M6 Labs:BTC和ETH暴涨,市场风险偏好加大

Odaily星球日报Published on 2023-11-11Last updated on 2023-11-11

Abstract

BTC 和 ETH 正在经历显著的涨势,同时 Polygon 在游戏领域迅速崛起。

欢迎来到本周的加密市场观察!在这里,我们深入挖掘加密领域,为您提供详尽的重要事件和新兴趋势的分析。BTC 和 ETH 正在经历显著的涨势,同时 Polygon 在游戏领域迅速崛起。链上活动逐渐增多,精明的投资者正在战略性地调整自己的位置,表明风险偏好重新升温。接下来是高潮部分:ETF 的即将确认,今年能实现吗?似乎只剩下最后一块拼图需要放置了。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

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本周 Alpha 焦点

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

如果你正在阅读这篇文章,请注意你的早期位置。

本周话题:市场暴涨和游戏及 NFT 领域的最新动态

市场总览

首先,BlackRock 在特拉华州注册了 iShares 以太坊信托,这一举措引起了机构级别对以太坊的关注。以太坊价格暴涨,首次突破自七月以来的 2000 美元关口。这一发展表明,机构对以太坊的兴趣不断增长,并看好它作为一种有价值的资产类别的潜力。另外,彭博分析师表示,从 11 月 9 日开始的 8 天时间窗口内,有可能批准多个现货比特币 ETF。

然而,需要注意的是,美国证券交易委员会(SEC)尚未明确批准,并且开启此窗口并不保证 ETF 的批准。投资者们对此抱有希望,因为 SEC 要求就申请进行评论,并要求申请人对担忧进行改进,包括市场操纵防范措施和监测共享协议等。结果仍然不确定,但在这一时间范围内批准多个 ETF 的可能性值得注意。

与此同时,MicroStrategy 从其比特币持有中获得了可观的利润,其比特币价格升至每枚超过 3.7 万美元的年度高点。截至 9 月 30 日,MicroStrategy 已以 468 亿美元购买了 15.84 万枚比特币,他们的投资显示出令人瞩目的未实现收益达到 12 亿美元。比特币本身经历了显著的价格波动,达到了年度高点,并推动了其市值超越特斯拉。

比特币市值的增加主要归因于对现货比特币 ETF 批准的乐观情绪。这一市值增加标志著一天内的重大百分比变动,并证明了比特币作为数字资产的韧性和吸引力。此外,比特币期货市场的持仓量激增,表明对比特币交易合约的兴趣不断增长。此外,比特币期货合约的持仓量下降了超过 5% ,CME 现在在此方面超过币安,成为最大的交易所。最后,短期比特币持有者在 48 小时内获得了可观的利润,表明这部分投资者在波动的市场。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

CME 目前以持仓量(OI)领先。消息来源:Coinglass

最后,短期比特币持有者在 48 小时内获得了可观的利润,表明这部分投资者进行了显著的获利操作。这些短期持有者在这段时间内共提取了 18 亿美元的利润,展示了他们在波动市场中的谨慎策略。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

将短期持有者获利的转移量到交易所。消息来源:Glassnode

NFTs

*以下所有数据均来自 Footprint Analytics,除非另有说明

揭幕:近期,游戏和 NFTs 经历了显著的活动激增,明显可见这两个市场将持续存在。它们被设定为在加密领域以及互联网整体格局中发挥关键作用。你问为什么?好吧,互联网文化不断演变,近年来推动这种演变的最引人注目的创新之一就是 NFT 在各种形式中的广泛应用。

重要的是要注意,NFTs 不仅仅局限于头像和游戏;它们的实用性涵盖了无数领域。在大多数资产都是不可替换的世界里,NFTs 提供了一个突破性的解决方案,使这些独特资产能够在区块链上进行代表。虽然有些人仍然将 NFT 视为微不足道,但我们这些在加密领域保持参与的人知道得更清楚。我们能看到世界的轨迹。

展望未来 10 至 15 年,当人工智慧、加密、虚拟现实和扩增现实无缝融合成一种几乎无法区分的“真实生活”体验时,当人类在所有领域的大多数活动趋于融合时,还会有谁保持怀疑的态度呢?

