A 30% error rate sounds fine until you realize AI is making calls on your health or money. That's where things get risky. Some projects are tackling this head-on through multi-model verification—essentially cross-checking AI decisions across different systems to catch errors before they happen. The research shows you can get that error rate down dramatically, pushing toward near-zero failures. That changes everything. When AI handles high-stakes decisions, you don't want to gamble. With better verification mechanisms in place, you can actually trust the system to do what it's supposed to do.
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JustHodlIt
· 01-11 19:51
30% error rate? That's like risking your life, especially when it involves wallets and your body.
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fren.eth
· 01-11 19:49
30% error rate? No way... When it involves my wallet and my body, I don't trust such numbers. I must cross-verify with multiple models over and over again.
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ForeverBuyingDips
· 01-11 19:49
30% error rate? Playing with health and money-related matters like this is pure gambler's mentality.
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RektButAlive
· 01-11 19:43
A 30% error rate? In the medical and financial fields, it could directly lead to bankruptcy. This isn't gambling; it's suicide.
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UnruggableChad
· 01-11 19:41
A 30% error rate involving my money and health is no small matter. Multi-model verification is indeed reliable.
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LiquidationOracle
· 01-11 19:23
30% error rate? When it involves money and lives, we can't take risks. Multiple verifications are a must.
A 30% error rate sounds fine until you realize AI is making calls on your health or money. That's where things get risky. Some projects are tackling this head-on through multi-model verification—essentially cross-checking AI decisions across different systems to catch errors before they happen. The research shows you can get that error rate down dramatically, pushing toward near-zero failures. That changes everything. When AI handles high-stakes decisions, you don't want to gamble. With better verification mechanisms in place, you can actually trust the system to do what it's supposed to do.