Client
The client is a global leader in the foodservice industry, operating in over 70 countries with a diverse portfolio of well-known culinary brands. By providing chefs and food operators with professional-grade products and tailored solutions, the company enables the delivery of exceptional dining experiences to customers worldwide.
Market Trends in the Foodservice Industry
The foodservice industry is rapidly evolving as digital engagement and automation reshape how brands connect with customers. Modern B2B buyers expect personalized, seamless, and human-like interactions that go beyond the limitations of traditional, rule-based chatbots.
As customer expectations rise, brands face growing pressure to deliver context-aware conversations that not only resolve queries but also drive product discovery and sales conversions. Without this, businesses risk poor user experiences, low satisfaction, and missed revenue opportunities.
For the client, this meant overcoming the shortcomings of their legacy chatbot, which lacked personalization, conversational depth, and integration with commerce systems, ultimately falling short of supporting growth and customer retention at scale.
Business Challenges
The client’s legacy chatbot system faced multiple limitations which included:
- Rigid, Robotic Interactions: Responses were strictly intent based, creating unnatural conversations that failed to engage users.
- Limited Personalization: The system lacked contextual understanding, making it unable to adapt to diverse customer queries or needs.
- Weak Commerce Integration: The bot could not effectively drive product discovery or improve webshop conversions.
- Low User Satisfaction: Poor experiences led to short chat sessions and frequent escalations to live agents, increasing operational costs.
Key objectives
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Deliver natural, human-like conversations at scale
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Provide real-time, personalized responses based on customer context and behavior
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Enable the bot to manage complex queries around recipes, product details, and selling stories
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Improve engagement while reducing dependency on human agents for routine interactions
LTIMindtree Solution
To address the client’s legacy chatbot limitations and meet rising customer expectations, LTIMindtree implemented a Next-Gen AI chatbot powered by OpenAI’s GPT-4.0. Designed to deliver natural, personalized, and context-aware conversations, the solution helped the client reimagine digital engagement while boosting conversions across their webshop and foodservice platforms in more than 70 countries.
Key Solution Elements
Business Benefits
The Next-Gen AI chatbot delivered measurable improvements across engagement, conversions, and customer satisfaction, directly addressing the limitations of the legacy system.
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Achieved a increase in chatbot-driven sales, demonstrating tangible business impact
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Chat sessions grew by 525%, reflecting users’ preference for the more natural, personalized interactions
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Session durations increased by 46%, indicating richer, context-aware conversations
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Achieved a 75% user satisfaction rate, surpassing typical B2B chatbot benchmarks
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28% of chats came from repeat users, highlighting strong retention and trust
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Agent transfer rate dropped to 5.9%, showcasing the bot’s self-sufficiency and effectiveness
Conclusion
Through generative AI, the client successfully evolved its chatbot from a rigid, transactional tool into an intelligent conversational partner. This transformation directly addressed key challenges, driving higher engagement, seamless product discovery, and significant conversion growth.
With measurable success in the initial phase, the client now plans to scale the solution across more markets. The next step is to integrate it with CRM and voice platforms, deepening customer connections, and building a strong foundation for sustained digital growth.
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