积分制协议太多,难以定价和抉择?Whales Market这样解决

Odaily星球日报Published on 2024-02-06Last updated on 2024-02-06

Abstract

代币市盈率低,对应市场快速扩张,Whales Market前景可期。

原创 | Odaily星球日报

作者 | 南枳

积分制协议太多,难以定价和抉择?Whales Market这样解决

通常而言,热门大体量项目空投,在宣布空投和实际发放之间往往间隔较长一段时间,例如近期的 TIA、JUP 和 DYM。为提前锁定利润或赚取定价差,许多用户会选择提前进行 OTC 交易。但通过个人或小型组织构建的场外平台交易,用户往往面临着安全性问题——OTC 交易通常由买卖双方向中间人双押,资金在正式成交之前都存放于中间人处,存在着中间人跑路风险。

Whales Market 通过推出一系列交易平台来解决这个问题,支持热门代币上线交易所前的盘前交易,以及 Solana 生态代币 OTC 交易。买卖双方执行链上点对点交易,保证金锁定在智能合约中,仅在交易成功结算后释放给各方。这简化了交易过程,还极大地降低了因欺诈行为而造成的财务损失风险。

另一方面,在 Blast 证明了积分模式能够引入大量的 TVL 之后,积分制开始大行其道。空投的热门板块,如 Restaking、Solana 生态、BTC L2生态等,大部分项目都引入了积分制度,但积分如何定价,积分制协议如何选择,是多数用户的痛点,并且定价问题也同样适用于未上线交易所的代币。另一方面,距离这些项目预期的空投日期仍有较长距离,对此 Whale Market 推出了积分交易市场,同样以挂单+点对点交易的形式进行,提供定价场所,同时满足用户的提前锁定利润需求。

各交易市场机制和费用解析

盘前市场

Whales Market 的盘前市场(Pre Market)允许用户交易即将上线交易所的热门代币,如 ALT、JUP、MANTA 都曾上线过该市场,目前可以交易 DYM 和 AEVO。

买卖流程

用户能够主动挂单或者承接要约(Offer)。主动挂单中,用户设置购买或出售的代币、价格、数量以及是否可以部分成交(Partial Fill),然后等待对手方接受要约。若非部分成交而是完全成交,意味着只能有一个对手方直接将整张挂单吃下。

部分成交情况下,挂单方可以选择提前结束单子,按照已成交部分进行后续交易,未成交部分的保证金则相应退回。

积分制协议太多,难以定价和抉择?Whales Market这样解决

结算机制

Whale Market 的机制要求,在代币 TGE 后的 24 小时内,代币卖方必须进行成交单结算,完成结算后退还保证金。若卖家拒绝兑付,则将扣除其保证金并支付给买家。

积分制协议太多,难以定价和抉择?Whales Market这样解决

交易费用

当订单成功结算或者卖家跑路时,将按照订单金额收取 2.5% 的交易费用。

当用户提前取消挂单时,将对未成交部分收取 0.5% 的费用。

OTC 市场

链上代币尤其是 Meme 币,添加的 LP 池通常不会太大,与市值存在数十倍的差距,大额订单若直接通过 DEX 交易,将产生较大滑点。

对此,Whales Market 推出了 OTC 市场,挑选了一批 LP 池大于 30 万美元的代币,允许用户通过挂单形式进行点对点交易,避免流动性不足的滑点问题。

在 OTC 市场中,平台收取 0.1% 的挂单费用和 0.1% 的交易费用。

积分制协议太多,难以定价和抉择?Whales Market这样解决

积分市场

基于前文所述的积分交易需求,Whales Market 推出了积分交易市场,交易形式与盘前市场、OTC 市场一致。目前已上线了 Magic Eden、HyperLiquid、EigenLayer、friend.tech 等四个协议的积分交易。根据官方公告,后续将上线的协议还包括 Solana 生态的 Drift、MarginFi、Kamino,以及 Blast。

积分市场同样通过挂单交易进行,市场会列出买卖挂单的盘口均价,供用户参考和定价。虽有已成交单列表,但尚未提供进一步的价格分析工具。

积分制协议太多,难以定价和抉择?Whales Market这样解决

费用方面积分市场与盘前市场一致,当订单成功结算或者卖家跑路时,将按照订单金额收取 2.5% 的交易费用。当用户提前取消挂单时,将对未成交部分收取 0.5% 的费用。

但积分市场存在一个潜在问题,对于未上线代币而言,是明确的 1: 1 兑付。但积分与项目实际代币的关系不一定成线性关系,例如用户购买了某项目的 100 积分,但实际空投时项目方设定低于 500 积分均不空投,这种情况下应由谁承担损失,并没有定论和先例。

项目代币解析

Whales Market 的代币总量共 1 亿枚,其中:

  • 65% 用于激励,四年线性释放,由 DAO 进行代币治理,确保收入大于通胀速度;

  • 7.5% 用于提供流动性,其中 2.5% 预留给 CEX 上市;

  • 团队占比 9.5% ,锁定 9 个月后,线性释放 36 个月;

  • 其余部分合计 18% 。

积分制协议太多,难以定价和抉择?Whales Market这样解决

交易费用分发

各个市场的每笔交易都会收取费用,费用以如下比例进行分发:

  • 60% 分配给 WHALES 代币质押人;

  • 20% 用于支付持续性的开发费用;

  • 10 % 用于回购和销毁代币;

  • 10 % 分配给 LOOT 代币持有者和 xLOOT 持有者。

数据成绩和项目前景

代币方面,据 Dune 统计数据显示,已有超 1000 万枚 WHALES 进行了质押,占流通量的 62.7% 。而当前 WHALES 已达 3 USDT,一个月上涨约 100 倍,展现了投资者对 WHALES 的长期信心。

协议方面,Whales Market 总交易量达 3330 万美元,Solana 上已捕获费用 83.7 万美元,以太坊捕获费用 4.6 万美元,相较代币当前的 4880 万美元市值,量级上相差不大,考虑到代币仅上线一个多月,盈利能力较为可观。

据 Whales Market 所披露路线图,后续将上线 Runes 市场和白名单市场,并正在进行 CEX 上市准备。考虑到积分市场还将持续扩大,Whales Market 前景可期。

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