All code golf problems have the implicit rule of "...and smarty-pants answers don't count" so it's not strictly necessary to enumerate all the ways that you can break out of the sandbox
Maybe they do, but you don't notice their mistakes. Much in the same way that one tends to wake up in the middle of the night with a world-changing idea, so one writes it down for review in the morning, but when morning comes it's drivel
@Kevin I thought that'd be easy to figure out, but apparently I've been away from number theory for quite long, and of course there's no correct answer to that (may or may not be irrational).
I've developed a tiny smidgen of lucidity during those kinds of dreams to the point that I can recognize them and pull the eject lever to catapult myself to consciousness
@AndyK It's equivalent to if bool(NameVariable) is True:. What bool(NameVariable) returns depends on the variable. For numbers, it's x != 0, and for lists it's len(x) > 0, for example
Chased by a monster? Can't identify it as a dream. Engaging with a puzzle that doesn't meet my demanding standards of quality? Impossible, must be in the dream realm
In mathematics, the infinite series
1
−
1
+
1
−
1
+
⋯
{\displaystyle 1-1+1-1+\dotsb }
, also written
∑
n
=
0
∞
(
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n
{\displaystyle \sum _{n=0}^{\infty }(-1)^{n}}
is sometimes called Grandi's series, after Italian mathematician, philosopher, and priest...
I guess what I'm saying is most Pandas methods are pretty self-explanatory, e.g. assign, sort_values, groupby, head, to_dict. I could add an explanation for each, but I'm not sure it would help.
@jpp. Yes. I don't have a problem with suggesting pandas if there is a benefit. But to include so many operations that just aren't intuitive to look at, just to output the result to a dictionary, seems wasteful, especially since the apply(list) makes it less performant than any native python solution anyways. The other pandas answer wasn't great, but I think a better approach would have been to show the benefit of using the DataFrame data structure.
@user3483203, Fair point, I stumbled on the apply(list) bit at the end of my solution (up until then it went swimmingly well), will keep in mind for future :)
I used regex patterns for detecting names in a text....but I found the f score, preceision and recall decreased the larger the text got...any ideas why?
ok listen imagine your ML algorithm is nothing but a method that loops through a list of regex patterns and tries to find them in your text....then you can say F, P and R can be calculated
I believe I just dodged a bullet or something. We have make scripts defined in a makefile, and I wanted to pass cli arguments to python scripts called from that make script, and started to think about passing arguments to the cli commands in the makefile. Then, thankfully, I read "yeah just use env variables bro". so many thanks anon
It was intentional, the preview just was meh and I wanted to figure out a better intro
I think I'm gonna read the whole thing first but tl;dr: VS Code is awesome, and there's some plugin they just found related to python and machine learning that does a ton for you in terms of visualizations of how everything is set up
Machine learning is kind of the antithesis of my ideal system. I want to understand how my computer works, from transistors to application level. Machine learning says "now let's insert a million nodes whose behavior can't be predicted or even understood."
Maybe I just have a bad impression of it because of all the horror stories from users of Facebook/Youtube/whatever where they keep getting harassed by ads and/or content recommendations full of content they hate, and when they talk to tech support, they just shrug and say "sorry, it's what the algorithm thinks you want"
I honestly don't know what's going on with the recommender systems in YouTube
They are utter garbage. It keeps selecting a Chrome book advert for me that repeatedly says "A serious error has occurred" and it makes me want to punch the screen. And that I get about 50% of the time
@Kevin I somewhat lean that way, but applications are so impressive... Computer vision, for instance, is what it now is mostly because of machine learning.
"you clicked that link about minecraft and you watched it for 10 seconds mistakenly or not, so here's a million fortnite videos you might enjoy, because you know minecraft was hip and now fortnite is hip too"
When I was working for a supermarket chain, they were building a recommender system in a different team. If you selected our top-range pork for 2, a reasonably-priced champagne was suggested. If you picked the bargain pork, it suggested our largest bottle of Lambrini :P
@Kevin that is correct, I've heard authoritative people say that we don't actually understand how neural networks (especially deep ones) work, they just do. Which also explains how they can be uncannily susceptible to attacks
(I.e. they don't always work, oops. I'm sure nobody will ever want to use them as evidence in law enforcement)
@AndrasDeak the worst is if you catch them with an input outside of their training range. You can get pretty predictable behaviour within the problem space you trained on, but inputs outside of that range can cause seriously exponential outputs
Not necessarily, there's a whole lot of heuristics and best practices to play around with. It's more about them being better fits on something data- or statistics-related
@FélixGagnon-Grenier Elsa of Arendelle played a pivotal role in illustrating the prevalence of fractals in everyday life, particularly in frigid bodies.
I'm going off what Wiki tells me is her title. I have no idea if it's true, but why would I bother with following that up in this day in age? I think she also helped build the Death Star.
I don't know how I keep doing this. I sat down with the full intention this evening of going through some SQLAlchemy and now I'm discussing the scientific exploits of Disney queens
Although, this has reminded me of on of my favourite parodies (even if the singing isn't perfect). youtube.com/watch?v=Fl4L4M8m4d0