I'm moving to R from Mathematica where I don't need to anticipate data structures during importation, in particular I do not need to anticipate the rectangularness of my data before import.

I have many files `.csv`

files formatted as follows:

```
tasty,chicken,cinnamon
not_tasty,butter,pepper,onion,cardamom,cayenne
tasty,olive_oil,pepper
okay,olive_oil,onion,potato,black_pepper
not_tasty,tomato,fenugreek,pepper,onion,potato
tasty,butter,cheese,wheat,ham
```

Rows have differing lengths and will only contain strings.

In R, how should I approach this problem?

**What Have You Tried?**

I've tried with `read.table`

:

```
dataImport <- read.table("data.csv", header = FALSE)
class(dataImport)
##[1] "data.frame"
dim(dataImport)
##[1] 6 1
dataImport[1]
##[1] tasty,chicken,cinnamon
##6 Levels: ...
```

I interpret this from the documentation to be a singular column with each list of ingredients as a distinct row. I may extract the first three rows as follows, each row is of `class`

`factor`

but appears to contain more data than what I expect:

```
dataImport[c(1,2,3),1]
## my rows
rowOne <- dataImport[c(1),1];
class(rowOne)
## "factor"
rowOne
## [1] tasty,chicken,cinnamon
## 6 Levels: not_tasty,butter,cheese [...]
```

This is as far as I've pursued this problem for now, I would appreciate advice on suitability of `read.table`

for this data structure.

My goal is to group the data by the first element of each row, and analyse the difference between each type of recipe. In case it helps influence data structure advice, in Mathematica I would do the following:

```
dataImport=Import["data.csv"];
tasty = Cases[dataImport, {"tasty", ingr__} :> {ingr}]
```

**Answer Discussion**

@G.Grothendieck has provided a solution in using `read.table`

and subsequent processing using the `reshape2`

package - this seems tremendously useful and I'll investigate later. General advice here solved my issue, hence accept.

@MrFlick's suggestion of using the `tm`

package was useful for later analysis using `DataframeSource`