MBE

MxmBoxcEus Token 價格 
MBE

NT$0.2019  

2.08% (1天)

圖表:MxmBoxcEus Token 到 TWD

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MxmBoxcEus Token 統計
市值
 

0.00%

NT$2,019,280
#9330
交易量(24小時)
 

0.00%

NT$0
#9330
交易量/市值 (24 小時)
 
0.00%
自行通報的流通供給量
 
10,000,000 MBE
100.00%
總供給量
 
10,000,000 MBE
最大供給量
 
10,000,000 MBE
完全稀釋後市值
 
NT$2,019,280
轉換器:MBE 到 TWD
MBE
TWD
價格表現
24小時 
最低價
NT$0.1949
最高價
NT$0.2062
歷史高點
Dec 07, 2022 (a year ago)
NT$6.18
-96.73%
歷史低點
Sep 19, 2023 (7 months ago)
NT$0.13
+55.31%
檢視過往資料
人氣
在觀察名單內320x
8174th / 9.9K
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MxmBoxcEus Token 市場

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MxmBoxcEus Token 則新聞

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

關於MxmBoxcEus Token

MBE-Ultimate final blockchain (MBE chain) is decentralized, efficient and energy-saving public chain. It is compatible with smart contracts and supports high performance transactions. MBE-Ultimata's native token is MBE, which uses the MPoS consensus mechanism. MBE-Ultimata will continue to improve the efficiency of BSC through Layer2, which will complement and empower the BSC ecosystem. MBE Metaverse ecosystem mainly consists of four segments: NFT, Gamefi, DeFi, Web3, etc. On the basis of the four segments, a new LP pledge mining operation model is established, in which players can acquire NFT through blind boxes, and the acquired NFT can be traded through the DeFi system, and players can use MBE's Web3 social scene to create the Meta space where their characters are located. MBE is at the forefront of the DeFi space by creating a new DeFi financial model with the introduction of "LP Centralized Liquidity", an approach that allows LPs to provide liquidity in a specific price range, rather than having to accept liquidity across the entire price range (0-X) as other decentralized trading models do. "Concentrated LP liquidity" amplifies the gains and impermanent losses of LPs, making this a new and more efficient LP model.