10

I optimized my keras model using hyperopt. Now how do we save the best optimized keras model and its weights to disk.

My code:

from hyperopt import fmin, tpe, hp, STATUS_OK, Trials
from sklearn.metrics import roc_auc_score
import sys

X = []
y = []
X_val = []
y_val = []

space = {'choice': hp.choice('num_layers',
                    [ {'layers':'two', },
                    {'layers':'three',
                    'units3': hp.uniform('units3', 64,1024), 
                    'dropout3': hp.uniform('dropout3', .25,.75)}
                    ]),

            'units1': hp.choice('units1', [64,1024]),
            'units2': hp.choice('units2', [64,1024]),

            'dropout1': hp.uniform('dropout1', .25,.75),
            'dropout2': hp.uniform('dropout2',  .25,.75),

            'batch_size' : hp.uniform('batch_size', 20,100),

            'nb_epochs' :  100,
            'optimizer': hp.choice('optimizer',['adadelta','adam','rmsprop']),
            'activation': 'relu'
        }

def f_nn(params):   
    from keras.models import Sequential
    from keras.layers.core import Dense, Dropout, Activation
    from keras.optimizers import Adadelta, Adam, rmsprop

    print ('Params testing: ', params)
    model = Sequential()
    model.add(Dense(output_dim=params['units1'], input_dim = X.shape[1])) 
    model.add(Activation(params['activation']))
    model.add(Dropout(params['dropout1']))

    model.add(Dense(output_dim=params['units2'], init = "glorot_uniform")) 
    model.add(Activation(params['activation']))
    model.add(Dropout(params['dropout2']))

    if params['choice']['layers']== 'three':
        model.add(Dense(output_dim=params['choice']['units3'], init = "glorot_uniform")) 
        model.add(Activation(params['activation']))
        model.add(Dropout(params['choice']['dropout3']))    

    model.add(Dense(1))
    model.add(Activation('sigmoid'))
    model.compile(loss='binary_crossentropy', optimizer=params['optimizer'])

    model.fit(X, y, nb_epoch=params['nb_epochs'], batch_size=params['batch_size'], verbose = 0)

    pred_auc =model.predict_proba(X_val, batch_size = 128, verbose = 0)
    acc = roc_auc_score(y_val, pred_auc)
    print('AUC:', acc)
    sys.stdout.flush() 
    return {'loss': -acc, 'status': STATUS_OK}


trials = Trials()
best = fmin(f_nn, space, algo=tpe.suggest, max_evals=100, trials=trials)
print 'best: '
print best
0

4 Answers 4

9

Trials class object stores many relevant information related with each iteration of hyperopt. We can also ask this object to save trained model. You have to make few small changes in your code base to achieve this.

-- return {'loss': -acc, 'status': STATUS_OK}
++ return {'loss':loss, 'status': STATUS_OK, 'Trained_Model': model}

Note:'Trained_Model' just a key and you can use any other string.

best = fmin(f_nn, space, algo=tpe.suggest, max_evals=100, trials=trials)
model = getBestModelfromTrials(trials)

Retrieve the trained model from the trials object:

import numpy as np
from hyperopt import STATUS_OK
def getBestModelfromTrials(trials):
    valid_trial_list = [trial for trial in trials
                            if STATUS_OK == trial['result']['status']]
    losses = [ float(trial['result']['loss']) for trial in valid_trial_list]
    index_having_minumum_loss = np.argmin(losses)
    best_trial_obj = valid_trial_list[index_having_minumum_loss]
    return best_trial_obj['result']['Trained_Model']

Note: I have used this approach in Scikit-Learn classes.

5

Make f_nn return the model.

def f_nn(params):
    # ...
    return {'loss': -acc, 'status': STATUS_OK, 'model': model}

The models will be available on trials object under results. I put in some sample data and got print(trials.results) to spit out

[{'loss': 2.8245880603790283, 'status': 'ok', 'model': <keras.engine.training.Model object at 0x000001D725F62B38>}, {'loss': 2.4592788219451904, 'status': 'ok', 'model': <keras.engine.training.Model object at 0x000001D70BC3ABA8>}]

Use np.argmin to find the smallest loss, then save using model.save

trials.results[np.argmin([r['loss'] for r in trials.results])]['model']

(Side note, in C# this would be trials.results.min(r => r.loss).model... if there's a better way to do this in Python please let me know!)

You may wish to use attachments on the trial object if you're using MongoDB, as the model may be very large:

attachments - a dictionary of key-value pairs whose keys are short strings (like filenames) and whose values are potentially long strings (like file contents) that should not be loaded from a database every time we access the record. (Also, MongoDB limits the length of normal key-value pairs so once your value is in the megabytes, you may have to make it an attachment.) Source.

3

I don't know how to send some variable to f_nn or another hyperopt target explicilty. But I've use two approaches to do the same task.
First approach is some global variable (don't like it, because it's non-clear) and the second is to save the metric value to the file, then read and compare with a current metric. The last approach seems to me better.

def f_nn(params):
    ...
    # I omit a part of the code   
    pred_auc =model.predict_proba(X_val, batch_size = 128, verbose = 0)
    acc = roc_auc_score(y_val, pred_auc)

    try:
        with open("metric.txt") as f:
            min_acc = float(f.read().strip())  # read best metric,
    except FileNotFoundError:
            min_acc = acc  # else just use current value as the best

    if acc < min_acc:
         model.save("model.hd5")  # save best to disc and overwrite metric
         with open("metric.txt", "w") as f:
             f.write(str(acc))

    print('AUC:', acc)
    sys.stdout.flush() 
    return {'loss': -acc, 'status': STATUS_OK}

trials = Trials()
best = fmin(f_nn, space, algo=tpe.suggest, max_evals=100, trials=trials)
print 'best: '
print best

from keras.models import load_model
best_model = load_model("model.hd5")

This approach has several advantages: you can keep metric and model together, and even apply to it some version or data version control system - so you can restore results of an experiment in the future.

Edit
It can cause an unexpected behaviour, if there's some metric from a previous run, but you don't delete it. So you can adopt the code - remove the metric after the optimization or use timestamp etc. to distinguish your experimets' data.

2
  • You could also use the ModelCheckpoint callback on model.fit to write to file, though this would save every model from hyperopt and not just the best one. Mar 10, 2019 at 1:41
  • Hmm, may be some upgraded ModelCheckpoint callback gets things done, nice idea Mar 11, 2019 at 20:40
1

It is easy to implement a global variable to save the model. I would recommend saving it as an attribute under the trials object for clarity. In my experience in using hyperopt, unless you wrap ALL the remaining parameters (that are not tuned) into a dict to feed into the objective function (e.g. objective_fn = partial(objective_fn_withParams, otherParams=otherParams), it is very difficult to avoid global vars.

Example provided below:

trials = Trials()
trials.mybest = None # initialize an attribute for saving model later

best = fmin(f_nn, space, algo=tpe.suggest, max_evals=100, trials=trials)
trials.mybest['model'].save("model.hd5")


## In your optimization objective function
def f_nn(params):

    global trials

    model = trainMyKerasModelWithParams(..., params)
    ...
    pred_auc =model.predict_proba(X_val, batch_size = 128, verbose = 0)
    acc = roc_auc_score(y_val, pred_auc)
    loss = -acc

    ## Track only best model (for saving later)
    if ((trials.mybest is None)
        or (loss < trials.mybest['loss'])):
        trials.mybest = {'loss': loss,'model': model}

...

## 

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