All Content from Business Insider 10月25日 01:15
前英伟达工程师:AI时代,构建与系统思维是关键
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一位前英伟达工程师Chip Huyen强调,在AI蓬勃发展的时代,无论是初学者还是资深从业者,都需要掌握构建端到端项目的能力,并具备系统性思维。她建议,通过记录日常遇到的问题并尝试解决,来培养解决问题的能力。同时,学习AI基础原理和相关工具也非常重要,不应仅限于动手实践。对于计算机科学专业的学生,Huyen认为掌握系统思维比单纯学习编码更为关键,因为AI的发展将带来更大、更复杂的挑战,而整合知识、解决问题的能力将愈发珍贵。她还指出,AI生成的代码需要被理解和审查,具备全局观和解决复杂问题的能力将是工程师的核心竞争力。

🛠️ **强调动手构建的重要性**: Chip Huyen建议,无论目标是什么,都要从头到尾构建一个项目,从想法的产生到最终的部署,让实际用户能够使用。这不仅能提升技能,还能增强信心和对AI的理解,即使是没有编程背景的人也能通过AI编码助手做到这一点。

🧠 **培养系统性思维**: 对于计算机科学专业的学生和希望扩展知识的工程师,Huyen强调掌握系统思维是关键。她认为计算机科学的本质是系统思维,编码只是解决实际问题的手段。随着AI自动化能力的增强,问题本身将变得更加复杂,整合分散的知识来解决这些问题将是核心能力。

💡 **识别并解决问题**: Huyen提供了一个实用的练习方法:记录一周内遇到的所有令人沮丧的事情,分析原因,并思考如何解决。选择其中一个问题进行解决,这有助于培养主动发现和解决问题的能力,这种能力在AI时代尤为重要。

📚 **理论与实践相结合**: Huyen认为,仅仅通过构建来学习AI是不够的,这就像只通过说话来学习一门新语言。因此,学习AI的基础原理、理解所使用的工具至关重要,并建议通过课程、书籍等方式为学习带来结构性。

🔍 **理解AI生成代码**: 随着生成式AI在编写代码方面的能力增强,理解AI生成的代码并进行审查变得尤为重要。公司更看重那些能全面理解系统、具备强大问题解决能力并能进行整体思考的工程师,而非仅关注局部问题的工程师。

A former Nvidia engineer said that computer science remains relevant if students recongize what their classes are really about.

A former Nvidia engineer says people looking to stay competitive in the age of AI need to start building now.

"Doesn't matter what you build, as long as you do it end to end: starting from an idea and deploying it so that a friend can use it," Chip Huyen, an AI researcher who worked on Nvidia's NeMo platform and taught machine learning at Stanford, wrote to Business Insider.

Huyen's advice extends beyond her fellow AI researchers and engineers. She said when she holds workshops for companies, it's incredible to see what people without even a coding background can do, thanks to AI coding agents.

"After that, they become so much more confident in themselves and also have a much better understanding of AI," she said.

If you're stuck figuring out what to do, Huyen says she has a simple exercise.

"For a week, note down everything that frustrates you," she wrote in a guide she shared with Business Insider. "Why is this taking so long? Why do I have to repeat this every single time? etc. For each of these problems, try to think about how to solve it. Then pick one problem to solve."

Learning about the foundations of AI and how it works is also important, Huyen said.

"Learning only by building is like learning a new language only by speaking," she wrote.

That's why it's imperative that those looking to upskill supplement their own AI exploration by learning about the tools they're using.

"You should also bring structure into your learning, like picking a curriculum, books, courses," she wrote.

If you're looking for where to start, Huyen shared a list of AI-related resources with Business Insider that she compiled when writing her latest book, "AI Engineering."

What computer science students should do

As for those studying computer science or engineers looking to expand their knowledge base, Huyen said the best thing they can do is master systems thinking.

"Coding is just a means to an end. CS is about system thinking, using coding to solve actual problem," Huyen said during a recent episode of "Lenny's podcast."

Problem-solving will never go away, Huyen said, because as AI can automate more stuff, the problems will just get bigger."

Huyen said that AI "can help automate a lot of disjointed skills," but combining the separate knowledge to solve problems will remain difficult. She pointed to a webinar hosted by Stanford computer science department chair Mehran Sahami and Andrew Ng, founder of DeepLearning.AI and a former founding member of Google Brain, in which the pair discussed the future of CS. At the time, Sahami said that it is "critical for students to understand the code that's generated" by AI tools.

In talking to companies, Huyen said that she is hearing examples of senior engineers spending more time reviewing code written by junior engineers. Across tech, the fear is that more junior engineering roles will be replaced as generative AI becomes more skilled at writing code itself. That's why developing skills can help, Huyen said.

Companies "appreciate engineers who have a good understanding of the whole systems and be able to have good problem-solving skill, are thinking holistically instead of locally," she said.

Read the original article on Business Insider

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AI 计算机科学 系统思维 技能提升 职业发展 AI Engineering Chip Huyen Nvidia
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