Blockcast 37–加密资产交易与风险,Coinhako交易主管Kelvin See

币界网Pubblicato 2024-08-24Pubblicato ultima volta 2024-08-24

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在本期节目中,我们将与Coinhako的交易主管Kelvin See一起探索加密货币交易的世界。Kelvin带来了独特的视角,从传统金融转向Web3领域。我们讨论了TradFi和加密货币交易之间的主要区别,Coinhako的交易和风险管理方法,包括衍生品的使用、对冲策略和技术分析,他用来管理风险和抓住机会的工具,以及加密货币市场的未来前景。听完整集,全面了解加密货币交易世界以及该领域专家使用的策略。

Kelvin See是新加坡市场领先的加密货币平台Coinhako的交易主管,他领导着交易团队,通过衍生品交易和对冲策略监督Coinhaco的头寸、风险和盈利能力。在加入Coinhako之前,Kelvin在纽约花旗银行设立亚洲期权交易台方面发挥了重要作用,并在华侨银行新加坡分行外汇期权团队担任高级职务。他拥有超过15年的外汇期权交易经验,专注于亚洲新兴市场期权领域的高波动性市场。他毕业于卡内基梅隆大学,获得计算机与电气工程/经济学学士学位和麻省理工学院硕士学位。

网站:https://www.coinhako.com电报:https://t.me/s/CoinhakoOfficial推特/X:https://x.com/coinhako

Letture associate

This Chip Sector Is on Fire

The global AI chip market is undergoing a significant paradigm shift, with ASICs (Application-Specific Integrated Circuits) emerging from a niche to a mainstream force, challenging the long-held dominance of GPUs in AI training. This "golden era" for ASICs is primarily driven by the industry's pivot from training to inference, where the cost and energy efficiency advantages of custom chips become critical for scaling to billions of users. Key signals include Google's TPU capturing 78% of its AI server shipments in Q1 2026, OpenAI's plans for a massive custom ASIC cluster with Broadcom, and cloud providers (CSPs) increasingly favoring in-house or custom designs for supply chain control and cost efficiency. Market forecasts are bullish: AI ASIC revenue is projected to hit $300 billion by 2027, with a 34% CAGR, potentially reaching a 45% share of the AI chip market. The competitive landscape is expanding beyond traditional leaders Broadcom and Marvell. MediaTek is aggressively targeting the data center ASIC market, projecting over $10 billion in 2026 revenue, while Qualcomm, leveraging its AlphaWave acquisition, is launching customized inference chips. These mobile chip giants are leveraging their SoC design expertise for a cloud-side transition. In China, companies like VeriSilicon and ASR Microelectronics are capitalizing on this trend as pivotal "enablers," providing full-stack ASIC design services and experiencing explosive order growth, particularly for cloud-side AI projects. However, challenges remain: high development costs, software ecosystem gaps compared to NVIDIA's CUDA, dependency on advanced packaging capacity (like TSMC's CoWoS), and the fundamental trade-off between customization and flexibility. The future is not a simple replacement of GPUs by ASICs but a more specialized coexistence. The consensus points toward "GPUs for training, ASICs for inference," or hybrid clusters. Ultimately, the rise of ASICs represents a democratization of computing power, shifting definition authority from a single chip giant to a broader ecosystem of cloud providers and end-users, offering the industry more choice in the silicon that powers AI.

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This Chip Sector Is on Fire

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