Command Palette

Search for a command to run...

PodMine
"The Cognitive Revolution" | AI Builders, Researchers, and Live Player Analysis
"The Cognitive Revolution" | AI Builders, Researchers, and Live Player Analysis•September 13, 2025

User-Owned AI: On-Chain Training, Inference, and Agents, with NEAR's Illia Polosukhin

A deep dive into building user-owned, privacy-preserving AI infrastructure using blockchain, confidential computing, and decentralized economic models to enable community-driven model training, inference, and governance.
AI & Machine Learning
Indie Hackers & SaaS Builders
Tech Policy & Ethics
Developer Culture
Cryptocurrency
Ilya Polozukhn
Vitalik Buterin
Dario

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

This episode features Ilya Polozukhn, founder of Near Protocol and co-author of the seminal "Attention Is All You Need" transformer paper. The conversation explores Near's evolution from an AI company to a blockchain protocol and now back to the intersection of crypto and AI. Ilya discusses Near's ambitious vision for user-owned, privacy-preserving AI that operates at global scale through decentralized infrastructure. (00:30)

  • The core discussion centers on building decentralized AI infrastructure that combines blockchain technology with NVIDIA's confidential computing capabilities to enable private, verifiable AI computing while maintaining user ownership and control over their data and models.

Speakers

Ilya Polozukhn

Ilya Polozukhn is the founder of Near Protocol and was one of eight co-authors of the groundbreaking 2017 paper "Attention Is All You Need," which introduced the transformer architecture that launched the current AI revolution. (00:24) Before founding Near, he worked at Google on natural language processing and question-answering systems, specifically focusing on making AI models faster and more efficient for practical applications. He co-founded Near AI in 2017 with the goal of teaching machines to code, but pivoted to blockchain when faced with global payment challenges for data workers.

Key Takeaways

Privacy-First AI Infrastructure

Near leverages NVIDIA's confidential computing capabilities to create a permissionless network where anyone can provide GPU compute while keeping both model weights and user data private from hardware operators. (01:49) This system operates with only 1-5% overhead compared to normal computing, making privacy-preserving AI economically viable. The confidential computing environment ensures that even the hardware owner cannot access what's happening inside the secure enclave, providing both confidentiality and verifiability of AI workloads.

Decentralized Model Training Economics

Near has designed an innovative economic model for training frontier AI models through community contribution. (02:33) Contributors can provide compute, data, or expertise in exchange for cryptographically guaranteed shares of the model's future revenue. This approach could potentially mobilize the estimated $100 million in resources needed to train competitive trillion-parameter models without requiring massive upfront investment from a single entity.

Permissionless Validator Network Security

Near's proof-of-stake consensus creates security through economic incentives rather than energy consumption like Bitcoin. (01:21) Anyone can become a validator by staking Near tokens, putting their capital at risk to validate transactions. The network only slashes validators proportionally to their stake and the severity of their actions, encouraging participation while deterring malicious behavior. This creates a trustless system where security comes from collective economic interest rather than trust in individuals.

User-Owned AI Models

The platform enables true user ownership of AI models through transparent development processes where contributors can verify exactly what goes into model training. (15:01) Unlike traditional AI companies where the training process is opaque, Near's approach provides full traceability of data sources, training procedures, and model components. This transparency allows users to make informed decisions about which models to trust and use based on their specific requirements and values.

AI-Powered Smart Contracts and Governance

Near is developing autonomous agents that combine AI brains with smart contract execution capabilities, creating truly intelligent decentralized applications. (54:42) These agents can operate independently with their own capital, execute complex intents, and participate in governance decisions. The system also includes AI-powered dispute resolution that can analyze situations cheaply and efficiently before escalating to traditional courts, dramatically reducing the cost of commercial disagreements.

Statistics & Facts

  1. Near Protocol has 15 million monthly active users, making it one of the most used blockchains currently in operation. (11:11)
  2. NVIDIA's confidential computing adds only 1-5% overhead to normal GPU computing while providing complete privacy and verifiability. (55:32)
  3. The estimated cost to train a competitive trillion-parameter AI model is approximately $100 million, though Ilya notes this cost has been dropping recently. (57:58)

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

Young and Profiting with Hala Taha (Entrepreneurship, Sales, Marketing)
January 14, 2026

The Productivity Framework That Eliminates Burnout and Maximizes Output | Productivity | Presented by Working Genius

Young and Profiting with Hala Taha (Entrepreneurship, Sales, Marketing)
On Purpose with Jay Shetty
January 14, 2026

MEL ROBBINS: How to Stop People-Pleasing Without Feeling Guilty (Follow THIS Simple Rule to Set Boundaries and Stop Putting Yourself Last!)

On Purpose with Jay Shetty
The School of Greatness
January 14, 2026

Stop Waiting to Be Ready: The Truth About Fear, Ego, and Personal Power

The School of Greatness
The James Altucher Show
January 14, 2026

From the Archive: Sara Blakely on Fear, Failure, and the First Big Win

The James Altucher Show
Swipe to navigate