加密枫叶 BlockMaple

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加密枫叶 BlockMaple

加密枫叶 BlockMaple

@BlockMaple

🇨🇦Qs全球100在读 / All in Web3 / 🇨🇦永久居民 / 🇷🇺🇨🇦Factory 建设中ing/ 分享5年入圈心得 From dishwasher in 🇨🇦 at 20 → Now building decentralized futures TG:https://t.co/lBmgXjjX06

Canada Se unió Ağustos 2025
171 Siguiendo552 Seguidores
比特币总裁
比特币总裁@chairbtc·
微策略太牛逼了,又买了1031枚BTC,价值7600多万美元,以前大家最担心的是他暴雷,现在大家最担心的是他一个人把比特币买光了
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Michael Saylor
Michael Saylor@saylor·
Strategy has acquired 1,031 BTC for ~$76.6 million at ~$74,326 per bitcoin. As of 3/22/2026, we hodl 762,099 $BTC acquired for ~$57.69 billion at ~$75,694 per bitcoin. $MSTR $STRC strategy.com/press/strategy…
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Kind Crypto
Kind Crypto@KindCrypt0·
Confirmed 😁 @gensynai going to launch in early April. Get ready for the $AI Launch🚀🚀
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Crypto Rover
Crypto Rover@cryptorover·
🔥 BIG: CZ says "Bitcoin is a hard asset.”
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XiaoJi
XiaoJi@XiaoJi0403·
整整15年了,挺感慨的,小姐姐老了点,老罗怎么感觉没变😂🤣
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CZ 🔶 BNB
CZ 🔶 BNB@cz_binance·
Bitcoin is a hard asset. (Other top crypto too.)
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加密枫叶 BlockMaple
加密枫叶 BlockMaple@BlockMaple·
Sure enough, whenever the biggest marginal buyer in this market makes a move, Bitcoin drops a wave. Right now their total cost basis has reached about $57.61 billion, with an average cost of roughly $75,696 per BTC. They’re sitting on an unrealized/paper loss of approximately $5–5.5 billion. So everyone, no need to panic — you just need to follow the smart money and you’ll be fine. 果然这个市场上的最大边际买家一出手 比特币就会跌一波 目前总成本来到约 $57.61 billion 平均成本:约 $75,696/BTC 账面浮亏约 $5–5.5 billion 所以大家不用惊慌你只需要跟着聪明资金走就行 #BTC #Crypto #MSTR
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AB Kuai.Dong
AB Kuai.Dong@_FORAB·
即使一年多时间过去了,加密货币市场仍没有恢复到 2025 年 1 月份的水平。
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Minato-ku, Tokyo 🇯🇵 中文
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0xAA
0xAA@0xAA_Science·
中国的龙虾🦞线下聚会我算是看懂了,全JB是币圈人搞得。 哈哈哈,老传销了!
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加密枫叶 BlockMaple
🌏【2030退休计划|全球旅居提前考察 · 第二站:老挝】 这次来到了东南亚最不发达国家之一——老挝,可以说刷新了我去过国家的“下限”😅 📍首都万象的第一印象:体验感一般 道路不平、城市规划几乎没有,甚至连红绿灯都很少🚦 但神奇的是——车辆行驶居然“乱中有序”,而且几乎没人按喇叭!这一点真的比国内舒服很多👍 🏠 房租情况 万象市中心的房租其实并不便宜: 一个4房的House每月大约要2000美金💸,而且基本是按年支付 但一旦离开市中心,房租会“断崖式下降”📉 🍽 餐饮消费 在万象要分开看: 湄公河边的西餐厅:人均约100人民币🍝 三江区域的中餐厅:比国内贵约20%😅 🚿 水质体验 我在万象住的酒店水质不太好,有明显异味🤔 后来到了琅勃拉邦,感觉水质有所改善 📍琅勃拉邦:更适合躺平的地方 同样临近湄公河,但与其说是城市,更像一个悠闲的小镇🏡 这里老外很多,还有“洋人街”,西餐厅遍地都是🍷 消费水平:人均约100人民币 相比万象,这里整洁有序得多✨ 建筑和街道都很有当地特色,整体氛围非常放松 💰 房租情况 一年大约3000–4000美金,可以说非常适合“躺平生活”🌿 💡 其他体验 银行开户似乎限制不多 可以存金条(听说) 加密货币环境相对宽松,甚至有人直接开币安账户🪙 网络不需要翻墙,这点真的很友好🌐 🧭 总体感受 老挝不算精致,但胜在轻松、自由、低压力 如果是追求慢生活、低成本躺平,这里或许是一个值得考虑的地方 下一站继续考察中…✈️ 🌏【Retirement Plan 2030 | Global Living Exploration · Stop 2: Laos】 This time I visited Laos, one of the least developed countries in Southeast Asia — and it definitely reset the “lower bound” of countries I’ve experienced 😅 📍First impression of Vientiane (the capital): not great The roads are uneven, urban planning is almost nonexistent, and there are barely any traffic lights 🚦 But surprisingly, traffic somehow flows in an “orderly chaos,” and no one honks! That alone feels much more pleasant than back home 👍 🏠 Housing Rent in central Vientiane isn’t cheap at all: A 4-bedroom house costs around $2,000/month 💸, usually paid annually But once you leave the city center, prices drop off dramatically 📉 🍽 Food & Dining In Vientiane, you have to separate Western and Chinese options: Western restaurants along the Mekong River: about ¥100 RMB per person 🍝 Chinese restaurants in the Sanjiang area: around 20% more expensive than in China 😅 🚿 Water Quality The hotel I stayed at in Vientiane had poor water quality, with a noticeable smell 🤔 After arriving in Luang Prabang, it seemed to improve 📍Luang Prabang: a better place to “lie flat” Also located along the Mekong, but it feels more like a small town than a city 🏡 There are lots of foreigners, even a “foreigner street,” with Western restaurants everywhere 🍷 Average spending: about ¥100 RMB per person Compared to Vientiane, it’s much more organized and charming ✨ The streets and buildings have strong local character, and the overall vibe is very relaxed 💰 Rent Around $3,000–$4,000 per year — very suitable for a laid-back lifestyle 🌿 💡 Other Observations Opening a bank account seems relatively easy Holding gold bars is reportedly allowed Crypto appears to be loosely regulated; I even saw people using Binance 🪙 No need for a VPN — very convenient 🌐 🧭 Overall Thoughts Laos isn’t refined, but it offers freedom, simplicity, and low pressure If you’re looking for a slow-paced, low-cost lifestyle, it might be worth considering Next stop coming soon… ✈️ #Crypto #Laos #BTC #Travel
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Judson Bonneville
Judson Bonneville@jud_bonneville·
Just pushed some new docs (!) live for @gensynai's Reproducible Execution Environment (REE), their toolchain for bitwise-reproducible AI inference across any hardware. The problem it solves is deceptively simple: run the same model with the same inputs on two different machines, get the exact same output. Not approximately, not almost, but.. identically It turns out that's really difficult to do, because GPUs are non-deterministic by default, and existing solutions like PyTorch's deterministic mode can't get the job done the moment you switch hardware. REE solves this with custom GPU kernels (RepOps) that guarantee identical results everywhere. Every run produces a cryptographic receipt that anyone can independently verify. The docs cover everything from a quickstart to the internals of the MLIR compiler and RepOp kernel design. Check em out! -> docs.gensyn.ai/tech/ree
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加密枫叶 BlockMaple
让同一个AI模型 + 同一个输入 在全世界任何一台支持的电脑/GPU上跑 输出的结果必须每一比特(bit) 都完全一模一样 Bitwise identical
Judson Bonneville@jud_bonneville

