Skip to main content

Official Python package for Knoema's API

Project description

This is the official documentation for Knoema’s Python Package. The package can be used for obtaining data from the datasets from the site knoema.com and uploading data to datasets. This package is compatible with Python v3.x+.

Installation

The installation process varies depending on your python version and system used. However, in most cases, the following should work:

pip install knoema

Alternatively, on some systems, python3 may use a different pip executable and may need to be installed via an alternate pip command. For example:

pip3 install knoema

Configuration

By default the package allows you to work only with public datasets from the site knoema.com.

If you want work with private datasets, you need to use the next code:

import knoema
apicfg = knoema.ApiConfig()
apicfg.host = 'knoema.com'
apicfg.app_id = "some_app_id"
apicfg.app_secret = "some_app_secret"

You can get parameters app_id and app_secret after registering on the site knoema.com, in the section “My profile - Apps - create new” (or use existing applications).

Also, you can use other hosts supported by knoema.

Retrieving series from datasets

There are one method for retrieving series from datasets in Python: the get method. The method works with knoema datasets.

The following quick call can be used to retrieve a timeserie from dataset:

import knoema
data_frame = knoema.get('IMFWEO2017Apr', country='914', subject='ngdp')

where:

  • ‘IMFWEO2017Apr’ this is a public dataset, that available for all users by reference https://knoema.com/IMFWEO2017Apr.

  • country and subject are dimensions names

  • ‘914’ is id of country Albania

  • ‘ngdp’ is id of subject Gross domestic product, current prices (U.S. dollars)

This example finds all data points for the dataset IMFWEO2017Apr with selection by country = Albania and subject = Gross domestic product, current prices (U.S. dollars) and stores this series in a pandas dataframe. You can then view the dataframe with operations data_frame.head() or print(date_frame)

Please note that you need to identify all dimensions of the dataset, and for each dimension to indicate the selection. Otherwise, the method returns an error.

For multiple selection you can use the next examples:

import knoema
data_frame = knoema.get('IMFWEO2017Apr', country='914;512;111', subject='lp;ngdp')

or:

import knoema
data_frame = knoema.get('IMFWEO2017Apr', country=['914','512','111'], subject=['lp','ngdp'])

For case when the dimensions of dataset that have multi word names use the next example:

import knoema
data_frame = knoema.get('FDI_FLOW_CTRY', **{'Reporting country': 'AUS',
                                                'Partner country/territory': 'w0',
                                                'Measurement principle': 'DI',
                                                'Type of FDI': 'T_FA_F',
                                                'Type of entity': 'ALL',
                                                'Accounting entry': 'NET',
                                                'Level of counterpart': 'IMC',
                                                'Currency': 'USD'})

In addition to the required using of the selections for dimensions, you can additionally specify the period and frequencies in the parameters. For more details, see the example below:

import knoema
data_frame = knoema.get('IMFWEO2017Apr', country='914;512;111', subject='lp;ngdp', frequency='A', timerange='2007-2017')

Retrieving series from datasets including metadata

By default the function knoema.get returns the one dataframe with data. If you want also get information about metadata(attributes, unit, scale, mnemonics), include the additional parameter in your function, like this:

import knoema
data, metadata = knoema.get('IMFWEO2017Apr', True, country=['914','512'], subject='lp')

The function, in this case, returns two dataframes - one with data, second with metadata.

Uploading Dataset

In order to update the dataset, you must have the access rights to do this. For this, you need to specify the appropriate parameters app_id and app_secret. See section Configuration.

if you have access rights and file for uploading, use the next code:

knoema.upload(file_path, dataset=None, public=False)

where:

  • file_path - the string variable which provides path to the file which will be uploaded to the dataset,

  • dataset - the string variable which provides id of the dataset that is going to be updated from the file. If dataset is None then new dataset will be created based on the file,

  • public - the boolean variable which makes dataset public if public flag is true. Default value is false.

The function returns dataset id if upload is succesfull and raise an exception otherwise.

Verifying Dataset

In order to verify the dataset, you must have the access rights to do this. Please check if you are allowed to verify dataset with your Portal administrator and specify the appropriate parameters app_id and app_secret. See section Configuration.

if you have access rights, use the next code:

knoema.verify('dataset_id', 'publication_date', 'source', 'refernce_url')

where:

  • ‘dataset_id’ - the string variable which should provide id of the dataset that is going to be verified

  • ‘publication_date’ - the datetime variable which should provide the date when dataset has been published

  • ‘source’ - the string variable which should provide the source for the dataset (e.g. IMF)

  • ‘refernce_url’ - the string variable which should provide URL to the source or a site from where the dataset has been downloaded

Deleting Dataset

In order to delete the dataset, you must have the access rights to do this. For this, you need to specify the appropriate parameters app_id and app_secret. See section Configuration.

if you have access rights, use the next code:

knoema.delete('dataset_id')

where:

  • ‘dataset_id’ - the string variable which should provide id of the dataset that is going to be deleted

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distributions

No source distribution files available for this release.See tutorial on generating distribution archives.

Built Distribution

knoema-1.0.4b1-py3-none-any.whl (14.4 kB view details)

Uploaded Python 3

File details

Details for the file knoema-1.0.4b1-py3-none-any.whl.

File metadata

File hashes

Hashes for knoema-1.0.4b1-py3-none-any.whl
Algorithm Hash digest
SHA256 4e71f097678c8c3276f7470946da47bcd00b6a2bd5a73d12de05bf1f7e789b32
MD5 6414036db6c0392d24cb9563d1267359
BLAKE2b-256 2882c0acedb807309d5225d5a3164cd6f3a7ab0a1b6a86c3ba477646520498ef

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page