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Files | Size | Format | Created | Updated | License | Source |
---|---|---|---|---|---|---|
2 | 454kB | csv zip | 6 years ago | 5 years ago | Open Data Commons Public Domain Dedication and License v1.0 | World Bank and OECD |
Download files in this dataset
File | Description | Size | Last changed | Download |
---|---|---|---|---|
gdp | 444kB | csv (444kB) , json (1MB) | ||
gdp_zip | Compressed versions of dataset. Includes normalized CSV and JSON data with original data and datapackage.json. | 427kB | zip (427kB) |
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This is a preview version. There might be more data in the original version.
Field Name | Order | Type (Format) | Description |
---|---|---|---|
Country Name | 1 | string | |
Country Code | 2 | string | |
Year | 3 | year | |
Value | 4 | number | GDP in current USD |
Use our data-cli tool designed for data wranglers:
data get https://datahub.io/core/gdp
data info core/gdp
tree core/gdp
# Get a list of dataset's resources
curl -L -s https://datahub.io/core/gdp/datapackage.json | grep path
# Get resources
curl -L https://datahub.io/core/gdp/r/0.csv
curl -L https://datahub.io/core/gdp/r/1.zip
If you are using R here's how to get the data you want quickly loaded:
install.packages("jsonlite", repos="https://cran.rstudio.com/")
library("jsonlite")
json_file <- 'https://datahub.io/core/gdp/datapackage.json'
json_data <- fromJSON(paste(readLines(json_file), collapse=""))
# get list of all resources:
print(json_data$resources$name)
# print all tabular data(if exists any)
for(i in 1:length(json_data$resources$datahub$type)){
if(json_data$resources$datahub$type[i]=='derived/csv'){
path_to_file = json_data$resources$path[i]
data <- read.csv(url(path_to_file))
print(data)
}
}
Note: You might need to run the script with root permissions if you are running on Linux machine
Install the Frictionless Data data package library and the pandas itself:
pip install datapackage
pip install pandas
Now you can use the datapackage in the Pandas:
import datapackage
import pandas as pd
data_url = 'https://datahub.io/core/gdp/datapackage.json'
# to load Data Package into storage
package = datapackage.Package(data_url)
# to load only tabular data
resources = package.resources
for resource in resources:
if resource.tabular:
data = pd.read_csv(resource.descriptor['path'])
print (data)
For Python, first install the `datapackage` library (all the datasets on DataHub are Data Packages):
pip install datapackage
To get Data Package into your Python environment, run following code:
from datapackage import Package
package = Package('https://datahub.io/core/gdp/datapackage.json')
# print list of all resources:
print(package.resource_names)
# print processed tabular data (if exists any)
for resource in package.resources:
if resource.descriptor['datahub']['type'] == 'derived/csv':
print(resource.read())
If you are using JavaScript, please, follow instructions below:
Install data.js
module using npm
:
$ npm install data.js
Once the package is installed, use the following code snippet:
const {Dataset} = require('data.js')
const path = 'https://datahub.io/core/gdp/datapackage.json'
// We're using self-invoking function here as we want to use async-await syntax:
;(async () => {
const dataset = await Dataset.load(path)
// get list of all resources:
for (const id in dataset.resources) {
console.log(dataset.resources[id]._descriptor.name)
}
// get all tabular data(if exists any)
for (const id in dataset.resources) {
if (dataset.resources[id]._descriptor.format === "csv") {
const file = dataset.resources[id]
// Get a raw stream
const stream = await file.stream()
// entire file as a buffer (be careful with large files!)
const buffer = await file.buffer
// print data
stream.pipe(process.stdout)
}
}
})()
Country, regional and world GDP in current US Dollars ($). Regional means collections of countries e.g. Europe & Central Asia.
The data is sourced from the World Bank (specifically this dataset) which in turn lists as sources: World Bank national accounts data, and OECD National Accounts data files.
Note that there are a variety of different GDP indicators on offer from the World Bank including:
Process is recorded and automated in python script:
scripts/process.py
Up-to-date (auto-updates every year) gdp dataset could be found on the datahub.io: https://datahub.io/core/gdp
This Data Package is made available under the Public Domain Dedication and License v1.0 whose full text can be found at: http://www.opendatacommons.org/licenses/pddl/1.0/
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Workflow integration (e.g. Python packages, NPM packages)
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