Home
Categories
EXPLORE
True Crime
Comedy
Society & Culture
Business
News
Sports
TV & Film
About Us
Contact Us
Copyright
© 2024 PodJoint
00:00 / 00:00
Sign in

or

Don't have an account?
Sign up
Forgot password
https://is1-ssl.mzstatic.com/image/thumb/Podcasts211/v4/f3/0b/9b/f30b9ba7-3875-0b85-8e4e-c600696b0011/mza_10934927248833301382.jpg/600x600bb.jpg
The TAO Pod
James Altucher, Joseph Jacks
11 episodes
1 week ago
Join James Altucher & Joseph Jacks in The TAO Pod, diving into Bittensor (TAO), decentralized AI, crypto, & tech. Explore Bittensor's subnets democratizing AI tools like compute, data, models. Cover features, apps, tokenomics, & vs. xAI/OpenAI. Discuss superintelligence, agents, decentralization benefits, and crypto trends. Insights for AI/crypto fans: transform economy & intelligence. Subscribe for analyses, tips, and predictions!
Show more...
Technology
RSS
All content for The TAO Pod is the property of James Altucher, Joseph Jacks and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
Join James Altucher & Joseph Jacks in The TAO Pod, diving into Bittensor (TAO), decentralized AI, crypto, & tech. Explore Bittensor's subnets democratizing AI tools like compute, data, models. Cover features, apps, tokenomics, & vs. xAI/OpenAI. Discuss superintelligence, agents, decentralization benefits, and crypto trends. Insights for AI/crypto fans: transform economy & intelligence. Subscribe for analyses, tips, and predictions!
Show more...
Technology
https://d3t3ozftmdmh3i.cloudfront.net/staging/podcast_uploaded_nologo/44067024/44067024-1752508154929-fb707789d2088.jpg
EP02: Here’s Why Bittensor’s Incentives Crush Big Tech’s AI Monopolies for Good
The TAO Pod
1 hour 42 minutes 12 seconds
3 months ago
EP02: Here’s Why Bittensor’s Incentives Crush Big Tech’s AI Monopolies for Good

Hosted by James Altucher and Joseph Jacks.

In this episode, James and Joe brainstorm real-world AI use cases on Bittensor, like building an ER diagnostic model. They explore Bittensor as an upgrade to open source through incentives, distributed training (e.g., Templar subnet), off-chain computation parallels to Bitcoin, repricing AI/commodities, and its potential to disrupt centralized tech via "incentivism" and continuous learning.


Key Timestamps & Topics:

  • 00:00:00 - Intro: Bittensor's disruption to AI incentives, governance, and improvement; early internet parallels.
  • 00:01:00 - Real-World Use Case: Brainstorming an ER AI diagnostic model using Bittensor subnets (storage, training, inference).
  • 00:07:00 - Commoditization: Bittensor surpasses open source by aligning intrinsic/extrinsic incentives.
  • 00:17:00 - Search Engine Example: Reimagining Google via Bittensor's competitive subnets for spiders and categorization.
  • 00:22:00 - Off-Chain Computation: Bittensor's Bitcoin-inspired design for infinite scalability.
  • 00:33:00 - Consensus & Corruption: Probabilistic validation, subjective outputs, and real-world parallels.
  • 00:40:00 - Templar Subnet: Distributed training for trillion-parameter models; Jensen Huang's views on decentralization.
  • 00:46:00 - Repricing Assets: Bittensor democratizes AI superpowers, protects against arbitrary valuations.
  • 00:50:00 - Inflation & Productivity: Fiat vs. Bitcoin/Bittensor; human error in monetary policy.
  • 01:02:00 - Bittensor's Future: As "incentivism"—redefining capitalism without regulation.
  • 01:09:00 - User Interfaces & Opportunity: Bittensor's "1991 internet" stage; need for better front ends.
  • 01:15:00 - Open Source Limits: Missing economic models; Bittensor as successor with liquidity.
  • 01:21:00 - Templar Economics: Speculation on scalable training; subnet competition.
  • 01:26:00 - Distributed Challenges: Heterogeneous hardware vs. centralized homogeneity.
  • 01:35:00 - Age of Experience: Continuous learning AI; Bittensor's evolving incentives.
  • 01:36:00 - Jensen's Pushback: Slowing open source/decentralization to protect monopolies.
  • 01:39:00 - Energy Subnets Idea: Incentivizing renewables/SMRs for AI power needs.
  • 01:41:00 - Wrap-Up: Bittensor as carbon credits alternative; teaser for next episode.


Key Takeaways:

  • Bittensor upgrades open source by adding extrinsic economic incentives, enabling commoditization beyond centralized labs.
  • Off-chain computation allows infinite scalability for distributed training, potentially surpassing giants like Google in heterogeneous environments.
  • As "incentivism," Bittensor reprices AI and protects against arbitrary valuations/inflation, democratizing tech participation.
  • Subnets like Templar could achieve trillion-parameter models permissionlessly, addressing energy/compute bottlenecks via incentives.


Resources & Links:

  1. Bittensor Official: bittensor.com
  2. Taostats (Explorer/TAO App): taostats.io
  3. Subnet 56 (Gradients): taostats.io/subnets/56
  4. Subnet 3 (Templar): taostats.io/subnets/3
  5. Subnet 64 (Chutes): taostats.io/subnets/64
  6. Subnet 4 (Targon): taostats.io/subnets/4
  7. Subnet 13 (Dataverse): macrocosmos.ai/sn13
  8. xAI: x.ai
  9. Follow Hosts: @jaltucher & @josephjacks_ on X


Subscribe for more on Bittensor subnets, AI building, and crypto trends! Leave a review and share your thoughts. #TheTaoPod #Bittensor #DecentralizedAI #TAO

The TAO Pod
Join James Altucher & Joseph Jacks in The TAO Pod, diving into Bittensor (TAO), decentralized AI, crypto, & tech. Explore Bittensor's subnets democratizing AI tools like compute, data, models. Cover features, apps, tokenomics, & vs. xAI/OpenAI. Discuss superintelligence, agents, decentralization benefits, and crypto trends. Insights for AI/crypto fans: transform economy & intelligence. Subscribe for analyses, tips, and predictions!