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AI Podcasts

January 8, 2026

AI, markets, and power: A conversation with Paul Krugman

Azeem Azhar

AI
Key Takeaways:
  1. Capital is replacing labor as the primary driver of productivity.
  2. Prioritize investments in incumbents with massive distribution or lean startups that swap payroll for compute.
  3. The US remains the primary engine of growth but the internal divide between tech hubs and the hinterland will widen as AI concentrates wealth.
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January 9, 2026

Artificial Analysis: The Independent LLM Analysis House — with George Cameron and Micah Hill-Smith

Latent Space

AI
Key Takeaways:
  1. The decoupling of parameter count from active compute via sparsity means intelligence is becoming a software optimization problem as much as a hardware one.
  2. Audit your agentic workflows for turn efficiency rather than just cost per token.
  3. In a world of infinite tokens, the winner is the one who can verify the truth the fastest.
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January 7, 2026

Marc Andreessen's 2026 Outlook: AI Timelines, US vs. China, and The Price of AI

a16z

AI
Key Takeaways:
  1. The transition from "adding machines" to "human cognition" models is an 80-year correction finally hitting the vertical part of the S-curve.
  2. Prioritize application-specific models that backward-integrate into the stack.
  3. AI is a physical and digital build-out that will define the next decade of global power.
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January 6, 2026

Who Controls AI's Future? The Battle for GPU Access | CoreWeave SVP

Weights & Biases

AI
Key Takeaways:
  1. The transition from general-purpose compute to specialized AI infrastructure mirrors the rise of Snowflake in the data era.
  2. Audit your current cloud spend to identify where generalist latency is throttling your GPU goodput.
  3. Performance bars move every two years. If your infrastructure isn't purpose-built for AI today, you will be priced out of the market tomorrow.
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January 5, 2026

Welcome to AIE CODE - Jed Borovik, Google DeepMind

AI Engineer

AI
Key Takeaways:
  1. The Macro Pivot: The transition from LLMs as chat interfaces to LLMs as logic engines. As models move from text prediction to logic execution, the value moves from the model itself to the verification systems surrounding it.
  2. The Tactical Edge: Audit the stack. Prioritize the integration of agentic coding tools like Jules to shorten the feedback loop between ideation and deployment.
  3. The Bottom Line: Code is the only medium where AI can self-correct and scale without human intervention. The next 12 months will be defined by who can turn raw model power into reliable, self-healing code.
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January 5, 2026

Claude Agent SDK [Full Workshop] — Thariq Shihipar, Anthropic

AI Engineer

AI
Key Takeaways:
  1. Moving from "Model-as-a-Service" to "Environment-as-a-Service" where the harness matters as much as the weights.
  2. Replace your bespoke API tools with a single bash tool. Use a well-structured file system.
  3. The next year belongs to builders who stop treating LLMs as chatbots. They will treat them as system administrators.
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January 6, 2026

Building durable Agents with Workflow DevKit & AI SDK - Peter Wielander, Vercel

AI Engineer

AI
Key Takeaways:
  1. The Macro Transition: We are moving from "fire-and-forget" prompts to durable execution environments where state is as important as the model itself.
  2. The Tactical Edge: Wrap your existing tool calls in the `useStep` function to gain instant retry logic and execution history.
  3. The Bottom Line: Reliability is the primary moat in the agent market. Builders who adopt durable workflows will move to production while others are still debugging local scripts.
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January 6, 2026

Build a Prompt Learning Loop - SallyAnn DeLucia & Fuad Ali, Arize

AI Engineer

AI
Key Takeaways:
  1. The move from manual prompt engineering to automated prompt learning. As models become commodities, the proprietary loop that refines them becomes the moat.
  2. Implement a Train-Test Split for your prompts. Use a subset of failure data to generate new rules and validate them against a separate holdout set to ensure the logic holds.
  3. Reliability is the only metric that matters for agent adoption. If you are not using a feedback loop to update your system instructions, you are building on sand.
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January 6, 2026

The Netflix Culture Code That Changed Entertainment Forever | Reed Hastings Interview

Invest Like The Best

AI
Key Takeaways:
  1. The move from industrial management to creative inspiration. As AI automates routine tasks, the only remaining value is high-variance human creativity.
  2. Apply the Keeper Test today. Ask your leads which team members they would fight for and provide generous exits for the rest to reset your talent bar.
  3. Scaling doesn't require more rules. It requires better people. If you can maintain talent density, you can run fast while your competitors choke on their own handbooks.
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Crypto Podcasts

