Incentives Dictate Intelligence. Mantis's breakthrough is its reward function. By precisely measuring a miner's marginal contribution, it makes unique alpha the only profitable strategy and naturally defends against Sybil attacks.
The Ensemble is the Alpha. The network’s power lies not in finding one genius quant, but in combining many good-enough signals into one great one. The collective intelligence is designed to be far more valuable than any individual participant.
The Future is Verifiable, On-Chain Alpha. Mantis plans to monetize by auctioning its predictive signals, creating a transparent marketplace for intelligence and proving that a decentralized network can produce a product valuable enough to compete with Wall Street's top firms.
Google's "Tax on GDP" Is Under Threat. AI is eroding the informational searches that feed Google's funnel and will eventually intercept high-intent commercial queries, redirecting economic power to new agentic platforms.
The Future of Shopping Is Agentic, Not Search-Based. Consumers will delegate research and purchasing to specialized AI agents that optimize every variable, from product choice to payment method, fundamentally changing how brands acquire customers.
Trust Is the Ultimate Moat. In a world of automated "crap," business models built on human trust and strict curation, like Costco's, become exceptionally defensible.
AI's next frontier isn't just language; it's simulating life. The "virtual cell"—a model that predicts how to change a cell's state—is the industry's next "AlphaFold moment," aiming to compress drug discovery from years of lab work into forward passes of a neural network.
Biology's core bottleneck is physical, not digital. Unlike pure software, progress is gated by the "lab-in-the-loop" reality: every AI prediction must be validated by slow, expensive physical experiments. Solving this requires new platforms that can scale the generation of high-quality biological data.
The biotech business model needs a new playbook. With a 90% clinical trial failure rate, the economics are broken. The future belongs to companies that either A) use AI to drastically improve the hit rate of drug targets or B) tackle massive markets like obesity, where GLP-1s proved the prize is worth the squeeze.
Enterprise AI is a Services Business. The best models are not enough. Success requires deep integration via "Forward Deployed Engineers" who build the necessary data scaffolding and orchestration layers.
GPT-5 Was Co-developed with Customers. Its focus on "craft" (behavior, tone) over raw benchmarks was a direct result of an intensive feedback loop with enterprise partners, making it more practical for real-world use.
Bet on Applications, Not Tooling. The speakers are short the entire category of AI tooling (frameworks, vector DBs), arguing the underlying tech stack is evolving too rapidly. Long-term value will accrue to those building applications in high-impact sectors like healthcare.
Intelligence Has a Size Limit: Forget galaxy-spanning superintelligences. The physics of self-organizing systems suggest intelligence thrives at a specific scale, unable to exist when systems become too large or too small.
True Agency is Self-Inference: The crucial leap to higher intelligence is not just modeling the world, but modeling yourself as a cause within it. This recursive "strange loop" is the foundation of planning and agentic behavior.
Hardware is the Software: Consciousness is not an algorithm you can run on any machine. It likely requires a specific physical substrate where memory and processing are unified, making the body and brain inseparable from the mind.
**Ride the Wave, Don't Fight It.** Exponential forces like Moore's Law and network effects will overwhelm any product tactic. Your first job is to identify the fundamental technological or social current you're riding.
**Build a Tool, Then a Network.** Defensibility in consumer tech often comes from network effects, but you can’t start there. Solve a user’s problem in single-player mode first to build the critical mass needed for an unbeatable network.
**Explore the Fringe.** The future is being prototyped in niche subreddits and hobbyist communities. To find the next big thing, look for small groups of hyper-enthusiastic people working on things that seem like toys today.
Find the "Death War." Cuban's biggest wins come from identifying industries where competitors are forced to spend billions to survive (like AI today or streaming media rights a decade ago). These moments create massive opportunities for suppliers and disruptors.
Sell a Better Life, Not an Ideology. Whether in politics or business, success comes from solving people’s immediate, tangible problems. Abstract goals and ideological purity don't sell.
The Real Moat is Domain Expertise + AI. The next generation of billion-dollar companies will be built by founders who can apply AI to specific, overlooked business processes, creating hyper-efficient, customized SaaS solutions.
Stop Regulating Ghosts. Policy should target concrete, illegal uses of AI under existing laws, not hypothetical future harms that require licensing regimes and kill startups before they can compete.
Compliance is a Competitive Moat. Regulations designed for trillion-dollar companies are a death sentence for startups. A 50-state patchwork of rules would be the final nail in the coffin for a competitive AI ecosystem.
