# Find first non-zero occurrence in dataframe

I have a time-series of Sales by Account ID. To calculate average growth, I need to extract the first month with non-zero sales for each ID. Since the account could have been established at different times, I need to dynamically identify when sales > 0 for the first time in the account.

The index to the row would be sufficient for me to pass to a function calculating growth. So I expect the following results by Account ID:

``````54 - 
87 - 
95 - 

I tried `apply(df\$Sales,2,match,x>0)`  but this doesn't work.
``````

Any pointers? Alternatively, is there an easier way to compute CAGR with this dataset?

``````CalendarMonth   ID  Sales
8/1/2008    54  6692.60274
9/1/2008    54  6476.712329
10/1/2008   54  6692.60274
11/1/2008   54  6476.712329
12/1/2008   54  11098.60822
7/1/2008    87  0
8/1/2008    87  0
9/1/2008    87  0
10/1/2008   87  18617.94155
11/1/2008   87  18017.36279
12/1/2008   87  18617.94155
1/1/2009    87  18617.94155
2/1/2009    87  16816.20527
7/1/2008    95  0
8/1/2008    95  8015.956284
9/1/2008    95  0
10/1/2008   95  8015.956284
11/1/2008   95  6309.447514
12/1/2008   95  6519.762431
1/1/2009    95  6519.762431
``````
• Are you saying you want the index to that row amongst a subset of entries for an ID where the sales is non-zero? Because 4 for 87 is only if you subset this table, else it would be 9 (counting from top). – A_K Dec 9 '12 at 9:55
• Yes, that is correct. I haven't yet completely figured out how but with plyr and ggplot, I have visions of working on ID subsets, to efficiently calculate and show average growth stats. – user1100825 Dec 9 '12 at 14:37

Would this help:

``````tapply(df\$Sales, df\$ID, function(a)head(which(a>0),1))
``````

where `df` is your data frame above?

If you want the entire row & not just the index, this might help:

``````lapply(unique(df\$ID),function(a) head(subset(df,ID==a & Sales>0),1))
``````
• I edited and replaced your hardcoded indices (2, 3) with the column names (ID, Sales). Using indices is less robust. (Imagine the data comes from a file and someone decides to insert a column). – flodel Dec 9 '12 at 13:21
• Now this is pretty close to @digEmAll's answer. The only diff is that by using `head`, you'll end up with a list in the case that an ID has no non-zero sale, while he will still get a vector but with `NA`. – flodel Dec 9 '12 at 13:34
• Thanks a tonne @flodel. I think we answered nearly simultaneously... :-) Thanks a tonne for the edits. I should be more careful when copying from my trials at the R console. – A_K Dec 9 '12 at 13:52
• Thanks all for your replies! The suggestion works but I'm not able to get to my goal. How do I extract the index from the returned vector so I can read Sales and CalendarMonth? Or am I asking this incorrectly? All I need is the first Sales amount and Calendar Month so I can run numeric ops on them. Sorry if these are novice questions because I am quite confused :( – user1100825 Dec 9 '12 at 16:09
• Then your expected result is different from what was stated in the original question. Which is why I was wondering if you wanted the relative index as requested or the absolute index... – A_K Dec 9 '12 at 16:32

Here's a possible solution:

``````res1 <- tapply(df\$Sales,INDEX=df\$ID,FUN=function(x) which(x > 0))

> res1
54 87 95
1  4  2
``````

Where `res` is a numeric vector with :

``````> names(res)
 "54" "87" "95"
``````

If you want to get the indexes of the row in the original `data.frame` and not in the subsets, you can do:

``````res2 <- tapply(1:nrow(df),
INDEX=df\$ID,FUN=function(idxs) idxs[df[idxs,'Sales'] > 0])

> res2
54 87 95
1  9 15
``````

Then you can simply use the indexes in `res2`, to subset the `data.frame`:

``````df2 <- df[res2,]

> df2
CalendarMonth   ID      Sales
8/1/2008      54     6692.603
10/1/2008      87    18617.942
8/1/2008      95     8015.956
``````
• Thanks. This looks promising! I'll give it a spin. – user1100825 Dec 9 '12 at 16:28

Building up on digEmAll answer, a solution using functional programming (maybe a bit cleaner):

``````> res3 <- tapply(
1:nrow(df)
, df\$ID
, function(Idx) Idx[Position(function(x) df[x, "Sales"] > 0, Idx)]
)
> identical(res3, res2)
 TRUE
``````