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AI Podcasts

December 19, 2025

Paying Engineers like Salespeople – Arman Hezarkhani, Tenex

AI Engineer

AI
Key Takeaways:
  1. Compensation Innovation: The traditional compensation playbook for engineers is outdated. New models that directly reward AI-augmented output will attract top talent and drive efficiency.
  2. Builder/Investor Note: Founders should re-evaluate their incentive structures. Investors should seek companies experimenting with these models, as they may achieve outsized productivity.
  3. The "So What?": The productivity gap between AI-augmented and non-AI-augmented engineers will widen. Companies that adapt their incentives will capture disproportionate value in the next 6-12 months.
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December 19, 2025

Leadership in AI Assisted Engineering – Justin Reock, DX (acq. Atlassian)

AI Engineer

AI
Key Takeaways:
  1. Strategic Shift: Successful AI integration means identifying and solving *your* organization's specific SDLC bottlenecks, not just boosting code completion.
  2. Builder/Investor Note: Prioritize psychological safety and invest in AI skill development. For builders, this means dedicated learning time; for investors, look for companies that do this well.
  3. The "So What?": The next 6-12 months will separate organizations that merely *adopt* AI from those that *master* its strategic application and measurement, driving real competitive advantage.
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December 19, 2025

From Arc to Dia: Lessons learned building AI Browsers – Samir Mody, The Browser Company of New York

AI Engineer

AI
Key Takeaways:
  1. Strategic Implication: AI integration is a company-wide transformation, not a feature. Organizations must re-architect processes, tools, and culture to compete.
  2. Builder/Investor Note: Prioritize internal tooling that democratizes AI experimentation. Look for companies establishing "model behavior" as a distinct, cross-functional discipline.
  3. The "So What?": The next 6-12 months will reward builders who bake AI security and user control into product design from day one, recognizing that technical mitigations alone are insufficient.
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December 19, 2025

No Priors Ep. 144 | The 2026 AI Forecast with Sarah & Elad

No Priors: AI, Machine Learning, Tech, & Startups

AI
Key Takeaways:
  1. AI's real-world impact will accelerate in 2026, particularly in "conservative" professional services and fundamental sciences, despite market volatility.
  2. Builders should focus on truly novel consumer agent experiences and niche robotics applications, while investors should eye AI IPOs with caution and consider energy efficiency plays.
  3. The next 6-12 months will clarify the geopolitical AI race and expose the true infrastructure bottlenecks, shaping the industry's long-term trajectory.
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December 19, 2025

How AI Will Transform Fintech In 2026

a16z

AI
Key Takeaways:
  1. Strategic Shift: The fintech market is moving from "digitizing everything" to "optimizing everything with AI." This means a focus on efficiency, personalization, and solving deep-seated financial problems.
  2. Builder/Investor Note: Opportunities abound in B2B AI software for financial institutions and in consumer fintechs that prioritize "excellence" over mere access. However, the escalating AI fraud threat demands significant investment in defensive technologies.
  3. The "So What?": Over the next 6-12 months, expect a surge in AI-powered financial products and services, but also a corresponding increase in the sophistication and volume of financial fraud. The battle for trust and security will define the winners.
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December 20, 2025

Are AI Benchmarks Telling The Full Story? [SPONSORED]

Machine Learning Street Talk

AI
Key Takeaways:
  1. Strategic Shift: The market will increasingly demand AI models evaluated on human-centric metrics, not just technical benchmarks. Companies prioritizing user experience and safety will gain a competitive edge.
  2. Builder/Investor Note: Investigate companies developing or utilizing advanced, demographically representative human evaluation frameworks. These are crucial for building defensible, user-aligned AI products.
  3. The "So What?": Over the next 6-12 months, expect a growing focus on AI safety, ethical alignment, and nuanced human preference data. The "Wild West" of AI evaluation is ending, paving the way for more robust, trustworthy systems.
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December 17, 2025

Rethinking Pre-Training for Agentic AI [Aakanksha Chowdhery] - 759

The TWIML AI Podcast with Sam Charrington

AI
Key Takeaways:
  1. Strategic Implication: The next frontier in AI is agentic, and progress hinges on fundamental pre-training innovation, not just post-training optimizations.
  2. Builder/Investor Note: Focus on teams with deep experience in scaling and debugging large models, as this is a high-capital, high-risk endeavor. Builders should prioritize developing new benchmarks for agentic capabilities.
  3. The "So What?": The industry needs to move beyond next-token prediction and static benchmarks to unlock truly capable, self-correcting AI agents in the next 6-12 months.
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December 17, 2025

