Big Data Analytics

Big data analytics refers to the processes and tools to analyze large, varied datasets to uncover insights like trends and patterns. With extracted insights, organizations can make more informed business decisions.

Data analytics techniques comprise data mining, machine learning, natural language processing, data visualization, and predictive analytics

How big data analytics works?

Big data analytics relies on a multi-step process to extract actionable business insights from massive datasets. The key steps in how big data analytics works are:

Data gathering and storage:

Data preparation:

Data analytics:

Data visualization:

Decision-making:

History & evolution of big data analytics

The concept of big data analytics emerged in the late 1990s when data storage capabilities expanded. The ability to apply advanced analytics techniques matured in the 2000s with open-source frameworks like Apache, Hadoop, and Spark.

Then, growth has accelerated as digital transformation drives data proliferation. According to a report by Valuates, the global big data and analytics market size is projected to reach $684.12 billion by 2030, growing at a CAGR of 13.5% from 2021 to 2030.

Why is big data analytics important?

Big data analytics is important because it allows organizations to analyze a huge volume of structured and unstructured data from different sources. This provides deeper insights into customer behavior, market trends, operations efficiency, risk mitigation, etc.

Different types of big data analytics

Big data analytics describes the process of analyzing huge datasets to uncover patterns, trends, and insights useful for businesses. Below are the four types of big data analytics.

Descriptive analytics

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For example, retailers can analyze past sales data to identify buying trends.

Diagnostic analytics

Diagnostic analytics aims to determine why something happened by diving deeper into data. It overlays contextual data points to provide a greater perspective on metrics and KPIs.

For example, a bank may use diagnostic analytics to understand why account closures increased last quarter by analyzing location, demographic, and economic data.

Predictive analytics

Predictive analytics uses past data to forecast future outcomes with data modeling and machine learning. It models data to forecast trends, future demand, and probabilities of specific outcomes.

For example, predicting patient readmission risk using clinical data, or anticipating customer churn based on usage patterns.

Prescriptive analytics

Prescriptive analytics suggests specific actions to take, based on predictive insights. It combines optimization algorithms and machine learning with business rules, to recommend data-driven decisions.

For example, optimizing marketing spend based on predicted customer responses based on expected sales.

Benefits of big data analytics

Key advantages of big data analytics include:

Who uses big data analytics?

Big data analytics has become an essential part of organizations across industries looking to use their data to gain strategic insights and competitive advantage. Some of the key users and beneficiaries of big data analytics are:

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Uses and examples of big data analytics

Big data analytics helps uncover trends and opportunities organizations may otherwise miss. Some examples include:

Customer analytics

Businesses increasingly use big data analytics on customer data from sources like social media, website behavior, purchases, and more to gain insights that improve customer experience and marketing.

Operational analytics

Big data analytics helps organizations optimize complex systems, processes, and performance.

Trend analysis

Organizations can identify patterns and changes over time by analyzing large historical datasets to plan strategies.

Challenges in big data analytics

Top big data analytics challenges involve the volume, velocity, variety, and veracity of large data sets, including the following:

Big data analytics tools and technologies

As previously discussed, big data analytics includes a set of tools and technologies. Below are some examples:

Get started with big data analytics

Follow the steps below to start leveraging big data analytics for your organization:

  1. Identify key business problems to solve with analytics: Focus your analytics strategy on 2–3 top business issues like improving customer retention or optimizing the supply chain. Identifying these key problems provides clarity on the desired business outcomes.
  2. Assemble a cross-functional analytics team: Include technical experts in data science and engineering and business leaders who can contextualize the data and apply insights in your team. Related read:The blueprint for setting up a data-first organization
  3. Inventory available data sources: Catalog and assess internal data like customer transaction history as well as external data like social media feeds.
  4. Invest in big data infrastructure and tools: Allocate a budget for cloud resources and tools to store, process, analyze, and visualize data at scale.

When it comes to big data analytics software, you can choose a powerful BI and analytics platform like Zoho Analytics. Here are some reasons why you should choose Zoho Analytics for big data analytics.

If you have completed the first three steps and are exploring big data analytics tools, you can sign up with Zoho Analytics for free and check out its capabilities.

But the journey of big data analytics doesn't end with picking an analytics tool. After setting up the infrastructure and tools, you'll need to follow the steps below:

Frequently asked questions on big data analytics

What’s the difference between cloud computing and big data analytics?

Cloud computing is like renting computer storage and services over the internet rather than owning and managing physical hardware. However, big data analytics is about analyzing large amounts of data to find useful patterns and insights that can help in making better decisions or predictions.

What is the difference between big data analytics and data science?

Big data analytics focuses on analyzing large amounts of data to find patterns and insights, using specialized tools for handling massive datasets. On the other hand, data science comprises a broader range of activities, including collecting, cleaning, and analyzing data, and involves statistical methods and machine learning for understanding and predicting trends.

In simple terms, big data analytics is a part of data science, which specializes in dealing with large datasets.

How does data cleaning work in big data analytics?

Data cleaning in big data analytics ensures that the data used for analysis is reliable and free from errors. This includes identifying and fixing errors, standardizing data, removing duplicates, and checking outliers.

Is big data analytics only about analyzing data, or does it also involve data storage?

Big data analytics involves both analyzing data and storing it. Storing data is essential for later analysis, and the analytics process includes extracting valuable insights from the stored data.