space
Search Courses  in 

Get COURSE FEES & Discounts from BEST Apache Spark 2.4 Institutes in Haryana!

 

My Area

 

My Name

My Mobile Number

My Email ID

 

Best Institutes for Apache Spark 2.4 training in Haryana with Course Fees

List of 1+ Apache Spark 2.4 training institutes located near to you in Haryana as on October 19, 2019. Get access to training curriculum, placement training, course fees, contact phone numbers and students reviews.

 

 

training institutes Code Kaksha
Haryana - Kurukshetra
No Reviews. Write a Review
training institute
Code Kaksha at Kurukshetra -  class room photo_14047 Code Kaksha at Kurukshetra - 	student counseling room photo_14046 
Address: Near Vishnu Colony Railway road Kurukshetra Haryana-136118

 
First << 1  >> Last

Apache Spark 2.4 Training Institutes in Haryana - by Location

Yet5.com Provides complete list of best Apache Spark 2.4 training institutes in Haryana and training centers with contact address, phone number, training reviews, course fees, job placement, course content, special offers and trainer profile information by area.

 

 

 

Learning Apache Spark 2.4 course in Haryana - Benefits, Advantages & Placements.

We have identified the benefits of learning apache-spark course in Haryana.
Apache Spark 2.4 training in Haryana is part of Hadoop training course class,
Haryana is located in Northern India with Chandigarh as its capital city. It holds a literacy rate of 76.64%. Haryana houses 29 universities and 299 colleges which includes 115 government colleges, 88 govt-aided colleges and 96 self-finance colleges. Haryana has the prestige of holding Chaudhary Charan Singh Haryana Agricultural University, Guru Jambheshwar University of Science and Technology, Lala Lajpat Rai University of Veterinary & Animal Sciences. Haryana also houses multiple IT companies to offer job opportunities. There are multiple training centres is Haryana that offers best in class training for students.
You have travel connectivity to apache-spark course educational training institutes in Haryana. Rail network in Haryana is covered under 3 rail zones by 5 rail divisions that takes you to nearly all parts in Haryana and India. Also, the Delhi Metro connects Delhi with parts of Haryana state within NCR. Haryana serves public transports in the forms of buses, and other services in the form of taxis, cabs, auto-rickshaws for commuters to cover the nook and corner of Haryana.

 

 

 

Apache Spark 2.4 course Content / syllabus in haryana

Below is the Apache Spark 2.4 course content in haryana used by the training institutes as part of the Apache Spark 2.4 course training. The Apache Spark 2.4 course syllabus covers basic to advanced level course contents which is used by most of Apache Spark 2.4 training classes in haryana .

 

1 SCALA (Object Oriented and Functional Programming)
1.1 Getting started With Scala.
1.2 Scala Background, Scala Vs Java and Basics.
1.3 Interactive Scala – REPL, data types, variables,expressions, simple functions.
1.4 Running the program with Scala Compiler.
1.5 Explore the type lattice and use type inference
1.6 Define Methodsand Pattern Matching.

2 Scala Environment Set up.
2.1 Scala set up on Windows.
2.2 Scala set up on UNIX.

3 Functional Programming.
3.1 What is Functional Programming.
3.2 Differences between OOPS and FPP.

4 Collections (Very Important for Spark)
4.1 Iterating, mapping, filtering and counting
4.2 Regular expressions and matching with them.
4.3 Maps, Sets, group By, Options, flatten, flat Map
4.4 Word count, IO operations,file access, flatMap

5 Object Oriented Programming.
5.1 Classes and Properties.
5.2 Objects, Packaging and Imports.
5.3 Traits.
5.4 Objects, classes, inheritance, Lists with multiple related types, apply

6 Integrations
6.1 What is SBT?
6.2 Integration of Scala in Eclipse IDE.
6.3 Integration of SBT with Eclipse.

7 SPARK CORE
7.1 Batch versus real-time data processing
7.2 Introduction to Spark, Spark versus Hadoop
7.3 Architecture of Spark.
7.4 Coding Spark jobs in Scala
7.5 Exploring the Spark shell -> Creating Spark
Context.
7.6 RDD Programming
7.7 Operations on RDD.
7.8 Transformations
7.9 Actions
7.10 Loading Data and Saving Data.
7.11 Key Value Pair RDD.
7.12 Broad cast variables.

8 Persistence.
8.1 Configuring and running the Spark cluster.
8.2 Exploring to Multi Node Spark Cluster.
8.3 Cluster management
8.4 Submitting Spark jobs and running in the
cluster mode.
8.5 Developing Spark applications in Eclipse
8.6 Tuning and Debugging Spark.

9 CASSANDRA (N0SQL DATABASE)
9.1 Learning Cassandra
9.2 Getting started with architecture
9.3 Installing Cassandra.
9.4 Communicating with Cassandra.
9.5 Creating a database.
9.6 Create a table
9.7 Inserting Data
9.8 Modelling Data.
9.9 Creating an Application with Web.
9.10 Updating and Deleting Data.

10 SPARK INTEGRATION WITH NO SQL (CASSANDRA) and AMAZON EC2
10.1 Introduction to Spark and Cassandra
Connectors.
10.2 Spark With Cassandra -> Set up.
10.3 Creating Spark Context to connect the
Cassandra.
10.4 Creating Spark RDD on the Cassandra Data
base.
10.5 Performing Transformation and Actions on the
Cassandra RDD.
10.6 Running Spark Application in Eclipse to
access the data in the Cassandra.
10.7 Introduction to Amazon Web Services.
10.8 Building 4 Node Spark Multi Node Cluster in
Amazon Web Services.
10.9 Deploying in Production with Mesos and YARN.

11 SPARK STREAMING
11.1 Introduction of Spark Streaming.
11.2 Architecture of Spark Streaming
11.3 Processing Distributed Log Files in Real Time
11.4 Discretized streams RDD.
11.5 Applying Transformations and Actions on
Streaming Data
11.6 Integration with Flume and Kafka.
11.7 Integration with Cassandra
11.9 Monitoring streaming jobs.

12 SPARK SQL
12.1 Introduction to Apache Spark SQL
12.2 The SQL context
12.3 Importing and saving data
12.4 Processing the Text files,JSON and Parquet
Files
12.5 DataFrames
12.6 user-defined functions
12.7 Using Hive
12.8 Local Hive Metastore server

13 SPARK MLIB.
13.1 Introduction to Machine Learning
13.2 Types of Machine Learning.
13.3 Introduction to Apache Spark MLLib
Algorithms.
13.4 Machine Learning Data Types and working with
MLLib.
13.5 Regression and Classification Algorithms.
13.6 Decision Trees in depth.
13.7 Classification with SVM, Naive Bayes
13.8 Clustering with K-Means
13.9 Building the Spark server

 

High Technologies Solutions - Delhi,Noida,Gurgaon

TrainerDesk Training Jobs

 

Training course fee & Discounts