Big data analytics allow businesses to gain deeper insights into their customers and market through advanced computing. With the help of big data, companies have been able to understand customer behavior patterns and perform better decision-making.

The Big Data course is all about using predictive analytics to understand what customers want and then giving them exactly that. This means mining customer data to find patterns and insights that allow companies to tailor products and services, and increase engagement with customers.

In this guide, you’ll get to learn how companies are using big data analytics, business analytics, and data visualization to increase their sales.

The Application of Big Data Analytics in Major Industries

Customer feedback platforms play a crucial role in leveraging big data analytics, enabling companies to make informed decisions about their business, customer, and operations. It helps them understand the data surrounding their business and improve on it.

There are many applications of big data analytics in major industries, such as insurance, healthcare, education, and transportation. With the right information, even small businesses can use big data analytics to increase their sales. The Research and Market reports show that they estimate the global Big Data market to reach USD 268.4 billion by 2026.

Insurance companies use big data to provide more transparent solutions. They use it to study customer behavior from multiple sources and get real-time insights throughout the claim cycle. In addition, insurance companies use big data to detect fraud and predict the analysis of claim management.

  • Healthcare

Healthcare industries use big data analytics for a variety of objectives. Some of these objectives are to monitor the progress of chronic disorders, forecast the severity of epidemics or pandemics, and identify preventive actions that require implementation. They also aid in healthcare research, allowing specialists to develop better medical treatments, and diagnose illnesses in their early stages, allowing therapy to begin as soon as possible.

  • Education

The education sector has a massive amount of data on students, outcomes, teachers, courses, and so on. The use of big data analytics may personalize course materials, enhance grading systems, improve teaching techniques, assess teachers' effectiveness, and forecast future careers.

  • Transportation

Big data analysis is highly beneficial to the transportation industry in route planning, traffic management, accident control, and other purposes. Plus, Google Maps uses big data to identify high-traffic locations and improve routes for its users. They weigh different modes of transportation and other factors to determine the optimum route with the least amount of resource waste. Businesses also use this method to save money on delivery while also keeping their drivers safe.

What Is the Relationship Between Big Data Analytics and Business Analytics

Business analytics entails collecting, sorting, processing, and evaluating data connected to businesses, using statistical models and iterative approaches. The ultimate goal is to acquire actionable and useful business insights to address issues inside an organization and increase effectiveness, productivity, and income.

Similar to big data analytics, many business sectors and industries also use business analytics and these are the most common;

  • Finance

The goal of financial analysis is to shape business strategy through trusted, fact-based insights rather than instinct. By providing a detailed view of a company's financial data, the financial analysis gives companies the tools to gain in-depth knowledge of key trends and act to improve their performance.

  • Manufacturing

Business analysts use data to assist stakeholders in understanding the factors that impact operations. Manufacturing sectors employ big data to identify equipment downtime, inventory levels, and maintenance costs to help organizations streamline inventory management, risks, and supply chain management for maximum efficiency.

  • Human Resource

The human resource department plays a vital role in organizations. For a company to excel, it requires excellent personnel. It is HR's responsibility to not only locate the best applicants but also to bring them on board. Additionally, knowing how to maintain momentum of the excellent day is crucial for sustaining high performance and productivity.

Business analysts contribute to the process by scanning through data that identifies high-performing applicants, such as educational background and the average length of employment.

Big Data Visualization Tools

Data visualization involves the use of graphs and charts to represent data. Its tools and techniques are essential in Big Data analytics for analyzing enormous volumes of information and making data-driven decisions. Some examples of big data visualization tools are:

  • Google Chart

Google charts is a strong, free tool for data visualization, primarily for making interactive charts for online display. It utilizes dynamic data and relies solely on HTML5 and SVG for outputs, allowing it to function in browsers with no need for extra plugins. Some examples of google charts are; maps, gauges, treemaps, pie charts, and Combo charts.

  • Microsoft Power BI

This software is most useful for business analysis. The advantage of Microsoft Power BI is it's accessible via tablets, desktops, and smartphones. This program also generates analytical findings fast.

  • ChartExpo

If you're looking for a visualization tool that will help you dig deeper into data, your answer is right here. ChartExpo is a great data visualization tool for Google sheet and Microsoft Excel. In minutes, you can turn confusing data into insightful charts. ChartExpo's plug-in framework safeguards your data, ensuring that it remains exactly where it is.

Wrap Up

Most industries realize the value of big data analytics and data visualization in their daily operations. When data is in large volume, use visualization tools such as charts, tables, and graphs to summarize the information and make it more scannable and easy to understand.

Business analytics, on the other hand, will analyze historical data using statistical methods and technologies in order to generate new insights and improve strategic decision-making.

Frequently Asked Questions (FAQs)

1. What is the difference between Data Science and Big Data Analytics?

Data Science is a field of study that involves the collection of data to predict, analyze, and come up with results on a certain subject.

Big data is voluminous information put together. It requires software to analyze it since it's difficult to do it manually.

2. How can Big Data analytics affect business results?

Data analytics is important because it helps businesses optimize their performances. Implementing it into the business model means companies can help reduce costs by identifying more efficient ways of doing business and by storing large amounts of data.

3. What are the biggest challenges facing big data companies?

The biggest challenges facing big data companies are the lack of skilled data professionals, the lack of good methods for securing data, and a lack of understanding of massive information.

4. Can small industries use big data analytics in their decision-making?

Yes, small industries can use big data in their decision-making. If their main goal is to grow the business, early practice of using big data analytics will be an advantage in the long run.

Author's Bio: 

Usama Bin Qasim is the author of this Article.