Innovation Needs a Political War Chest. The pro-innovation camp has been outmaneuvered by well-organized "safetyism" advocates. Building political gravity through organized efforts like PACs is now essential to ensure America wins the AI race.
**The Agent is the Moat.** Ridges’ success with cheaper models demonstrates that the true differentiator in AI coding is the agent architecture, not just the underlying LLM. This focus on efficiency creates a sustainable business model where competitors burn cash.
**Alpha-to-Equity Creates a Capital Bridge.** This model directly ties the token's value to profit-sharing equity, creating an arbitrage loop for crypto and traditional funds. It offers a powerful alternative to typical tokenomics by capturing the value of the underlying business.
**The Future of Software is Supervisory.** The ultimate goal is not just a better coding autocomplete, but a tool that elevates developers and product managers to supervisors of AI engineering teams, fundamentally changing how software is created.
Distribution is the New Kingmaker. Protocols with significant user bases and transaction volume (like Hyperliquid) now have the leverage to command value from stablecoin issuers and other service providers, not the other way around.
The Stablecoin Revenue Model is Broken. The era of stablecoin issuers keeping 100% of the yield from reserves is over. Expect a race to the bottom on revenue sharing, forcing issuers to innovate on product rather than just collecting yield.
The Crypto IPO Window is Wide Open. With Figure’s successful public offering and Gemini’s upcoming listing, public markets are showing a strong appetite for crypto-native businesses, likely triggering a wave of IPOs from companies like Kraken, BitGo, and others.
**Consolidate or Compete.** Sub-subnets allow teams to build diversified businesses under a single token, while deregistration means underperforming projects will be pruned. The message is clear: innovate and perform, or be replaced.
**Investment Thesis Evolves.** Subnet tokens are no longer "eternal." Deregistration fundamentally changes the risk profile, making active development and market traction paramount for long-term viability.
**Governance is Coming.** The network is on a clear path to decentralization. The planned shift to Proof-of-Stake and a more democratic governance structure will steadily transfer power to subnet owners and stakers, making community participation more critical than ever.
Global liquidity is the ultimate macro signal. As long as the global liquidity chart goes up and to the right, the crypto bull market has the fuel it needs to continue its run.
Ethereum isn't losing; it's quietly winning the RWA war. With 93% market share, Ethereum has become the de facto settlement layer for tokenized real-world assets, a lead that continues to grow as institutions like Fidelity build directly on its L1.
The new blockchain business model is asset management. Chains like Hyperliquid and Mega ETH are pioneering a shift away from relying solely on blockspace fees. By integrating native stablecoins, they are capturing a percentage of the yield from assets on-chain, effectively turning the protocol itself into a revenue-generating asset manager.
LSTs Are a Distribution Play: For protocols, launching an LST is less about staking yield and more about attracting SOL to gain a strategic advantage in securing blockspace and landing transactions.
Infrastructure Follows the User: Sanctum's pivot to transaction services was not a top-down mandate but a direct response to the needs of its largest partners, proving that the most durable infrastructure is built by solving the immediate, pressing problems of your customers.
Aggregation Is King: Just as Jupiter won by aggregating DEXs for users, Sanctum’s Gateway aims to win by aggregating fragmented transaction delivery networks for developers, creating a simpler and more efficient experience.
Patience is Your Superpower. This cycle rewards thesis-driven investing over hyperactive trading. Identify assets with strong value, momentum, and fundamentals, and give them time to play out.
Bet on the On-Chain Casino. The gambling economy is real, profitable, and growing. Look for platforms that facilitate high-asymmetry games (memecoins, raffles) as they capture a powerful cultural trend.
Find Alpha in the Illiquid. The next frontier is tokenizing real-world value. Platforms creating liquid markets for previously stuck assets—from collectibles to crime—are building foundational infrastructure for a much larger on-chain world.
Revenue Accrual is King. Hyperliquid's model of directing nearly all top-line revenue to token buybacks creates an aggressive and constant bid for the HYPE token, a feature most crypto projects can only dream of.
Product-First Beats VC-First. Its explosive growth comes from building a superior product that attracted a loyal user base first, then leveraging that traction to build an L1 ecosystem—a stark contrast to the typical VC-funded playbook.
A Bet on the Middle Ground. Investing in HYPE is a bet that CEX-level performance and on-chain transparency can outweigh significant centralization and regulatory risks. It’s a category-defining play that sits squarely between DeFi and CeFi.