Пример #1
0
def kpis():

  db2_obj = openDB2()
  db2 = db2_obj[0]
  cur2 = db2_obj[1]

  q_active = queries.kpisActive
  active = queryToData(cur2,q_active)

  q_verified_all_s = queries.kpisVerifiedAll_S
  verified_all_s = queryToData(cur2,q_verified_all_s)

  q_verified_all_w = queries.kpisVerifiedAll_W
  verified_all_w = queryToData(cur2,q_verified_all_w)

  q_new = queries.kpisNew
  new = queryToData(cur2,q_new)

  q_text = queries.kpiText
  text = queryToData(cur2,q_text)

  cur2.close()
  db2.close()

  return render_template('kpi_page.html', active=active, verified_all_w=verified_all_w, verified_all_s=verified_all_s,  new_m=new, q_text=text, user_role=g.user.role)
Пример #2
0
def home():

    db2_obj = openDB2()
    db2 = db2_obj[0]
    cur2 = db2_obj[1]

    data = queryToData(cur2, queries.home_total_members, 0, 'total')
    data = int(json.loads(data))
    formatted_data = formatThousandNumber(data)

    data2_f = queryToData(cur2, queries.home_net_members_daily)

    data3_f = queryToData(cur2, queries.home_gross_mobile_new_members)

    data4_f = queryToData(cur2, queries.home_gross_mail_new_members)

    data5_f = queryToData(cur2, queries.home_gross_mobile_optedout_members)

    data6_f = queryToData(cur2, queries.home_gross_mail_optedout_members)

    cur2.close()
    db2.close()

    return render_template('home.html',
                           formatted_data=formatted_data,
                           data2=data2_f,
                           data3=data3_f,
                           data4=data4_f,
                           data5=data5_f,
                           data6=data6_f)
Пример #3
0
def kpis():

    db2_obj = openDB2()
    db2 = db2_obj[0]
    cur2 = db2_obj[1]

    q_active = queries.kpisActive
    active = queryToData(cur2, q_active)

    q_verified_all_s = queries.kpisVerifiedAll_S
    verified_all_s = queryToData(cur2, q_verified_all_s)

    q_verified_all_w = queries.kpisVerifiedAll_W
    verified_all_w = queryToData(cur2, q_verified_all_w)

    q_new = queries.kpisNew
    new = queryToData(cur2, q_new)

    q_text = queries.kpiText
    text = queryToData(cur2, q_text)

    cur2.close()
    db2.close()

    return render_template('kpi_page.html',
                           active=active,
                           verified_all_w=verified_all_w,
                           verified_all_s=verified_all_s,
                           new_m=new,
                           q_text=text,
                           user_role=g.user.role)
Пример #4
0
def listCampaigns():

  db2_obj = openDB2()
  db2 = db2_obj[0]
  cur2 = db2_obj[1]
  data = queryToData(cur2,queries.list_all_campaigns, need_json=0)
  data = [{'title':i['title'].decode('ascii', 'ignore')} for i in data]
  data = json.dumps(data)
  cur2.close()
  db2.close()
  return render_template('list-campaigns.html', data=data)
Пример #5
0
def listCampaigns():

    db2_obj = openDB2()
    db2 = db2_obj[0]
    cur2 = db2_obj[1]
    data = queryToData(cur2, queries.list_all_campaigns, need_json=0)
    data = [{'title': i['title'].decode('ascii', 'ignore')} for i in data]
    data = json.dumps(data)
    cur2.close()
    db2.close()
    return render_template('list-campaigns.html', data=data)
Пример #6
0
def getSpecificCampaignNew(campaign):

  db2_obj = openDB2()
  db2 = db2_obj[0]
  cur2 = db2_obj[1]

  campaign = campaign.replace('^&^', '#')
  campaign = campaign.replace('^^^', '?')

