Data science, or data science, increasingly affects every sector of our society; it is no coincidence that many have now defined it as data-driven. Organizations are increasingly using data science to transform data into a competitive advantage, redefining products and services and making targeted decisions.
Table of Contents
Science data is an evolutionary extension of the combined statistic with scientific methods and data analysis techniques through computer technology to extract value from the data.
The discourse on data science inevitably leads to talk about its specific and predominant sector: that of Big Data analytics.
Since modern technology has allowed the creation and storage of increasing amounts of information, the volumes of data have increased rapidly. Their growth is unstoppable: for example, it is estimated that 90% of data worldwide was created in the past two years. In 2020 every person on earth generated 1.7 megabytes of data every second.
The large number of data collected and stored can offer, as mentioned, competitive advantages in terms of business, but only if, precisely through data science techniques, trends and insights are detected to support decisions and effective development of products and services.
The term data science is often used as a synonym for artificial intelligence (AI). However, these are two distinct disciplines, even if they are interconnected.
AI is a part of computer science that deals with the study and development of algorithms designed to make a machine understand how to perform one or more tasks autonomously. In particular, the branch of artificial intelligence that deals with automated learning is called machine learning.
It is the set of mechanisms that allow an intelligent system to improve its capabilities and performance over time: they will learn to perform specific tasks by improving, through experience, their skills and their responses and functions…
At the basis of machine learning, there are several different algorithms that, starting from primitive notions, become able to make a specific decision instead of another or carry out actions learned over time.
Instead, the goal of data science is, properly speaking, to develop strategies and models for data analysis to obtain new information. Still, it is also true that data science and AI are in a certain sense “complementary.”
For example, data scientists often use the deep learning methods that underpin the neural networks used to perform data cleansing, classification, and forecasting. Artificial intelligence-based applications can then leverage this clean and optimized data to learn how to perform their tasks more efficiently.
Finally, artificial intelligence enables data science and experts to perform classification and analysis operations much faster than a human being and optimize and speed up extracting information from data.
As early as 2001, the so-called “big data” was defined by analyst Doug Laney as data characterized by at least one of these three Vs.: volume, speed, or variety. Therefore, these are vast volumes of heterogeneous data by source and format, often analyzed in real-time.
The project Big Data Analytics can be classified into four types, based on the level of maturity of the methods used, and therefore the information that you can extract:
Advanced Analytics, finally, includes the categories of Predictive and Prescriptive Automated Analytics. The ultimate purpose of these methodologies is to provide broader support to business decision-makers, in some cases by automating specific actions.
The use cases of data science are among the most varied. By way of non-exhaustive example, some of them can be mentioned, such as:
Google Home Max White Speaker is an AI Smart Speaker that allows users to have… Read More
DisneyPlus.com has become a precious streaming platform for millions worldwide, thanks to its vast library… Read More
In this digital era, almost everyone has a part in Instagram. Many social media platforms… Read More
Have you ever heard of the PNPCODA entry? If you still want it, you will… Read More
In this era of technology and virtual spaces, the term "Hyperverse" has gained grip as… Read More
In rapidly developing dynamic educational geography, searching for innovative ways to engage students in meaningful… Read More