By Saroj Kumar Sahoo
In today's data-driven world, businesses are constantly seeking ways to enhance their analytics capabilities. Augmented analytics, as defined by technology research firm Gartner, leverages machine learning and AI to streamline data processing, insight generation, and model development in analytics and business intelligence platforms. This innovative approach not only empowers expert data scientists but also democratizes data literacy by enabling business users, known as citizen data scientists, to delve into sophisticated analytics tools with ease. Through natural language processing, augmented analytics simplifies the query process, allowing users to interact with data using plain language, eliminating the need for complex coding or IT intervention. With the ability to extract insights from multiple variables, businesses can extract valuable information effortlessly and make informed decisions. As the analytics landscape evolves, choosing the right augmented analytics solution, such as Nirmalya Enterprise Platform Suite, becomes crucial for maximizing the benefits and staying ahead in the competitive market.
In the past, the landscape of the business intelligence solution market was notably narrow, primarily catering to the needs of data scientists and IT professionals. Operating within this realm required users to possess the technical prowess to construct SQL queries or develop code to access and interpret data spread throughout the organization's systems. The absence of a unified solution meant that individuals had to painstakingly extract and analyze data without the luxury of a user-friendly interface. This historical account illuminates the evolution and the complexity that characterized the early days of business intelligence solutions, where technical skills were paramount for navigating the data ecosystem.
Self-serve analytics revolutionized the way business users approached data insights by empowering them with tools tailored to their needs. These solutions are specifically crafted to cater to individuals without extensive data science or IT backgrounds, making it easier for users to interact with data efficiently. With the advent of self-serve analytics, traditional BI tools were enhanced with features like KPIs, objective metrics, and customizable report formats that facilitated data visualization, providing users with valuable and actionable insights. This innovative approach marked a new era in data analysis, encouraging a citizen data scientist model where business users could successfully navigate and derive insights from complex datasets. By bridging the gap between user capability and data complexity, self-serve analytics ushered in a more democratized and user-friendly era of data exploration and decision-making.
The development of business intelligence tools and analytics brought about a shift towards creating tailored solutions for business users within a self-serve framework. The concept of self-service analytics has been interpreted differently across enterprises, with some restricting access to power users and individuals inclined towards analytics exploration. Noteworthy features encompass self-serve data preparation, intelligent data visualization, and predictive analytics to support forecasting needs. This evolution signifies a strategic advancement towards empowering users with the tools necessary to drive data-informed decisions within their organizations.
As self-serve augmented analytics continues to evolve, the addition of new tools and techniques has empowered business users with expanded predictive analytics capabilities. Augmented analytics and predictive analytics are not merely competing concepts; instead, the key lies in seamlessly integrating predictive analytics into the business user's realm. This integration allows users to test hypotheses, develop prototypes, and harness sophisticated algorithms and analytical methods within a self-serve and user-friendly environment. Through a tailored self-serve solution, users can now delve into techniques such as time series forecasting (utilizing Holt-Winters, ARIMA, and ARIMAX models), regression analysis (including simple and multiple linear regression), classification methods (like naïve-bayes, decision tree, K-nearest neighbor, and binary logistic regression), association analysis, correlation testing (including Spearman and Karl Pearson coefficients), clustering techniques (such as K Means and hierarchical clustering), hypothesis testing (covering one-way Anova, Paired T-test, and Chi-Squared Test), and delve into descriptive statistics (e.g., Mean, Median, Mode, etc.). This comprehensive approach equips users with a robust set of functionalities, enabling informed decision-making and advanced data exploration in a professional and user-centric manner.
Nirmalya Enterprise Platform Suite plays a pivotal role in the present and future landscape of augmented analytics for enterprises. Embedded with powerful Business Intelligence, AI, and Analytics tools, this suite caters to the modern business space's evolving needs. Offering improved performance through low-code and no-code options, it enhances scalability and streamlines solution implementation, usage, and upgrades.
As AI technology continues to advance, its integration into analytical solutions results in more user-friendly tools with enhanced capabilities and functionality for business users. For organizations seeking comprehensive solutions, it is essential to consider Nirmalya Business Intelligence that seamlessly blends traditional BI functionalities with KPIs, flexible reporting, augmented analytics featuring AI, low-code, no-code technologies, and advanced features. Such a holistic approach empowers data scientists and business users alike, providing a diverse toolkit to meet their roles and responsibilities effectively. If you wish to explore the Nirmalya Enterprise Platform Suite further, feel free to reach out to us today for more insights.