  data = queryToData(cur2,queries.list_one_campaign.format(campaign),need_json=0)

  if data[0]['mobile_ids'] is not None and data[0]['mobile_ids'] != '0':
    c_id = ",".join(['"'+i+'"' for i in data[0]['mobile_ids'].split(',') if i != 0])
  else:
    c_id = "'999'"

  if int(data[0]['is_sms']) == 0:
    total_su = queryToData(cur2,queries.signups_total.format(c_id, data[0]['nid'], '2000-01-01', '3000-01-01'), index=0, keyname='total_signups', need_json=0)
    total_web_su = queryToData(cur2,queries.signups_web.format(data[0]['nid'], '2000-01-01', '3000-01-01'), index=0, keyname='web_su', need_json=0)
    total_nm = queryToData(cur2,queries.new_members_total.format(c_id, data[0]['nid'], '2000-01-01', '3000-01-01'), index=0, keyname='new_members_total', need_json=0)
    total_rb = queryToData(cur2,queries.report_back_total_web.format(data[0]['nid'], '10000', '2000-01-01', '3000-01-01'), index=0, keyname='rb', need_json=0)
    total_impact = queryToData(cur2,queries.impact_total.format(data[0]['nid'], '10000', '2000-01-01', '3000-01-01'), index=0, keyname='impact', need_json=0)
    total_traffic = queryToData(cur2,queries.traffic_total.format(data[0]['nid'], '2000-01-01', '3000-01-01'), index=0, keyname='traffic', need_json=0)
    overall = OrderedDict([('Sign Ups',total_su), ('New Members',total_nm), ('Reportbacks',total_rb), ('Impact',total_impact), ('Traffic',total_traffic), ('Conversion Rate',round(float(total_web_su)/float(total_traffic) * 100, 2))])
    overall = json.dumps(overall)

    su = queryToData(cur2,queries.new_sign_ups_new.format(c_id, data[0]['nid'], '2000-01-01', '3000-01-01'))
    nm = queryToData(cur2,queries.new_members_new.format(c_id, data[0]['nid'], '2000-01-01', '3000-01-01'))
    rb = queryToData(cur2,queries.reportback_web_daily.format(data[0]['nid'], '10000', '2000-01-01', '3000-01-01'))
    impact = queryToData(cur2,queries.impact_daily.format(data[0]['nid'], '10000', '2000-01-01', '3000-01-01'))
    srcs = queryToData(cur2,queries.sources_new.format(data[0]['nid'], '2000-01-01', '3000-01-01'))
    traffic = queryToData(cur2,queries.traffic_daily.format(data[0]['nid'], '2000-01-01', '3000-01-01'))

  if int(data[0]['is_sms']) == 1:
    total_su = queryToData(cur2,queries.new_sign_ups_new_mobile_total.format(c_id, '2000-01-01', '3000-01-01'), index=0, keyname='mobile_signup_total', need_json=0)
    total_nm = queryToData(cur2,queries.new_members_new_mobile_total.format(c_id, '2000-01-01', '3000-01-01'), index=0, keyname='mobile_new_members_total', need_json=0)
    total_alpha = queryToData(cur2,queries.new_sign_ups_new_alphas.format(c_id, '2000-01-01', '3000-01-01'), index=0, keyname='alphas', need_json=0)
    total_traffic = queryToData(cur2,queries.traffic_total.format(data[0]['nid'], '2000-01-01', '3000-01-01'), index=0, keyname='traffic', need_json=0)
    overall = OrderedDict([('Sign Ups',total_su), ('New Members',total_nm), ('Reportbacks',total_alpha), ('Impact',total_alpha), ('Traffic',total_traffic), ('Conversion Rate',round(float(total_alpha)/float(total_traffic) * 100, 2))])
    overall = json.dumps(overall)

    su = queryToData(cur2,queries.new_sign_ups_new_mobile.format(c_id, '2000-01-01', '3000-01-01'))
    nm = queryToData(cur2,queries.new_members_new_mobile.format(c_id, '2000-01-01', '3000-01-01'))
    rb = queryToData(cur2,queries.reportback_sms_daily.format(c_id, '2000-01-01', '3000-01-01'))
    impact = 0
    srcs = queryToData(cur2,queries.sources_new.format(data[0]['nid'], '2000-01-01', '3000-01-01'))
    traffic = queryToData(cur2,queries.traffic_daily.format(data[0]['nid'], '2000-01-01', '3000-01-01'))

  cur2.close()
  db2.close()

  return render_template('campaign-new.html', is_sms=data[0]['is_sms'], campaign=campaign, su=su, nm=nm, rb=rb, impact=impact, srcs=srcs, overall=overall, traffic=traffic)
Пример #7
0
def campaignSearch():

  db2_obj = openDB2()
  db2 = db2_obj[0]
  cur2 = db2_obj[1]

