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The AI-Liquidity Paradox
Abstract:Artificial intelligence has become embedded in FX execution — from market-making to predictive hedging. But as adoption accelerates, an unexpected vulnerability is emerging: machines converge faster t
Artificial intelligence has become embedded in FX execution — from market-making to predictive hedging. But as adoption accelerates, an unexpected vulnerability is emerging: machines converge faster than humans ever could.
When multiple AI systems identify the same signals, they position similarly, often with uncanny timing. This is hailed as “smart consensus” — until the environment breaks. A supply-chain delay invalidates a pricing assumption. A geopolitical shock disrupts hedging flows. A sudden loss of confidence in delivery timelines causes corporate demand to flip direction overnight.
Then comes the cascade.
Machines unwind together.
Liquidity evaporates.
Volatility explodes.
There is no malice, no panic — just pure optimization in action. Each model withdraws liquidity to avoid adverse selection. The order book becomes a vacuum. The price that was once efficient becomes a cliff.
This is the AI-liquidity paradox: automation reduces uncertainty in normal times but magnifies it during stress.
The issue is not intelligence — it is homogeneity. AI models are trained on similar datasets, taught to identify similar structures, and rewarded for similar predictive behaviors. So they buy and sell the same things at the same time for the same reasons.
If the market of 2025 is defined by irregular flows and fragmented logistics, then the machines are often aligned against a reality they cannot measure.
Human traders, however, can interpret what algorithms cannot:
Why a commodity shipment was delayed.
Why an importer suddenly demanded early settlement.
Why a currency should move even without a price signal yet.
The future edge isn't rejecting AI — it's introducing creative divergence into its decision-making. The models that survive will be the ones trained to incorporate the physical world — supply risks, geopolitical intent, logistics fragility — elements that do not appear in market data until it is too late.
Liquidity doesn't disappear on its own.
It disappears because the machines leave first.
In the age of AI markets, the winning strategy is not copying intelligence — it is differentiating it.
Disclaimer:
The views in this article only represent the author's personal views, and do not constitute investment advice on this platform. This platform does not guarantee the accuracy, completeness and timeliness of the information in the article, and will not be liable for any loss caused by the use of or reliance on the information in the article.
