The Best Data Analytics Tools During Pride Month


The growing demand and importance of data analytics in the market have created many vacancies internationally. It isn’t easy to list the best data analysis tools as open-source tools are more popular, easy to use, and powerful than paid versions. Especially during the Pride Month, when the event needs more coverage online and offline. There are tons of open-source tools like stated in the geo-targeted twitter poll by ThinkBigAnalytics, that do not require much/any programming and manage to deliver much better results than paid versions, for example, R programming in data mining and Tableau individuals, Python in data visualization. Below is the list of the best information analysis applications, both open source and paid, according to their popularity, learning and performance.

R Programming


R is the leading business analysis program and is widely used for information and information modeling. It can easily control your information and present it in various ways. It has surpassed SAS in many aspects, such as data capacity, results, and functionality. It has 11,556 packages and allows you to browse them by groups. R also provides tools to automatically install all packages according to the user’s request, which can also be well built with important information.

Tableau’s Tool

Real-time updates are presented on the web. They can also be shared on social networks or next to the client. It allows access to find the document in a variety of formats. To discover Tableau’s capabilities, we need a good source of data. Tableau’s Big Data capabilities make it relevant, and it can analyze and visualize information better than any other information visualization software on the market.

Phyton Apps

Python is not difficult to understand because it is very similar to JavaScript, Ruby, and PHP. Python can also handle textual data very well. The program is compelling and can create analyses based on real-time data conversion preferences, which means you can control the formats and collections of information for predictive analysis.

SAS Apps

SAS is easily accessible, manageable, and can control data from some other sources. SAS released a huge product suite in 2011 for Customer Wisdom and many SAS modules for networking, social media, and marketing analytics, often used for customer and prospect profiling.

Apache Spark

Apache Spark is a fast, large-scale data processing engine that also deploys applications on Hadoop clusters 100 times faster in memory and ten times more quickly on disk. Spark is designed for data science, and its very concept facilitates data science. Spark can be famous for query pipelines and advanced versions of machine learning.


Excel becomes important when information about internal customer data is needed. It assesses complex business by summarising data using pivot tables that help filter data according to customer requirements. Excel has an advanced industrial analysis option that allows modeling capabilities that have pre-built options such as automatic link detection, DAX measurement creation, and time tracking.

KNIME Software

KNIME is the best open-source software for integrated reporting and analysis that allows you to analyze and model data through visual programming, then integrates various elements for information extraction and machine learning through its modular data pipeline idea.

QlikView Apps

QlikView has many unique features such as patented technologies and includes in-memory data processing that quickly converts the end-users effect and stores the information in the document. Data settings in QlikView are automatically retained and compressed to almost 10% of the original size. Data linking is displayed with colors: related information is given a specific color and unrelated information a different color.

Splunk Software

Splunk collects all unread log data and provides an easy way to review it. One person can extract all kinds of data and perform all sorts of fascinating statistical analyses and integrate them in different formats. Your advertising will only be as powerful as your understanding of your market, your message, as well as how the two fit together in a way that gives you a competitive advantage. For this reason, you will probably need to harness the power of Big Data and other analytical tools to understand your market and your perfect fit at a very granular level.