Post thumbnail
DATA SCIENCE

Top 7 Data Science Applications & Use Cases For Businesses

By Archana

From optimizing our Amazon search history to providing us with the best possible Netflix movie recommendations, Data Science applications are all around you. Now, think of a simple application in healthcare or something in E-commerce; you will surely find some Data Science elements there.

Now, let us track down and discuss some popular data science applications.

Table of contents


  1. Data Science Applications and real-time businesses
    • Healthcare:
    • Transportation:
    • Sports:
    • Government:
    • E-commerce:
    • Gaming:
    • Social media:
  2. Takeaways...
    • How is data science used in business?
    • What are the use cases of data science?
    • What is an example of data science in business?
    • How does Netflix use data science?
    • What are the 4 major components of data science?

Data Science Applications and real-time businesses

1. Healthcare: 

One of the most vividly transforming sectors worldwide is healthcare. And, with Data Science starting a revolution, a few trends for the next decade are evident: 1) More technology, 2) Clear insights and more information, 3) innovative healthcare solutions 4) Better health for the consumers. 

Role and importance of data collection in Healthcare

 

Data science can pinpoint and predict diseases with personalized healthcare recommendations. For example, Pharmaceutical industries heavily rely on data science.

Furthermore, Data Science and Machine Learning algorithms are revolutionizing the drug discovery sector. Medical Imaging, Genomics, Predictive Analytics, etc., are a few sections creating wonders in healthcare due to Data Science implementations. 

UnitedHealth Group, McKesson Corporation, Health Catalyst, Microsoft, IBM Corporation, etc., are some healthcare sectors advancing with Data Science applications.  

2. Transportation: 

Have you ever heard of Route optimization, Predictive Fleet Maintenance, and Real-time Vehicle tracking? Applying Data Science to logistics has incredible benefits that can completely revolutionize our commutation ways! 

Top companies like IBM Corporation, Microsoft Corporation, Amazon Web Services, SAP SE, Oracle Corporation, Splunk Inc., Hewlett-Packard Co., etc., visibly have benefitted by implementing Data Science in their Transportation sector. 

Tracking shorter distances and consolidated shipments stand out as the best ways of making the supply chain greener to minimize the environmental impact of global sourcing.

When you get out of that Uber, you scroll down your mobile to find the cost of your commutation. Uber calculates fares automatically using street traffic data, GPS data, and algorithms that make alterations based on the time of the journey. It also analyses external data like public transport routes to plan various services.

Data science applications can also optimize shipping and flying routes in real-time. Isn’t that very valuable?

Before we move into the next topic, ensure you have a good grip on data science essentials like Python, MongoDB, Pandas, Numpy, Tableau & PowerBi Data Methods. If you are looking for a detailed course on Data Science, you can join GUVI’s Data Science Course with placement assistance. You’ll also learn about the trending tools and technologies and work on some real-time projects. 

Instead, if you would like to explore Data Engineering and Big Data through a Self-paced course, try GUVI’s Self-Paced Data Engineering and Bigdata course.

3. Sports: 

We had an intriguing blog on Data Visualization in Cricket. In case you haven’t read it yet, we recommend you go back and give that one a go!

Sports

Data science can accurately evaluate athletes’ performance, and weather conditions, and analyze teams’ recent wins/losses.

Manchester United & Real Madrid are great examples of businesses widely using Data Science technology to transform their operations, performance, and fitness and forge innovative solutions to build relationships with their global fans. 

There are a number of Data Science applications that are making the sports world more data-driven and insightfully fun!

MDN

4. Government: 

Whether it is fraud detection or tax evasion, governments these days stick around data solutions and data analytics. 

Even in the field of defense, the significance of big data is massive. Furthermore, Big data analytics, machine learning algorithms, and text mining are widely applied to detect terrorist activities, witnessed on a rising front these days.  

Cybersecurity measures, as we often speak about, national security, and smarter surveillance are some of the advanced security measures for which the Government hugely relies on Data Science.  

Government

That is not all! Real-time analytics also helps Governments to produce rapid judgments under stressful conditions. 

There are more spaces where Governments rely on Data Science applications for health and human services, law enforcement, de-registered firms, etc.

5. E-commerce: 

Do you often thank Myntra for showing you the top picks specially made based on your precious purchase history?

Then you should be thanking Data Science no less! From product discovery to customer demographics & organic traffic metrics, data science sees its widespread applicability in the E-commerce field too.

