Para estas consultas de muestra, se supone que tienes conocimiento práctico de SQL y BigQuery. Obtén más información sobre SQL en BigQuery.
Consultas de Transferencia de datos de Campaign Manager 360
Haz coincidir las variables de Floodlight con las tablas temporales
Generar una coincidencia entre user_id y las variables personalizadas de Floodlight en la tabla de actividad Esto se puede usar para unir datos de origen con datos de Campaign Manager 360.
/* Creating the match temp table. This can be a separate query and the
temporary table will persist for 72 hours. */
CREATE TABLE
temp_table AS (
SELECT
user_id,
REGEXP_EXTRACT(event.other_data, 'u1=([^;]*)') AS u1_val
FROM
adh.cm_dt_activities_attributed
GROUP BY
1,
2 )
/* Matching to Campaign Manager 360 impression data */
SELECT
imp.event.campaign_id,
temp.u1_val,
COUNT(*) AS cnt
FROM
adh.cm_dt_impressions AS imp
JOIN
tmp.temp_table AS temp USING (user_id)
GROUP BY
1,
2
Publicación de impresiones
Este ejemplo es bueno para la administración de impresiones y muestra cómo encontrar la cantidad de impresiones que se publicaron más allá de las limitaciones de frecuencia o si ciertos clientes potenciales estaban subexpuestos a los anuncios. Utiliza estos conocimientos para optimizar tus sitios y tácticas para obtener la cantidad correcta de impresiones para un público elegido.
/* For this query to run, @advertiser_ids and @campaigns_ids
must be replaced with actual IDs. For example [12345] */
WITH filtered_uniques AS (
SELECT
user_id,
COUNT(event.placement_id) AS frequency
FROM adh.cm_dt_impressions
WHERE user_id != '0'
AND event.advertiser_id IN UNNEST(@advertiser_ids)
AND event.campaign_id IN UNNEST(@campaign_ids)
AND event.country_domain_name = 'US'
GROUP BY user_id
)
SELECT
frequency,
COUNT(*) AS uniques
FROM filtered_uniques
GROUP BY frequency
ORDER BY frequency
;
Recuento / frecuencia total de cookies únicas
Este ejemplo ayuda a identificar tácticas y formatos de anuncios que generan aumentos o disminuciones en la frecuencia o el recuento de cookies únicas.
/* For this query to run, @advertiser_ids and @campaigns_ids and @placement_ids
must be replaced with actual IDs. For example [12345] */
SELECT
COUNT(DISTINCT user_id) AS total_users,
COUNT(DISTINCT event.site_id) AS total_sites,
COUNT(DISTINCT device_id_md5) AS total_devices,
COUNT(event.placement_id) AS impressions
FROM adh.cm_dt_impressions
WHERE user_id != '0'
AND event.advertiser_id IN UNNEST(@advertiser_ids)
AND event.campaign_id IN UNNEST(@campaign_ids)
AND event.placement_id IN UNNEST(@placement_ids)
AND event.country_domain_name = 'US'
;
También puedes incluir IDs de sitios o posiciones en la cláusula WHERE para limitar tu consulta.
Recuento total de cookies únicas y frecuencia promedio por estado
En este ejemplo, se une la tabla cm_dt_impressions
y la tabla de metadatos cm_dt_state
para mostrar las impresiones totales, los recuentos de cookies por estado y las impresiones promedio por usuario, agrupados por estado geográfico o provincia de Norteamérica.
WITH impression_stats AS (
SELECT
event.country_domain_name AS country,
CONCAT(event.country_domain_name, '-', event.state) AS state,
COUNT(DISTINCT user_id) AS users,
COUNT(*) AS impressions
FROM adh.cm_dt_impressions
WHERE event.country_domain_name = 'US'
OR event.country_domain_name = 'CA'
GROUP BY 1, 2
)
SELECT
country,
IFNULL(state_name, state) AS state_name,
users,
impressions,
FORMAT(
'%0.2f',
IF(
IFNULL(impressions, 0) = 0,
0,
impressions / users
)
) AS avg_imps_per_user
FROM impression_stats
LEFT JOIN adh.cm_dt_state USING (state)
;
Públicos de Display & Video 360
En este ejemplo, se muestra cómo analizar los públicos de Display & Video 360. Conoce a qué impresiones de públicos llegan los resultados y determina si algunos públicos tienen un mejor rendimiento que otros. Este conocimiento puede ayudarte a equilibrar la cantidad de cookies únicas (mostrar anuncios a una gran cantidad de usuarios) y la calidad (una segmentación limitada y las impresiones visibles), según tus objetivos.