January 30, 2026

Blame Exchanges for Holding Up the Market Structure Bill? - DEX in the City

Unchained

Crypto
Key Takeaways:
  1. Policy Stalled: The prospects for comprehensive crypto market structure law are deteriorating, with political finger-pointing hindering progress. This means continued uncertainty for builders and investors, forcing operations into a legal gray area with unpredictable outcomes.
  2. Custody Failures: The US government's handling of seized crypto assets, like the alleged $40 million theft from a Bitfinex hack wallet by a contractor's son, reveals alarming security gaps. This highlights that even state actors struggle with basic digital asset security, raising questions about their ability to regulate the space effectively.
  3. Misplaced Focus: Trump's $5 billion lawsuit against JP Morgan for account closures is not true debanking, which impacts ordinary individuals and crypto businesses. This lawsuit distracts from the systemic issue of banks cutting off access to financial services for legitimate businesses without transparency or recourse.
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January 31, 2026

How Ethereum May Have One-Upped Bitcoin in One Big Way - Uneasy Money

Unchained

Crypto
Key Takeaways:
  1. The Macro Shift: AI's recursive self-improvement is compressing innovation cycles and dissolving engineering moats, creating an urgent demand for crypto infrastructure that can adapt to unforeseen technological advancements.
  2. The Tactical Edge: Prioritize protocols and platforms that demonstrate a proactive approach to long-term technical risks, such as quantum computing, over those with rigid, unadaptable architectures.
  3. The Bottom Line: The convergence of AI and crypto will redefine security and value. Ethereum's strategic investment in quantum resistance positions it to capture a significant narrative and technical advantage, while Bitcoin's inertia could become a critical liability over the next 6-12 months.
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January 31, 2026

Hash Rate - Ep. 156 - James Altucher Talks $TAO

Hash Rate Podcast

Crypto
Key Takeaways:
  1. Monitor institutional capital flows into BitTensor subnets, particularly the DNA Fund's $300M DAT. Significant subnet acquisitions will likely precede sharp upward movements in TAO's price, offering a leading indicator for investors.
  2. BitTensor is architecting a decentralized AI economy where market incentives and Darwinian selection drive innovation, effectively crowdsourcing the world's best AI talent to solve complex problems.
  3. BitTensor is in its "sausage factory" phase, building the infrastructure for a $10,000+ TAO valuation. The current market irrationality and interface challenges are temporary.
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January 31, 2026

Bittensor Brief #18: NODEXO - Subnet 27

Hash Rate Podcast

Crypto
Key Takeaways:
  1. The AI compute market is moving from opaque, centralized providers to verifiable, decentralized networks. Nodeexo's model forces real pricing and competition by embedding cryptographic trust directly into the infrastructure layer.
  2. Evaluate Bittensor subnets not just for speculative yield, but for their ability to convert subnet tokens into real-world utility and verified infrastructure. Prioritize those building tangible, trust-minimized services.
  3. Nodeexo's approach to verifiable GPU compute establishes a new standard for trust in decentralized AI infrastructure. This creates a compelling investment thesis for those identifying real utility and transparent value in the Bittensor ecosystem over the next 6-12 months.
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January 31, 2026

LIVE: Gold vs. Bitcoin & MoltBook | 0xResearch

0xResearch

Crypto
Key Takeaways:
  1. The Macro Shift: Geopolitical tensions and economic uncertainty are driving a global re-allocation of capital, with Eastern wealth increasingly favoring hard assets and localized crypto rails. This challenges Western-centric market analysis and demands a broader, more nuanced view of global finance.
  2. The Tactical Edge: Cultivate deep domain expertise and critical thinking, using AI as an amplification tool, not a replacement for learning. Focus on areas where human judgment, taste, and the ability to translate AI insights into real-world value remain irreplaceable.
  3. The Bottom Line: The next 6-12 months will see continued divergence in global capital flows and accelerating AI integration. Investors must track opaque Eastern market signals, while builders should prioritize AI applications that augment human capability rather than simply automate, ensuring their skills remain relevant in an increasingly AI-driven world.
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January 30, 2026

The Fed Is Background Noise While Markets Reprice Reality | Weekly Roundup

Forward Guidance

Crypto
Key Takeaways:
  1. The Macro Shift: Monetary Escapism: As fiat debases and geopolitical tensions rise, capital is rotating from traditional tech to hard-capped assets and AI infrastructure.
  2. The Tactical Edge: Reallocate Capital: Prioritize real assets and cyclical commodities (gold, silver, oil, copper) while selectively shorting overvalued software companies facing AI disruption and increasing capital expenditures.
  3. The Bottom Line: The market is re-pricing value based on true scarcity and capital intensity. Position for a volatile environment where traditional narratives fail, and tangible assets or essential AI infrastructure dictate returns.
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