Balaji Srinivasan推出新学校-最新加密货币新闻

币界网2024-08-19 tarihinde yayınlandı2024-08-19 tarihinde güncellendi

币界网报道:

Coinbase首任首席技术官Balaji Srinivasan宣布成立the Network School,这是一所位于新加坡附近岛屿上的创新教育机构。该学校将于2024年9月23日至12月23日开始为期90天的弹出式课程,围绕“学习、燃烧、赚钱、娱乐”的原则设计

内容隐藏1学生将学习什么?2谁可以申请网络学校?3个关键要点

学生将学到什么?

网络学校将提供一种持续学习模式,参与者可以解决现实世界的问题,并通过数字证书记录他们的成就。课程将涵盖广泛的主题,包括技术社区的发展。这种方法与传统教育体系形成鲜明对比,确保学生持续参与学习。访问COINTURK FINANCE获取最新的金融和商业新闻。

身体健康也将是一个核心关注点,饮食和健身计划的灵感来自布莱恩·约翰逊的蓝图计划。鼓励参与者进行日常锻炼,并食用营养餐,以增强长期健康和身体表现。

谁可以申请网络学校?

该学校旨在创造一个适合被称为“黑暗天才”的人的环境,这些人认为传统教育体系不兼容,但渴望发展自己的技能。网络学校将向所有年龄段的人开放,特别是针对创意和技术专业人士。

申请将通过ns.com处理,为被录取的候选人提供低成本的住宿选择。这一举措对寻求独特教育机会的个人和小团队特别有吸引力。

关键要点

–现实世界中的问题解决和持续学习。–包括技术社区建设在内的综合课程通过日常锻炼和营养餐强调身体健康开源项目和人工智能内容创作的每日奖励访问技术专家的职业发展机会。

网络学校还将纳入休闲活动,让参与者有机会享受美丽的岛屿位置,并因靠近新加坡而方便前往其他亚洲地区。

凭借其独特的教育和技能发展方法,网络学校有望为参与者带来开创性的体验。

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