freesixty 0.1.32
Freesixty
A simple Google Analytics API data extraction.
Installation
pip install freesixty
Access credentials
To set up access to your Google Analytics follow first step of these instructions.
Store them in your local machine and enter their path into KEY_FILE_LOCATION variable.
Get data
import freesixty
KEY_FILE_LOCATION = './client_secrets.json'
VIEW_ID = 'XXXXXXX'
query = {
'reportRequests': [
{
'viewId': VIEW_ID,
'dateRanges': [{'startDate': '2009-01-01', 'endDate': '2019-01-05'}],
'metrics': [{'expression': 'ga:sessions'}],
'dimensions': [{'name': 'ga:country', 'name': 'ga:date'}]
}]
}
analytics = freesixty.initialize_analyticsreporting(KEY_FILE_LOCATION)
result, is_data_golden = freesixty.execute_query(analytics, query)
On the other hand if we want to store resulting data to a desired URI.
import freesixty
KEY_FILE_LOCATION = './client_secrets.json'
VIEW_ID = 'XXXXXXX'
folder_uri = 'file:///tmp/example/folder'
query = {
'reportRequests': [
{
'viewId': VIEW_ID,
'dateRanges': [{'startDate': '2009-01-01', 'endDate': '2019-01-05'}],
'metrics': [{'expression': 'ga:sessions'}],
'dimensions': [{'name': 'ga:country', 'name': 'ga:date'}]
}]
}
analytics = freesixty.initialize_analyticsreporting(KEY_FILE_LOCATION)
freesixty.store_query(analytics, query, folder_uri)
Getting more data
In case a query would return over 100k rows of data it will fail. We can get around it by splitting the date range into smaller chunks:
queries = freesixty.split_query(query=query, start_date='2019-01-01', end_date='2019-02-01', freq='D')
for query in queries:
freesixty.store_query(analytics, query, folder_uri)
Useful links
Try out queries
Compose queries
TODO:
More complete tests
:cake:
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