At the crux of data analysis is the ability to decipher raw data, process it and arrive at meaningful and actionable insights that can shape business strategies. According to the latest research, nearly 2.5 quintillion bytes of data is created every day, and the number is slowly edging upwards. The storage and processing power needed to handle these large volumes of data cannot be handled in an efficient manner with traditional frameworks and platforms. So, there arose a need to explore distributed storages and parallel processing operations in order to understand and make sense of these large volumes of data or big data. Hadoop by Apache provides the much-needed power that is required to manage such situations to handle Big Data. Based on data produced by Wanted analytics it was found out that the top five industries hiring Big Data related expertise include Professional, Scientific and Technical Services (25%), Information Technology (17%), Manufacturing (15%), Finance and Insurance (9%) and Retail Trade (8%).
Simply put, big data would be the problem and Hadoop would be one of the solutions leveraged to make sense of it. With the inclusion of a much needed HDFS component, the distributed storage problem is taken care of while the MapReduce component optimizes parallel data processing. According to Gartner data, nearly 26% of the analysts are leveraging Hadoop in their daily tasks which makes it imperative to learn the platform and stay ahead of the curve. In addition to its ability to handle concurrent tasks, Hadoop is scalable and cost-effective as well, making the lives of analysts much easier than before.
With most businesses facing a data deluge, the Hadoop platform helps in processing these large volumes of data in a rapid manner, thereby offering numerous benefits at both the organization and individual level.
Undergoing training in Hadoop and big data is quite advantageous to the individual in this data-driven world:
Training in Big Data and Hadoop has certain organizational benefits as well:
Given the ease with which it allows you to make sense of huge volumes of data and leverage frameworks to transform the same into actionable insights, training and certification courses for Hadoop & Big Data are in great demand in the field of data science.
Understand what Big Data is and gain in-depth knowledge of Big Data Analytics concepts and tools.
Learn to Process large data sets with Big Data tools to extract information from disparate sources.
Learn about MapReduce, Hadoop Distributed File System (HDFS), YARN, and how to write MapReduce code.
Learn best practices and considerations for Hadoop development as well as debugging techniques.
Learn how to use Hadoop frameworks like ApachePig™, ApacheHive™, Sqoop, Flume, among other projects.
Perform real-world analytics by learning advanced Hadoop API topics with an e-courseware.
Before undertaking a Big Data and Hadoop course, a candidate is recommended to have a basic knowledge of programming languages like Python, Scala, Java and a better understanding of SQL and RDBMS.
Interact with instructors in real-time— listen, learn, question and apply. Our instructors are industry experts and deliver hands-on learning.
Our courseware is always current and updated with the latest tech advancements. Stay globally relevant and empower yourself with the latest training!
Learn theory backed by practical case studies, exercises and coding practice. Get skills and knowledge that can be effectively applied.
Learn from the best in the field. Our mentors are all experienced professionals in the fields they teach.
Learn concepts from scratch, and advance your learning through step-by-step guidance on tools and techniques.
Get reviews and feedback on your final projects from professional developers.
Learning objectives:
This module will introduce you to the various concepts of big data analytics, and the seven Vs of big data—Volume, Velocity, Veracity, Variety, Value, Vision, and Visualization. Explore big data concepts, platforms, analytics, and their applications using the power of Hadoop 3.
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Hands-on: No hands-on
Learning Objectives:
Here you will learn the features in Hadoop 3.x and how it improves reliability and performance. Also, get introduced to MapReduce Framework and know the difference between MapReduce and YARN.
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Hands-on: Install Hadoop 3.x
Learning Objectives: Learn to install and configure a Hadoop Cluster.
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Hands-on: Install and configure eclipse on VM
Learning Objectives:
Learn about various components of the MapReduce framework, and the various patterns in the MapReduce paradigm, which can be used to design and develop MapReduce code to meet specific objectives.
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Hands-on :Use case - Sales calculation using M/R
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Learn about Apache Spark and how to use it for big data analytics based on a batch processing model. Get to know the origin of DataFrames and how Spark SQL provides the SQL interface on top of DataFrame.
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Hands-on:
Look at various APIs to create and manipulate DataFrames and dig deeper into the sophisticated features of aggregations, including groupBy, Window, rollup, and cubes. Also look at the concept of joining datasets and the various types of joins possible such as inner, outer, cross, and so on
Learning Objectives:
Understand the concepts of the stream-processing system, Spark Streaming, DStreams in Apache Spark, DStreams, DAG and DStream lineages, and transformations and actions.
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Hands-on: Process Twitter tweets using Spark Streaming
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Learn to simplify Hadoop programming to create complex end-to-end Enterprise Big Data solutions with Pig.
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Learn about the tools to enable easy data ETL, a mechanism to put structures on the data, and the capability for querying and analysis of large data sets stored in Hadoop files.
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Look at demos on HBase Bulk Loading & HBase Filters. Also learn what Zookeeper is all about, how it helps in monitoring a cluster & why HBase uses Zookeeper.
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Learn how to import and export data between RDBMS and HDFS.
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Understand how multiple Hadoop ecosystem components work together to solve Big Data problems. This module will also cover Flume demo, Apache Oozie Workflow Scheduler for Hadoop Jobs.
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Learning Objectives:
Learn to constantly make sense of data and manipulate its usage and interpretation; it is easier if we can visualize the data instead of reading it from tables, columns, or text files. We tend to understand anything graphical better than anything textual or numerical.
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Hands-on: Use Data Visualization tools to create a powerful visualization of data and insights.
