import re |
import re |
import csv |
import csv |
import sys |
import sys |
import json |
import json |
import logging |
import logging |
import operator |
import operator |
import collections |
import collections |
from ckan.lib.base import (BaseController, c, g, render, request, response, abort) |
from ckan.lib.base import (BaseController, c, g, render, request, response, abort) |
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import sqlalchemy |
import sqlalchemy |
from sqlalchemy import func, cast, Integer |
from sqlalchemy import func, cast, Integer |
import ckan.model as model |
import ckan.model as model |
from ga_model import GA_Url, GA_Stat, GA_ReferralStat, GA_Publisher |
from ga_model import GA_Url, GA_Stat, GA_ReferralStat, GA_Publisher |
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log = logging.getLogger('ckanext.ga-report') |
log = logging.getLogger('ckanext.ga-report') |
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DOWNLOADS_AVAILABLE_FROM = '2012-12' |
DOWNLOADS_AVAILABLE_FROM = '2012-12' |
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def _get_month_name(strdate): |
def _get_month_name(strdate): |
import calendar |
import calendar |
from time import strptime |
from time import strptime |
d = strptime(strdate, '%Y-%m') |
d = strptime(strdate, '%Y-%m') |
return '%s %s' % (calendar.month_name[d.tm_mon], d.tm_year) |
return '%s %s' % (calendar.month_name[d.tm_mon], d.tm_year) |
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def _get_unix_epoch(strdate): |
def _get_unix_epoch(strdate): |
from time import strptime,mktime |
from time import strptime,mktime |
d = strptime(strdate, '%Y-%m') |
d = strptime(strdate, '%Y-%m') |
return int(mktime(d)) |
return int(mktime(d)) |
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def _month_details(cls, stat_key=None): |
def _month_details(cls, stat_key=None): |
''' |
''' |
Returns a list of all the periods for which we have data, unfortunately |
Returns a list of all the periods for which we have data, unfortunately |
knows too much about the type of the cls being passed as GA_Url has a |
knows too much about the type of the cls being passed as GA_Url has a |
more complex query |
more complex query |
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This may need extending if we add a period_name to the stats |
This may need extending if we add a period_name to the stats |
''' |
''' |
months = [] |
months = [] |
day = None |
day = None |
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q = model.Session.query(cls.period_name,cls.period_complete_day)\ |
q = model.Session.query(cls.period_name,cls.period_complete_day)\ |
.filter(cls.period_name!='All').distinct(cls.period_name) |
.filter(cls.period_name!='All').distinct(cls.period_name) |
if stat_key: |
if stat_key: |
q= q.filter(cls.stat_name==stat_key) |
q= q.filter(cls.stat_name==stat_key) |
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vals = q.order_by("period_name desc").all() |
vals = q.order_by("period_name desc").all() |
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if vals and vals[0][1]: |
if vals and vals[0][1]: |
day = int(vals[0][1]) |
day = int(vals[0][1]) |
ordinal = 'th' if 11 <= day <= 13 \ |
ordinal = 'th' if 11 <= day <= 13 \ |
else {1:'st',2:'nd',3:'rd'}.get(day % 10, 'th') |
else {1:'st',2:'nd',3:'rd'}.get(day % 10, 'th') |
day = "{day}{ordinal}".format(day=day, ordinal=ordinal) |
day = "{day}{ordinal}".format(day=day, ordinal=ordinal) |
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for m in vals: |
for m in vals: |
months.append( (m[0], _get_month_name(m[0]))) |
months.append( (m[0], _get_month_name(m[0]))) |
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return months, day |
return months, day |
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class GaReport(BaseController): |
class GaReport(BaseController): |
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def csv(self, month): |
def csv(self, month): |
import csv |
import csv |
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q = model.Session.query(GA_Stat).filter(GA_Stat.stat_name!='Downloads') |
q = model.Session.query(GA_Stat).filter(GA_Stat.stat_name!='Downloads') |
if month != 'all': |
if month != 'all': |
q = q.filter(GA_Stat.period_name==month) |
q = q.filter(GA_Stat.period_name==month) |
entries = q.order_by('GA_Stat.period_name, GA_Stat.stat_name, GA_Stat.key').all() |
entries = q.order_by('GA_Stat.period_name, GA_Stat.stat_name, GA_Stat.key').all() |
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response.headers['Content-Type'] = "text/csv; charset=utf-8" |
