I am going to try answering it myself. I am seeing Warning message in a hope to understand it better for any limitations. However, for me it works fine (ignoring the warning message).
On a side note, data.table breaks all the limitation of R that stops it to do Big Data processing, and lest i forget my own research would like it to be documented.
Meanwhile let us create a function that breaks up the route in legs:
construct.legs <- function(ro) {
node_vector <- unlist(strsplit(ro, ">"))
d_nodes <- node_vector[!node_vector %in% node_vector[1]]
o_nodes <- node_vector[!node_vector %in% node_vector[length(node_vector)]]
legs <- paste(o_nodes,d_nodes, sep = ">")
}
Now create nested leg_table
for each route containing legs of the route. Of course using the function construct.legs
that was defined above:
route_data[, leg_data := .(list(data.table(leg = construct.legs(route)))), by = list(row.names(route_data))]
How does our route_data
look like now?
route travel_type leg1_time_hr leg2_time_hr leg3_time_hr leg4_time_hr leg_data
1: Seattle>NewDelhi>Patna>Motihari business_meeting 18 2.00 4.00 NA <data.table>
2: Seattle>NewDelhi>Motihari casual_trip 18 18.00 NA NA <data.table>
3: Seattle>Hyderabad>NewDelhi>Patna>Motihari office_meeting 18 2.25 1.75 4 <data.table>
Let's take a look what is inside if the nested data.table in 3rd row of route_data
route_data$leg_data[3] #Access the leg_table like we do in data.frame. But this returns leg_data as a list
route_data$leg_data[[3]] #This returns leg_data as a data.table
route_data[3, leg_data] #Access the leg_table like we do in data.table. This returns leg_data as a list
route_data[3, leg_data[[1]]] #This returns leg_data as a data.table
data.table stored in the 3rd row of route_data
leg
1: Seattle>Hyderabad
2: Hyderabad>NewDelhi
3: NewDelhi>Patna
4: Patna>Motihari
Let me add row number in route_data
tha i will use later in populating transit time within nested table leg_data
route_data[, route_num := seq_len(.N)]
Similarly add row number in nested table leg_Table
route_data[, leg_data := .(list(leg_data[[1]][, leg_num := seq_len(.N)])), by = list(row.names(route_data))]
You see a Warning message that says there was invalid internal self reference that has been fixed by shallow copying. So, i am going to ignore this as of now. I would need help here from someone who can help me understand if it breaks anything. Anyway, lets proceed.
Why do we have [[1]]
? This is to ensure that sub_table values are returned as data.table, not as list. Try running route_data[3, leg_data[[1]]]
and route_data[3, leg_data]
to see the difference.
Now finally add the transit time in nested leg_data
from route_data
route_data[, leg_data := .(list(leg_data[[1]][, leg_transit_time_hr := sapply(leg_num, function(x) {route_data[[route_num, 2+x, with = FALSE]]})])), by = list(row.names(route_data))]
What did we do here?
We just looped in row number leg_num
of leg_data
via sapply by passing it as vector and utilized the row number route_num
of route_data
to identify right column of transit time to extract from the route_data
.
Why did we place double [[]]
on the [[route_num, 2+x, with = FALSE]]
?
Double braces ensure it returns value as vector not as data.table
And, finally, let's take a look into the nested data.table leg_data
of 3rd row of route_data
route_data[3, leg_data[[1]]]
leg leg_num leg_transit_time_hr
1: Seattle>Hyderabad 1 18.00
2: Hyderabad>NewDelhi 2 2.25
3: NewDelhi>Patna 3 1.75
4: Patna>Motihari 4 4.00
Let's see how 2nd row nested table looks like:
leg leg_num leg_transit_time_hr
1: Seattle>NewDelhi 1 18
2: NewDelhi>Motihari 2 18