Data Cloud screenshot showing an engagement feed

What is Big Data?

It’s hard to believe, but up until 2000, only 25% of the world’s stored information was digital. Today, that figure is 99.9%Opens in a new window — a staggering increase, and a transformative shift in how we define “information”.

And by information, we mean data.

Now consider the vast amount of information that you create or encounter on a daily basis. It’s all digital, and it’s all data: everything from sales and marketing reports, to quarterly forecasts and customer history, to image and audio files. Your customers (and prospects) are creating data, too. Every click, “like,” purchase, download, and interaction with your brand produces data that can be used to understand your customers behaviour, and build better customer experiencesOpens in a new window. This creates a huge volume of different kinds of data that all need to be stored, analysed, and actioned.

Welcome to the world of big data.

Data Cloud platform in a ssot dashboard

Say hello to Data Cloud.

Data Cloud, the only data platform native to Salesforce, unlocks and harmonises data from any system — so you can better understand your customers and drive growth.

Big data defined

Big data refers to large, diverse datasets that are so complex that they can’t be managed using traditional data processing methods. Imagine all the interactions, clicks, likes, downloads, and purchases mentioned above, generated daily, on a global scale.

And big data is only getting bigger. In fact, over two-thirds of analytics and IT leaders expect data volumes to increaseOpens in a new window 22% on average over the next year. As data volumes continue to grow, so do the opportunities to use big data to drive even more business value, and provide the foundation for powerful AI solutions.

Learning the basics of big data is critical for everyone who needs to understand how data and AI can be used to solve business challenges. Whether you’re a data analyst or a business leader, this article will help you get started.

The 3 Vs of big data

A helpful way to think about big data is to consider its three characteristics: volume, velocity, and variety (known as the “three Vs”).

Volume refers to the sheer amount of data being generated and collected. Online retailers, for example, generate vast amounts of data, ranging from transaction history and website interactions to inventory management and customer service systems.

Velocity refers to the speed at which data is being generated and processed. In the world of finance, stock exchanges process high-velocity data streams to make split-second trading decisions based on real-time market data. Banks and credit card companies analyse transaction data in real-time to identify and prevent fraudulent activities.

Variety refers to the different types and formats of data. For healthcare providers, this can include everything from patient demographics and medical history to lab results, imaging data, and clinical notes.

data culture playbook connecting data and ai

Gartner named Salesforce a Leader in Customer Data Platforms. See why.

Importance of big data

According to our latest State of Data and Analytics Report, 80% of business leaders say data is criticalOpens in a new window in decision-making at their organisation. But to translate data into actionable insights, you need data analytics. Data analyticsOpens in a new window refers to the tools and processes that allow you to extract valuable insights from all of this data and make better decisions.

75 %
of business leaders agree that organisations using analytics to make data-driven decisions achieve significant revenue gains.

For example, businesses can analyse historical and real-time big datasets to identify trends, patterns, and correlations, and make more confident decisions based on the data. A data-driven approach replaces intuition and guesswork, and also supports more accurate and effective business strategies.

Big data fuels better decision making

Ninety-four percent of business leadersOpens in a new window feel their organisation should be getting more value from their data. One way to do this is through platforms that can bring all your internal and external data together, including data from external data lakes and warehouses.

By unifying all your customer data, you can develop a 360-degree view of your customer and use AI to find actionable insights that help you make better decisions, and deliver business results.

data cloud professional service consultant guidance image

Get expert Data Cloud guidance from Salesforce Professional Services.

With 1.3K+ certified Data Cloud consultants and 240+ implementations globally, we'll help you realise value quickly. Check out our guide to learn how.

Big data fuels and AI

AI, including generative artificial intelligence (GAI), relies on big data to train and improve its algorithms. And, the more diverse the data, the better AI performsOpens in a new window.

