You can insert your additional metrics into the dictionary `logs`

.

```
from keras.callbacks import Callback
class ComputeMetrics(Callback):
def on_epoch_end(self, epoch, logs):
logs['val_metric'] = epoch ** 2 # replace it with your metrics
if (epoch + 1) % 10 == 0:
logs['test_metric'] = epoch ** 3 # same
else:
logs['test_metric'] = np.nan
```

Just remember to place this callback before `CSVLogger`

in your `fit`

call. Callbacks that appear later in the list would receive a modified version of `logs`

. For example,

```
model = Sequential([Dense(1, input_shape=(10,))])
model.compile(loss='mse', optimizer='adam')
model.fit(np.random.rand(100, 10),
np.random.rand(100),
epochs=30,
validation_data=(np.random.rand(100, 10), np.random.rand(100)),
callbacks=[ComputeMetrics(), CSVLogger('1.log')])
```

Now if you take a look at the output log file, you'll see two additional columns `test_metric`

and `val_metric`

:

```
epoch,loss,test_metric,val_loss,val_metric
0,0.547923130989,nan,0.370979120433,0
1,0.525437340736,nan,0.35585285902,1
2,0.501358469725,nan,0.341958616376,4
3,0.479624577463,nan,0.329370084703,9
4,0.460121934414,nan,0.317930338383,16
5,0.440655426979,nan,0.307486981452,25
6,0.422990380526,nan,0.298160370588,36
7,0.406809270382,nan,0.289906248748,49
8,0.3912438941,nan,0.282540213466,64
9,0.377326357365,729,0.276457450986,81
10,0.364721306562,nan,0.271435074806,100
11,0.353612961769,nan,0.266939682364,121
12,0.343238875866,nan,0.263228923082,144
13,0.333940329552,nan,0.260326927304,169
14,0.325931007862,nan,0.25773427248,196
15,0.317790198028,nan,0.255648627281,225
16,0.310636150837,nan,0.25411529541,256
17,0.304091459513,nan,0.252928718328,289
18,0.298703012466,nan,0.252127869725,324
19,0.292693507671,6859,0.251701972485,361
20,0.287824733257,nan,0.251610517502,400
21,0.283586999774,nan,0.251790778637,441
22,0.27927801609,nan,0.252100949883,484
23,0.276239238977,nan,0.252632959485,529
24,0.273072380424,nan,0.253150621653,576
25,0.270296501517,nan,0.253555388451,625
26,0.268056542277,nan,0.254015884399,676
27,0.266158599854,nan,0.254496408701,729
28,0.264166412354,nan,0.254723013639,784
29,0.262506003976,24389,0.255338237286,841
```