Big Data Defined: Examples and Benefits  |  Google Cloud (2024)

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What is Big Data?

Big data refers to extremely large and diverse collections of structured, unstructured, and semi-structured data that continues to grow exponentially over time. These datasets are so huge and complex in volume, velocity, and variety, that traditional data management systems cannot store, process, and analyze them.

The amount and availability of data is growing rapidly, spurred on by digital technology advancements, such as connectivity, mobility, the Internet of Things (IoT), and artificial intelligence (AI). As data continues to expand and proliferate, new big data tools are emerging to help companies collect, process, and analyze data at the speed needed to gain the most value from it.

Big data describes large and diverse datasets that are huge in volume and also rapidly grow in size over time. Big data is used in machine learning, predictive modeling, and other advanced analytics to solve business problems and make informed decisions.

Read on to learn the definition of big data, some of the advantages of big data solutions, common big data challenges, and how Google Cloud is helping organizations build their data clouds to get more value from their data.

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Big data examples

Data can be a company’s most valuable asset. Using big data to reveal insights can help you understand the areas that affect your business—from market conditions and customer purchasing behaviors to your business processes.

Here are some big data examples that are helping transform organizations across every industry:

  • Tracking consumer behavior and shopping habits to deliver hyper-personalized retail product recommendations tailored to individual customers
  • Monitoring payment patterns and analyzing them against historical customer activity to detect fraud in real time
  • Combining data and information from every stage of an order’s shipment journey with hyperlocal traffic insights to help fleet operators optimize last-mile delivery
  • Using AI-powered technologies like natural language processing to analyze unstructured medical data (such as research reports, clinical notes, and lab results) to gain new insights for improved treatment development and enhanced patient care
  • Using image data from cameras and sensors, as well as GPS data, to detect potholes and improve road maintenance in cities
  • Analyzing public datasets of satellite imagery and geospatial datasets to visualize, monitor, measure, and predict the social and environmental impacts of supply chain operations

These are just a few ways organizations are using big data to become more data-driven so they can adapt better to the needs and expectations of their customers and the world around them.

The Vs of big data

Big data definitions may vary slightly, but it will always be described in terms of volume, velocity, and variety. These big data characteristics are often referred to as the “3 Vs of big data” and were first defined by Gartner in 2001.

Volume

As its name suggests, the most common characteristic associated with big data is its high volume. This describes the enormous amount of data that is available for collection and produced from a variety of sources and devices on a continuous basis.

Velocity

Big data velocity refers to the speed at which data is generated. Today, data is often produced in real time or near real time, and therefore, it must also be processed, accessed, and analyzed at the same rate to have any meaningful impact.

Variety

Data is heterogeneous, meaning it can come from many different sources and can be structured, unstructured, or semi-structured. More traditional structured data (such as data in spreadsheets or relational databases) is now supplemented by unstructured text, images, audio, video files, or semi-structured formats like sensor data that can’t be organized in a fixed data schema.

In addition to these three original Vs, three others that are often mentioned in relation to harnessing the power of big data: veracity, variability, and value.

  • Veracity: Big data can be messy, noisy, and error-prone, which makes it difficult to control the quality and accuracy of the data. Large datasets can be unwieldy and confusing, while smaller datasets could present an incomplete picture. The higher the veracity of the data, the more trustworthy it is.
  • Variability: The meaning of collected data is constantly changing, which can lead to inconsistency over time. These shifts include not only changes in context and interpretation but also data collection methods based on the information that companies want to capture and analyze.
  • Value: It’s essential to determine the business value of the data you collect. Big data must contain the right data and then be effectively analyzed in order to yield insights that can help drive decision-making.

How does big data work?

The central concept of big data is that the more visibility you have into anything, the more effectively you can gain insights to make better decisions, uncover growth opportunities, and improve your business model.

Making big data work requires three main actions:

  • Integration: Big data collects terabytes, and sometimes even petabytes, of raw data from many sources that must be received, processed, and transformed into the format that business users and analysts need to start analyzing it.
  • Management: Big data needs big storage, whether in the cloud, on-premises, or both. Data must also be stored in whatever form required. It also needs to be processed and made available in real time. Increasingly, companies are turning to cloud solutions to take advantage of the unlimited compute and scalability.
  • Analysis: The final step is analyzing and acting on big data—otherwise, the investment won’t be worth it. Beyond exploring the data itself, it’s also critical to communicate and share insights across the business in a way that everyone can understand. This includes using tools to create data visualizations like charts, graphs, and dashboards.

Big data benefits

Improved decision-making

Big data is the key element to becoming a data-driven organization. When you can manage and analyze your big data, you can discover patterns and unlock insights that improve and drive better operational and strategic decisions.

