Skip to content
Lenny's PodcastLenny's Podcast

Reganti & Badam: Why most AI products fail in production

Why treating LLMs as non-deterministic APIs and earning autonomy beats hype; human-in-the-loop calibration prevents the failures that sink AI products.

Lenny RachitskyhostAishwarya Naresh RegantiguestKiriti Badamguest
Jan 11, 20261h 26mWatch on YouTube ↗

Episode Details

EPISODE INFO

Released
January 11, 2026
Duration
1h 26m
Channel
Lenny's Podcast
Watch on YouTube
▶ Open ↗

EPISODE DESCRIPTION

Aishwarya Naresh Reganti and Kiriti Badam have helped build and launch more than 50 enterprise AI products across companies like OpenAI, Google, Amazon, and Databricks. Based on these experiences, they’ve developed a small set of best practices for building and scaling successful AI products. The goal of this conversation is to save you and your team a lot of pain and suffering. *We discuss:*

  1. Two key ways AI products differ from traditional software, and why that fundamentally changes how they should be built
  2. Common patterns and anti-patterns in companies that build strong AI products versus those that struggle
  3. A framework they developed from real-world experience to iteratively build AI products that create a flywheel of improvement
  4. Why obsessing about customer trust and reliability is an underrated driver of successful AI products
  5. Why evals aren’t a cure-all, and the most common misconceptions people have about them
  6. The skills that matter most for builders in the AI era

*Get 15% off Aishwarya and Kiriti’s Maven course, Building Agentic AI Applications with a Problem-First Approach, using this link:* https://bit.ly/3V5XJFp *Brought to you by:* Merge—The fastest way to ship 220+ integrations: https://merge.dev/lenny Strella—The AI-powered customer research platform: https://strella.io/lenny Brex—The banking solution for startups: https://www.brex.com/product/business-account?ref_code=bmk_dp_brand1H25_ln_new_fs *Episode transcript:* https://www.lennysnewsletter.com/p/what-openai-and-google-engineers-learned *Archive of all Lenny's Podcast transcripts:* https://www.dropbox.com/scl/fo/yxi4s2w998p1gvtpu4193/AMdNPR8AOw0lMklwtnC0TrQ?rlkey=j06x0nipoti519e0xgm23zsn9&st=4jmgl11w&dl=0 *My biggest takeaways (for paid newsletter subscribers):* https://www.lennysnewsletter.com/i/183007822/referenced *Where to find Aishwarya Naresh Reganti:*

*Where to find Kiriti Badam:*

*Where to find Lenny:*

*In this episode, we cover:* (00:00) Introduction to Aishwarya and Kiriti (05:03) Challenges in AI product development (07:36) Key differences between AI and traditional software (13:19) Building AI products: start small and scale (15:23) The importance of human control in AI systems (22:38) Avoiding prompt injection and jailbreaking (25:18) Patterns for successful AI product development (33:20) The debate on evals and production monitoring (41:27) Codex team’s approach to evals and customer feedback (45:41) Continuous calibration, continuous development (CC/CD) framework (58:07) Emerging patterns and calibration (01:01:24) Overhyped and under-hyped AI concepts (01:05:17) The future of AI (01:08:41) Skills and best practices for building AI products (01:14:04) Lightning round and final thoughts *Referenced:*

...References continued at: https://www.lennysnewsletter.com/p/what-openai-and-google-engineers-learned _Production and marketing by https://penname.co/._ _For inquiries about sponsoring the podcast, email podcast@lennyrachitsky.com._ Lenny may be an investor in the companies discussed.

SPEAKERS

  • Lenny Rachitsky

    host
  • Aishwarya Naresh Reganti

    guest
  • Kiriti Badam

    guest

EPISODE SUMMARY

In this episode of Lenny's Podcast, featuring Lenny Rachitsky and Aishwarya Naresh Reganti, Reganti & Badam: Why most AI products fail in production explores why AI products fail: managing non-determinism, autonomy, and feedback loops Aishwarya Reganti and Kiriti Badam explain why many AI products fail: teams treat LLMs like deterministic software and rush to fully autonomous agents without earning trust.

RELATED EPISODES

The GitLab way: Kindness, transparency, and short toes | David DeSanto (CPO)

The GitLab way: Kindness, transparency, and short toes | David DeSanto (CPO)

Lessons from a 2-time unicorn builder, 50-time startup advisor and 20-time board member | Uri Levine

Lessons from a 2-time unicorn builder, 50-time startup advisor and 20-time board member | Uri Levine

How to build deeper, more robust relationships | Carole Robin (Stanford professor, “Touchy Feely”)

How to build deeper, more robust relationships | Carole Robin (Stanford professor, “Touchy Feely”)

The ultimate guide to product-led sales | Elena Verna

The ultimate guide to product-led sales | Elena Verna

Why AI evals are the hottest new skill for product builders | Hamel Husain & Shreya Shankar

Why AI evals are the hottest new skill for product builders | Hamel Husain & Shreya Shankar

How to consistently go viral: Nikita Bier’s playbook for winning at consumer apps

How to consistently go viral: Nikita Bier’s playbook for winning at consumer apps

Get more out of YouTube videos.

High quality summaries for YouTube videos. Accurate transcripts to search & find moments. Powered by ChatGPT & Claude AI.