I trained my NCHW model on GPU and saved the best state. I now want to make the inference on CPU, which apparently only support NHWC (I get an error mentionning that). Do I have to retrain my model with NHWC, or is there a way to convert my model ?
2 Answers
I was in the same situation, seeing errors like this when trying to run model.predict
on my GPU trained model on an instance with only CPU available:
tensorflow.python.framework.errors_impl.InvalidArgumentError: Default MaxPoolingOp only supports NHWC on device type CPU
I eventually discovered that on Intel CPUs, one can successfully apply a model to data in NCHW format so long as MKL is enabled. With pip, one can install MKL enabled tensorflow with:
pip install inteltensorflow
You can check that it is enabled (in tensorflow 2.3) with:
tf.python._pywrap_util_port.IsMklEnabled()

beautiful. confirming above works, tested with
intel/inteloptimizedtensorflow:2.8.0jupyter
. inference running with pretrained model containing channelfirst layers. Assuming no one updates the defaulttf.keras.backend.image_data_format()
value which ischannels_last
, there is no need to callset_image_data_format('channels_last')
! Aug 5, 2022 at 22:33
IMO, the most straight forward method is to use "inteloptimized tensorflow" as proposed by @jdmcbr
If above is not an option, you can consider converting the model to ONNX format first and then back to Tensorflow.
For example if you have a keras model file keras_model.h5
you can convert your model from Keras to ONNX to Tensorflow format with below 2 commands:
python m tf2onnx.convert keras keras_model.h5 output model.onnx
onnxtf convert infile model.onnx outdir updated_tf_model
If above errors out, you can attempt to convert from Keras to Tensorflow first:
python keras_to_tf.py keras_model.h5 tf_model
python m tf2onnx.convert savedmodel tf_model output model.onnx
onnxtf convert infile model.onnx outdir updated_tf_model
keras_to_tf.py
content:
import sys
from tensorflow.keras.models import load_model
keras_model_file = sys.argv[1]
tf_model_folder = sys.argv[2]
model = load_model(keras_model_file)
model.save(tf_model_folder)
Once you have the tensorflow model in folder updated_tf_model
, then inference can performed, sample inference code snippet provided below.
import sys
import numpy as np
import tensorflow as tf
my_input_shape = (1,2,3,4) # modify accordingly
input_tensor_name = 'input_abc' # modify accordingly
output_tensor_name ='output_abc' # modify accordingly
batch_data = np.random.rand(*my_input_shape).astype(np.float32)
batch_data = tf.constant(batch_data,name=input_tensor_name)
model_folder = sys.argv[1]
loaded = tf.saved_model.load(model_folder)
model_fn = loaded.signatures['serving_default']
output_dict = model_fn(batch_data)
output = output_dict[output_tensor_name]
print(output.shape)
above was tested using:
docker container: tensorflow/tensorflow:2.8.0
py libs: google==3.0.0 tf2onnx==1.12.0 onnxtf==1.10.0 tensorflow_probability==0.15.0 SimpleITK==2.1.1.2 scikitimage==0.19.3

note 1. As you can see i did not provide the last step of converting Tensorflow to Keras model. I think it is possible to convert tensorflow back to keras model, but you'll need to get the weight out from the tensorflow model object or edit pb files. Please do post your solution if you figure out how to extract the weight per layer from Tensorflow model and set them back to keras layers.
note 2. there are 2 unmaintained libraries which by the name of them, seems like they should be able to convert the models from NCHW to NHWC. I was unable to install them successufully. https://github.com/gmalivenko/onnx2keras https://github.com/onnx/kerasonnx