All Content from Business Insider 10月07日 08:34
人工智能博士学位:未来趋势与价值
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

文章探讨了人工智能领域博士学位的价值,并指出随着AI技术的普及,拥有AI博士学位将变得更加重要。作者Girik Malik分享了其在亚马逊担任应用科学家的经历,强调了博士学位在AI研究中的结构化和精确性优势。尽管攻读博士学位需要投入大量时间和精力,但它能培养深入理解AI底层原理的能力,这对于解决未来AI系统中的复杂问题至关重要。同时,文章也强调了在博士学习期间进行行业实习的重要性,以获取宝贵的实践经验和资源。

🎓 AI博士学位价值持续增长:尽管AI技术发展迅速,但Girik Malik认为,AI博士学位的价值并不会减弱,反而会因AI的普及而更加凸显。AI将渗透到我们生活的方方面面,对能够理解和操作AI的专业人才需求将持续增加,尤其是在AI系统出现问题需要根本性修复时,拥有博士学位的人才将是关键。

🔬 博士学位提供结构化和深入的学习:与自学或在职培训相比,攻读AI博士学位能提供更结构化、更精确的学习过程。这对于在竞争日益激烈的AI研究领域取得突破至关重要。博士研究要求进行更广泛的实验,并证明结果的通用性,这比过去对模型进行微小改动就能取得成果的要求更高。

💼 行业实习是博士学习的重要补充:文章强烈建议博士生在学习期间进行行业实习,即使未来打算留在学术界。实习可以提供宝贵的数据和计算资源,以及解决大规模、复杂问题的实践机会,这在大学环境中往往难以获得。这些经历能够帮助学生超越书本知识,为未来的职业生涯打下坚实基础。

💡 动机与回报的权衡:虽然AI博士可能带来丰厚的经济回报,但作者提醒,如果仅仅为了金钱而攻读博士学位,可能需要重新考虑。攻读博士学位需要极大的自律和动力,如果能保持这种动力五到六年,那么值得投入;但如果动机不足,将同样的动力投入其他领域也可能取得同等成就。

Girik Malik, 30, is an applied scientist at Amazon Web Services. He told Business Insider that a Ph.D. in AI will become more valuable, not less, as the technology becomes more prevalent.

This as-told-to essay is based on a conversation with Girik Malik, an applied scientist at Amazon Web Services. The following has been edited for length and clarity. Business Insider has verified his employment and academic history.

When I completed my Ph.D. in AI at Northeastern University in 2023, the AI job market was a world away from the red-hot AI talent war Big Tech companies are waging now.

I secured a job as an applied scientist at Amazon after interning there in the summer of 2022. This was before the company implemented a hiring freeze for the rest of that year.

Today, a top-flight AI researcher with a Ph.D. could see themselves scoring a million-dollar payday from companies like Meta. That said, the road to earning a Ph.D. isn't easy.

It demands lots of discipline and motivation. In fact, during one of my semesters, I was so caught up with coursework and research that I barely had time to eat. I ended up creating a simple stew and eating it week after week for the entire school term. It was just that hard.

That's on top of the time taken. A Ph.D. candidate could spend about five years trying to complete it. That time could have been spent gaining practical experience in the working world.

Getting a Ph.D is challenging but rewarding

There's still a lot of value to be gained from getting a Ph.D. in AI.

Of course, you could try to self-learn about the field through on-the-job training. You might even get to build some products yourself. But if you want to shape the future of AI, you need to do a Ph.D.

Going through the process of getting a Ph.D. will make your learning process a lot more structured and precise. That has become very important now, given how competitive AI research has become.

Just 10 to 15 years ago, a small change or tweak to a model would produce different results that could land you in a prestigious journal or an invitation to a high-level conference. That's no longer the case.

The bar has become much higher. You need to conduct more experiments, and you need to demonstrate results that generalize well across a wide variety of problems.

It's not too late to get a Ph.D. in AI

Some believe AI is progressing so rapidly that it may be too late to enter the field through the Ph.D. route. Detractors believe that all the innovations and breakthroughs in AI might be discovered by the time you graduate.

I disagree with that view. A Ph.D. in AI will be just as, if not more, relevant 50 years from now. This is because AI will become ubiquitous in our daily lives. They could be embedded in almost any code we write and the systems around us. You will need more, not fewer, people who can understand and work with AI.

AI systems aren't perfect. Their algorithms might break in the future, and when that happens, you will need people who understand AI at a fundamental level to come in and fix it. That's probably going to be someone who holds a Ph.D. in it.

It's like owning a car. It can be a perfectly nice car, but you will still need to train mechanics to fix it when it breaks down. We didn't stop teaching mechanical and automotive engineering just because we can make better cars. The same goes for AI.

Industry internships are important

I highly recommend doing internships during the summer breaks in between your Ph.D. studies. This matters even if you intend to stay in academia.

In my case, I did three internships, with the Bosch Center for Artificial Intelligence, Microsoft, and Amazon. I managed to obtain return offers from Microsoft and Amazon.

The best part about working in the industry is the easy access you get to data and compute.

In a university setting, you are often competing with five to six Ph.D. students to use a computing cluster. And even if you can run your algorithm, it is ultimately based on a limited dataset running on limited hardware. That algorithm may not work if you scale it up.

So take full advantage of those internships. The internships I did forced me to go beyond the textbook and solve complex problems.

One challenge I faced at my first internship at Bosch was getting my neural network to train on a large-scale dataset. For instance, I could have a massive dataset with over 2 million videos. That was at a far larger scale than I was used to at my university.

Dealing with that problem helped give me the skills to solve other infrastructure-related problems I encountered later on in my Ph.D. and my career.

Earning a Ph.D. in AI could open doors for you, but I would caution those pursuing it for the money. If somebody wants to pay you a few million dollars to work at their company, they will screen and filter candidates more aggressively.

If you can sustain that level of motivation for the five to six years it takes to complete your Ph.D., then go for it. I would, however, suggest applying that motivation elsewhere because you could achieve just as much in other areas.

Do you have a story to share about your graduate studies or career in AI? Contact this reporter at ktan@businessinsider.com.

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

人工智能 AI 博士学位 Ph.D. 职业发展 技术前沿 Girik Malik
相关文章