All Content from Business Insider 4小时前
斯坦福教授分享AI求职秘诀:项目经验与好奇心是关键
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

斯坦福大学计算机科学教授Jure Leskovec分享了在AI公司求职的实用建议。他强调,应聘者需要通过实际项目来展示能力,例如利用公开数据集构建项目、部署演示,并在GitHub或博客上分享成果。参与黑客马拉松也是证明主动性和团队合作的绝佳方式。Leskovec指出,AI领域发展迅速,好奇心和适应性至关重要,应聘者需要持续学习新工具和技术。此外,沟通能力、同理心以及对AI伦理和社会影响的考量,与技术技能同等重要。他鼓励应聘者勇于创新,挑战现有框架,从而在竞争激烈的AI行业中脱颖而出。

🚀 **展示实际项目能力**:AI求职者应通过实际项目来证明自己的动手能力。这包括利用公开数据集构建项目、部署演示,并将成果发布在GitHub或个人博客上。积极参与黑客马拉松也是展示主动性、团队合作和解决问题能力的有效途径,这能为招聘方提供具体的证据。

💡 **培养好奇心与适应性**:AI技术日新月异,保持好奇心和快速学习新工具、新框架(如PyTorch, JAX, LLM tooling)的能力至关重要。应聘者应展现出持续探索GenAI、多模态模型等前沿领域的意愿,因为今天的热门技能可能在明天就发生变化。这种灵活性比固定的技能集更能适应行业发展。

🧠 **磨练批判性思维与创新能力**:在招聘过程中,评估应聘者的思考过程和解决问题的方法与最终答案同等重要。鼓励质疑假设、尝试不依赖熟悉工具解决问题,并主动接触新领域。通过反复练习,培养从多个角度思考问题的习惯,从而发现他人可能忽略的机遇。

🤝 **重视沟通与人文关怀**:技术能力并非全部。招聘者同样看重候选人的沟通能力、团队协作精神,以及对AI技术伦理和社会影响的深刻理解。同理心、协作能力以及对潜在偏见的意识,与编程技能同等重要,能够帮助构建更负责任和人性化的AI应用。

Jure Leskovec, a computer-science professor at Stanford University, offers advice for landing a job at an AI company

This as-told-to essay is based on a conversation and written commentary from Jure Leskovec, a computer-science professor at Stanford University and cofounder of Kumo, a maker of AI tools for predicting business outcomes from company data. This story has been edited for length and clarity.

If you want to work in AI, you need to show that you can actually do the work. Launch real projects using public datasets, deploy a demo, post your work on GitHub, or write about it on a blog.

Participate in hackathons — they're a fantastic way to demonstrate initiative and teamwork in a short time. We organize hackathons ourselves and are often impressed by what participants produce. It's concrete proof of what you can do.

Even if you fail, you're showing that you're curious and proactive. By your second or third project or hackathon, you'll have gained valuable experience.

We recently hired someone who stood out because he built a generative AI tool for analyzing customer purchase data. It showed ambition, curiosity, and problem-solving, which are qualities we really value.

Curiosity and flexibility matter

My second recommendation is to show adaptability — that you're the kind of person who is always experimenting with new tools, and that you can learn quickly. This is essential because AI is evolving at a pace that surprises even those of us who work in the field every day.

The best job candidates have taught themselves frameworks like PyTorch, JAX, or LLM tooling, and they stay current on areas like GenAI, multimodal models, diffusion, and reinforcement learning. Curiosity and flexibility matter more than having a fixed set of skills, because the skills in demand today may look very different tomorrow.

A top school or credential might get your application looked at, but it won't get you hired. We look for people who build things, who are adaptable and curious. In job interviews, we can tell if someone is just trying to map new ideas to what they learned in school versus truly engaging with what's new.

There's no playbook for AI. We're writing it right now. I always value it when my students bring me solutions that haven't been tried before, even if they're wrong. We're still at the experimental stage of AI in many ways, and there isn't always a clear textbook answer.

Sharpen your thinking

At Kumo, we conduct several interviews to see an applicant's full thought process. We pay close attention to how they approach problems and often value their reasoning as much as their final answer — if not more.

It may sound simple to say, "think outside the box," but it is more critical now than ever. Who knows? Your idea today could become the standard tomorrow.

I encourage people to sharpen their thinking by questioning assumptions, trying to solve problems without relying on familiar tools, and deliberately exposing themselves to new domains. Practice brainstorming multiple answers to the same problem, even the ones that seem impractical at first. Over time, these habits train you to see possibilities others overlook.

One last piece of advice: Don't forget to be human. Technical skills aren't everything. I look for people who can communicate clearly, work well in teams, and think carefully about the ethical and social implications of what they're building. Collaboration, empathy, and awareness of bias matter just as much as knowing how to code.

Read the original article on Business Insider

Fish AI Reader

Fish AI Reader

AI辅助创作,多种专业模板,深度分析,高质量内容生成。从观点提取到深度思考,FishAI为您提供全方位的创作支持。新版本引入自定义参数,让您的创作更加个性化和精准。

FishAI

FishAI

鱼阅,AI 时代的下一个智能信息助手,助你摆脱信息焦虑

联系邮箱 441953276@qq.com

相关标签

AI求职 Jure Leskovec 斯坦福大学 项目经验 好奇心 适应性 批判性思维 沟通能力 AI Jobs Stanford University Project Experience Curiosity Adaptability Critical Thinking Communication Skills
相关文章