/* For this query to run, @advertiser_ids and @campaigns_ids and @placement_ids
must be replaced with actual IDs. For example [12345] */
WITH filtered_impressions AS (
SELECT
event.event_time as date,
CASE
WHEN (event.browser_enum IN ('29', '30', '31')
OR event.os_id IN
(501012, 501013, 501017, 501018,
501019, 501020, 501021, 501022,
501023, 501024, 501025, 501027))
THEN 'Mobile'
ELSE 'Desktop'
END AS device,
event.dv360_matching_targeted_segments,
event.active_view_viewable_impressions,
event.active_view_measurable_impressions,
user_id
FROM adh.cm_dt_impressions
WHERE event.dv360_matching_targeted_segments != ''
AND event.advertiser_id in UNNEST(@advertiser_ids)
AND event.campaign_id IN UNNEST(@campaign_ids)
AND event.dv360_country_code = 'US'
)
SELECT
audience_id,
device,
COUNT(*) AS impressions,
COUNT(DISTINCT user_id) AS uniques,
ROUND(COUNT(*) / COUNT(DISTINCT user_id), 1) AS frequency,
SUM(active_view_viewable_impressions) AS viewable_impressions,
SUM(active_view_measurable_impressions) AS measurable_impressions
FROM filtered_impressions
JOIN UNNEST(SPLIT(dv360_matching_targeted_segments, ' ')) AS audience_id
GROUP BY 1, 2
;
Visibilidad
En estos ejemplos, se muestra cómo medir las métricas de visibilidad de Vista activa Plus.
WITH T AS (
SELECT cm_dt_impressions.event.impression_id AS Impression,
cm_dt_impressions.event.active_view_measurable_impressions AS AV_Measurable,
SUM(cm_dt_active_view_plus.event.active_view_plus_measurable_count) AS AVP_Measurable
FROM adh.cm_dt_impressions
FULL JOIN adh.cm_dt_active_view_plus
ON (cm_dt_impressions.event.impression_id =
cm_dt_active_view_plus.event.impression_id)
GROUP BY Impression, AV_Measurable
)
SELECT COUNT(Impression), SUM(AV_Measurable), SUM(AVP_Measurable)
FROM T
;
WITH Raw AS (
SELECT
event.ad_id AS Ad_Id,
SUM(event.active_view_plus_measurable_count) AS avp_total,
SUM(event.active_view_first_quartile_viewable_impressions) AS avp_1st_quartile,
SUM(event.active_view_midpoint_viewable_impressions) AS avp_2nd_quartile,
SUM(event.active_view_third_quartile_viewable_impressions) AS avp_3rd_quartile,
SUM(event.active_view_complete_viewable_impressions) AS avp_complete
FROM
adh.cm_dt_active_view_plus
GROUP BY
1
)
SELECT
Ad_Id,
avp_1st_quartile / avp_total AS Viewable_Rate_1st_Quartile,
avp_2nd_quartile / avp_total AS Viewable_Rate_2nd_Quartile,
avp_3rd_quartile / avp_total AS Viewable_Rate_3rd_Quartile,
avp_complete / avp_total AS Viewable_Rate_Completion_Quartile
FROM
Raw
WHERE
avp_total > 0
ORDER BY
Viewable_Rate_1st_Quartile DESC
;
Datos dinámicos en la Transferencia de datos de Campaign Manager 360
Cantidad de impresiones por feed y perfil dinámicos
SELECT
event.dynamic_profile,
feed_name,
COUNT(*) as impressions
FROM adh.cm_dt_impressions
JOIN UNNEST (event.feed) as feed_name
GROUP BY 1, 2;
Cantidad de impresiones por etiqueta de informe dinámico en el feed 1
SELECT
event.feed_reporting_label[SAFE_ORDINAL(1)] feed1_reporting_label,,
COUNT(*) as impressions
FROM adh.cm_dt_impressions
WHERE event.feed_reporting_label[SAFE_ORDINAL(1)] <> “” # where you have at least one reporting label set
GROUP BY 1;
Cantidad de impresiones en las que la etiqueta de informe es = "roja" en el feed 2
SELECT
event.feed_reporting_label[SAFE_ORDINAL(2)] AS feed1_reporting_label,
COUNT(*) as impressions
FROM adh.cm_dt_impressions
WHERE event.feed_reporting_label[SAFE_ORDINAL(2)] = “red”
GROUP BY 1;
Cantidad de impresiones en las que la dimensión de informes = 1 "rojo" y la dimensión de informes_2 = "automóvil" en el feed 1
SELECT
event.feed_reporting_label[SAFE_ORDINAL(1)] AS feed1_reporting_label,
event.feed_reporting_dimension1[SAFE_ORDINAL(1)] AS feed1_reporting_dimension1,
event.feed_reporting_dimension2[SAFE_ORDINAL(1)] AS feed2_reporting_dimension1,
event.feed_reporting_dimension3[SAFE_ORDINAL(1)] AS feed3_reporting_dimension1,
event.feed_reporting_dimension4[SAFE_ORDINAL(1)] AS feed4_reporting_dimension1,
event.feed_reporting_dimension5[SAFE_ORDINAL(1)] AS feed5_reporting_dimension1,
event.feed_reporting_dimension6[SAFE_ORDINAL(1)] AS feed6_reporting_dimension1,
COUNT(*) as impressions
FROM adh.cm_dt_impressions
WHERE event.feed_reporting_dimension1[SAFE_ORDINAL(1)] = “red”
AND event.feed_reporting_dimension2[SAFE_ORDINAL(1)] = “car”
GROUP BY 1,2,3,4,5,6,7;
Formatos de anuncios en la Transferencia de datos de Campaign Manager 360
Estos ejemplos muestran cómo determinar qué formatos de anuncios maximizan el recuento de cookies únicas o la frecuencia de impresiones. Utiliza estos conocimientos para equilibrar el recuento total de cookies únicas y la exposición de los usuarios a los anuncios.
