I've create a pipeline as follows (using the Keras Scikit-Learn API)

```
estimators = []
estimators.append(('standardize', StandardScaler()))
estimators.append(('mlp', KerasRegressor(build_fn=baseline_model, nb_epoch=50, batch_size=5, verbose=0)))
pipeline = Pipeline(estimators)
```

and fit it with

```
pipeline.fit(trainX,trainY)
```

If I predict with `pipline.predict(testX)`

, I (believe) I get standardised predictions.

**How do I predict on testX so that predictedY it at the same scale as the actual (untouched) testY (i.e. NOT standardised prediction, but instead the actual values)?** I see there is an

`inverse_transform`

method for Pipeline, however appears to be for only reverting a transformed `X`

.
`fit`

method - I'm now thinking the transforms only occur on the input features`X`

andnot`Y`

(hence the fitted model is on non-standardised`Y`

), so the`predict`

method produces non-standardised predictions?