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Data Science has emerged as a prevalent tool for extracting valuable information from large amounts of data, driving decision-making processes, and enhancing overall efficiency. From healthcare to finance and beyond, Applications based on Data Science are transforming the way we live and work. In this blog, we will explore the top Data Science Applications that are revolutionising various industries. Read more to find out!
Table of Contents
1) What is Data Science?
2) What are Data Science Applications?
a) Predictive analytics in marketing
b) Healthcare diagnostics and treatment
c) Supply chain optimisation
d) Sentiment analysis in social media
e) Fintech Data Science Applications
f) Examples of Data Science Applications in gaming
g) Sports analytics
3) Conclusion
What is Data Science?
Data Science involves the tasks of constructing, refining and organising datasets to analyse and uncover valuable insights. It uses computer skills and math to find valuable information in big piles of data. This information helps companies make smart decisions, like predicting what you might want to buy online or how to improve their products.
What are Data Science Applications?
Data Science Applications encompass a diverse array of fields and industries, all benefiting from the powerful insights derived from data analysis. At its core, Data Science involves extracting, transforming, and interpreting data to solve complex problems and drive informed decision-making. This multidisciplinary field leverages various techniques, algorithms, and methodologies to gain valuable insights from structured and unstructured data.
Data Science Applications have become indispensable in the domain of business. Predictive Analytics empowers businesses to forecast future trends, customer behaviour, and market demands. This helps them to strategise effectively and stay ahead of the competition. Recommender Systems enhance User Experiences in e-commerce platforms. It offers personalised product recommendations, leading to increased customer engagement and loyalty.
Data Science Applications are far-reaching and impactful, shaping the world we live in and enhancing our understanding of complex systems. As technology continues to evolve further, Data Science will remain at the forefront of innovation, driving progress and improving lives in countless ways.
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a) Predictive analytics in marketing
Predictive analytics in marketing is a game-changer for businesses seeking to gain a competitive edge. By harnessing historical data and customer behaviour patterns, Data Scientists can develop sophisticated algorithms that predict future customer actions.
This enables marketers to tailor their campaigns and offers to meet individual customer preferences. It also increases the likelihood of conversions and customer retention. Let’s explore some examples of predictive analytics applications:
Creating targeted ads
Sovrn connects advertisers with outlets like Bustle, ESPN and Encyclopedia Britannica. It uses data from millions of daily deals to power its intelligent advertising technology. It works with Google and Amazon’s server-to-server bidding platforms and can generate revenue from media with minimal human intervention. For advertisers, it will help in targeting campaigns to customers with specific needs.
Curating vacation rentals
Rentals Airbnb used Data Science to enhance its search function. It used to favour top-rated vacation rentals that were close to a city’s centre. That meant users could find nice rentals, but not in trendy neighbourhoods. Engineers fixed that problem by boosting the search rankings of a rental if it’s in an area with a lot of Airbnb bookings. The algorithm also allows for some diversity, so cities don’t overshadow towns, and users can discover the occasional rental treehouse.
Predicting consumers' product interests
Instagram employs Data Science techniques to personalise its sponsored content, ranging from stylish sneakers to influencer-promoted products. The platform's Data Scientists gather data from Instagram and its parent company, Meta, leveraging comprehensive web-tracking capabilities and user information like age and education.
Using this data, they develop algorithms that translate user interactions such as likes, comments, app usage and web browsing history into predictions about the products users are likely to purchase. This approach enables Instagram to deliver targeted and relevant ads to users, enhancing the effectiveness of its advertising efforts.
b) Healthcare diagnostics and treatment
Data Science has transformed the healthcare sector by enabling new ways of diagnosing, treating, and preventing diseases. Let's explore some Data Science Applications related to healthcare diagnostics and treatment:
Identifying cancer tumours
Google has applied Data Science to healthcare by developing a tool called LYNA, which stands for Lymph Node Assistant. LYNA can detect breast cancer tumours that spread to nearby lymph nodes, which are often hard to spot by human eyes. In a trial, LYNA achieved a 99 per cent accuracy rate in identifying metastatic cancer using its machine-learning algorithm. However, more testing is needed before LYNA can be used in hospitals.
