20. Juli 2019 - 18:00 bis 20:00
Teilen Sie es auf:

Introduction to Apache Spark training for beginners in Basel | End to End Spark Implementation training | Deploying Spark Applications, RDD, Spark Machine Learning Libraries (Spark MLib) Training | Spark Core, Spark SQL Training | Entirety Technology | Samstag, 20. Juli 2019

In this course we start at foundational level with Apache Spark technical essentials where you can learn the foundations of Apache Spark, master real-time data processing using Spark streaming, Spark SQL, Spark Machine Learning Libraries (Spark MLib) 

Course Schedule

This is a weekend course that will be held July 20 - August 11, 2019 US Pacific Time
The class sessions will be held-Saturday, Sunday every weekend for 4 weekends
9:00-11:00 AM US Pacific time, each day.
Please check your local date and time for first session.


Exposure to knowledge of databases, SQL (Structured query language).
Basic knowledge of object-oriented programming.
Knowledge of Scala.

Course Features

4 weeks, 8 sessions, 16 hours of total LIVE Instruction
Training material, instructor handouts and access to useful resources on the cloud provided
Practical Hands on Lab exercises on cloud workstations provided
Actual code and scripts provided
Real-life Scenarios

Course Outline

Introduction to Spark
Spark Vs MapReduce
Spark Vs Hadoop
Spark Installation, Configuration, Shell
Spark and Resilient Distributed Datasets (RDD)
Batch and Real-Time Analytics with Apache Spark
Functional Programming
Spark Architecture
Object-Oriented Programming
Spark Core
Cassandra (NoSQL database)
Spark Integration with NoSQL (Cassandra) and Amazon EC2
Spark Streaming
Spark SQL
Spark MLLib
How to write and deploy Spark Applications
Spark Parallel Processing
Spark performance
Scheduling and Partitioning

Refund Policy

100% refund can be applied if request is initiated 24 hours before the 1st course session.
If a class is rescheduled/cancelled by the organizer, registered students will be offered a credit towards any future course or a 100% refund.