  search_str = request.form['search_str']
  campaigns = queryToData(cur2,queries.search_campaigns.format(search_str))

  cur2.close()
  db2.close()

  return jsonify(campaigns=campaigns)
Пример #8
0
def campaignSearch():

    db2_obj = openDB2()
    db2 = db2_obj[0]
    cur2 = db2_obj[1]

    search_str = request.form['search_str']
    campaigns = queryToData(cur2, queries.search_campaigns.format(search_str))

    cur2.close()
    db2.close()

    return jsonify(campaigns=campaigns)
Пример #9
0
def kpisubmit():

  db2_obj = openDB2()
  db2 = db2_obj[0]
  cur2 = db2_obj[1]
  #get rid of quotes aspostraphes when writing to mysql, and replace them later when called to the page
  text = request.form['text'].replace("'","|").replace('"',"%^&")
  q_insert = queries.kpiTextInsert % (dt.now(), text, request.form['box_id'])
  cur2.execute(q_insert)
  db2.commit()

  cur2.close()
  db2.close()

  return q_insert
Пример #10
0
def kpisubmit():

    db2_obj = openDB2()
    db2 = db2_obj[0]
    cur2 = db2_obj[1]
    #get rid of quotes aspostraphes when writing to mysql, and replace them later when called to the page
    text = request.form['text'].replace("'", "|").replace('"', "%^&")
    q_insert = queries.kpiTextInsert % (dt.now(), text, request.form['box_id'])
    cur2.execute(q_insert)
    db2.commit()

    cur2.close()
    db2.close()

    return q_insert
Пример #11
0
def demographicsPull():
    #open db connect
    db2_obj = openDB2()
    db2 = db2_obj[0]
    cur2 = db2_obj[1]

    def formatDemo(query, name_present):
        cur2.execute(query)
        out = cur2.fetchall()
        #format json data for lists
        master_list = {'header': out[0]['header'], 'item_list': list()}
        for item in out:
            counts = [int(num) for num in item['count'].split(",")]
            total = sum(counts)
            #create percent str
            percents = [
                str(round((i / float(total)) * 100, 2)) + '%' for i in counts
            ]
            metric = item['metric'].split(",")
            inner_dict = dict(zip(metric, percents))
            if name_present is True:
                temp_dict = {item['name']: inner_dict}
            else:
                temp_dict = inner_dict
            master_list['item_list'].append(temp_dict)
        return json.dumps(master_list)

    action_gender = formatDemo(queries.demographics_action_gender, True)
    action_income = formatDemo(queries.demographics_action_income, True)
    cause_gender = formatDemo(queries.demographics_cause_gender, True)
    cause_income = formatDemo(queries.demographics_cause_income, True)
    #to use this data, just uncomment!
    #formatDemo(queries.demographics_mobile_age, False)
    #formatDemo(queries.demographics_mobile_gender, False)
    #formatDemo(queries.demographics_mobile_income, False)
    #formatDemo(queries.demographics_mobile_race, False)
    #formatDemo(queries.demographics_web_age, False)
    #formatDemo(queries.demographics_web_gender, False)
    #formatDemo(queries.demographics_web_race, False)

    cur2.close()
    db2.close()

    return render_template('demographics.html',
                           action_gender=action_gender,
                           cause_gender=cause_gender,
                           action_income=action_income,
                           cause_income=cause_income)
Пример #12
0
def demographicsPull():
  #open db connect
  db2_obj = openDB2()
  db2 = db2_obj[0]
  cur2 = db2_obj[1]

  def formatDemo(query, name_present):
    cur2.execute(query)
    out = cur2.fetchall()
    #format json data for lists
    master_list = {'header':out[0]['header'], 'item_list':list()}
    for item in out:
      counts = [int(num) for num in item['count'].split(",")]
      total = sum(counts)
      #create percent str
      percents = [str(round((i/float(total))*100,2)) + '%' for i in counts]
      metric = item['metric'].split(",")
      inner_dict = dict(zip(metric,percents))
      if name_present is True:
        temp_dict = {item['name']:inner_dict}
      else:
        temp_dict = inner_dict
      master_list['item_list'].append(temp_dict)
    return json.dumps(master_list)