response.headers['Content-Type'] = "text/csv; charset=utf-8" |
response.headers['Content-Disposition'] = str('attachment; filename=stats_%s.csv' % (month,)) |
response.headers['Content-Disposition'] = str('attachment; filename=stats_%s.csv' % (month,)) |
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writer = csv.writer(response) |
writer = csv.writer(response) |
writer.writerow(["Period", "Statistic", "Key", "Value"]) |
writer.writerow(["Period", "Statistic", "Key", "Value"]) |
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for entry in entries: |
for entry in entries: |
writer.writerow([entry.period_name.encode('utf-8'), |
writer.writerow([entry.period_name.encode('utf-8'), |
entry.stat_name.encode('utf-8'), |
entry.stat_name.encode('utf-8'), |
entry.key.encode('utf-8'), |
entry.key.encode('utf-8'), |
entry.value.encode('utf-8')]) |
entry.value.encode('utf-8')]) |
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def index(self): |
def index(self): |
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# Get the month details by fetching distinct values and determining the |
# Get the month details by fetching distinct values and determining the |
# month names from the values. |
# month names from the values. |
c.months, c.day = _month_details(GA_Stat) |
c.months, c.day = _month_details(GA_Stat) |
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# Work out which month to show, based on query params of the first item |
# Work out which month to show, based on query params of the first item |
c.month_desc = 'all months' |
c.month_desc = 'all months' |
c.month = request.params.get('month', '') |
c.month = request.params.get('month', '') |
if c.month: |
if c.month: |
c.month_desc = ''.join([m[1] for m in c.months if m[0]==c.month]) |
c.month_desc = ''.join([m[1] for m in c.months if m[0]==c.month]) |
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q = model.Session.query(GA_Stat).\ |
q = model.Session.query(GA_Stat).\ |
filter(GA_Stat.stat_name=='Totals') |
filter(GA_Stat.stat_name=='Totals') |
if c.month: |
if c.month: |
q = q.filter(GA_Stat.period_name==c.month) |
q = q.filter(GA_Stat.period_name==c.month) |
entries = q.order_by('ga_stat.key').all() |
entries = q.order_by('ga_stat.key').all() |
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def clean_key(key, val): |
def clean_key(key, val): |
if key in ['Average time on site', 'Pages per visit', 'New visits', 'Bounce rate (home page)']: |
if key in ['Average time on site', 'Pages per visit', 'New visits', 'Bounce rate (home page)']: |
val = "%.2f" % round(float(val), 2) |
val = "%.2f" % round(float(val), 2) |
if key == 'Average time on site': |
if key == 'Average time on site': |
mins, secs = divmod(float(val), 60) |
mins, secs = divmod(float(val), 60) |
hours, mins = divmod(mins, 60) |
hours, mins = divmod(mins, 60) |
val = '%02d:%02d:%02d (%s seconds) ' % (hours, mins, secs, val) |
val = '%02d:%02d:%02d (%s seconds) ' % (hours, mins, secs, val) |
if key in ['New visits','Bounce rate (home page)']: |
if key in ['New visits','Bounce rate (home page)']: |
val = "%s%%" % val |
val = "%s%%" % val |
if key in ['Total page views', 'Total visits']: |
if key in ['Total page views', 'Total visits']: |
val = int(val) |
val = int(val) |
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return key, val |
return key, val |
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# Query historic values for sparkline rendering |
# Query historic values for sparkline rendering |
sparkline_query = model.Session.query(GA_Stat)\ |
sparkline_query = model.Session.query(GA_Stat)\ |
.filter(GA_Stat.stat_name=='Totals')\ |
.filter(GA_Stat.stat_name=='Totals')\ |
.order_by(GA_Stat.period_name) |
.order_by(GA_Stat.period_name) |
sparkline_data = {} |
sparkline_data = {} |
for x in sparkline_query: |
for x in sparkline_query: |
sparkline_data[x.key] = sparkline_data.get(x.key,[]) |
sparkline_data[x.key] = sparkline_data.get(x.key,[]) |
key, val = clean_key(x.key,float(x.value)) |
key, val = clean_key(x.key,float(x.value)) |
tooltip = '%s: %s' % (_get_month_name(x.period_name), val) |
tooltip = '%s: %s' % (_get_month_name(x.period_name), val) |
sparkline_data[x.key].append( (tooltip,x.value) ) |
sparkline_data[x.key].append( (tooltip,x.value) ) |
# Trim the latest month, as it looks like a huge dropoff |
# Trim the latest month, as it looks like a huge dropoff |
for key in sparkline_data: |
for key in sparkline_data: |
sparkline_data[key] = sparkline_data[key][:-1] |
