Verification Over Creation: A proof that can be widely verified, even if computer-generated, holds more democratic value than a human proof understood by only a few elites.
Humans Ask, AI Answers: The primary role for mathematicians in an AI-augmented world is to pose the right questions and conjectures, leaving the computational heavy lifting to their AI assistants.
The Greatest Risk is Us: The biggest threat isn't rogue AI but our own tendency to over-hype and blindly trust flawed tools, leading to the spread of misinformation disguised as mathematical fact.
LLMs are Navigators, Not Discoverers. They are masters of interpolation within their training data but are architecturally bound from making the intuitive leaps required for true scientific breakthroughs. Don’t expect a Transformer to produce the next theory of relativity.
The Innovation Plateau is Real. Simply throwing more data and compute at current architectures will only "smoothen out" existing knowledge manifolds, not create new ones. This path leads to incremental gains, like an iPhone getting a better camera, not a paradigm shift.
Entropy is the Key to Control. For developers, effective prompting is entropy management. By crafting specific, context-rich prompts, you reduce the model's prediction entropy, forcing it onto a confident, low-hallucination path to a reliable output.
Trust is the New Commodity. Targon’s use of TEEs shifts security from a software promise to a cryptographic hardware guarantee. This verifiable privacy is the key to unlocking enterprise adoption for decentralized AI.
The Crucible Creates Diamonds. Bittensor's adversarial environment forced Targon to build an unexploitable system. This has turned a historical pain point ("PTSD from miners") into a core competitive advantage, resulting in a uniquely resilient platform.
From Backroom Deals to a Liquid Market. By launching a self-serve platform with a transparent order book, Targon is attacking the compute market's core inefficiency: opaque pricing. Their vision extends to compute derivatives, aiming to turn compute power into a globally tradable asset.
The Two-Headed Bull. The market is driven by a flight to hard assets like gold due to fiscal decay and a speculative mania in AI stocks. Smart money isn't choosing—it's positioned in both.
Bitcoin's Generational Test. Bitcoin's future as "digital gold" hinges on a generational handoff. For now, its price action tells a different story: it trades like a tech stock, not a safe-haven asset.
Asia is the Epicenter of Froth. While the Western crypto market grinds methodically higher, the real heat is in the East. BNB’s explosive rally and the cash-flush atmosphere at conferences show where the speculative capital is flowing.
A Perfect Storm for a Melt-Up: A potent cocktail of future Fed cuts, massive fiscal deficits, and the AI capex boom is setting the stage for a parabolic, blow-off top market rally.
The Debasement Trade is On: Japan's currency policy is supercharging the US dollar and forcing a global reckoning with fiat dilution, driving a secular flow of capital into hard assets.
Crypto is Now a Macro Asset: Forget the four-year halving cycle. Crypto's fate is tied to global liquidity, and ETH is exhibiting strong supply-side dynamics that could fuel significant outperformance.
AI Is a Pattern-Matcher, Not a Logician. Current models excel at synthesizing existing knowledge but fail at the novel, multi-step creative reasoning required for frontier mathematics. They lack the fundamental logic to build sound proofs from scratch.
The Mathematician Becomes the Editor. As AI automates computation and literature reviews, the primary human role will shift to strategic oversight: identifying valuable problems, validating AI-generated work, and setting the research agenda for the entire field.
Benchmark or Be Disrupted. The math community must lead the charge in creating and assessing rigorous AI benchmarks. Failure to do so risks letting non-experts define success, potentially devaluing the discipline based on superficial AI achievements.
An AGI Moonshot, Not an LLM Factory: Hone’s singular focus is solving the ARC-AGI benchmark to achieve true generalization. This is a high-risk, high-reward play for a step-function leap in AI, not just another incremental improvement.
Architecture Over Data: The strategy is to out-innovate, not out-collect. By exploring novel architectures like JEPA, Hone aims to create models that think more efficiently and don't depend on ever-expanding datasets, sidestepping the data moat of centralized giants.
The Business Model is the Breakthrough: There is no immediate revenue. The investment thesis is straightforward: solve AGI, earn the ultimate bragging rights, and then monetize the world’s first truly intelligent model through distribution partners like Targon.
Vertical Integration is Non-Negotiable: To build AGI, the old model of horizontal specialization is dead. Owning the stack—from research to infrastructure to product—is the only way to move fast enough.
Ship to Socialize: Don't build AGI in a lab and drop it on an unsuspecting world. Products like Sora are deliberate steps to co-evolve technology with society, managing impact through iterative, public-facing releases.
The Real Turing Test is Science: The true measure of AI's power is its ability to make novel scientific discoveries. Altman believes GPT-5 is already approaching this milestone, which will have a more profound impact on humanity than any chatbot.
Stop Fearing Parameters. When in doubt, go bigger. Scale is not just about capacity; it’s a tool for inducing a powerful simplicity bias that improves generalization and paradoxically reduces overfitting.
Trade Hard Constraints for Soft Biases. Instead of rigidly constraining your model architecture, use gentle encouragements. An expressive model with a soft simplicity bias will find the simple solution if the data supports it, while retaining the flexibility to capture true complexity.
Think Like a Bayesian. Even if you don't run complex MCMC, adopt the core principle of marginalization. Techniques like ensembling or stochastic weight averaging approximate the benefits of considering multiple solutions, leading to more robust and generalizable models.
The transition from utilization-based pools to intent-based matching engines is the next evolution of DeFi. This movement mirrors the move from AMMs to order books in spot trading.
Monitor the rollout of Kamino’s fixed-rate products to lock in borrowing costs for geared positions. This move protects against the volatility of variable rate markets during high-activity periods.
Kamino is positioning itself as the back-end for the next generation of fintech. If they successfully bridge off-chain collateral, the protocol moves from a crypto-native tool to a global financial utility.
The Macro Shift: Liquidity is returning as the Treasury General Account drains, but capital is becoming more selective. The "rising tide" no longer lifts all boats; it only lifts those with clear value capture.
The Tactical Edge: Prioritize protocols with intrinsic cash flow or those partnering with legacy giants like FIS. Move away from "lottery ticket" tokens that lack a clear revenue mechanism.
The Bottom Line: 2026 will be the year of the "Quality Filter." Investors who survive the current wash-out will find value in the consolidation of the super apps and the institutionalization of on-chain credit.
The transition from Crypto as a Cult to Crypto as a Rail means the next winners will look like boring fintech giants rather than flashy token launches.
Focus on infrastructure projects solving for fast finality and interoperability. These are the toll booths for the coming wave of corporate tokenization.
The next 12 months will be defined by the Corpo Chain explosion. If you are not building for speed and performance, you are building for a niche that is shrinking.