Increased agility and innovation

Big data allows you to collect and process real-time data points and analyze them to adapt quickly and gain a competitive advantage. These insights can guide and accelerate the planning, production, and launch of new products, features, and updates.

Better customer experiences

Combining and analyzing structured data sources together with unstructured ones provides you with more useful insights for consumer understanding, personalization, and ways to optimize experience to better meet consumer needs and expectations.

Continuous intelligence

Big data allows you to integrate automated, real-time data streaming with advanced data analytics to continuously collect data, find new insights, and discover new opportunities for growth and value.

More efficient operations

Using big data analytics tools and capabilities allows you to process data faster and generate insights that can help you determine areas where you can reduce costs, save time, and increase your overall efficiency.

Improved risk management

Analyzing vast amounts of data helps companies evaluate risk better—making it easier to identify and monitor all potential threats and report insights that lead to more robust control and mitigation strategies.

Challenges of implementing big data analytics

While big data has many advantages, it does present some challenges that organizations must be ready to tackle when collecting, managing, and taking action on such an enormous amount of data.

The most commonly reported big data challenges include:

  • Lack of data talent and skills. Data scientists, data analysts, and data engineers are in short supply—and are some of the most highly sought after (and highly paid) professionals in the IT industry. Lack of big data skills and experience with advanced data tools is one of the primary barriers to realizing value from big data environments.
  • Speed of data growth. Big data, by nature, is always rapidly changing and increasing. Without a solid infrastructure in place that can handle your processing, storage, network, and security needs, it can become extremely difficult to manage.
  • Problems with data quality. Data quality directly impacts the quality of decision-making, data analytics, and planning strategies. Raw data is messy and can be difficult to curate. Having big data doesn’t guarantee results unless the data is accurate, relevant, and properly organized for analysis. This can slow down reporting, but if not addressed, you can end up with misleading results and worthless insights.
  • Compliance violations. Big data contains a lot of sensitive data and information, making it a tricky task to continuously ensure data processing and storage meet data privacy and regulatory requirements, such as data localization and data residency laws.
  • Integration complexity. Most companies work with data siloed across various systems and applications across the organization. Integrating disparate data sources and making data accessible for business users is complex, but vital, if you hope to realize any value from your big data.
  • Security concerns. Big data contains valuable business and customer information, making big data stores high-value targets for attackers. Since these datasets are varied and complex, it can be harder to implement comprehensive strategies and policies to protect them.

How are data-driven businesses performing?

Some organizations remain wary of going all in on big data because of the time, effort, and commitment it requires to leverage it successfully. In particular, businesses struggle to rework established processes and facilitate the cultural change needed to put data at the heart of every decision.

But becoming a data-driven business is worth the work. Recent research shows:

  • 58% of companies that make data-based decisions are more likely to beat revenue targets than those that don't
  • Organizations with advanced insights-driven business capabilities are 2.8x more likely to report double-digit year-over-year growth
  • Data-driven organizations generate, on average, more than 30% growth per year

The enterprises that take steps now and make significant progress toward implementing big data stand to come as winners in the future.

Big data strategies and solutions

Developing a solid data strategy starts with understanding what you want to achieve, identifying specific use cases, and the data you currently have available to use. You will also need to evaluate what additional data might be needed to meet your business goals and the new systems or tools you will need to support those.

Unlike traditional data management solutions, big data technologies and tools are made to help you deal with large and complex datasets to extract value from them. Tools for big data can help with the volume of the data collected, the speed at which that data becomes available to an organization for analysis, and the complexity or varieties of that data.

For example, data lakes ingest, process, and store structured, unstructured, and semi-structured data at any scale in its native format. Data lakes act as a foundation to run different types of smart analytics, including visualizations, real-time analytics, and machine learning.

It’s important to keep in mind that when it comes to big data—there is no one-size-fits-all strategy. What works for one company may not be the right approach for your organization’s specific needs.

Here are four key concepts that our Google Cloud customers have taught us about shaping a winning approach to big data:

Open

Today, organizations need the freedom to build what they want using the tools and solutions they want. As data sources continue to grow and new technology innovations become available, the reality of big data is one that contains multiple interfaces, open source technology stacks, and clouds. Big data environments will need to be architected to be both open and adaptable to allow for companies to build the solutions and get the data it needs to win.

Intelligent

Big data requires data capabilities that will allow them to leverage smart analytics and AI and ML technologies to save time and effort delivering insights that improve business decisions and managing your overall big data infrastructure. For example, you should consider automating processes or enabling self-service analytics so that people can work with data on their own, with minimal support from other teams.

Flexible

Big data analytics need to support innovation, not hinder it. This requires building a data foundation that will offer on-demand access to compute and storage resources and unify data so that it can be easily discovered and accessed. It’s also important to be able to choose technologies and solutions that can be easily combined and used in tandem to create the perfect data toolsets that fit the workload and use case.