When your data is unified on one platform, you can begin to reap the benefits:

  • Analysts can view unified profiles and gain insights about your customers that can be used for personalised marketing, product innovation, better service delivery, and more.
  • Developers can create applications, such as health-scoring apps, using unified data. Apps can provide critical information to health-care providers who receive real-time alerts when a patient’s score dips below a certain number.
  • Your sales reps need to understand their prospects at a granular level. Are they opening emails? What are they looking at on the website? Based on all prospect data, how likely are they to buy? Unified data can help answer all of these questions.
  • E-commerce managers can use data to personalise their website based on a customer’s browsing behaviour and current product stock levels, ensuring a relevant and targeted customer experience.

Once you’re able to see the big picture, it’s easier to identify gaps in the market, discover new opportunities, and develop products and services that customers want and need.

Types of big data

The “mosaic” of big data consists of many different kinds of data. Knowing the data types listed below is the first step to understanding how to effectively manage, analyse, and extract valuable insights from your data.

Structured Data:

This type of big data is formatted in fields that can be easily sorted and analysed. Think spreadsheets and lists arranged in columns and rows. Examples include:

  • customer information
  • point-of-sale data
  • inventory records
  • financial data, such as transaction records.

Unstructured Data:

Unstructured data includes categories of information that can’t be organised into rows and columns. Think social media posts, emails, customer reviews, and multimedia content like photos and videos. Unstructured data is nearly 80% of all data, but it hasn't always been easy to analyse. Thanks to AI and machine learning, it’s possible to gain valuable insights from this vast category of data.

Semi-structured Data:

This type of data has some organisation but doesn't fit neatly into traditional databases. Semi-structured data often contains tags and labels (metadata) that is used to group data and describe how it is stored. Examples include XML files, JSON data, and log files.

Metadata:

MetadataOpens in a new window is information that describes other data. This “data about data” provides details about the characteristics, attributes, and properties of a dataset. The metadata of a video file, for example, may include information about its duration, resolution, and encoding format.

Time-Series Data:

Time-series dataOpens in a new window is used to analyse trends, patterns, and changes over a specific period. Examples include stock market prices, weather data, sensor readings from IoT devices, and website traffic data.

Geospatial Data:

Geospatial dataOpens in a new window is related to specific locations. It includes coordinates, addresses, maps, and satellite imagery. Geospatial data is used in applications like GPS navigation, urban planning, and environmental monitoring.

Streaming Data:

Streaming dataOpens in a new window comes from sources like social media feeds, sensor networks, and online transactions. Analysis of streaming data provides organisations with information needed to make immediate decisions and respond to events as they happen.

In AI-driven projects, all of these data types can be used together to help your organisation gain a well-rounded understanding of your customer. Unstructured data, in particular, holds enormous potential in the age of AI. By applying advanced analytics and machine learning, organisations are able to extract insights from mounds of messy information and deliver targeted customer experiences, product innovations, and more.

Now that you understand the many different types of data, you can begin to see that insights from all of these data types are necessary for gaining deep understanding of your customer, driving innovation, and making better decisions.

Big data and data strategy

Your data is only valuable when it’s properly managed, protected, and available for analysis. Let’s look at a few key concepts about the data life cycle and learn how it all comes together.

How do you get from raw data to actionable insights? Your approach is guided by your data strategy. This strategy is an essential framework that guides your organisation's approach to collecting, managing, and using its data. Your strategy should include defining goals, identifying data sources, and establishing processes for data acquisition, storage, and analysis. A solid data strategy aligns data initiatives with business objectives, so the entire organisation is on the same page about how data should be used to support the business.

92 %
percent of leaders emphasise the importance of a robust data strategy, but only 34% claim to have one implemented across their business.

Data governance is an important part of your data strategy. Your data governance framework includes standards for data quality, integrity, and compliance for your business. A good governance framework specifies the policies, procedures, and controls for data management, access, and usage that apply to each team in the organisation. Effective data governance helps ensure that data is accurate, consistent, and trustworthy — allowing organisations to make informed decisions and comply with regulatory requirements. In fact, 85% of analytics and IT leadersOpens in a new window use data governance as a way to guarantee and validate data quality.

