Superstate推出加密货币套利基金(USCC)

币界网2024-07-22 tarihinde yayınlandı2024-07-22 tarihinde güncellendi

币界网报道:

数字资产管理公司Superstate公布了其加密货币套利基金(USCC),该基金通过代币化和传统簿记所有权提供加密货币策略的敞口。

USCC基金的目标是利用现货和期货市场之间发现的定价不一致,主要是比特币和以太币。该基金的策略在收益生成与风险考虑之间取得了平衡,包括对基差交易机会、质押回报和以联邦基金利率为基准的美国国债的投资。

USCC已作为以太坊区块链上的ERC-20代币发行,为合格投资者提供了进行点对点交易的途径。

“多年来,加密货币现金和套利交易一直是老练投资者的可扩展回报来源。在Superstate,我们很高兴将这一策略代币化,这样新一类投资者就可以在不管理基础设施和风险的情况下获得机会,”Superstate首席执行官Robert Leshner说。

USCC基金的一个关键特征是其费用结构——它收取0.75%的统一管理费,远低于传统对冲基金通常收取的费用。

该基金还提供每日流动性,这与传统对冲基金更有限的赎回时间表不同。在监管合规和投资者保护方面,USCC使用基于以太坊的Allowlist来监管经过验证的参与者之间的转账,并在特拉华州信托内构建,以在Superstate破产时保护投资者的资产。

这一最新产品是在Superstate于2024年2月推出代币化国债基金(USTB)之后推出的。

İlgili Okumalar

Just now, DeepSeek V4 updates with DSpark, improving inference speed by 80%

DeepSeek has updated its DeepSeek V4 model with the DSpark speculative decoding framework, achieving a significant 60-85% speedup in generation for Flash models and 57-78% for Pro models while maintaining the same overall throughput. This engineering-focused update, rather than a core architectural change, introduces DSpark to address latency and throughput bottlenecks in high-concurrency production environments. DSpark combines high-throughput parallel generation with adaptive load-aware verification. Its key innovations include a semi-autoregressive generation architecture to model dependencies within token blocks and a hardware-aware confidence-scheduled verification system. This system uses a confidence head to predict token acceptance probabilities, allowing it to dynamically optimize verification length per request and allocate compute only to tokens with the highest expected payoff. The asynchronous scheduler is designed for real-world deployment, ensuring zero-overhead scheduling and continuous CUDA graph replay while preserving the target model's output distribution. In tests across mathematical reasoning, code generation, and daily dialogue, DSpark outperformed state-of-the-art models like Eagle3 and DFlash, increasing average acceptance length by 26.7%-30.9% and 16.3%-18.4% respectively on Qwen3 target models. DeepSeek also open-sourced DeepSpec, a full-stack codebase for training and evaluating speculative decoding draft models, providing a standardized toolkit that includes data preparation tools, model implementations, training code, and evaluation scripts.

marsbit6 saat önce

Just now, DeepSeek V4 updates with DSpark, improving inference speed by 80%

marsbit6 saat önce

İşlemler

Spot
活动图片