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AI Podcasts

July 31, 2025

How Distributed Compute Could Solve AI's Energy Crisis, w/ the CEO of Akash

The People's AI

AI
Key Takeaways:
  1. Energy is the New Scarcity. The race for AI supremacy is a race for power. Platforms like Akash that efficiently harness distributed, underutilized energy offer the only scalable alternative to the centralized model's impending energy crisis.
  2. The Tech is Maturing Rapidly. Asynchronous training and ZK-proofs (championed by projects like Jensen) are making permissionless global compute networks a reality. The performance gap with centralized systems is closing fast.
  3. The Mainstream is Buying In. A confluence of academic acceptance (at conferences like ICML) and favorable government policy (the White House's pro-open-source stance) is creating powerful tailwinds. The narrative has shifted from if decentralized AI is possible to how it will be implemented.
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July 31, 2025

The RLVR Revolution — with Nathan Lambert (AI2, Interconnects.ai)

Latent Space

AI
Key Takeaways:
  1. RLVR is the New SOTA for Solvable Problems: For tasks with clear right answers (code, math), RLVR is the state-of-the-art training method. The community is focused on scaling it, while RLHF remains the domain of fuzzy, human-preference problems.
  2. The Future is Search-Driven: GPT-4o’s heavy reliance on search is not a bug; it’s a feature. The hardest problem is no longer giving models tools, but training them to learn when to use them.
  3. Agents Need More Than Skills: The next leap in AI requires training for strategy, abstraction, and calibration. The goal is an AI that doesn’t just answer questions but efficiently plans its own work without wasting compute.
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July 31, 2025

China Open-Source, Compute Arms Race, Reordering Global Trade | BG2 w/ Bill Gurley and Brad Gerstner

Bg2 Pod

AI
Key Takeaways:
  1. China's Open-Source Models are Winning on Price & Performance. Chinese models offer ~90% of the intelligence of top US proprietary models for a fraction of the cost, driving massive global adoption and threatening to commoditize the model layer. An American open-source champion is desperately needed to compete.
  2. The "Cost is No Object" Compute Buildout is Reshaping the Market. A handful of private companies are spending at a loss to capture market share, fueled by VC. This creates a "sport of kings" dynamic that public companies can't match and makes pick-and-shovel players like Nvidia the biggest winners.
  3. The US Tariff Strategy is Working. Contrary to consensus, the administration's tariff gambit has secured favorable trade deals with the EU and Japan, generating hundreds of billions in revenue without causing significant consumer inflation, and setting the stage for a major renegotiation with China.
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July 31, 2025

Health Tech Founders: The Future of Care Is Personalized, Proactive—and AI-Powered

a16z

AI
Key Takeaways:
  1. Biology is the ultimate API for AI. The most impactful AI will be fed not just digital data but real-world biological signals. Companies are building the infrastructure to bring a user's biology online, turning abstract health data into a constant, actionable feed.
  2. Engagement metrics are being rewritten. Forget Daily Active Users. The new model is "intense, intentional engagement" during periods of need. Growth is a function of trust and real-world impact, where the best champions are users who have been genuinely helped.
  3. AI's role is augmentation, not automation. The goal isn't to replace doctors or therapists but to empower them. By translating noise into signal, AI lets human experts skip the data-sifting and focus on what they do best: solving problems.
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July 30, 2025

AI Content and the War for Your Attention

a16z

AI
Key Takeaways:
  1. AI is an attention-polluting machine. The primary challenge for social platforms will soon be managing the tidal wave of AI-generated "slop" designed to hijack algorithms, which risks alienating users entirely.
  2. The future of social is private. The psychological burden of being a micro-celebrity in a digital panopticon is pushing users away from public feeds and into smaller, trusted, and often monetized group chats.
  3. Attention mining’s endgame is total immersion. With phones saturated, the commercial logic of adtech demands new frontiers. VR is the path to monetizing waking hours, and Neuralink is the one to monetize dreams.
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July 30, 2025

Hash Rate - Ep 124 - Backprop / Tensorplex / Dojo (sn52) $TAO

Hash Rate pod - Bitcoin, AI, DePIN, DeFi

AI
Key Takeaways:
  1. Trading is Training. Every dTAO trade is a direct vote on the value of an AI service, making traders active participants in steering the Bittensor network's intelligence and resource allocation.
  2. Human Feedback is the Moat. To advance, frontier AI needs subjective human preference data. Decentralized systems like Dojo (SN52) can provide this at scale, creating a crucial data pipeline that can’t be easily replicated.
  3. Predictability Breeds Value. The most successful decentralized networks (like Bitcoin) thrive on trust and predictability. Subnets that arbitrarily change rules risk alienating their miners and undermining the long-term health of the entire ecosystem.
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July 29, 2025

Will Squires & Chris Zacharia: Macrocosmos Bittensor Subnet 13, Data Scraping, AI Training | Ep. 54

Ventura Labs

AI
Key Takeaways:
  1. Macrocosmos is transforming Subnet 13 from a brute-force data scraper into a sophisticated, revenue-generating marketplace that serves as a foundational utility for the entire Bittensor ecosystem. Their core advice to the ecosystem is to relentlessly pursue real-world market validation over passively collecting protocol emissions.
  2. Data is the New Oil, Subnet 13 is the Rig: With 55 billion rows scraped, Subnet 13 is the de facto data layer for Bittensor, providing the essential fuel for everything from AI model training to real-time sentiment analysis for other subnets.
  3. From Raw Scale to Refined Value: The focus is shifting from merely scraping data to making it accessible. The upcoming "Data Universe" marketplace aims to be a "Bittensor Hugging Face," turning a chaotic data ocean into a library of actionable insights.
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July 28, 2025