sparkline_data[key] = sparkline_data[key][:-1] |
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c.global_totals = [] |
c.global_totals = [] |
if c.month: |
if c.month: |
for e in entries: |
for e in entries: |
key, val = clean_key(e.key, e.value) |
key, val = clean_key(e.key, e.value) |
sparkline = sparkline_data[e.key] |
sparkline = sparkline_data[e.key] |
c.global_totals.append((key, val, sparkline)) |
c.global_totals.append((key, val, sparkline)) |
else: |
else: |
d = collections.defaultdict(list) |
d = collections.defaultdict(list) |
for e in entries: |
for e in entries: |
d[e.key].append(float(e.value)) |
d[e.key].append(float(e.value)) |
for k, v in d.iteritems(): |
for k, v in d.iteritems(): |
if k in ['Total page views', 'Total visits']: |
if k in ['Total page views', 'Total visits']: |
v = sum(v) |
v = sum(v) |
else: |
else: |
v = float(sum(v))/float(len(v)) |
v = float(sum(v))/float(len(v)) |
sparkline = sparkline_data[k] |
sparkline = sparkline_data[k] |
key, val = clean_key(k,v) |
key, val = clean_key(k,v) |
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c.global_totals.append((key, val, sparkline)) |
c.global_totals.append((key, val, sparkline)) |
# Sort the global totals into a more pleasant order |
# Sort the global totals into a more pleasant order |
def sort_func(x): |
def sort_func(x): |
key = x[0] |
key = x[0] |
total_order = ['Total page views','Total visits','Pages per visit'] |
total_order = ['Total page views','Total visits','Pages per visit'] |
if key in total_order: |
if key in total_order: |
return total_order.index(key) |
return total_order.index(key) |
return 999 |
return 999 |
c.global_totals = sorted(c.global_totals, key=sort_func) |
c.global_totals = sorted(c.global_totals, key=sort_func) |
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keys = { |
keys = { |
'Browser versions': 'browser_versions', |
'Browser versions': 'browser_versions', |
'Browsers': 'browsers', |
'Browsers': 'browsers', |
'Operating Systems versions': 'os_versions', |
'Operating Systems versions': 'os_versions', |
'Operating Systems': 'os', |
'Operating Systems': 'os', |
'Social sources': 'social_networks', |
'Social sources': 'social_networks', |
'Languages': 'languages', |
'Languages': 'languages', |
'Country': 'country' |
'Country': 'country' |
} |
} |
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def shorten_name(name, length=60): |
def shorten_name(name, length=60): |
return (name[:length] + '..') if len(name) > 60 else name |
return (name[:length] + '..') if len(name) > 60 else name |
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def fill_out_url(url): |
def fill_out_url(url): |
import urlparse |
import urlparse |
return urlparse.urljoin(g.site_url, url) |
return urlparse.urljoin(g.site_url, url) |
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c.social_referrer_totals, c.social_referrers = [], [] |
c.social_referrer_totals, c.social_referrers = [], [] |
q = model.Session.query(GA_ReferralStat) |
q = model.Session.query(GA_ReferralStat) |
q = q.filter(GA_ReferralStat.period_name==c.month) if c.month else q |
q = q.filter(GA_ReferralStat.period_name==c.month) if c.month else q |
q = q.order_by('ga_referrer.count::int desc') |
q = q.order_by('ga_referrer.count::int desc') |
for entry in q.all(): |
for entry in q.all(): |
c.social_referrers.append((shorten_name(entry.url), fill_out_url(entry.url), |
c.social_referrers.append((shorten_name(entry.url), fill_out_url(entry.url), |
entry.source,entry.count)) |
entry.source,entry.count)) |
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q = model.Session.query(GA_ReferralStat.url, |
q = model.Session.query(GA_ReferralStat.url, |
func.sum(GA_ReferralStat.count).label('count')) |
func.sum(GA_ReferralStat.count).label('count')) |
q = q.filter(GA_ReferralStat.period_name==c.month) if c.month else q |
q = q.filter(GA_ReferralStat.period_name==c.month) if c.month else q |
q = q.order_by('count desc').group_by(GA_ReferralStat.url) |
q = q.order_by('count desc').group_by(GA_ReferralStat.url) |
for entry in q.all(): |
for entry in q.all(): |
c.social_referrer_totals.append((shorten_name(entry[0]), fill_out_url(entry[0]),'', |
c.social_referrer_totals.append((shorten_name(entry[0]), fill_out_url(entry[0]),'', |
entry[1])) |
entry[1])) |
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for k, v in keys.iteritems(): |
for k, v in keys.iteritems(): |
q = model.Session.query(GA_Stat).\ |
q = model.Session.query(GA_Stat).\ |
filter(GA_Stat.stat_name==k).\ |
filter(GA_Stat.stat_name==k).\ |
order_by(GA_Stat.period_name) |
