Mobile Menu
  1. Insider Expertise

Dig Into Details: Leveraging Granular Data in Industry Analysis

Dig Into Details: Leveraging Granular Data in Industry Analysis

Written by

Alfabank-Adres

Alfabank-Adres
Industry research you can trust Published 18 Sep 2023 Read time: 12

Published on

18 Sep 2023

Read time

12 minutes

Key Takeaways

  • Granular data is crucial to making informed decisions and effective strategies.
  • Insights into industry trends and performance for organizations in all sectors can be found in granular data.
  • Granular data can include geographic, demographic, transactional, customer behavior, social media engagement and supply chain data.
  • Accuracy, data privacy and security are important considerations for businesses using granular data.

Across sectors from healthcare to manufacturing and retail to accounting, data is the foundation on which business leaders build sound strategies. Businesses, government departments and other organizations are increasingly reliant on data to make informed decisions, uncover market trends, and gain a competitive edge. However, not all data is created equal, and that's where granular data comes into play.

Let’s unpack some of the fundamentals of granular data: what it is, how to make the most of it, and why you should care about what it can teach you.

The importance of data in modern business

Data has become a crucial focus for organizations across sectors, influencing product development, marketing strategies, supply chain management, financial forecasting and everything in between. It empowers your organization to better understand your customers, analyze your competitors, optimize operations and adapt to changing market dynamics.

What is granular data and why does it matter?

Granular data is data that has been broken down into its most detailed and specific components. Instead of looking at high-level overviews, granular data drills down to individual data points, allowing for a more precise analysis of trends, patterns, and outliers.

Granular data is important because it helps us to uncover hidden insights and trends that might go unnoticed when dealing with broader, aggregated data. For industry analysts, this level of detail is invaluable. It enables a more profound understanding of market dynamics, consumer behavior, and the factors driving industry trends and performance.

What is the difference between granular data and aggregated data?

It's important to draw a clear distinction between granular data and aggregated data. Aggregated data takes a large volume of information and summarizes it at a high level, often losing the finer details in the process. For instance, a monthly sales report for a retail chain might provide total sales for the entire month but won't reveal which products sold best on which days.

Granular data, on the other hand, preserves those finer details. Examining data at this level of detail provides a wealth of information on factors such as individual transactions or client interactions, which allows for more nuanced and comprehensive analysis.

What are the different types of granular data?

Granular data can come from a range of sources and encompass different types of information. Some common examples include:

  1. Geographic data: Information related to location, such as GPS coordinates, postal codes, or regional boundaries. You can use geographic data to analyze market penetration, target specific regions for expansion and understand the spatial distribution of customers.
  2. Demographic data: Characteristics of populations like age, gender, income and education level. Businesses can use demographic data to tailor marketing campaigns, develop products that meet specific consumer needs, and identify emerging market segments.
  3. Transactional data: Individual sales transactions, purchase histories and financial records. This information helps you understand customer preferences and buying habits at a granular level.
  4. Customer behavior data: Information on the ways that customers interact with websites, mobile apps or physical stores. This data can provide insights into user preferences, navigation patterns and conversion rates.
  5. Social media engagement: Individual social media interactions such as likes, comments and shares. Tracking and analyzing this data can help you determine consumer sentiment and trends.
  6. Supply chain data: A business’s inputs and outputs. Monitoring the movement of goods and materials through the supply chain allows you to better manage and optimize your inventory.

Why does granular data matter to industry analysis?

Keeping pace with—or, ideally, getting ahead of—the competition requires a deep understanding of market dynamics, consumer behavior and industry trends. While it may seem counterintuitive to look at a structure as vast as an industry and still find value in the smaller details, granular data provides decision-makers with a powerful lens through which to examine and interpret information.

A business leader presents detailed data to his team. He is standing in front of a screen that shows data visualizations and pointing to a chart.

Building a comprehensive picture of an industry

Both granular and aggregated data play important roles in honing your understanding of an industry. Where aggregated data provides a bird's-eye view of an industry, granular data zooms in to reveal the intricate details that shape it.

For instance, instead of knowing the overall revenue of an industry, granular data can break down revenue by factors like product, region, customer segment or business size. This level of detail allows you to use industry analysis to identify hidden opportunities, analyze risks and craft strategies that are fine-tuned to the specific needs of the market.

