I am new to R. I have a data frame in R like following

```
df <- data.frame(ID=c(rep("A1",10),rep("A2",13),rep("A3",12)),
Values=c(10,2,4,23,10,5,20,15,13,21,15,9,19,5,14,25,18,19,31,26,4,21,4,6,7,12,15,18,25,20,16,29,21,19,10))
```

For every ID I would like to sum the counts in column "Values" in a sliding windows for every 3 positions. Following data frame is an excerpt from `df`

which includes only the records corresponding to `A1`

:

```
ID Values
A1 10
A1 2
A1 4
A1 23
A1 10
A1 5
A1 20
A1 15
A1 13
A1 21
```

I would like to take 3 entries at time and sum and move to next 3 entries. When the sliding windows can't accommodate 3 entries then I skip those values.

For an example, `Window_1`

starts from first value (`10`

) while `window_2`

starts from second value (`2`

) and window_3 starts from third value (`4`

).

```
window_1 = [10+2+4] + [23+10+5] + [20+15+13] = 102
window_2 = [2+4+23] + [10+5+20] + [15+13+21] = 113
window_3 = [4+23+10] + [5+20+15] = 77
```

and report it in a data frame like following:

```
ID Window_1 Window_2 Window_3
A1 102 113 77
```

Likewise I would like sum the counts in column `Values`

for everyid in the data frame "df" and report in a data.frmae like following:

```
ID window_1 window_2 window_3
A1 102 113 77
A2 206 195 161
A3 198 163 175
```

I tried the following code

```
sum_win_3=0
sum_win_2=0
sum_win_1=0
win_1_counts=0
win_2_counts=0
win_3_counts=0
for (i in seq(1,length(df$Values),3))
{
if((i+i+1+i+2) %% 3 == 0)
{
win_1_counts=df$Values[i]+df$Values[i+1]+df$Values[i+2]
win_1_counts[is.na(win_1_counts)]=0
#print(win_1_counts)
}
sum_win_1=sum_win_1+win_1_counts
}
#print(sum_win_1)
for (j in seq(2,length(df$Values),3))
{
if((j+j+1+j+2) %% 3 == 0)
{
win_2_counts=df$Values[j]+df$Values[j+1]+df$Values[j+2]
win_2_counts[is.na(win_2_counts)]=0
#print(win_2_counts)
}
sum_win_2=sum_win_2+win_2_counts
}
#print(sum_win_2)
for (k in seq(3,length(df$Values),3))
{
if((k+k+1+k+2) %% 3 == 0)
{
win_3_counts=df$Values[k]+df$Values[k+1]+df$Values[k+2]
win_3_counts[is.na(win_3_counts)]=0
#print(win_3_counts)
}
#sum_win_3=sum_win_3+win_3_counts
}
print(sum_win_3)
output=data.frame(ID=df[1],Window_1=sum_win_1,Window_2=sum_win_2,Window_3=sum_win_3)
```

The above code sums the counts for window_1, windows_2 and window_3 by taking all the IDs together rather working on every ID separately.

Kindly guide me in getting the the output in the desired format stated above.
Thanks in advance

`zoo`

which has some rolling apply functions. That may be less painful that writing your own (slow) loops. Also consider looking for functions that calculate moving means. You can convert a moving mean back to a moving sum by multiplying the mean by the number of observations that went into it.`A1`

you are not also including 13 and 21?`ID`

each time, while shifting the first value by one each time? Your first two windows were from position 1 to the end and from position two to the end. But the third window was from position 3notuntil the end. I have a solution, but your logic isn't reflecting your desired output.isn'tmoving for every 3 position in`A1`

(according to the calculations you showed, and window 3isn'tmoving until the end according to the calculations you showed. The last value in`A1`

is 21, while your calculation for window 3 ends at 15.`A2`

value for`window_3`

needs to be`161`

(see my answer & also calculated it by hand)4more comments