I'm training a deep neural net using Keras and looking for a way to save and later load the history object which is of keras.callbacks.History type. Here's the setup:

history_model_1 = model_1.fit_generator(train_generator,

history_model_1 is the variable I want to be saved and loaded during another Python session.

  • 1
    Why do you want to save and reload it? It can't be saved but there might be options if what you need is for example the value of the loss and metrics at each epoch...
    – Nassim Ben
    Apr 22, 2018 at 19:10
  • 2
    Training the model takes more or less 12h on my laptop. I want to save data needed for plotting loss function and accuracy values
    – balkon16
    Apr 24, 2018 at 15:19
  • Thanks :-) I tried to answer with that in mind
    – Nassim Ben
    Apr 24, 2018 at 15:35

5 Answers 5


history_model_1 is a callback object. It contains all sorts of data and isn't serializable.

However, it contains a dictionnary with all the values that you actually want to save (cf your comment) :

import json
# Get the dictionary containing each metric and the loss for each epoch
history_dict = history_model_1.history
# Save it under the form of a json file
json.dump(history_dict, open(your_history_path, 'w'))

You can now access the value of the loss at the 50th epoch like this :


Reload it with

history_dict = json.load(open(your_history_path, 'r'))

I hope this helps.

  • 3
    Could you add the lines of code to reload the history? Feb 28, 2019 at 18:01
  • 15
    it says TypeError: Object of type 'float32' is not JSON serializable for me Sep 17, 2019 at 13:58
  • Unfortunately this would only work after the method fit is ended (and history_model_1 is created), but it would be helpful to save such an object with a callback itself, in a schedule. Also, how would I restore the history if the training has been interrupted, so it could be checked, continued and updated with a new round of training session? Jun 29, 2021 at 14:15

You can create a class so you will have the same structure and you can access in both cases with the same code.

import pickle
class History_trained_model(object):
    def __init__(self, history, epoch, params):
        self.history = history
        self.epoch = epoch
        self.params = params

with open(savemodel_path+'/history', 'wb') as file:
    model_history= History_trained_model(history.history, history.epoch, history.params)
    pickle.dump(model_history, file, pickle.HIGHEST_PROTOCOL)

then to access it:

with open(savemodel_path+'/history', 'rb') as file:

  • I got TypeError: cannot pickle '_thread.RLock' object. Maybe history is not serializable and therefore it fails? Feb 3, 2021 at 10:02
  • The greatest way!
    – Andrey
    Jun 9, 2022 at 7:57

You can use Pandas to save the history object as a CSV file.

import pandas as pd


The JSON approach results in a TypeError: Object of type 'float32' is not JSON serializable. The reason for this is that the corresponding values in the history dictionary are NumPy arrays.

  • 3
    This results with ValueError: DataFrame constructor not properly called!
    – I.P.
    Mar 24, 2021 at 23:06
  • How to load history after that?
    – Andrey
    Jun 8, 2022 at 14:12

Taken from Tobias, use this updated version

import pandas as pd


history_logger=tf.keras.callbacks.CSVLogger(filename, separator=",", append=True)
history_model_1 = model_1.fit_generator(train_generator,
  • 2
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    Sep 18, 2022 at 22:08

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