Bitcoin Market Temperature - Ever wondered if BTC is running too hot or freezing cold?



Here's a composite metric that cuts through the noise. It blends three powerful indicators into one reading:

• MVRV Z-Score (40% weight)
• RVT ratio (30% weight)
• NUPL (30% weight)

What does it tell you? Simple - whether the market's overbought (crazy hot) or oversold (ice cold).

Think of it as your market thermometer. No gut feelings, just data-driven temperature checks that help you spot extremes before the crowd does.
BTC2.76%
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SelfCustodyIssuesvip
· 2025-11-29 16:06
Another new indicator has come out, this time it's about mixing three things together... To be honest, I still trust this set of on-chain data more than those analyses that rely on mere talk.
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MetaNomadvip
· 2025-11-29 05:49
It's this set of combo punches again, MVRV paired with RVT and plus NUPL. Sounds good, but does anyone really use this to buy the dip and escape the trap?
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WhaleInTrainingvip
· 2025-11-26 18:03
I have tried the weighted combination of these three indicators before, and to be honest, the weight of RVT still feels a bit low.
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BlockchainNewbievip
· 2025-11-26 18:02
It's this trap of combination punches again. Can the market temperature really be calculated by putting together the three indicators: MVRV, RVT, and NUPL? Sounds quite mystical, but the key is whether you can buy at the bottom and sell at the top.
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failed_dev_successful_apevip
· 2025-11-26 17:44
It's the same old combination again, mixing the three indicators MVRV, RVT, and NUPL together. It sounds sophisticated, but it's just a different way of selling a thermometer. The key still lies in whether you believe the data's narrative.
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