Futures
Hundreds of contracts settled in USDT or BTC
TradFi
Gold
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Options
Hot
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Unified Account
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Demo Trading
Futures Kickoff
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Futures Events
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Demo Trading
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Launch
CandyDrop
Collect candies to earn airdrops
Launchpool
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HODLer Airdrop
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Launchpad
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Alpha Points
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Futures Points
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Investment
Simple Earn
Earn interests with idle tokens
Auto-Invest
Auto-invest on a regular basis
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Soft Staking
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Crypto Loan
0 Fees
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Lending Center
One-stop lending hub
VIP Wealth Hub
Customized wealth management empowers your assets growth
Private Wealth Management
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Quant Fund
Top asset management team helps you profit without hassle
Staking
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Smart Leverage
New
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GUSD Minting
Use USDT/USDC to mint GUSD for treasury-level yields
British lawmakers are stepping up pressure for mandatory AI stress testing across the financial sector. The push reflects growing concerns about artificial intelligence integration in banking systems and capital markets without adequate risk assessments. Financial institutions could face new requirements to simulate how AI-driven trading algorithms, predictive models, and automated systems perform under extreme market conditions. This regulatory move mirrors broader efforts to prevent systemic failures, a concern particularly relevant as financial infrastructure—both traditional and blockchain-based—becomes increasingly dependent on algorithmic decision-making. The emphasis on rigorous testing highlights how regulators worldwide are trying to catch up with rapid AI deployment, ensuring markets remain stable even when machine learning models encounter unprecedented scenarios.