新开始:MOBOX重振回购与燃烧计划

Odaily星球日报Опубликовано 2023-11-01Обновлено 2023-11-01

Введение

全新的回购与燃烧计划表明了 MOBOX 对不断调整、发展和提升体验的坚定承诺。

新开始:MOBOX重振回购与燃烧计划

区块链游戏领域不断演变,项目们尤其需要适应性和创新性。自 MOBOX 成立以来,团队始终坚定地致力于回馈社区的持续支持,以及辛勤培育繁荣的 Web3 游戏生态系统。

截至目前,共有 46, 925, 433 枚 $MBOX 代币通过 MOBOX 的 "自动回购与燃烧" 机制被销毁。这个机制是 MOBOX 运作的基础,旨在促进 MOBOX 生态系统的增长和活力。然而,在对历史数据进行仔细评估和严格分析之后,团队越来越清晰地认识到现有的 "自动回购与燃烧" 机制不再符合 MOBOX 发展的愿景和目标。

为了实现更加动态和即时的策略,正如此前所宣布的,MOBOX 推出了全新升级的回购与燃烧计划。这一重大变革将带来以下关键改进:

1. 多平台整合:新计划将在 Binance(中心化交易所)和 PancakeSwap(去中心化交易所)两个平台上实施,以灵活适应不断变化的市场状况,确保资产价值的可持续,充分调配可用资源。

2. 动态分配:回购资金的分配策略将根据两个平台的流动性深度来确定,通常会按照 Binance 与 Pancake 约 6: 1 的比例进行分配,旨在确保最佳的平衡和效益。

3. 前所未有的透明公开:在管理回购基金方面,设定了最高的透明度标准。

   -  实时展示链下(Binance)和链上的回购资金的余额,可以通过 MOBOX 官方网站进行查询。

   -  MOBOX 与 Binance 账户之间的实时 API 连接,确保 Binance.com 上回购余额的实时准确性,这使得 MOBOX 社区能在任何时候独立验证余额。

   -  每 6 个月,MOBOX 将执行一份详细的 Binance 余额提现报表,重申 MOBOX 对透明度的承诺以及回购资金的安全性。

社区一直是 MOBOX 旅程的核心,在 MOBOX 开启新篇章之际,团队向社区的信任致以感激。全新的回购与燃烧计划表明了 MOBOX 对不断调整、发展和提升体验的坚定承诺。

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