FF 高开低走背后:DWF 的操作是否「体面」?

Foresight NewsОпубліковано о 2025-09-30Востаннє оновлено о 2025-09-30

Анотація

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

Трендові криптовалюти

Пов'язані матеріали

Zuckerberg's 'Mango' Image Generation Model Trails Only GPT Image 2, It Learned to Revise Prompts on Its Own

Meta's MSL has launched Muse Image, an advanced image generation model nicknamed "Mango," which ranks second globally in text-to-image benchmarks, closely trailing OpenAI's GPT Image 2. Its key innovation is agent-like behavior: it searches for factual information, writes code for charts, and, most notably, has developed self-correction abilities through reinforcement learning, allowing it to revise its own outputs without explicit programming. This shift emphasizes reasoning over immediate generation. Integrated with Meta's ecosystem, Mango connects with the Muse Spark language model for complex tasks and features a unique "@" function that can incorporate public Instagram photos into generated images—raising privacy concerns as it's enabled by default. The model is directly accessible in Meta AI, Instagram, and WhatsApp, leveraging Meta's vast user base for distribution rather than competing solely on image quality. Accompanying Mango is the preview of Muse Video, a video generation model with integrated audio, currently ranked third in its category. All Mango-generated images include an invisible, persistent watermark (Content Seal) for AI identification, alongside a public detection tool. While Mango advances "thinking" image models, its use of social data poses new ethical questions about consent and digital boundaries.

marsbit31 хв тому

Zuckerberg's 'Mango' Image Generation Model Trails Only GPT Image 2, It Learned to Revise Prompts on Its Own

marsbit31 хв тому

Weng Li's New Blog Proposes 'Self-Evolution Should Start from Harness', DeepSeek's Cui Tianyi Endorses with Repost

Lilian Weng, former OpenAI security VP and co-founder of Thinking Machines Lab, has published a new blog post titled "Harness Engineering for Self-Improvement," proposing a pragmatic path for AI self-evolution. She argues that Recursive Self-Improvement (RSI) may practically begin at the "Harness" layer—the external runtime system governing how models use tools, manage context, and execute tasks—rather than directly from the model rewriting its own weights. The blog outlines a progression from optimizing prompts (Context Engineering) to designing workflows, and ultimately to Self-Improving Harness systems. These systems can identify their own weaknesses, propose targeted, verifiable modifications to the harness code, and validate improvements. Works like Self-Harness and Darwin Gödel Machine (DGM) demonstrate significant performance gains on benchmarks like SWE-bench through such automated harness evolution, rivaling handcrafted agents. DeepSeek researcher Tianyi Cui endorsed the view, noting harness-based self-evolution is as promising as model-based approaches. Weng emphasizes this is complementary to model training, with both reinforcing each other. However, key challenges remain: weak evaluators for subjective tasks, reward hacking, diversity collapse, managing long-term system health versus short-term success, and defining the human oversight role. The consensus is growing: the harness is a critical variable, as the same model can exhibit vastly different capabilities within different harness systems.

marsbit45 хв тому

Weng Li's New Blog Proposes 'Self-Evolution Should Start from Harness', DeepSeek's Cui Tianyi Endorses with Repost

marsbit45 хв тому

Odaily Editorial Department Tea Party (July 8)

Odaily Editorial Team Casual Chat (July 8) This is an informal column from Odaily's editorial team, sharing immediate thoughts on industry news, data, and hot topics from various angles. It presents investment ideas and opportunity hypotheses still under verification—which may not be direct wealth codes but questions in themselves—alongside observations from industry interactions and materials that genuinely enhance the team's understanding. The content is based on real investment and observation experiences, carries no advertising, and does not constitute investment advice. Its purpose is to broaden perspectives and supplement information sources, not to create consensus. Team Member Shares: * **Wenser (@wenser2010):** Noted a deeper correction (nearly 30%) in US and Korean stocks, including memory stocks, but remains bullish on DRAM due to perceived supply shortages. In prediction markets, personal small bets outperformed blind copying; favors France to win the World Cup. Views crypto-related stocks like STRK as bearish for now, while seeing Circle and Coinbase as potential rebound plays. Observes recent strength in software stocks like Microsoft but is unsure if it's a sustained recovery. * **Bcxiongdi (@bcxiongdi):** Discusses the recent "recovery training" in meme coin markets on Solana and BSC, characterized by small-scale PVP opportunities, admitting to having sold many assets too early. Suggests also watching the Robinhood chain. Found World Cup prediction markets challenging, advising to consider buying during matches rather than only before. * **Azuma (@azuma_eth):** Focuses on the US stock market, particularly the significant semiconductor correction. Believes demand fundamentals remain and considers buying the dip in DRAM stocks. Notes a potential rotation signal as hedge funds have recently concentrated buying in tech stocks. Plans to continue adding to RKLB (Rocket Lab) stock, seeing limited downside and high upside potential at current levels after its founder's share sale window closed.

