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Runs any examples associated with the function 'name'.
Examples are stored in the script file, or in a file with the same
name but no extension somewhere on your path. To keep them separate
from the usual script code, all lines are prefixed by %!. Each
example is introduced by the keyword 'demo' flush left to the prefix,
with no intervening spaces. The remainder of the example can contain
arbitrary octave code. For example:
%!demo %! t=0:0.01:2*pi; x = sin(t); %! plot(t,x) %! %------------------------------------------------- %! % the figure window shows one cycle of a sine wave |
Note that the code is displayed before it is executed, so a simple comment at the end suffices. It is generally not necessary to use disp or printf within the demo.
Demos are run in a function environment with no access to external variables. This means that all demos in your function must use separate initialization code. Alternatively, you can combine your demos into one huge demo, with the code:
%! input("Press <enter> to continue: ","s");
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between the sections, but this is discouraged. Other techniques include using multiple plots by saying figure between each, or using subplot to put multiple plots in the same window.
Also, since demo evaluates inside a function context, you cannot
define new functions inside a demo. Instead you will have to
use eval(example('function',n)) to see them. Because eval only
evaluates one line, or one statement if the statement crosses
multiple lines, you must wrap your demo in "if 1 <demo stuff> endif"
with the 'if' on the same line as 'demo'. For example,
%!demo if 1 %! function y=f(x) %! y=x; %! endfunction %! f(3) %! endif |
See also: test, example.
Display the code for example n associated with the function 'name', but do not run it. If n is not given, all examples are displayed.
Called with output arguments, the examples are returned in the form of a string x, with idx indicating the ending position of the various examples.
See demo for a complete explanation.
See also: demo, test.
Determine the execution time of an expression for various n. The n are log-spaced from 1 to max_n. For each n, an initialization expression is computed to create whatever data are needed for the test. If a second expression is given, the execution times of the two expressions will be compared. Called without output arguments the results are presented graphically.
fThe expression to evaluate.
max_nThe maximum test length to run. Default value is 100. Alternatively,
use [min_n,max_n] or for complete control, [n1,n2,…,nk].
initInitialization expression for function argument values. Use k
for the test number and n for the size of the test. This should
compute values for all variables listed in args. Note that init will
be evaluated first for k=0, so things which are constant throughout
the test can be computed then. The default value is x =
randn (n, 1);.
f2An alternative expression to evaluate, so the speed of the two
can be compared. Default is [].
tolIf tol is Inf, then no comparison will be made between the
results of expression f and expression f2. Otherwise,
expression f should produce a value v and expression f2
should produce a value v2, and these shall be compared using
assert(v,v2,tol). If tol is positive,
the tolerance is assumed to be absolute. If tol is negative,
the tolerance is assumed to be relative. The default is eps.
orderThe time complexity of the expression O(a n^p). This
is a structure with fields a and p.
nThe values n for which the expression was calculated and the execution time was greater than zero.
T_fThe nonzero execution times recorded for the expression f in seconds.
T_f2The nonzero execution times recorded for the expression f2 in seconds.
If it is needed, the mean time ratio is just mean(T_f./T_f2).
The slope of the execution time graph shows the approximate
power of the asymptotic running time O(n^p). This
power is plotted for the region over which it is approximated
(the latter half of the graph). The estimated power is not
very accurate, but should be sufficient to determine the
general order of your algorithm. It should indicate if for
example your implementation is unexpectedly O(n^2)
rather than O(n) because it extends a vector each
time through the loop rather than preallocating one which is
big enough. For example, in the current version of Octave,
the following is not the expected O(n):
speed("for i=1:n,y{i}=x(i); end", "", [1000,10000])
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but it is if you preallocate the cell array y:
speed("for i=1:n,y{i}=x(i);end", ...
"x=rand(n,1);y=cell(size(x));", [1000,10000])
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An attempt is made to approximate the cost of the individual
operations, but it is wildly inaccurate. You can improve the
stability somewhat by doing more work for each n. For
example:
speed("airy(x)", "x=rand(n,10)", [10000,100000])
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When comparing a new and original expression, the line on the speedup ratio graph should be larger than 1 if the new expression is faster. Better algorithms have a shallow slope. Generally, vectorizing an algorithm will not change the slope of the execution time graph, but it will shift it relative to the original. For example:
speed("v=sum(x)", "", [10000,100000], ...
"v=0;for i=1:length(x),v+=x(i);end")
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A more complex example, if you had an original version of xcorr
using for loops and another version using an FFT, you could compare the
run speed for various lags as follows, or for a fixed lag with varying
vector lengths as follows:
speed("v=xcorr(x,n)", "x=rand(128,1);", 100, ...
"v2=xcorr_orig(x,n)", -100*eps)
speed("v=xcorr(x,15)", "x=rand(20+n,1);", 100, ...
"v2=xcorr_orig(x,n)", -100*eps)
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Assuming one of the two versions is in xcorr_orig, this
would compare their speed and their output values. Note that the
FFT version is not exact, so we specify an acceptable tolerance on
the comparison 100*eps, and the errors should be computed
relatively, as abs((x - y)./y) rather than
absolutely as abs(x - y).
Type example('speed') to see some real examples. Note for
obscure reasons, you can't run examples 1 and 2 directly using
demo('speed'). Instead use, eval(example('speed',1))
and eval(example('speed',2)).
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