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10 Most Popular Big Data Analytics Tools

As we’re growing with the pace of technology, the demand to track data is increasing rapidly. Today, almost 2.5quintillion bytes of data are generated globally and it’s useless until that data is segregated in a proper structure. It has become crucial for businesses to maintain consistency in the business by collecting meaningful data from the market today and for that, all it takes is the right data analytic tool and a professional data analyst to segregate a huge amount of raw data by which then a company can make the right approach.



There are hundreds of data analytics tools out there in the market today but the selection of the right tool will depend upon your business NEED, GOALS, and VARIETY to get business in the right direction. Now, let’s check out the top 10 analytics tools in big data.

1. APACHE Hadoop

It’s a Java-based open-source platform that is being used to store and process big data. It is built on a cluster system that allows the system to process data efficiently and let the data run parallel. It can process both structured and unstructured data from one server to multiple computers. Hadoop also offers cross-platform support for its users. Today, it is the best big data analytic tool and is popularly used by many tech giants such as Amazon, Microsoft, IBM, etc.

Features of Apache Hadoop:



2. Cassandra

APACHE Cassandra is an open-source NoSQL distributed database that is used to fetch large amounts of data. It’s one of the most popular tools for data analytics and has been praised by many tech companies due to its high scalability and availability without compromising speed and performance. It is capable of delivering thousands of operations every second and can handle petabytes of resources with almost zero downtime. It was created by Facebook back in 2008 and was published publicly.

Features of APACHE Cassandra:

3. Qubole

It’s an open-source big data tool that helps in fetching data in a value of chain using ad-hoc analysis in machine learning. Qubole is a data lake platform that offers end-to-end service with reduced time and effort which are required in moving data pipelines. It is capable of configuring multi-cloud services such as AWS, Azure, and Google Cloud. Besides, it also helps in lowering the cost of cloud computing by 50%.

Features of Qubole:

4. Xplenty

It is a data analytic tool for building a data pipeline by using minimal codes in it. It offers a wide range of solutions for sales, marketing, and support. With the help of its interactive graphical interface, it provides solutions for ETL, ELT, etc. The best part of using Xplenty is its low investment in hardware & software and its offers support via email, chat, telephonic and virtual meetings. Xplenty is a platform to process data for analytics over the cloud and segregates all the data together.  

Features of Xplenty:

5. Spark

APACHE Spark is another framework that is used to process data and perform numerous tasks on a large scale.  It is also used to process data via multiple computers with the help of distributing tools. It is widely used among data analysts as it offers easy-to-use APIs that provide easy data pulling methods and it is capable of handling multi-petabytes of data as well. Recently, Spark made a record of processing 100 terabytes of data in just 23 minutes which broke the previous world record of Hadoop (71 minutes). This is the reason why big tech giants are moving towards spark now and is highly suitable for ML and AI today.  

Features of APACHE Spark:

6. Mongo DB

Came in limelight in 2010, is a free, open-source platform and a document-oriented (NoSQL) database that is used to store a high volume of data. It uses collections and documents for storage and its document consists of key-value pairs which are considered a basic unit of Mongo DB. It is so popular among developers due to its availability for multi-programming languages such as Python, Jscript, and Ruby.  

Features of Mongo DB:

7. Apache Storm

A storm is a robust, user-friendly tool used for data analytics, especially in small companies. The best part about the storm is that it has no language barrier (programming) in it and can support any of them. It was designed to handle a pool of large data in fault-tolerance and horizontally scalable methods. When we talk about real-time data processing, Storm leads the chart because of its distributed real-time big data processing system, due to which today many tech giants are using APACHE Storm in their system. Some of the most notable names are Twitter, Zendesk, NaviSite, etc.

Features of Storm:

8. SAS

Today it is one of the best tools for creating statistical modeling used by data analysts. By using SAS, a data scientist can mine, manage, extract or update data in different variants from different sources. Statistical Analytical System or SAS allows a user to access the data in any format (SAS tables or Excel worksheets). Besides that it also offers a cloud platform for business analytics called SAS Viya and also to get a strong grip on AI & ML, they have introduced new tools and products.  

Features of SAS:

9. Data Pine

Datapine is an analytical used for BI and was founded back in 2012 (Berlin, Germany). In a short period of time, it has gained much popularity in a number of countries and it’s mainly used for data extraction (for small-medium companies fetching data for close monitoring). With the help of its enhanced UI design, anyone can visit and check the data as per their requirement and offer in 4 different price brackets, starting from $249 per month. They do offer dashboards by functions, industry, and platform.

Features of Datapine:

10. Rapid Miner

It’s a fully automated visual workflow design tool used for data analytics. It’s a no-code platform and users aren’t required to code for segregating data. Today, it is being heavily used in many industries such as ed-tech, training, research, etc. Though it’s an open-source platform but has a limitation of adding 10000 data rows and a single logical processor. With the help of Rapid Miner, one can easily deploy their ML models to the web or mobile (only when the user interface is ready to collect real-time figures).

Features of Rapid Miner:

Conclusion

Big data has been in limelight for the past few years and will continue to dominate the market in almost every sector for every market size. The demand for big data is booming at an enormous rate and ample tools are available in the market today, all you need is the right approach and choose the best data analytic tool as per the project’s requirement. 


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