SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

Odaily星球日报Pubblicato 2024-01-29Pubblicato ultima volta 2024-01-29

Introduzione

数字货币方面,BTC自40000下方反弹后持续上行,于周六短线突破42000后一直维稳在其附近。期权方面,23FEB以前的ATM Vol仍呈现较平的形态,BTC/ETH大约都在40% Vol左右。

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

上周五美国经济数据表现强劲,其中 12 月核心整体 PCE 环比增长 0.17% ,成屋销售创下疫情期间外史上最强月涨幅之一,使得美债收益率一度整体走高,但又在过去两天回吐大部分涨幅,当前两年期/十年期收益率分别为 4.324% /4.099% 。本周将会是今年宏观方面最繁忙的一周,其中美国当地时间周三将迎来 FOMC 会议,尽管市场已经完全定价此次不加息的决策预期,但仍对会议前公布的数据(如 ADP)以及访谈过程中美联储的表态颇为关注。

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

Source: SignalPlus, Economic Calendar

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

Source: Binance & TradingView

数字货币方面,BTC 自 40000 下方反弹后持续上行,于周六短线突破 42000 后一直维稳在其附近。期权方面, 23 FEB 以前的 ATM Vol 仍呈现较平的形态,BTC/ETH 大约都在 40% Vol 左右。

从交易上看,价格的反弹并未刺激交易量回归,过去 24 小时全市场整体交易量仅有 700 M 左右。BTC 成交分布较为均衡地分布在 23 FEB 及其之前的到期日上,并呈现出正向的 Risky Flow,同时也能观察到近期的 25 dRR 从负值回归到 0 值附近。ETH 成交集中在 option chain 上 Buy 24 FEB 2400-C vs Sell 29 MAR 2700-C 组成的三角价差策略,单腿成交额超过 13000 ETH。

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

Source: Deribit (截至 29 JAN 16: 00 UTC+ 8)

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

Source: SignalPlus

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

Data Source: Deribit

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

Source: SignalPlus

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

Data Source: Deribit

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

Source: Deribit Block Trade

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

Source: Deribit Block Trade

SignalPlus波动率专栏(20240129):BTC反弹回到42000,Vol Skew回归

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Letture associate

Stablecoins Finally Find Real Yield: An In-Depth Look at On-Chain Reinsurance Re | A Conversation with Re Founder Karan Saroya

Stablecoin Real Yield Found: A Deep Dive into On-Chain Reinsurance with Re's Karan Saroya As stablecoin supply exceeds $170 billion, the search for sustainable, non-speculative yield intensifies. Re, an on-chain reinsurance platform, provides an answer: connecting stablecoin capital to the trillion-dollar traditional reinsurance market. Re operates as a regulated reinsurer, accepting stablecoin deposits as collateral to back US insurance companies. These insurers pay premiums, generating yield that flows back to on-chain depositors. Currently supporting 35 insurers and underwriting $500 million, Re projects scaling to over $1 billion soon. Key insights from a Bankless podcast with founder Karan Saroya and investor Avichal of Electric Capital: 1. **Uncorrelated, Real-World Yield:** Re offers stablecoin holders access to reinsurance returns (targeting 12-14%+), an asset class entirely separate from crypto or equity markets. 2. **Operational Efficiency via Smart Contracts:** Re replaces traditional, labor-intensive capital fundraising with smart contracts, allowing a ~12-person team to compete with industry giants. 3. **Regulatory Leverage:** For every $1 of collateral, regulations allow backing $5-7 in written premiums. This leverage amplifies returns from the underlying risk-free rate. 4. **DeFi Integration:** Depositors receive receipt tokens, which can be used in protocols like Morpho for "looping," potentially pushing yields to 18-20%+. 5. **The "DeFi Mullet" Model:** A compliant front-end (regulated reinsurer) paired with a decentralized back-end (smart contracts, DeFi capital markets). 6. **RE Governance Token:** Modeled on Lloyd's of London, the token governs the central capital pool's allocation, counterparty acceptance, and parameters. 7. **Real Economic Impact:** Capital funds real-world productivity (factories, clinics, businesses) via insurance, moving beyond crypto's internal loops. The discussion highlights a pivotal moment: DeFi's supply-side infrastructure is now met by real demand for productive yield, potentially kickstarting a flywheel where vast on-chain stablecoin capital seeks these real-world returns.

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Stablecoins Finally Find Real Yield: An In-Depth Look at On-Chain Reinsurance Re | A Conversation with Re Founder Karan Saroya

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1996 or 1999? Walsh's First Test is 'How to View AI'

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1996 or 1999? Walsh's First Test is 'How to View AI'

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Ethereum Q1 2026 Report: Fees Decline, Users and Transaction Volume Hit New Highs

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Ethereum Q1 2026 Report: Fees Decline, Users and Transaction Volume Hit New Highs

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He Just Raised 2.7 Billion, and Li Fei-Fei Also Invested

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He Just Raised 2.7 Billion, and Li Fei-Fei Also Invested

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