark and YARN Web UI to gain in-depth operational insights
- Understand Spark's Direct Acyclic Graph (DAG) based execution model and implications
- Learn Transformations and their lazy execution semantics
- Learn Map transformation and master its applications in real-world challenges
- Learn Filter transformation and master its usage in real-world challenges
- Learn Apache Spark's advanced Transformations and Actions
- Learn and use RDDs of different JVM objects including collections and understanding critical nuances
- Learn and use Apache Spark for statistical analysis
- Learn and master Key Value Pair RDDs and their applications in complex Big Data problems
- Learn and master Join Operations on complex Key Value Pair RDDs in Apache Spark
- Learn how RDDs caching works and use it for advanced performance optimization
- Learn how to use Apache Spark for Data Ranking problems
- Learn how to use Apache Spark for handling and processing structured and unstructured data
- Learn how to use Apache Spark for advanced Business Analytics
- Learn how to use Apache Spark for advanced data integrity and quality checks
- Learn how to use Scala's advanced features like functional programming and pattern matching
- Learn how to use Apache Spark for logs processing
Who Should Attend
- Anyone who has the passion to develop expertise in Big Data and specifically Apache Spark
- Software Engineers or Developers
- Data Warehousing or Business Intelligence Professionals
- Data Scientist and Machine Learning Enthusiasts
- Data Engineers and Big Data Architects
Target Audiences
- Anyone who has the passion to develop expertise in Big Data and specifically Apache Spark
- Software Engineers or Developers
- Data Warehousing or Business Intelligence Professionals
- Data Scientist and Machine Learning Enthusiasts
- Data Engineers and Big Data Architects
What if you could catapult your career in one of the most lucrative domains i.e. Big Data by learning the state of the art Hadoop technology (Apache Spark) which is considered mandatory in all of the current jobs in this industry?
What if you could develop your skill-set in one of the most hottest Big Data technology i.e. Apache Spark by learning in one of the most comprehensive course out there (with 10+ hours of content) packed with dozens of hands-on real world examples, use-cases, challenges and best-practices?
What if you could learn from an instructor who is working in the world’s largest consultancy firm, has worked, end-to-end, in Australia’s biggest Big Data projects to date and who has a proven track record on Udemy with highly positive reviews and thousands of students already enrolled in his previous course(s)?
If you have such aspirations and goals, then this course and you is a perfect match made in heaven!
Why Apache Spark?
Apache Spark has revolutionised and disrupted the way big data processing and machine learning were done by virtue of its unprecedented in-memory and optimised computational model. It has been unanimously hailed as the future of Big Data. It’s the tool of choice all around the world which allows data scientists, engineers and developers to acquire and process data for a number of use-cases like scalable machine learning, stream processing and graph analytics to name a few. All of the leading organisations like Amazon, Ebay, Yahoo among many others have embraced this technology to address their Big Data processing requirements.
Additionally, Gartner has repeatedly highlighted Apache Spark as a leader in Data Science platforms. Certification programs of Hadoop vendors like Cloudera and Hortonworks, which have high esteem in current industry, have oriented their curriculum to focus heavily on Apache Spark. Almost all of the jobs in Big Data and Machine Learning space demand proficiency in Apache Spark.
This is what John Tripier, Alliances and Ecosystem Lead at Databricks has to say, “The adoption of Apache Spark by businesses large and small is growing at an incredible rate across a wide range of industries, and the demand for developers with certified expertise is quickly following suit”.
All of these facts correlate to the notion that learning this amazing technology will give you a strong competitive edge in your career.
Why this course?
Firstly, this is the most comprehensive and in-depth courseever produced on Apache Spark. I’ve carefully and critically surveyed all of the resources out there and almost all of them fail to cover this technology in the depth that it truly deserves. Some of them lack coverage of Apache Spark’s theoretical concepts like its architecture and how it works in conjunction with Hadoop, some fall short in thoroughly describing how to use Apache Spark APIs optimally for complex big data problems, some ignore the hands-on aspects to demonstrate how to do Apache Spark programming to work on real-world use-cases and almost all of them don’t cover the best practices in industry and the mistakes that many professionals make in field.