order_by(GA_Stat.period_name) |
# Buffer the tabular data |
# Buffer the tabular data |
if c.month: |
if c.month: |
entries = [] |
entries = [] |
q = q.filter(GA_Stat.period_name==c.month).\ |
q = q.filter(GA_Stat.period_name==c.month).\ |
order_by('ga_stat.value::int desc') |
order_by('ga_stat.value::int desc') |
d = collections.defaultdict(int) |
d = collections.defaultdict(int) |
for e in q.all(): |
for e in q.all(): |
d[e.key] += int(e.value) |
d[e.key] += int(e.value) |
entries = [] |
entries = [] |
for key, val in d.iteritems(): |
for key, val in d.iteritems(): |
entries.append((key,val,)) |
entries.append((key,val,)) |
entries = sorted(entries, key=operator.itemgetter(1), reverse=True) |
entries = sorted(entries, key=operator.itemgetter(1), reverse=True) |
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# Run a query on all months to gather graph data |
# Run a query on all months to gather graph data |
graph_query = model.Session.query(GA_Stat).\ |
graph_query = model.Session.query(GA_Stat).\ |
filter(GA_Stat.stat_name==k).\ |
filter(GA_Stat.stat_name==k).\ |
order_by(GA_Stat.period_name) |
order_by(GA_Stat.period_name) |
graph_dict = {} |
graph_dict = {} |
for stat in graph_query: |
for stat in graph_query: |
graph_dict[ stat.key ] = graph_dict.get(stat.key,{ |
graph_dict[ stat.key ] = graph_dict.get(stat.key,{ |
'name':stat.key, |
'name':stat.key, |
'data': [] |
'data': [] |
}) |
}) |
graph_dict[ stat.key ]['data'].append({ |
graph_dict[ stat.key ]['data'].append({ |
'x':_get_unix_epoch(stat.period_name), |
'x':_get_unix_epoch(stat.period_name), |
'y':float(stat.value) |
'y':float(stat.value) |
}) |
}) |
graph = [ graph_dict[x[0]] for x in entries ] |
stats_in_table = [x[0] for x in entries] |
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stats_not_in_table = set(graph_dict.keys()) - set(stats_in_table) |
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stats = stats_in_table + sorted(list(stats_not_in_table)) |
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graph = [graph_dict[x] for x in stats] |
setattr(c, v+'_graph', json.dumps( _to_rickshaw(graph,percentageMode=True) )) |
setattr(c, v+'_graph', json.dumps( _to_rickshaw(graph,percentageMode=True) )) |
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# Get the total for each set of values and then set the value as |
# Get the total for each set of values and then set the value as |
# a percentage of the total |
# a percentage of the total |
if k == 'Social sources': |
if k == 'Social sources': |
total = sum([x for n,x,graph in c.global_totals if n == 'Total visits']) |
total = sum([x for n,x,graph in c.global_totals if n == 'Total visits']) |
else: |
else: |
total = sum([num for _,num in entries]) |
total = sum([num for _,num in entries]) |
setattr(c, v, [(k,_percent(v,total)) for k,v in entries ]) |
setattr(c, v, [(k,_percent(v,total)) for k,v in entries ]) |
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return render('ga_report/site/index.html') |
return render('ga_report/site/index.html') |
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class GaDatasetReport(BaseController): |
class GaDatasetReport(BaseController): |
""" |
""" |
Displays the pageview and visit count for datasets |
Displays the pageview and visit count for datasets |
with options to filter by publisher and time period. |
with options to filter by publisher and time period. |
""" |
""" |
def publisher_csv(self, month): |
def publisher_csv(self, month): |
''' |
''' |
Returns a CSV of each publisher with the total number of dataset |
Returns a CSV of each publisher with the total number of dataset |
views & visits. |
views & visits. |
''' |
''' |
c.month = month if not month == 'all' else '' |
c.month = month if not month == 'all' else '' |
response.headers['Content-Type'] = "text/csv; charset=utf-8" |
response.headers['Content-Type'] = "text/csv; charset=utf-8" |
response.headers['Content-Disposition'] = str('attachment; filename=publishers_%s.csv' % (month,)) |
response.headers['Content-Disposition'] = str('attachment; filename=publishers_%s.csv' % (month,)) |
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writer = csv.writer(response) |
writer = csv.writer(response) |
writer.writerow(["Publisher Title", "Publisher Name", "Views", "Visits", "Period Name"]) |
writer.writerow(["Publisher Title", "Publisher Name", "Views", "Visits", "Period Name"]) |
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top_publishers, top_publishers_graph = _get_top_publishers(None) |
top_publishers, top_publishers_graph = _get_top_publishers(None) |
