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

December 30, 2025

[State of RL/Reasoning] IMO/IOI Gold, OpenAI o3/GPT-5, and Cursor Composer — Ashvin Nair, Cursor

Latent Space

AI
Key Takeaways:
  1. The transition from internet-scale imitation to environment-scale RL.
  2. Build products that capture the full context of a professional's workflow to make them RL-ready.
  3. Intelligence is no longer the bottleneck. The winner will be whoever builds the best hard drive for professional context.
See full notes
December 31, 2025

[State of Post-Training] From GPT-4.1 to 5.1: RLVR, Agent & Token Efficiency — Josh McGrath, OpenAI

Latent Space

AI
Key Takeaways:
  1. The Macro Pivot: Intelligence is moving from a scarce resource to a commodity where the primary differentiator is the cost per task rather than raw model size.
  2. The Tactical Edge: Prioritize building on models that demonstrate high token efficiency to ensure your agentic workflows remain profitable as complexity grows.
  3. The Bottom Line: The next year will be defined by the systems vs. models tension. Success belongs to those who can engineer the environment as effectively as the algorithm.
See full notes
December 31, 2025

[State of Evals] LMArena's $100M Vision — Anastasios Angelopoulos, LMArena

Latent Space

AI
Key Takeaways:
  1. The transition from static benchmarks to "Vibe-as-a-Service" means model labs must optimize for human delight rather than just loss curves.
  2. Use Arena’s open-source data releases to fine-tune models on real-world prompt distributions.
  3. In a world of synthetic data and benchmark saturation, human preference is the only remaining scarce resource for validating frontier capabilities.
See full notes
December 31, 2025

[State of Context Engineering] Agentic RAG, Context Rot, MCP, Subagents — Nina Lopatina, Contextual

Latent Space

AI
Key Takeaways:
  1. The transition from Model-Centric to Context-Centric AI. As base models commoditize, the value moves to the proprietary data retrieval and prompt optimization layers.
  2. Implement an instruction-following re-ranker. Use small models to filter retrieval results before they hit the main context window to maintain high precision.
  3. Context is the new moat. Your ability to coordinate sub-agents and manage context rot will determine your product's reliability over the next year.
See full notes
December 31, 2025

[NeurIPS Best Paper] 1000 Layer Networks for Self-Supervised RL — Kevin Wang et al, Princeton

Latent Space

AI
Key Takeaways:
  1. The convergence of RL and self-supervised learning. As the boundary between "learning to see" and "learning to act" blurs, the winning agents will be those that treat the world as a giant classification problem.
  2. Prioritize depth over width. When building action-oriented models, increase layer count while maintaining residual paths to maximize intelligence per parameter.
  3. The "Scaling Laws" have arrived for RL. Expect a new class of robotics and agents that learn from raw interaction data rather than human-crafted reward functions.
See full notes
December 31, 2025

[State of AI Papers 2025] Fixing Research with Social Signals, OCR & Implementation — Team AlphaXiv

Latent Space

AI
Key Takeaways:
  1. The Age of Scaling is hitting a wall, leading to a migration toward reasoning and recursive models like TRM that win on efficiency.
  2. Filter your research feed by implementation ease rather than just citation count to accelerate your development cycle.
  3. In a world of AI-generated paper slop, the ability to quickly spin up a sandbox and verify code is the only sustainable competitive advantage for AI labs.
See full notes
December 31, 2025

[State of MechInterp] SAEs in Production, Circuit Tracing, AI4Science, "Pragmatic" Interp — Goodfire

Latent Space

AI
Key Takeaways:
  1. The transition from Black Box to Glass Box AI. Trust is the next moat, and interpretability is the tool to build it.
  2. Use feature probing for high-stakes monitoring. It is more effective and cheaper than using LLMs as judges for tasks like PII scrubbing.
  3. Understanding model internals is no longer just a safety research project. It is a production requirement for any builder deploying AI in regulated or high-stakes environments over the next 12 months.
See full notes
December 31, 2025

[State of Code Evals] After SWE-bench, Code Clash & SOTA Coding Benchmarks recap — John Yang

Latent Space

AI
Key Takeaways:
  1. The transition from completion to agency means benchmarks are moving from static snapshots to active environments.
  2. Integrate unsolvable test cases into internal evaluations to measure model honesty.
  3. Success in AI coding depends on navigating the messy, interactive reality of production codebases rather than chasing high scores on memorized puzzles.
See full notes
December 31, 2025

[State of Research Funding] Beyond NSF, Slingshots, Open Frontiers — Andy Konwinski, Laude Institute

