I want to create jack-knife data partitions for the data frame below, with the partitions to be used in `caret::train`

(like the `caret::groupKFold()`

produces). However, the catch is that I want to restrict the test points to say greater than 16 days, whilst using the remainder of these data as the training set.

```
df <- data.frame(Effect = seq(from = 0.05, to = 1, by = 0.05),
Time = seq(1:20))
```

The reason I want to do this is that I am only really interested in how well the model is predicting the upper bound, as this is the region of interest. I feel like there is a way to do this with the `caret::groupKFold()`

function but I am not sure how. Any help would be greatly appreciated.

An example of what each CV fold would comprise:

```
TrainSet1 <- subset(df, Time != 16)
TestSet1 <- subset(df, Time == 16)
TrainSet2 <- subset(df, Time != 17)
TestSet2 <- subset(df, Time == 17)
TrainSet3 <- subset(df, Time != 18)
TestSet3 <- subset(df, Time == 18)
TrainSet4 <- subset(df, Time != 19)
TestSet4 <- subset(df, Time == 19)
TrainSet5 <- subset(df, Time != 20)
TestSet5 <- subset(df, Time == 20)
```

Albeit in the format that the `caret::groupKFold`

function outputs, so that the folds could be fed into the `caret::train`

function:

```
CVFolds <- caret::groupKFold(df$Time)
CVFolds
```

Thanks in advance!