Seth Rao
CEO at FirstEigen
Data Discovery in BI: Turning Data Into Actionable Insights
In today’s data-driven world, Data Discovery is a critical tool for uncovering hidden insights and enhancing decision-making within Business Intelligence (BI). How do Data Discovery and Business Intelligence work together? The two analytic tools are similar in approach but serve subtly different roles in your organization. Data Discovery has growing applications in Business Intelligence, especially when integrated effectively. In this article, we’ll explore key methods and real-world applications that every business should know to gain a competitive edge.
Quick Takeaways
- Business intelligence and data discovery both consolidate data from multiple sources
- Business intelligence is better used to generate general insights for day-to-day operations
- Data discovery is best used for in-depth analysis of specific issues
- Data discovery uses data visualization to help users more easily understand detailed analysis
Business Intelligence: Core Functions and Key Benefits
Business intelligence (BI) is a process for gathering, organizing, and analyzing data with the goal of delivering actionable insights. BI lets management and other staff query the collected data, generate detailed reports, and visualize data via the use of dashboards. Companies use BI to better run their businesses on a day-to-day basis.
How Business Intelligence Works?
Business intelligence involves the use of a variety of technologies and tools. It’s typically a five-step process that involves:
- Collecting data from various sources
- Integrating and organizing the collected data
- Analyzing the data
- Visualizing the insights provided by the data
- Using the data for better decision-making
The first step in BI is data collection, and it can be costly. Data is typically found in a number of different systems and department silos, in a variety of file formats, both structured and unstructured. (According to multiple sources, 80% to 90% of all data is unstructured, which makes it challenging to extract value from.)
To be of value, this disparate data must be integrated into a single data warehouse and organized in a logical fashion. The data must also be reviewed and cleansed so that it is consistent, accurate, and complete. For this stage of the process, Data quality management is essential for ensuring the necessary high data quality.
The integrated data can then be analyzed, using a variety of BI tools. Some of these tools use artificial intelligence (AI) and other advanced technologies to extract actionable insights from the data.
To make the data more useful, it must be presented in a way that is easily understood by management and key staff. While some staff still request detailed reports, management is typically better served by a more visual presentation. Reporting from the Marketing Vision 2021 conference confirms that visual dashboards and reporting are a top priority for organizations in all industries.
With all this information and analysis in hand, management and staff can make more informed decisions for day-to-day operations. This is the ultimate goal of business intelligence.
Benefits of Business Intelligence
Business intelligence provides numerous benefits to organizations of all types. The benefits include:
- Provides faster insights
- Enables easier identification of trends (thanks to data visualization)
- Enables smarter operating decisions
- Enables analytics and insights deeper in the organization, thanks to embedding analytics in business practices
Data Discovery: Key Insights and Why It’s Crucial for BI
Data discovery is a subset of business intelligence. Like BI, data discovery involves collecting data from a variety of databases, consolidating it into a single source, and using it to provide visibility into various aspects of your business. This visibility helps identify key factors and trends and uses that information to make more informed business decisions.
How Data Discovery Process Works?
Data discovery is essentially a three-step process, as follows:
- Data Collection and Preparation: Data is gathered and prepared for use; this includes integrating data from multiple sources, cleansing the data, and presenting it in a format that is easy to query and use.
- Data Visualization: Data is visualized through visual dashboards, charts, diagrams, and other media.
- Advanced Analytics: Data is organized and summarized into simple reports to aid in decision-making.
To provide actionable insights, the data discovery process relies on sophisticated data analysis skills, including data modeling and guided analytics. The use of visualization techniques and intuitive reporting makes it easy for non-technical users to quickly grasp and absorb key trends and data.
A data discovery platform typically includes the following features:
- Advanced data analysis tools
- Data visualization tools (dashboards, charts, tables, etc.)
- Predictive analytics
- Automatic data identification and classification
- Full-text and metadata search
- Data quality management, including metadata management
Benefits of Data Discovery
How does the use of data discovery benefit your business? The benefits are similar to those of BI, in general, and include:
- Ability to visualize datasets, trends, and outliers
- Provides automatic classification of data
- Offers broad access to data insights across the organization
- Enables a bigger picture view of key data
- Improves regulatory compliance and risk management
How to Use Data Discovery in Business Intelligence?
Data discovery democratizes business intelligence. By providing easy-to-grasp data visualizations, data discovery makes it easy for users at any level to better understand key business trends and take advantage of advanced analyses.
Comparing Data Discovery and Business Intelligence
Data discovery and business intelligence serve two similar but distinct functions in an organization.
