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April 14.2025
3 Minutes Read

How Swedbank Insurance and Get’mo Are Redefining Customer Experience with AI Learning

AI learning: Woman smiling while learning online at her desk.

Transforming Customer Experiences with Data and AI

As businesses strive to enhance customer engagement, innovative organizations like Swedbank Insurance, Get’mo, and OREA are leading the charge in redefining customer experience through data analysis and artificial intelligence (AI). These companies have leveraged cutting-edge technologies to address their unique challenges and significantly improve how they interact with customers. The integration of AI learning paths has allowed these organizations to optimize their operations and elevate customer satisfaction, setting a benchmark for others in the industry.

Swedbank Insurance: Personalization Through AI

Swedbank Insurance faced challenges with inefficiencies and high costs in promoting their insurance products, which are not core offerings of the bank. Their solution lay in utilizing a data-driven strategy that harnessed AI to analyze nonpersonal data collected from both banking and insurance clients. By deploying advanced machine learning techniques on the SAS® Viya® platform, the team built decision trees and gradient-boosting models that identified highly engaged customers, prioritizing them for targeted campaigns. This approach transformed their sales structure, enabling them to deliver personalized offers precisely when clients needed them, thereby greatly improving customer satisfaction.

Get’mo: Enabling Informed Consumer Choices

In a rapidly evolving retail landscape, Get’mo emerged as an essential platform that empowers consumers to make smarter shopping decisions. The team employed AI-driven web scraping techniques to analyze product pricing and availability across major retail chains like Walmart and Costco. By using SAS Viya for data standardization and error detection, Get’mo was able to pinpoint price inconsistencies and present users with dynamic recommendations tailored to their shopping patterns. Imagine receiving a personalized shopping guide that directs you to the best deals on products you need while optimizing your shopping route; this is precisely what Get’mo offers, making the shopping process not just easier but also more cost-efficient.

OREA: Data-Driven Engagement Strategies

OREA utilized data analytics to transform how they engage with customers. By analyzing customer interactions, they tailored their platforms to ensure a seamless experience that meets the rising expectations of modern consumers. This focus on data allows OREA to create a feedback loop where customer insights are continuously integrated to enhance service delivery.

The Future of AI in Customer Experience

The advancements showcased by Swedbank Insurance, Get’mo, and OREA suggest that the future of customer experience lies in AI and data analytics. As these technologies evolve, businesses that embrace AI learning paths will likely lead the way, yielding faster, more efficient interactions that resonate with consumers. Engaging customers through personalized experiences will no longer be a luxury but a necessity for competitive advantage.

What This Means for Businesses

For companies looking to improve their customer service, the stories of these three organizations offer actionable insights. Implementing data-driven strategies alongside AI tools can streamline processes and create more meaningful customer interactions. Companies should consider exploring AI technologies as an integral part of their customer engagement strategies, ensuring they remain relevant in a rapidly digitalizing world.

As businesses continue to navigate the competitive landscape, understanding the nuances of AI’s application in enhancing customer experience becomes crucial. It’s not just about adopting technology; it’s about integrating it thoughtfully to foster stronger relationships with customers.

As we stand on the brink of AI’s potential, businesses and customers alike can benefit from these transformation strategies. Seeking to elevate your experience through technology? Start exploring AI learning paths today!

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