I have exported a
SavedModel and now I with to load it back in and make a prediction. It was trained with the following features and labels:
F1 : FLOAT32 F2 : FLOAT32 F3 : FLOAT32 L1 : FLOAT32
So say I want to feed in the values
20.9, 1.8, 0.9 get a single
FLOAT32 prediction. How do I accomplish this? I have managed to successfully load the model, but I am not sure how to access it to make the prediction call.
with tf.Session(graph=tf.Graph()) as sess: tf.saved_model.loader.load( sess, [tf.saved_model.tag_constants.SERVING], "/job/export/Servo/1503723455" ) # How can I predict from here? # I want to do something like prediction = model.predict([20.9, 1.8, 0.9])
This question is not a duplicate of the question posted here. This question focuses on a minimal example of performing inference on a
SavedModel of any model class (not just limited to
tf.estimator) and the syntax of specifying input and output node names.