The Kestria Consumer & Retail Practice Group has convened esteemed professionals from various fields to discuss the evolution of AI in e-commerce, ethical considerations and future customer service innovations.
Key takeaways:
Evolution of Personalized Shopping: Personalized shopping has advanced from basic recommendations to real-time, interactive systems using AI, machine learning and deep learning, enhancing customer engagement and satisfaction.
Balancing Personalization and Privacy: Ethical AI use involves data minimization, transparency, robust security and compliance with regulations like GDPR and CCPA to maintain user trust and meet legal requirements.
AI's Role in Customer Service and Marketing: AI is revolutionizing customer service and marketing with large language models, predictive analytics and better integration of online and offline experiences, enhancing customer satisfaction.
The transformation of personalised shopping over the years
For Dr. Elaheh Momeni from Austria, CTO and co-founder at eMentalist.ai, the history of personalised shopping has evolved from basic recommendations to sophisticated, real-time and interactive systems, enhancing customer engagement, satisfaction and loyalty. In the early 2000s, algorithms like market basket analysis and collaborative filtering were used. By the 2010s, machine learning, AI and deep learning allowed for processing more data, including unstructured data like text, images and voice, advancing personalisation. By the late 2010s, retailers tailored entire homepages for each customer, incorporating real-time personalisation and conversational assistants. Recent advancements in virtual assistants, predictive analytics and the integration of augmented and virtual reality have further enhanced the shopping experience.
Bill Tolany is an Executive Advisor at the Business Development Bank of Canada (BDC), with experience in retail and with brands in North America, specifically in the US and Canada. In the past, small merchants knew their customers personally, making real-time recommendations. While much of that has changed, most business is still conducted in person. For instance, China leads in e-commerce at 50% of retail, the UK and South Korea are at 30% and the US is at 15%. Over the last 30 years, there have been three big waves in the digital revolution:
- The widespread availability of the consumer internet.
- Mobile experiences that allowed more customization and targeting.
- The current wave of AI, promises faster more personalized interactions.
AI is set to mimic the one-to-one relationships of traditional retail by integrating digital benefits into the in-person environment. This will revolutionize how retail is conducted, bringing customizations like facial recognition to physical stores. This is the future of retail in the near term.
Per Konstantinos Frantzis from Costa Rica, VP Finance North Zone Latin America at The Coca-Cola Company, AI has recently evolved, impacting all industries and business areas. Companies now use sophisticated algorithms to explore vast data from sources like browsing history and social media, aiming to provide personalized product recommendations and improve customer satisfaction. Today's consumers expect tailored recommendations, such as eco-friendly product buyers receiving Earth Day promotions. This creates a win-win: customers enjoy personalized experiences and companies gain tools for targeted recommendations, brand loyalty and increased sales.
As stated by Emad El Sonbaty from France, Head of Global Rewards, Strategic Workforce and HRIS at Orange, operators and Telco companies monitor the dynamics of data through their networks. Over the past 15 years, the data journey has evolved from data center servers to the cloud and now to big data. With big data, artificial intelligence has become crucial in managing vast amounts of data, leading us toward a world of robotics. AI revolves around three key elements: analytics, interaction and understanding. These elements enable real-time predictions of consumer behavior, pricing dynamics and machine learning models. This leads to faster decision-making to meet customer expectations and product recommendations. Filtering massive data helps design patterns to enable personalized product displays, offers, demand forecasting and future behavior predictions.
Renee Hartmann, an American living in Portugal, founder of CLA, has extensive retail experience across North America, Europe and Asia. She currently consults for retailers, brands and retail technology startups and leads Coresight Research’s AI Council which includes 250 retail leaders who are implementing AI in their organisations. Her work focuses on AI strategy in retail, especially in personalizing consumer and buying experiences. In a recent discussion with VCs and retail executives, the consensus was that traditional search is merging with chat, evolving into conversational commerce. This approach aims to understand consumer needs and inspire discovery, rather than just providing search results. At a recent visit to Criteo in France, their AI lab head mentioned that if someone wants to buy a bicycle helmet online, it's not just about buying the helmet. He explained that understanding a consumer's motivation, like commuting safely, helps recommend related products, enhancing the shopping experience. Another example is an MIT-funded startup that uses e-commerce conversion data to dynamically update product descriptions based on consumer preferences, improving conversion rates by highlighting desired features like sustainability. The goal is to better understand and quickly meet consumer desires.