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for publisher,view,visit in top_publishers: |
for publisher,view,visit in top_publishers: |
writer.writerow([publisher.title.encode('utf-8'), |
writer.writerow([publisher.title.encode('utf-8'), |
publisher.name.encode('utf-8'), |
publisher.name.encode('utf-8'), |
view, |
view, |
visit, |
visit, |
month]) |
month]) |
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def dataset_csv(self, id='all', month='all'): |
def dataset_csv(self, id='all', month='all'): |
''' |
''' |
Returns a CSV with the number of views & visits for each dataset. |
Returns a CSV with the number of views & visits for each dataset. |
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:param id: A Publisher ID or None if you want for all |
:param id: A Publisher ID or None if you want for all |
:param month: The time period, or 'all' |
:param month: The time period, or 'all' |
''' |
''' |
c.month = month if not month == 'all' else '' |
c.month = month if not month == 'all' else '' |
if id != 'all': |
if id != 'all': |
c.publisher = model.Group.get(id) |
c.publisher = model.Group.get(id) |
if not c.publisher: |
if not c.publisher: |
abort(404, 'A publisher with that name could not be found') |
abort(404, 'A publisher with that name could not be found') |
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packages = self._get_packages(c.publisher) |
packages = self._get_packages(c.publisher) |
response.headers['Content-Type'] = "text/csv; charset=utf-8" |
response.headers['Content-Type'] = "text/csv; charset=utf-8" |
response.headers['Content-Disposition'] = \ |
response.headers['Content-Disposition'] = \ |
str('attachment; filename=datasets_%s_%s.csv' % (c.publisher_name, month,)) |
str('attachment; filename=datasets_%s_%s.csv' % (c.publisher_name, month,)) |
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writer = csv.writer(response) |
writer = csv.writer(response) |
writer.writerow(["Dataset Title", "Dataset Name", "Views", "Visits", "Resource downloads", "Period Name"]) |
writer.writerow(["Dataset Title", "Dataset Name", "Views", "Visits", "Resource downloads", "Period Name"]) |
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for package,view,visit,downloads in packages: |
for package,view,visit,downloads in packages: |
writer.writerow([package.title.encode('utf-8'), |
writer.writerow([package.title.encode('utf-8'), |
package.name.encode('utf-8'), |
package.name.encode('utf-8'), |
view, |
view, |
visit, |
visit, |
downloads, |
downloads, |
month]) |
month]) |
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def publishers(self): |
def publishers(self): |
'''A list of publishers and the number of views/visits for each''' |
'''A list of publishers and the number of views/visits for each''' |
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# Get the month details by fetching distinct values and determining the |
# Get the month details by fetching distinct values and determining the |
# month names from the values. |
# month names from the values. |
c.months, c.day = _month_details(GA_Url) |
c.months, c.day = _month_details(GA_Url) |
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# Work out which month to show, based on query params of the first item |
# Work out which month to show, based on query params of the first item |
c.month = request.params.get('month', '') |
c.month = request.params.get('month', '') |
c.month_desc = 'all months' |
c.month_desc = 'all months' |
if c.month: |
if c.month: |
c.month_desc = ''.join([m[1] for m in c.months if m[0]==c.month]) |
c.month_desc = ''.join([m[1] for m in c.months if m[0]==c.month]) |
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c.top_publishers, graph_data = _get_top_publishers() |
c.top_publishers, graph_data = _get_top_publishers() |
c.top_publishers_graph = json.dumps( _to_rickshaw(graph_data) ) |
c.top_publishers_graph = json.dumps( _to_rickshaw(graph_data) ) |
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return render('ga_report/publisher/index.html') |
return render('ga_report/publisher/index.html') |
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def _get_packages(self, publisher=None, count=-1): |
def _get_packages(self, publisher=None, count=-1): |
'''Returns the datasets in order of views''' |
'''Returns the datasets in order of views''' |
have_download_data = True |
have_download_data = True |
month = c.month or 'All' |
month = c.month or 'All' |
if month != 'All': |
if month != 'All': |
have_download_data = month >= DOWNLOADS_AVAILABLE_FROM |