总结,密切关注这些发展是至关重要的,因为这是我们预计将见证到最显著进步的地方,即使眼下许多游戏和 NFT 收藏的活动状态令人失望。但足够的序文,让我们深入数据!

交易量和市值自十月初的低点以来有了显著增长。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

在 NFT 市场中,OpenSea 在收藏数量方面保持其主导地位,使 Blur 远远落后。值得注意的是,Blur 引起了相当大的关注,特别是考虑到它的推出是在牛市高峰之后。与那些在牛市高峰时启动甚至提供空投的老平台不同,它们无法产生相同水平的兴趣。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

以太坊仍然在大多数 NFT 交易量中占主导地位。当谈到传统 NFT 和前 10 名时,那些老牌项目仍然继续引起最多的兴趣,尽管最近有一些新的收藏进入前 10 名。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

Polygon 已成为 NFT 活动的主导区块链。这可能是由于该链上游戏活动的激增。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

Blur 目前在 NFT 交易量方面领先,而 Opensea 在日常交易方面领先。然而,值得注意的是,与 Opensea 相比,Blur 被指控进行更多的洗盘交易。这增加的交易量可能与 Blur 即将到来的预期空投有关。观察 Blur 在空投后是否能够维持这些指标将是一个引人入胜的过程。此外,用户应该牢记,自 2021 年牛市以来有关 OS 代币的谣言一直在流传,这可能是 OS 在即将到来的牛市中的一个重要因素。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

值得注意的是,大多数的洗盘交易发生在以太坊上。这很有趣,因为这表明在 BNB 和 Polygon 等区块链上观察到的增长可能更有机并反映了实际的用户活动。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

游戏

尽管加密游戏领域尚未获得主流认可,敏锐的观察者认为与这些项目相关的代币具有天文数字的增长潜力。鉴于这个新兴领域参与相对有限,早期参与和可观的回报机会丰富。

Dapp Radar 最近的报告发现,GameFi 市场目前拥有惊人的 99 亿美元的市值。在 GameFi 领域,有惊人的 65 万活跃用户,其中 16 %积极参与 AlienWorlds 生态系统。这个领域内创新协议的激增预示著新兴的绿色市场即将爆发,表明了显著的增长和潜力。

区块链游戏在区块链空间中保持著强大的存在。在最新的一个月中,与游戏互动的 Unique Active Wallets(UAW)较九月增加了显著的 17 %,达到了 170 万的独特活跃钱包总数。这一上升也巩固了游戏在市场上的主导地位,标志著 10 %的增长。值得注意的是,十月份,约 62 %的 Dapp 活动来自游戏项目。在 NFT 游戏收藏领域,SorareAxie InfinityGods Unchained 一直保持著作为一些最活跃交易的 NFT 收藏的位置。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

NFT 买家和卖家在所有区块链上占据了绝大多数的活动。该指标显示了 GameFi 生态系统实际上被低估的程度。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

以下三张图表比较了以太坊、BNB 和 Polygon 上的游戏活动。Polygon 在游戏中突出表现,像是 Ultimate Champions、Benji Bananas 和 Sunflower Land 等游戏拥有惊人的用户数。未来游戏可能会转向其他L1或L2解决方案,并由于用户的高成本和费用,可能完全停止在以太坊上。

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

M6 Labs:BTC和ETH暴涨,市场风险偏好加大

总的来说,游戏和 NFT 市场正在见证增长,并有望在加密空间和更广泛的互联网文化中保持影响力。

尽管尚未实现主流参与,加密游戏代币为早期参与者提供了可观的增长潜力。GameFi 展示了令人印象深刻的市值,游戏项目继续在区块链空间中占据重要地位。展望未来,上次牛市的市场领袖仍然占主导地位,但可能会发生变化。密切关注这个领域,特别是在 Polygon 上,游戏和 NFT 正蓬勃发展,是明智的,因为这一领域不断演变。

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