Example #1
0
    def test_periods( self ):
        bl = BucketedList({
            '2014' : [1,2,3],
            '2013' : [4,5,6],
        })

        self.assertEqual( bl.periods, bl.keys() )
        self.assertEqual( bl.periods, ['2014', '2013'] )
Example #2
0
    def test_extend( self ):
        bl1 = BucketedList( {'2014':[1,2], '2013':[3,4], '1999':[5,6]} )
        bl2 = BucketedList( {'2014':[1,2], '2013':[3,4], '2011':[5,6]} )

        bl1.extend( bl2 )

        self.assertEqual( bl1, {
            '2014':[1,2,1,2],
            '2013':[3,4,3,4],
            '2011':[5,6],
            '1999':[5,6],
        })
Example #3
0
def _mrr(start, end):
    bucket = request.args.get('bucketed', 'quarter')
    owners = QueryOwners(['CTP', '%WP', '%WU'], start, end,
                         owners=None).bucketed(bucket)

    # This will essentially zero any periods that do not exist but are in our
    # time range of the other series
    pset = BucketedList.period_set(*owners.values())
    map(lambda bl: bl.fill_missing_periods(pset), owners.values())

    # Used as a map across bucketed lists to sum each period
    #    sum_to_rate = partial( sum_delta, 'trate' )
    sum_rate_delta = partial(sum_delta, 'trate', 'frate')
    #    states = partial( map, lambda x: x[1] )

    series = []
    for name in owners:
        bucketed_list = owners[name]
        bucketed_list.period_map(sum_rate_delta)
        #        bucketed_list.period_map( states )
        #        bucketed_list.period_map( sum_rate_change )
        series.append({
            'key':
            name,
            'values':
            [(key, bucketed_list[key]) for key in sorted(bucketed_list)],
        })

    return series
Example #4
0
def _paid_account_count(start, end):

    bucket_func = attrgetter(request.args.get('bucketed', 'quarter'))

    std = query_std_count(start, end)
    tb_std = bucket_func(Timebucket(std, 'updated'))()

    pro = query_pro_count(start, end)
    tb_pro = bucket_func(Timebucket(pro, 'updated'))()

    bucketed_lists = OrderedDict((
        ('standard', tb_std),
        ('pro', tb_pro),
    ))

    def counts(alist):
        return sum(1 for entry in alist)

    # Make all bucketed list contain a single value summation of their rate change
    for bl in bucketed_lists.values():
        bl.period_map(counts)

    # Zero out any bucketed timeperiod that does not have a key that the other bucketed periods do
    pset = BucketedList.period_set(*(bucketed_lists.values()))
    map(lambda bl: bl.fill_missing_periods(pset), bucketed_lists.values())

    series = []

    for name, bl in bucketed_lists.items():
        series.append({
            'key': name,
            'values': [(key, bl[key]) for key in sorted(bl)],
        })

    return series
Example #5
0
def _downgrades_plus_churn_count(start, end):

    bucket_func = attrgetter(request.args.get('bucketed', 'quarter'))

    downgrade = query_downgrades(start, end)
    tb_downgrades = bucket_func(Timebucket(downgrade, 'updated'))()

    churn = query_lostbiz(start, end)
    tb_churn = bucket_func(Timebucket(churn, 'updated'))()

    bucketed_lists = OrderedDict((
        ('churn', tb_churn),
        ('downgrade', tb_downgrades),
    ))

    def counts(alist):
        return sum(1 for entry in alist)

    # Make all bucketed list contain a single value summation of their rate change
    for bl in bucketed_lists.values():
        bl.period_map(counts)

    # Zero out any bucketed timeperiod that does not have a key that the other bucketed periods do
    pset = BucketedList.period_set(*(bucketed_lists.values()))
    map(lambda bl: bl.fill_missing_periods(pset), bucketed_lists.values())

    series = []

    for name, bl in bucketed_lists.items():
        series.append({
            'key': name,
            'values': [(key, bl[key]) for key in sorted(bl)],
        })

    return series
Example #6
0
def _new_biz_plus_upsell(start, end):

    bucket_func = attrgetter(request.args.get('bucketed', 'quarter'))

    newbiz = query_upsell(start, end)
    sum_newbiz = bucket_func(Timebucket(newbiz, 'updated'))()

    upsell = query_newbiz(start, end)
    sum_upsell = bucket_func(Timebucket(upsell, 'updated'))()

    bucketed_lists = OrderedDict((
        ('newbiz', sum_newbiz),
        ('upsell', sum_upsell),
    ))

