The Macro Shift: Insatiable AI demand meets the technical reality of rapidly depreciating model assets, pushing AI companies to prioritize infrastructure control and long-term capability scaling over short-term consumer-facing profitability.
The Tactical Edge: Invest in AI infrastructure plays (GPUs, energy, data centers) and companies building model-agnostic agentic systems, as these components offer more durable value than individual frontier models.
The Bottom Line: The market is underestimating the demand growth for increasingly capable AI models. Expect continued massive capex in compute, and position for a future where AI agents become indispensable, driving significant, sustained enterprise spend over the next 6-12 months.
AI's economic viability is shifting from model-specific gross margins to the long-term utility of persistent agents and the underlying compute infrastructure.
Invest in or build infrastructure plays (GPUs, energy, data centers) that support the insatiable demand for AI compute, recognizing that model software is a rapidly depreciating asset.
The market's recent "whiplash" on AI valuations misses the true demand growth and the strategic pivot towards infrastructure and long-running agents.
The AI industry is moving from a pure software-as-a-service model to a vertically integrated infrastructure play, where control over compute and power becomes the ultimate competitive advantage.
Invest in or build solutions that abstract away the underlying model, allowing for easy swapping between providers, while focusing on persistent agent memory and identity.
The market underestimates AI demand. Companies controlling infrastructure and delivering agents capable of sustained, high-value work will capture significant value over the next 6-12 months, even as model development costs remain high.
The AI industry is shifting from a pure software-like model to one where infrastructure ownership and continuous R&D are paramount.
Prioritize infrastructure investment: Given the GPU and energy constraints, securing or building proprietary compute infrastructure will be a decisive competitive advantage.
The next 6-12 months will see a continued capital expenditure arms race in AI infrastructure.
The AI industry is shifting from a software-like business model to one resembling capital-intensive infrastructure, where models are rapidly depreciating assets. This forces a focus on massive, continuous R&D and infrastructure buildout (GPUs, energy) to unlock future capabilities and markets, rather than immediate software-like margins.
Prioritize infrastructure investments. For builders, design systems with model agnosticism, allowing for easy swapping as models improve or become obsolete. For investors, evaluate AI companies not just on current gross margins, but on their ability to secure compute, attract top talent for R&D, and demonstrate a credible path to future market expansion through scale.
The next 6-12 months will see continued massive capital expenditure in AI infrastructure. Companies that can secure GPU supply and energy, while effectively managing the short lifespan of frontier models through continuous R&D, will hold a decisive competitive advantage. The market will increasingly reward long-term vision and infrastructure plays over short-term profitability.
If you look at how much they spent in R&D in the four months before they released GPT5, that quantity was likely larger than what they made in gross profits during the whole tenure of GPT5 and GPT5.2.
The models as a rapidly depreciating asset actually brings a little bit into focus of what might be the enduring asset... it seems to me that this part is infrastructure.
The market is always right... However, with that said, they didn't get the demand growth. They didn't get the way in which that demand is outstripping supply. They didn't get how much more we were going to demand as these models get better.
The AI industry is transitioning from a model-centric competition to an infrastructure and agent-centric one, where raw compute and persistent user experience dictate long-term value.
Prioritize investments in AI infrastructure providers and platforms that enable model agnosticism and agent memory.
Expect continued massive capital expenditure in AI infrastructure, a focus on enterprise solutions, and the rise of "sticky" AI agents that abstract away underlying model changes, shifting the competitive battleground.
The AI industry is moving from a software-like model, where products have long lifespans, to one where models are rapidly depreciating assets requiring continuous, heavy R&D investment.
Prioritize investments in AI infrastructure and agent orchestration layers that abstract away underlying models.
The market is underestimating the demand growth for increasingly capable AI models.
The Macro Shift: AI models are rapidly depreciating software assets, making the underlying compute and energy infrastructure the enduring value proposition.
The Tactical Edge: Prioritize building model-agnostic agentic workflows that retain memory and context, allowing for flexible model swapping and cost optimization.
The Bottom Line: The AI race is a capital-intensive marathon where infrastructure ownership and a long-term vision for capability expansion, not immediate model profitability, will determine market leadership over the next 6-12 months.
1. Major Hacks Undermine Trust: The Bybit hack exemplifies the vulnerabilities in crypto security and the sophisticated methods of state-affiliated hackers.
2. Insider Scandals Expose Systemic Flaws: The Libra scandal reveals deep-seated issues in meme coin launches, highlighting the need for greater transparency and regulation.
3. Regulatory Shifts Offer Hope: Positive moves by the SEC and the CFTC signal a more supportive regulatory landscape, encouraging legitimate crypto innovation.
1. ZK Technology is Transformative: Zero-Knowledge proofs are not only scalable and secure but are also finding essential applications in decentralized finance, particularly in proving exchange solvency without sacrificing performance.
2. Hashflow Leads with Innovation: By leveraging ZK, Hashflow is positioned as a frontrunner in creating high-performance, secure exchanges that offer a user-friendly experience, potentially setting a new standard for the industry.
3. Real-Time Proving is the Future: The advancement towards real-time proving will revolutionize cross-chain interactions and user experiences, making decentralized exchanges as fast and reliable as their centralized counterparts.
Heightened Fraud Risks: The $LIBRA scandal underscores the perpetual risk of manipulation in memecoin markets, urging investors to exercise extreme caution.
Evolving Airdrop Strategies: Airdrops are becoming more sophisticated, but misalignment between expectations and reality continues to challenge their effectiveness.
Regulatory Balance Needed: While the SEC’s efforts to curb fraud are crucial, the crypto industry must develop robust self-regulation to complement external oversight
Ethereum Outshines Solana: Ethereum’s superior decentralization and monetary properties make it a more reliable asset compared to Solana.
Decentralization is Crucial: The degree of decentralization directly impacts an asset’s stability and future predictability, influencing investor confidence.
Bitcoin’s Influence Remains Strong: Despite Ethereum’s strengths, Bitcoin’s dominance sets the benchmark for decentralized digital assets, shaping the competitive landscape for other cryptocurrencies.