PodcastsRank #3399
Artwork for Unsupervised Learning

Unsupervised Learning

TechnologyPodcastsENunited-states
4.9 / 5
We probe the sharpest minds in AI in search for the truth about what’s real today, what will be real in the future and what it all means for businesses and the world. If you’re a builder, researcher or investor navigating the AI world, this podcast will help you deconstruct and understand the most important breakthroughs and see a clearer picture of reality. Follow this show and consider enabling notifications to stay up to date on our latest episodes. Unsupervised Learning is a podcast by Redpoint Ventures, an early-stage venture capital fund that has invested in companies like Snowflake, Stripe, and Mistral. Hosted by Redpoint investor Jacob Effron alongside Patrick Chase, Jordan Segall and Erica Brescia.
Top 6.8% by pitch volume (Rank #3399 of 50,000)Data updated Feb 10, 2026

Key Facts

Publishes
N/A
Episodes
88
Founded
N/A
Category
Technology
Number of listeners
Private
Hidden on public pages

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Public snapshot
Audience: Under 4K / month
Canonical: https://podpitch.com/podcasts/unsupervised-learning-2
Reply rate: Under 2%

Latest Episodes

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Ep 81: Ex-OpenAI Researcher On Why He Left, His Honest AGI Timeline, & The Limits of Scaling RL

Thu Jan 29 2026

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This episode features Jerry Tworek, a key architect behind OpenAI's breakthrough reasoning models (o1, o3) and Codex, discussing the current state and future of AI. Jerry explores the real limits and promise of scaling pre-training and reinforcement learning, arguing that while these paradigms deliver predictable improvements, they're fundamentally constrained by data availability and struggle with generalization beyond their training objectives. He reveals his updated belief that continual learning—the ability for models to update themselves based on failure and work through problems autonomously—is necessary for AGI, as current models hit walls and become "hopeless" when stuck. Jerry discusses the convergence of major labs toward similar approaches driven by economic forces, the tension between exploration and exploitation in research, and why he left OpenAI to pursue new research directions. He offers candid insights on the competitive dynamics between labs, the focus required to win in specific domains like coding, what makes great AI researchers, and his surprisingly near-term predictions for robotics (2-3 years) while warning about the societal implications of widespread work automation that we're not adequately preparing for.   (0:00) Intro (1:26) Scaling Paradigms in AI (3:36) Challenges in Reinforcement Learning (11:48) AGI Timelines (18:36) Converging Labs (25:05) Jerry’s Departure from OpenAI (31:18) Pivotal Decisions in OpenAI’s Journey (35:06) Balancing Research and Product Development (38:42) The Future of AI Coding (41:33) Specialization vs. Generalization in AI (48:47) Hiring and Building Research Teams (55:21) Quickfire   With your co-hosts:  @jacobeffron  - Partner at Redpoint, Former PM Flatiron Health  @patrickachase  - Partner at Redpoint, Former ML Engineer LinkedIn  @ericabrescia  - Former COO Github, Founder Bitnami (acq’d by VMWare)  @jordan_segall  - Partner at Redpoint

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This episode features Jerry Tworek, a key architect behind OpenAI's breakthrough reasoning models (o1, o3) and Codex, discussing the current state and future of AI. Jerry explores the real limits and promise of scaling pre-training and reinforcement learning, arguing that while these paradigms deliver predictable improvements, they're fundamentally constrained by data availability and struggle with generalization beyond their training objectives. He reveals his updated belief that continual learning—the ability for models to update themselves based on failure and work through problems autonomously—is necessary for AGI, as current models hit walls and become "hopeless" when stuck. Jerry discusses the convergence of major labs toward similar approaches driven by economic forces, the tension between exploration and exploitation in research, and why he left OpenAI to pursue new research directions. He offers candid insights on the competitive dynamics between labs, the focus required to win in specific domains like coding, what makes great AI researchers, and his surprisingly near-term predictions for robotics (2-3 years) while warning about the societal implications of widespread work automation that we're not adequately preparing for.   (0:00) Intro (1:26) Scaling Paradigms in AI (3:36) Challenges in Reinforcement Learning (11:48) AGI Timelines (18:36) Converging Labs (25:05) Jerry’s Departure from OpenAI (31:18) Pivotal Decisions in OpenAI’s Journey (35:06) Balancing Research and Product Development (38:42) The Future of AI Coding (41:33) Specialization vs. Generalization in AI (48:47) Hiring and Building Research Teams (55:21) Quickfire   With your co-hosts:  @jacobeffron  - Partner at Redpoint, Former PM Flatiron Health  @patrickachase  - Partner at Redpoint, Former ML Engineer LinkedIn  @ericabrescia  - Former COO Github, Founder Bitnami (acq’d by VMWare)  @jordan_segall  - Partner at Redpoint

Key Metrics

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Pitches sent
58
From PodPitch users
Rank
#3399
Top 6.8% by pitch volume (Rank #3399 of 50,000)
Average rating
4.9
Ratings count may be unavailable
Reviews
3
Written reviews (when available)
Publish cadence
N/A
Episode count
88
Data updated
Feb 10, 2026
Social followers
141K

Public Snapshot

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Country
United States
Language
English
Language (ISO)
Release cadence
N/A
Latest episode date
Thu Jan 29 2026

Audience & Outreach (Public)

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Audience range
Under 4K / month
Public band
Reply rate band
Under 2%
Public band
Response time band
30+ days
Public band
Replies received
1–5
Public band

Public ranges are rounded for privacy. Unlock the full report for exact values.

Presence & Signals

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Social followers
141K
Contact available
Yes
Masked on public pages
Sponsors detected
Yes
Guest format
Yes

Social links

No public profiles listed.

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Audience & Growth
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Monthly listeners49,360
Reply rate18.2%
Avg response4.1 days
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Sponsor mentionsLikely
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How To Pitch Unsupervised Learning

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4.9 / 5
RatingsN/A
Written reviews3

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Frequently Asked Questions About Unsupervised Learning

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What is Unsupervised Learning about?

We probe the sharpest minds in AI in search for the truth about what’s real today, what will be real in the future and what it all means for businesses and the world. If you’re a builder, researcher or investor navigating the AI world, this podcast will help you deconstruct and understand the most important breakthroughs and see a clearer picture of reality. Follow this show and consider enabling notifications to stay up to date on our latest episodes. Unsupervised Learning is a podcast by Redpoint Ventures, an early-stage venture capital fund that has invested in companies like Snowflake, Stripe, and Mistral. Hosted by Redpoint investor Jacob Effron alongside Patrick Chase, Jordan Segall and Erica Brescia.

How often does Unsupervised Learning publish new episodes?

Unsupervised Learning publishes on a variable schedule.

How many listeners does Unsupervised Learning get?

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