I am dealing with a collection of lists, which contain deeply nested lists with no fixed structure other than the fact that:
- The lists at level 1 have a single element called
- All leaf data in the hierarchy is numeric.
list( list(variations = list( '12' = list(x = c(a = 1)) )), list(variations = list( '3' = list(x = c(a = 6, b = 4)), 'abcd' = list(x = c(b = 1), m = list(n = list(o = c(p = 1023)))) )) )
I need to convert the list data structure into a melted (per
reshape) dataframe of the form
data.frame( variation = c( '12', '3', '3', 'abcd', 'abcd'), variable = c('x.a', 'x.a', 'x.b', 'x.b', 'm.n.o.p'), value = c( 1, 6, 4, 1, 1023) )
or another data structure I can perform fast grouping and filtering on.
There are many millions of nodes in the data structure. The collection can have thousands of entries and each entry has tens of thousands of variations with 2-10+ leaf nodes with unknown names.
I am looking for suggestions on how to build the dataframe from the collection in a fast way.
One approach would be to use
unlist on the source data to flatten the lists but I am not sure about the following:
Should I run
unliston the whole data structure, which will convert the leaf numeric nodes to strings (which I will then need to parse back into numerics) or should I use
unliston each variation (which will leave the numeric leaf nodes intact)?
What's a good way to parse the long names that
unlistwill create to extract
variablevalues without generating too many intermediate values?
Regardless of whether
unlist is the right way to go, I'm wondering:
Is it better to built separate
valuevectors or a matrix and then combine them into a dataframe as opposed to build the dataframe row-by-row?
Should I not be using dataframes but another, faster, data structure for dealing with this type of data? Whatever I end up using needs to be convertible to dataframes for use with