37

I trained my CNN (VGG) through google colab and generated .h5 file. Now problem is, I can predict my output successfully through google colab but when i download that .h5 trained model file and try to predict output on my laptop, I am getting error when loading the model.

Here is the code:

import tensorflow as tf
from tensorflow import keras
import h5py

# Initialization

loaded_model = keras.models.load_model('./train_personCount_model.h5')

And the error:

ValueError: Unknown initializer: GlorotUniform
6
  • 1
    Probably caused by a Keras version mismatch between google colab's and your local machine's.
    – today
    Nov 7, 2018 at 5:15
  • okie let me check..! Nov 7, 2018 at 5:17
  • 6
    Or it can also be caused by mixing tf.keras and keras (not the same).
    – Dr. Snoopy
    Nov 7, 2018 at 7:25
  • @today maybe you are right..i'll acknowledge if that works or vice-versa. Nov 7, 2018 at 8:11
  • @MatiasValdenegro i have used tf.keras on both platform (i.e. google colab as well as my laptop) Nov 7, 2018 at 8:12

11 Answers 11

44

I ran into the same issue. After changing:

from tensorflow import keras

to:

import keras

life is once again worth living.

3
  • this works :) it was due to version mismatch of keras. thanks...! Dec 7, 2018 at 4:51
  • 2
    I had to do it the opposite way. Sep 17, 2019 at 10:14
  • 2
    I wish to still be alive the day keras and tensorflow figure out their mutual imports once and for all. 80% of the time I spend working in machine learning is spent figuring out which import is which according to the functions I need.
    – gented
    Oct 7, 2019 at 23:00
43

I fixed the problem:

Before:

from keras.models import load_model
classifierLoad = load_model('model/modeltest.h5')

Works for me

import tensorflow as tf 
classifierLoad = tf.keras.models.load_model('model/modeltest.h5')
0
30

Wow I, just spent 6 Hours of my life trying to figure this out.. Dmitri posted a solution to this here: I trained a keras model on google colab. Now not able to load it locally on my system.

I'm just basically reposting it here because it worked for me.

This looks like some kind of a serialization bug in keras. If you wrap your load_model with the below CustomObjectScope thingy... all should work..

import keras
from keras.models import load_model
from keras.utils import CustomObjectScope
from keras.initializers import glorot_uniform

with CustomObjectScope({'GlorotUniform': glorot_uniform()}):
        model = load_model('imdb_mlp_model.h5')
2
  • 1
    ^ This is the only solution that worked for me when using the model within Flask May 6, 2019 at 13:48
  • I happened to use a custom initializer , your solution worked!!! Dec 28, 2020 at 16:01
15

Changing

from keras.models import load_model

to

from tensorflow.keras.models import load_model

solved my problem!

To eliminate errors, import all things directly from Keras or TensorFlow. Mixing both of them in same project may result in problems.

2
  • 1
    Thanks, the same helps me. Tensorflow 1.13.1 Oct 8, 2019 at 11:48
  • This was the fixed for me. I guess the issue is that I found API guide for Keras is easier to follow than TF API. I guess TF API is written as a cheatsheet for folks who already mastered TF.
    – chikitin
    Nov 10, 2019 at 4:27
3

I had a same problem and was fixed this way. just don't save the optimizer with the model! just change the save line like this:

the_model.save(file_path,True/False,False)

Second parameter tells Keras to overwrite the model if the file existed or not and the 3rd one tells it not to save the optimizer with the model.


Edit: I ran over the problem again on another system today and this did not helped me this time. so i saved the model conf as json and weights as h5 and used them to rebuild the model in another machine. you can do it like this. save like this:

json = model.to_json()
# Save the json on a file
model.save_weights(weights_filepath,save_format="h5")

rebuild the model like this:

# load the json file
# here i use json as loaded content of json file
model = keras.models.model_from_json(json)
model.load_weights(weights_file_path)
1
  • I have the same problem here and I don't think this is the solution. The error occurs in this line 'model = keras.models.model_from_json(json)'
    – Derk
    Nov 19, 2018 at 8:52
3

Something that helped me which wasn't in any of the answers:

custom_objects={'GlorotUniform': glorot_uniform()}

1
  • Just to clarify, this should be included as an argument to either keras.models.load_model() or tf.keras.models.load_model()
    – KamKam
    Jun 4, 2019 at 11:17
3

In either kaggle or colabs

tf.keras.models.load_model("model_path")

works well

2
from tensorflow.keras.initializers import glorot_uniform

loaded_model = tf.keras.models.load_model("pruned.h5",custom_objects={'GlorotUniform': glorot_uniform()})

this worked for me when importing tensorflow keras

1
  • I happened to use a custom initializer , your solution worked!!! Dec 28, 2020 at 16:02
1

if you are loading the architecture and weights separtly, while loading archtiecture of the model change :

models.model_from_json(json)

to :

tf.keras.models.model_from_json(json)

and the problem is solved

0

I had the same problem with a model built with tensorflow 1.11.0 (using tensorflow.python.keras.models.save_model) and loaded with tensoflow 1.11.0 (using tensorflow.python.keras.models.load_model).

I solved it by upgrading everything to tensorflow 1.13.1, after building the model again with the new version, I could load it without this error.

0

For the json file problem mentioned by @Derk in one of the comment, you can write the following:

model_from_json(model_path, custom_objects = {'GlorotUniform': glorot_uniform()})

and in your import line, remember to write:

from tensorflow.keras.initializers import glorot_uniform

instead of from keras.initializers import glorot_uniform.

It worked out for me when I try to read a model saved in tf2.2 in the environment with only tf1.9.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.