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The Unreasonable Ineffectiveness of Machine Learning in Computer Systems Research #8
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Another comment I made about the http://langsec.org line of research popped into my head: https://lobste.rs/s/uyjzjc/science_insecurity_meredith_l_patterson I heard about this line of work on Hacker News about 5 years ago, and someone was really hyping it up. I read their papers and watched some conference videos -- they could be described as "self-hyping" as well (saying everyone else is "doing it wrong"). Now that I think of it, I'm pretty sure the video in the lobsters is excessively hypey, although I didn't rewatch it. It's a good line of research but IMO it's flawed, as I describe. There was a followup paper by a different author I saw a few days ago that I plan to read: https://news.ycombinator.com/item?id=16004044 It appears he is making their concept of "weird machines" more precise. I was always a bit bothered by their handwavy usage of that term, and I'm glad someone else agreed! |
A few more things popped into mind: This one is from the team/project at Google which has deployed machine learning the longest (early 2000's): Machine Learning: The High Interest Credit Card of Technical Debt https://research.google.com/pubs/pub43146.html
These links are more general and probably not as good, but might be worth reading: Geoff Hinton / Yann Lecun on the problems of generalization, and unsupervised learning: https://www.technologyreview.com/s/608911/is-ai-riding-a-one-trick-pony/ https://medium.com/@Synced/lecun-vs-rahimi-has-machine-learning-become-alchemy-21cb1557920d After 6+ years, I think everybody knows that IBM's watson was massively hyped, and didn't live up to ambitions. In case they don't: https://www.technologyreview.com/s/607965/a-reality-check-for-ibms-ai-ambitions/ This hacker news thread is interesting: https://news.ycombinator.com/item?id=14980358 It's basically some people working at IBM/Oracle realizing their jobs were somewhat fraudulent :-( |
We definitely need a couple of cold showers on ML and AI. Want to write up some hype/shower/caveats? The High Interested Credit Card might be a solid choice, as a technological shower, and "A Reality Check" (or maybe this one? I like that news thing a lot) as a "it hasn't been working in the real world" shower. Sorry for throwing all the work onto you; this is waaaaaaaaaay outside of my area of expertise. Thanks so much for your help! |
Sure I can write up something short that's consistent what's there. I will send a pull request later. Another article that is interesting: What's Worked in Computer Science https://danluu.com/butler-lampson-1999/ Capability-based security is an interesting case. It's one that I want to work, but I have to admit it's still a "no" like he says. |
IMO we could probably replace this entire repo with a link to danluu.com |
Ping! |
I posted this comment with this article. Someone was getting too hyped up about a certain topic :) Let me know if I should submit a pull request or if you want to discuss further.
https://news.ycombinator.com/item?id=16036133
https://www.sigarch.org/the-unreasonable-ineffectiveness-of-machine-learning-in-computer-systems-research/
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