Apache Spark

DURATION 45 hrs
CERTIFICATION
YES

Description

APACHE SPARK TRAINING (Duration: 30-35 Hours – 4-5 Weeks) – Authorised KRYTERION Partners for SPARK CERTIFICATION

Money back Guarantee with 15% interest if not satisfied with quality of training

No record found.

Make an inquiry

Course Contents

Scala Object Oriented Programming

  • Introduction to Scala
  • Why scala?
  • Scala vs Java
  • Installing of Scala
  • Installing of Sbt
  • Variable Declarations.
  • Ranges
  • Partial Functions
  • Method Declarations
  • Literal’s in Scala
  • Operators
  • Operator Overloading.
  • Scala Control Statements.
  • Call by Name and Call by Value
  • Pattern Macthings.
  • Implicit Conversions
  • Traits
  • Abstraction
  • Inheritance
  • Collections(List,Tuple,Set,Arrays,Array Buffer,Map)

Scala Functional Programming

  • What is Functional programming?
  • Diff between Functional and Imperative?
  • Anonymous Functions
  • Lambda’s Functions
  • Clousures.
  • Currying
  • Functional Data Structures(Sequences,Map,Stes)
  • Traversal
  • Mapping
  • Flat Mapping
  • Filtering
  • Folding and Reducing
  • Comprahensions

Spark in Detailed

  • What is Spark?
  • Why Spark?
  • Diff between Map Reduce and Spark?
  • Diff between Spark and Storm?
  • Installation of Spark on HDFS
  • Installation of Spark on EC2
  • What is RDD’s and creation of RDD’s.
  • Programming with RDD’s.
  • Working with Key/Value pairs
  • Loading and saving your Data.
  • Advanced Spark Programming.
  • Raunning on a Spark Cluster.
  • Spark Streaming.
  • Spark SQL.
  • Spark MLIB.
  • Spark Graphix.
  • Tunning and Debugging Spark.

Kafka in Detailed

  • What is Kafka?
  • Why Kafka?
  • Installing kafka on localmode.
  • Installing kafka on localmode with multiple servers.
  • Installing kafka on multiple servers with distributed mode.
  • Creating Custom Producers.
  • Creating Custom Consumers.
  • Integrating Kafka to Storm.
  • Integrating kafka to Hadoop.
  • Overview of Kafka Administration.

Project Work

About the Trainer:

  • Real Time working Professional
  • Faculty was among few who is directly trained by CLOUDERA
  • Has experience in delivering Corporate Trainings
  • Has overall experience of 11 years in IT
  • 5 years of experience in Hadoop and 1.5 yrs in Spark.
  • Certified Professional
  • Trained more than 500 students till now (25 batches as on Jun 2016)
  • 60% of the students already placed in big corporates on their own
  • Taken around 10 Hadoop/ Spark Online training batches for US students
  • Delivered projects / POCs on Cloudera, Hortonworks & MapR & Spark

Highlights of the Course:

  • Teaching is oriented towards –
    • o Practical oriented & Hands on
    • o clear understanding of basics
    • o what to expect as an interview question while topic discussion
  • Exclusive Access to a variety of latest interview questions and answers
  • Work on real-time projects(in all tools like – Pig, Hive, Mapreduce & HBase…)
  • Certification guidance & Material
  • Hand-outs will be given which would serve as a knowledge-check
  • Assistance in Resume preparation
  • Interviews guidance
  • Corporate level Training
  • Finally, this training gives you all that are needed to secure a desired job & keeps you get going in your job!

Why Gyanvriksh:

  • Authorized SPARK Certification Partners
  • Money back guarantee with 15% interest if not satisfied – Quality Assured
  • Rated 90% excellent by students – Refer JustDial & Facebook reviews
  • Complete Practical Oriented Hands on Training
  • Situated in IT Hub Kondapur/Madhapur – Main Road
  • Experienced, Certified & Real time working professional
  • Class recordings of every session will be provided – Only for Online Training
  • Maximum batch size 25 to give more focus at individual level. Online 1 to 1
  • Register for a course and attend same course of same faculty in future any number of times for free
  • Weekend, Weekday, Online & Corporate Trainings
  • Nice ambience & AC Classrooms

Reviews

There are no reviews yet.

Be the first to review “Apache Spark”

Your email address will not be published. Required fields are marked *