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AI Podcasts

December 16, 2025

Why Physical AI Needs a new Data Set | Rerun CEO

Weights & Biases

AI
Key Takeaways:
  1. Data Infrastructure is the Next Bottleneck: The physical AI sector's growth hinges on specialized data tooling that can handle multimodal, multi-rate, episodic data, moving beyond traditional tabular models.
  2. Builders, Prioritize Robustness: Focus on building systems that handle real-world variability and simplify data pipelines. Leverage open-source tools and consider combining imitation and reinforcement learning.
  3. The "So What?": The next 6-12 months will see significant improvements in robot robustness and the ability to perform longer, more complex tasks. This progress will be driven by better data management, making the gap between lab demos and deployable products narrower.
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December 16, 2025

Build reliable AI agents using W&B Training

Weights & Biases

AI
Key Takeaways:
  1. The democratization of RL for LLMs will accelerate the deployment of more reliable and sophisticated AI agents across industries.
  2. Builders should move beyond basic prompt engineering and RAG. RL fine-tuning, now accessible via W&B Serverless RL, is a critical next step for high-stakes agentic applications.
  3. For the next 6-12 months, expect a surge in production-grade AI agents, with open-source models increasingly closing the performance gap with proprietary alternatives through advanced fine-tuning.
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December 15, 2025

Coding Evals: From Code Snippets to Codebases – Naman Jain, Cursor

AI Engineer

AI
Key Takeaways:
  1. Dynamic Evaluation is Non-Negotiable: Static benchmarks are dead. Future AI development demands continuously updated, contamination-resistant evaluation sets.
  2. AI Needs AI to Judge AI: As models grow more sophisticated, LLM-driven "hack detectors" become essential for ensuring code quality and preventing adversarial exploitation of evaluation systems.
  3. User Experience Drives Adoption: For interactive AI coding tools, prioritize low latency and human-centric design; technical prowess alone will not guarantee real-world usage.
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December 15, 2025

Building in the Gemini Era – Kat Kampf & Ammaar Reshi, Google DeepMind

AI Engineer

AI
Key Takeaways:
  1. Strategic Implication: The value in software development shifts from manual coding to high-level architectural design and prompt engineering.
  2. Builder/Investor Note: Experiment with AI Studio's agentic and design capabilities. Focus on describing desired functionality rather than low-level code.
  3. The "So What?": The next 6-12 months will see a surge in AI-powered, full-stack applications built by a broader range of creators, disrupting traditional development paradigms.
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December 16, 2025

What We Learned Deploying AI within Bloomberg’s Engineering Organization – Lei Zhang, Bloomberg

AI Engineer

AI
Key Takeaways:
  1. Strategic Shift: AI's impact extends beyond simple productivity. The real opportunity lies in fundamentally changing the cost function of engineering, making previously expensive or undesirable tasks cheap and feasible.
  2. Platform Imperative: For large organizations, a "golden path" platform is not optional. It's how you manage complexity, ensure quality, and scale AI adoption safely and efficiently.
  3. Human-Centric Adaptation: Technology is only half the battle. Investing in cultural adaptation, community building, and leadership training is crucial for realizing AI's full potential.
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December 16, 2025

Your Support Team Should Ship Code – Lisa Orr, Zapier

AI Engineer

AI
Key Takeaways:
  1. Strategic Implication: Companies integrating AI-driven code generation into non-engineering roles will see significant efficiency gains and improved product reliability.
  2. Builder/Investor Note: Focus on building AI tools that deeply embed into existing workflows. Orchestration of multiple AI tools into an agent-like system is key for adoption and value.
  3. The "So What?": The next 6-12 months will see a redefinition of "support" from reactive reporting to proactive, code-shipping problem-solving, unlocking new talent pools and accelerating development cycles.
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December 16, 2025

Finding The 1% of Stocks That Matter | Henry Ellenbogen Interview

Invest Like The Best

AI
Key Takeaways:
  1. Strategic Implication: The AI era will disproportionately reward existing businesses that deeply integrate AI to create unassailable cost structures, not just new AI-native ventures.
  2. Builder/Investor Note: Seek out resilient "Act II" leaders who embrace the "and" business—growth, innovation, and profitability—and are willing to navigate public market scrutiny for long-term alignment.
  3. The "So What?": Over the next 6-12 months, expect market volatility to create opportunities to invest in disciplined companies leveraging AI for fundamental operational shifts, rather than just hype.
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December 15, 2025