This course addresses all of the limitations that’s prevalent in the currently available courses. Apart from that, as I have attended trainings from leading Big Data vendors like Cloudera (for which they charge thousands of dollars), I’ve ensured that the course is aligned with the educational patterns and best practices followed in those training to ensure that you get the best and most effective learning experience.
Each section of the course covers concepts in extensive detail and from scratch so that you won’t find any challenges in learning even if you are new to this domain. Also, each section will have an accompanying assignment section where we will work together on a number of real-world challenges and use-casesemploying real-world data-sets. The data-sets themselves will also belong to different niches ranging from retail, web server logs, telecommunication and some of them will also be from Kaggle (world’s leading Data Science competition platform).
The course leverages Scala instead of Python. Even though wherever possible, reference to Python development is also given but the course is majorly based on Scala. The decision was made based on a number of rational factors. Scala is the de-facto language for development in Apache Spark. Apache Spark itself is developed in Scala and as a result all of the new features are initially made available in Scala and then in other languages like Python. Additionally, there is significant performance difference when it comes to using Apache Spark with Scala compared to Python. Scala itself is one of the most highest paid programming languages and you will be developing strong skill in that language along the way as well.
The course also has a number of quizzes to further test your skills. For further support, you can always ask questions to which you will get prompt response. I will also be sharing best practices and tips on regular basis with my students.
What you are going to learn in this course?
The course consists
of majorly two sections:
- Section – 1:
We’ll start off with
the introduction of Apache Spark and will understand its potential and business
use-cases in the context of overall Hadoop ecosystem. We’ll then focus on how
Apache Spark actually works and will take a deep dive of the architectural components
of Spark as its crucial for thorough understanding.
- Section – 2:
After developing
understanding of Spark architecture, we will move to the next section of this
course where we will employ Scala language to use Apache Spark APIs to develop
distributed computation programs. Please note that you don’t need to have prior
knowledge of Scala for this course as I will start with the very basics of
Scala and as a result you will also be developing your skills in this one of
the highest paying programming languages.
In this section, We
will comprehensively understand how spark performs distributed computation
using abstractions like RDDs, what are the caveats
in loading data in Apache Spark, what are the
different ways to create RDDs and how to leverage parallelism and much more.
Furthermore, as
transformations and action constitute the gist of Apache Spark APIs thus its
imperative to have sound understanding of these. Thus, we will then
focus on a number of Spark transformations and Actions that are heavily being
used in Industry and will go into detail of each. Each API usage will be
complimented with a series of real-world examples and datasets e.g. retail, web
server logs, customer churn and also from kaggle. Each section of the course
will have a number of assignments where you will be able to practically apply
the learned concepts to further consolidate your skills.
A significant
section of the course will also be dedicated to key value RDDs which form the
basis of working optimally on a number of big data problems.
In addition to
covering the crux of Spark APIs, I will also highlight a number of valuable
best practices based on my experience and exposure and will also intuit on
mistakes that many people do in field. You will rarely such information
anywhere else.
Each topic will be
covered in a lot of detail with strong emphasis on being hands-on thus ensuring
that you learn Apache Spark in the best possible way.
The course is
applicable and valid for all versions of Spark i.e. 1.6 and 2.0.
After completing
this course, you will develop a strong foundation and extended skill-set to use
Spark on complex big data processing tasks. Big data is one of the most
lucractive career domains where data engineers claim salaries in high numbers.
This course will also substantially help in your job interviews. Also, if you
are looking to excel further in your big data career, by passing Hadoop
certificationslike of Cloudera and Hortonworks, this course will prove to be
extremely helpful in that context as well.
Lastly, once enrolled, you will have life-time access to the lectures and resources. Its a self-paced course and you can watch lecture videos on any device like smartphone or laptop. Also, you are backed by Udemy’s rock-solid 30 days money back guarantee. So if you are serious about learning about learning Apache Spark, enrol in this course now and lets start this amazing journey together!
Course Curriculum
Chapter 1: Introduction
Lecture 1: Breaking the Ice with Warm Welcome!
Lecture 2: Course's Curriculum – Journey to the excellence!
