FF 高开低走背后:DWF 的操作是否「体面」?

Foresight NewsPublicado em 2025-09-30Última atualização em 2025-09-30

Resumo

积分黑箱,全员锁仓,YT 被套;空投数为预期 1/4,仅 0.4% 代币被申领。

撰文:Alex Liu,Foresight News

DeFi 精算师道高一尺,DWF Labs 「魔高一丈」?

9 月 29 日晚,Falcon Finance 代币 FF 正式上线,登陆多家主流交易所。作为做市商 DWF 孵化的项目,FF 上线后的价格走势呈「高开低走」趋势,这是为何?

高位开盘

按 FF 在币安 Alpha 上 0.6 美元的开盘价计算,其 FDV(完全流通市值)为 60 亿美元。从项目基本面看,Falcon Finance 的合成美元稳定币 USDf 的供应量为 19 亿美元,而赛道龙头项目 Ethena 的稳定币供应量超 160 亿,ENA 代币的 FDV 为 84 亿美元。

比较来看,FF 相对高估。作为参考,盘前市场此前对 FF 的定价为 0.27 美元左右。

FF 为何以如此高的价格开盘?

抛压何来?

代币价格高开低走,说明存在抛压。如此高的开盘价,Falcon Finance 在代币经济学中声称有 7% 用于积分空投,是空投申领者迫不及待卖出代币导致价格下降吗?

事实上,Falcon Finance 在空投申领开放前,一直没有开放代币数量查询 ,等到申领在延迟约一小时后终于开放,参与者们发现自己能申领的代币数量不到根据 7% 空投比例测算结果的 1/4。官方对此没有任何解释。

此外,所有参与者都需要锁仓代币。若选择领取 50% 代币,则另外 50% 代币将被没收。选择领取 30% 代币,另外 70% 代币需要锁仓 1 个月后分 6 个月线性释放。同时,积分在 500 万(换算为代币约 100 美元)以下无资格申领。

以上种种情况让 Falcon 积分活动的参与者可卖出的空投只有预期的 1/10。据链上数据,积分部分实际被领取的空投代币数量不足 4000 万枚,约代币供应量的 0.4%。

官方公布代币的初始流通量为 23.4%。Buidlpad 公售与币安空投一共不足代币供应量 5%,代币的抛压究竟由何而来引人深思。

透明度反思

由于 Falcon Finance 宣称第一季积分空投 7% 实际仅空投不足 2%,透明度问题造成用户对其第二季空投信任流失,杠杆获得积分的 Pendle YT 短时间内由 15% 跌至 12% (由于具有底层收益,意味着对积分的预期估值大幅下降),让提前布局 Falcon Finance 第二季的用户纷纷被套。

无论是散户还是大户,参与稳定币项目通常都追求规则透明、收益可预测。Falcon Finance 若不对此做出回应,恐怕会流失相当多的用户,以及更难弥合的信任裂缝。

和 ENA 的比较

作为对照组,Ethena 的积分活动更加透明。

Ethena 第一季空投了 5% 的代币总量,目前第四季将空投 3.5%,Falcon 第一季为不足 2%。Ethena 积分排行前 2000 名的大户需要锁仓一半,散户全部解锁。而 Falcon 全员强制锁仓。

Ethena 每天会公布当日新增积分数、总积分数。由于规则和数据的透明,每一季的空投收益在发币前都能算清楚。Falcon 积分黑箱,虽然也吸引了大量 DeFi 玩家精算,但无奈最后项目方未按规则出牌。

以省心、公平的角度,大户稳定币理财,还是推荐参与 Ethena。

声明:本文作者参与了 FF 代币申领,也参与 Ethena 生态,部分内容为个人真实经历

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Como comprar FF

Bem-vindo à HTX.com!Tornámos a compra de Falcon Finance (FF) simples e conveniente.Segue o nosso guia passo a passo para iniciar a tua jornada no mundo das criptos.Passo 1: cria a tua conta HTXUtiliza o teu e-mail ou número de telefone para te inscreveres numa conta gratuita na HTX.Desfruta de um processo de inscrição sem complicações e desbloqueia todas as funcionalidades.Obter a minha contaPasso 2: vai para Comprar Cripto e escolhe o teu método de pagamentoCartão de crédito/débito: usa o teu visa ou mastercard para comprar Falcon Finance (FF) instantaneamente.Saldo: usa os fundos da tua conta HTX para transacionar sem problemas.Terceiros: adicionamos métodos de pagamento populares, como Google Pay e Apple Pay, para aumentar a conveniência.P2P: transaciona diretamente com outros utilizadores na HTX.Mercado de balcão (OTC): oferecemos serviços personalizados e taxas de câmbio competitivas para os traders.Passo 3: armazena teu Falcon Finance (FF)Depois de comprar o teu Falcon Finance (FF), armazena-o na tua conta HTX.Alternativamente, podes enviá-lo para outro lugar através de transferência blockchain ou usá-lo para transacionar outras criptomoedas.Passo 4: transaciona Falcon Finance (FF)Transaciona facilmente Falcon Finance (FF) no mercado à vista da HTX.Acede simplesmente à tua conta, seleciona o teu par de trading, executa as tuas transações e monitoriza em tempo real.Oferecemos uma experiência de fácil utilização tanto para principiantes como para traders experientes.

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Como comprar FF

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