Your cart is currently empty.
The Spark training in Delhi at Intellipaat is an instructor-led program curated by industry experts to make you a certified professional. This best Spark and Scala course in Delhi will help you learn Spark RDDs, Scala–Java, Flume that will help you clear the Cloudera certification.
500% salary hike received by a working professional post completion of the course*
Fresher earned 30 LPA salary package on completion of the course*
53% of learners received 50% and above salary hike post completion of the program*
85% of the learners achieved their training objectives within 9 months of course completion*
95% learner satisfaction score post completion of the program/training*
Once you complete this comprehensive Apache Spark training in Delhi, you will acquire all the skills and knowledge in Spark and Scala, including an understanding of Scala collections, Spark Shell, Hive, and more.
In Intellipaat’s Apache Spark course, you will learn about:
Mentioned below are a few reasons why you must enroll in our Apache Spark training in Delhi:
The cost of the Apache Spark certification exam in Delhi is ₹20,650, while the duration of the CCA Spark and Hadoop Developer Exam (CCA175) is about 120 minutes.
The professionals listed below can enroll in this Apache Spark Training:
You do not need to have any particular skills to register for Intellipaat’s Spark and Scala certification course in Delhi. Although, it won’t hurt to have some basic knowledge of SQL or any other database query language.
Talk To Us
We are happy to help you 24/7
Data Engineer | Bengaluru
Intellipaat helped me to acquire a solid job in the third year of BTech. I received seven job offers, with 30 LPA as the highest CTC. Thanks to Intellipaat for making my career successful.
Senior Software Engineer | Gurgaon
This certification program helped me gain the right skills to make a career switch from a consultant to a Senior Software Engineer. The knowledge of Hadoop and the right tools was the main reason for my transition.
Senior Software Engineer
Big Data Professional | India
Intellipaat has provided me with great content as per my requirement to shift from Software Engineering to Big Data. I recommend their courses to everyone who wishes to aim for a successful career transition.
Senior Software Engineer
Big Data Professional
Big Data Expert | India
This training has helped me make a smooth career transition from a non-tech background to a Big Data Expert. My objective of gaining skills in data driven decision making after my MBA was fulfilled.
Big Data Expert
Marketing Data Analyst | India
Thanks to Intellipaat, I was able to shift from a data analyst to a marketing data analyst with a 35% salary hike and gained a deep understanding of analytics.
Marketing Data Analyst
Big Data Developer | Dallas
The course helped me make a career transition from Computer Technical Specialist to Big Data developer with a 60% hike. The online interactive sessions by trainers are the best thing about Intellipaat.
Computer Technical Specialist
Big Data Developer
Program Manager | Pune
Thanks to Intellipaat, I was able to switch to the role of a program manager from a Microsoft dynamics consultant. Gaining knowledge of the latest technologies as per industry standards helped me the most.
Microsoft Dynamics Consultant
ETL Developer | Maharashtra
Thanks to Intellipaat I was able to make a transition from Consultant to ETL Developer. The rich content has helped me get this role. I am extremely satisfied with my career today.
Splunk Administrator | Bangalore
I was a non-IT person before enrolling in the training. But I could make a transition to a Support Executive at IBM, all because of Intellipaat’s comprehensive content, expert trainers, and a great job assistance team.
