
The key principle behind Ensemble Methods is the combination of multiple base models to strengthen the overall performance of the combined model.

Some of the analytical methods are as follows: 1. Therefore, it is apt for dealing with such a surplus volume of data. Deep Learning is one of those tools that perform accurate predictions with an increase in data. Today, we have advanced machine learning algorithms that are able to draw accurate predictions with a large amount of data. The traditional statistical techniques have evolved over the years to accommodate large volumes of data. Furthermore, there is a need for development for scalable models that can not only handle such a large volume of data but do it efficiently and without any fault. This data is present in large volumes and requires advanced statistical as well as data manipulation techniques. The growth in technology has seen an emerge in Big Data. And, it required much more simpler models and data. Previously, there were constraints on tool availability and even scalability. Some of these techniques and approaches such as regression, classification, clustering have been effectively used to solve the data problems. Over the years, many data analytical and statistical techniques have been in use. In this section, we will discuss the evolution of the data analytic approaches.

These combinations of new tools are bolstered by efficient and scalable processes that allow the organisations to tame Big Data. As a result, analytic professionals end up with more time to focus on analysis. Apart from the robust user interfaces, tools can now be used for automating and streamlining mundane tasks. These tools have evolved over time which has added to their functionality. What are Data Analytics Tools?Īnalytic professionals have used a range of tools over the years, which enabled them to prepare data for analysis, execute analytic algorithms, and assess the results. This will give you a clear understanding of the three tools, enabling you to decide the best tool. We will also discuss the importance of each of these tools, their features and perform a comparison between them.


We will then overview the three important tools for data analytics – R, SAS and SPSS. In this data analytical tools tutorial, we are going to learn the evolution of various analytical approaches and categories of Big Data analytics tools. We offer you a brighter future with FREE online courses Start Now!!