  action_gender = formatDemo(queries.demographics_action_gender, True)
  action_income = formatDemo(queries.demographics_action_income, True)
  cause_gender = formatDemo(queries.demographics_cause_gender, True)
  cause_income = formatDemo(queries.demographics_cause_income, True)
  #to use this data, just uncomment!
  #formatDemo(queries.demographics_mobile_age, False)
  #formatDemo(queries.demographics_mobile_gender, False)
  #formatDemo(queries.demographics_mobile_income, False)
  #formatDemo(queries.demographics_mobile_race, False)
  #formatDemo(queries.demographics_web_age, False)
  #formatDemo(queries.demographics_web_gender, False)
  #formatDemo(queries.demographics_web_race, False)

  cur2.close()
  db2.close()

  return render_template('demographics.html', action_gender=action_gender, cause_gender=cause_gender, action_income=action_income, cause_income=cause_income)
Пример #13
0
def home():

  db2_obj = openDB2()
  db2 = db2_obj[0]
  cur2 = db2_obj[1]

  data = queryToData(cur2,queries.home_total_members,0,'total')
  data = int(json.loads(data))
  formatted_data = formatThousandNumber(data)

  data2_f = queryToData(cur2,queries.home_net_members_daily)

  data3_f = queryToData(cur2,queries.home_gross_mobile_new_members)

  data4_f = queryToData(cur2,queries.home_gross_mail_new_members)

  data5_f = queryToData(cur2,queries.home_gross_mobile_optedout_members)

  data6_f = queryToData(cur2,queries.home_gross_mail_optedout_members)

  cur2.close()
  db2.close()

  return render_template('home.html',formatted_data=formatted_data, data2 = data2_f, data3 = data3_f, data4 = data4_f, data5 = data5_f, data6 = data6_f)
Пример #14
0
def dateRange():
  #gets new start and end from ajax post and pulls queries with new parameters
  start = request.form['start']
  end = request.form['end']
  campaign = request.form['campaign']

  db2_obj = openDB2()
  db2 = db2_obj[0]
  cur2 = db2_obj[1]
  data = queryToData(cur2,queries.list_one_campaign.format(campaign),need_json=0)

  if data[0]['mobile_ids'] is not None and data[0]['mobile_ids'] != '0':
    c_id = ",".join(['"'+i+'"' for i in data[0]['mobile_ids'].split(',') if i != 0])
  else:
    c_id = "'999'"

  if int(data[0]['is_sms']) == 0:
    total_su = queryToData(cur2,queries.signups_total.format(c_id, data[0]['nid'], start, end), index=0, keyname='total_signups', need_json=0)
    total_web_su = queryToData(cur2,queries.signups_web.format(data[0]['nid'], start, end), index=0, keyname='web_su', need_json=0)
    total_nm = queryToData(cur2,queries.new_members_total.format(c_id, data[0]['nid'], start, end), index=0, keyname='new_members_total', need_json=0)
    total_rb = queryToData(cur2,queries.report_back_total_web.format(data[0]['nid'], '10000', start, end), index=0, keyname='rb', need_json=0)
    total_impact = queryToData(cur2,queries.impact_total.format(data[0]['nid'], '10000', start, end), index=0, keyname='impact', need_json=0)
    total_traffic = queryToData(cur2,queries.traffic_total.format(data[0]['nid'], start, end), index=0, keyname='traffic', need_json=0)

    try:
      conv_rate = round(float(total_web_su)/float(total_traffic) * 100, 2)
    except:
      conv_rate = 0.0

    overall = OrderedDict([('Sign Ups',total_su), ('New Members',total_nm), ('Reportbacks',total_rb), ('Impact',total_impact), ('Traffic',total_traffic), ('Conversion Rate',conv_rate)])
    overall = json.dumps(overall)
    su = queryToData(cur2,queries.new_sign_ups_new.format(c_id, data[0]['nid'], start, end))
    nm = queryToData(cur2,queries.new_members_new.format(c_id, data[0]['nid'], start, end))
    rb = queryToData(cur2,queries.reportback_web_daily.format(data[0]['nid'], '10000', start, end))
    impact = queryToData(cur2,queries.impact_daily.format(data[0]['nid'], '10000', start, end))
    srcs = queryToData(cur2,queries.sources_new.format(data[0]['nid'], start, end))
    traffic = queryToData(cur2,queries.traffic_daily.format(data[0]['nid'], start, end))