Odaily星球日报1 год тому

Odaily Editorial Department Tea Party (July 8)

Odaily星球日报1 год тому

Former Huawei 'Genius Teen' Who Questioned DeepSeek Interview Lands in 'Crossfire' from Web3 Investor

Former Huawei "Genius Youth" Li Bojie recently drew public attention by criticizing his interview experience with DeepSeek. The controversy escalated when Du Jun, co-founder of Web3 investment firm ABCDE Capital, publicly accused Li of being "the founder with the least sense of contractual spirit" he had ever cooperated with, sparking a dispute over Li's startup project, Metagent. Li detailed a frustrating DeepSeek interview where he was accused of potential plagiarism, leading him to end the session. The spotlight then shifted to his venture, Metagent, a Web3+AI project aiming to tokenize AI agents. ABCDE invested $1.5 million, with an initial $500k disbursed. Du Jun claimed the project's progress was severely lacking, with a poor-quality demo and minimal social media activity. He alleged Li stopped communicating, deleted his Telegram, and failed to provide proper financial reporting. In response, Li argued the remaining $1 million was never received, crippling operations and forcing salary cuts. He stated he left Metagent in October 2024 due to family reasons and Web3 compliance concerns, with board approval. He claimed to have fulfilled disclosure duties and that his subsequent projects avoided conflicting fields. Other investors, including ArkStream Capital, shared negative due diligence experiences, citing unprofessional contracts and evasive answers on tokenomics. Metagent's social media went silent in June 2024, effectively stalling. Li has since moved to a new consumer AI agent platform, Pine AI (formerly Logenic AI), which has raised $25 million in Series A funding. He served as its Chief Scientist but recently left, clarifying he was not the founder and departed due to a shift in research interests.

Foresight News1 год тому

Former Huawei 'Genius Teen' Who Questioned DeepSeek Interview Lands in 'Crossfire' from Web3 Investor

Foresight News1 год тому

Торгівля

Спот

Популярні статті

Як купити FF

Ласкаво просимо до HTX.com! Ми зробили покупку Falcon Finance (FF) простою та зручною. Дотримуйтесь нашої покрокової інструкції, щоб розпочати свою криптовалютну подорож.Крок 1: Створіть обліковий запис на HTXВикористовуйте свою електронну пошту або номер телефону, щоб зареєструвати обліковий запис на HTX безплатно. Пройдіть безпроблемну реєстрацію й отримайте доступ до всіх функцій.ЗареєструватисьКрок 2: Перейдіть до розділу Купити крипту і виберіть спосіб оплатиКредитна/дебетова картка: використовуйте вашу картку Visa або Mastercard, щоб миттєво купити Falcon Finance (FF).Баланс: використовуйте кошти з балансу вашого рахунку HTX для безперешкодної торгівлі.Треті особи: ми додали популярні способи оплати, такі як Google Pay та Apple Pay, щоб підвищити зручність.P2P: Торгуйте безпосередньо з іншими користувачами на HTX.Позабіржова торгівля (OTC): ми пропонуємо індивідуальні послуги та конкурентні обмінні курси для трейдерів.Крок 3: Зберігайте свої Falcon Finance (FF)Після придбання Falcon Finance (FF) збережіть його у своєму обліковому записі на HTX. Крім того, ви можете відправити його в інше місце за допомогою блокчейн-переказу або використовувати його для торгівлі іншими криптовалютами.Крок 4: Торгівля Falcon Finance (FF)Легко торгуйте Falcon Finance (FF) на спотовому ринку HTX. Просто увійдіть до свого облікового запису, виберіть торгову пару, укладайте угоди та спостерігайте за ними в режимі реального часу. Ми пропонуємо зручний досвід як для початківців, так і для досвідчених трейдерів.

334 переглядів усьогоОпубліковано 2025.09.29Оновлено 2026.06.02

Як купити FF

Обговорення

Ласкаво просимо до спільноти HTX. Тут ви можете бути в курсі останніх подій розвитку платформи та отримати доступ до професійної ринкової інформації. Нижче представлені думки користувачів щодо ціни FF (FF).

活动图片