have_download_data = month >= DOWNLOADS_AVAILABLE_FROM |
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q = model.Session.query(GA_Url,model.Package)\ |
q = model.Session.query(GA_Url,model.Package)\ |
.filter(model.Package.name==GA_Url.package_id)\ |
.filter(model.Package.name==GA_Url.package_id)\ |
.filter(GA_Url.url.like('/dataset/%')) |
.filter(GA_Url.url.like('/dataset/%')) |
if publisher: |
if publisher: |
q = q.filter(GA_Url.department_id==publisher.name) |
q = q.filter(GA_Url.department_id==publisher.name) |
q = q.filter(GA_Url.period_name==month) |
q = q.filter(GA_Url.period_name==month) |
q = q.order_by('ga_url.pageviews::int desc') |
q = q.order_by('ga_url.pageviews::int desc') |
top_packages = [] |
top_packages = [] |
if count == -1: |
if count == -1: |
entries = q.all() |
entries = q.all() |
else: |
else: |
entries = q.limit(count) |
entries = q.limit(count) |
|
|
for entry,package in entries: |
for entry,package in entries: |
if package: |
if package: |
# Downloads .... |
# Downloads .... |
if have_download_data: |
if have_download_data: |
dls = model.Session.query(GA_Stat).\ |
dls = model.Session.query(GA_Stat).\ |
filter(GA_Stat.stat_name=='Downloads').\ |
filter(GA_Stat.stat_name=='Downloads').\ |
filter(GA_Stat.key==package.name) |
filter(GA_Stat.key==package.name) |
if month != 'All': # Fetch everything unless the month is specific |
if month != 'All': # Fetch everything unless the month is specific |
dls = dls.filter(GA_Stat.period_name==month) |
dls = dls.filter(GA_Stat.period_name==month) |
downloads = 0 |
downloads = 0 |
for x in dls: |
for x in dls: |
downloads += int(x.value) |
downloads += int(x.value) |
else: |
else: |
downloads = 'No data' |
downloads = 'No data' |
top_packages.append((package, entry.pageviews, entry.visits, downloads)) |
top_packages.append((package, entry.pageviews, entry.visits, downloads)) |
else: |
else: |
log.warning('Could not find package associated package') |
log.warning('Could not find package associated package') |
|
|
return top_packages |
return top_packages |
|
|
def read(self): |
def read(self): |
''' |
''' |
Lists the most popular datasets across all publishers |
Lists the most popular datasets across all publishers |
''' |
''' |
return self.read_publisher(None) |
return self.read_publisher(None) |
|
|
def read_publisher(self, id): |
def read_publisher(self, id): |
''' |
''' |
Lists the most popular datasets for a publisher (or across all publishers) |
Lists the most popular datasets for a publisher (or across all publishers) |
''' |
''' |
count = 20 |
count = 20 |
|
|
c.publishers = _get_publishers() |
c.publishers = _get_publishers() |
|
|
id = request.params.get('publisher', id) |
id = request.params.get('publisher', id) |
if id and id != 'all': |
if id and id != 'all': |
c.publisher = model.Group.get(id) |
c.publisher = model.Group.get(id) |
if not c.publisher: |
if not c.publisher: |
abort(404, 'A publisher with that name could not be found') |
abort(404, 'A publisher with that name could not be found') |
c.publisher_name = c.publisher.name |
c.publisher_name = c.publisher.name |
c.top_packages = [] # package, dataset_views in c.top_packages |
c.top_packages = [] # package, dataset_views in c.top_packages |
|
|
# Get the month details by fetching distinct values and determining the |
# Get the month details by fetching distinct values and determining the |
# month names from the values. |
# month names from the values. |
c.months, c.day = _month_details(GA_Url) |
c.months, c.day = _month_details(GA_Url) |
|
|
# Work out which month to show, based on query params of the first item |
# Work out which month to show, based on query params of the first item |
c.month = request.params.get('month', '') |
c.month = request.params.get('month', '') |
if not c.month: |
if not c.month: |
c.month_desc = 'all months' |
c.month_desc = 'all months' |
else: |
else: |
c.month_desc = ''.join([m[1] for m in c.months if m[0]==c.month]) |
c.month_desc = ''.join([m[1] for m in c.months if m[0]==c.month]) |
|
|
month = c.month or 'All' |
month = c.month or 'All' |
c.publisher_page_views = 0 |
c.publisher_page_views = 0 |
q = model.Session.query(GA_Url).\ |
q = model.Session.query(GA_Url).\ |
filter(GA_Url.url=='/publisher/%s' % c.publisher_name) |
filter(GA_Url.url=='/publisher/%s' % c.publisher_name) |
entry = q.filter(GA_Url.period_name==c.month).first() |
entry = q.filter(GA_Url.period_name==c.month).first() |
c.publisher_page_views = entry.pageviews if entry else 0 |
c.publisher_page_views = entry.pageviews if entry else 0 |
