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Home ยป Business Intelligence ยป Embedded Analytics 101: Facilitating data-driven decisions across the board

Embedded Analytics 101: Facilitating data-driven decisions across the board

Published On September 1, 2023

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In today’s rapidly evolving business landscape, data has emerged as a goldmine of insights that not only can drive strategic decisions but also enhance operational efficiency and fuel innovation. However, the true potential of data can only be harnessed when it is transformed into actionable insights. This is where embedded analytics steps into the spotlight. Embedded analytics is not just about standalone business intelligence reporting tools or dashboards. It’s about integrating data analytics capabilities directly within your applications. It empowers users to make data-driven decisions without switching between different platforms or interfaces.

The premise is simple but revolutionary: Imagine a world where every interaction with software, whether managing inventory, diagnosing a patient, or making business decisions, seamlessly incorporates real-time data analysis, enabling individuals to make informed choices without missing a beat. Embedded analytics bridges the gap between data collection and decision-making. It removes the need for manual data transfers, reducing the risk of data misinterpretation and elevating the speed at which businesses can respond to changing circumstances.

What is Embedded Analytics?

Embedded analytics is the integration of powerful data analytics capabilities into other important applications. It aims to incorporate data analytic capabilities into an organization’s workflows, applications, and other crucial resources. It allows you to gain insights from data without stopping what you’re doing to use a different application. Everyone can access the information they require when they require it, including your partners, customers, and suppliers.

What is embedded analytics?

For instance, embedded analytics can provide customer service representatives instant access to data on new cases. By doing so, they are better equipped to gather information and make decisions more quickly, increasing customer satisfaction and reducing call time.

Users gain a more data-driven perspective on each business area by integrating analytics into the applications internal teams frequently use, such as customer relationship management (CRM) tools, financial systems, or enterprise resource planning (ERP) solutions. These insights lead to better business results.

In the end, modern analytics embedded within your application equips a business to make decisions more quickly and with greater knowledge. Many businesses use embedded analytics and business intelligence (BI) systems to maximize the value of their data. Learn more about the idea and how it enables organizations to plan and carry out goals in a more data-driven manner.

Benefits of embedded analytics

Benefits of Embedded Analytics

Embedded analytics tools blend into an application’s design and branding because they are integrated flawlessly into business applications and processes. As a result, access to advanced analytics and data visualizations within daily work is made more convenient, offering businesses several advantages to succeed.

1. Data-Driven Decision Making

The present-day embedded analytics isn’t intended solely for data analysts anymore; it’s also explicitly designed to assist your business users in applying data-driven insights to improve decisions. Less time is spent on data preparation, and more time is spent on analysis that has real-world applications.

With embedded analytics, which seamlessly integrates with your current applications, you can transform how you analyze data and make real-time decisions. It allows users to access real-time data insights in their applications, facilitating quicker and better-informed decision-making.

2. Improved User Experience and Customer Satisfaction

An integrated user experience is ensured by embedded analytics. Users find it simple to use when integrated as a feature within business applications. They enjoy it and consider the matching application process to be convenient. They are not required to become accustomed to new interfaces or learn new systems. Quick adoption of analytics enhances and increases user trust in the organization’s overall BI adoption.

3. Increased revenue and upsell opportunities

The most significant benefit of embedded analytics is its capacity to support the creation of new business models that use the data you already have and generate new revenue streams. In the same way, it affects your application, an embedded analytics solution can affect your company. It can create new revenue streams and increase the scope of opportunities. To boost client retention and scale your business, you can create fresh lines of business around embedded analytics services, such as white-labeled dashboards. More upselling and cross-selling opportunities become available as a result.

For data-savvy audiences, modern businesses successfully use embedded analytics to simplify complex dashboards created with traditional BI tools. Providing users with data enables businesses to identify revenue opportunities to close the gap in their offerings.

4. Increased Data Accessibility

Users can easily access insights within their current workflows by integrating analytics without switching between different systems or platforms. Embedded analytics allow your end users to discover hidden insights in the data quickly. As a business, your customer base will always have access to the most recent technological advancements when you embed an analytics platform emphasizing innovation. Embedded data analytics allow your end users to discover hidden insights in the data quickly.

5. Enhanced Data Exploration

Users can interactively explore data to gain deeper insights and spot overlooked patterns or trends through interactive visualizations, filters, and drill-down options. Users can use data to provide their answers to questions through the self-service reporting features of embedded analytics tools. This will benefit all app users, including your teams, departments, and clients. Users can create reports and dashboards anytime by embedding self-service reporting into the application with an intuitive drag-and-drop interface.

6. Personalized Insights

Embedded analytics permits dashboard and report customization, allowing users to adjust their analytics experience to their particular requirements and preferences. It integrates real-time, contextual analytics into users’ workflows. Often, data cannot be understood or interpreted independently because rows or unprocessed numbers cannot provide business users with meaningful insights. Such applications come with powerful data visualization and reporting features that assist users in turning that unprocessed information into clear, understandable business insights.

