

ELGO AI engaged shoppers via chat to understand preferences and context. This improved personalization.

The system suggested products based on purchase history, browsing, and real-time inputs. This made recommendations more relevant.

Recommendations linked directly to product pages and checkout. This reduced friction in completing purchases.
ELGO AI engaged shoppers via chat to understand preferences and context. This improved personalization.

The system suggested products based on purchase history, browsing, and real-time inputs. This made recommendations more relevant.

Recommendations linked directly to product pages and checkout. This reduced friction in completing purchases.





ELGO combined customer data, browsing behavior, contextual memory and product catalog inputs. This ensured recommendations were accurate and timely.

The system scaled to thousands of users simultaneously. This made it suitable for large e-commerce platforms.

Merchandisers could adjust recommendation rules and override AI suggestions. This balanced automation with merchandising strategies.
ELGO combined customer data, browsing behavior, contextual memory and product catalog inputs. This ensured recommendations were accurate and timely.

The system scaled to thousands of users simultaneously. This made it suitable for large e-commerce platforms.

Merchandisers could adjust recommendation rules and override AI suggestions. This balanced automation with merchandising strategies.

Customer support agents can step in or return conversations to AI seamlessly, ensuring customer interactions are never disrupted. AI also intelligently pass the conversation to customer support agents.