Data Science permits business owners to derive value from data and make informed decisions. Data analytics in e-commerce help company owners better understand their clients, forecasting consumer behavior patterns to increase revenue.

Data science can also automate digital ad placement.

Google, Amazon, Netflix, and Flipkart, among others, are the popular brands that are widely using Data Science.

6. Gaming:

I remember writing a blog on games to improve your Data science skills. Well, we can consider it and vice versa too. Some Data Science skills added to Data Science can enhance the gaming features and make the games more challenging. Data Science improves online gaming experiences.

Data science applications

Data-driven gaming technology assists in the identification of meaningful relationships, patterns, trends, and user behavior models from complex data sets to guide service roadmaps. The development of automated anomaly detection systems and the continuous monitoring of their performance increase user engagement, too.

What say, wanna try some Data Science gaming today?

7. Social media: 

Have you wondered how finding friends on Facebook or Instagram is so easy? In fact, you get friend recommendations all the time, don’t you? Data science can create algorithms to trace friends of friends who could be your friends too! Fancy? Yes, it is!

Another example that you can relate to? Say you watch a set of reels today; Do you find similar reels coming up all the way for you the next day too? Yes! Another machine learning task in there!

Big Data and AI technologies are used to derive analytical insights into user behaviors.

Kickstart your Data Science journey by enrolling in GUVI’s Data Science Course where you will master technologies like MongoDB, Tableau, PowerBi, Pandas, etc., and build interesting real-life projects.

Alternatively, if you would like to explore Python through a Self-paced course, try GUVI’s Data Engineering and Bigdata course.

Takeaways…

Oh! The list can go on and can fill a book or two. The idea here was to provide you with some top glimpses of the practical use of Data Science.

All well-established businesses have Data Science at the core of their applications. That said, the Data Science platform has several hats with no heads filling in.

So if you are a data-minded geek ready to make your way into Data Science, then this bootcamp is definitely the place you must be at!

Become a Certified Data Scientist

Explore our Data Science Course here and ace your data science career with a buzz as big as itself.

Do you have any bright Data Science applications in your mind? Why not share them with us? We would be really glad to hear them so do drop them in the comments section below!

How is data science used in business?

Data science is extensively utilized in business for various purposes, including market analysis, customer segmentation, predictive modeling, fraud detection, and recommendation systems. By analyzing large datasets, businesses gain valuable insights to make informed decisions, optimize operations, enhance customer experience, and ultimately drive growth and profitability.

What are the use cases of data science?

Data science has various use cases across industries. It helps businesses make data-driven decisions, predict customer behavior, optimize processes, and improve product recommendations. In healthcare, it aids in diagnosis and treatment planning. Governments utilize it for policy-making and public services. Additionally, data science drives advancements in research and technology.

What is an example of data science in business?

Data science in business can be seen in customer segmentation. By analyzing customer data, companies can identify distinct groups with similar characteristics and behaviors. This allows them to tailor marketing strategies, product offerings, and customer support to meet specific needs, boosting customer satisfaction and ultimately increasing profitability.

How does Netflix use data science?

Netflix uses data science to personalize content recommendations, analyze user behavior, and optimize streaming quality. They employ algorithms to understand viewer preferences, making tailored content suggestions. Data analytics helps them analyze user engagement patterns, improving content creation and acquisition decisions. Additionally, they use data-driven encoding techniques to enhance video streaming efficiency. Overall, data science is integral to Netflix’s success, providing a seamless and enjoyable user experience.

MDN

What are the 4 major components of data science?

The four major components of data science are:
1. Data Collection: Gathering relevant data from various sources.
2. Data Cleaning: Preprocessing and refining the data to ensure accuracy and consistency.
3. Data Analysis: Utilizing statistical and machine learning techniques to extract insights and patterns.
4. Data Visualization: Presenting findings in a visual format to aid in understanding and decision-making.

Career transition

Did you enjoy this article?

Schedule 1:1 free counselling

Similar Articles

Loading...
Share logo Copy link
Free Webinar
Free Webinar Icon
Free Webinar
Get the latest notifications! 🔔
close
Table of contents Table of contents
Table of contents Articles
Close button

  1. Data Science Applications and real-time businesses
    • Healthcare:
    • Transportation:
    • Sports:
    • Government:
    • E-commerce:
    • Gaming:
    • Social media:
  2. Takeaways...
    • How is data science used in business?
    • What are the use cases of data science?
    • What is an example of data science in business?
    • How does Netflix use data science?
    • What are the 4 major components of data science?