Suppose I have this dataset

```
Id Name Price sales Profit Month Category Mode Supplier
1 A 2 0 0 1 X K John
1 A 2 0 0 2 X K John
1 A 2 5 8 3 X K John
1 A 2 5 8 4 X L Sam
2 B 2 3 4 1 X L Sam
2 B 2 0 0 2 X L Sam
2 B 2 0 0 3 X M John
2 B 2 0 0 4 X L John
3 C 2 0 0 1 X K John
3 C 2 8 10 2 Y M John
3 C 2 8 10 3 Y K John
3 C 2 0 0 4 Y K John
5 E 2 0 0 1 Y M Sam
5 E 2 5 5 2 Y L Sam
5 E 2 5 9 3 Y M Sam
5 E 2 0 0 4 Z M Kyle
5 E 2 5 8 5 Z L Kyle
5 E 2 5 8 6 Z M Kyle
```

I want to delete rows with zeroes for `Sales`

and `Profit`

column by `Id`

group
So for a certain `Id`

if two or more consecutive rows have zero values for `sales`

and `profit`

those rows will get delete. So this dataset will become like this.

```
Id Name Price sales Profit Month Category Mode Supplier
1 A 2 5 8 3 X K John
1 A 2 5 8 4 X L Sam
2 B 2 3 4 1 X L Sam
3 C 2 0 0 1 X K John
3 C 2 8 10 2 Y M John
3 C 2 8 10 3 Y K John
3 C 2 0 0 4 Y K John
5 E 2 0 0 1 Y M Sam
5 E 2 5 5 2 Y L Sam
5 E 2 5 9 3 Y M Sam
5 E 2 0 0 4 Z M Kyle
5 E 2 5 8 5 Z L Kyle
5 E 2 5 8 6 Z M Kyle
```

I can remove all rows if they have zero values for `Sales`

and `Profit`

with

```
df1 = df[!(df$sales==0 & test$Profit==0),]
```

But how to delete rows only in certain group in this case by Id

P.S The idea is to delete entries for those products if they started selling after few months or got abandoned after few months in a year cycle.

`lapply`

a`for`

loop,`data.table`

, or`(d)plyr`

to split-apply-combine – Alex W Dec 15 '15 at 16:35