10 Hours of Listening.
5 Minutes of Reading.

Deep dives into the conversations shaping the future of AI, Robotics & Crypto.

Save hours of your time each week with our podcast aggregator

🔍 Search & Filter
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.

AI Podcasts

April 2, 2025

The #1 SWE-Bench Verified Agent

Latent Space

AI
Key Takeaways:
  1. **#1 SWE-Bench Rank:** Augment's new agent tops the SWE-Bench verified charts using off-the-shelf models plus custom codebase understanding tech.
  2. **Enterprise & IDE Focus:** Augment targets developers in large, complex codebases, integrating directly into VS Code/JetBrains workflows rather than forcing new ones.
  3. **Pragmatic Model Strategy:** Leverages off-the-shelf models for rapid deployment now, anticipating potential custom model needs as agent usage and costs inevitably explode.
See full notes
March 31, 2025

Ep 37 — How AI Agents Will Reshape DeFi & Crypto Infrastructure with Ejaaz Ahamadeen

The DCo Podcast

AI
Key Takeaways:
  1. Agents are the Interface: Expect autonomous agents, not traditional apps, to become the dominant way users interact with both AI and crypto, abstracting away underlying complexity.
  2. Money Talks: The most successful near-term crypto AI agents will likely focus relentlessly on generating financial returns for users, tapping into crypto's core speculative drive via sophisticated, proprietary trading strategies.
  3. Build Real Products: Sustainable value comes from solving user problems with excellent UX and viable business models (potentially subscription-based initially), not just tokenomics. AI necessitates a shift from infrastructure hype to product-led growth.
See full notes
March 31, 2025

Ben Fielding: Gensyn’s Fueling an AI-Native Internet, Open vs. Closed Source AI and RL Swarm

Delphi Digital

AI
Key Takeaways:
  1. AI scaling hits physical limits: Centralized hyperscalers face diminishing returns; the future needs horizontally scalable, decentralized compute enabled by protocols like Gensyn.
  2. The Internet gets personal (and probabilistic): Expect a shift from static databases to dynamic, parameter-based experiences, requiring ubiquitous, verified ML execution.
  3. Open beats closed (eventually): Open-source models and decentralized learning (like RL Swarm) will likely outpace closed systems by leveraging global compute and diverse data, mitigating centralized bias risks.
See full notes
March 28, 2025

The Agent Network — Dharmesh Shah, Agent.ai + CTO of HubSpot

Latent Space

AI

Key Takeaways:


1. Agents Evolve into Teammates: Shift perspective from agents as mere tools to digital collaborators within hybrid teams, requiring platforms like Agent.ai for discovery and interaction.


2. Engineer Pragmatically, Vibe Code: Lean towards under-engineering; AI reduces refactoring costs, making it cheaper to pay down tech debt later than to over-invest in unused abstractions now.


3. Unlock Networks with Standards & Memory: Prioritize building blocks like the mCP standard and tackle the critical challenge of secure, shared, cross-agent memory to enable true agent collaboration.

See full notes
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.

See full notes
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.

See full notes
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.

See full notes
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.
See full notes
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.
See full notes

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.
See full notes
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.
See full notes
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.
See full notes
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.
See full notes
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.
See full notes
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