Personalising treatment plans
Oncora is a software company that uses Machine Learning to generate personalised treatment plans for cancer patients based on historical data. Oncora's platform is used by healthcare facilities such as UT Health San Antonio and Scripps Health. Oncora's Data Scientists worked with radiologists to analyse 15 years of data from more than 50,000 cancer cases, including diagnoses, treatments, outcomes, and side effects. Based on this data, Oncora's algorithm can recommend optimal chemotherapy and radiation doses for each patient.
Cleaning clinical trial data
Veeva is a cloud software company that offers data and software solutions for the healthcare industry, covering clinical, regulatory, and commercial domains. Veeva's Vault EDC is a Data Science tool that cleans and validates clinical trial data and allows medical professionals to make changes during the study. Vault EDC helps reduce errors, save time, and improve the quality of clinical trials.
c) Supply chain optimisation
The aftermath of Covid-19 and the Suez Canal obstruction had a devastating impact on the global supply chain and resulted in the loss of billions of pounds in global trade. Data Science Applications can help in Supply chain optimisation, and let's explore some of that:
Modeling traffic patterns
StreetLight is a company that uses Data Science to model traffic patterns for cars, bikes and pedestrians on North American streets. It collects and analyses trillions of data points every month from smartphones, in-vehicle navigation devices and other sources. StreetLight’s traffic maps are updated regularly and provide more detailed information than mainstream maps apps.
For example, they can identify groups of commuters that use multiple transit modes to get to work, such as a train followed by a scooter. The company’s maps help various city planning projects, such as commuter transit design.
Optimising food delivery
The Data Scientists at UberEats have a simple goal: delivering hot food quickly. To achieve that goal across the country, they use Machine Learning, advanced statistical modelling and staff meteorologists. They have to predict how every possible variable, such as storms, holiday rushes and traffic jams, will affect the delivery time and quality. By optimising the full delivery process, they aim to provide a fast and satisfying service to their customers.
Improving package delivery
The shipping giant United Parcel Service (UPS) uses Data Science to optimise package transport from drop-off to delivery. The company’s integrated navigation system, ORION, helps drivers choose thousands of fuel-efficient routes. ORION has saved UPS millions of miles and fuel per year by using advanced algorithms, Artificial Intelligence (AI) and Machine Learning.
d) Sentiment analysis in social media
Sentiment analysis, powered by Data Science, has become an invaluable tool for businesses to gauge public opinion and perception on social media platforms. Analysing the sentiment expressed in user-generated content helps businesses understand how their brand is perceived and recognise emerging trends and concerns. This content could be anything, such as tweets, posts, and reviews. Let's explore some of the Data Science Applications for sentiment analysis:
Curating matches on dating apps
When singles match on Tinder, they can thank the company’s Data Scientists. A carefully crafted algorithm works behind the scenes, boosting the probability of matches. Once upon a time, this algorithm relied on users’ Elo scores, essentially an attractiveness ranking. Now, it prioritises matches between active users, users near each other and users who seem like each other’s “types” based on their swiping history.
Suggesting friends on Facebook
Meta’s Facebook platform, of course, uses Data Science in various ways, but one of its buzzier data-driven features is the “People You May Know” sidebar, which appears on the social network’s home screen. Often creepily prescient, it’s based on a user’s friend list, the people they’ve been tagged within photos and where they’ve worked and gone to school.
e) Fintech Data Science Applications
Data Science is essential for fintech, as it enables financial companies to use raw data to make better lending decisions and create credit reports. Data Science also helps forecast consumer behaviour, assess risks, and optimise financial portfolios and assets. Here are some examples of how Data Science is applied in fintech:
Accelerating underwriting for life insurance
Bestow is a company that provides life insurance solutions for individuals and businesses. Its mission is to make life insurance easy and affordable for everyone. It leverages Data Science to power its fast underwriting process, which gathers data from external sources such as credit reports, motor vehicle records or the Medical Information Bureau. Data Science’s predictive algorithms help to evaluate an applicant’s risk factors.
Creating credit reports
TransUnion is a credit reporting agency that offers credit reports, fraud monitoring services and financial loans. Its Data Science team creates predictive models based on data from various sources, such as auto dealers, retailers and mortgage companies. TransUnion uses Data Science to derive insights from both an individual’s credit data and public record data. These insights help financial institutions and lenders to make smart decisions about giving credit offers and loan opportunities.