7. Collaboration and Sharing

Users can share insights, reports, and dashboards with colleagues, fostering data-driven collaboration and facilitating educated exchanges and decision-making processes. By embedding a contemporary business intelligence platform, you can offer new capabilities that will change how your users interact with your application. For instance, you can program specific features into dashboards or obtain quick, automated insights without performing manual data discovery work. In an organized setting, they can collaborate on data and exchange insights. With an improved UI and flexible design options, modern embedded analytics also provides a better user experience.

8. Operational Efficiency

Embedded analytics supports data-driven process optimization by locating challenges, inconsistencies, and areas for improvement. This improves operational efficiency and results in reductions in costs. By utilizing it, you can view data contextually, eliminating the need for users to switch between different applications to find the required data. Users can devote more time to crucial tasks that call for their expertise and time when they are not required to switch between business applications and analytics tools to seek insights.

9. Competitive Advantage

While your rivals are still figuring out the benefits of using embedded analytics, your company can gain the required competitive edge by providing your customers’ business insights. Modern analytics embedded within your application serving up actionable insights offer the ideal opportunity for businesses looking to outdo their competitors. It enables the identification of performance issues that require action, inducing cost reduction and revenue boost.

Key features of an embedded analytics platform

Key Features of an Embedded Analytics Solution

The integration of analytics within business applications has become more important than ever in todayโ€™s data-driven landscape. Organizations across industries are recognizing the power of embedded analytics to get real-time insights and make data-driven decisions. However, the path to selecting the right embedded analytics solution is not as easy as it might seem. Just as no two businesses are the same, embedded analytics solutions are not built equally. Thus, the journey towards integrating analytics into your applications requires careful evaluation of key functionalities.

It’s not merely about finding a solution that can generate charts and graphs. Rather, organizations need to assess their unique business objectives and user needs. Making the right choice means you’re arming yourself with a tool that doesn’t just display data but empowers your application with the ability to harness insights effectively.

1. Self-Service Analytics

Self-service analytics is the primary feature that makes a BI solution with embedded analytics worth it. Self-service analytics is a method of advanced analytics that enables business users to work with data without requiring technical expertise or data analysis skills to uncover potential insights. Business users no longer need to submit a request to IT or an analyst and then wait for answers that might already be outdated, thanks to access to self-service analytics tools.

Instead, self-service analytics encourages a data-driven culture by providing recommendations and insightful guidance to non-technical users at precisely the right time. Businesses can boost data literacy across all functions by combining streamlined business processes and employee training.

2. Real-time data visualization and exploration

It is imperative for an embedded analytics solution to provide real-time data visualization. It should allow users to see and understand vast amounts of data in coherent, straightforward ways by using graphical representations and data visualizations, which equips them with the knowledge and skills they need to make educated choices. Embedded analytics provide interactive and dynamic visual representations of data in real time, enhancing the ease with which information in the format can be interpreted and analyzed.

Considering that the visual medium is the easiest to grasp and learn from, choosing embedded analytics software with a robust visualization library is essential for enabling users to convey complex information. Dashboard linking enables you to link individual dashboard visualizations or an entire dashboard to URLs or other dashboards. Users can quickly drill down to more detailed insights by passing parameters and filters between dashboards using dashboard linking. For instance, you could create a brand-new dashboard to give additional details about the data that appears in a visualization.

3. Interactive dashboards and reports for tailored insights

Embedded analytics enhances data-driven decision-making by offering interactive dashboards and reports for tailored insights. These dynamic dashboards serve as a window into an organization’s data, allowing users to easily explore and uncover actionable insights. Users can easily visualize data, apply filters, drill down into specific details, and even customize their views to focus on the metrics and key performance indicators that matter most to them.

This level of interactivity empowers individuals across various departments within an organization to extract meaningful information from complex datasets, ultimately driving more informed decisions. Whether it’s a marketing team tracking campaign performance, a finance department monitoring budget allocations, or a sales team evaluating revenue trends, these tailored dashboards can be customized to reflect the unique requirements of each user.

4. Integration with data sources

Integration with data sources is paramount due to the increasingly complex and interconnected nature of modern business environments. In today’s data-driven landscape, businesses are inundated with information from many sources, ranging from traditional databases to cloud services and IoT devices. Seamlessly integrating these diverse data streams empowers businesses to harness a holistic view of their operations, market trends, and customers. Without integration, data silos can arise. By aggregating data from various sources, embedded analytics can provide a comprehensive and real-time understanding of the business landscape. It enables businesses to get data-driven insights that are accurate, timely, and actionable.

With the help of modern BI solutions, users can easily connect to numerous data sources and then combine these data in one location for thorough analysis. LANSA BI stands out as the ideal solution for businesses leveraging IBM i applications due to its seamless integration capabilities. It enables users to interface with diverse data sources effortlessly and facilitates data consolidation from platforms like Db2, Microsoft SQL Server, and many more. This comprehensive approach empowers businesses to conduct in-depth analyses by merging data within a singular repository.

