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trimmer
0.7.5 is now available on CRAN.
trimmer
is a lightweight toolkit to trim a (potentially big) R object without breaking the results of a given function call, where the (trimmed) R object is given as argument.
The trim
function is the bread and butter of trimmer
. It seeks to reduce the size of an R object by recursively removing elements from the object one-by-one. It does so in a ‘greedy’ fashion - it constantly tries to remove the element that uses the most memory.
The trimming process is constrained by a reference function call. The trimming procedure will not allow elements to be removed from the object, that will cause results from the function call to diverge from the original results of the function call.
There can be many data reasons as to why, you might want to ‘trim’ an R object.
A typical example could be a R model object. It will typically contain all kinds of (more or less useful) stuff and meta data with information about the model. You might want to try to reduce the size of the object for (memory) efficiency purposes, such that the model only contains only what is in fact needed to predict new observations - and nothing else!
Install the development version of trimmer
with:
Or install the version released on CRAN:
The trimming procedure - conducted with trim()
- consists of the following steps:
Get ready by loading the package.
Train a model on the famous mtcars
data set.
I want to trim the model object mdl
as possible without affecting the predictions, computed with function predict()
, for the resulting model.
The trimming is then simply conducted by invoking:
mdl_trim <- trim(obj = mdl,
obj_arg_name = "object",
fun = predict,
newdata = trn)
#> * Initial object size: 22.22 kB
#> Begin trimming object.
#> ~ Trying to remove element [[c('model')]], element size = 14.05 kB
#> v Element removed.
#> * Object size after removal: 18.19 kB [v4.03 kB]
#> ~ Trying to remove element [[c('qr')]], element size = 7.79 kB
#> x Element could not be removed.
#> ~ Trying to remove element [[c('terms')]], element size = 7.63 kB
#> x Element could not be removed.
#> ~ Trying to remove element [[c('qr','qr')]], element size = 6.66 kB
#> v Element removed.
#> * Object size after removal: 14.95 kB [v7.27 kB]
#> ~ Trying to remove element [[c('residuals')]], element size = 2.86 kB
#> v Element removed.
#> * Object size after removal: 14.53 kB [v7.7 kB]
#> ~ Trying to remove element [[c('fitted.values')]], element size = 2.86 kB
#> v Element removed.
#> * Object size after removal: 11.66 kB [v10.56 kB]
#> ~ Trying to remove element [[c('effects')]], element size = 1.4 kB
#> v Element removed.
#> * Object size after removal: 10.76 kB [v11.46 kB]
#> ~ Trying to remove element [[c('coefficients')]], element size = 1.09 kB
#> x Element could not be removed.
#> ~ Trying to remove element [[c('call')]], element size = 728 B
#> v Element removed.
#> * Object size after removal: 10.09 kB [v12.14 kB]
#> ~ Trying to remove element [[c('xlevels')]], element size = 208 B
#> v Element removed.
#> * Object size after removal: 9.85 kB [v12.38 kB]
#> ~ Trying to remove element [[c('qr','qraux')]], element size = 176 B
#> v Element removed.
#> * Object size after removal: 9.62 kB [v12.61 kB]
#> ~ Trying to remove element [[c('assign')]], element size = 96 B
#> v Element removed.
#> * Object size after removal: 9.46 kB [v12.76 kB]
#> ~ Trying to remove element [[c('qr','pivot')]], element size = 96 B
#> x Element could not be removed.
#> ~ Trying to remove element [[c('rank')]], element size = 56 B
#> x Element could not be removed.
#> ~ Trying to remove element [[c('df.residual')]], element size = 56 B
#> v Element removed.
#> * Object size after removal: 9.31 kB [v12.91 kB]
#> ~ Trying to remove element [[c('qr','tol')]], element size = 56 B
#> v Element removed.
#> * Object size after removal: 9.17 kB [v13.06 kB]
#> Trimming completed.
And that’s it!
Note, that I provide the trim
function with the extra argument newdata
, that is passed to the function call with fun
. This means, that the trimming is constrained by, that the results of ‘fun’ (=predict
) MUST be exactly the same on these data before and after the trimming.
