I found that dplyr is speedy and simple for aggregate and summarise data. But I can't find out how to solve the following problem with dplyr.

Given these data frames:

```
df_2017 <- data.frame(
expand.grid(1:195,1:65,1:39),
value = sample(1:1000000,(195*65*39)),
period = rep("2017",(195*65*39)),
stringsAsFactors = F
)
df_2017 <- df_2017[sample(1:(195*65*39),450000),]
names(df_2017) <- c("company", "product", "acc_concept", "value", "period")
df_2017$company <- as.character(df_2017$company)
df_2017$product <- as.character(df_2017$product)
df_2017$acc_concept <- as.character(df_2017$acc_concept)
df_2017$value <- as.numeric(df_2017$value)
ratio_df <- data.frame(concept=c("numerator","numerator","numerator","denom", "denom", "denom","name"),
ratio1=c("1","","","4","","","Sales over Assets"),
ratio2=c("1","","","5","6","","Sales over Expenses A + B"), stringsAsFactors = F)
```

where the columns in df_2017 are:

*company*= This is a categorical variable with companies from 1 to 195*product*= This is a categorical, with home apliance products from 1 to 65. For example, 1 could be equal to irons, 2 to television, etc*acc_concept*= This is a categorical variable with accounting concepts from 1 to 39. For example, 1 would be equal to "Sales", 2 to "Total Expenses", 3 to Returns", 4 to "Assets, etc*value*= This is a numeric variable, with USD from 1 to 100.000.000*period*= Categorical variable. Always 2017

As the expand.grid implies, the combinations of *company - product - acc_concept* are never duplicated, but, It could happen that certains subjects have not every *company - product - acc_concept* combinations. That's why the code line "df_2017 <- df_2017[sample(1:195*65*39),450000),]", and that's why the output could turn out into NA (see below).

And where the columns in ratio_df are:

*Concept*= which acc_concept corresponds to numerator, which one to denominator, and which is name of the ratio*ratio1*= acc_concept and name for ratio1*ratio2*= acc_concept and name for ratio2

**I want to calculate 2 ratios (ratio_df) between acc_concept, for each product within each company.**

For example:

I take the first ratio "acc_concepts" and "name" from ratio_df:

```
num_acc_concept <- ratio_df[ratio_df$concept == "numerator", 2]
denom_acc_concept <- ratio_df[ratio_df$concept == "denom", 2]
ratio_name <- ratio_df[ratio_df$concept == "name", 2]
```

Then I calculate the ratio for one product of one company, just to show you want i want to do:

```
ratio1_value <- sum(df_2017[df_2017$company == 1 & df_2017$product == 1 & df_2017$acc_concept %in% num_acc_concept, 4]) / sum(df_2017[df_2017$company == 1 & df_2017$product == 1 & df_2017$acc_concept %in% denom_acc_concept, 4])
```

Output:

```
output <- data.frame(Company="1", Product="1", desc_ratio=ratio_name, ratio_value = ratio1_value, stringsAsFactors = F)
```

As i said before i want to do this for each product within each company

The output data.frame could be **something like this (ratios aren't the true ones because i haven't done the calculations yet)**:

```
company product desc_ratio ratio_value
1 1 Sales over Assets 0.9303675
1 2 Sales over Assets 1.30
1 3 Sales over Assets Nan
1 4 Sales over Assets Inf
1 5 Sales over Assets 2.32
1 6 Sales over Assets NA
.
.
.
1 1 Sales over Expenses A + B 3.25
.
.
.
2 1 Sales over Assets 0.256
```

and so on...

- NaN when ratio is 0 / 0
- Inf when ratio is number / 0
- NA when there is no data for certain company and product.

I hope i have made myself clear this time :)

Is there any way to solve this row problem with dplyr? Should I cast the df_2017 for mutating? In this case, which is the best way for casting?

Any help would be welcome!