Trusted

For big data to be useful, it must be trusted. That means it’s imperative to build trust into your data—trust that it’s accurate, relevant, and protected. No matter where data comes from, it should be secure by default and your strategy will also need to consider what security capabilities will be necessary to ensure compliance, redundancy, and reliability

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How to get started with big data for your business

BigQuery Serverless, highly scalable, and cost-effective cloud data warehouse designed for business agility.
Bigtable Cloud-native, scalable NoSQL database service for large analytical and operational workloads.
Looker An enterprise platform for business intelligence, data applications, and embedded analytics.
Dataflow Unified stream and batch data process that’s serverless, fast, and cost-effective.
Cloud Data Fusion Fully managed data integration service to efficiently build and manage ETL/ELT data pipelines.
Dataproc Fully managed service to securely process, query, and stream open source data in the cloud.

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Big Data Defined: Examples and Benefits  |  Google Cloud (2024)

FAQs

What is an example of big data answer? ›

What are examples of big data? Big data comes from many sources, including transaction processing systems, customer databases, documents, emails, medical records, internet clickstream logs, mobile apps and social networks.

What is big data in cloud computing with examples? ›

Big data refers to extremely large and diverse collections of structured, unstructured, and semi-structured data that continues to grow exponentially over time. These datasets are so huge and complex in volume, velocity, and variety, that traditional data management systems cannot store, process, and analyze them.

Is Google an example of big data? ›

Google generally uses Big data from its Web index to initially match the queries with potentially useful results. It uses machine-learning algorithms to assess the reliability of data and then ranks the sites accordingly.

What are some examples of big data? ›

Transportation: assist in GPS navigation, traffic and weather alerts. Government and public administration: track tax, defense and public health data. Business: streamline management operations and optimize costs. Healthcare: access medical records and accelerate treatment development.

How does Google use big data? ›

Google collects all the data related to the frequency of sites visited, search phrases used, the timings, data downloaded etc. Google then uses those data to streamline the search results depending upon different scenarios.

What are the 5 Vs of big data examples? ›

The 5 V's of big data -- velocity, volume, value, variety and veracity -- are the five main and innate characteristics of big data.

What is big data and its benefits? ›

Big data is an extremely large volume of data and datasets that come in diverse forms and from multiple sources. Many organizations have recognized the advantages of collecting as much data as possible. But it's not enough just to collect and store big data—you also have to put it to use.

How is cloud used in big data? ›

Cloud computing refers to remote IT resources and different internet service models. 09. Big data is used to describe huge volume of data and information. Cloud computing is used to store data and information on remote servers and also processing the data using remote infrastructure.

What is the role of big data in the cloud? ›

Big Data is a concept that deals with storing, processing and analyzing large amounts of data. Cloud computing on the other hand is about offering the infrastructure to enable such processes in a cost-effective and efficient manner.

Is Google cloud a big data? ›

Google Cloud Platform (GCP) offers a suite of big data services that enable businesses to efficiently manage and analyze large datasets. In this beginner's guide, we'll take a look at the basics of big data and how to leverage GCP services like BigQuery, Dataproc, and Dataflow to manage and analyze large datasets.

What are the 5 big data? ›

Big data is a collection of data from many different sources and is often describe by five characteristics: volume, value, variety, velocity, and veracity.

What are the 5 examples of data? ›

  • Data collection:
  • Examples of data collection:
  • Monthly bills of a person.
  • Number of students in a class.
  • Number of persons liking a particular food.
  • Number of warehouses in a factory complex.
  • Number of hours spend on daily activities.

What is an example of a big data problem? ›

The typical examples of Big data problems include an employee who does not know about the data itself, its sources, value and the related workflows. That employee might create a risk of losing the entire data set by, for instance, not backing up data on time.

What are two benefits of using big data analytics? ›

Big data analytics helps companies reduce costs and develop better, customer-centric products and services. Data analytics helps provide insights that improve the way our society functions.

What is an example of big data Accenture TQ? ›

An example of big data would be providing real-time data feeds on millions of people with wearable devices. This would generate large volumes of data that can be analyzed to identify patterns, trends, and insights that can help improve business decisions, such as product development or marketing strategies.

What is a data example? ›

Data Examples

The number of visitors to a website in one month. Inventory levels in a warehouse on a specific date. Individual satisfaction scores on a customer service survey. The price of a competitors' product.

Where is big data used in real life? ›

The best examples of big data can be found both in the public and private sectors. From targeted advertising, education, and already mentioned massive industries (healthcare, manufacturing, or banking) to real-life scenarios in guest service or entertainment.

How do you describe big data? ›

Big data refers to data that is so large, fast or complex that it's difficult or impossible to process using traditional methods. The act of accessing and storing large amounts of information for analytics has been around for a long time.

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