Security and big data are two sides of the same coin. So it’s no surprise that analytics, IT, and business leaders all cite security threats as the top barrierOpens in a new window to successful data management. To address this, organisations need comprehensive data securityOpens in a new window measures to protect data from unauthorised access, breaches, and cyberthreats. This includes using a wide range of security solutions, from encryption and event monitoring to multifactor authentication and employee security training, to ensure the highest standards of confidentiality, integrity, and availability. Strong data security measures build trust with both customers and stakeholders, and help safeguard the organisation's reputation.

Data privacyOpens in a new window is critical in the era of big data. And safeguarding your customers’ privacy is directly tied to your business success. Organisations should ensure that they always maintain compliance with regulations regarding customer data handling. This includes obtaining consent for data collection, establishing privacy controls, protecting sensitive information and adopting security policies to safeguard sensitive data.

Applications and use cases of big data

What can you do with big data and big data analytics? Once an organisation has analysed the information, the opportunitiesOpens in a new window are as endless as the data.

Big data is informing the business strategies of some of the world’s largest companies — and delivering substantial value to customers and the bottom line. Here are just a few examples of how data, AI, and customer relationship management (CRM) are changing the game for these big brands:

Big data fuels AI-powered customer service

Big data is powering AI algorithms, and data is required to ensure that AI-powered solutions are trained with the right sources to learn and adapt. Fashion house Gucci put AI at the centre of Gucci 9, its global client service network, with Salesforce’s Salesforce Platform. Now, AI generates bite-size conversation replies in a "Guccified" brand voice to help advisors assist customers in every interaction.

Big data insights boost customer engagement

Multinational food company General MillsOpens in a new window wanted a better way to use its data to reach consumers on a more personal level while maintaining privacy. With its wealth of purchase and behavioural data, the company zeros in on data, such as from recipe views and receipt scans, to recommend personalised content to consumers, based on their diet or geography. This helped them triple consumer engagement, increase known site users 170% year over year, and save millions of dollars in paid media.

Data-driven personalisation leads to more relevant customer experience

Specialty retailer Williams-Sonoma Inc.Opens in a new window uses data from past purchases to customise the emails and ads it sends to customers, which has tripled engagement. Using Data Cloud/an advanced data platform, the company creates a 360-degree view of each customer and segments the data into niche audiences. “Personalisation is table stakes,” said Abby Teisch, SVP of Marketing. “We not only want to show you the product, we want to tell you how to use it, how to cook with it, and what it’ll look like in your home.”
“Personalisation is table stakes. We not only want to show you the product, we want to tell you how to use it, how to cook with it, and what it’ll look like in your home.” — Abby Teisch, SVP of Marketing, Williams-Sonoma Inc.

Connecting big data makes it easier to increase sales

By connecting all its guest data, including booking history and resort interactions, Turtle Bay ResortOpens in a new window in Hawaii is using big data and Data Cloud/an advanced data platform to deliver a customised experience to its guests. Guest data is used to create highly targeted guest segments — and the resulting email campaigns have led to a 20% increase in booking conversions and a 15% rise in repeat bookings for adventure experiences.

Big data in healthcare

HumanaOpens in a new window makes the path to wellness easier with tailored messaging, service, and care coordination with a 360-degree view of their customers. This has resulted in faster care delivery, significant cost savings, and ultimately improving patient well-being. In fact, the company now delivers care three to four times faster and saves $6 million in information security costs in the process.

Big data challenges

Considering big data’s depth and breadth and rapid expansion, it doesn’t come without challenges. Let’s look at three of the challenges in more detail.

Data literacy

A big data challenge facing organisations is data literacyOpens in a new window — ensuring their employees have the right skills and training to effectively understand and use the data. In fact, improving data literacy is a top priority, according to a recent survey of analytics and IT leaders. Investing in data literacy programs and trainingOpens in a new window is a good first step.