The Renaissance of the American Factory | a16z 2026 Big Ideas

a16z

AI
Key Takeaways:
  1. Strategic Implication: The next wave of industrial growth will come from applying manufacturing principles to large-scale infrastructure, not just consumer goods.
  2. Builder/Investor Note: Focus on companies that are standardizing designs and processes for physical assets, particularly those leveraging AI to navigate regulatory complexity and accelerate deployment.
  3. The "So What?": The rapid build-out of data centers is a live experiment for a broader industrial renaissance, providing a blueprint for how America can rebuild its capacity to build at scale over the next 6-12 months.
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December 16, 2025

⚡️Jailbreaking AGI: Pliny the Liberator & John V on Red Teaming, BT6, and the Future of AI Security

Latent Space

AI
Key Takeaways:
  1. Strategic Implication: The "AI safety" narrative is shifting from content moderation to systemic security. Focus on hardening the entire AI ecosystem, not just restricting model outputs.
  2. Builder/Investor Note: Be wary of "AI security" products that claim to "secure the model" through guardrails. These are likely security theater. Invest in full-stack AI security solutions, red teaming services, and platforms that facilitate open-source adversarial research.
  3. The "So What?": The future of AI security is not about building higher walls around models, but about understanding and hardening the entire ecosystem in which they operate. Open collaboration and adversarial testing are the fastest paths to robust AI.
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Crypto Podcasts

February 8, 2026

The Pro-Quantum Argument w/ Tyler Whittle

The Gwart Show

Crypto
Key Takeaways:
  1. The theoretical certainty of quantum computing, coupled with accelerating engineering breakthroughs, means the digital asset space must proactively build "crypto agility" into its core protocols. This ensures systems can adapt to new cryptographic standards as current ones become obsolete.
  2. Secure your Bitcoin by ensuring it resides in unspent SegWit or P2SH addresses, as these keep your public key hidden until spent. This provides a temporary shield against quantum attacks.
  3. Quantum computing is not a distant threat but a near-term risk with a 20% chance of moving Satoshi's coins by 2030. Ignoring this could lead to a systemic collapse of the "store of value" narrative for Bitcoin and other digital assets, forcing a costly and painful reset.
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February 8, 2026

If Bitcoin doesn't quantum-proof it will be EXPENSIVE

The Gwart Show

Crypto
Key Takeaways:
  1. The crypto industry must shift from viewing quantum as a distant threat to an imminent engineering challenge requiring proactive, coordinated defense.
  2. Ensure any long-term Bitcoin holdings are in SegWit addresses never spent from, as these public keys remain hashed and are currently more resistant to quantum attacks.
  3. A 20% chance of Satoshi's coins moving by 2030, and near certainty by 2035, means delaying upgrades is a multi-billion dollar bet against Bitcoin's core security narrative.
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February 7, 2026

Do We Still Need L2s Now That Ethereum Has Scaled? - Uneasy Money

Unchained

Crypto
Key Takeaways:
  1. Ethereum's L1 scaling redefines L2s from pure throughput solutions to specialized platforms, while AI agents introduce a new, autonomous layer of on-chain activity.
  2. Investigate L2s that offer unique features or cater to specific enterprise needs beyond just low fees.
  3. The future of crypto involves a more performant Ethereum L1, specialized L2s, and a burgeoning agentic economy.
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February 8, 2026

Want to Hire an AI Agent? Check Their Reputation Via ERC-8004

Unchained

Crypto
Key Takeaways:
  1. The rapid rise of autonomous AI agents demands a decentralized trust layer. Blockchains, initially an "internet of money," are now becoming the foundational "internet of trusted agent commerce," providing verifiable identity and reputation essential for multi-agent economies. This shift moves beyond simple payments to establishing a credible, censorship-resistant framework for AI-driven interactions.
  2. Integrate ERC-8004 into agent development. Builders should register their AI agents on ERC-8004 to establish verifiable on-chain identity and reputation, attracting trusted interactions and avoiding future centralized platform fees or censorship.
  3. The future of AI commerce hinges on decentralized trust. ERC-8004 is the foundational primitive for this, ensuring that as AI agents become more sophisticated and transact more value, the underlying infrastructure remains open, fair, and resistant to single points of control. This is a critical piece of the puzzle for anyone building or investing in the agent economy over the next 6-12 months.
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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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