Balaji Srinivasan: How AI Will Change Politics, War, and Money

a16z

AI
Key Takeaways:
  1. **Embrace Polytheism, Not Monotheism.** The future contains many culturally-specific, specialized AIs, not one superintelligence. The "war of the gods" is a more apt metaphor than a single, all-powerful deity.
  2. **Crypto is AI's Anchor to Reality.** As AI generates infinite probabilistic fakes, crypto's deterministic, on-chain data becomes the gold standard for verifiable truth in finance, media, and beyond.
  3. **The Real AI Threat is Physical, Not Persuasive.** Forget rogue chatbots. The immediate danger is autonomous drones, which are already transforming warfare and turning digital firewalls into hard, physical borders.
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July 28, 2025

James Woodman & Joshua Brown: Targon, Manifold Labs, Bittensor Subnet 4, Compute Markets | Ep. 53

Ventura Labs

AI
Key Takeaways:
  1. Price Discovery is the Product: Targon's auction mechanism isn't just a feature; it's the core product. By forcing compute providers to bid for their payout, the system creates a hyper-competitive environment that reveals the true, market-driven price of compute, incentivizing efficiency and driving costs down.
  2. The Race for Organic Revenue: The entire model hinges on achieving "escape velocity" where organic revenue from inference clients outpaces the reliance on network emissions. With $52,000 returned to the subnet in just eight days, they are proving the model works, but scaling this revenue is the central challenge.
  3. The Future is Financialized Compute: The end goal extends far beyond simply renting out GPUs. By establishing a liquid spot market, Targon is laying the groundwork to introduce financial derivatives like forward contracts and options, allowing enterprises to hedge against compute price volatility just as they do with other commodities.
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Crypto Podcasts

February 25, 2025

The State Of Crypto & AI | Illia Polosukhin & Bowen Wang

Lightspeed

Crypto
AI
Infrastructure

Key Takeaways:

  • :
  • 1. NEAR is pioneering a unified blockchain infrastructure integrating AI, eliminating the need for multiple chains and enhancing user experience.
  • 2. The launch of NEAR 2.0 with fully sharded architecture and reduced block times positions NEAR as a scalable and high-performance blockchain platform.
  • 3. NEAR’s focus on chain abstraction and Trusted Execution Environments sets it apart from other blockchain and Layer 2 solutions, offering a more seamless and secure user experience.
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February 25, 2025

Futarchy Deep Dive: Can Markets Make Better Decisions? | Proph3t

Bell Curve

Crypto
AI
Others

Key Takeaways:

  • :
  • 1. Futarchy harnesses market efficiency to potentially outperform traditional governance in decision-making.
  • 2. Crypto’s regulatory resistance is essential for implementing innovative governance models like futarchy.
  • 3. Enhanced liquidity and decentralized capital formation are critical for the scalability and success of futarchy-based organizations.
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February 24, 2025

Where Does Crypto Go From Here? | EP 71

Good Game Podcast

Crypto
AI
Infrastructure

Key Takeaways:

  • 1. Focus on Financial Utility: Crypto's strongest and most sustainable applications remain within the financial sector, emphasizing the need for robust, revenue-generating projects over speculative tokens.
  • 2. Leverage AI for Innovation: Startups that effectively integrate AI to solve real-world problems, particularly in personalized applications, are poised for significant growth and competitive advantage.
  • 3. Embrace Tokenization: The future of equity and capital formation lies in tokenizing shares and streamlining IPO processes on-chain, presenting a transformative opportunity for startups and investors alike.
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February 24, 2025

Solana’s Vibe Shift, Restaking, and Yapping About Kaito | Ian Unsworth

0xResearch

Crypto
DeFi
AI

Key Takeaways:

  • :
  • 1. Solana’s Dependence on Meme Coins: While meme coins drive substantial revenue for Solana, they also introduce significant vulnerabilities amid changing market sentiments and regulatory pressures.
  • 2. Staking Yield Dynamics: Proposed reductions in staking yields are unlikely to trigger mass unstaking but will push the ecosystem towards more liquid and innovative staking solutions.
  • 3. Kaido’s Tokenomics Potential: Emerging platforms like Kaido offer novel tokenomics and AI integration, presenting new opportunities and challenges in monetizing user engagement and attention.
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February 24, 2025

Memes are Dead, Long Live the Memes | Nick Tomaino

Empire

Crypto
DeFi

Key Takeaways:

  • :
  • 1. Meme coins, while initially promising, often exploit retail investors through pump and dump schemes, necessitating a wary approach.
  • 2. Investing in crypto requires a long-term vision, focusing on meaningful projects and founders committed to sustained growth over fleeting gains.
  • 3. Stablecoins are pivotal in maintaining the US dollar's global influence and are set to grow with increasing adoption and regulatory support.
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February 24, 2025

How Sapien Lets Anyone Earn by Creating Datasets

Outpost | Crypto AI

AI
Crypto
Infrastructure

Key Takeaways:

  • 1. Decentralized data labeling can significantly reduce costs while enhancing data quality through global expert networks.
  • 2. The synergy between crypto and AI unlocks new possibilities for scalable and efficient AI model training.
  • 3. Proprietary, purpose-built datasets are becoming essential for enterprises to maintain a competitive edge in AI development.
See full notes