  if int(data[0]['is_sms']) == 1:
    total_su = queryToData(cur2,queries.new_sign_ups_new_mobile_total.format(c_id, start, end), index=0, keyname='mobile_signup_total', need_json=0)
    total_nm = queryToData(cur2,queries.new_members_new_mobile_total.format(c_id, start, end), index=0, keyname='mobile_new_members_total', need_json=0)
    total_alpha = queryToData(cur2,queries.new_sign_ups_new_alphas.format(c_id, start, end), index=0, keyname='alphas', need_json=0)
    total_traffic = queryToData(cur2,queries.traffic_total.format(data[0]['nid'], start, end), index=0, keyname='traffic', need_json=0)
    try:
      conv_rate = round(float(total_alpha)/float(total_traffic) * 100, 2)
    except:
      conv_rate = 0.0
    overall = OrderedDict([('Sign Ups',total_su), ('New Members',total_nm), ('Reportbacks',total_alpha), ('Impact',total_alpha), ('Traffic',total_traffic), ('Conversion Rate',conv_rate)])
    overall = json.dumps(overall)

    su = queryToData(cur2,queries.new_sign_ups_new_mobile.format(c_id, start, end))
    nm = queryToData(cur2,queries.new_members_new_mobile.format(c_id, start, end))
    rb = queryToData(cur2,queries.reportback_sms_daily.format(c_id, start, end))
    impact = 0
    srcs = queryToData(cur2,queries.sources_new.format(data[0]['nid'], start, end))
    traffic = queryToData(cur2,queries.traffic_daily.format(data[0]['nid'], start, end))

  cur2.close()
  db2.close()

  return jsonify(is_sms=data[0]['is_sms'], campaign=campaign, su=su, nm=nm, rb=rb, impact=impact, srcs=srcs, overall=overall, traffic=traffic)
Пример #15
0
def dateRange():
    #gets new start and end from ajax post and pulls queries with new parameters
    start = request.form['start']
    end = request.form['end']
    campaign = request.form['campaign']

    db2_obj = openDB2()
    db2 = db2_obj[0]
    cur2 = db2_obj[1]
    data = queryToData(cur2,
                       queries.list_one_campaign.format(campaign),
                       need_json=0)

    if data[0]['mobile_ids'] is not None and data[0]['mobile_ids'] != '0':
        c_id = ",".join([
            '"' + i + '"' for i in data[0]['mobile_ids'].split(',') if i != 0
        ])
    else:
        c_id = "'999'"

    if int(data[0]['is_sms']) == 0:
        total_su = queryToData(cur2,
                               queries.signups_total.format(
                                   c_id, data[0]['nid'], start, end),
                               index=0,
                               keyname='total_signups',
                               need_json=0)
        total_web_su = queryToData(cur2,
                                   queries.signups_web.format(
                                       data[0]['nid'], start, end),
                                   index=0,
                                   keyname='web_su',
                                   need_json=0)
        total_nm = queryToData(cur2,
                               queries.new_members_total.format(
                                   c_id, data[0]['nid'], start, end),
                               index=0,
                               keyname='new_members_total',
                               need_json=0)
        total_rb = queryToData(cur2,
                               queries.report_back_total_web.format(
                                   data[0]['nid'], '10000', start, end),
                               index=0,
                               keyname='rb',
                               need_json=0)
        total_impact = queryToData(cur2,
                                   queries.impact_total.format(
                                       data[0]['nid'], '10000', start, end),
                                   index=0,
                                   keyname='impact',
                                   need_json=0)
        total_traffic = queryToData(cur2,
                                    queries.traffic_total.format(
                                        data[0]['nid'], start, end),
                                    index=0,
                                    keyname='traffic',
                                    need_json=0)

        try:
            conv_rate = round(
                float(total_web_su) / float(total_traffic) * 100, 2)
        except:
            conv_rate = 0.0