|
|
c.top_packages = self._get_packages(c.publisher, 20) |
c.top_packages = self._get_packages(c.publisher, 20) |
|
|
# Graph query |
# Graph query |
top_package_names = [ x[0].name for x in c.top_packages ] |
top_package_names = [ x[0].name for x in c.top_packages ] |
graph_query = model.Session.query(GA_Url,model.Package)\ |
graph_query = model.Session.query(GA_Url,model.Package)\ |
.filter(model.Package.name==GA_Url.package_id)\ |
.filter(model.Package.name==GA_Url.package_id)\ |
.filter(GA_Url.url.like('/dataset/%'))\ |
.filter(GA_Url.url.like('/dataset/%'))\ |
.filter(GA_Url.package_id.in_(top_package_names)) |
.filter(GA_Url.package_id.in_(top_package_names)) |
graph_dict = {} |
graph_dict = {} |
for entry,package in graph_query: |
for entry,package in graph_query: |
if not package: continue |
if not package: continue |
if entry.period_name=='All': continue |
if entry.period_name=='All': continue |
graph_dict[package.name] = graph_dict.get(package.name,{ |
graph_dict[package.name] = graph_dict.get(package.name,{ |
'name':package.title, |
'name':package.title, |
'data':[] |
'data':[] |
}) |
}) |
graph_dict[package.name]['data'].append({ |
graph_dict[package.name]['data'].append({ |
'x':_get_unix_epoch(entry.period_name), |
'x':_get_unix_epoch(entry.period_name), |
'y':int(entry.pageviews), |
'y':int(entry.pageviews), |
}) |
}) |
graph = [ graph_dict[x] for x in top_package_names ] |
graph = [ graph_dict[x] for x in top_package_names ] |
|
|
c.graph_data = json.dumps( _to_rickshaw(graph) ) |
c.graph_data = json.dumps( _to_rickshaw(graph) ) |
|
|
return render('ga_report/publisher/read.html') |
return render('ga_report/publisher/read.html') |
|
|
def _to_rickshaw(data, percentageMode=False): |
def _to_rickshaw(data, percentageMode=False): |
if data==[]: |
if data==[]: |
return data |
return data |
# Create a consistent x-axis between all series |
# Create a consistent x-axis between all series |
num_points = [ len(series['data']) for series in data ] |
num_points = [ len(series['data']) for series in data ] |
ideal_index = num_points.index( max(num_points) ) |
ideal_index = num_points.index( max(num_points) ) |
x_axis = [] |
x_axis = [] |
for series in data: |
for series in data: |
for point in series['data']: |
for point in series['data']: |
x_axis.append(point['x']) |
x_axis.append(point['x']) |
x_axis = sorted( list( set(x_axis) ) ) |
x_axis = sorted( list( set(x_axis) ) ) |
# Zero pad any missing values |
# Zero pad any missing values |
for series in data: |
for series in data: |
xs = [ point['x'] for point in series['data'] ] |
xs = [ point['x'] for point in series['data'] ] |
for x in set(x_axis).difference(set(xs)): |
for x in set(x_axis).difference(set(xs)): |
series['data'].append( {'x':x, 'y':0} ) |
series['data'].append( {'x':x, 'y':0} ) |
if percentageMode: |
if percentageMode: |
def get_totals(series_list): |
def get_totals(series_list): |
totals = {} |
totals = {} |
for series in series_list: |
for series in series_list: |
for point in series['data']: |
for point in series['data']: |
totals[point['x']] = totals.get(point['x'],0) + point['y'] |
totals[point['x']] = totals.get(point['x'],0) + point['y'] |
return totals |
return totals |
# Transform data into percentage stacks |
# Transform data into percentage stacks |
totals = get_totals(data) |
totals = get_totals(data) |
# Roll insignificant series into a catch-all |
# Roll insignificant series into a catch-all |
THRESHOLD = 0.01 |
THRESHOLD = 0.01 |
raw_data = data |
raw_data = data |
data = [] |
data = [] |
for series in raw_data: |
for series in raw_data: |
for point in series['data']: |
for point in series['data']: |
fraction = float(point['y']) / totals[point['x']] |
fraction = float(point['y']) / totals[point['x']] |
if not (series in data) and fraction>THRESHOLD: |
if not (series in data) and fraction>THRESHOLD: |
data.append(series) |
data.append(series) |
# Overwrite data with a set of intereting series |
# Overwrite data with a set of interesting series |
others = [ x for x in raw_data if not (x in data) ] |
others = [ x for x in raw_data if not (x in data) ] |
data.append({ |
if len(others): |
'name':'Other', |
data.append({ |
'data': [ {'x':x,'y':y} for x,y in get_totals(others).items() ] |
'name':'Other', |
}) |
'data': [ {'x':x,'y':y} for x,y in get_totals(others).items() ] |
|
}) |
# Turn each point into a percentage |
# Turn each point into a percentage |
for series in data: |
for series in data: |
for point in series['data']: |
for point in series['data']: |
point['y'] = (point['y']*100) / totals[point['x']] |