Using Granular Data

To underscore the significance of granular data in industry analysis, let's consider a few hypothetical scenarios:

  1. Retail: A department store chain armed with granular data can identify that a particular product category, such as electronics, is performing exceptionally well in a specific region. This insight can lead to targeted marketing campaigns and inventory adjustments, ultimately driving higher profits.
  2. Financial services: A bank utilizing granular data can detect a surge in credit card applications from a particular age group during a specific time of the year. Armed with this knowledge, they can tailor their promotional offers to attract this demographic segment, enhancing customer acquisition and retention.
  3. Healthcare: In the healthcare industry, granular data takes on a unique role. By focusing on geographic granular data, healthcare providers can gain invaluable insights into growth opportunities. For example, by analyzing patient demographics, health trends and local healthcare infrastructure, a hospital system can identify areas with growing populations and unmet healthcare needs. Armed with this information, they can strategically expand their services and facilities to meet the demands of specific communities, improving both patient outcomes and the bottom line.
  4. Manufacturing: A manufacturing company can predict maintenance needs well in advance by analyzing granular data on machine performance. This proactive approach minimizes downtime, reduces maintenance costs and optimizes production efficiency.

How to collect and manage granular data

When relying on data to make decisions, the quality and reliability of your data are paramount. Granular data, with its detailed nature, requires careful collection and management.

Best practices for collecting granular data

  1. Define clear objectives: Begin by clearly defining the goals and outcomes of your data collection efforts. What specific insights or questions are you looking to address? Having a well-defined purpose will guide your data collection strategy.
  2. Identify data sources: Determine which sources of granular data you will use to achieve your objectives. These sources can include customer transactions, social media interactions, website analytics, production figures or any metric that suits your business and operating environment. Ensure that the data sources you choose are reliable and up-to-date, and evaluate the methodology your sources use.
  3. Data sampling: Depending on the volume of granular data available, consider using sampling techniques to manage large datasets efficiently. Sampling allows you to analyze a representative subset of the data while reducing processing time and costs.
  4. Data quality checks: Implement rigorous data quality checks at the collection stage. Validate your data to identify outliers or errors, and ensure that your data is correctly formatted and standardized.

Data quality considerations

  1. Accuracy: Granular data is only valuable if it’s accurate. Regularly validate data entries to ensure they match the real-world phenomena they represent. Implement error-checking mechanisms to quickly identify and rectify any inaccuracies.
  2. Completeness: Ensure that your data collection process captures all relevant data points without omissions. Missing data can lead to biased or incomplete analyses.
  3. Consistency: Maintain consistency in data collection methods and definitions over time. Changes in data collection processes can introduce inconsistencies that affect the integrity of your analyses.

Data privacy and compliance

  1. Compliance with regulations: Stay informed about data privacy regulations such as GDPR, CCPA, and HIPAA, depending on your industry and geographic location. Ensure that your data collection and storage practices adhere to these regulations.
  2. Data security: Granular datasets sometimes contain sensitive information, making robust data security measures crucial. Safeguarding granular data from the growing threat of cyberattacks is crucial, as data breaches can lead to significant legal, financial and reputational issues.
  3. Data access controls: Restrict access to granular data to authorized personnel only. Implement role-based access controls and encryption to safeguard data from unauthorized access.
  4. Data retention policies: Develop clear data retention policies that outline how long granular data should be stored and when it should be securely deleted. Regularly audit and update these policies as needed.
  5. Data governance: Establish a robust data governance framework within your organization to oversee data collection, management, and compliance efforts. This includes appointing data stewards and conducting regular audits.

How to analyze granular data

In the world of industry analysis, the real magic happens when you take raw granular data and turn it into actionable insights. But how exactly do you go about dissecting these intricate datasets to extract valuable information? Let's delve into the methods and tools that professionals use to make sense of the wealth of information at their fingertips.

Tools and techniques for granular data analysis

When it comes to analyzing granular data, having a diverse and reliable selection of tools and resources in your toolbox is crucial. Some of these tools include:

  1. Big Data Analytics software: User-friendly tools like Microsoft Excel or Google Sheets are often incapable of handling the amount of data you may want to analyze. Instead, industry analysts often rely on data analytics platforms like Microsoft Azure or Cloudera, or opt for open-source platforms like Hadoop, Cassandra or SAS to crunch numbers and create data models. These tools require knowledge of programming languages, but allow analysts to transform complex datasets into comprehensible patterns.
  2. Data visualization: Granular data is not always easy to interpret at first glance. Data visualizations are instrumental in turning rows and columns of numbers into insightful graphs, charts and dashboards. Visual representations make it easier to spot trends and anomalies—more on this in a moment.
  3. Machine learning algorithms: As technology advances, machine learning algorithms are increasingly employed to uncover hidden insights within granular data. These algorithms can identify patterns and predict future trends based on historical data, providing a competitive edge in decision-making.

The importance of data visualization

Effective data visualization is an art form. It's not just about creating flashy graphs; data visualization is a way to convey complex information in a way that's easily digestible. Whether it's a heatmap showing regional sales distribution or a time series chart illustrating market fluctuations, visualizations bring granular data to life.

Visualizations can help you:

  • Spot trends: Line charts and bar graphs reveal trends over time, helping you to identify growth or decline patterns in various market segments.
  • Compare data: Side-by-side comparisons can highlight disparities in performance between different regions, industries, or product lines.
  • Discover outliers: Scatter plots and box plots can quickly pinpoint outliers, which may indicate unusual or noteworthy occurrences in your data.