The trimmed model object now measures 9.17 kB. The original object measured 22.22 kB.
If you just want the object size to be below some threshold, you can set that as a criterion. The ‘trimming’ process will continue no further, when this threshold is reached. This approach can be time-saving compared to minimizing the object as much as possible (=default setting).
mdl_trim <- trim(obj = mdl,
obj_arg_name = "object",
fun = predict,
newdata = trn,
size_target = 0.015)
#> * Initial object size: 22.22 kB
#> * Target object size: <= 15 kB
#> Begin trimming object.
#> ~ Trying to remove element [[c('model')]], element size = 14.05 kB
#> v Element removed.
#> * Object size after removal: 18.19 kB [v4.03 kB]
#> ~ Trying to remove element [[c('qr')]], element size = 7.79 kB
#> x Element could not be removed.
#> ~ Trying to remove element [[c('terms')]], element size = 7.63 kB
#> x Element could not be removed.
#> ~ Trying to remove element [[c('qr','qr')]], element size = 6.66 kB
#> v Element removed.
#> * Object size after removal: 14.95 kB [v7.27 kB]
#> Trimming completed.
With these settings, the trimmed model object measures 14.95 kB. The original object measured 22.22 kB.
trimmer
is compatible with all R objects, that inherit from the list
class - not just R model objects - and all kinds of functions - not just the predict function
. Hence trimmer
is quite a flexible tool.
To illustrate I will trim the same object but under the constraint, that the results from the summary()
function must be preserved.
mdl_trim <- trim(obj = mdl,
obj_arg_name = "object",
fun = summary)
#> * Initial object size: 22.22 kB
#> Begin trimming object.
#> ~ Trying to remove element [[c('model')]], element size = 14.05 kB
#> v Element removed.
#> * Object size after removal: 18.19 kB [v4.03 kB]
#> ~ Trying to remove element [[c('qr')]], element size = 7.79 kB
#> x Element could not be removed.
#> ~ Trying to remove element [[c('terms')]], element size = 7.63 kB
#> x Element could not be removed.
#> ~ Trying to remove element [[c('qr','qr')]], element size = 6.66 kB
#> x Element could not be removed.
#> ~ Trying to remove element [[c('residuals')]], element size = 2.86 kB
#> x Element could not be removed.
#> ~ Trying to remove element [[c('fitted.values')]], element size = 2.86 kB
#> x Element could not be removed.
#> ~ Trying to remove element [[c('effects')]], element size = 1.4 kB
#> v Element removed.
#> * Object size after removal: 17.42 kB [v4.81 kB]
#> ~ Trying to remove element [[c('coefficients')]], element size = 1.09 kB
#> x Element could not be removed.
#> ~ Trying to remove element [[c('call')]], element size = 728 B
#> x Element could not be removed.
#> ~ Trying to remove element [[c('xlevels')]], element size = 208 B
#> v Element removed.
#> * Object size after removal: 17.21 kB [v5.02 kB]
#> ~ Trying to remove element [[c('qr','qraux')]], element size = 176 B
#> v Element removed.
#> * Object size after removal: 16.94 kB [v5.28 kB]
#> ~ Trying to remove element [[c('assign')]], element size = 96 B
#> v Element removed.
#> * Object size after removal: 16.76 kB [v5.46 kB]
#> ~ Trying to remove element [[c('qr','pivot')]], element size = 96 B
#> x Element could not be removed.
#> ~ Trying to remove element [[c('rank')]], element size = 56 B
#> x Element could not be removed.
#> ~ Trying to remove element [[c('df.residual')]], element size = 56 B
#> x Element could not be removed.
#> ~ Trying to remove element [[c('qr','tol')]], element size = 56 B
#> v Element removed.
#> * Object size after removal: 16.65 kB [v5.58 kB]
#> Trimming completed.
You can choose whether or not to tolerate warnings from reference function calls with argument tolerate_warnings
.
You can also choose, that certain elements MUST NOT be removed in the trimming process. Do this with the dont_touch
argument.
I would like to extend the framework to also support parallellization.
That is it, I hope, that you will enjoy the trimmer
package :)
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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