    # Make all bucketed list contain a single value summation of their rate change
    for bl in bucketed_lists.values():
        bl.period_map(sum_rate_change)

    # Zero out any bucketed timeperiod that does not have a key that the other bucketed periods do
    pset = BucketedList.period_set(*(bucketed_lists.values()))
    map(lambda bl: bl.fill_missing_periods(pset), bucketed_lists.values())

    series = []

    for name, bl in bucketed_lists.items():
        series.append({
            'key': name,
            'values': [(key, bl[key]) for key in sorted(bl)],
        })

    return series
Example #7
0
    def test_construction( self ):
        bl = BucketedList()
        self.assertEqual( isinstance( bl, (dict, BucketedList) ), True )
        
        bl['2014'] = [1,2,3]
        bl['2013'] = [4,5,6]

        self.assertEqual( bl['2014'], [1,2,3] )
        self.assertEqual( bl['2013'], [4,5,6] )
Example #8
0
    def test_period_map( self ):
        bl1 = BucketedList( {'2014':[1,2], '2013':[3,4], '1999':[5,6]} )
        bl1.period_map( sum )

        self.assertEqual( bl1['2014'], 3 )
        self.assertEqual( bl1['2013'], 7 )
        self.assertEqual( bl1['1999'], 11 )
        
        bl1 = BucketedList( {'2014':[1,2], '2013':[3,4], '1999':[5,6]} )
        bl1.period_map( partial( map, lambda x: x+1 ) )
        self.assertEqual( bl1['2014'], [2,3] )
        self.assertEqual( bl1['2013'], [4,5] )
        self.assertEqual( bl1['1999'], [6,7] )
Example #9
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    def test_fill_empty_periods( self ):
        bl1 = BucketedList( {'2014':[1,2], '2013':[3,4], '1999':[5,6]} )
        bl2 = BucketedList( {'2014':[1,2], '2013':[3,4], '2011':[5,6]} )
        pset = BucketedList.period_set( bl1, bl2 )

        bl1.fill_missing_periods( pset )
        self.assertEqual( set( bl1.periods ), set(( '2014', '2013', '2011', '1999' )) )
        self.assertEqual( bl1['2014'], [ 1, 2 ] )
        self.assertEqual( bl1['2013'], [ 3, 4 ] )
        self.assertEqual( bl1['2011'], [] )
        self.assertEqual( bl1['1999'], [ 5, 6 ] )

        
        bl2.fill_missing_periods( pset, 0 )
        self.assertEqual( set( bl2.periods ), set(( '2014', '2013', '2011', '1999' )) )
        self.assertEqual( bl2['2014'], [ 1, 2 ] )
        self.assertEqual( bl2['2013'], [ 3, 4 ] )
        self.assertEqual( bl2['2011'], [ 5, 6 ] )
        self.assertEqual( bl2['1999'], 0 )
Example #10
0
def _product_average_deal_size(start, end):

    bucket_func = attrgetter(request.args.get('bucketed', 'quarter'))

    std = query_std(start, end)
    avg_std = bucket_func(Timebucket(std, 'updated'))()

    pro = query_pro(start, end)
    avg_pro = bucket_func(Timebucket(pro, 'updated'))()

    bucketed_lists = OrderedDict((
        ('avg standard', avg_std),
        ('avg pro', avg_pro),
    ))

    # Zero out any bucketed timeperiod that does not have a key that the other bucketed periods do
    pset = BucketedList.period_set(*(bucketed_lists.values()))
    map(lambda bl: bl.fill_missing_periods(pset), bucketed_lists.values())

    def average(alist):
        # Make sure that there is at least some kind of positive movement
        culled_list = [item for item in alist if item.rate_delta > 0]
        num_items = len(culled_list)
        if num_items != 0:
            avg = reduce(lambda acc, val: acc + val.rate_delta, culled_list,
                         0) / float(num_items)
        else:
            avg = 0
        return avg

