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AI Podcasts

March 28, 2025

Hash Rate - Ep 103: 'It's AI' $TAO Subnet 32

Hash Rate pod - Bitcoin, AI, DePIN, DeFi

AI

Key Takeaways:


1. Niche Focus Wins: Its AI demonstrates the power of specializing in one thing (AI text detection) within the BitTensor ecosystem, achieving leading accuracy and carving out a clear market position.


2. Ecosystem Arbitrage: There's a significant valuation gap between BitTensor AI projects (like Its AI or ReadyAI) and comparable VC-funded companies (GPTZero, Scale AI), suggesting potential upside once accessibility improves.


3. The Bridge is Coming: Easier access via wrapped tokens or user-friendly platforms bridging BitTensor to chains like Solana/Ethereum is the critical next step for unlocking subnet value and attracting mainstream capital.

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March 28, 2025

Subnet 3 Templar –World’s First Distributed, Permissionless, Incentivized Open Source AI Training

Opentensor Foundation

AI

Key Takeaways:


1.  Permissionless Works: Templar validates that truly open, decentralized AI training with economic incentives is not just theory—it's running, learning, and stabilizing *now*.
2.  Incentives Align: Token ownership fundamentally shifts dynamics, turning potential adversaries into collaborative builders invested in the network's success.
3.  The Future is Co-Owned: Templar paves the way for globally co-owned, state-of-the-art AI models, potentially outcompeting even the most well-funded centralized labs and offering a more equitable model for AI development.

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March 28, 2025

Novelty Search March 27, 2025

taostats

AI

Key Takeaways:


1.  Incentivized Decentralized Training Works: Templar demonstrates that coordinating anonymous miners globally via crypto-economic incentives to train a single AI model is feasible, moving beyond permissioned compute pools.
2.  Production is the Only True Test: Real-world deployment with adversarial miners is non-negotiable for building robust decentralized systems, revealing exploits impossible to find otherwise. Templar's rapid iteration (>200 runs) provides a significant edge.
3.  Community & Ownership are Superpowers: Openly sharing struggles and leveraging tokenomics to give miners ownership transformed Templar's development, aligning incentives and fostering collective problem-solving far exceeding a centralized team's capacity.

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March 24, 2025

Steffen Cruz and Will Squires: Macrocosmos, AI, APEX, Data, Bittensor Subnets 1 9 13 25 37 | Ep. 32

Ventura Labs

AI

Key Takeaways:

  1. The open-source AI landscape has rapidly evolved, with models like Deepseek and R1 significantly impacting the decentralized AI space.
  2. Macrocosmos focuses on building high-quality, feature-rich products that leverage the power of Bittensor's network and incentivize miner innovation.
  3. Long-term vision, community engagement, and sustainable monetization strategies are critical for success in the maturing Bittensor ecosystem.
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March 24, 2025

ARC Prize Version 2 Launch Video!

Machine Learning Street Talk

AI

Key Takeaways:

  1. ARC V2 represents a significant advancement in benchmarking AI reasoning capabilities, moving beyond the limitations of pre-trained language models.
  2. Efficiency, not just capability, is a critical aspect of intelligence, and ARC V2 effectively measures this efficiency gap between AI and humans.
  3. While O3 demonstrates early signs of fluid intelligence, it is not yet human-level and further breakthroughs are needed to achieve true AGI.
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March 24, 2025

Steffen Cruz and Will Squires: Macrocosmos, AI, APEX, Data, Bittensor Subnets 1 9 13 25 37 | Ep. 32

Ventura Labs

AI

Key Takeaways:

  1. Macrocosmos is building an interconnected suite of products (Constellation) that leverage different Bittensor subnets, aiming for a synergistic approach to decentralized AI.
  2. The focus on building high-quality, feature-rich products over simply competing on price highlights a maturing mindset within the Bittensor ecosystem.
  3. The emphasis on long-term vision, community engagement, and sustainable monetization strategies is crucial for navigating the rapidly evolving decentralized AI landscape.
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March 23, 2025

The Magic of LLM Distillation — Rishi Agarwal, Google DeepMind

Latent Space

AI

Key Takeaways:

  1. Distillation is more than just model compression; it's a powerful technique for improving LLM performance and enabling practical deployment.
  2. On-policy distillation offers significant advantages over traditional methods, especially for complex, long-horizon tasks.
  3. Choose the right distillation strategy based on the specific needs of your application, balancing complexity, cost, and desired performance.
  4. Explore on-policy distillation if your model tackles complex or lengthy generation tasks.
  5. Prioritize simple distillation methods initially, and escalate to more complex techniques only when necessary.
  6. Don't underestimate the value of distillation; a small improvement during training can yield massive benefits during deployment.
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March 23, 2025

Exploring Program Synthesis: Francois Chollet, Kevin Ellis, Zenna Tavares

Machine Learning Street Talk

AI

Key Takeaways:

  1. Deep learning alone is insufficient for program synthesis; symbolic approaches and hybrid models are crucial for tackling discrete, algorithmic tasks.
  2. Developing dedicated infrastructure for program synthesis is premature; further research is needed to identify effective, scalable techniques.
  3. Benchmarks like Arc are essential for driving progress in program synthesis, providing focused environments to study generalization and adaptation.
  4. Deep learning's strength lies in pattern recognition, not program generation.  Symbolic methods or hybrid models are key to unlocking the true potential of program synthesis.
  5. A "Keras for Program Synthesis" is coming, but not yet.  More foundational research is needed before building specialized frameworks.
  6. Arc, particularly Arc 2,  is a crucial testing ground for stronger generalization in AI, pushing beyond mere interpolation towards true compositional understanding.
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March 22, 2025

