by Veronika Banas (Netzhirsch)
Business Intelligence: The guide for organizations
Thomas Hänig
Head of Development and Data Analyst
Consulting AnalyticsGate
Business Intelligence - What does it mean?
Business Intelligence (BI) is a multifaceted business management concept that focuses on the systematic collection, analysis and use of data in companies. At its core, BI aims to extract valuable insights from raw data that decision-makers can use to make strategic and operational decisions. It is not just about the technology itself, but also about the processes and strategies needed to transform data into actionable knowledge.
Table of Contents
Key Facts:
- Business Intelligence (BI) is the backbone of data-driven decision making in modern organizations. It combines data analysis, reporting and performance monitoring to provide insights into business processes.
- BI is a critical success factor for businesses of all sizes. BI tools are employed in various sectors such as sales, controlling, accounting, and management, enabling efficient data management and better decision-making.
- Data Access is a fundamental functional aspect of business intelligence. By utilizing appropriate tools, users can query, visualize, and validate essential information. The meticulous handling of metrics and KPIs is crucial in this context.
- Business Intelligence Approaches: BI can be divided into two main approaches: Self-Service BI, where end-users can independently access data and perform analyses, and Enterprise BI, the more static and classic solution geared towards BI experts or power users in large organizations.
- Excel's Role: For many employees, Excel is a familiar tool for data analysis and often serves as a gateway to business intelligence solutions, even though it doesn't offer the same scope as complex BI tools. Its easy accessibility and flexibility underscore its importance in businesses.
What does Business Intelligence include?
BI encompasses a variety of tools and methods, from data aggregation and analysis to reporting and dashboards (visualizations), that enable companies and organizations in general to monitor their performance, identify and respond to market trends, and increase the efficiency and effectiveness of their operations.
Scientific definition of BI
Éric Foley and Manon G. Guillemette (2010) offer a practical and business-oriented definition of BI in their article in the International Journal of Business Intelligence Research.
"Business intelligence helps report business performance, uncover new business opportunities and make better business decisions regarding competitors, suppliers, customers, financial issues, strategic issues, products and services."
Business intelligence or big data? The main differences
Big data and business intelligence are two terms that are often discussed in the context of data analysis and decision-making in companies, but they have different meanings and functions. Big data refers to huge amounts of data that come from a variety of sources and is defined by the three Vs: Volume (large amounts of data), Variety (different types of data) and Velocity (fast generation and processing).
The focus here is on overcoming the challenges associated with storing, processing and analyzing these large and complex data sets. In contrast, BI concentrates on gaining valuable insights from these and other data sources and preparing them for decision-makers in an understandable and action-oriented way. While big data provides the infrastructure and technologies for handling large amounts of data, BI uses this data to perform analyses, identify trends and support strategic decisions.
Corporate success through business intelligence
Business intelligence has matured into a success factor for organizational activities, regardless of whether the organization is small, medium-sized, or large. Numerous BI tools are deployed at the execuitive level and in areas such as sales, controlling, accounting, and management. They enable effective data management and thus make a significant contribution to decision-making. This allows strategic questions to be answered quickly and responses to environmental influences to be formulated.
Data accessibility is one of the core factors of business intelligence. By using appropriate tools, data analysts have the opportunity to query important data, visualize it, and validate the results. Expertise and meticulousness in handling metrics and KPIs are naturally important. To accurately measure an organization's current state and targeted performance, the data analysis process must be correctly executed.
One challenge many organizations face is that Excel is a far more familiar platform for many employees than Qlik Sense, Microsoft Power BI, SAP, Tableau, or other complex BI tools. Excel is thus a well-suited tool for managing organizational data but does not offer the same scope as other popular BI tools.
Self-Service BI and Enterprise BI: The differences
Business intelligence has evolved rapidly since the early 2010s. It is now sensible to view BI in a more nuanced manner, as business intelligence offers various solution approaches suitable for different types of organizations.
Today, a fundamental distinction is made between two forms of business intelligence: Self-Service BI and Enterprise BI. Both approaches have their own advantages and challenges and are primarily used in parallel in larger organizations.