    # Caluculate the average deal size and mutate each bucket
    for bl in bucketed_lists.values():
        bl.period_map(average)

    series = []

    for name, bl in bucketed_lists.items():
        series.append({
            'key': name,
            'values': [(key, bl[key]) for key in sorted(bl)],
        })

    return series
Example #11
0
def _net_value(start, end):
    bucket_func = attrgetter(request.args.get('bucketed', 'quarter'))

    prev = query_state(['CTP', '%WP', '%WD', '%WU', '%WF'],
                       datetime(2008, 1, 1),
                       start,
                       g2only=True)
    prev_acc = reduce(lambda pacc, val: pacc + val.rate_delta, prev, 0)

    value = query_state(['CTP', '%WP', '%WD', '%WU', '%WF'], start, end)
    net_value = bucket_func(Timebucket(value, 'updated'))()

    bucketed_lists = OrderedDict((('net value', net_value), ))

    def accumulated_net(bl, accumulated=0):
        period_keys = sorted(bl.periods)
        for period in period_keys:
            bl[period] = reduce(lambda pacc, val: pacc + val.rate_delta,
                                bl[period], accumulated)
            accumulated = bl[period]

    # Mutate the bucketedlist componenets
    for bl in bucketed_lists.values():
        accumulated_net(bl, accumulated=prev_acc)

    pset = BucketedList.period_set(*(bucketed_lists.values()))
    map(lambda bl: bl.fill_missing_periods(pset), bucketed_lists.values())

    series = []

    for name, bl in bucketed_lists.items():
        series.append({
            'key': name,
            'values': [(key, bl[key]) for key in sorted(bl)],
        })

    return series
Example #12
0
def _conversion_rate(start, end):
    bucket_func = attrgetter(request.args.get('bucketed', 'quarter'))

    trials = query_state(['SUT'], start, end)
    bl_trials = bucket_func(Timebucket(trials, 'updated'))()

    converted = query_state(['TWP', 'FWP'], start, end)
    bl_converted = bucket_func(Timebucket(converted, 'updated'))()

    # Segment by Standard/Pro
    dev_conv = query_product_state(['TWP', 'FWP'], ['development'], start, end)
    bl_dev_conv = bucket_func(Timebucket(dev_conv, 'updated'))()

    pro_conv = query_product_state(['TWP', 'FWP'], ['production'], start, end)
    bl_pro_conv = bucket_func(Timebucket(pro_conv, 'updated'))()

    bucketed_lists = OrderedDict((
        ('trial', bl_trials),
        ('conversions', bl_converted),
        ('dev conversion', bl_dev_conv),
        ('pro conversion', bl_pro_conv),
    ))

    pset = BucketedList.period_set(*(bucketed_lists.values()))
    map(lambda bl: bl.fill_missing_periods(pset), bucketed_lists.values())

    def counts(alist):
        return sum(1 for entry in alist)

    # Mutate the bucketedlist componenets
    for bl in bucketed_lists.values():
        bl.period_map(counts)

    series = []
    series.append({
        'key':
        'trials',
        'values': [{
            'x': i,
            'y': bl_trials[key]
        } for i, key in enumerate(sorted(bl_trials))],
        'labels': [key for key in sorted(bl)],
        'bar':
        True,
    })

    for name, bl in OrderedDict(bucketed_lists.items()[-3:]).items():
        # Calculate the conversion rate
        for key in bl:
            if bl_trials[key]:
                bl[key] = float(bl.get(key, 0)) / bl_trials[key]
            else:
                bl[key] = float(bl.get(key, 0))

        series.append({
            'key':
            name,
            'values': [{
                'x': i,
                'y': bl[key]
            } for i, key in enumerate(sorted(bl))],
            'labels': [key for key in sorted(bl)],
        })

    return series
Example #13
0
    def test_get_period_set( self ):
        bl1 = BucketedList( {'2014':[1,2], '2013':[3,4], '1999':[5,6]} )
        bl2 = BucketedList( {'2014':[1,2], '2013':[3,4], '2011':[5,6]} )
        pset = BucketedList.period_set( bl1, bl2 )

        self.assertEqual( pset, set(( '2014', '2013', '2011', '1999' )) )