How do you build an AI product that’s powerful, reliable, and grounded in real user needs? In this podcast hosted by Qventus Product Director Mark Bailes, Google Product Lead Alankar Agnihotri discusses building AI products that actually work. He shares the hidden complexities behind model behavior, the shift from deterministic to probabilistic design, and what product managers must do to deliver AI experiences that scale. You’ll hear firsthand insights from someone shaping Gemini in Android Automotive and building the future of in-car intelligence.
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Show Notes
- People often overestimate what AI can do and underestimate what it takes to build robust AI products.
- Large language models aren’t magic; they require data quality, tuning, and real infrastructure to perform well.
- True AI product success still begins with user needs, not with the technology itself.
- Many teams unintentionally start with the model and work backwards—leading to misaligned solutions.
- Industries like autonomous driving and medical diagnosis show how long it can take for AI promises to materialize.
- Building AI responsibly requires early collaboration across UX, engineering, data science, and product.
- AI ecosystems must be evaluated holistically—internal tools, external partners, platform compatibility, and long-term strategy all matter.
- Compute costs for AI can be significant; PMs must understand model expenses and ROI.
- Regulatory, compliance, latency, and accuracy requirements differ widely across industries.
- Data pipelines, data health, and ongoing evaluation (evals) now sit at the core of modern product management.
- AI outputs feed back into the product, creating continuous cycles of model improvement.
- Collaboration changes because LLM responses are probabilistic, not deterministic—teams can’t predict exact outputs.
- Designers, PMs, and engineers must align expectations, since a “valid” LLM response may still differ from the designed behavior.
- UX flows can no longer be planned as rigid, linear steps; conversation-based outputs branch dramatically.
- PMs developing AI skills should learn how models work, strengthen data literacy, and experiment directly with AI tools.
- Using multiple chatbots side by side reveals how differently models behave—and why this matters for product choices.
- B2B AI products prioritize reliability and deep integration into an organization’s workflow.
- B2C AI products require speed, experimentation, and a high tolerance for failure.
- B2B2C blends both worlds—demanding stability for the business and delight for the end user.
- AI is a once-in-a-generation technological shift, and today’s PMs have the rare opportunity to shape how it transforms the world.
About the speaker
Alankar Agnihotri is a product leader with over two decades of experience driving innovation. At Google, he is leading Gemini in Android Automotive, shaping the future of in-car voice experiences and bringing AI driven intelligent features to millions of vehicles worldwide. Throughout his career, Alankar has consistently delivered transformative products with significant business impact. At Google AdMob, he led the industry's shift to real-time-bidding through a unified auction platform, dramatically improving publisher monetization and efficiency. He also launched several products for small businesses, helping them earn hundreds of millions of dollars in revenue. Before Google, Alankar worked with Tata Consultancy Services, leading IT innovation for Fortune 20 clients across healthcare, and manufacturing. Alankar earned his MBA from Carnegie Mellon University, and Bachelor of Engineering in Computer Science from RGTU, India. He is passionate about building products that solve complex, real-world problems on a global scale through cutting-edge technology.
About the host
I am passionate about using technology to solve problems and I take great pleasure in helping others to achieve their goals. I live these values every day working in Product.