Chapter 2: Section 1 – Apache Spark Introduction and Architecture Deep Dive
Lecture 1: Apache Spark in the context of Hadoop Evolution
Lecture 2: Say Hello to Apache Spark – Thorough Dissemination of Capabilities
Lecture 3: In-Depth Understanding of Spark's Ecosystem of High Level Libraries
Lecture 4: Apache Spark and its integration within Enterprise Lambda Architecture
Lecture 5: Apache Spark and where it fits in whole Hadoop Ecosystem
Chapter 3: Working with Text Files to create Resilient Distributed Datasets (RDDs) in Spark
Lecture 1: Setting up development Environment
Lecture 2: Better Development Environment Employing DataBricks – Part 1 (**New Lecture**)
Lecture 3: Better Development Environment Employing Databricks – Part 2 (**New Lecture**)
Lecture 4: Loading Text Files (in HDFS) in Spark to create RDDs
Lecture 5: Loading All Directory Files (in HDFS) simultaneously in Spark and implications
Lecture 6: Loading Text Files (in HDFS) in Spark – Continued
Lecture 7: Using Wildcards to selectively load text files (in HDFS) in Spark and use-cases
Lecture 8: Real Life Challenge: Different Record Delimiters in Text Files in Spark
Lecture 9: Solution: Handling Different Record Delimiters in Text Files in Spark
Chapter 4: Creating RDDs by Distributing Scala Collections in Spark
Lecture 1: The semantics and implications behind parallelizing Scala Collections
Lecture 2: Hands-on: Distributing/Parallelizing Scala Collections
Chapter 5: Understanding the Partitioning and Distributed Nature of RDDs in Spark
Lecture 1: How Data gets Partitioned and Distributed in Spark Cluster
Lecture 2: Accessing Hadoop YARN RM and AM Web UIs to understand RDDs Partitioning
Lecture 3: Manually Changing Partitions of RDDs in Spark and Implications
Chapter 6: Developing Mastery in Spark's Map Transformations and lazy DAG Execution Model
Lecture 1: Demystifying Spark's Direct Acyclic Graph (DAG) and Lazy Execution Model
Lecture 2: Introducing Map Transformation – the Swiss Army Knife of Transformations
Lecture 3: Hands-on: Map Transformation via Scala's Functional Programming constructs
Lecture 4: Understanding the Potential of Map Transformation to alter RDDs Types
Lecture 5: Using Your Own Functions, in addition to Anonymous ones, in Map Transformations
Chapter 7: Assignment – Using Map Transformation on Real World Big Data Retail Analytics
Lecture 1: Introducing the Real World Online Retail Data-set and Assignment Challenges
Lecture 2: Detailed Hands-on Comprehension of Assignment Challenges' Solutions
Lecture 3: Conceptual Understanding of Distributing Scala Collections and Implications
Lecture 4: Hands-on Understanding of Distributing Scala Collections and use-cases
Chapter 8: Developing Mastery in Spark's Filter Transformation
Lecture 1: Introducing Filter Transformation and its Powerful Use-Cases
Lecture 2: Hands on: Spark's Filter Transformation in Action
Chapter 9: Assignment – Using Filter and Map on Apache Web Server Logs and Retail Dataset
Lecture 1: Introducing the Data-sets and Real-World Assignment Challenges
Lecture 2: Challenge 1: Removing Empty Lines in Web Logs Data-set
Lecture 3: Challenge 2: Removing Header Line in Retail Data-set
Lecture 4: Challenge 3: Selecting rows in Retail Data-set Containing Specific Countries
Chapter 10: Developing Mastery in RDD of Scala Collections
Lecture 1: Introducing RDDs of Scala Collections and their Relational Analytics use-cases
Lecture 2: Transforming Scala Collections using Functional Programming Constructs
Lecture 3: Creating and Manipulating RDDs of Arrays of String from Different Data Sources
Chapter 11: Assignment – Customer Churn Analytics using Apache Spark
Lecture 1: Introducing the Context, Challenges and Data-set of Customer Churn Use-Case
Lecture 2: Challenge 1: Finding Number of Unique States in the Data-set
Lecture 3: Challenge 2: Performing Data Integrity Check on Individual Columns of Data-Set
Lecture 4: Challenge 3: Finding Summary Statistics on number of Voice Mail Messages
Lecture 5: Challenge 4: Finding Summary Statistics on Voice Mail in Selected States
