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edx-platform/lms/djangoapps/instructor/offline_gradecalc.py

98 lines
3.2 KiB
Python

"""
======== Offline calculation of grades =============================================================
Computing grades of a large number of students can take a long time. These routines allow grades to
be computed offline, by a batch process (eg cronjob).
The grades are stored in the OfflineComputedGrade table of the courseware model.
"""
import json
import time
from json import JSONEncoder
from courseware import grades, models
from courseware.courses import get_course_by_id
from django.contrib.auth.models import User
from instructor.utils import DummyRequest
class MyEncoder(JSONEncoder):
def _iterencode(self, obj, markers=None):
if isinstance(obj, tuple) and hasattr(obj, '_asdict'):
gen = self._iterencode_dict(obj._asdict(), markers)
else:
gen = JSONEncoder._iterencode(self, obj, markers)
for chunk in gen:
yield chunk
def offline_grade_calculation(course_key):
'''
Compute grades for all students for a specified course, and save results to the DB.
'''
tstart = time.time()
enrolled_students = User.objects.filter(
courseenrollment__course_id=course_key,
courseenrollment__is_active=1
).prefetch_related("groups").order_by('username')
enc = MyEncoder()
print "{} enrolled students".format(len(enrolled_students))
course = get_course_by_id(course_key)
for student in enrolled_students:
request = DummyRequest()
request.user = student
request.session = {}
gradeset = grades.grade(student, request, course, keep_raw_scores=True)
gs = enc.encode(gradeset)
ocg, _created = models.OfflineComputedGrade.objects.get_or_create(user=student, course_id=course_key)
ocg.gradeset = gs
ocg.save()
print "%s done" % student # print statement used because this is run by a management command
tend = time.time()
dt = tend - tstart
ocgl = models.OfflineComputedGradeLog(course_id=course_key, seconds=dt, nstudents=len(enrolled_students))
ocgl.save()
print ocgl
print "All Done!"
def offline_grades_available(course_key):
'''
Returns False if no offline grades available for specified course.
Otherwise returns latest log field entry about the available pre-computed grades.
'''
ocgl = models.OfflineComputedGradeLog.objects.filter(course_id=course_key)
if not ocgl:
return False
return ocgl.latest('created')
def student_grades(student, request, course, keep_raw_scores=False, use_offline=False):
'''
This is the main interface to get grades. It has the same parameters as grades.grade, as well
as use_offline. If use_offline is True then this will look for an offline computed gradeset in the DB.
'''
if not use_offline:
return grades.grade(student, request, course, keep_raw_scores=keep_raw_scores)
try:
ocg = models.OfflineComputedGrade.objects.get(user=student, course_id=course.id)
except models.OfflineComputedGrade.DoesNotExist:
return dict(
raw_scores=[],
section_breakdown=[],
msg='Error: no offline gradeset available for {}, {}'.format(student, course.id)
)
return json.loads(ocg.gradeset)