57% Average Salary Hike
$1,28,000 Highest Salary
12000+ Career Transitions
300+ Hiring Partners
*Past record is no guarantee of future job prospects
1.1 Introducing Scala
1.2 Deployment of Scala for Big Data applications and Apache Spark analytics
1.3 Scala REPL, lazy values, and control structures in Scala
1.4 Directed Acyclic Graph (DAG)
1.5 First Spark application using SBT/Eclipse
1.6 Spark Web UI
1.7 Spark in the Hadoop ecosystem.
2.1 The importance of Scala
2.2 The concept of REPL (Read Evaluate Print Loop)
2.3 Deep dive into Scala pattern matching
2.4 Type interface, higher-order function, currying, traits, application space and Scala for data analysis
3.1 Learning about the Scala Interpreter
3.2 Static object timer in Scala and testing string equality in Scala
3.3 Implicit classes in Scala
3.4 The concept of currying in Scala
3.5 Various classes in Scala
4.1 Learning about the Classes concept
4.2 Understanding the constructor overloading
4.3 Various abstract classes
4.4 The hierarchy types in Scala
4.5 The concept of object equality
4.6 The val and var methods in Scala
5.1 Understanding sealed traits, wild, constructor, tuple, variable pattern, and constant pattern
6.1 Understanding traits in Scala
6.2 The advantages of traits
6.3 Linearization of traits
6.4 The Java equivalent
6.5 Avoiding of boilerplate code
7.1 Implementation of traits in Scala and Java
7.2 Handling of multiple traits extending
8.1 Introduction to Scala collections
8.2 Classification of collections
8.3 The difference between iterator and iterable in Scala
8.4 Example of list sequence in Scala
9.1 The two types of collections in Scala
9.2 Mutable and immutable collections
9.3 Understanding lists and arrays in Scala
9.4 The list buffer and array buffer
9.6 Queue in Scala
9.7 Double-ended queue Deque, Stacks, Sets, Maps, and Tuples in Scala
10.1 Introduction to Scala packages and imports
10.2 The selective imports
10.3 The Scala test classes
10.4 Introduction to JUnit test class
10.5 JUnit interface via JUnit 3 suite for Scala test
10.6 Packaging of Scala applications in the directory structure
10.7 Examples of Spark Split and Spark Scala
11.1 Introduction to Spark
11.2 Spark overcomes the drawbacks of working on MapReduce
11.3 Understanding in-memory MapReduce
11.4 Interactive operations on MapReduce
11.5 Spark stack, fine vs. coarse-grained update,, Spark Hadoop YARN, HDFS Revision, and YARN Revision
11.6 The overview of Spark and how it is better than Hadoop
11.7 Deploying Spark without Hadoop
11.8 Spark history server and Cloudera distribution
12.1 Spark installation guide
12.2 Spark configuration
12.3 Memory management
12.4 Executor memory vs. driver memory
12.5 Working with Spark Shell
12.6 The concept of resilient distributed datasets (RDD)
12.7 Learning to do functional programming in Spark
12.8 The architecture of Spark
13.1 Spark RDD
13.2 Creating RDDs
13.3 RDD partitioning
13.4 Operations and transformation in RDD
13.5 Deep dive into Spark RDDs
13.6 The RDD general operations
13.7 Read-only partitioned collection of records
13.8 Using the concept of RDD for faster and efficient data processing
13.9 RDD action for the collect, count, collects map, save-as-text-files, and pair RDD functions
14.1 Understanding the concept of key-value pair in RDDs
14.2 Learning how Spark makes MapReduce operations faster
14.3 Various operations of RDD
14.4 MapReduce interactive operations
14.5 Fine and coarse-grained update
14.6 Spark stack
15.1 Comparing the Spark applications with Spark Shell
15.2 Creating a Spark application using Scala or Java
15.3 Deploying a Spark application
15.4 Scala built application
15.5 Creation of the mutable list, set and set operations, list, tuple, and concatenating list
15.6 Creating an application using SBT
15.7 Deploying an application using Maven
15.8 The web user interface of Spark application
15.9 A real-world example of Spark
15.10 Configuring of Spark
16.1 Learning about Spark parallel processing
16.2 Deploying on a cluster
16.3 Introduction to Spark partitions
16.4 File-based partitioning of RDDs
16.5 Understanding of HDFS and data locality
16.6 Mastering the technique of parallel operations
16.7 Comparing repartition and coalesce
16.8 RDD actions
17.1 The execution flow in Spark
17.2 Understanding the RDD persistence overview
17.3 Spark execution flow, and Spark terminology
17.4 Distribution shared memory vs. RDD
17.5 RDD limitations
17.6 Spark shell arguments
17.7 Distributed persistence
17.8 RDD lineage
17.9 Key-value pair for sorting implicit conversions like CountByKey, ReduceByKey, SortByKey, and AggregateByKey
18.1 Introduction to Machine Learning
18.2 Types of Machine Learning
18.3 Introduction to MLlib
18.4 Various ML algorithms supported by MLlib
18.5 Linear regression, logistic regression, decision tree, random forest, and K-means clustering techniques
1. Building a Recommendation Engine
19.1 Why Kafka and what is Kafka?
19.2 Kafka architecture
19.3 Kafka workflow
19.4 Configuring Kafka cluster
19.6 Kafka monitoring tools
19.7 Integrating Apache Flume and Apache Kafka
1. Configuring Single Node Single Broker Cluster
2. Configuring Single Node Multi Broker Cluster
3. Producing and consuming messages
4. Integrating Apache Flume and Apache Kafka
20.1 Introduction to Spark Streaming
20.2 Features of Spark Streaming
20.3 Spark Streaming workflow