5. Scalability

One of the most important factors when considering the analytical experience of any product is scalability and onboarding. Embedded analytics facilitates the development of fresh business strategies that effectively use your current data to generate new revenue streams. For instance, if you provide a tool for building websites, you will likely have data that can assist users in determining periods of high traffic, enabling them to decide the most appropriate time to publish new content.

Capabilities to support cloud integration, especially multi-cloud, is one of the main functionalities for any successful embedded analytics solutions. Additionally, you can use third-party data to strengthen your analysis and learn more about the choices and actions of your customers. It could open up possibilities you never considered previously. Informed changes and the ability to manipulate data in your favor allow you to foster exponential business growth.

6. Integrated security

Capabilities to support integrated security is another functionality of an effective embedded analytics solution. It acknowledges the need to protect sensitive data while balancing user convenience through integration with single-sign-on platforms and role-based access controls.

It offers an integrated framework for user management that enables refined control over application and data access, either independently or through optional integration with already-existing user databases and authorization systems.

7. Seamless collaboration and sharing of analytics

Most businesses that use embedded data analytics software will have limited staff members interacting with the system. Software with multi-user capabilities and access to specific employee classifications makes collaborating easy. A significant way to impact overall operational success is to use the collaborative functionality of your embedded analytics software.

Consider the application’s exporting capabilities carefully when looking into embedded analytics solutions. Many contemporary embedded solutions enable the export of reports and dashboards into popular file types like PDF, XLS, DOCX, and others.

These features allow all relevant users to interact with the interface and access countless analytic insights, promoting greater intelligence across all departments.

Examples of how businesses can utilize embedded analytics

Businesses use embedded analytics to add real-time business intelligence to their standard programs, improving the general user experience and performance. Here are a few illustrations:

1. In websites

Businesses that depend on accurate inventory to meet rising (or falling) customer demand can benefit significantly from embedded analytics, especially during uncertain times. For instance, a big-box retailer can use a machine learning-based AI platform to analyze sales data and spot trends, such as an increase in the sales of a particular item.

They can ask specific questions about their products or stores using real-time information or deploy the appropriate inventory to meet demand. Dealers can improve demand forecasting, manage inventories, and optimize supply chain with the help of this data.

2. In internal tools

Businesses are increasingly leveraging embedded analytics as a powerful internal tool to enhance decision-making and drive operational efficiencies. Embedded analytics integrates seamlessly into existing business applications, such as ERP software, CRM systems, and project management tools, allowing employees to access valuable insights and visualizations without having to switch between different interfaces or platforms. By embedding analytics directly into their internal applications, businesses can monitor key performance indicators, track progress, and identify trends, enabling them to address challenges and find opportunities.

For instance, consider the CRM software utilized by a sales team. Through embedded analytics, they can access real-time visualizations of their sales performance, conversion rates, and customer trends within the CRM dashboard. It allows them to tailor their strategies on the fly and improve their effectiveness. Overall, embedded analytics serves as a strategic asset, not only streamlining processes but also promoting a culture of informed decision-making across all levels of the organization.

3. In products

Nowadays, businesses may employ insightful data to create products with embedded analytics for a better, more customizable user experience. Through easy-to-use interfaces, users can explore the product’s data and apply their findings to use it better.

One prime example can be seen in the e-commerce industry, where companies such as Amazon use embedded analytics to offer personalized product recommendations to their customers. Amazon’s recommendation engine suggests relevant products by analyzing user browsing and purchase history in real time, increasing customer engagement and sales. It not only enhances the user experience but also drives revenue by cross-selling.

The Future of Embedded Analytics

AI is set to power embedded analytics by providing advanced capabilities beyond traditional data analysis. Through AI-driven algorithms and machine learning models, embedded analytics will gain the ability to automatically uncover hidden patterns, trends, and insights within vast datasets. It helps business analytics to get more accurate real-time data and make well-informed decisions. Predictive analytics, driven by Artificial intelligence, will enable businesses to anticipate trends and future outcomes, while prescriptive analytics will offer actionable recommendations to optimize processes.

From automated anomaly detection to proactive forecasting, AI-driven embedded analytics promises to enhance user experiences, streamline operations, and drive innovation across various industries. Moreover, artificial intelligence anomaly detection will enhance security and fraud prevention by detecting unusual patterns in real time. Overall, integrating artificial intelligence into embedded analytics transforms static data into dynamic, proactive, and precious insights for businesses across various industries. The future of embedded analytics looks bright, given our growing reliance on AI.

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ABOUT THE AUTHOR

Tory Dogra

Tory is a seasoned technical writer at LANSA. With years of experience in creating content that appeals to different kinds of technical audiences, she can develop blogs, articles, technical guides, and ebooks based on complex technology and user knowledge. Tory has written extensively on topics like mobile applications, website development, and cloud solutions.

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