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The main goal of the tfdeploy package is to create models in R and then export, test, and deploy those models to environments without R. However, there may be cases when it makes sense to use a saved model directly from R:
One way to use a deployed model from R would be to execute HTTP requests using a package like httr
. For non-deployed models, it is possible to use serve_savedmodel()
- as we did for local testing - along with a tool like httr
. However, there is an easier way to make predictions from a saved model using the predict_savedmodel()
function.
Using the same MNIST model described previously, we can easily make predictions for new pre-processed images. For example, we can load the MNIST test data set and create predictions for the first 10 images:
library(keras)
library(tfdeploy)
test_images <- dataset_mnist()$test$x
test_images <- array_reshape(test_images, dim = c(nrow(test_images), 784)) / 255
test_images <- lapply(1:10, function(i) {test_images[i,]})
predict_savedmodel(processed_test_list, 'savedmodel')
Prediction 1:
$prediction
[1] 3.002971e-37 8.401216e-29 2.932129e-24 4.048731e-22 0.000000e+00 9.172148e-37
[7] 0.000000e+00 1.000000e+00 4.337524e-31 1.772979e-17
Prediction 2:
$prediction
[1] 0.000000e+00 4.548326e-22 1.000000e+00 2.261879e-31 0.000000e+00 0.000000e+00
[7] 0.000000e+00 0.000000e+00 2.390626e-38 0.000000e+00
...
A few things to keep in mind:
Just like the HTTP POST requests, predict_savedmodel()
expects the new instance data to be pre-processed.
predict_savedmodel()
requires the new data to be in a list, and it always returns a list. This requirement faciliates models with more complex inputs or ouputs.
In the previous example we used predict_savedmodel()
with the directory, ‘savedmodel’, which was created with the export_savedmodel()
function In addition to providing a path to a saved model directory, predict_savedmodel()
can also be used with a deployed model by supplying a REST URL, a CloudML model by supplying a CloudML name and version, or by supplying a graph object loaded with load_savedmodel()
.
The last option above references the load_savedmodel()
function. load_savedmodel()
should be used alongside of predict_savedmodel()
if you’ll be calling the prediction function multiple times. load_savedmodel()
effectively caches the model graph in memory and can speed up repeated calls to predict_savedmodel()
. This caching is useful, for example, in a Shiny application where user input would drive calls to predict_savedmodel()
.
# if there will only be one batch of predictions
predict_savedmodel(instances, 'savedmodel')
# if there will be multiple batches of predictions
sess <- tensorflow::tf$Session()
graph <- load_savedmodel(sess, 'savedmodel')
predict_savedmodel(instances, graph)
# ... more work ...
predict_savedmodel(instances, graph)
There are a few distinct ways that a model can be represented in R. The most straightforward representation is the in-memory, R model object. This object is what is created and used while developing and training a model.
A second representation is the on-disk saved model. This representation of the model can be used by the *_savedmodel
functions. As a special case, load_savedmodel()
creates a new R object pointing to the model graph. It is important to keep in mind that these saved models are not the full R model object. For example, you can not update or re-train a graph from a saved model.
Finally, for Keras models there are 2 other representations: HDF5 files and serialized R objects. Each of these represenations captures the entire in-memory R object. For example, using save_model_hdf5()
and then load_model_hdf5()
will result in a model that can be updated or retrained. Use the serialize_model()
and unserialized_model()
to save models as R objects.
If you are developing a model and have access to the in-memory R model object, you should use the model object for predictions using R’s predict
function.
If you are developing a Keras model and would like to save the model for use in a different session, you should use the HDF5 file or serialize the model and then save it to an R data format like RDS.
If you are going to deploy a model and want to test it’s HTTP interface, you should export the model using export_savedmodel()
and then test with either serve_savedmodel()
and your HTTP client or predict_savedmodel()
.
If you are using R and want to create predictions from a deployed or saved model, and you don’t have access to the in-memory R model object, you should use predict_savedmode()l
.
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.