Publicación de impresiones
/* For this query to run, @advertiser_ids and @campaigns_ids
must be replaced with actual IDs. For example [12345]. YOUR_BQ_DATASET must be
replaced with the actual name of your dataset.*/
WITH filtered_uniques AS (
SELECT
user_id,
CASE
WHEN creative_type LIKE '%Video%' THEN 'Video'
WHEN creative_type IS NULL THEN 'Unknown'
ELSE 'Display'
END AS creative_format,
COUNT(*) AS impressions
FROM adh.cm_dt_impressions impression
LEFT JOIN YOUR_BQ_DATASET.campaigns creative
ON creative.rendering_id = impression.event.rendering_id
WHERE user_id != '0'
AND event.advertiser_id IN UNNEST(@advertiser_ids)
AND event.campaign_id IN UNNEST(@campaign_ids)
AND event.country_domain_name = 'US'
GROUP BY user_id, creative_format
)
SELECT
impressions AS frequency,
creative_format,
COUNT(DISTINCT user_id) AS uniques,
SUM(impressions) AS impressions
FROM filtered_uniques
GROUP BY frequency, creative_format
ORDER BY frequency
;
Recuento y frecuencia de cookies únicas
/* For this query to run, @advertiser_ids and @campaigns_ids
must be replaced with actual IDs. For example [12345]. YOUR_BQ_DATASET must be
replaced with the actual name of your dataset. */
WITH filtered_impressions AS (
SELECT
event.campaign_id AS campaign_id,
event.rendering_id AS rendering_id,
user_id
FROM adh.cm_dt_impressions
WHERE user_id != '0'
AND event.advertiser_id IN UNNEST(@advertiser_ids)
AND event.campaign_id IN UNNEST(@campaign_ids)
AND event.country_domain_name = 'US'
)
SELECT
Campaign,
CASE
WHEN creative_type LIKE '%Video%' THEN 'Video'
WHEN creative_type IS NULL THEN 'Unknown'
ELSE 'Display'
END AS creative_format,
COUNT(DISTINCT user_id) AS users,
COUNT(*) AS impressions
FROM filtered_impressions
LEFT JOIN YOUR_BQ_DATASET.campaigns USING (campaign_id)
LEFT JOIN YOUR_BQ_DATASET.creatives USING (rendering_id)
GROUP BY 1, 2
;
Google Ads
Impresiones de la aplicación para dispositivos móviles con tablas _rdid
Consulta 1:
SELECT
campaign_id,
COUNT(*) AS imp,
COUNT(DISTINCT user_id) AS users
FROM adh.google_ads_impressions
WHERE is_app_traffic
GROUP BY 1
;
Consulta 2:
SELECT
campaign_id,
COUNT(DISTINCT device_id_md5) AS device_ids
FROM adh.google_ads_impressions_rdid
GROUP BY 1
;
Los resultados se pueden unir mediante campaign_id.
Publicación de datos demográficos
En este ejemplo, se muestra cómo determinar qué campañas llegan a un segmento demográfico determinado.
