Data Science Use Cases
Posted by Superadmin on August 04 2021 06:40:19

Data Science Use Cases

By Paramita (Guha) Ghosh on July 27, 2021

business use-case is generally defined as a sequence of business actions that lead to a predetermined, value-added outcome. Data Flair shares the Top 6 Data Science Use Cases slated to bring in another industrial revolution. From banking to transportation in the physical business world, and from social media to e-commerce on the digital business space — data-driven decisions are reigning supreme across business functions.

A business use case can often take multiple roles. A machine-learning model or smart algorithm may be considered a core “use case” in an application development company, but this same machine-learning model will become a supporting use case, when used in a fintech or trading business.

According to What Is Data Science? 5 Applications in Business:

“Data science can be used to gain knowledge about behaviors and processes … [to] process large amounts of information quickly and efficiently … [and to] guide data-driven decision-making.”

Determining an Appropriate Use Case

Most data science use cases have two significant components: Data pile and actionable business decisions. For a specific use case to be successful, these requirements have to be fulfilled:

Industry-Specific Data Science Use Cases

According to a recent study, the data science market will reach $115 billion in 2023 with a CAGR of 29%. Here are some important data science use cases within business sectors:

In sales and marketing sector, data science is mostly used for forecasting markets, identifying new customer base, optimizing pricing structures, and analyzing customer portfolios.

Data science use cases for manufacturing: The use cases used in this critical business function are prototyping, demos, virtual product analysis, and market trend analysis.  

Data science use cases for finance and banking: The common use cases used in banks or finance companies include product and services design, customer portfolio management, risk analysis, and custom financial solutions based on past investment trends. The banks are intensely using data science platforms to enhance security.

Data science use cases for film-making: Some of the ways that data technologies have helped the movie-making industry are failure prevention, revenue generation, and real-time streaming in websites such as HBO or Netflix.

Data science use cases for e-commerce: The most popular use case found in e-commerce is audience targeting — locating target markets in huge piles of customer data.

You can review some of the popular data science applications through this link. Additionally, some specialized data science applications are available in this Becoming Human.ai article.

AI and Data Science Together: Combined Use Cases

AI and data science are currently being used in conjunction with each other in the following sectors:

The Twitter Case Study: Most Talked about Data Science Use Case

The hottest AI-driven use case that everyone is talking about now is the “smart algorithm” that can identify those Twitter users who are likely to spread disinformation before they actually do it. A team of researchers from the University of Sheffield’s Computer Science Department “have developed the method for predicting whether a social media user is likely to share content from unreliable news sources.”

These researchers reviewed and “analyzed more than 1 million tweets from approximately 6,200 Twitter users” with the help of NLP technology. These massive amounts of data trained an ML algorithm to predict with almost 80% accuracy the spread of disinformation on social media.

A Ph.D. candidate at the University of Sheffield commented:

“Studying and analyzing the behavior of users sharing content from unreliable news sources can help social media platforms to prevent the spread of fake news at the user level, complementing existing fact-checking methods that work on the post or the news source level.”

From Data Science to Data Analytics

With many ambitious data science projects failing during execution, data analytics has shifted to the vertical markets over the years. The “specialized” needs of data analysis and analytics platforms have pushed vendors to design analytics solution platforms with the “domain expert” in mind. Here are some major transitions sweeping the current data analytics market worldwide:

Trend 1: “Verticalization” is the fail-safe approach that the data analytics market has chosen to reduce data-analytics project failures.

Trend 2: For cloud-based data analytics, the lakehouse data-storage solution now can house both structured and semi-structured data with access to all data, and enable advanced analytics with sophisticated models and BI capabilities.

Trend 3: Gartner has predicted that by 2023, graph technologies will dominate the decision-making process in 30% of global companies.

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