I'm attempting kaggle.com's digit recognizer competition using Python and scikit-learn.

After removing labels from the training data, I add each row in CSV into a list like this:

```
for row in csv:
train_data.append(np.array(np.int64(row)))
```

I do the same for the test data.

I pre-process this data with PCA in order to perform dimension reduction (and feature extraction?):

```
def preprocess(train_data, test_data, pca_components=100):
# convert to matrix
train_data = np.mat(train_data)
# reduce both train and test data
pca = decomposition.PCA(n_components=pca_components).fit(train_data)
X_train = pca.transform(train_data)
X_test = pca.transform(test_data)
return (X_train, X_test)
```

I then create a kNN classifier and fit it with the `X_train`

data and make predictions using the `X_test`

data.

Using this method I can get around 97% accuracy.

My question is about the dimensionality of the data before and after PCA is performed

What are the dimensions of `train_data`

and `X_train`

?

How does the number of components influence the dimensionality of the output? Are they the same thing?