北极星资本品牌发布会圆满落幕——未来蓝图尽展眼前

币界网Published on 2024-08-15Last updated on 2024-08-15

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【2024年8月13日】香港丽思卡尔顿酒店——在香港璀璨的夜空下,北极星资本与新火科技联手打造的“北极星之夜”品牌发布会隆重举行。此次盛会吸引了众多行业巨擘和专业投资者的热切关注。对于北极星资本,这不仅仅是一次品牌的盛大亮相,更是宣告其在比特币矿业基金领域迈入新纪元的关键时刻。发布会现场,气氛热烈、掌声不断,彰显出北极星资本的巨大潜力与无限前景。

战略合作签约:开启合作新篇章

发布会伊始,北极星资本联合创始人Lisa与新火资管合伙人Emma Zhu在众多嘉宾和媒体的见证下,郑重签署了战略合作协议。这一协议不仅标志着两家公司将在未来的数字资产托管与比特币矿业领域展开深度合作,也为北极星资本进一步拓展全球市场奠定了坚实的基础。现场的气氛因此达到了第一个高潮,签约后的握手更是象征着双方合作关系的深化与发展。

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北极星资本联合创始人Lisa:展望未来,彰显战略决心

紧接着,北极星资本联合创始人Lisa再度登台,向在场的嘉宾描绘了北极星资本的发展蓝图。她表示,北极星资本矿业基金(Bitcoin Mining Ecosystem Investment SP)作为首支香港证监会持牌的比特币矿业基金,自2023年12月31日至2024年4月30日期间,基金收益达170.1576 BTC,利润率高达51%。

Lisa进一步阐述,北极星资本离不开其丰富的矿机资源及精细化的运营管理。公司以行业最低价获取顶尖矿机设备,并选址全球电力资源丰富且成本低廉的地区,确保稳定且低成本的电力供应。这一切都源于北极星资本核心团队的专业背景,他们来自高盛、火币等知名机构,始终坚守最高的合规标准,确保投资者的权益和投资安全。她还强调,北极星资本的使命是简化比特币挖矿的过程,最大化用户收益,并以专业、诚信、创新和热情的服务理念,为每一位投资者量身定制最优投资方案。

晚宴贺辞:施能狮会长表达深厚祝愿与期许

在北极星资本联合创始人Lisa的演讲之后,深圳福建商会会长兼信义集团董事施能狮先生上台致辞。他对北极星资本的品牌发布表示了由衷的赞赏,并对其在比特币矿业基金领域的表现给予了高度评价。施会长表示,北极星资本品牌的成功发布不仅是其品牌发展的重要里程碑,也将为整个行业带来新的活力与方向。施先生的致辞饱含对北极星资本未来发展的期待,为整场发布会增添了更深的意义。

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品牌启动仪式:宣告新纪元的到来

在施能狮会长的致辞之后,品牌启动仪式将整场发布会推向高潮。北极星资本创始人Lewis、联合创始人Lisa、投资人Wilson Qiu,与深圳福建商会会长兼信义集团董事施能狮以及新火科技CFO张丽一起,走向舞台中央,共同为北极星资本品牌剪彩。剪彩仪式象征着北极星资本品牌的正式启航,同时标志着该公司在比特币矿业基金领域迈出了关键一步。随着剪彩的完成,现场掌声雷动,嘉宾们对北极星资本未来的发展充满了期待。

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祝酒与晚宴:举杯共庆,携手共进

随后,北极星资本创始人Lewis先生登台,为当晚的盛会致祝酒词。Lewis先生对所有支持北极星资本的合作伙伴和嘉宾表示感谢,并强调,这仅仅是开始,未来的路上,北极星资本将继续携手合作伙伴,共同创造更大的辉煌。在他的祝酒词之后,全场嘉宾共同举杯,为北极星资本的未来干杯。

晚宴正式开始。嘉宾们在享用美食的同时,彼此交流,分享见解与经验。这不仅是一场味觉的享受,更是思想碰撞与智慧交融的时刻。整个晚宴在轻松愉快的氛围中进行,嘉宾们度过了一个难忘的夜晚。

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圆满落幕:展望未来的辉煌

“北极星之夜”在热烈的掌声中圆满落幕。通过此次品牌发布和战略合作的成功启动,北极星资本不仅展现了其在比特币矿业基金领域的领先地位,也为未来的发展奠定了坚实的基础。未来,北极星资本将以更加坚定的步伐,继续引领行业的发展,为投资者创造更大的价值与荣耀。如同北极星创始人Lewis所言,“今天的启动只是一个开始,未来的路,我们将携手合作伙伴,共同创造更加辉煌的成就。”北极星资本的明天,必将更加璀璨。

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