I have training (X) and test data (test_data_process) set with the same columns and order, as indicated below:

enter image description here

But when I do

predictions = my_model.predict(test_data_process)    

It gives the following error:

ValueError: feature_names mismatch: ['f0', 'f1', 'f2', 'f3', 'f4', 'f5', 'f6', 'f7', 'f8', 'f9', 'f10', 'f11', 'f12', 'f13', 'f14', 'f15', 'f16', 'f17', 'f18', 'f19', 'f20', 'f21', 'f22', 'f23', 'f24', 'f25', 'f26', 'f27', 'f28', 'f29', 'f30', 'f31', 'f32', 'f33', 'f34'] ['MSSubClass', 'LotFrontage', 'LotArea', 'OverallQual', 'OverallCond', 'YearBuilt', 'YearRemodAdd', 'MasVnrArea', 'BsmtFinSF1', 'BsmtFinSF2', 'BsmtUnfSF', 'TotalBsmtSF', '1stFlrSF', '2ndFlrSF', 'LowQualFinSF', 'GrLivArea', 'BsmtFullBath', 'BsmtHalfBath', 'FullBath', 'HalfBath', 'BedroomAbvGr', 'KitchenAbvGr', 'TotRmsAbvGrd', 'Fireplaces', 'GarageYrBlt', 'GarageCars', 'GarageArea', 'WoodDeckSF', 'OpenPorchSF', 'EnclosedPorch', '3SsnPorch', 'ScreenPorch', 'PoolArea', 'MiscVal', 'YrMoSold'] expected f22, f25, f0, f34, f32, f5, f20, f3, f33, f15, f24, f31, f28, f9, f8, f19, f14, f18, f17, f2, f13, f4, f27, f16, f1, f29, f11, f26, f10, f7, f21, f30, f23, f6, f12 in input data training data did not have the following fields: OpenPorchSF, BsmtFinSF1, LotFrontage, GrLivArea, YrMoSold, FullBath, TotRmsAbvGrd, GarageCars, YearRemodAdd, BedroomAbvGr, PoolArea, KitchenAbvGr, LotArea, HalfBath, MiscVal, EnclosedPorch, BsmtUnfSF, MSSubClass, BsmtFullBath, YearBuilt, 1stFlrSF, ScreenPorch, 3SsnPorch, TotalBsmtSF, GarageYrBlt, MasVnrArea, OverallQual, Fireplaces, WoodDeckSF, 2ndFlrSF, BsmtFinSF2, BsmtHalfBath, LowQualFinSF, OverallCond, GarageArea

So it complains that the training data (X) does not have those fields, whereas it has.

How to solve this issue?


My code:

X = data.select_dtypes(exclude=['object']).drop(columns=['Id'])
X['YrMoSold'] = X['YrSold'] * 12 + X['MoSold']
X = X.drop(columns=['YrSold', 'MoSold', 'SalePrice'])
X = X.fillna(0.0000001)

train_X, val_X, train_y, val_y = train_test_split(X.values, y.values, test_size=0.2)

my_model = XGBRegressor(n_estimators=100, learning_rate=0.05, booster='gbtree')
my_model.fit(train_X, train_y, early_stopping_rounds=5, 
    eval_set=[(val_X, val_y)], verbose=False)

test_data_process = test_data.select_dtypes(exclude=['object']).drop(columns=['Id'])
test_data_process['YrMoSold'] = test_data_process['YrSold'] * 12 + test_data['MoSold']
test_data_process = test_data_process.drop(columns=['YrSold', 'MoSold'])
test_data_process = test_data_process.fillna(0.0000001)
test_data_process = test_data_process[X.columns]

predictions = my_model.predict(test_data_process)    
  • can you show your code? I guess you may se dummy coding & number of levels differ in train and test datasets
    – Edward
    Commented Sep 30, 2018 at 12:52
  • I think you will find the discussion at this github issue helpful; github.com/dmlc/xgboost/issues/2334#issuecomment-333195491
    – dennissv
    Commented Sep 30, 2018 at 12:52
  • @Edward added my code. please see the update.
    – rcs
    Commented Sep 30, 2018 at 13:03
  • @sds If you see my code above, it shows the columns have same ordering. For NA/object, I have already do exclude=['object'] and fillna. For zeroes, even I try adding test_data_process[test_data_process == 0] = 0.0000001 in both X and test_data_process, it still gives the same error.
    – rcs
    Commented Sep 30, 2018 at 13:11

2 Answers 2


Thats an honest mistake.

When feeding your data you are using np arrays:

train_X, val_X, train_y, val_y = train_test_split(X.values, y.values, test_size=0.2)

(X.values is a np.array)

which do not have column names defined

when entering the data set for prediction you are using a dataframe

you should use a numpy array, you can convert it by using:

predictions = my_model.predict(test_data_process.values)  

(add .values)

  • Wow you nailed it. Thanks a lot!
    – rcs
    Commented Sep 30, 2018 at 13:32
  • 3
    np mate. have you tried using lightgbm? its a better SGD implementation than xgboost.
    – epattaro
    Commented Sep 30, 2018 at 13:37
  • I've never tried it. Thanks for the info, I'll check it out.
    – rcs
    Commented Oct 1, 2018 at 0:39
  • 2
    I have a similar problem, however, add .values doesn't resolve the problem. Commented Aug 17, 2019 at 18:51
  • Note that you can also train Xgboost on the pandas dataframe directly if you wish to call the prediction function on the pandas dataframe. But yes, the training and prediction will expect to be called on the same type (either numpy array or pandas dataframe). Commented Nov 4, 2020 at 15:07

I also faced the same problem and spent several hours in checking lots of Q&A of SO and GitHub. At last, the problem is solved :). I thank this response of ianozsvald who mentioned that we have to pass numpy array at the start.

In my case, when I was working on the XGBoost separately (when I did not include it as a base learner in the Stacking classifier), no problem was created. However, when multiple base learners including the XGBoost was included in the Stacking classifier and when I was trying to call KernelExplainer of SHAPley Additive Explanations for explaining Stacking classifier, I got the error.

Here is how I solved the problem.

  1. First, I changed the train_x_df to train_x_df.values while fitting the Stacking classifier.
  2. Second, I changed train_x_df to train_x_df.values and passed it as data of KernelExplainer.

In a sentence, to solve the problem, everywhere, we have to use numpy representation of the dataframe (can be done by property .values). Please, remember, executing only the 2nd step does not work (at least in my case) as still, it gets the mismatch.

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