Just pushed some new docs (!) live for @gensynai's Reproducible Execution Environment (REE), their toolchain for bitwise-reproducible AI inference across any hardware. The problem it solves is deceptively simple: run the same model with the same inputs on two different machines, get the exact same output. Not approximately, not almost, but.. identically It turns out that's really difficult to do, because GPUs are non-deterministic by default, and existing solutions like PyTorch's deterministic mode can't get the job done the moment you switch hardware. REE solves this with custom GPU kernels (RepOps) that guarantee identical results everywhere. Every run produces a cryptographic receipt that anyone can independently verify. The docs cover everything from a quickstart to the internals of the MLIR compiler and RepOp kernel design. Check em out! -> docs.gensyn.ai/tech/ree

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币圈老司机🔶BNB
感觉币圈人已经不发币圈内容了 现在打开推特,看到基本上都在发微博热点 币圈真的要死了
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Dr Robertlee 李波
Dr Robertlee 李波@Robertl83909710·
AI应用国际上市孵化中心将落户上海临港。个人炒币交易赚钱机会将越来越少。 (RLBCD-2777-A)
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gensyn
gensyn@gensynai·
"Now I can prove that given this exact input, this model will always give this output. And therefore I can prove why this model gave that output." Tomorrow, join Gensyn engineers for a technical dive into REE. 11.15 am ET. x.com/i/spaces/1RJZz…
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