Rajesh Pathak Jan 25, 2024
Category
Entrance Tips

The Best Data Analytic Tools of 2024

Data analytics may aid firms in a variety of ways. Businesses may make better judgments about where to invest resources and how to price their products or services by knowing data analytics. Furthermore, data analytics can assist firms in identifying patterns and understanding their client base. 

Read Also: Top Data Analytics Skills 

Top 7 Data Analytic tools

Tracking, analyzing, and creating reports and dashboards are all possible with data analytics software. We've compiled a list of the finest data analytics tools for small organizations. As the subject of data analytics evolves, so does the number of available data analysis tools. Here are the greatest Data Analytics tools to employ in 2024;

  • Microsoft Excel
  • R
  • Jupyter Notebook
  • Apache Spark
  • Statistical Analysis System (SAS)
  • Power BI
  • Konstanz Information Miner (KNIME)

Now, Let's take a brief look at the top 7 analytic tools used in 2024 

Microsoft Excel

It is essential for you to have the ability to analyze data in order to make better decisions. One of the best tools for data analysis is Microsoft Excel, and its pivot tables are one of its most popular features.The most well-known spreadsheet software in the world. Furthermore, it has data-analysis-friendly calculations and graphing functions.

Excel is a must-have in any area, regardless of specialization or other software requirements. Its built-in capabilities are invaluable, including pivot tables (for sorting or summarising data) and form development tools. It also offers a number of other capabilities that help to speed up data manipulation. For example, the CONCATENATE function combines text, integers, and dates into a single cell. SUMIF allows you to generate value totals depending on variable criteria, and Excel's search tool allows you to easily isolate certain data.

It does, however, have restrictions. For example, it operates quite slowly with huge datasets and has a tendency to approximate large numbers, resulting in mistakes. Nonetheless, it's a valuable and powerful tool, and with a plethora of plug-ins accessible, you can quickly overcome Excel's drawbacks. Begin with these five Excel formulas that every data analyst should know. Data Analytics Using microsoft excel training can help your business grow to new heights.

Read Also: Benefits of Advanced Excel certification

R

R is a prominent open-source programming language, similar to Python. It is often used in the development of statistical/data analysis applications. The syntax of R is more complicated than that of Python, and the learning curve is higher. However, it was designed primarily for heavy statistical processing tasks and is widely used for data visualization. 

R Programming, like Python, has a network of freely available code known as CRAN (the Comprehensive R Archive Network), which has over 10,000 packages. It works well with other languages and systems (particularly large data software) and can access code written in languages such as C, C++, and FORTRAN. On the negative, it has poor memory management, and while there is a large user community to turn to for assistance, R lacks a dedicated support team.

However, RStudio is an excellent R-specific integrated development environment (IDE), which is always a plus! With Data Analytics with R Programming Training, you'll learn how to use your Data Science and analytics skills in a wide variety of organizations to help them make data-driven business decisions.

Read Also: Advantages of Using Python Language

 Jupyter Notebook

Jupyter Notebook is an open-source web tool for creating interactive documents. These incorporate real-time coding, equations, visuals, and narrative prose. Consider something similar to a Microsoft Word document, but significantly more interactive and tailored exclusively to data analytics! It's ideal for showing work as a data analytics tool: Jupyter Notebook is a browser-based programming environment that supports over 40 languages, including Python and R. It also connects with large data tools such as Apache Spark (see below) and provides a variety of outputs such as HTML, pictures, videos, and more.

However, it has limitations, just like any other instrument. Jupyter Notebook documents have inadequate version control, and keeping track of changes is difficult. This means it's not ideal for development or analytics work (you should use a dedicated IDE for both), and it's not conducive to cooperation. Because it is not self-contained, you must give any additional assets (e.g. libraries or runtime systems) to everyone with whom you share the document. However, it remains a useful data science and data analytics tool for presentation and educational purposes.

Read Also: Top Advanced Excel Skills

Apache Spark

Apache Spark is a software platform that enables data analysts and data scientists to process large amounts of data quickly. It was created in 2012 and then contributed to the non-profit Apache Software Foundation. Spark is a large data analytics framework that distributes computationally intensive analytics workloads across several processors. While there are other similar frameworks (for example, Apache Hadoop), Spark is extremely fast. It is approximately 100x quicker than Hadoop since it uses RAM rather than local memory.

