盘点即将IDO的3个项目:Web3War、AOFverse及Meson

Odaily星球日报Publicado a 2024-01-30Actualizado a 2024-01-30

Resumen

涵盖游戏与DePIN赛道。

原创 | Odaily星球日报

作者 | Asher

编辑 | 秦晓峰

盘点即将IDO的3个项目:Web3War、AOFverse及Meson

Launchpad 打新收益不错,热度居高不下,Odaily星球日报整理了最近热度较高且没有发售的 3 个 IDO 项目。温馨提示,市场波动巨大,投资前务必进行充分的研究。

Web3War:第一人称射击游戏

盘点即将IDO的3个项目:Web3War、AOFverse及Meson

Web3 War 是一款免费的第一人称射击游戏,由游戏开发商 Roll1ng Thund3rz 打造,并由 OG Zilliqa 孵化。迄今为止,已注册超过 65, 000 个玩家帐户。游戏内共有 44 种不同的武器以及每种武器的特定附件,玩家只需玩游戏即可解锁和定制他们的武器库。越熟练的玩家自然会以更快的速度前进,获得更广泛的武器和定制,其游戏代币为 FPS。

本次 FPS 进行 IDO 的信息如下:

  • 代币销售价格: 0.0533 美元;

  • 代币初始市值: 900, 000 美元。

关于 FPS 代币的经济模型如下:

  • 公开发售轮:占总供应量的 25% ,开盘解锁 20% ,其余代币每 3 个月释放 20% ;

  • 市场营销:占总供应量的 10% ,开盘不立即解锁,开盘后第一年每 3 个月释放 10% ,之后每 3 个月释放 12.5% ;

  • 团队:占总供应量的 15% ,开盘不立即解锁,开盘 2 年后释放 25% ,之后每 3 个月释放 25% ;

  • 流动性:占总供应量的 15% ,开盘解锁 25% ,其余代币每个月释放 5% ;

  • 游戏内奖励:占总供应量的 30% ,开盘解锁 5% ,其余代币前 9 个月每 3 个月释放 5% ,之后每 3 个月释放 10% ;

  • 团队与顾问:占总供应量的 5% ,开盘解锁 5% ,其余代币锁定 12 个月后每 3 个月释放 12.5% 。

参与 IDO 链接:https://app.daomaker.com/project/Web3 War

官方推特:https://twitter.com/web3 war_game

官网:https://www.w3w.game/

AOFverse:Web3手游

盘点即将IDO的3个项目:Web3War、AOFverse及Meson

AOFverse 是手游工作室制作的一款元宇宙游戏。旨在打造趣味十足、奖励丰富的全新游戏世界,让玩家在欢乐互动中获得真正的资产所有权,其代币为 AFG。

本次 AFG 进行 IDO 的平台为 Bybit,具体信息如下:

  • 代币销售价格: 0.035 美元;

  • 总额度: 30, 000 美元;

  • 代币兑换时间: 1 月 30 日 10: 15 (UTC) —— 1 月 31 日 10: 00 (UTC)。

值得注意的是,AFG 除了在 Bybit 进行 IDO 外,开盘后同时上线 Kucoin。

参与 IDO 网站:https://www.bybit.com/zh-MY/web3/ido/detail/30029 

官方推特:https://twitter.com/AOFverse

官网:https://aofverse.com/

Meson:DePIN领域又一新星

Meson Network 专注于 DePIN+AI,旨在打造一个由人授权的去中心化物理网络,Meson 网络“DePIN”节点采用用户友好技术开发,可容纳各种硬件,如个人笔记本电脑,服务器,物联网设备等等。利用这些网络节点的闲置带宽,Meson 建立了一个经济循环,将闲置资源与业务需求连接起来。其愿景是成为去中心化存储、计算乃至蓬勃发展的 Web3 Dapp 生态系统的基石。

Meson 原生代币名为 MSN,代币销售将于北京时间 2 月 9 日凌晨 02: 00 进行,具体细则如下:

  • 数量: 2, 500, 000 枚 MSN 代币,占总供应量的 2.5% ;

  • 价格: 1.75 美元;

  • 锁定期: 2024 年 3 月 15 日左右解锁 1/6 ,剩余代币在 6 个月内每月解锁;

  • 初始购买限额:最低 50 美元,最高 3, 000 美元,仅限 USDT、USDC;

  • 购买资格: 在注册截止日期(北京时间 2 月 5 日 20: 00)之前,用户的 CoinList 钱包持有最低购买金额(50 USDT 或 USDC)资金。本次销售不对美国、中国、加拿大、韩国和某些其他司法管辖区的居民开放。

参与 IDO 网站:https://coinlist.co/meson?utm_source=meson&utm_medium=web&utm_campaign=Meson+Community+Sale

官方推特:https://twitter.com/NetworkMeson

官网:https://www.meson.network/

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