20.4 Initializing StreamingContext, discretized Streams (DStreams), input DStreams and Receivers
20.5 Transformations on DStreams, output operations on DStreams, windowed operators and why it is useful
20.6 Important windowed operators and stateful operators
1. Twitter Sentiment analysis
2. Streaming using Netcat server
3. Kafka–Spark streaming
4. Spark–Flume streaming
21.1 Introduction to various variables in Spark like shared variables and broadcast variables
21.2 Learning about accumulators
21.3 The common performance issues
21.4 Troubleshooting the performance problems
22.1 Learning about Spark SQL
22.2 The context of SQL in Spark for providing structured data processing
22.3 JSON support in Spark SQL
22.4 Working with XML data
22.5 Parquet files
22.6 Creating Hive context
22.7 Writing data frame to Hive
22.8 Reading JDBC files
22.9 Understanding the data frames in Spark
22.10 Creating Data Frames
22.11 Manual inferring of schema
22.12 Working with CSV files
22.13 Reading JDBC tables
22.14 Data frame to JDBC
22.15 User-defined functions in Spark SQL
22.16 Shared variables and accumulators
22.17 Learning to query and transform data in data frames
22.18 Data frame provides the benefit of both Spark RDD and Spark SQL
22.19 Deploying Hive on Spark as the execution engine
23.1 Learning about the scheduling and partitioning in Spark
23.2 Hash partition
23.3 Range partition
23.4 Scheduling within and around applications
23.5 Static partitioning, dynamic sharing, and fair scheduling
23.6 Map partition with index, the Zip, and GroupByKey
23.7 Spark master high availability, standby masters with ZooKeeper, single-node recovery with the local file system and high order functions
Free Career Counselling
We are happy to help you 24/7
Practice Essential Tools
Designed By Industry Experts
Get Real-world Experience
Recommend the best movie based on the user's taste. This hands-on Apache Spark project, along with using the MLlib, includes the creation of collaborative filtering, regression, clustering, and dimensionality reduction.
This project facilitates learning to analyze the sentiments of the user by a tweet. As a part of the project, the learners will be required to successfully integrate Twitter API and utilize PHP or Python to build a server-side code.
This project has been included to help the learners to combine Spark SQL with ETL applications, perform real-time data analysis, deploy machine learning algorithms, perform batch analysis, build visualizations, and process graphs.
Via Intellipaat PeerChat, you can interact with your peers across all classes and batches and even our alumni. Collaborate on projects, share job referrals & interview experiences, compete with the best, make new friends — the possibilities are endless and our community has something for everyone!
Over 20+ live interactive sessions with an industry expert to gain knowledge and experience on how to build skills that are expected by hiring managers. These will be guided sessions and that will help you stay on track with your up-skilling objective.
Get assistance in creating a world-class resume & LinkedIn Profile from our career services team and learn how to grab the attention of the hiring manager at the profile shortlisting stage
Students will go through several mock interviews conducted by technical experts who will then offer tips and constructive feedback for reference and improvement.
Attend one-on-one sessions with career mentors on how to develop the required skills and attitude to secure a dream job based on a learners’ educational background, experience, and future career aspirations.
Assured Interviews upon submission of projects and assignments. Get interviewed by our 500+ hiring partners.
Exclusive access to our dedicated job portal and apply for jobs. More than 400 hiring partners’ including top start-ups and product companies hiring our learners. Mentored support on job search and relevant jobs for your career growth.
Intellipaat’s Apache Spark and Scala course in Delhi is designed for clearing the Apache Spark component of the Cloudera Spark and Hadoop Developer Certification (CCA175) exam. Join our Hadoop training course for gaining proficiency in the Hadoop component of the CCA175 exam. The entire course is created by industry experts so that the learners can get top jobs in the world’s best organizations. This training comprises several real-world projects and case studies that are highly valued in the industry.
When you complete the Apache Spark and Scala training in Delhi, you will have to attempt the quizzes that will help you prepare for the CCA175 certification exam and will aid you to score top marks.
Intellipaat’s course completion certificate will be awarded once you successfully complete the project work, after it is reviewed by our experts. This certification is recognized by top companies such as TCS, Cisco, Hexaware, Mu Sigma, Cognizant, Sony, Genpact, Ericsson, and many others.
I am glad I took this training from Intellipaat. There was extensive interactivity in the sessions throughout the training which made it the best online learning platform according to me.
I firmly believe that Intellipaat is the perfect place to embark on a great professional career in the technology space. Their Apache Spark and Scala course was praiseworthy. Amazing experience.