Code World Model: Building World Models for Computation – Jacob Kahn, FAIR Meta

AI Engineer

AI
Key Takeaways:
  1. Shift in AI Development: The focus moves from syntax-aware code generation to execution-aware reasoning, enabling more robust and intelligent code agents.
  2. Builder/Investor Note: Prioritize tools and platforms that support explicit execution modeling and highly asynchronous, high-throughput RL training for agentic systems.
  3. The "So What?": AI that can simulate complex systems internally will drastically reduce development and testing costs, accelerating innovation in software and distributed systems over the next 6-12 months.
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December 17, 2025

AI Kernel Generation: What's working, what's not, what's next – Natalie Serrino, Gimlet Labs

AI Engineer

AI
Key Takeaways:
  1. Strategic Shift: AI-driven kernel generation is not replacing human genius but augmenting it, allowing experts to focus on novel breakthroughs while AI automates the application of known optimizations across a complex hardware landscape.
  2. Builder/Investor Note: Focus on robust validation and hardware-in-the-loop systems. Claims of "AI inventing new algorithms" in this domain are premature. The real value is in automating the "bag of tricks" for heterogeneous compute.
  3. The "So What?": This technology is critical for scaling agentic AI workloads. Expect significant investment in tools that abstract hardware complexity and enable efficient, automated optimization, driving down the cost of AI inference in the next 6-12 months.
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Crypto Podcasts

January 12, 2026

Claude Opus 4.5’s Breakout Moment & Investing in 2026 with Qiao Wang

Empire

Crypto
Key Takeaways:
  1. The Macro Pivot: Proprietary data and enterprise switching costs are the only walls left standing as AI commoditizes the act of writing code.
  2. The Tactical Edge: Build internal tools using natural language agents to automate specific, low-volume workflows that third-party vendors ignore.
  3. The Bottom Line: The billion-dollar company with a single employee is no longer a fantasy; it is a mathematical certainty for those who master the prompt over the next twelve months.
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January 13, 2026

How Claude Code is Changing the World with Nick Emmons

The Rollup

Crypto
Key Takeaways:
  1. The migration from human-centric interfaces to agent-first protocols where software is a temporary utility rather than a permanent product.
  2. Use Git and MCP servers to give your agents a persistent memory and toolset, allowing them to work autonomously through complex loops.
  3. Software is no longer the prize; it is the commodity. Your value in the next year depends on how well you direct the agents that build it.
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January 12, 2026

HIP-3 Market Design and Felix’s Role | Charlie, Felix Protocol

0xResearch

Crypto
Key Takeaways:
  1. The Macro Strategic Pivot: Vertical Consolidation. Protocols are moving away from modularity toward integrated stacks to capture maximum fee revenue.
  2. The Tactical Edge: Monitor BLP Rates. Watch the spread between Felix and Hyperliquid’s native lending rates. Capital will migrate to the platform offering the lowest borrow cost for margin trading.
  3. The Bottom Line: Hyperliquid is winning by becoming a DeFi Super App rather than just a perp engine. Its success over the next year depends on its ability to manage UI fragmentation while keeping all revenue inside the Hype ecosystem.
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January 12, 2026

Is Canton a Real Blockchain? | Canton Founder Yuval Rooz

Bankless

Crypto
Key Takeaways:
  1. The Macro Transition: We are seeing a split between "Pure Crypto" for sovereignty and "Institutional Rails" for global capital markets.
  2. The Tactical Edge: Monitor Broadridge volume to gauge the actual velocity of institutional on-chain adoption.
  3. The Bottom Line: The next decade is not about crypto replacing banks. It is about banks adopting crypto's efficiency while keeping their legal moats.
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January 12, 2026

Who Actually Owns the Aave Brand -- the DAO or Labs? Uneasy Money

Unchained

Crypto
Key Takeaways:
  1. The "Fat App" thesis is evolving into the "Sovereign Brand" thesis where the front-end is the ultimate moat.
  2. Audit your protocol's meatspace dependencies—domains, trademarks, and front-ends—before they become points of failure.
  3. Decentralization isn't just about smart contracts; it is about ensuring the front door to your protocol cannot be locked by a single executive.
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January 10, 2026

Why Crypto Still Struggles to Capture the Value It Creates | Roundup

Bell Curve

Crypto
Key Takeaways:
  1. The transition from "Software as a Service" to "Software as a Network" where value flows to the protocol layer.
  2. Prioritize infrastructure that owns the end-user relationship or provides essential stability for open stacks.
  3. AI models will migrate to crypto rails to solve the monetization gap that has hindered open-source development for forty years.
See full notes