How to extract actionable insights from granular data

Ultimately, the goal of granular data analysis is not just to accumulate knowledge but to derive actionable insights that drive strategic planning and decision-making. You can use granular data to:

  • Identify market niches: Granular data can help you uncover underserved markets or niches that present growth opportunities.
  • Tailor marketing strategies: By understanding customer behavior at a granular level, you can create highly targeted campaigns that resonate with specific demographics or segments.
  • Optimize supply chains: Detailed transactional data can be used to optimize supply chain logistics, reducing costs and improving efficiency.
  • Analyze risk: By examining granular data, you can pinpoint potential threats and create robust risk management frameworks to mitigate challenges for your organization.

Granular data in action: healthcare industry associations

In the healthcare sector, industry associations play a pivotal role in advocating for their members and driving positive change. These associations specialize in representing the interests of healthcare professionals, organizations, and stakeholders. One of the most powerful tools at their disposal is granular industry data, which they can harness to achieve a wide range of goals and initiatives. Let's explore how healthcare industry associations can leverage this data to make a significant impact.

Strategic resource allocation

Healthcare associations can use granular geographic industry data to strategically allocate resources. By understanding the specific healthcare needs and challenges in different regions, they can direct funding, education, and advocacy efforts where they are needed most. For example, if data indicates a high prevalence of a particular disease in a specific area, the association can prioritize campaigns and initiatives targeting that region.

Policy advocacy and lobbying

In the realm of healthcare policy, precision matters. Granular data allows associations to make data-driven arguments when advocating for policy changes at local, regional or national levels. Whether it's advocating for improved access to healthcare services, better reimbursement rates or funding for research, associations armed with granular data can provide compelling evidence to support their case.

Healthcare workforce development

Healthcare associations are often involved in initiatives related to workforce development, including training and education programs. Granular data can help them identify areas with shortages of specific healthcare professionals or where certain specialties are in high demand. This information can guide the development of programs and partnerships with educational institutions to address these gaps.

A pediatrician wearing a white coat and stethoscope talks to a child and parent.

Targeted community outreach

Associations can use granular geographic data to engage in targeted community outreach and education efforts. They can identify communities with specific health disparities or low healthcare literacy rates and tailor their outreach efforts accordingly. This might include organizing health fairs, providing informational materials in multiple languages, or collaborating with local healthcare providers.

Monitoring and evaluation

Granular data also plays a crucial role in monitoring the impact of various healthcare interventions and programs. Associations can track key metrics, such as disease prevalence rates, healthcare access, and the effectiveness of public health campaigns, at a granular level. This allows for ongoing assessment and adjustment of initiatives to ensure they are achieving their intended outcomes.

Member support and networking

Healthcare associations can provide added value to their members by offering access to granular data insights. This information can help individual healthcare providers and organizations make informed decisions about where to expand their services, open new facilities, or invest in specific healthcare technologies based on local market conditions.

Other challenges and considerations

While we can see that granular data is a valuable resource, it's crucial to acknowledge the challenges and considerations that come with harnessing this kind of information. We’ve already discussed the importance of data privacy, security, governance and accuracy; here are some of the additional considerations when using granular data and some strategies to address them.

Scalability and resource requirements

As granular data sets can be vast and complex, managing them is often resource-intensive. Your organization should invest in the necessary infrastructure, technology, and skilled personnel to handle and analyze granular data effectively. This consideration extends to both data storage and processing capabilities. Alternatively, you can decide to enlist the support of industry data resources that take much of the number-crunching and technology requirements off your hands, leaving more time and resources for strategic decision-making.

Data discrepancies

Granular data often originates from diverse sources, and inconsistencies or inaccuracies can creep in. A single source of truth, often facilitated by a comprehensive industry data resource, serves as a centralized repository where all stakeholders can access reliable, standardized data. By using a single source of truth, your organization can minimize data discrepancies, reduce double handling and enhance data reliability. This not only streamlines decision-making, but also fosters trust among team members who rely on consistent, accurate data.

Final Word

Data is the cornerstone of informed decision-making. From understanding the nuances of market dynamics to identifying growth opportunities and addressing challenges, granular data is your compass in the business world. Accurate and reliable granular data offers high-quality insights into crucial considerations for your organization. We’re truly in the era of data-driven decision-making—a powerful approach that empowers you to navigate your industry with precision and foresight.

Recommended for you

Never miss
a beat

Join Insider Monthly for exclusive data and stories like these, delivered straight to your inbox.

Something went wrong. Please try again later!

Region

Form submitted

One of our representatives will come back to you shortly.

Tap into the largest collection of industry research

  • Scalable membership packages to fit your needs
  • Competitive analysis, financial benchmarks, and more
  • 15 years of market sizing and forecast data