Lecture 6: Challenge 5: Finding Average Value of Total Night Calls Minutes
Lecture 7: Challenge 6: Finding conditioned Total day calls for customers
Lecture 8: Challenge 7: Using Scala Functions and Pattern Matching for advanced processing
Lecture 9: Challenge 8: Finding Churned Customers with International and Voice Mail Plan
Lecture 10: Challenge 9: Performing Data Quality and Type Checks on Individual Columns
Chapter 12: Developing Mastery in Spark's Key-Value (Pair) RDDs
Lecture 1: Introduction
Lecture 2: Developing Intuition for Solving Big Data Problems using KeyValue Pair Construct
Lecture 3: Developing Hands-on Understanding of working with KeyValue RDDs in Spark
Lecture 4: Proof – Transformations' exclusivity to KeyValue RDDs
Lecture 5: Transforming Text File Data to Pair RDDs for KeyValue based Data Processing
Lecture 6: The Case of Different Data Types of "Values" in KeyValue RDDs
Lecture 7: Transforming Complex Delimited Text File to Pair RDDs for KeyValue Processing
Chapter 13: Assignment – Analyzing Video Games (Kaggle Dataset) using Spark's KeyValue RDDs
Lecture 1: Challenge 1: Determining Frequency Distribution of Video Games Platforms
Lecture 2: Challenge 2: Finding Total Sales of Each Video Games Platform
Lecture 3: Challenge 3: Finding Global Sales of Video Games Platform
Lecture 4: Challenge 4: Maximum Sales Value of Each Gaming Console
Lecture 5: Challenge 5: Data Ranking – Top 10 platforms by global sales
Chapter 14: Developing Mastery in Join Operations on Key Value Pair RDDs in Apache Spark
Lecture 1: Introducing Join Operations on Relational Data with Examples
Lecture 2: Getting started with join operation in Spark with Key Value Pair RDDs
Lecture 3: Working towards complex Join Operations in Apache Spark with advanced indexing
Chapter 15: Assignment – A Real Life Relational Dataset about Retail Customers
Lecture 1: Setting context and developing understanding of relationships in the dataset
Lecture 2: Challenge 1 – Top 5 states with Most Orders' Status as Cancelled
Lecture 3: Challenge 2 – Top 5 Cities from CA State with Orders Status as Cancelled
Chapter 16: Apache Spark – Advanced Concepts
Lecture 1: Introducing Caching in RDDs, Motivation and Relation to DAG Based Execution
Lecture 2: Caching and Persistence in RDDs in Action
Lecture 3: Technique: Finding and Filtering Dirty Records in Data-Set using Apache Spark
Lecture 4: Sentiment Analysis of Trump's Tweets using Azure Cognitive Services & Databricks
Chapter 17: Bonus Section
Lecture 1: My lecture to University of Tromso students – When Databases Meet Hadoop
Lecture 2: Bonus Lecture: Exceptional Discount on My Course(s)/Book(s)
Instructors
-
Irfan Elahi
Data Scientist in the world's largest consultancy firm
Rating Distribution
- 1 stars: 20 votes
- 2 stars: 24 votes
- 3 stars: 69 votes
- 4 stars: 152 votes
- 5 stars: 279 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
You may also like
- Top 10 Video Editing Courses to Learn in November 2024
- Top 10 Music Production Courses to Learn in November 2024
- Top 10 Animation Courses to Learn in November 2024
- Top 10 Digital Illustration Courses to Learn in November 2024
- Top 10 Renewable Energy Courses to Learn in November 2024
- Top 10 Sustainable Living Courses to Learn in November 2024
- Top 10 Ethical AI Courses to Learn in November 2024
- Top 10 Cybersecurity Fundamentals Courses to Learn in November 2024
- Top 10 Smart Home Technology Courses to Learn in November 2024
- Top 10 Holistic Health Courses to Learn in November 2024
- Top 10 Nutrition And Diet Planning Courses to Learn in November 2024
- Top 10 Yoga Instruction Courses to Learn in November 2024
- Top 10 Stress Management Courses to Learn in November 2024
- Top 10 Mindfulness Meditation Courses to Learn in November 2024
- Top 10 Life Coaching Courses to Learn in November 2024
- Top 10 Career Development Courses to Learn in November 2024
- Top 10 Relationship Building Courses to Learn in November 2024
- Top 10 Parenting Skills Courses to Learn in November 2024
- Top 10 Home Improvement Courses to Learn in November 2024
- Top 10 Gardening Courses to Learn in November 2024