I'm trying to use xgboost on Python.

Here is my code. xgb.train works but I get on error with xgb.cv although it seems I used it the correct way.

The following works for me:

###### XGBOOST ######

import datetime
startTime = datetime.datetime.now()

import xgboost as xgb
data_train   = np.array(traindata.drop('Category',axis=1))
labels_train = np.array(traindata['Category'].cat.codes)

data_valid   = np.array(validdata.drop('Category',axis=1))
labels_valid = np.array(validdata['Category'].astype('category').cat.codes)

weights_train = np.ones(len(labels_train))
weights_valid  = np.ones(len(labels_valid ))

dtrain = xgb.DMatrix( data_train, label=labels_train,weight = weights_train)
dvalid  = xgb.DMatrix( data_valid , label=labels_valid ,weight = weights_valid )

param = {'bst:max_depth':5, 'bst:eta':0.05, # eta [default=0.3]
         #'min_child_weight':1,'gamma':0,'subsample':1,'colsample_bytree':1,'scale_pos_weight':0, # default
         # max_delta_step:0 # default
         'min_child_weight':5,'scale_pos_weight':0, 'max_delta_step':2,
         'silent':1, 'objective':'multi:softprob' }

param['nthread'] = 4
param['eval_metric'] = 'mlogloss'
param['lambda'] = 2

evallist  = [(dtrain,'train'),(dvalid,'eval')] # if there is a validation set
# evallist  = [(dtrain,'train')]                   # if there is no validation set

plst = param.items()
plst += [('ams@0','eval_metric')]

num_round = 100

bst = xgb.train( plst, dtrain, num_round, evallist,early_stopping_rounds=5 ) # early_stopping_rounds=10 # when there is a validation set

# bst.res=xgb.cv(plst,dtrain,num_round,nfold = 5,evallist,early_stopping_rounds=5)


# dump model
# dump model with feature map
# bst.dump_model('dump.raw.txt','featmap.txt')

x = datetime.datetime.now() - startTime

But if I change the line:

bst = xgb.train( plst, dtrain, num_round, evallist,early_stopping_rounds=5 )

to this:

bst.res=xgb.cv(plst,dtrain,num_round,nfold = 5,evallist,early_stopping_rounds=5)

I get the following unexpected error:

File "<ipython-input-46-ebdf0546f464>", line 45
    bst.res=xgb.cv(plst,dtrain,num_round,nfold = 5,evallist,early_stopping_rounds=5) SyntaxError: non-keyword arg after
keyword arg

EDIT: following the advice below from @martineau, and trying this

bst.res=xgb.cv(plst,dtrain,num_round,evallist,nfold = 5,early_stopping_rounds=5)

yields this error

TypeError Traceback (most recent call last) in () 43 # bst = xgb.train( plst, dtrain, num_round, evallist,early_stopping_rounds=5 ) # early_stopping_rounds=10 # when there is a validation set 44 ---> 45 bst.res=xgb.cv(plst,dtrain,num_round,evallist,nfold = 5,early_stopping_rounds=5) 46 47 bst.save_model('0001.model')

TypeError: cv() got multiple values for keyword argument 'nfold'

  • evallist should be keyword arg Commented Jun 6, 2016 at 1:30
  • According to the documentation it doesn't look like the call to xgboost.train() is correct because the first argument is supposed to be a dict, not a list. The same is true for xgboost.cv(). Regardless, from the error message you need to put all keyword arguments at the end of any function calls — so swap the order of nfold = 5 & evallist in the list of calling arguments.
    – martineau
    Commented Jun 6, 2016 at 1:57
  • i tried it, it doesn't work (i edited the question) Commented Jun 6, 2016 at 2:07
  • I am also getting a keyword error when using xgb.cv() with the folds parameter. The Python API states that the 'folds' parameter can be used to set a custom Kfold. However, it produces this error: TypeError: cv() got an unexpected keyword argument 'folds' I am running it on an ec2 instance, using the latest xgb from pip. The same code works perfectly on my workstation, which is using a slightly older version of xgb. The Sklearn versions are the same on ec2 and workstation. I see that the verbose=false error was fixed recently, has the API changed? Thanks. Commented Jun 21, 2016 at 13:07
  • Any chances you could validate my answer? Commented Jul 3, 2016 at 16:06

2 Answers 2


You can't use evallist in cv. So you should remove evallist from the arguments of the xgb.cv call. Put another way, you should try:

bst.res = xgb.cv(plst, dtrain, num_round, nfold=5, early_stopping_rounds=5)

instead of

bst.res=xgb.cv(plst,dtrain,num_round,nfold = 5,evallist,early_stopping_rounds=5)

Chris, the python training API slightly changed between the pip version and the current master branch in github. They mainly added the keyword args verbose_eval, callbacks and folds to the cv function. The verbose_eval and callbacks keywords were already there in the pip version for the train function but not for the cv one.

  • Thanks for your answer, hopefully the OP will accept. Commented Jul 6, 2016 at 0:16

My understanding is that this error results from installing xgboost via pip, which is now out of date. XGBoost should instead be installed as follows:

git clone --recursive https://github.com/dmlc/xgboost
cd xgboost; make -j4 
cd python-package; sudo python setup.py install
  • whats the syntax for this under MacOS ? Commented Jun 24, 2016 at 2:08
  • Any chances you could validate my answer? Commented Jun 28, 2016 at 10:11
  • Hi Chris, I think you also started a bounty of 50 reputation points. I answered it in time... Commented Jul 6, 2016 at 18:18
  • Not sure how to award it now, if you know message me and I will do so. Commented Jul 6, 2016 at 22:14

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