Test-Time Adaptation: the key to reasoning with DL

Machine Learning Street Talk

AI

Key Takeaways:

  1. Test-time adaptation is a powerful technique for tackling abstract reasoning tasks like ARC, enabling neural networks to adapt to novel perceptual challenges and achieve state-of-the-art performance.
  2. Prioritizing raw representations and flexible contextualization over specialized encodings or program synthesis can be crucial for handling ARC’s adversarial and abstract nature.
  3. The future of reasoning with deep learning lies in exploring creative test-time compute strategies, including more nuanced pre-training and diverse benchmarking, to further unlock the potential of neural networks for complex reasoning.
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Crypto Podcasts

February 8, 2026

Hash Rate - Ep.157 - Mining Bittensor with OpenClaw

Hash Rate Podcast

Crypto
Key Takeaways:
  1. Agentic AI is not just a tool; it's a new layer of abstraction for decentralized networks. It shifts the barrier to entry from deep technical and crypto-specific knowledge to strategic prompting and resource allocation, accelerating network participation and value accrual.
  2. Experiment now. Deploy a hosted agentic AI like OpenClaw (via seafloor.bot) with a small budget to understand its capabilities in a controlled environment. Focus on automating complex setup tasks within decentralized AI protocols like Bittensor to gain firsthand experience before others.
  3. The rise of agentic AI agents will fundamentally reshape how individuals and organizations interact with and profit from decentralized AI. Those who master agent orchestration and "skill" development will capture disproportionate value as these systems become the primary interface for programmable intelligence and capital.
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February 7, 2026

Crypto’s Reality Check | Roundup

Bell Curve

Crypto
Key Takeaways:
  1. AI's gravitational pull on talent and capital is forcing crypto to mature beyond speculative tokenomics, transitioning focus from "meme value" to demonstrable product-market fit and real-world utility.
  2. Identify and invest in projects building at the intersection of crypto and AI, or those creating "net new" applications that abstract away crypto complexity for mainstream users, especially in areas like identity or fintech.
  3. This bear market is a necessary, albeit painful, reset. It's a time for builders to focus on creating tangible value and for investors to seek out projects with genuine utility, as the era of easy speculative gains is over.
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February 7, 2026

How Chutes Hit 160B Tokens/Day (Without Centralized Infrastructure)

The Opentensor Foundation | Bittensor TAO

Crypto
Key Takeaways:
  1. The commodification of AI compute, driven by decentralized networks, is shifting power from centralized data centers to globally distributed, incentive-aligned miners. This creates a more efficient, resilient, and cost-effective foundation for intelligence.
  2. Explore building AI agents and applications on Shoots' expanding platform, leveraging their TEEs and end-to-end encryption for privacy-sensitive use cases. The "Sign in with Shoots" OAuth system offers a compelling way to integrate AI capabilities without upfront compute costs.
  3. Shoots is not just an inference provider; it's building the foundational infrastructure for a truly decentralized, private, and intelligent internet. Over the next 6-12 months, expect to see a proliferation of sophisticated AI agents and applications built on Shoots, driven by its unique blend of incentives, security, and global compute.
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February 7, 2026

Vitalik Signals the End of the Rollup-Centric Roadmap: What's Next?

Bankless

Crypto
Key Takeaways:
  1. The Macro Shift: Ethereum pivots from a "rollup-centric" vision to a multi-faceted approach: a powerful, ZKVM-scaled L1 coexists with a diverse "alliance" of specialized L2s. This adapts to technical realities and renews L1's core focus.
  2. The Tactical Edge: Builders should prioritize differentiated L2 solutions or contribute to L1's ZKVM scaling. Investors should evaluate L2s based on distinct utility and symbiotic relationship with Ethereum.
  3. The Bottom Line: Ethereum's market leadership remains, but this pivot signals a pragmatic roadmap. The next 6-12 months will see rallying around L1 ZKVM scaling and clearer L2 roles, demanding sharper focus on where value accrual and innovation occur.
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February 6, 2026

'No More Dry Powder to Come Into Tokens': Why Crypto Is Down

Unchained

Crypto
Key Takeaways:
  1. Global liquidity is high, but capital is reallocating from speculative crypto to traditional stores of value and, paradoxically, to DeFi platforms offering RWA exposure. This signals a maturation where utility and transparency are gaining ground over pure hype.
  2. Identify protocols with demonstrable revenue generation from real-world use cases, like Hyperliquid, as potential outperformers. Focus on platforms that offer transparency and accountability, as market structure shifts towards more regulated and predictable venues.
  3. The crypto market is undergoing a structural reset, moving away from a retail-driven, speculative cycle. Investors must adapt to a landscape where fresh capital is scarce, institutional flows favor gold, and DeFi's next frontier involves real-world assets.
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February 6, 2026

Is Crypto Focusing on the Wrong Regulatory Fight? DEX in the City

Unchained

Crypto
Key Takeaways:
  1. The convergence of AI agents and programmable money is creating a new frontier for digital commerce and liability. This shift demands a proactive re-evaluation of regulatory frameworks, moving beyond human-centric definitions of accountability and transaction.
  2. Builders should design AI agent systems with cryptographically embedded controls, allowing for granular policy enforcement (e.g., spending limits triggering human review) and leveraging stablecoins for microtransactions in decentralized agent-to-agent economies.
  3. The next 6-12 months will see increasing pressure to define AI agent liability and payment rails. Investors should prioritize projects building infrastructure for secure, auditable agent commerce, while builders must integrate compliance and control mechanisms from day one to navigate this evolving landscape.
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