Fraud detection in finance
Data Science is used to fight fraud effectively in the financial industry. By analysing large amounts of financial transaction data, Data Scientists can spot anomalies and unusual patterns that may signal fraudulent activities. Machine Learning Algorithms can help professionals learn from previous fraud cases and adapt to new techniques, staying ahead of potential fraudsters.
Fraud detection systems provide a vital layer of security for financial institutions and their customers, protecting assets and building trust in the financial ecosystem.
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f) Examples of Data Science Applications in gaming
Data Science has revolutionised the field of gaming by enabling game developers and publishers to use data to enhance their products and services. Data Science can help improve online gaming experiences, make suggestions to gamers to improve their play and monitor business metrics in the video game industry. Let’s explore some of these applications below:
Improving online gaming
Activision Blizzard is a company that produces games with cult followings like Call of Duty, World of Warcraft, Candy Crush and Overwatch. It uses big data to enhance its online gaming experiences. For example, the company’s game science division analyses gaming data to prevent empowerment, which is the attempt to lower someone else’s sports scores by unfair means among COD players.
The company also uses Machine Learning to detect power boosting to artificially increase one’s game performance. Moreover, it helps identify and track key indicators for improving the quality of game time.
Making suggestions to gamers to improve play
2K Games is a video game studio that has created popular titles like Bioshock and Borderlands. It also created both the WWE and PGA games series. The company’s growing game science team focuses on extracting gaming data and building models. They aim to improve its sports games like NBA2K.
Data Scientists at 2K Games analyse player gameplay and economy telemetry data. They use it to understand player behaviour and suggest actions to improve the player experience. For example, they can recommend optimal strategies, training plans, or in-game purchases to the players.
Monitoring business metrics in the video game industry
Unity is a platform for creating and operating interactive, real-time 3D content. It includes games. The platform is used by gaming companies like Riot Games, Atari and Respawn Entertainment. Unity uses gaming data to make data-driven decisions within its product development team. It also uses it to monitor business metrics. For example, it can use data to test new features, optimise performance, measure user engagement, and track revenue.
g) Sports analytics
Data Science is a potential game changer for sports, as it can help athletes, coaches, and teams optimise their performance, strategy, and decision-making. Data Science can help make predictive insights in Basketball, track physical data for athletes, and gather performance metrics for soccer players. Let’s explore some of the Data Science Applications used for sports analytics:
Making predictive insights in Basketball
RSPCT is a company that offers a shooting analysis system used by NBA and college teams. It uses a sensor on a basketball hoop’s rim, which has a tiny camera that tracks when and where the ball hits on each shot. It sends that data to a device that shows shot details in real-time and generates predictive insights. One key insight it found was that the best location for someone to take the last shot to win the game is the right corner, not the top of the key.
Tracking physical data for athletes
WHOOP is a company that makes wearable devices that track athletes’ physical data, such as resting heart rate, sleep cycle and respiratory rate. The goal is to help athletes understand when to train hard and when to rest and to make sure they’re taking the necessary steps to get the most out of their bodies. Professional athletes like Olympic sprinter Gabby Thomas, Olympic golfer Nelly Korda and PGA golfer Nick Watney are among the WHOOP’s users, according to the company’s website.
Gathering performance metrics for football
Trace is a company that provides football coaches with recording gear and an AI system that analyses game film. Players wear a tracking device called a Tracer, while a specially designed camera records the game. The AI bot then takes that footage and stitches together all of the most important moments in a game. It includes shots on goal, defensive lapses and more.
This technology allows coaches and players to have more detailed insights from the game footage. Besides stitching together clips, the software also provides performance metrics and a field heat map.
Conclusion
Data Science Applications have infiltrated almost every aspect of our lives, making processes more efficient, improving decision-making, and enhancing User Experiences across industries. As technology keeps evolving, the influence of applications of Data Science will undoubtedly grow, shaping the future in unimaginable ways.
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Frequently Asked Questions
Data Science Applications are important because they can help us discover new knowledge, optimise processes and systems, predict future outcomes and trends and enhance human capabilities.
Data Scientists solve a wide range of problems across various domains like analysing customer behaviour, segmenting markets, increasing sales, and reducing costs.
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