The best thing I liked about the training was the opportunity to work on real life projects that helped me get hands-on learning in one of the fastest Big Data processing engines. Thank you team.
The quality of the course content is just awesome. I am absolutely happy and equally satisfied to have chosen the right course for my career. Overall, a great set of learning tutorials and videos.
This online training program is one of the best in this category. Well-curated curriculum and excellent course material by Intellipaat. The trainers are qualified and I highly recommend it.
This course delivered everything as per my expectations. It offered exactly what I wanted to learn and get hands-on experience in. Great trainers and amazing learning content by Intellipaat.
I had enrolled in this program and I must say that the course is well planned and structured, that makes it simple to learn. Additionally, the content provided is of high quality for better learning.
Intellipaat provided me with a comprehensive learning platform where I could resolve my doubts and the training was extremely comprehensive. The real world projects gave me industrial experience.
Intellipaat has been extremely helpful in my learning journey and helped me gain skills in all the in-demand tools and technologies in this domain at one single platform. Thank you team.
The candidates from Intellipaat were very good. They are better than experienced people from the same domain. The learners had hands-on experience. The product managers were very happy with the job-ready recruits.
Intellipaat tops the list of institutes when it comes to delivering quality Hadoop training in Delhi. Enrolling at Intellipaat is the best choice you can make if you wish to learn Spark and Scala and apply for the best jobs with high salaries. This online course includes real-time exercises, assignments, and case studies compiled together by industry experts. Besides, the course is aligned with the syllabus of the Cloudera Spark and Hadoop Developer Certification (CCA175) exam.
Also, Intellipaat provides lifelong access to courseware, lectures, online support, and more for free. In this Spark and Scala training in Delhi, you will have access to Intellipaat’s Proprietary Virtual Machine throughout your lifetime and will get free access to the cloud for 6 months.
Intellipaat has been serving Spark enthusiasts from every corner of the city. You can be living in any locality in Delhi, be it Delhi NCR, New Delhi, Saket, or other South Delhi localities, Karol bagh, Janakpuri, Vasant Kunj, Uttam Nagar, Dwarka, Laxmi Nagar, Preet Vihar, Mahipalpur, Pitampura, Shastri Nagar, Paschim Vihar, or anywhere. You can have full access to our Apache Spark online training sitting at home or office 24/7.
At Intellipaat, you can enroll in either the instructor-led online training or self-paced training. Apart from this, Intellipaat also offers corporate training for organizations to upskill their workforce. All trainers at Intellipaat have 12+ years of relevant industry experience, and they have been actively working as consultants in the same domain, which has made them subject matter experts. Go through the sample videos to check the quality of our trainers.
Intellipaat is offering 24/7 query resolution, and you can raise a ticket with the dedicated support team at any time. You can avail of email support for all your queries. If your query does not get resolved through email, we can also arrange one-on-one sessions with our support team. However, 1:1 session support is provided for a period of 6 months from the start date of your course.
Intellipaat is offering you the most updated, relevant, and high-value real-world projects as part of the training program. This way, you can implement the learning that you have acquired in real-world industry setup. All training comes with multiple projects that thoroughly test your skills, learning, and practical knowledge, making you completely industry-ready.
You will work on highly exciting projects in the domains of high technology, ecommerce, marketing, sales, networking, banking, insurance, etc. After completing the projects successfully, your skills will be equal to 6 months of rigorous industry experience.
Intellipaat actively provides placement assistance to all learners who have successfully completed the training. For this, we are exclusively tied-up with over 80 top MNCs from around the world. This way, you can be placed in outstanding organizations such as Sony, Ericsson, TCS, Mu Sigma, Standard Chartered, Cognizant, and Cisco, among other equally great enterprises. We also help you with the job interview and résumé preparation as well.
You can definitely make the switch from self-paced training to online instructor-led training by simply paying the extra amount. You can join the very next batch, which will be duly notified to you.
Once you complete Intellipaat’s training program, working on real-world projects, quizzes, and assignments and scoring at least 60 percent marks in the qualifying exam, you will be awarded Intellipaat’s course completion certificate. This certificate is very well recognized in Intellipaat-affiliated organizations, including over 80 top MNCs from around the world and some of the Fortune 500companies.
Apparently, no. Our job assistance program is aimed at helping you land in your dream job. It offers a potential opportunity for you to explore various competitive openings in the corporate world and find a well-paid job, matching your profile. The final decision on hiring will always be based on your performance in the interview and the requirements of the recruiter.