What does it take to build AI for customer service that improves real customer outcomes instead of just sounding intelligent? In this podcast hosted by Boston New Technology CPO Shweta Agrawal, Microsoft Product Lead Madhuri Somara shares how her team is building AI-powered case management solutions that automate routine work while keeping humans in the loop for judgment and empathy. She discusses designing AI systems that increase resolution speed, surface transparency in decision-making, and elevate the overall customer experience in complex service environments.
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Show Notes
- AI works best in customer service when it handles repetitive and predictable tasks, freeing humans to focus on situations that require judgment, empathy, and complex decision-making.
- Effective AI products are not designed to replace people but to amplify human capabilities and improve how teams serve customers.
- Customer service is one of the most challenging environments for AI because every interaction is unpredictable and often emotionally charged.
- A successful AI system must know when to involve a human rather than attempting to resolve every issue independently.
- Case management agents can automatically convert incoming customer messages into structured tickets and begin investigating issues immediately.
- AI-powered systems can connect with multiple tools, APIs, and third-party platforms to gather the context required to resolve customer issues.
- One of the biggest inefficiencies in customer support comes from manual follow-ups, handoffs between teams, and missing context.
- Automating repetitive operational tasks significantly reduces the time required to resolve customer issues.
- In real-world deployments, AI-assisted case management can reduce resolution time from several days to one or two days.
- Improvements in response speed often lead directly to higher customer satisfaction scores.
- AI should focus on operational efficiency while humans focus on building trust and handling emotionally sensitive interactions.
- Transparency in AI systems is critical—users need visibility into how decisions are made and how confident the system is.
- Showing reasoning, confidence levels, and trade-offs helps build trust in AI-driven recommendations.
- Great AI products do not hide complexity; they help users understand what the system is doing and why.
- Evaluating AI decisions on real cases is essential for identifying friction points and improving product design.
- AI systems often reveal unexpected capabilities during testing, sometimes identifying next-best actions in complex situations with incomplete data.
- Customer experience improves when AI handles operational tasks behind the scenes while humans stay focused on meaningful customer interactions.
- One of the biggest myths about AI in customer service is that it will replace support teams; in practice, it acts as a productivity partner.
- Successful AI products are built around solving real operational problems rather than simply adding advanced technology.
- The best product leaders focus on solving genuine customer problems, asking questions, learning continuously, and iterating on solutions rather than chasing flashy features.
About the speaker
About the host
Shweta Agrawal, is one of the Top 40 Under 40. Shweta is the Chief Product Officer (CPO) at Boston New Technology (BNT), where she has helped shape one of Boston’s most vibrant platforms for founders, technologists, and investors. Shweta has worked at Fortune 500 companies where she launched multi-million-dollar products and she has also defined and scaled product strategies in small to mid startup companies. She serves as a Product Expert, Startup Advisor, and Ecosystem Builder. She is dedicated to empowering underrepresented founders, women in STEM, and the next generation of innovators