point['y'] = (point['y']*100) / totals[point['x']] |
# Sort the points |
# Sort the points |
for series in data: |
for series in data: |
series['data'] = sorted( series['data'], key=lambda x:x['x'] ) |
series['data'] = sorted( series['data'], key=lambda x:x['x'] ) |
# Strip the latest month's incomplete analytics |
# Strip the latest month's incomplete analytics |
series['data'] = series['data'][:-1] |
series['data'] = series['data'][:-1] |
return data |
return data |
|
|
|
|
def _get_top_publishers(limit=20): |
def _get_top_publishers(limit=20): |
''' |
''' |
Returns a list of the top 20 publishers by dataset visits. |
Returns a list of the top 20 publishers by dataset visits. |
(The number to show can be varied with 'limit') |
(The number to show can be varied with 'limit') |
''' |
''' |
month = c.month or 'All' |
month = c.month or 'All' |
connection = model.Session.connection() |
connection = model.Session.connection() |
q = """ |
q = """ |
select department_id, sum(pageviews::int) views, sum(visits::int) visits |
select department_id, sum(pageviews::int) views, sum(visits::int) visits |
from ga_url |
from ga_url |
where department_id <> '' |
where department_id <> '' |
and package_id <> '' |
and package_id <> '' |
and url like '/dataset/%%' |
and url like '/dataset/%%' |
and period_name=%s |
and period_name=%s |
group by department_id order by views desc |
group by department_id order by views desc |
""" |
""" |
if limit: |
if limit: |
q = q + " limit %s;" % (limit) |
q = q + " limit %s;" % (limit) |
|
|
top_publishers = [] |
top_publishers = [] |
res = connection.execute(q, month) |
res = connection.execute(q, month) |
department_ids = [] |
department_ids = [] |
for row in res: |
for row in res: |
g = model.Group.get(row[0]) |
g = model.Group.get(row[0]) |
if g: |
if g: |
department_ids.append(row[0]) |
department_ids.append(row[0]) |
top_publishers.append((g, row[1], row[2])) |
top_publishers.append((g, row[1], row[2])) |
|
|
graph = [] |
graph = [] |
if limit is not None: |
if limit is not None: |
# Query for a history graph of these publishers |
# Query for a history graph of these publishers |
q = model.Session.query( |
q = model.Session.query( |
GA_Url.department_id, |
GA_Url.department_id, |
GA_Url.period_name, |
GA_Url.period_name, |
func.sum(cast(GA_Url.pageviews,sqlalchemy.types.INT)))\ |
func.sum(cast(GA_Url.pageviews,sqlalchemy.types.INT)))\ |
.filter( GA_Url.department_id.in_(department_ids) )\ |
.filter( GA_Url.department_id.in_(department_ids) )\ |
.filter( GA_Url.period_name!='All' )\ |
.filter( GA_Url.period_name!='All' )\ |
.filter( GA_Url.url.like('/dataset/%') )\ |
.filter( GA_Url.url.like('/dataset/%') )\ |
.filter( GA_Url.package_id!='' )\ |
.filter( GA_Url.package_id!='' )\ |
.group_by( GA_Url.department_id, GA_Url.period_name ) |
.group_by( GA_Url.department_id, GA_Url.period_name ) |
graph_dict = {} |
graph_dict = {} |
for dept_id,period_name,views in q: |
for dept_id,period_name,views in q: |
graph_dict[dept_id] = graph_dict.get( dept_id, { |
graph_dict[dept_id] = graph_dict.get( dept_id, { |
'name' : model.Group.get(dept_id).title, |
'name' : model.Group.get(dept_id).title, |
'data' : [] |
'data' : [] |
}) |
}) |
graph_dict[dept_id]['data'].append({ |
graph_dict[dept_id]['data'].append({ |
'x': _get_unix_epoch(period_name), |
'x': _get_unix_epoch(period_name), |
'y': views |
'y': views |
}) |
}) |
# Sort dict into ordered list |
# Sort dict into ordered list |
for id in department_ids: |
for id in department_ids: |
graph.append( graph_dict[id] ) |
graph.append( graph_dict[id] ) |
return top_publishers, graph |
return top_publishers, graph |
|
|
|
|
def _get_publishers(): |
def _get_publishers(): |
''' |
''' |
Returns a list of all publishers. Each item is a tuple: |
Returns a list of all publishers. Each item is a tuple: |
(name, title) |
(name, title) |
''' |
''' |
publishers = [] |
publishers = [] |
for pub in model.Session.query(model.Group).\ |
for pub in model.Session.query(model.Group).\ |
filter(model.Group.type=='publisher').\ |
filter(model.Group.type=='publisher').\ |
filter(model.Group.state=='active').\ |
filter(model.Group.state=='active').\ |
order_by(model.Group.name): |
order_by(model.Group.name): |
publishers.append((pub.name, pub.title)) |
publishers.append((pub.name, pub.title)) |
return publishers |
return publishers |
|
|
def _percent(num, total): |
def _percent(num, total): |
p = 100 * float(num)/float(total) |
p = 100 * float(num)/float(total) |
return "%.2f%%" % round(p, 2) |
return "%.2f%%" % round(p, 2) |
|
|