Command Palette

Search for a command to run...

PodMine
Lenny's Podcast: Product | Career | Growth
Lenny's Podcast: Product | Career | Growth•December 14, 2025

Why humans are AI’s biggest bottleneck (and what’s coming in 2026) | Alexander Embiricos (OpenAI Codex Product Lead)

Alexander Embiricos discusses Codex, OpenAI's coding agent that has grown 20x since launch, serving trillions of tokens weekly, with the vision of creating an AI software engineering teammate that can proactively help engineers and potentially expand to become a super assistant across different domains.
AI & Machine Learning
Indie Hackers & SaaS Builders
Developer Culture
Andrej Karpathy
Nick Turley
Alexander Embiricos
OpenAI
GitHub

Summary Sections

  • Podcast Summary
  • Speakers
  • Key Takeaways
  • Statistics & Facts
  • Compelling StoriesPremium
  • Thought-Provoking QuotesPremium
  • Strategies & FrameworksPremium
  • Similar StrategiesPlus
  • Additional ContextPremium
  • Key Takeaways TablePlus
  • Critical AnalysisPlus
  • Books & Articles MentionedPlus
  • Products, Tools & Software MentionedPlus
0:00/0:00

Timestamps are as accurate as they can be but may be slightly off. We encourage you to listen to the full context.

0:00/0:00

Podcast Summary

In this episode, Alexander Embiricos, Product Lead for Codex at OpenAI, shares insights into building one of the most successful AI coding agents. (15:00) He reveals how Codex has grown 20x since August and discusses OpenAI's unique product development philosophy of shipping quickly and iterating based on user feedback. The conversation covers the explosive growth of Codex from serving millions to trillions of tokens weekly, the remarkable 18-day development timeline for the Sora Android app that became the #1 app in the App Store, and the vision of AI agents as proactive teammates rather than reactive tools.

  • Main Theme: The evolution of AI from simple tools to intelligent teammates, demonstrated through Codex's journey from basic code completion to a sophisticated software engineering partner that participates across the entire development lifecycle.

Speakers

Alexander Embiricos

Alexander leads product on Codex, OpenAI's powerful coding agent, which has grown 20x since August and now serves trillions of tokens weekly. Before joining OpenAI, he spent five years building a pair programming product for engineers and previously worked as a product manager at Dropbox. He now works at the frontier of AI-led software development, building what he describes as a software engineering teammate—an AI agent designed to participate across the entire development lifecycle.

Lenny Rachitsky

Lenny is the host of Lenny's Podcast and author of Lenny's Newsletter, one of the most popular product management newsletters in the industry. He previously worked as a product manager at Airbnb and has become a leading voice in product management and startup growth strategies.

Key Takeaways

Start with Real Problems, Not Toy Examples

Unlike other coding tools where you might start with simple tasks, Codex is designed for professional use on complex problems. (64:17) Alexander recommends giving Codex your hardest coding challenges—debugging gnarly bugs or implementing complex features in large codebases. This approach helps users quickly understand Codex's true capabilities and builds trust through solving meaningful problems. The tool excels when treating it like a smart intern who needs context but can handle sophisticated tasks once properly guided.

Build Trust Through Incremental Collaboration

The most effective way to work with Codex mirrors how you'd onboard a new teammate. (67:55) Start by having it understand your codebase, then collaborate on formulating plans, and gradually build up to more complex tasks. This trust-building process helps users learn effective prompting techniques while establishing boundaries for what the AI can and cannot do reliably. The key is treating it as a collaborative partner rather than a magic solution.

Focus on Productivity Loops, Not Just Individual Tasks

The biggest bottleneck to AGI-level productivity isn't model capability—it's human typing speed and review processes. (71:19) Alexander identifies that while AI can generate code quickly, humans become the constraint in validating and reviewing that work. The most impactful improvements come from optimizing these human-AI feedback loops, making code review more efficient, and enabling AI to validate its own work before human review.

Embrace the Shift from Writing to Reviewing Code

As coding agents become more capable, the role of engineers is evolving from code writers to code reviewers and system architects. (34:22) While writing code is often the fun part of engineering, reviewing AI-generated code can be less engaging. Smart teams are building systems where AI can validate its own work and provide confidence indicators to humans, making the review process more efficient and enjoyable.

Prepare for Ubiquitous Coding Across All Roles

Coding is becoming a core competency for any AI agent, as writing code is the most effective way for models to use computers. (29:07) This means coding skills will be valuable across many non-engineering roles. PMs, designers, and other functions are already using Codex for prototyping, data analysis, and building tools. The future workplace will likely require basic coding literacy as AI makes programming more accessible to everyone.

Statistics & Facts

  1. Codex has grown 20x since its launch in August, now serving trillions of tokens per week and has become OpenAI's most served coding model both internally and through their API. (16:02)
  2. The Sora Android app was built in just 18 days using Codex, then launched to the public 10 days later (28 days total), and became the number one app in the App Store with only 2-3 engineers. (47:08)
  3. Atlas browser development tasks that previously took 2-3 weeks for 2-3 engineers now take 1 engineer 1 week, representing a 6x productivity improvement. (49:47)

Compelling Stories

Available with a Premium subscription

Thought-Provoking Quotes

Available with a Premium subscription

Strategies & Frameworks

Available with a Premium subscription

Similar Strategies

Available with a Plus subscription

Additional Context

Available with a Premium subscription

Key Takeaways Table

Available with a Plus subscription

Critical Analysis

Available with a Plus subscription

Books & Articles Mentioned

Available with a Plus subscription

Products, Tools & Software Mentioned

Available with a Plus subscription

More episodes like this

In Good Company with Nicolai Tangen
January 14, 2026

Figma CEO: From Idea to IPO, Design at Scale and AI’s Impact on Creativity

In Good Company with Nicolai Tangen
Uncensored CMO
January 14, 2026

Rory Sutherland on why luck beats logic in marketing

Uncensored CMO
We Study Billionaires - The Investor’s Podcast Network
January 14, 2026

BTC257: Bitcoin Mastermind Q1 2026 w/ Jeff Ross, Joe Carlasare, and American HODL (Bitcoin Podcast)

We Study Billionaires - The Investor’s Podcast Network
This Week in Startups
January 13, 2026

How to Make Billions from Exposing Fraud | E2234

This Week in Startups
Swipe to navigate