Learning Objectives:
Learn a simple way to access servers, storage, databases, and a broad set of application services over the internet.
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Hands-on: Implement Cloud computing and deploy models.
Aadhar card Database is the largest biometric project of its kind currently in the world. The Indian government needs to analyse the database, divide the data state-wise and calculate how many people are still not registered, how many cards are approved and how they can bifurcate it according to gender, age, location, etc.
The Citi group of banks is one of the world’s largest providers of financial services, In recent years, they adopted a fully Big Data-driven approach to drive business growth and enhance the services provided to customers because traditional systems are not able to handle the huge amount of data pouring in. Using Hadoop, they will be storing and analyzing banking data to come up with multiple insights.
On Ecommerce Web sites, clickstream analysis is the process of collecting, analyzing and reporting aggregate data about which pages a website visitor visits and in what order. With increasing number of ecommerce businesses, there is a need to track and analyse clickstream data. When using traditional databases to load and process clickstream data, there are several complexities in storing and streaming customer information and it also requires a huge amount of processing time to analyse and visualize it.
The learning methodology put it all together for me. I ended up attempting projects I’ve never done before and never thought I could.
You can go from nothing to simply get a grip on the everything as you proceed to begin executing immediately. I know this from direct experience!
You can go from nothing to simply get a grip on the everything as you proceed to begin executing immediately. I know this from direct experience!
The learning system set up everything for me. I wound up working on projects I've never done and never figured I could.
I know from first-hand experience that you can go from zero and just get a grasp on everything as you go and start building right away.
I had enrolled for the course last week at KnowledgeHut. The course was very well structured. The trainer was really helpful and completed the syllabus on time and also provided real world examples which helped me to remember the concepts.
The Trainer at KnowledgeHut made sure to address all my doubts clearly. I was really impressed with the training and I was able to learn a lot of new things. I would certainly recommend it to my team.
The course material was designed very well. It was one of the best workshops I have ever attended in my career. Knowledgehut is a great place to learn new skills. The certificate I received after my course helped me get a great job offer. The training session was really worth investing.
Hadoop has now become the de facto technology for storing, handling, evaluating and retrieving large volumes of data. Big Data analytics has proven to provide significant business benefits and more and more organizations are seeking to hire professionals who can extract crucial information from structured and unstructured data. KnowledgeHut brings you a full-fledged course on Big Data Analytics and Hadoop development that will teach you how to develop, maintain and use your Hadoop cluster for organizational benefit.
This course will prepare you for everything you need to learn about Big Data while gaining practical experience on Hadoop.
After completing our course, you will be able to understand:
There are no restrictions but participants would benefit if they have elementary computer knowledge.
Yes, KnowledgeHut offers this training online.
Your instructors are Hadoop experts who have years of industry experience.
Any registration cancelled within 48 hours of the initial registration will be refunded in FULL (please note that all cancellations will incur a 5% deduction in the refunded amount due to transactional costs applicable while refunding) Refunds will be processed within 30 days of receipt of written request for refund. Kindly go through our Refund Policy for more details:https://www.knowledgehut.com/refund-policy
KnowledgeHut offers a 100% money back guarantee if the candidate withdraws from the course right after the first session. To learn more about the 100% refund policy, visit our Refund Policy.
In an online classroom, students can log in at the scheduled time to a live learning environment which is led by an instructor. You can interact, communicate, view and discuss presentations, and engage with learning resources while working in groups, all in an online setting. Our instructors use an extensive set of collaboration tools and techniques which improves your online training experience.
Minimum Requirements:
Among the top ten cities in the world to have been highly integrated into the global city, Sydney is also the home to 48% of Australia€™s Fortune 500 companies. The output of the technology sector in the city is around 11% on average. The most populous city in Australia, it also attracts a huge number of software professionals from nearby countries, especially from South Asia. Sydney is also fast becoming a hub for vocational training, including in IT. In such a place, learning Big Data with Hadoop online is just one of the many skills that one can acquire to stay at the top of the game.
In a world where 2.5 quintillion data is created at any given moment, managing it is of the utmost concern for the functioning for a large number of industries. Such quantities of data cannot be handled and managed by traditional patterns and frameworks. Hadoop by Apache is one of those platforms capable of storing and processing large volumes of data. The HDFS component ensures distributed storage solutions, while MapReduce optimises parallel data processing. Today, nearly 26% of analysts are using Hadoop daily, which makes it worthwhile to learn.
As Hadoop is used by a lot of major organisations today like Google and Microsoft, it has both individual and organisational benefits. Not only is it cost-effective for the organisation, but it is also a very lucrative skill to acquire. This course is designed to seamlessly move you from the basic to the advanced levels, enabling you to learn things like Big Data analytics and tools, coding with MapReduce, Hadoop Distributed File System (HDFS) and YARN, debugging techniques, Hadoop frameworks like ApacheHive, Flume and Sqoop, along with real-world analytics like Hadoop API and e-courseware. Before signing up for this course, the participant is expected to be acquainted with the basics of Java or Python, along with those of SQL and RDBMS.
The KnowledgeHut course is unique in that it pays a lot of attention in its participants acquiring hands-on skills. There are 30 hours of live training with a Hadoop expert trainer who would be addressing all your queries. There are 3 live projects, with at least the final code being reviewed by a professional. This course is designed primarily for data scientists and architects, BI analysts and developers, SAS developers, data analysts and consultants. There are both individual and corporate training sessions to ensure that the participant is acquainted with all possible working conditions.