The Insights product and associated repositories are in the process of being deprecated and removed from service. Details on the deprecation status and process can be found in the relevant Github issue <https://github.com/openedx/public-engineering/issues/221>_.
This repository may be archived and moved to the openedx-unsupported Github organization at any time.
The following sections are for historical purposes only.
This repository includes the Django server for the API as well as the API package itself. The client is hosted at https://github.com/openedx/edx-analytics-data-api-client.
The enterprise client is hosted at https://github.com/openedx/frontend-app-admin-portal.
The code in this repository is licensed under version 3 of the AGPL unless otherwise noted.
Please see LICENSE.txt
for details.
The best way to run this service is with edX Devstack: https://github.com/openedx/devstack.
See the Devstack Readme for information on how to install and run devstack.
With devstack running and this repo checked-out locally, you'll want to do the following from your devstack directory:
$ make dev.pull.analyticsapi $ make dev.up.analyticsapi $ make dev.provision.analyticsapi # this will provision the DB user, run migrations, etc. $ docker compose restart analyticsapi # maybe necessary to reset the DB connection $ make analyticsapi-logs # make sure the app is running without errors
Create a virtual environment and activate it.
Install the requirements:
$ make develop
Setup the databases:
$ make migrate-all
The learner API endpoints require elasticsearch with a mapping defined on this wiki page. The connection to elasticsearch can be configured by the
ELASTICSEARCH_LEARNERS_HOST
andELASTICSEARCH_LEARNERS_INDEX
django settings. To run tests locally use:$ make test
This will launch an Elasticsearch Docker container for the tests. To simply run the container without starting the tests, run:
$ make test.run_elasticsearch
To stop an Elasticsearch Docker container, run:
$ make test.stop_elasticsearch
Create a user and authentication token. Note that the user will be created if one does not exist.
$ ./manage.py set_api_key <username> <token>
Run the server:
$ ./manage.py runserver
If you need to make changes to edx-enterprise-data
and have them reflected when you run the edx-analytics-data-api
server,
you can follow these steps. If you do not intend to make changes to edx-enterprise-data
, you can skip this section.
#. Clone the edx-enterprise-data repo into the src
folder alongside your devstack
workspace on the host system.
#. The modified edx-enterprise-data
repository will now be available to devstack containers at /edx/src/edx-enterprise-data
.
#. Inside the edx-data-analytics-api
container run pip install `-e /edx/src/edx-enterprise-data`
- Recommended: Install this repo into a subfolder of your working directory. Within that subfolder create an
src
folder. - Clone the edx-enterprise-data repo into the
src
folder. cd
into youredx-data-analytics-api
folder and activate your virtualenv.- Run
pip install -e ./src/edx-enterprise-data
. - Run the server as per instructions above. Changes to
edx-enterprise-data
should be picked up by the server.
The fixtures directory contains demo data and the
generate_fake_enrollment_data
management command can generate
enrollment data. Run the command below to load/generate this data in the
database.
$ make loaddata
Additional management commands for creating data can be found in edx-enterprise-data
The above command should work fine on its own, but you may see warnings about video ids:
WARNING:analyticsdataserver.clients:Course Blocks API failed to return video ids (401). See README for instructions on how to authenticate the API with your local LMS.
In order to generate video data, the API has to be authenticated with your local LMS so that it can access the video ids for each course. Instead of adding a whole OAuth client to the API for this one procedure, we will piggyback off of the Insights OAuth client by taking the OAuth token it generates and using it here.
Start your local LMS server. (e.g. in devstack, run paver devstack --fast lms).
If your local LMS server is running on any address other than the default of http://localhost:18000/, make sure to add this setting to analyticsdataserver/settings/local.py with the correct URL. (you will likely not need to do this):
# Don't forget to add the trailing forward slash LMS_BASE_URL = 'http://example.com:18000/'
Sign into your local Insights server making sure to use your local LMS for authentication. This will generate a new OAuth access token if you do not already have one that isn't expired.
The user you sign in with must have staff access to the courses for which you want generated video data.
Visit your local LMS server's admin site (by default, this is at http://localhost:18000/admin).
Sign in with a superuser account. Don't have one? Make one with this command in your devstack as the edxapp user:
$ edxapp@precise64:~/edx-platform$ ./manage.py lms createsuperuser
Enter a username and password that you will remember.
On the admin site, find the "Django OAuth Toolkit" section and click the link "Access tokens". The breadcrumbs should show "Home > Django OAuth Toolkit > Access tokens".
Copy the string in the "Token" column for the first row in the table. Also, make sure the "User" of the first row is the same user that you signed in with in step 3.
Paste the string as a new setting in analyticsdataserver/settings/local.py:
COURSE_BLOCK_API_AUTH_TOKEN = '<paste access token here>'
Run make loaddata again and ensure that you see the following log message in the output:
INFO:analyticsdataserver.clients:Successfully authenticated with the Course Blocks API.
Check if you now have video data in the API. Either by querying the API in the swagger docs at /docs/#!/api/Videos_List_GET, or visiting the Insights engagement/videos/ page for a course.
Note: the access tokens expire in one year so you should only have to follow the above steps once a year.
Run make validate
install the requirements, run the tests, and run
lint.