Posts

6 Important Reasons for the Java Experts to learn Hadoop Skills

You must be well aware of the fact that Java and Hadoop Skills are in high demand these days. Gone are the days when advancement work moved around Java and social database. Today organizations are managing big information. It is genuinely big. From gigabytes to petabytes in size and social databases are exceptionally restricted to store it. Additionally, organizations are progressively outsourcing the Java development jobs to different groups who are as of now having big data experts.

Ever wondered what your future would have in store for you if you possess Hadoop as well as Java skills? No? Let us take a look. Today we shall discuss the point that why is it preferable for Java Developers to learn Hadoop.

Hadoop is the Future Java-based Framework that Leads the Industry

Data analysis is the current marketing strategy that the companies are adopting these days. What’s more, Hadoop is to process and comprehend all the Big Data that is generated all the time. As a rule, Hadoop is broadly utilized by practically all organizations from big and small and in practically all business spaces. It is an open-source stage where Java owes a noteworthy segment of its success

The processing channel of Hadoop, which is MapReduce, is written in Java. Thus, a Hadoop engineer needs to compose MapReduce contents in Java for Big data analysis. Notwithstanding that, HDFS, which is the record arrangement of Hadoop, is additionally Java-based programming language at its core. Along these lines, a Hadoop developer needs to compose documents from local framework to HDFS through deployment, which likewise includes Java programming.

Learn Hadoop: It is More Comfortable for a Java Developer

Hadoop is more of an environment than a standalone innovation. Also, Hadoop is a Java-based innovation. Regardless of whether it is Hadoop 1 which was about HDFS and MapReduce or Hadoop2 biological system that spreads HDFS, Spark, Yarn, MapReduce, Tez, Flink, Giraph, Storm, JVM is the base for all. Indeed, even a portion of the broadly utilized programming languages utilized in a portion of the Hadoop biological system segments like Spark is JVM based. The run of the mill models is Scala and Clojure.

Consequently, if you have a Java foundation, understanding Hadoop is progressively easier for you. Also, here, a Hadoop engineer needs Java programming information to work in MapReduce or Spark structure. Thus, if you are as of now a Java designer with a logical twist of the brain, you are one stage ahead to turn into a Hadoop developer.

IT Industry is looking for Professionals with Java and Hadoop Skills

If you pursue the expected set of responsibilities and range of abilities required for a Hadoop designer in places of work, wherever you will watch the reference of Java. As Hadoop needs solid Java foundation, from this time forward associations are searching for Java designers as the best substitution for Hadoop engineers. It is savvy asset usage for organizations as they don’t have to prepare Java for new recruits to learn Hadoop for tasks.

Nonetheless, the accessible market asset for Hadoop is less. Therefore, there is a noteworthy possibility for Java designers in the Hadoop occupation field. Henceforth, as a Java designer, on the off chance that you are not yet arrived up in your fantasy organization, learning Hadoop, will without a doubt help you to discover the chance to one of your top picks.

Combined Java and Hadoop Skills Means Better Pay Packages

You will be progressively keen on learning Hadoop on the off chance that you investigate Gartner report on big information industry. According to the report, the Big Data industry has just come to the $50 billion points. Additionally, over 64% of the main 720 organizations worldwide are prepared to put resources into big information innovation. Notwithstanding that when you are a mix of a Java and Hadoop engineer, you can appreciate 250% pay climb with a normal yearly compensation of $150,000.It is about the yearly pay of a senior Hadoop developer.

Besides, when you change to Big Data Hadoop, it very well may be useful to improve the nature of work. You will manage unpredictable and greater tasks. It does not just give you a better extension to demonstrate your expertise yet, in addition, to set up yourself as a profitable asset who can have any kind of effect.

Adapting Big Data Hadoop can be exceptionally advantageous because it will assist you in dealing with greater, complex activities a lot simpler and convey preferable yield over your associates. To be considered for examinations, you should be somebody who can have any kind of effect in the group, and that is the thing that Hadoop lets you be.

Learning Hadoop will open New Opportunities to Other Lucrative Fields

Big data is only not going to learn Hadoop. When you are in Big information space, you have sufficient chance to jump other Java and Hadoop engineer. There are different exceedingly requesting zones in big information like Artificial Intelligence, Machine Learning, Data Science. You can utilize your Java and Hadoop engineer expertise as a springboard to take your vocation to the following level. In any case, the move will give you the best outcome once you move from Java to Hadoop and increase fundamental working knowledge.

Java with Hadoop opens new skylines of occupation jobs, for example, data scientist, data analyst business intelligence analyst, DBA, etc.

Premier organizations prefer Hadoop Developers with Java skills

Throughout the years the Internet has been the greatest driver of information, and the new data produced in 2012 remained at 2500 Exabyte. The computerized world developed by 62% a year ago to 800K petabytes and will keep on developing to the tune of 1.2 zeta bytes during the present year. Gartner gauges the market of Hadoop Ecosystem to $77 million and predicts it will come to the $813 million marks by 2016.

A review of LinkedIn profiles referencing Hadoop as their abilities uncovered that just about 17000 individuals are working in Companies like Cisco, HP, TCS, Oracle, Amazon, Yahoo, and Facebook, and so on. Aside from this Java proficient who learn Hadoop can begin their vocations with numerous new businesses like Platfora, Alpine information labs, Trifacta, Datatorrent, and so forth.

