Adaptive analytics: The future of data-driven decision-making | HCLTech

Adaptive analytics: The future of data-driven decision-making

How can organizations harness dynamic market and customer demands with adaptive analytics?
 
8.1 min. read
Sadagopan S
Sadagopan S
EVP, Global Head of SaaS and Commercial Applications, Digital Business Services, HCLTech
8.1 min. read
Adaptive analytics: The future of data-driven decision-making

When organizations began their journey with technology, they had a very different view of data compared to today. Back then, it was effectively a supporting player to the larger business success. Ten-plus years later, it’s evident that data has undergone a seismic transformation.

Despite this shift, a critical question still looms large. In today's fast-paced and rapidly changing business landscape, what do enterprise leaders value more—the past or the present? Or in more relevant terms, traditional analytics or adaptive analytics?

While both provide valuable insights, in today’s connected environment, real-time data is the key to success.

Traditional analytics may still have its place, but it’s no longer sufficient for businesses. Data volumes are expected to reach a staggering 180 zettabytes by 2025. Turning this data deluge into actionable insights is crucial to thrive in today's dynamic environment.

In fact, 65% of modern business decisions are more complex than those made just a few years ago. This ties in neatly with how the view of data has changed, and it also highlights how the most up-to-date information is important in making informed choices. With adaptive analytics, enterprises will be able to reap the benefits of real-time data analysis, insight-based, timely decision-making.

Adaptive analytics vs traditional analytics

In line with the need for agility and responsiveness across business functions, adaptive analytics has ample opportunity to shine. Unlike traditional analytics, which can be slow, rigid and prone to error, adaptive analytics offers a dynamic and flexible approach that enables organizations to keep pace with ever-changing market and customer demands.

Another advantage of adaptive analytics is its ability to leverage advanced technologies like artificial intelligence and machine learning. This helps businesses unlock insights that were previously hidden, allowing them to make more informed decisions and take advantage of new opportunities faster. Real-time data analysis ensures that adaptive analytics can provide accurate and relevant insights in a matter of seconds, empowering business leaders to stay ahead of the curve.

Moreover, by automating this data analysis and reducing the need for manual intervention, adaptive analytics is beneficial for businesses, saving time, reducing costs and optimizing their resources. It also has a positive knock-on effect for data analysts and other experts who can now focus on more strategic tasks that add value to the business. Such tasks can include new product development, customer service improvement and the identification of new growth opportunities. Offering businesses a smarter, future-ready and disruption-proof approach to data usage, adaptive analytics has emerged as a leading trend in data and analytics (D&A).

The road to proactivity: How adaptive analytics is reshaping industries

Adaptive analytics offers numerous possibilities and takes on quite interesting dimensions when applied across industries. Take the banking, financial services and insurance (BFSI) sector. In a domain where fraud and other financial crimes can have severe consequences, adaptive analytics provides real-time detection of anomalies in financial transactions. This prevents fraudulent activities and protects businesses against any losses. Similarly, in healthcare, where patient outcomes and efficient use of resources are of tremendous importance, adaptive analytics can identify patterns and predict outcomes based on patient data. This helps healthcare providers to make more informed decisions and administer better care.

For retail and e-commerce businesses, adaptive analytics can tailor product recommendations based on how customers browse and buy. Increased customer satisfaction and sales becomes a foregone conclusion. Also, it can identify purchasing patterns and forecast demand, allowing businesses to optimize their offerings and improve their inventory management.

For instance, Amazon uses adaptive analytics to recommend products to customers based on their browsing and purchase history. The algorithms continuously adapt to new data, with which the global online retail leader can make personalized recommendations to its customers in real time.

Adaptive analytics also holds immense value for manufacturers. It can optimize supply chain management and production processes, reducing costs and improving product quality. By identifying areas for improvement, forecasting demand and predicting maintenance needs, it can also enable manufacturing companies to stay competitive in an increasingly global market.

For marketing and advertising firms, reaching the target audience may be business-critical but it also remains a key concern. Adaptive analytics can help them identify the most effective channels, messages and offers, as well as optimize advertising spend based on real-time performance data, maximizing the return on investment.

For energy and utility companies, adaptive analytics can improve energy consumption, reduce downtime and detect equipment failures or other anomalies in real time. All this can lead to savings in costs and increased efficiency. Enterprises in the transportation and logistics industry can also leverage adaptive analytics. It can help them plan the best routes and schedules for their deliveries. Adaptive analytics can also allow real-time tracking of shipments and inventory, which reduces costs and improves delivery times.

A cue in this regard can be taken from a leading mobility-as-a-service provider that uses adaptive analytics to optimize its pricing strategy. The algorithms analyze real-time data on demand and supply to determine the optimal price for a ride. This helps the company increase revenue while also providing a relatively affordable and quite convenient service to its users.

As a global leader in computer software, Adobe has long recognized the transformative power of adaptive analytics. With its help, Adobe has created Adobe Experience Manager (AEM) forms. They boast an intuitive user interface and offer a user-friendly solution for producing, administering, publishing and updating intricate digital forms. These forms seamlessly integrate with back-end procedures, business regulations and data, and function effortlessly on both mobile and web platforms.

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Redefine your adaptive analytics journey with HCLTech

There are plenty of reasons to believe that adaptive analytics holds significant promise, with firm prospects of innovation and development in the coming years. Early adopters at this stage will be well-placed to gain a competitive advantage and achieve long-term success.

HCLTech can be an ideal partner for enterprises looking to embark on their adaptive analytics journey. With a deep expertise in advanced analytics, machine learning and artificial intelligence, HCLTech can help enterprises develop and implement adaptive analytics solutions tailored to their specific needs, enabling them to stay ahead of the competition, today, and well into the future.

To find out more about how organizations can use adaptive analytics, readers can reach out here

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