The similarities are significant. Both business intelligence and data discovery consolidate and normalize data from a variety of sources, including databases siloed in individual departments. Both BI and data discovery hep to maximize the value of your organization’s data. Both provide valuable analysis and insights
The differences are also significant:
- Business intelligence provides a more consistent flow of information to support day-to-day decision making
- Data discovery is better at providing one-off, on-demand analysis of key data and trends
When considering adoption, organizations should take into account the “single source of truth” available in BI solutions, the skill sets required for each solution, and BI solutions that integrate discovery as well traditional reporting and dashboard capabilities.
Business Intelligence(BI) VS. Data Discovery- When to Use ?
Both business intelligence and data discovery start by collecting and consolidating all available data and converting it into a standardized and usable format. From there you can choose either BI or data discovery tools, depending on what you aim to achieve.
You should employ BI tools to:
- Provide enterprise-wide reports
- Generate real-time data for use in day-to-day operations
- Identify long-term trends
- Share general information with a wide range of users
You should use data discovery tools when you want to:
- Provide tactical analysis
- Provide answers to specific business-related questions
- Dig deep into specialized data investigations
- Analyze data from unstructured sources, such as social media
- Share specific analysis with a limited group of users
In short, business intelligence provides general information useful across the enterprise, where data discovery provides detailed information based on specific analysis. They both have their places in your organization.
(The following video goes into more detail about how data discovery is changing business intelligence.)
Common Challenges in Data Discovery Process (And How to Overcome Them?)
While data discovery offers significant advantages, businesses often encounter challenges that can hinder effective analysis. Here are some common issues and practical solutions:
1. Data Silos: Isolated data sources can impede comprehensive analysis, making it difficult to gain a holistic view of business operations.
Solution: Integrate all data into a unified platform. This approach ensures that data from various sources is accessible and can be analyzed together, fostering collaboration and better insights.
2. Data Quality: Inaccurate, incomplete, or outdated data can lead to misleading insights and poor decision-making.
Solution: Utilize AI-driven validation tools, like DataBuck, to automate data quality checks. These tools can identify discrepancies and ensure that the data used for analysis is reliable and up-to-date.
3. Managing Big Data: The sheer volume and complexity of big data can overwhelm traditional data management systems, leading to slow performance and bottlenecks.
Solution: Leverage cloud-based BI platforms that are designed to scale with your data needs. These platforms offer flexible storage and processing capabilities, enabling businesses to handle large datasets efficiently.
4. Lack of User Training: Users may struggle to navigate data discovery tools effectively without proper training, limiting their ability to extract insights.
Solution: Invest in training programs to empower users with the skills they need to utilize data discovery tools effectively. This investment can enhance data literacy across the organization.
Boost Data Discovery and BI Using DataBuck’s Solutions
Whether you need the general information provided by business intelligence or the specific answers afforded by data discovery, you need to start with high quality data. To ensure the highest possible data quality, turn to DataBuck from FirstEigen. DataBuck is a data quality management solution that can automatically validate thousands of data sets in just a few clicks. It can identify bad data and either clean it or isolate it, as well as constantly monitor new data fed into your data pipeline. When you need clean data for BI and data discovery, turn to the data quality experts at FirstEigen.
Contact FirstEigen today to achieve better Business Intelligence and data discovery results.
Check out these articles on Data Trustability, Observability & Data Quality Management-
FAQs
Data discovery is a process used in Business Intelligence (BI) to collect, integrate, and analyze data from various sources. It helps businesses uncover hidden insights, trends, and patterns that drive informed decision-making.
While both data discovery and Business Intelligence focus on analyzing data, data discovery typically deals with exploratory analysis to find new insights, whereas BI often focuses on delivering consistent, ongoing reporting and insights for day-to-day decision-making.
Data discovery is critical because it helps businesses identify trends, outliers, and hidden patterns within large datasets. This enables better decision-making, improved operations, and a competitive edge in the market.
Some benefits include better data visualization, more accessible insights for non-technical users, faster analysis, improved decision-making, enhanced regulatory compliance, and easier identification of key trends and business factors.
Data discovery tools often come with features like data cleansing, automatic identification of data anomalies, and metadata management. These tools ensure the accuracy, consistency, and completeness of data, enhancing the quality of the insights generated.
Yes, data discovery tools are designed to provide intuitive visualizations and reports, making it easier for non-technical users to understand complex data insights and make informed decisions.
Business Intelligence is ideal for producing regular reports, monitoring long-term trends, and supporting real-time decision-making across an organization. Data discovery is best suited for deep dives into specific data sets or answering ad-hoc business questions.
Artificial intelligence (AI) enhances data discovery by automating data analysis, pattern recognition, and predictive modeling. AI tools help businesses quickly identify trends and insights that might otherwise be overlooked.
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