I am attempting to use the caret package in R for several nested cross validation processes with "user defined' performance metrics. I have had all kinds of problems, so I pulled back to see see if there were issues with a more out of the box use of caret and it seems I have ran into one.

If I run the following:

```
install.packages("caret")
install.packages("gbm")
library(caret)
library(gbm)
data(GermanCredit)
GermanCredit$Class<-ifelse(GermanCredit$Class=='Bad',1,0)
gbmGrid <- expand.grid(.interaction.depth = 1,
.n.trees = 150,
.shrinkage = 0.1)
gbmMOD <- train(Class~., data=GermanCredit
,method = "gbm",
tuneGrid= gbmGrid,
distribution="bernoulli",
bag.fraction = 0.5,
train.fraction = 0.5,
n.minobsinnode = 10,
cv.folds = 1,
keep.data=TRUE,
verbose=TRUE
)
```

I get the error (or similar):

```
Error in { :
task 1 failed - "arguments imply differing number of rows: 619, 381"
```

with warnings:

```
1: In eval(expr, envir, enclos) :
model fit failed for Resample01: interaction.depth=1, n.trees=150, shrinkage=0.1
```

But, if I run just the gbm routine everything finishes fine.

```
gbm1 <- gbm(Class~., data=GermanCredit,
distribution="bernoulli",
n.trees=150, # number of trees
shrinkage=0.10,
interaction.depth=1,
bag.fraction = 0.5,
train.fraction = 0.5,
n.minobsinnode = 10,
cv.folds = 1,
keep.data=TRUE,
verbose=TRUE
)
```