I speak as someone who is about to enter their first year of grad school in AI; note that I have also already spent a year doing robotics and a year doing AI research, so I am slightly less naieve than the typical first-year grad student.
The first half of this comment will discuss my thoughts on the merits of AI / AGI / FAI research. The second half will discuss how to do AI research if you want to. They will be separated by a bunch of dashes (-------).
I personally chose to go into AI research for a few reasons, although I don’t have a high degree of certainty that it’s the right thing to do. But my reasons were—high degree of aptitude and belief that FAI research uninformed by current state of the art in AI / ML is much more likely to fail (I also think that FAI is much more a social problem than a technical problem; but I’m not sure if that’s relevant).
I am pretty skeptical of AGI projects in general, mostly based on an outside view and based on looking at a small number of them. Claims of near-term AI indicate a lack of appreciation for the difficulty of the problem (both engineering barriers that seem surmountable with enough man-hours, and theoretical barriers that require fundamentally new insights to get past). I don’t want to say that it’s impossible that there is some magical way around these, but to me it pattern-matches to amateur mathematicians proposing approaches to Fermat’s Last Theorem. If you have some particular AGI project that you think is likely to work, I’m happy to look at it and make specific comments.
I am less skeptical of FAI research of the form done by e.g. Wei Dai, Vladimir Nesov, etc. I view it as being on the far theoretical end of what I see as the most interesting line of research within the AI community. I also think it’s possible for such research to be conducted as essentially AI research, at one of the more philosophically inclined labs (most likely actually a computational cognitive science lab rather than an AI lab, such as Tom Griffiths, Noah Goodman, Josh Tenenbaum, or Todd Kemp).
Okay, so say you want to be an AI researcher. How do you go about doing this? It turns out that research is less about mathematical ability (although that is certainly helpful) and more about using your time effectively (both in terms of being able to work without constant deadlines and in terms of being able to choose high-value things to work on). There are also a ton of other important skills for research, which I don’t have time to go into now.
If you want to work at a top university (which I highly recommend, if you are able to), then you should probably start by learning about the field and then doing some good research that you can point to when you apply. As an undergrad, I was able to do this by working in labs at my university, which might not be an option for you. The harder way is to read recent papers until you get a good idea, check to see if anyone else has already developed that idea, and if not, develop it yourself, write a paper, and submit it (although to get it accepted, you will probably also have to write it in the right format; most notably, introductions to papers are notoriously hard to write well). It also helps to be in contact with other good researchers, and to develop your own sense of a good research program that you can write about in your research statement when you apply. These are all also skills that are very important as a grad student, so developing them now will be helpful later.
Unfortunately, I have to go now, but if I left anything out feel free to ask about it and I can clarify.
I speak as someone who is about to enter their first year of grad school in AI; note that I have also already spent a year doing robotics and a year doing AI research, so I am slightly less naieve than the typical first-year grad student.
The first half of this comment will discuss my thoughts on the merits of AI / AGI / FAI research. The second half will discuss how to do AI research if you want to. They will be separated by a bunch of dashes (-------).
I personally chose to go into AI research for a few reasons, although I don’t have a high degree of certainty that it’s the right thing to do. But my reasons were—high degree of aptitude and belief that FAI research uninformed by current state of the art in AI / ML is much more likely to fail (I also think that FAI is much more a social problem than a technical problem; but I’m not sure if that’s relevant).
I am pretty skeptical of AGI projects in general, mostly based on an outside view and based on looking at a small number of them. Claims of near-term AI indicate a lack of appreciation for the difficulty of the problem (both engineering barriers that seem surmountable with enough man-hours, and theoretical barriers that require fundamentally new insights to get past). I don’t want to say that it’s impossible that there is some magical way around these, but to me it pattern-matches to amateur mathematicians proposing approaches to Fermat’s Last Theorem. If you have some particular AGI project that you think is likely to work, I’m happy to look at it and make specific comments.
I am less skeptical of FAI research of the form done by e.g. Wei Dai, Vladimir Nesov, etc. I view it as being on the far theoretical end of what I see as the most interesting line of research within the AI community. I also think it’s possible for such research to be conducted as essentially AI research, at one of the more philosophically inclined labs (most likely actually a computational cognitive science lab rather than an AI lab, such as Tom Griffiths, Noah Goodman, Josh Tenenbaum, or Todd Kemp).
Okay, so say you want to be an AI researcher. How do you go about doing this? It turns out that research is less about mathematical ability (although that is certainly helpful) and more about using your time effectively (both in terms of being able to work without constant deadlines and in terms of being able to choose high-value things to work on). There are also a ton of other important skills for research, which I don’t have time to go into now.
If you want to work at a top university (which I highly recommend, if you are able to), then you should probably start by learning about the field and then doing some good research that you can point to when you apply. As an undergrad, I was able to do this by working in labs at my university, which might not be an option for you. The harder way is to read recent papers until you get a good idea, check to see if anyone else has already developed that idea, and if not, develop it yourself, write a paper, and submit it (although to get it accepted, you will probably also have to write it in the right format; most notably, introductions to papers are notoriously hard to write well). It also helps to be in contact with other good researchers, and to develop your own sense of a good research program that you can write about in your research statement when you apply. These are all also skills that are very important as a grad student, so developing them now will be helpful later.
Unfortunately, I have to go now, but if I left anything out feel free to ask about it and I can clarify.