        overall = OrderedDict([('Sign Ups', total_su),
                               ('New Members', total_nm),
                               ('Reportbacks', total_rb),
                               ('Impact', total_impact),
                               ('Traffic', total_traffic),
                               ('Conversion Rate', conv_rate)])
        overall = json.dumps(overall)
        su = queryToData(
            cur2,
            queries.new_sign_ups_new.format(c_id, data[0]['nid'], start, end))
        nm = queryToData(
            cur2,
            queries.new_members_new.format(c_id, data[0]['nid'], start, end))
        rb = queryToData(
            cur2,
            queries.reportback_web_daily.format(data[0]['nid'], '10000', start,
                                                end))
        impact = queryToData(
            cur2,
            queries.impact_daily.format(data[0]['nid'], '10000', start, end))
        srcs = queryToData(
            cur2, queries.sources_new.format(data[0]['nid'], start, end))
        traffic = queryToData(
            cur2, queries.traffic_daily.format(data[0]['nid'], start, end))

    if int(data[0]['is_sms']) == 1:
        total_su = queryToData(cur2,
                               queries.new_sign_ups_new_mobile_total.format(
                                   c_id, start, end),
                               index=0,
                               keyname='mobile_signup_total',
                               need_json=0)
        total_nm = queryToData(cur2,
                               queries.new_members_new_mobile_total.format(
                                   c_id, start, end),
                               index=0,
                               keyname='mobile_new_members_total',
                               need_json=0)
        total_alpha = queryToData(cur2,
                                  queries.new_sign_ups_new_alphas.format(
                                      c_id, start, end),
                                  index=0,
                                  keyname='alphas',
                                  need_json=0)
        total_traffic = queryToData(cur2,
                                    queries.traffic_total.format(
                                        data[0]['nid'], start, end),
                                    index=0,
                                    keyname='traffic',
                                    need_json=0)
        try:
            conv_rate = round(
                float(total_alpha) / float(total_traffic) * 100, 2)
        except:
            conv_rate = 0.0
        overall = OrderedDict([('Sign Ups', total_su),
                               ('New Members', total_nm),
                               ('Reportbacks', total_alpha),
                               ('Impact', total_alpha),
                               ('Traffic', total_traffic),
                               ('Conversion Rate', conv_rate)])
        overall = json.dumps(overall)

        su = queryToData(
            cur2, queries.new_sign_ups_new_mobile.format(c_id, start, end))
        nm = queryToData(
            cur2, queries.new_members_new_mobile.format(c_id, start, end))
        rb = queryToData(cur2,
                         queries.reportback_sms_daily.format(c_id, start, end))
        impact = 0
        srcs = queryToData(
            cur2, queries.sources_new.format(data[0]['nid'], start, end))
        traffic = queryToData(
            cur2, queries.traffic_daily.format(data[0]['nid'], start, end))

    cur2.close()
    db2.close()

    return jsonify(is_sms=data[0]['is_sms'],
                   campaign=campaign,
                   su=su,
                   nm=nm,
                   rb=rb,
                   impact=impact,
                   srcs=srcs,
                   overall=overall,
                   traffic=traffic)
Пример #16
0
def getSpecificCampaignNew(campaign):

    db2_obj = openDB2()
    db2 = db2_obj[0]
    cur2 = db2_obj[1]

    campaign = campaign.replace('^&^', '#')
    campaign = campaign.replace('^^^', '?')

    data = queryToData(cur2,
                       queries.list_one_campaign.format(campaign),
                       need_json=0)

    if data[0]['mobile_ids'] is not None and data[0]['mobile_ids'] != '0':
        c_id = ",".join([
            '"' + i + '"' for i in data[0]['mobile_ids'].split(',') if i != 0
        ])
    else:
        c_id = "'999'"

    if int(data[0]['is_sms']) == 0:
        total_su = queryToData(cur2,
                               queries.signups_total.format(
                                   c_id, data[0]['nid'], '2000-01-01',
                                   '3000-01-01'),
                               index=0,
                               keyname='total_signups',
                               need_json=0)
        total_web_su = queryToData(cur2,
                                   queries.signups_web.format(
                                       data[0]['nid'], '2000-01-01',
                                       '3000-01-01'),
                                   index=0,
                                   keyname='web_su',
                                   need_json=0)
        total_nm = queryToData(cur2,
                               queries.new_members_total.format(
                                   c_id, data[0]['nid'], '2000-01-01',
                                   '3000-01-01'),
                               index=0,
                               keyname='new_members_total',
                               need_json=0)
        total_rb = queryToData(cur2,
                               queries.report_back_total_web.format(
                                   data[0]['nid'], '10000', '2000-01-01',
                                   '3000-01-01'),
                               index=0,
                               keyname='rb',
                               need_json=0)
        total_impact = queryToData(cur2,
                                   queries.impact_total.format(
                                       data[0]['nid'], '10000', '2000-01-01',
                                       '3000-01-01'),
                                   index=0,
                                   keyname='impact',
                                   need_json=0)
        total_traffic = queryToData(cur2,
                                    queries.traffic_total.format(
                                        data[0]['nid'], '2000-01-01',
                                        '3000-01-01'),
                                    index=0,
                                    keyname='traffic',
                                    need_json=0)
        overall = OrderedDict([
            ('Sign Ups', total_su), ('New Members', total_nm),
            ('Reportbacks', total_rb), ('Impact', total_impact),
            ('Traffic', total_traffic),
            ('Conversion Rate',
             round(float(total_web_su) / float(total_traffic) * 100, 2))
        ])
        overall = json.dumps(overall)

