@DavidArenburg I don’t; I got a promo email from a publisher and was just wandering what other R books they had & thus just browsed through their collection
probably just because you have kids when you're young. I was almost 30 when I met my husband so that gave both my parents and his the time to grow old enough to be retired :-)
@DavidArenburg I can understand. It's like finally being ablo to breath without being constantly interrupted (I felt that each time I went back to work after maternity leave)
Has anyone tried to password protect a shiny app without the pro server? Joris has mentionde shinyproxy which seems like it's something that can handle authentication. Any other options out there?
So mostly, the line scan the array and retrieve only the text between omitting leading and trailing NP_CLV if present
headers = %w(di_clv_st mono_2_clv_st mono_4_clv_st mono_6_clv_st np di_clv_end mono_2_clv_end mono_4_clv_end mono_6_clv_end) <- this line just create and array, it's the same as ["di_clv_st", "mono_2_clv_st", "mono_4_clv_st", "mono_6_clv_st", ...]
results.each { |e| potential_nps << Hash[headers.map(&:to_sym).zip(e)] } <- here it's a loop over the results obtained in first line, for each entry, put it in e variable and then create a hash using as key the value of the variable headers using current index of results
I am trying to answer some pyspark questions to improve and learn myself, also not yet very familiar with what are common questions so I might sometimes miss the dupe ;)
thx @eliasah @Sotos I'm indeed leaning towards picking up python as next language; next to R, it is another often used language in our institute anyway, I still have about half a year to decide ;-)
afaik, r is written in c (and fortran) and package developers sometimes use it as well, so if you're more comfortable using it with r, i expect that'll remain a viable option for a while (though maybe there's something changing with c that i don't know about?)
@李哲源 i think it's for stats/data analysts who need to improve the performance of their code and aren't super sophisticated. rcpp + armadillo is very easy to learn and use without knowing much c++, i guess
C does not seem to have its own numerical libraries. For example, if I decide a write a section of code to add two vectors, I need to write a loop. Of course I could write a function than reuse it later. But I feel that if I am going to write a big C project for a complicated computational module, I have to start from scratch.
Do all the computer have them? I mean, I surely need to include some header files to use functions from some libraries. Are those libraries and header files shipped with computers already?
@李哲源 my experience with it: i had found a part of my code that was doing something very simple very slowly; looked at arma.sourceforge.net/docs.html and some examples to work on replacing just that small part of my r code; dropped it in and saw a performance improvement. repeated that experience a couple more times and didn't regret the couple hours it took me to learn the minimum i needed to take advantage of rcpp
granted, i'm not proficient in rcpp as a result, but my goal as a user is to take advantage of it, not to code my entire project in it
also, i've used it just to mess around with / learn about some data structures that don't exist in r, like unordered sets stackoverflow.com/questions/35544706/… performance improvement in my benchmark there was tiny ...
Hadley in its book actually introduces Rcpp before this conventional interface. Looks like he wants to say: if you want to write new stuff, use Rcpp; but if you want to see how old stuff work, read this part
@Jaap Also recommend Python (or else Scala). No open-source language has the statistical capabilities of R, but the most useful things get backported to Python etc: ggplot, patsy for the formula interface to building models, and now the Python port of datatable
Anyway you can pick up the basics of Python in a couple of days. I found "Python Essential Reference" by David Beazley a better quickstart than textbooks. Plus online tutorials or quickstarts.
@smci hmm, I didn't know about this... If and when this is stable and competitive with Rs data.table I think I would be able to leave R for good in order to finally to get some peace of mind from the tidyverse madness
my impression after looking at numpy was that it would never compete for my daily usage since they forgot to implement missing values. whoops. (guess i might have brought this up before.) it writes really cleanly and has data structures that r doesn't, so it's nice as a second language to learn some CS and maybe someday use in some small way
@DavidArenburg NaN and NA are distinct in R for a reason. i don't want to overlap "mathematically not a number" and "no measurement / unknown number". i think this is related numpy.org/NA-overview.html (i'm talking from a point of relative ignorance here, not having used python for anything yet. this was just my takeaway/disappointment when i initially learned some python)
re that link, those bullets are pretty important questions, and i'm glad that i can mostly trust R Core to have found the right answers long ago (so i don't have to interrupt my real work to address them anew...)
@Frank What are you talking about, numpy has np.nan (float or integer). And see also pandas. The downside is that if a column has even one single NA, that bloats that column's storage requirement from 4 -> 48 bytes. You will see some contortions on e.g. Kaggle about marking NAs with a separate (boolean) column or doing imputation early, when memory is critical.
@smci yeah, that sounds like extra mental overhead that i do not want, for one thing
given that they did not implement NA and NaN separately from the start (nor did it even occur to them, apparently), can i trust mean and similar built-ins to behave as expected wrt NA? will factors with NAs make sense? etc
the gains (cool data structures, cleaner syntax, and more i'm sure) are not immediate for me, given the work i do, and i don't think they'd ever wipe away the weaknesses built into a language not built for statistics. so, i'm just saying that unlike David, i don't see myself ever switching from r to python
@Frank That was numpy/pandas. I expect the Python port of datatable will implement it better. Look, NaN being a float is due to numpy being created in 1995. numpy was for numerical algorithms, not data science. pandas came a decade later (2008), pandas.Categorical came almost a decade after that... and pandas.Categorical is still a second-class citizen.
Whoever takes a look at the Python port of datatable first, let us know your findings.
well, yeah, categorical data is important to me. ditto bools that have NAs and correctly return true for TRUE | NA, and so on. i look forward to trying py datatable, though, as i said in the link a ways up
i hope julia sticks around long enough for me to use it. as far as i can tell, it is built for both stats (like r) as well as math, eg has a class for rational numbers, which sounds useful for projects where floating point rounding isn't tolerable. i don't know if numpy has such a class