Self-Service BI in organizations: Direct data access without complex IT solutions
Self-Service BI allows end-users to access data and perform data analyses without direct support from the IT department. This approach is particularly useful for organizations that do not have a lot of resources, but still have a high demand for data, where IT analysts cannot keep up with query requests. Basically, the goal of self-service BI is to simplify data management in the organization. Follow the link for real-world examples of how cash flow, P&L, and marketing data can be managed more efficiently and profitably.
BI expert Christian Lennerholt from the University of Skövde writes:
"The concept of Self-Service Business Intelligence (SSBI) can enable users to work more independently and be less reliant on BI data analysts."
The complete academic article can be found on Research Gate, also available for download.
Which is Better: Self-Service BI or Enterprise BI?
Ultimately, neither approach is inherently better. However, the fact remains that many organizations have yet to adopt Self-Service BI because it is a relatively new solution approach and there are implementation challenges. Organizations that do not want to miss out on the benefits of self-service BI should have a closer look.
The challenge of BI-Tool complexity
As we have seen, business intelligence tools are effective instruments that help organizations use their data effectively and make informed decisions. However, despite these benefits, BI tools also pose challenges to users because they require specialized knowledge in a variety of areas:
- Data collection: Aggregating data from different sources is a complex task, especially when the data is unstructured or comes from multiple systems.
Data integration: Integrating data from various sources into a data warehouse becomes a challenge when inconsistencies or duplicates exist.
Data preparation: Before data can be analyzed, it must be cleaned, transformed, and validated. Learn how crucial this process is in this article: Data Cleansing: The Comprehensive Overview for Ensuring Data Quality in Companies
Data visualization: Presenting data in an easily understandable form requires both technical know-how and a grasp of statistical and information technology concepts. The data must be screened, visualized, and validated.
This complexity results in static structures and processes within organizations, creating a strong dependency on BI experts who can effectively utilize these tools.
Three core complexity issues of BI Tools:
Problem 1: Adaptability: External data sources and systems like online shops, CRM systems, or other external data sources can be difficult to integrate, meaning there is a lack of interoperability.
Problem 2: Accessibility - lack of self-service: Not all employees have the necessary training or experience to effectively use BI tools. This can create a gap between data analysts and other departments, making the process static.
Problem 3: Time and resource constraints: Both data analysts and other specialized users, such as those in controlling, sales, or management, have limited time available. Therefore, an effective and practical solution is needed: Rely less on complex BI tools and more on customized BI applications that provide individual end-users with exactly what they need.
From need to implementation: BI integration in organizational departments
In a modern organization, each department has its unique data requirements. BI can help meet these needs and optimize workflow. The integration of BI into daily organizational operations is more than just a trend today; it's a necessity to remain competitive in a data-driven world. Naturally, different departments have individual needs that pose varying solutions and requirements for IT.
For a concrete implementation plan, see our BI Reporting Compass.
Business intelligence in various departments: Examples
BI in sales
In the realm of sales, the focus is on customer acquisition and revenue growth. Business intelligence allows sales teams to deeply analyze customer data to identify potential sales opportunities and precisely adjust sales strategies. A concrete example is the ability to determine, based on data, which products are most saleable in specific geographic regions or to recognize seasonal sales trends. This comprehensive understanding of the data landscape enables targeted actions to optimize sales strategies.
BI in controlling
Controlling is responsible for monitoring and steering the financial performance of an organization. Self-Service BI proves extremely valuable here, as it provides controllers the opportunity to analyze financial data in real-time to monitor budgets and create profit and loss statements (P&L). Moreover, this data can be used to identify cost overruns in specific departments or assess the profitability of investments. These insights enable controllers to make informed decisions to ensure the financial integrity of the organization.
BI in accounting
Accounting deals with the recording and reporting of financial transactions. With Self-Service BI, accountants can process financial data more efficiently and generate reports more quickly, as they have better access to the required data themselves. For example, they can use the data to identify discrepancies in accounts or monitor cash flow. By automating these processes, they save time and improve the accuracy of their reports.
BI in management
Business intelligence supports leaders in accessing data dashboards from various departments to get a comprehensive picture of the organization's key performance indicators (KPIs). This data is used to identify market trends, assess employee productivity, or measure customer satisfaction. With this informed knowledge, data-driven strategies can be developed to successfully advance the organization.
