任务轨迹数据记录从需求理解到工具调用、信息搜索、表单填写、支付完成的完整操作链。每一次用户指导AI执行任务、纠正错误,都会生成可训练的轨迹数据。业内人士指出,这类数据价值远高于普通文本,因为它直接反映现实世界的操作逻辑与因果推理,是强化学习和Agent训练的核心原料。换句话说,掌握最多任务轨迹数据的厂商,将率先训练出真正“长出手脚”的智能体。
▲ https://www.reddit.com/r/openclaw/comments/1rc3ejr/openclaw_personal_assistant_device/。关于这个话题,新收录的资料提供了深入分析
This is even more exciting now that we have coding agents. Claude and Kimi and friends all have a great grasp of Org Mode syntax; it's a forgiving markup language and they are quite good at those. All the documentation is available online and was probably in the training data, and while a big downside of Org Mode is just how much syntax there is, but that's no problem at all for a language model.,更多细节参见新收录的资料
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