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I like to begin developing some scientific computations on my Mac and have some beginners questions. Until now I used Fortran in which math is very uncomplicated to use - e.g. one can add matrices A + B and so on right away. I do have some preferences when moving: I like to use Xcode as IDE, I really like it. Speed makes a difference. Relatively easy math syntax. So my question is:

What language to use?

I looked into C (because of it's speed) but it seems that math is getting very complicated. Matrix addition would require to do loops by hand etc. I noticed that Apples Accelerate framework implements functions that could add 2 matrices etc. (ultimately from cblas I think) but it is still extremely uncomfortable to use. Please correct me if there are possibilities to have it as nice as Fortran. Mentioning Fortran, it can't be used within Xcode. I don't know how fast it is compared to C but beside some minor issues I have with it, the Xcode unavailability could be the only thing that is bothering me. I read that Python is going to be first choice for scientific computing but I also read that the speed is 10-100 times slower than C. Is Objective-C or C++ helpful?

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closed as primarily opinion-based by TerryA, Inbar Rose, Jon Clements, martineau, Zero Piraeus Jul 15 '13 at 15:07

Many good questions generate some degree of opinion based on expert experience, but answers to this question will tend to be almost entirely based on opinions, rather than facts, references, or specific expertise. If this question can be reworded to fit the rules in the help center, please edit the question.

Many of NumPy's modules are essentially FORTRAN wrappers. –  SamStudio8 Jul 15 '13 at 9:14

2 Answers 2

I would strongly recommend investigating python + numpy/scipy - it is small, free, very usable, has an active support community and you will find that the libraries included in numpy/scipy are very fast as they are actually highly optimised C/Fortran code so you do not need to be concerned about the speed issues.

The other nice thing is that your code can be constructed so as to run a cluster of machines or to use server processing or even to use your GPU to speed things up.

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Long time since your answer. But I like to ask about numpy/scipy. As a newbie (didn't start Python programming yet) I don't fully understand what scipy is. I thought of it as a collection of import scientific packages for python as e.g. numpy or additional stuff as iPython. numpy is listed as one of scipys core packages but I often see that both is imported and I don't understand why. You as well mention both. So why import numpy when importing scipy? –  DaPhil Jan 9 '14 at 11:51
To quote - NumPy, the fundamental package for numerical computation. It defines the numerical array and matrix types and basic operations on them. The SciPy library, a collection of numerical algorithms and domain-specific toolboxes, including signal processing, optimization, statistics and much more. So scipy is a collection that installs numpy and more but import scipy does not import numpy (AFAIK) hence often seeing both imported often with matplotlib &/or pandas which are in the same boat. –  Steve Barnes Jan 9 '14 at 20:19

I would recommend python. And you can also download many packages available online for scientific computing, most famous being numpy and scipy. Whereas, I would also suggest you to learn C as a second language if you really want to do scientific computing. The best thing about python is that you can optimise your program by calling C functions from python.

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Thanks. I actually had a quick look at Python but I am a little overwhelmed by it. I found many different things specifically for scientific computing like IPython, Enthougt distribution... Are these just a bundle of packages they think are good to have (as a scientist)? –  DaPhil Jul 15 '13 at 10:42
You can also call Fortran functions from python, using f2py. –  Timothy Brown Jul 15 '13 at 13:56
@DaPhil (Ipython is just an interactive shell with some aditional features) Really speaking, nobody can tell you the packages a scientist should have. It's the work you need to do as a scientist that matters. for eg. As a scientist you may have to do some image processing, you would need packages like PIL, open-cv etc. if you want to make some machine learning programs you would probably download PyML, pybrain etc. For algebraic calculations you would need sympy. (and the list goes on... :) ) –  aaveg Jul 15 '13 at 16:09
I mostly use python to do calculations and generate plots. So most of my jobs are done with numpy, scipy and matplotlib (generating plots). So once you start programming, you will regularly find new packages that meet your needs. –  aaveg Jul 15 '13 at 16:10

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