From concept to implementation: Empowering employees with data
Access to data shouldn't be reserved for just a select few. Without Self-Service BI, the process usually works like this:
- The IT department and data analysts ensure that the data infrastructure is functional and secure.
- Data analysts are then responsible for analyzing the desired data and providing it in dashboards.
But what if every employee had the opportunity to access this data whenever they needed it? That's the promise of Self-Service BI. Data designated for various departments is made available through the data warehouse, allowing even non-specialists to retrieve, analyze, and gain insights from it. This makes the BI process more dynamic overall, but it also introduces new, different kinds of challenges that need to be addressed.
Challenges of Self-Service BI
Dynamic data access offers many advantages, especially the ability for users to quickly search for desired metrics and KPIs and create reports. This can be particularly useful in areas where quick decisions need to be made. However, this approach also brings several challenges:
- Administrative overhead: Although the IT department and data analysts are less involved in operational analyses, they have to invest more time in administration. This includes ensuring system performance, managing access rights, data backup, and data protection.
- Unified vocabulary: With different departments conducting their own analyses, it can be challenging to establish a consistent vocabulary or standards for data and reports.
- Data integration: Combining central data from the data warehouse with user-specific data can be complex and requires careful consideration to ensure data quality and integrity.
- BI process maturity: Organizations need to assess the maturity level of their BI process to ensure they find the right balance between centralized control and user independence.
It's crucial to recognize and proactively address these challenges to maximize the benefits of Self-Service BI systems while minimizing the risks.
Making reporting as simple as possible
Reporting should not only be accurate and reliable, but also simple and easy to use. It's critical to reduce complexity and make the process understandable and accessible to all parties. The integration of self-service BI systems plays a key role in simplifying reporting. These systems enable users to perform analysis and generate reports on their own, without having to rely on IT. Learn more about how to ensure the quality of reporting in your organization in this article: Typical issues in creating and sharing reports following data analysis: An overview of report quality improvement.
Key action step 1: Implement a centralized data management system
Such a system ensures that all data used for reporting is consistent and of high quality. This reduces the risk of errors in reports and makes it easier for users to access the data they need. By combining central data from the data warehouse with user-specific data, reports can be created that are both comprehensive and customizable.
Key action step 2: Training and further education of staff
To fully leverage the benefits of Self-Service BI systems, it's important that users know how to effectively use these systems. This includes not only technical training but also training in data analysis and data protection. By strengthening the data competency of employees, they are empowered to independently create meaningful reports, thereby reducing dependency on BI experts.
Excel: The familiar BI tool for the normal business user
For decades, Excel has been the preferred tool for data analysis and reporting in many organizations. It offers a familiar environment where employees from various departments can analyze and work on their data. The flexibility and user-friendliness of Excel have made it an indispensable tool for the daily work of many professionals.
The strength of Excel lies in its simplicity and accessibility. While it does require specific technical skills, these are now widely spread across most organizations. With Excel, data analyses and visualizations can be performed with just a few mouse clicks. This makes it an ideal BI tool, especially for organizations that already use Excel as a central tool.
AnalyticsGate: The Excel-Based BI solution
While Excel is a powerful tool for data analysis, there are limitations that specialized BI solutions can overcome. This is where AnalyticsGate comes into play. We recognize that many organizations and individuals want to leverage the benefits of Excel but also require the advanced analysis features of specialized BI tools.
Our solution combines the best of both worlds. With AnalyticsGate, you can continue to work in your familiar Excel environment while also accessing powerful BI features by simply linking the Qlik Sense database with Excel.
BI Revolution: Data accessibility and adaptability at the forefront
The key differences between Self-Service BI and Enterprise BI have been outlined, with each approach having its own advantages and challenges. While Self-Service BI allows end-users to conduct data analyses independently of the IT department, Enterprise BI offers a unified solution across the organization. Despite the benefits of BI tools, there are also challenges, particularly concerning the complexity of the tools and their integration into various business areas.
Organizations that effectively deploy BI are better equipped to make informed decisions and compete in a highly competitive market environment. However, it's crucial for companies to choose the right BI solution that meets their specific needs and to invest the necessary resources to optimize their BI processes. With the right approach and tools, organizations can fully leverage the benefits of BI and achieve their business goals more efficiently.