87 %
of employees rate basic data skills as very important for their day-to-day operations — and that same percentage of business owners expect basic data skills from their employees at all levels.

Extracting insight from data

Big data is critical to improving customer experience, but it’s also a big challenge. Getting to valuable, actionable insights requires advanced analyticsOpens in a new window tactics like machine learning and natural language processing. To succeed, businesses need to invest in the right tools and expertise to personalise experiences and drive customer satisfaction.

Big data best practices

Considering the complexities of handling big data, your organisation needs to establish best practicesOpens in a new window. Data best practices are important to ensure data accuracy, integrity, security, and compliance. With a common understanding of what’s expected, your teams can be confident that they are using trusted data, and that their data-based decisions are sound.

According to the Salesforce State of Data and Analytics Report and the Data Strategy GuideOpens in a new window, some best practices for big data include:

  1. Clear objectives: Establish clear business objectives and align them with data initiatives to ensure that data efforts are focused and aligned with organisational goals.
  2. Data quality and governance: Establish robust data quality processes and governance frameworks to ensure data accuracy, consistency, and compliance with regulations.
  3. Data security and privacy: Implement strong security measures to protect data from breaches and ensure compliance with privacy regulations, building trust with customers and stakeholders.
  4. Data unification: Data unification is the process of bringing together all of your data into a unified view. Using a data unification platform like Data Cloud, you can store, manage, and analyse data from every data source and gain deep insight into every aspect of your business.
  5. Advanced analytics: Leverage advanced analytics techniques like machine learning and predictive modeling to extract valuable insights from big data and drive informed decision-making.
  6. Scalable infrastructure: Invest in scalable and flexible infrastructure that can handle the volume, velocity, and variety of your data — ensuring that your systems can store, process, and analyse all your data with efficiency.
  7. Data storage: Data lakes, data warehouses and data lakehouses play a central role in achieving scalable infrastructure. And according to the State of Data and Analytics Report, organisations that effectively leverage data lakes and warehouses are 2.7 times more likely to realise the full potential of their data.
  8. Data-driven culture: Promote a culture that prioritises data-driven decision-making, so every employee understands the importance of data and is empowered to use it effectively.
  9. Collaboration and cross-functional teams: Encourage collaboration across departments and teams to share insights, expertise, and data, so everyone can derive value from your data assets.

Big data strategy and solutions

Simply stated, big data strategy and solutions are the tools and platforms that help organisations like yours obtain insights from large volumes of data.

Data unification and activation solutionsOpens in a new window bring together your customer data from multiple sources and provide a unified view of your customer. Data Cloud/an advanced data platform is designed to connect and unify data from any source — and activate it within the CRM and workflows you use everyday to power AI solutions and drive effective decision making and customer success.

Data security platforms are a basic requirement for protecting sensitive data from unauthorised access, breaches, and cyber-threats. These platforms protect against unauthorised access, attacks, and theft to ensure the integrity and compliance of your customer and business data.

Business intelligence (BI) platforms allow organisations to transform raw data into actionable insights. These platforms offer an array of advanced analytics capabilities, interactive dashboards, and reporting tools that are foundational for data-driven decision-making.

Data visualisation platformsOpens in a new window bring analytics to life by presenting data in a visually appealing and easily understandable format. These platforms use charts, graphs, and interactive visualisations to communicate complex data insights effectively.

CRM (customer relationship management) platforms that integrate data and AI, such as Salesforce's Einstein1, combine customer data with AI capabilities to take customer relationship management to the next level. With AI-enabled CRM, it’s easy to analyse customer behaviour, predict trends, and provide personalised recommendations — and deliver exceptional customer experiences.

All of these solutions help organisations to manage and use big data, which in turn drives informed decision-making, personalised experiences, and business success.

Connecting with Salesforce for big data solutions

Wondering how you can harness the power of big dataOpens in a new window? Connect with Salesforce to learn how our big data solutions can support your business.