試用 Google Analytics 的 MCP 伺服器。從
GitHub 安裝,詳情請參閱
公告。
進階查詢
透過集合功能整理內容
你可以依據偏好儲存及分類內容。
此頁面上的進階查詢適用於以下位置的 BigQuery 事件匯出資料:
Google Analytics如果您有通用 Analytics 專用 BigQuery 教戰手冊,
和通用 Analytics 的相同資源試試基本查詢
,再試用進階版功能
購買了特定產品的消費者購買的產品
下列查詢顯示消費者購買了其他產品
購買了特定產品本例並未假設產品
是在同一筆訂單中購買的。
最佳化的範例會使用 BigQuery 指令碼功能來定義變數
,宣告要篩選哪些項目雖然這項功能不會改善效能
這是比較容易理解的變數方式,與建立
使用 WITH
子句擷取單一值資料表。簡化的查詢會使用後者
方法是使用 WITH
子句
簡化的查詢建立了獨立的「產品 A 買家」清單並執行
與該資料合併而最佳化的查詢會改為建立包含所有項目清單的
使用者透過 ARRAY_AGG
函式下單。接著使用
外部 WHERE
子句,系統會按
target_item
,只顯示相關項目。
單省
-- Example: Products purchased by customers who purchased a specific product.
--
-- `Params` is used to hold the value of the selected product and is referenced
-- throughout the query.
WITH
Params AS (
-- Replace with selected item_name or item_id.
SELECT 'Google Navy Speckled Tee' AS selected_product
),
PurchaseEvents AS (
SELECT
user_pseudo_id,
items
FROM
-- Replace table name.
`bigquery-public-data.ga4_obfuscated_sample_ecommerce.events_*`
WHERE
-- Replace date range.
_TABLE_SUFFIX BETWEEN '20201101' AND '20210131'
AND event_name = 'purchase'
),
ProductABuyers AS (
SELECT DISTINCT
user_pseudo_id
FROM
Params,
PurchaseEvents,
UNNEST(items) AS items
WHERE
-- item.item_id can be used instead of items.item_name.
items.item_name = selected_product
)
SELECT
items.item_name AS item_name,
SUM(items.quantity) AS item_quantity
FROM
Params,
PurchaseEvents,
UNNEST(items) AS items
WHERE
user_pseudo_id IN (SELECT user_pseudo_id FROM ProductABuyers)
-- item.item_id can be used instead of items.item_name
AND items.item_name != selected_product
GROUP BY 1
ORDER BY item_quantity DESC;
最佳化
-- Optimized Example: Products purchased by customers who purchased a specific product.
-- Replace item name
DECLARE target_item STRING DEFAULT 'Google Navy Speckled Tee';
SELECT
IL.item_name AS item_name,
SUM(IL.quantity) AS quantity
FROM
(
SELECT
user_pseudo_id,
ARRAY_AGG(STRUCT(item_name, quantity)) AS item_list
FROM
-- Replace table
`bigquery-public-data.ga4_obfuscated_sample_ecommerce.events_*`, UNNEST(items)
WHERE
-- Replace date range
_TABLE_SUFFIX BETWEEN '20201201' AND '20201210'
AND event_name = 'purchase'
GROUP BY
1
),
UNNEST(item_list) AS IL
WHERE
target_item IN (SELECT item_name FROM UNNEST(item_list))
-- Remove the following line if you want the target_item to appear in the results
AND target_item != IL.item_name
GROUP BY
item_name
ORDER BY
quantity DESC;
使用者每次購買工作階段花費的平均金額
下列查詢會顯示每個工作階段平均花費的金額
內容。這項數據只會計入使用者完成購買的工作階段。
-- Example: Average amount of money spent per purchase session by user.
