This note is about the design of data transforms using the cdata
package. The cdata
packages demonstrates the “coordinatized data” theory and includes an implementation of the “fluid data” methodology for general data re-shaping.
cdata
adheres to the so-called “Rule of Representation”:
Fold knowledge into data, so program logic can be stupid and robust.
The Art of Unix Programming, Erick S. Raymond, Addison-Wesley, 2003
The design principle expressed by this rule is that it is much easier to reason about data than to try to reason about code, so using data to control your code is often a very good trade-off.
We showed in this article how cdata
takes a transform control table to specify how you want your data reshaped. The question then becomes: how do you come up with the transform control table?
Let’s discuss that using the example from the article: “plotting the iris
data faceted”.
The goal is to produce the following graph with ggplot2
In order to do this, one wants data that looks like the following:
Notice Species
is in a column so we can use it to choose colors. Also, flower_part
is in a column so we can use it to facet.
However, iris
data starts in the following format.
We call this form a row record because all the information about a single entity (a “record”) lies in a single row. When the information about an entity is distributed across several rows (in whatever shape), we call that a block record. So the goal is to transform the row records in iris
into the desired block records before plotting.
This new block record is partially keyed by the flower_part
column, which tells us which piece of a record a row corresponds to (the petal information, or the sepal information). We could also add an iris_id
as a per-record key; this we are not adding, as we do not need it for our graphing task. However, adding a per-record id makes the transform invertible, as is shown here.
There are a great number of ways to achieve the above transform. We are going to concentrate on the cdata
methodology. We want to move data from an “all of the record is in one row” format to “the meaningful record unit is a block across several rows” format. In cdata
this means we want to perform a rowrecs_to_blocks()
transform. To do this we start by labeling the roles of different portion of the block oriented data example. In particular we identify:
Species
, but often a per-record index or key).flower_part
).Petal
and Sepal
).data.frame
. These will go where values are currently in the block record data.We show this labeling below.
Notice we have marked the measurements 1.4, 0.2, 5.1, 3.5
as “column names”, not values. That is because we must show which columns in the original data frame these values are coming from.
This annotated example record is the guide for building what we call the transform control table. We build up the transform control table following these rules:
columnsToCopy
argument.The R
version of the above is specified as follows:
# get a small sample of irises
<- head(iris, n = 3)
iris # add a record id to iris
$iris_id <- seq_len(nrow(iris))
iris
::kable(iris) knitr
Sepal.Length | Sepal.Width | Petal.Length | Petal.Width | Species | iris_id |
---|---|---|---|---|---|
5.1 | 3.5 | 1.4 | 0.2 | setosa | 1 |
4.9 | 3.0 | 1.4 | 0.2 | setosa | 2 |
4.7 | 3.2 | 1.3 | 0.2 | setosa | 3 |
Specify the layout transform.
library("cdata")
<- wrapr::qchar_frame(
controlTable "flower_part", "Length" , "Width" |
"Petal" , Petal.Length, Petal.Width |
"Sepal" , Sepal.Length, Sepal.Width )
<- rowrecs_to_blocks_spec(
layout
controlTable,recordKeys = c("iris_id", "Species"))
print(layout)
#> {
#> row_record <- wrapr::qchar_frame(
#> "iris_id" , "Species", "Petal.Length", "Petal.Width", "Sepal.Length", "Sepal.Width" |
#> . , . , Petal.Length , Petal.Width , Sepal.Length , Sepal.Width )
#> row_keys <- c('iris_id', 'Species')
#>
#> # becomes
#>
#> block_record <- wrapr::qchar_frame(
#> "iris_id" , "Species", "flower_part", "Length" , "Width" |
#> . , . , "Petal" , Petal.Length, Petal.Width |
#> . , . , "Sepal" , Sepal.Length, Sepal.Width )
#> block_keys <- c('iris_id', 'Species', 'flower_part')
#>
#> # args: c(checkNames = TRUE, checkKeys = FALSE, strict = FALSE, allow_rqdatatable = FALSE)
#> }
And we can now perform the transform.
%.>%
iris ::kable(.) knitr
Sepal.Length | Sepal.Width | Petal.Length | Petal.Width | Species | iris_id |
---|---|---|---|---|---|
5.1 | 3.5 | 1.4 | 0.2 | setosa | 1 |
4.9 | 3.0 | 1.4 | 0.2 | setosa | 2 |
4.7 | 3.2 | 1.3 | 0.2 | setosa | 3 |
<- iris %.>%
iris_aug
layout
%.>%
iris_aug ::kable(.) knitr
iris_id | Species | flower_part | Length | Width |
---|---|---|---|---|
1 | setosa | Petal | 1.4 | 0.2 |
1 | setosa | Sepal | 5.1 | 3.5 |
2 | setosa | Petal | 1.4 | 0.2 |
2 | setosa | Sepal | 4.9 | 3.0 |
3 | setosa | Petal | 1.3 | 0.2 |
3 | setosa | Sepal | 4.7 | 3.2 |
The data is now ready to plot using ggplot2
as was shown here.
Designing a blocks_to_rowrecs
transform is just as easy, as the controlTable
has the same shape as the incoming record block (assuming the record partial key controlling column is the first column). All one has to is get the reverse specification using t()
.
For example:
<- t(layout)
inv_layout
print(inv_layout)
#> {
#> block_record <- wrapr::qchar_frame(
#> "iris_id" , "Species", "flower_part", "Length" , "Width" |
#> . , . , "Petal" , Petal.Length, Petal.Width |
#> . , . , "Sepal" , Sepal.Length, Sepal.Width )
#> block_keys <- c('iris_id', 'Species', 'flower_part')
#>
#> # becomes
#>
#> row_record <- wrapr::qchar_frame(
#> "iris_id" , "Species", "Petal.Length", "Petal.Width", "Sepal.Length", "Sepal.Width" |
#> . , . , Petal.Length , Petal.Width , Sepal.Length , Sepal.Width )
#> row_keys <- c('iris_id', 'Species')
#>
#> # args: c(checkNames = TRUE, checkKeys = FALSE, strict = FALSE, allow_rqdatatable = FALSE)
#> }
%.>%
iris_aug %.>%
inv_layout ::kable(.) knitr
iris_id | Species | Petal.Length | Petal.Width | Sepal.Length | Sepal.Width |
---|---|---|---|---|---|
1 | setosa | 1.4 | 0.2 | 5.1 | 3.5 |
2 | setosa | 1.4 | 0.2 | 4.9 | 3.0 |
3 | setosa | 1.3 | 0.2 | 4.7 | 3.2 |
Notice in both cases that having examples of the before and after form of the transform is the guide to building the transform specification, that is, the transform control table. In practice: we highly recommend looking at your data, writing down what a single record on each side of the transform would look like, and then using that to fill out the control table on paper.
The exercise of designing a control table really opens your eyes to how data is moving in such transforms and exposes a lot of structure of data transforms. For example:
tidyr
gather()
or spread()
.k
rows then the rowrecs_to_blocks()
direction could be implemented as k-1
rbind()
s.Some discussion of the nature of block records and row records in cdata
can be found here.
Some additional tutorials on cdata
data transforms can are given below: