加州与NVIDIA合作,扩大人工智能教育和劳动力培训

币界网Published on 2024-08-09Last updated on 2024-08-10

币界网报道:

加利福尼亚州与NVIDIA合作,改善全州人工智能(AI)教育和劳动力发展。州长Gavin Newsom和NVIDIA首席执行官黄仁勋宣布了这一举措,旨在为社区学院和其他机构的教师、学生和工作人员带来先进的人工智能工具和资源。

该合作旨在为加州人提供必要的技能,以便在日益人工智能驱动的就业环境中蓬勃发展。该合作关系将涉及在高等院校建立实验室,学生可以在那里学习人工智能,并创建专注于人工智能和行业认可认证的课程。

人工智能实验室和培训项目改变了加州的教育

加利福尼亚州正在与NVIDIA合作,在全州的高校建立人工智能实验室。这些实验室将作为人工智能教育的中心,并将配备NVIDIA提供的先进硬件、软件和云计算功能。它们对于培养未来的人工智能专家和研究人员也至关重要,他们将推动加州的技术进步。

除了创建实验室外,该项目还将引入专注于教授人工智能的新课程,以及针对该学科的认证课程。这些课程的设计将满足当地行业的要求,为学生或工人提供在与人工智能相关的知识变得越来越重要的领域工作所需的技能。此外,NVIDIA打算与教职员工合作开发培训计划,以提高教育工作者对人工智能的理解,确保他们有能力教授即将到来的人工智能专业人士。

加利福尼亚州在全州范围内实施人工智能解决方案

该项目旨在将人工智能技术应用于解决加州各地的现实问题,而不仅仅是学校。该合作伙伴关系将寻找可以在州项目中使用人工智能的地方,例如运行解决交通堵塞或语言访问等问题的试点项目。学生将通过参与这些项目获得实践经验,这些项目是人工智能的实际应用,直接影响他们的社区。

NVIDIA的参与进一步支持在整个加州使用人工智能进行创新和创造就业机会。它计划为早期人工智能初创企业提供指导,并建立公私合作伙伴关系,这可能会导致人工智能创新区的建立。此外,这些区域将成为与该技术相关的新兴行业的就业机会热点。

加利福尼亚州已为不同部门和学校的培训项目拨出资金。他们的重点将是重新培训那些希望在国家劳动力中转换到与人工智能相关的角色的员工。总的来说,该合作伙伴关系旨在培训10万名学生、教师、程序员和数据分析师掌握人工智能技能。

社区学院将人工智能融入职业培训

这一举措以社区学院为中心,预计这些学院将把人工智能纳入课程。此举将使这些机构提供人工智能研讨会、新兵训练营和认证课程,以便所教授的内容反映雇主的要求。理想情况下,它应该使学习者在完成教育后不久就能被吸收到工作中,因为他们将具备人工智能驱动领域的相关能力。

该计划的另一部分涉及创建教师项目,培训教师成为其机构内人工智能知识的大使。这些举措希望在全州范围内扩大人工智能教育的范围,使其能够使来自不同背景的学生受益,否则他们可能无法获得这样的机会。

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