The jsonlite package is a JSON parser/generator optimized for the web. Its main strength is that it implements a bidirectional mapping between JSON data and the most important R data types. Thereby we can convert between R objects and JSON without loss of type or information, and without the need for any manual data munging. This is ideal for interacting with web APIs, or to build pipelines where data structures seamlessly flow in and out of R using JSON.
library(jsonlite) all.equal(mtcars, fromJSON(toJSON(mtcars)))
[1] TRUE
This vignette introduces basic concepts to get started with jsonlite. For a more detailed outline and motivation of the mapping, see: arXiv:1403.2805.
Simplification is the process where JSON arrays automatically get converted from a list into a more specific R class. The fromJSON function has 3 arguments which control the simplification process: simplifyVector , simplifyDataFrame and simplifyMatrix . Each one is enabled by default.
JSON structure | Example JSON data | Simplifies to R class | Argument in fromJSON |
---|---|---|---|
Array of primitives | ["Amsterdam", "Rotterdam", "Utrecht", "Den Haag"] | Atomic Vector | simplifyVector |
Array of objects | [, ] | Data Frame | simplifyDataFrame |
Array of arrays | [ [1, 2, 3], [4, 5, 6] ] | Matrix | simplifyMatrix |
When simplifyVector is enabled, JSON arrays containing primitives (strings, numbers, booleans or null) simplify into an atomic vector:
# A JSON array of primitives json
[1] "Mario" "Peach" NA "Bowser"
Without simplification, any JSON array turns into a list:
# No simplification: fromJSON(json, simplifyVector = FALSE)
[[1]] [1] "Mario" [[2]] [1] "Peach" [[3]] NULL [[4]] [1] "Bowser"
When simplifyDataFrame is enabled, JSON arrays containing objects (key-value pairs) simplify into a data frame:
json , , <>, ]' mydf
Name Age Occupation 1 Mario 32 Plumber 2 Peach 21 Princess 3 NA 4 Bowser NA Koopa
The data frame gets converted back into the original JSON structure by toJSON (whitespace and line breaks are ignorable in JSON).
mydf$Ranking
Hence you can go back and forth between dataframes and JSON, without any manual data restructuring.
When simplifyMatrix is enabled, JSON arrays containing equal-length sub-arrays simplify into a matrix (or higher order R array):
json
[,1] [,2] [,3] [,4] [1,] 1 2 3 4 [2,] 5 6 7 8 [3,] 9 10 11 12
Again, we can use toJSON to convert the matrix or array back into the original JSON structure:
toJSON(mymatrix, pretty = TRUE)
[ [1, 2, 3, 4], [5, 6, 7, 8], [9, 10, 11, 12] ]
The simplification works for arrays of arbitrary dimensionality, as long as the dimensions match (R does not support ragged arrays).
json
[,1] [,2] [1,] 1 2 [2,] 3 4
myarray[ , ,1]
[,1] [,2] [1,] 1 3 [2,] 5 7 [3,] 9 11
This is all there is to it! For a more detailed outline and motivation of the mapping, see: arXiv:1403.2805.