        su = queryToData(
            cur2,
            queries.new_sign_ups_new.format(c_id, data[0]['nid'], '2000-01-01',
                                            '3000-01-01'))
        nm = queryToData(
            cur2,
            queries.new_members_new.format(c_id, data[0]['nid'], '2000-01-01',
                                           '3000-01-01'))
        rb = queryToData(
            cur2,
            queries.reportback_web_daily.format(data[0]['nid'], '10000',
                                                '2000-01-01', '3000-01-01'))
        impact = queryToData(
            cur2,
            queries.impact_daily.format(data[0]['nid'], '10000', '2000-01-01',
                                        '3000-01-01'))
        srcs = queryToData(
            cur2,
            queries.sources_new.format(data[0]['nid'], '2000-01-01',
                                       '3000-01-01'))
        traffic = queryToData(
            cur2,
            queries.traffic_daily.format(data[0]['nid'], '2000-01-01',
                                         '3000-01-01'))

    if int(data[0]['is_sms']) == 1:
        total_su = queryToData(cur2,
                               queries.new_sign_ups_new_mobile_total.format(
                                   c_id, '2000-01-01', '3000-01-01'),
                               index=0,
                               keyname='mobile_signup_total',
                               need_json=0)
        total_nm = queryToData(cur2,
                               queries.new_members_new_mobile_total.format(
                                   c_id, '2000-01-01', '3000-01-01'),
                               index=0,
                               keyname='mobile_new_members_total',
                               need_json=0)
        total_alpha = queryToData(cur2,
                                  queries.new_sign_ups_new_alphas.format(
                                      c_id, '2000-01-01', '3000-01-01'),
                                  index=0,
                                  keyname='alphas',
                                  need_json=0)
        total_traffic = queryToData(cur2,
                                    queries.traffic_total.format(
                                        data[0]['nid'], '2000-01-01',
                                        '3000-01-01'),
                                    index=0,
                                    keyname='traffic',
                                    need_json=0)
        overall = OrderedDict([
            ('Sign Ups', total_su), ('New Members', total_nm),
            ('Reportbacks', total_alpha), ('Impact', total_alpha),
            ('Traffic', total_traffic),
            ('Conversion Rate',
             round(float(total_alpha) / float(total_traffic) * 100, 2))
        ])
        overall = json.dumps(overall)

        su = queryToData(
            cur2,
            queries.new_sign_ups_new_mobile.format(c_id, '2000-01-01',
                                                   '3000-01-01'))
        nm = queryToData(
            cur2,
            queries.new_members_new_mobile.format(c_id, '2000-01-01',
                                                  '3000-01-01'))
        rb = queryToData(
            cur2,
            queries.reportback_sms_daily.format(c_id, '2000-01-01',
                                                '3000-01-01'))
        impact = 0
        srcs = queryToData(
            cur2,
            queries.sources_new.format(data[0]['nid'], '2000-01-01',
                                       '3000-01-01'))
        traffic = queryToData(
            cur2,
            queries.traffic_daily.format(data[0]['nid'], '2000-01-01',
                                         '3000-01-01'))

    cur2.close()
    db2.close()

    return render_template('campaign-new.html',
                           is_sms=data[0]['is_sms'],
                           campaign=campaign,
                           su=su,
                           nm=nm,
                           rb=rb,
                           impact=impact,
                           srcs=srcs,
                           overall=overall,
                           traffic=traffic)