Latent Space

AI
Key Takeaways:
  1. The center of gravity in AI is moving from closed-door pre-training to open-source compound systems that prioritize context management.
  2. Identify research teams with long histories of collaboration and fund them before they incorporate to capture the highest upside.
  3. Open research is the only way to maintain a democratic and competitive AI ecosystem against both closed labs and international rivals.
See full notes

Crypto Podcasts

February 17, 2026

FTX Changed Finance — Now Institutions Want What Crypto Built

The DCo Podcast

Crypto
Key Takeaways:
  1. Investigate platforms offering regulated perpetual futures on traditional assets. These venues are positioned to capture significant institutional flow by combining crypto's product innovation with TradFi's risk management.
  2. The global financial system is bifurcating, with a clear trend towards regulated, institutional-grade venues for all tradable assets, including novel ones like compute power.
  3. The future of finance involves crypto-native products like perpetuals, but their mass adoption by institutions hinges on robust regulation and superior risk management.
See full notes
February 17, 2026

AI Capex Meets SaaS Apocalypse, 18-Month Bear Market & Bitcoin vs Quantum

1000x Podcast

Crypto
Key Takeaways:
  1. The Macro Shift: AI's productivity gains are consolidating power and profits within vertically integrated tech giants, fundamentally altering the competitive landscape for software and infrastructure providers.
  2. The Tactical Edge: Re-evaluate SaaS investments, favoring mega-cap tech companies poised to absorb former SaaS revenues through internal AI-driven development. For crypto, identify and accumulate projects with genuine revenue generation during the bear market.
  3. The Bottom Line: Position your portfolio for a world where AI drives corporate insourcing, crypto valuations reset to fundamentals, and core digital assets like Bitcoin undergo necessary technical upgrades to survive future threats.
See full notes
February 17, 2026

VVV, CFTC and Morpho | Livestream

0xResearch

Crypto
Key Takeaways:
  1. Traditional finance is integrating with crypto, but often on its own terms, demanding more transparency from protocols while VCs continue to deploy significant capital into specific, high-potential crypto and AI intersections.
  2. Scrutinize institutional "partnerships" for concrete terms and evaluate protocols based on their true moat against easy forks or platform risk.
  3. The market is bifurcating: clear regulatory wins for specific crypto applications (like prediction markets) and innovative AI/crypto plays are attracting capital, while opaque TradFi deals and general L1 infrastructure face increased scrutiny. Position for clarity and genuine value accrual.
See full notes
February 17, 2026

RWA Looping, Crypto Market Structure Bill, & Vaults - Sean Kelley

The Rollup

Crypto
Key Takeaways:
  1. The digitization of finance is accelerating, with institutional capital now actively seeking onchain yield and efficiency. This is creating a competitive pressure cooker for traditional banks, while opening vast opportunities for nimble DeFi protocols.
  2. Focus on protocols building robust RWA infrastructure and those providing deep liquidity for tokenized treasuries. These are the picks and shovels for the coming institutional capital wave.
  3. The fight for stablecoin yield and institutional adoption will define the next 6-12 months. Position yourself to capitalize on the inevitable flow of capital from TradFi to transparent, yield-bearing onchain assets, even if it's just a fraction of the total.
See full notes
February 17, 2026

Neo Finance 'N7' Outperforming, Apollo x Morpho, Frax Joins The Show, Bullet Mainnet & Gmoney Calls

The Rollup

Crypto
Key Takeaways:
  1. Explore DeFi protocols in the N7 index (Morpho, Frax, Aave, etc.) for early exposure to institutional capital flows and RWA looping opportunities.
  2. Experiment with AI agents to automate content creation, research, and even software development, drastically cutting operational costs.
  3. The financial system is bifurcating into a "Neo Finance" layer where tokenized real-world assets are integrated with DeFi primitives, and an "AI-augmented" layer where autonomous agents supercharge individual and small team productivity.
See full notes
February 16, 2026

Doug Sillard: Taostats, Bittensor Dynamic TAO, Chain Buys, MEV Bots & TaoFlow Explained | Ep. 82

Ventura Labs

Crypto
Key Takeaways:
  1. Bittensor is transitioning from a purely experimental decentralized AI network to a performance-driven marketplace, demanding real-world utility and robust economic models from its subnets.
  2. Builders launching subnets must secure initial TAO liquidity and a clear, executable product roadmap from day one to navigate the competitive landscape and achieve emission.
  3. The network's continuous adaptation, from chain buys to MEV mitigation, signals a commitment to long-term stability and value.
See full notes