JSON file stores data as text in human-readable format. Json stands for JavaScript Object Notation. R can read JSON files using the rjson package.
Install rjson Package
In the R console, you can issue the following command to install the rjson package.
install.packages("rjson")
Input Data
Create a JSON file by copying the below data into a text editor like notepad. Save the file with a .json extension and choosing the file type as all files(*.*).
{ "ID":["1","2","3","4","5","6","7","8" ], "Name":["Rick","Dan","Michelle","Ryan","Gary","Nina","Simon","Guru" ], "Salary":["623.3","515.2","611","729","843.25","578","632.8","722.5" ], "StartDate":[ "1/1/2012","9/23/2013","11/15/2014","5/11/2014","3/27/2015","5/21/2013", "7/30/2013","6/17/2014"], "Dept":[ "IT","Operations","IT","HR","Finance","IT","Operations","Finance"] }
Read the JSON File
The JSON file is read by R using the function from JSON(). It is stored as a list in R.
# Load the package required to read JSON files. library("rjson") # Give the input file name to the function. result <- fromJSON(file = "input.json") # Print the result. print(result)
When we execute the above code, it produces the following result −
$ID [1] "1" "2" "3" "4" "5" "6" "7" "8" $Name [1] "Rick" "Dan" "Michelle" "Ryan" "Gary" "Nina" "Simon" "Guru" $Salary [1] "623.3" "515.2" "611" "729" "843.25" "578" "632.8" "722.5" $StartDate [1] "1/1/2012" "9/23/2013" "11/15/2014" "5/11/2014" "3/27/2015" "5/21/2013" "7/30/2013" "6/17/2014" $Dept [1] "IT" "Operations" "IT" "HR" "Finance" "IT" "Operations" "Finance"
Convert JSON to a Data Frame
We can convert the extracted data above to a R data frame for further analysis using the as.data.frame() function.
# Load the package required to read JSON files. library("rjson") # Give the input file name to the function. result <- fromJSON(file = "input.json") # Convert JSON file to a data frame. json_data_frame <- as.data.frame(result) print(json_data_frame)
When we execute the above code, it produces the following result −
id, name, salary, start_date, dept 1 1 Rick 623.30 2012-01-01 IT 2 2 Dan 515.20 2013-09-23 Operations 3 3 Michelle 611.00 2014-11-15 IT 4 4 Ryan 729.00 2014-05-11 HR 5 NA Gary 843.25 2015-03-27 Finance 6 6 Nina 578.00 2013-05-21 IT 7 7 Simon 632.80 2013-07-30 Operations 8 8 Guru 722.50 2014-06-17 Finance
No comments:
Post a Comment