/* For this query to run, @customer_id
must be replaced with an actual ID. For example [12345] */
WITH impression_stats AS (
SELECT
campaign_id,
demographics.gender AS gender_id,
demographics.age_group AS age_group_id,
COUNT(DISTINCT user_id) AS users,
COUNT(*) AS impressions
FROM adh.google_ads_impressions
WHERE customer_id = @customer_id
GROUP BY 1, 2, 3
)
SELECT
campaign_name,
gender_name,
age_group_name,
users,
impressions
FROM impression_stats
LEFT JOIN adh.google_ads_campaign USING (campaign_id)
LEFT JOIN adh.gender USING (gender_id)
LEFT JOIN adh.age_group USING (age_group_id)
ORDER BY 1, 2, 3
;
Visibilidad
Para obtener una descripción general de la visibilidad con muestras de consultas, consulta Métricas avanzadas de Vista activa
Configuración de zona horaria del anunciante de Google Ads
SELECT
customer_id,
customer_timezone,
count(1) as impressions
FROM adh.google_ads_impressions i
INNER JOIN adh.google_ads_customer c
ON c.customer_id = i.customer_id
WHERE TIMESTAMP_MICROS(i.query_id.time_usec) >= CAST(DATETIME(@date, c.customer_timezone) AS TIMESTAMP)
AND TIMESTAMP_MICROS(i.query_id.time_usec) < CAST(DATETIME_ADD(DATETIME(@date, c.customer_timezone), INTERVAL 1 DAY) AS TIMESTAMP)
GROUP BY customer_id, customer_timezone
Inventory type
Esta consulta de muestra demuestra el concepto de tipo de inventario. Puedes usar la
inventory_type
para determinar en qué inventario se publicaron tus anuncios, por ejemplo:
Gmail o YouTube Music. Valores posibles: YOUTUBE
, YOUTUBE_TV
,
YOUTUBE_MUSIC
, SEARCH
, GMAIL
y OTHER
. Otro se refiere a la API de Google
Red de Display o de video.
SELECT
i.campaign_id,
cmp.campaign_name,
i.inventory_type,
COUNT(i.query_id.time_usec) AS impressions
FROM adh.google_ads_impressions i
LEFT JOIN adh.google_ads_campaign cmp ON (i.campaign_id = cmp.campaign_id)
WHERE
TIMESTAMP_MICROS(i.query_id.time_usec)
BETWEEN @local_start_date
AND TIMESTAMP_ADD(@local_start_date,INTERVAL @number_days*24 HOUR)
GROUP BY 1, 2, 3
ORDER BY 4 DESC
Consultas del grupo de anuncios de YouTube
Los grupos de anuncios agrupan 2 anuncios en una sola pausa publicitaria durante sesiones de visualización de YouTube más largas. (Cree pausas comerciales, pero se limita a 2 anuncios). Los anuncios publicados en grupos de anuncios se pueden omitir. Sin embargo, si un usuario omite el primer anuncio, también se omitirá el segundo.
Impresiones y vistas de TrueView in-stream de las campañas de TrueView de Google Ads
SELECT
cmp.campaign_name,
imp.is_app_traffic,
COUNT(*) AS total_impressions,
COUNTIF(clk.click_id IS NOT NULL) AS total_trueview_views
FROM adh.google_ads_impressions imp
JOIN adh.google_ads_campaign cmp USING (campaign_id)
JOIN adh.google_ads_adgroup adg USING (adgroup_id)
LEFT JOIN adh.google_ads_clicks clk ON
imp.impression_id = clk.impression_id
WHERE
imp.customer_id IN UNNEST(@customer_ids)
AND adg.adgroup_type = 'VIDEO_TRUE_VIEW_IN_STREAM'
AND cmp.advertising_channel_type = 'VIDEO'
GROUP BY 1, 2
Métricas de visibilidad de Display & Video 360 por líneas de pedido
WITH
imp_stats AS (
SELECT
imp.line_item_id,
count(*) as total_imp,
SUM(num_active_view_measurable_impression) AS num_measurable_impressions,
SUM(num_active_view_eligible_impression) AS num_enabled_impressions
FROM adh.dv360_youtube_impressions imp
WHERE
imp.line_item_id IN UNNEST(@line_item_ids)
GROUP BY 1
),
av_stats AS (
SELECT
imp.line_item_id,
SUM(num_active_view_viewable_impression) AS num_viewable_impressions
FROM adh.dv360_youtube_impressions imp
LEFT JOIN
adh.dv360_youtube_active_views av
ON imp.impression_id = av.impression_id
WHERE
imp.line_item_id IN UNNEST(@line_item_ids)
GROUP BY 1
)
SELECT
li.line_item_name,
SUM(imp.total_imp) as num_impressions,
SUM(imp.num_measurable_impressions) AS num_measurable_impressions,
SUM(imp.num_enabled_impressions) AS num_enabled_impressions,
SUM(IFNULL(av.num_viewable_impressions, 0)) AS num_viewable_impressions
FROM imp_stats as imp
LEFT JOIN av_stats AS av USING (line_item_id)
JOIN adh.dv360_youtube_lineitem li ON (imp.line_item_id = li.line_item_id)
GROUP BY 1
Consultas de YouTube Reserve
Publicación de impresiones por anunciante
Esta consulta mide la cantidad de impresiones y usuarios distintos por anunciante. Puedes usar estas cifras para calcular la cantidad promedio de impresiones por usuario (o la "frecuencia de anuncios").
