特斯拉将支付高达每小时48美元的费用来捕捉你的动作

币界网Опубліковано о 2024-08-19Востаннє оновлено о 2024-08-20

币界网报道:

特斯拉正在寻找一种新型员工:所谓的“数据收集操作员”,他们将帮助培训他们的Optimus机器人。然而,收集的数据将是他们的身体动作,用动作捕捉设备记录下来。

该职位发布在特斯拉职业网站上,为合适的候选人提供每小时25.25至48美元的薪酬,让他们在加州帕洛阿尔托的工厂“在执行指定动作时穿着动作捕捉服和虚拟现实耳机”。

这项工作被列为“特斯拉机器人”职位,将推进特斯拉对人形机器人的研究,特斯拉首席执行官埃隆·马斯克表示,该机器人已经部署在其工厂和办公室。换句话说,现实世界的数据收集最终可能有助于公司实现人类工作的自动化。

随着特斯拉开始在其内部运营中使用少量Optimus机器人,第三方公司的大规模生产将于2026年开始。即将推出的Optimus机器人系列将面临其他新产品的竞争,如功能更丰富、功能更强大的Figure 02,以及由OpenAI支持的1X为家庭和工业用途制造的机器人。

特斯拉的工作带来了各种福利,包括有竞争力的薪酬、医疗、牙科和视力计划、家庭建设和生育福利、与雇主匹配的401(k)计划以及员工股票购买计划。其他福利包括病假和休假时间、带薪假期、儿童保育和育儿支持。

三个八小时轮班可用于全天候数据收集。

然而,候选人需要满足特定的要求。这项工作涉及每天走一条预先确定的测试路线进行数据收集,候选人必须能够每天走七个多小时,同时携带所有设备来记录他们的动作。

还需要持续的手/眼协调、身体协调和“动觉意识”。

这也不是一个放之四海而皆准的位置。申请人身高必须在5'7英寸至5'11英寸之间。

员工还需要分析他们收集的信息并撰写报告。该职位的主要目标是收集数据、协助工程请求和报告设备反馈。

其他职责包括启动和停止记录设备、执行小型设备和软件调试、提供设备性能反馈、分析和报告轮班期间收集的数据、上传数据以及撰写详细说明观察结果和问题的每日报告。

这并不完全是火箭科学,但这是特斯拉,而不是姊妹公司SpaceX。

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