Conclusion

You can see that combining your Java skills with Hadoop skills can open the doors of several new opportunities for you. You can get better remuneration for your efforts, and you will always be in high demand. It is high time to learn Hadoop online now if you are a java developer.

The New Age of Big Data: Is It the Death of Hadoop?

Big Data had gone through several transformations through the years, growing into the phrase we identify it as today. From its first identified use on the back of Hadoop and MapReduce, a new age of Big Data has been ushered in with the spread of new technologies such as Kubernetes, Spark, and NoSQL databases.

These might not serve the exact same purpose as Hadoop individually, but they fill the same niche and do the same job with features the original platform designers never envisioned.

The multi-cloud architecture boom and increasing emphasis on real-time data may just mean the end of Big Data as we know it, and Hadoop with it.

A brief history of Big Data

The use of data for making business decisions can be traced back to ancient civilizations in Mesopotamia. However, the age of Big Data as we know it is only as old as 2005 when O’Reilly Media launched the phrase. It was used to describe the massive amounts of data that the world was beginning to produce on the internet.

The newly-dubbed Web 2.0 needed to be indexed and easily searchable, and, Yahoo, being the behemoth that it was, was just the right company for the job. Hadoop was born off the efforts of Yahoo engineers, depending on Google’s MapReduce under the hood. A new era of Big Data had begun, and Hadoop was at the forefront of the revolution.

The new technologies led to a fundamental shift in the way the world regarded data processing. Traditional assumptions of atomicity, consistency, isolation, and durability (ACID) began to fade, and new use cases for previously unusable data began to emerge.

Hadoop would begin its life as a commercial platform with the launch of Cloudera in 2008, followed by rivals such as Hortonworks, EMC and MapR. It continued its momentous run until it seemingly hit its peak in 2015, and its place in the enterprise market would never be guaranteed again

Where Hadoop Couldn’t Keep Up

Hadoop made its mark in the world of Big Data by being a platform to collect, store and analyze large swathes of data. However, not even a technology as revolutionary and versatile as Hadoop could exist without its drawbacks.

Some of these would be so costly developers would rather design whole new systems to deal with them. With time, Hadoop started to lose its charm, unable to grow past its initial vision as a Big Data software.

Hadoop is a machine made up of smaller moving parts that are incredibly efficient at what they do – crunch data. This ultimately results in one of the first drawbacks of Hadoop – it does not come with built-in support for analytics data. Hadoop works well to process your data, but not likely as you need – visual reports about how the data is being processed, for instance.

MapReduce was also built from the ground up to be file-intensive. This makes it a great piece of software for simple requests, but not so much for iterative data. For smaller datasets, it turns out to be a rather inefficient solution.

Another area Hadoop lands flat on its face is with regards to real-time processing and reporting. Hadoop suffers from the curse of time. It relies on technologies that even its very founders (Google in particular) no longer rely on.

With MapReduce, every time you want to analyze a modified dataset (say, after adding or deleting data), you have to stream over the whole dataset again. Thanks to this feature, Hadoop is horrible at real-time reporting – a feature that led to the creation of Percolator, MapReduce’s replacement within Google.

The emergence of better technology has also meant a rise in the number of threats to said technology and a corresponding increase in the emphasis that is placed on it.

Unfortunately, Hadoop is nowhere close to being secure. As a matter of fact, its security settings are off by default, and it has too much inertia to simply change that. To make things worse, plugging in security measures isn’t that much easier.

The Fall of Hadoop

With these and more shortcomings in the data science world, new tools such as Hive, Pig and Spark were created to work on top of Hadoop to overcome its weaknesses. But it simply couldn’t grow out of the shoes it had been made for.

The growth of NoSQL databases such as Hazelcast and MongoDB also meant that problems Hadoop was designed to support were now being solved by single players rather than the ‘all or nothing’ approach Hadoop was designed with. It wasn’t flexible enough to evolve beyond simply being a batch processing software.

Over time, new Big Data challenges began to emerge that a large monolithic software like Hadoop couldn’t deal with, either. Being primarily file-intensive, it couldn’t keep up with the variety of data sources that were now available, the lack of support for dynamic schemas, on-the-fly queries, and the rise of cloud infrastructure all caused people to seek different solutions. Hadoop had lost its grip on the enterprise world.

Businesses whose primary concern was dealing with Hadoop infrastructure like Cloudera and Hortonworks were seeing less and less adoption. This led to the eventual merger of the two companies in 2019, and the same message rang out from different corners of the world at the same time: ‘Hadoop is dead.’

Is Hadoop Really Dead?

Hadoop still has a place in the enterprise world – the problems it was designed to solve still exist to this day. Technologies such as Spark have largely taken over the same space that Hadoop once occupied.

The question of Hadoop or Spark is one every data scientist has to contend with at some point, and most seem to be settling in the latter of these, thanks to the great advantages is speed it offers.

It’s unlikely Hadoop will see much more adoption with newer marker entrants, especially considering the pace with which technology moves. It also doesn’t help that a lot of alternatives have a much smaller learning curve than the convoluted monolith that is Hadoop. Companies like MapR and Cloudera have also begun to pivot away from Hadoop-only infrastructure to more robust cloud-based solutions. Hadoop still has its place, but maybe not for long.