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Introduction to Big Data

Introduction to BigData
Introduction to BigData header

In the digital age we live in, Big Data has taken on a central role, radically transforming our understanding and management of information. In this section, we will explore the fascinating world of Big Data, from its fundamental role in the evolution of computing to the vast range of technologies used to manage and process it.

What is Big Data?

analysis to extract meaningful information. This data can come from a wide range of sources, such as business transactions, sensors, mobile devices, social media, and more. Characterized by the “3 Vs” (Volume, Velocity and Variety) – Big Data is distinguished by:

In addition to the “3 Vs”, Big Data can also be characterized by other dimensions, such as variance, veracity and value. Big Data analytics allows organizations to identify hidden patterns, trends, and relationships in the data that can be used to make informed decisions, optimize business processes, improve customer experience, and even anticipate future behaviors.

The importance of Big Data in the current business context and new professional roles

The importance of Big Data in today’s business environment is significant and continually growing. This massive and complex data offers enormous potential for businesses, providing valuable insights that can be leveraged to improve operational efficiency, develop new products and services, optimize marketing strategies, and better understand customer needs. As a result, there are several reasons why Big Data is critical:

Due to the growing importance of Big Data, new professional roles have developed to manage and analyze this data effectively. Some of these roles include:

In summary, Big Data has become a strategic asset for modern companies, and their

Big Data: history and evolution of data management technologies

The history of Big Data is intimately linked to the evolution of data management technologies. Initially, data was stored in flat file management systems. However, in the 1960s, Edgar F. Codd introduced the relational model, which led to the creation of the first relational databases. These databases organized data into relational tables, making it easier to access and analyze.

In the 1980s and 1990s, concepts such as data warehouses and business intelligence developed. Data warehouses allowed the integration of data from different business sources into a single repository, while business intelligence tools enabled data analysis and visualization to support business decisions. With the advent of the Internet and social media after 2000, the amount of data generated exploded. This led to the proliferation of unstructured data, such as text, images and videos. Traditional data management technologies began to show limitations in dealing with this enormous amount of information.

Then around 2010, to cope with the growing complexity and volume of data, new technologies emerged. Among these, Hadoop played a crucial role. Based on a distributed architecture, Hadoop allows large amounts of data to be stored and analyzed on clusters of commodity computers. In recent years, more advanced approaches to big data analytics, such as machine learning and predictive analytics, have emerged. These approaches have led to a convergence between Big Data and Artificial Intelligence, opening up new possibilities for data analysis and exploitation.

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