Case Studies
AI-Enhanced Customer Support: A Retail Industry

Problem Statement:
The prominent software product company in the retail sector faces challenges with escalating support costs and dissatisfied customers due to repetitive issues. This has resulted in burnout among support staff, impacting overall service quality and customer satisfaction.
Challenges:
Repetitive Issues: The company grapples with addressing repetitive customer issues, leading to increased support costs and customer dissatisfaction.
Burnout Among Support Staff: The burden of dealing with repetitive issues takes a toll on the support staff, leading to burnout and potentially impacting their productivity and morale.
Manual Handling of Support Tickets: Without an intelligent solution in place, the company relies heavily on manual processes to handle support tickets, resulting in inefficiencies and slower response times.
Benefits:
AI Support Bot Implementation:
By implementing a web popup-based AI support bot, the company can automate responses to common queries, reducing the workload on human support agents and improving response times.
Knowledge Base Integration:
Leveraging local knowledge bases from Zoho Desk, JIRA, and User Manuals using APIs allows the company to access a wealth of information to resolve customer issues efficiently.
Conversational Engine:
The use of an LLM-based conversational engine with Buffered Chains enables the AI support bot to engage in natural, human-like conversations with customers, enhancing the overall support experience.
Knowledge Encoding:
Utilizing Transformers, PyTorch, and VectorDB for encoding and indexing the knowledge base ensures that information is readily accessible and retrievable, facilitating faster issue resolution.
Pretrained Model Integration:
Integrating a pre-trained open-source model for conversations enhances the AI support bot’s ability to understand and respond to customer queries accurately.
POC Evaluation:
Currently undergoing POC examination by customers to assess accuracy and productivity gains, indicating a proactive approach to ensuring the effectiveness of the AI-enhanced customer support solution.
Status Integration:
Linking Zoho tickets for closed status, JIRA for in-progress status, and User Manuals APIs for write-ups/features streamlines first-level issue handling, improving overall efficiency and coordination.
Technical Issue Resolution:
Deployment of a TBD (To Be Determined) agent to address Windows technical issues effectively signifies a targeted approach to resolving specific technical challenges faced by customers.
By addressing the challenges of escalating support costs, repetitive issues, and burnout among support staff, the implementation of AI-enhanced customer support in the retail industry promises significant benefits in terms of improved efficiency, enhanced customer satisfaction, and reduced operational costs.
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