Новости
Apache Spark with Scala useful for Databricks Certification |
В разделе: - [Информация] |
|||||||
Genre: eLearning | MP4 | Video: h264, 1280x720 | Audio: aac, 44100 Hz Language: English | VTT | Size: 1.97 GB | Duration: 5h 34m What you'll learn Apache Spark ( Spark Core, Spark SQL, Spark RDD and Spark DataFrame) Databricks Certification syllabus included in the Course An overview of the architecture of Apache Spark. Work with Apache Spark's primary abstraction, resilient distributed datasets(RDDs) to process and analyze large data sets. Develop Apache Spark 3.0 applications using RDD transformations and actions and Spark SQL. Analyze structured and semi-structured data using Datasets and DataFrames, and develop a thorough understanding about Spark SQL. Requirements Some programming experience is required and Scala fundamental knowledge is also required , but you need to know the fundamentals of programming in order to pick it up. You will need a desktop PC and an Internet connection. Any flavor of Operating System is fine. Description Apache Spark with Scala useful for Databricks Certification(Unofficial) Apache Spark with Scala its a Crash Course for Databricks Certification Enthusiast (Unofficial) for beginners "Big data" analysis is a hot and highly valuable skill - and this course will teach you the hottest technology in big data: Apache Spark. Employers including Amazon, eBay, NASA, Yahoo, and many more. All are using Spark to quickly extract meaning from massive data sets across a fault-tolerant Hadoop cluster. You'll learn those same techniques, using your own Operating system right at home. So, What are we going to cover in this course then? Learn and master the art of framing data analysis problems as Spark problems through over 30+ hands-on examples, and then execute them up to run on Databricks cloud computing services (Free Service) in this course. Well, the course is covering topics which are included for certification: 1) Spark Architecture Components Driver, Core/Slots/Threads, Executor Partitions 2) Spark Execution Jobs Tasks Stages 3) Spark Concepts Caching, DataFrame Transformations vs. Actions, Shuffling Partitioning, Wide vs. Narrow Transformations 4) DataFrames API DataFrameReader DataFrameWriter DataFrame [Dataset] 5) Row & Column (DataFrame) 6) Spark SQL Functions In order to get started with the course And to do that you're going to have to set up your environment. So, the first thing you're going to need is a web browser that can be (Google Chrome or Firefox, or Safari, or Microsoft Edge (Latest version)) on Windows, Linux, and macOS desktop This is completely Hands-on Learning with the Databricks environment. Who this course is for: Apache Spark Beginners, Beginner Apache Spark Developer, Bigdata Engineers or Developers, Software Developer, Machine Learning Engineer, Data Scientist Screenshots Homepage
|
||||||||
|