Is there any way to profile the mathkernel memory usage (down to individual variables) other than paying $$$ for their Eclipse plugin (mathematica workbench, iirc)?

Right now I finish execution of a program that takes multiple GB's of ram, but the only things that are stored should be ~50MB of data at most, yet mathkernel.exe tends to hold onto ~1.5GB (basically, as much as Windows will give it). Is there any better way to get around this, other than saving the data I need and quitting the kernel every time?

EDIT: I've just learned of the ByteCount function (which shows some disturbing results on basic datatypes, but that's besides the point), but even the sum over all my variables is nowhere near the amount taken by mathkernel. What gives?

  • Mathematica workbench is currently free.
    – John
    May 3, 2021 at 22:08

4 Answers 4


One thing a lot of users don't realize is that it takes memory to store all your inputs and outputs in the In and Out symbols, regardless of whether or not you assign an output to a variable. Out is also aliased as %, where % is the previous output, %% is the second-to-last, etc. %123 is equivalent to Out[123].

If you don't have a habit of using %, or only use it to a few levels deep, set $HistoryLength to 0 or a small positive integer, to keep only the last few (or no) outputs around in Out.

You might also want to look at the functions MaxMemoryUsed and MemoryInUse.

Of course, the $HistoryLength issue may or not be your problem, but you haven't shared what your actual evaluation is. If you're able to post it, perhaps someone will be able to shed more light on why it's so memory-intensive.


Here is my solution for profiling of memory usage:

myByteCount[symbolName_String] := 
   Hold[x__] :> 
    If[MemberQ[Attributes[x], Protected | ReadProtected], 
     Sequence @@ {}, {ByteCount[
       Through[{OwnValues, DownValues, UpValues, SubValues, 
          DefaultValues, FormatValues, NValues}[Unevaluated@x, 
         Sort -> False]]], symbolName}]];

With[{listing = myByteCount /@ Names[]},
 Labeled[Grid[Reverse@Take[Sort[listing], -100], Frame -> True, 
   Alignment -> Left], 
     "ByteCount for symbols without attributes Protected and \
ReadProtected in all contexts", 16, FontFamily -> "Times"], 
    Style[Row@{"Total: ", Total[listing[[All, 1]]], " bytes for ", 
       Length[listing], " symbols"}, Bold]}, Center, 1.5], Top]]

Evaluation the above gives the following table:


  • On 7.0.1 I get the error: Optional::opdef: The default value for the optional argument BoxForm`pat_:{_,__} contains a pattern. >> but I also get output. Do you get the error too?
    – Mr.Wizard
    Aug 17, 2011 at 6:05
  • @Mr.Wizard In the fresh session I do not get them, but after some work the above code starts producing these messages. Aug 17, 2011 at 6:10

Michael Pilat's answer is a good one, and MemoryInUse and MaxMemoryUsed are probably the best tools you have. ByteCount is rarely all that helpful because what it measures can be a huge overestimate because it ignores shared subexpressions, and it often ignores memory that isn't directly accessible through Mathematica functions, which is often a major component of memory usage.

One thing you can do in some circumstances is use the Share function, which forces subexpressions to be shared when possible. In some circumstances, this can save you tens or even hundreds of magabytes. You can tell how well it's working by using MemoryInUse before and after you use Share.

Also, some innocuous-seeming things can cause Mathematica to use a whole lot more memory than you expect. Contiguous arrays of machine reals (and only machine reals) can be allocated as so-called "packed" arrays, much the way they would be allocated by C or Fortran. However, if you have a mix of machine reals and other structures (including symbols) in an array, everything has to be "boxed", and the array becomes an array of pointers, which can add a lot of overhead.


One way is to automatize restarting of kernel when it goes out of memory. You can execute your memory-consuming code in a slave kernel while the master kernel only takes the result of computation and controls memory usage.


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.