SELECT
advertiser_name,
COUNT(*) AS imp,
COUNT(DISTINCT user_id) AS users
FROM adh.yt_reserve_impressions AS impressions
JOIN adh.yt_reserve_order order ON impressions.order_id = order.order_id
GROUP BY 1
;
Omisiones de anuncio
Esta consulta mide la cantidad de omisiones de anuncios por cliente, campaña, grupo de anuncios y creatividad.
SELECT
impression_data.customer_id,
impression_data.campaign_id,
impression_data.adgroup_id,
impression_data.ad_group_creative_id,
COUNTIF(label = "videoskipped") AS num_skips
FROM
adh.google_ads_conversions
GROUP BY 1, 2, 3, 4;
Consultas generales
Resta un grupo de usuarios de otro
En este ejemplo, se muestra cómo restar un grupo de usuarios de otro. Esta técnica tiene una amplia variedad de usos, incluido el recuento de usuarios que no generaron una conversión, de usuarios sin impresiones visibles y de usuarios sin clics.
WITH exclude AS (
SELECT DISTINCT user_id
FROM adh.google_ads_impressions
WHERE campaign_id = 123
)
SELECT
COUNT(DISTINCT imp.user_id) -
COUNT(DISTINCT exclude.user_id) AS users
FROM adh.google_ads_impressions imp
LEFT JOIN exclude
USING (user_id)
WHERE imp.campaign_id = 876
;
Superposición personalizada
Esta búsqueda mide la superposición de 2 o más campañas. Se puede personalizar para medir la superposición según criterios discrecionales.
/* For this query to run, @campaign_1 and @campaign_2 must be replaced with
actual campaign IDs. */
WITH flagged_impressions AS (
SELECT
user_ID,
SUM(IF(campaign_ID in UNNEST(@campaign_1), 1, 0)) AS C1_impressions,
SUM(IF(campaign_ID in UNNEST(@campaign_2), 1, 0)) AS C2_impressions
FROM adh.cm_dt_impressions
GROUP BY user_ID
SELECT COUNTIF(C1_impressions > 0) as C1_cookie_count,
COUNTIF(C2_impressions > 0) as C2_cookie_count,
COUNTIF(C1_impressions > 0 and C2_impressions > 0) as overlap_cookie_count
FROM flagged_impressions
;
Vendido por socios - Venta cruzada
Esta consulta mide las impresiones y los clics del inventario vendido por socios.
SELECT
a.record_date AS record_date,
a.line_item_id AS line_item_id,
a.creative_id AS creative_id,
a.ad_id AS ad_id,
a.impressions AS impressions,
a.click_through AS click_through,
a.video_skipped AS video_skipped,
b.pixel_url AS pixel_url
FROM
(
SELECT
FORMAT_TIMESTAMP('%D', TIMESTAMP_MICROS(i.query_id.time_usec), 'Etc/UTC') AS record_date,
i.line_item_id as line_item_id,
i.creative_id as creative_id,
i.ad_id as ad_id,
COUNT(i.query_id) as impressions,
COUNTIF(c.label='video_click_to_advertiser_site') AS click_through,
COUNTIF(c.label='videoskipped') AS video_skipped
FROM
adh.partner_sold_cross_sell_impressions AS i
LEFT JOIN adh.partner_sold_cross_sell_conversions AS c
ON i.impression_id = c.impression_id
GROUP BY
1, 2, 3, 4
) AS a
JOIN adh.partner_sold_cross_sell_creative_pixels AS b
ON (a.ad_id = b.ad_id)
;
Impresiones en la tienda de aplicaciones
La siguiente consulta cuenta la cantidad total de impresiones agrupadas por tienda de aplicaciones y aplicación.
SELECT app_store_name, app_name, COUNT(*) AS number
FROM adh.google_ads_impressions AS imp
JOIN adh.mobile_app_info
USING (app_store_id, app_id)
WHERE imp.app_id IS NOT NULL
GROUP BY 1,2
ORDER BY 3 DESC