Big Data: What It Is and How to Use It

In today’s industrial landscape, Big Data is no longer a futuristic concept: it is a concrete and strategic resource for improving efficiency, reducing waste, and creating value. From production to...
Categoria: Data & AI

In today’s industrial landscape, Big Data is no longer a futuristic concept: it is a concrete and strategic resource for improving efficiency, reducing waste, and creating value. From production to the supply chain to workforce management, the ability to collect, analyze, and leverage large volumes of information has become an essential competitive advantage for manufacturing companies.

What is Big Data?

Big data is vast volumes of structured and unstructured information generated by people, machines, and processes, requiring advanced technologies for real-time analysis. Used correctly, it enables rapid decision-making, process optimization, personalized offerings, and business model innovation. From industrial production to marketing, big data transforms raw data into value, reducing costs, improving quality, and creating a sustainable competitive advantage.

How Big Data is born

The term “big data” was coined in the 2000s, but its roots lie in the first large databases of the 1960s and the database management systems of the 1980s. With the internet, smartphones, and IoT sensors, data production has exploded: today, every production process, interaction, or industrial machine generates continuous, real-time information flows.

Big Data and traditional data

Unlike traditional data, big data are:

  • Massive: They exceed the storage and management limitations of conventional systems, requiring scalable cloud solutions or distributed infrastructures.
  • Multi-format: includes structured (numbers, tables) and unstructured (text, images, videos, sensor logs) data from a variety of sources.
  • Dynamic: They update constantly, sometimes every second, and must be analyzed quickly to stay relevant.
  • Distributed: They reside in multiple physical or virtual locations, often on different systems and platforms that must communicate with each other.

The 5 Vs of Big Data

Volume

It represents the immense amount of data generated every day by machinery, transactions, online interactions, and industrial sensors. The challenge is to manage and archive petabytes of information without sacrificing accessibility and speed of consultation.

Speed

It refers to the speed with which data is generated, transmitted, and processed. In manufacturing settings, it means analyzing data in real time to immediately respond to changes in demand, failures, or operational anomalies.

Variety

This refers to the diversity of formats and sources, from numerical data to audio and video files, to data from the Internet of Things and social media. This heterogeneity increases the information value, but requires advanced integration techniques.

Truthfulness

It concerns the reliability and quality of data. Incomplete or incorrect information leads to poor decisions; this requires constant monitoring of accuracy, provenance, and consistency.

Value

It’s the ability to transform data into concrete, business-useful insights. Without targeted analysis, large volumes of data remain a cost; with the right strategy, they become a competitive advantage.

The advantages of Big Data

Faster and more informed decisions

Analyzing real-time data allows you to identify trends, anomalies, and opportunities before your competitors. In manufacturing, this means anticipating problems, reducing downtime, and taking proactive action.

Customization of the offer

By analyzing preferences, behaviors, and feedback, companies can create customized products and services. This approach increases customer loyalty and satisfaction.

Business process optimization

Using big data allows us to identify bottlenecks, inefficiencies, and waste at every operational stage. The information gathered guides targeted interventions that improve productivity and profitability.

Innovation and competitive advantage

Advanced data analytics can reveal new business models, product ideas, and unexplored markets. This allows you to differentiate yourself and maintain a leadership position..

How to Implement Big Data in Your Business

  1. Business needs analysis
    Define clear and measurable objectives, aligned with the company strategy, to avoid unnecessary data collection.
  2. Valutazione delle fonti dati disponibili
    Mappare e qualificare tutte le fonti esistenti – interne ed esterne – per capire quali sono affidabili e utili.
  3. Choice of technologies and tools
    Opt for analytics platforms, databases, and cloud solutions that scale based on data volumes and complexity.
  4. Data architecture development
    Integrate heterogeneous systems and develop secure, flexible, and easily upgradeable infrastructures.
  5. Analysis and Interpretation
    Apply statistical models, machine learning, and visualization tools to transform raw data into insights.
  6. Integration into business processes
    Bring information into daily operational flows to guide real-time decisions.
  7. Continuous monitoring and optimization
    Measure impact, update models, and continuously improve data quality and usability.

Common Mistakes in Big Data Implementation

When implementing Big Data projects, there are some recurring mistakes that can compromise results. One of the most common is collecting enormous amounts of information without a clear strategy: without defined objectives, data ends up simply representing a high cost, with no real practical value. Another risk is underestimating the quality of the information: if the data is incomplete or inaccurate, the resulting analyses will be unreliable, and decisions based on them will risk being flawed, eroding trust. Finally, security and privacy issues should never be overlooked: the lack of adequate protection measures can expose you to breaches, fines, and reputational damage that are difficult to recover from.

Big Data and AzzurroDigitale

At AzzurroDigitale, we believe that big data is a strategic driver for making companies more efficient, resilient, and data-driven. Through customized solutions, we help companies:

  • Centralize and harmonize disparate data sources into a single integrated ecosystem.
  • Leverage advanced analytics, AI, and machine learning techniques to gain predictive insights.
  • Transforming information into concrete actions, improving production and decision-making processes.

An example? Take Safilo, where, thanks to the introduction of a digital ecosystem consisting of two integrated platforms, Digital Cockpit and AWMS, production processes have been significantly accelerated, resulting in significant improvements in plant efficiency.

If you want to move from simple data collection to real value creation, find out how we can help you transform your big data into a measurable competitive advantage.

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