As a result, it is frequently utilized in the creation of data-heavy machine learning models. It even features a library of machine learning algorithms, MLlib, which includes methods for classification, regression, and clustering, to mention a few. On the flipside, because Spark consumes so much memory, it is computationally expensive. It also lacks a file management system, necessitating connection with other software, such as Hadoop.

Read Also: Data Analyst Salaries Around The World

Statistical Analysis System (SAS)

SAS (Statistical Analysis System) is a well-known commercial suite of business intelligence and data analytics tools. The SAS Institute created it in the 1960s, and it has evolved since then. Its primary applications now are client profiling, reporting, data mining, and predictive modeling. Designed for the business market, the software is often more robust, adaptable, and user-friendly for large organizations. This is due to the fact that they have differing amounts of in-house programming competence. 

However, SAS is a commercial product with a high price tag. Nonetheless, with expenditure comes an advantage; new modules are added on a regular basis based on client needs. It has fewer of these than, say, Python libraries, but they are more concentrated. It, for example, provides modules for specific applications like anti-money laundering and analytics for the Internet of Things.

Read Also: Benefits Of Tableau For Data Scientists

Power BI

Power BI is a business analytics tool developed by Microsoft. It was named a leader in the Gartner 2020 Magic Quadrant for the 13th consecutive year, and it provides interactive visualizations with self-service business intelligence capabilities, allowing end users to build dashboards and reports without relying on anyone. In 2022, it is one of the top data analytics tools for data analysts.

Power BI is a relative newcomer to the market of data analytics tools, having been around for less than a decade. It began as an Excel plug-in before being updated as a full suite of business data analysis tools in the early 2010s. Power BI helps users quickly and easily generate interactive visual reports and dashboards. Its key selling point is its excellent data connectivity—it works well with Excel (as one would expect from a Microsoft product), but also with text files, SQL servers, and cloud sources such as Google and Facebook analytics.Data Analytics Using Microsoft Power BI training helps you see how Power BI can handle files that are too large for Excel.

It also has good data visualization but could be enhanced in other areas. It has a big user interface, complicated calculations, and a proprietary language (Data Analytics Expressions, or 'DAX') that is not user-friendly. It does, however, provide many subscription options, including a free one. This is wonderful if you want to learn how to use the tool, but the free version does have limitations, the most notable of which is the low data limit. You can take your business to another level by Data Analytics Using Microsoft Power BI training.

Read Also: Reasons why you should do Data Analytics with a Power BI

Konstanz Information Miner (KNIME)

KNIME is a free and open-source data analytics platform that does everything from data cleaning and collection to make it available to everyone. KNIME is well-known in the market for deploying data science workflows. One of the most appealing aspects of this data analytics tool is that no prior programming knowledge is required to generate insights.

Its (KNIME) biggest selling point (apart from the fact that it is free) is its usability. It is suitable for visual programming due to its drag-and-drop graphical user interface (GUI). This means that users do not require a high level of technical competence to construct data pipelines. While it promises to cover the entire spectrum of data analytics jobs, its true strength is in data mining. Although it provides in-depth statistical analysis, users will benefit from some Python and R experience. Because it is open-source, KNIME is highly adaptable and adjustable to the demands of any organization—all without incurring significant fees. As a result, it is popular among smaller firms with limited budgets.

Read Also: How To Use Tableau For Data Science?

Bottom Line

The insights gathered from using business analytics tools can assist management in automating some operations and gaining a competitive advantage. It aids in data discovery and corporate decision-making through the use of prediction models powered by real-time data. These tools can also assist management in analyzing outcomes through statistical and quantitative analysis.

Read Also: Top Data Professional Tech Jobs In The Middle East

IT Trainer

Rajesh is a Microsoft certified trainer with more than five years of experience. He plays a vital role in streamlining our enterprise software training programs. As a continuous learner with an unrelenting drive to refresh his IT skills, Rajesh always keeps an eye on the latest software releases.

His adaptable approach to learning navigates the efforts of his students in the right direction, leveraging maximum results with efficiency. Moreover, he is enthusiastic about nurturing the students' skills in a collaborative learning environment. 

He has helped hundreds of professionals hone their skills in Microsoft Office Suite, Tally, Advanced Excel Formulas, VBA, Busy Accounting Suite, Quickbooks, Power B I, and Zoho Books. In addition, he has the expertise in training individuals from global institutions like Parul University, Techno India University, GD Goenka University and Sharda University.

Tags
Technology
Education