WITH
events AS (
SELECT
session.value.int_value AS session_id,
COALESCE(spend.value.int_value, spend.value.float_value, spend.value.double_value, 0.0)
AS spend_value,
event.*
-- Replace table name
FROM `bigquery-public-data.ga4_obfuscated_sample_ecommerce.events_*` AS event
LEFT JOIN UNNEST(event.event_params) AS session
ON session.key = 'ga_session_id'
LEFT JOIN UNNEST(event.event_params) AS spend
ON spend.key = 'value'
-- Replace date range
WHERE _TABLE_SUFFIX BETWEEN '20201101' AND '20210131'
)
SELECT
user_pseudo_id,
COUNT(DISTINCT session_id) AS session_count,
SUM(spend_value) / COUNT(DISTINCT session_id) AS avg_spend_per_session_by_user
FROM events
WHERE event_name = 'purchase' and session_id IS NOT NULL
GROUP BY user_pseudo_id
使用者的最近工作階段 ID 和工作階段號碼
下列查詢提供了最新 ga_session_id 和
最近 4 天以來的 ga_session_number。您可以提供
user_pseudo_id
清單或 user_id
清單。
user_pseudo_id
-- Get the latest ga_session_id and ga_session_number for specific users during last 4 days.
-- Replace timezone. List at https://en.wikipedia.org/wiki/List_of_tz_database_time_zones.
DECLARE REPORTING_TIMEZONE STRING DEFAULT 'America/Los_Angeles';
-- Replace list of user_pseudo_id's with ones you want to query.
DECLARE USER_PSEUDO_ID_LIST ARRAY<STRING> DEFAULT
[
'1005355938.1632145814', '979622592.1632496588', '1101478530.1632831095'];
CREATE TEMP FUNCTION GetParamValue(params ANY TYPE, target_key STRING)
AS (
(SELECT `value` FROM UNNEST(params) WHERE key = target_key LIMIT 1)
);
CREATE TEMP FUNCTION GetDateSuffix(date_shift INT64, timezone STRING)
AS (
(SELECT FORMAT_DATE('%Y%m%d', DATE_ADD(CURRENT_DATE(timezone), INTERVAL date_shift DAY)))
);
SELECT DISTINCT
user_pseudo_id,
FIRST_VALUE(GetParamValue(event_params, 'ga_session_id').int_value)
OVER (UserWindow) AS ga_session_id,
FIRST_VALUE(GetParamValue(event_params, 'ga_session_number').int_value)
OVER (UserWindow) AS ga_session_number
FROM
-- Replace table name.
`bigquery-public-data.ga4_obfuscated_sample_ecommerce.events_*`
WHERE
user_pseudo_id IN UNNEST(USER_PSEUDO_ID_LIST)
AND RIGHT(_TABLE_SUFFIX, 8)
BETWEEN GetDateSuffix(-3, REPORTING_TIMEZONE)
AND GetDateSuffix(0, REPORTING_TIMEZONE)
WINDOW UserWindow AS (PARTITION BY user_pseudo_id ORDER BY event_timestamp DESC);
user_id
-- Get the latest ga_session_id and ga_session_number for specific users during last 4 days.
-- Replace timezone. List at https://en.wikipedia.org/wiki/List_of_tz_database_time_zones.
DECLARE REPORTING_TIMEZONE STRING DEFAULT 'America/Los_Angeles';
-- Replace list of user_id's with ones you want to query.
DECLARE USER_ID_LIST ARRAY<STRING> DEFAULT ['<user_id_1>', '<user_id_2>', '<user_id_n>'];
CREATE TEMP FUNCTION GetParamValue(params ANY TYPE, target_key STRING)
AS (
(SELECT `value` FROM UNNEST(params) WHERE key = target_key LIMIT 1)
);
CREATE TEMP FUNCTION GetDateSuffix(date_shift INT64, timezone STRING)
AS (
(SELECT FORMAT_DATE('%Y%m%d', DATE_ADD(CURRENT_DATE(timezone), INTERVAL date_shift DAY)))
);
SELECT DISTINCT
user_pseudo_id,
FIRST_VALUE(GetParamValue(event_params, 'ga_session_id').int_value)
OVER (UserWindow) AS ga_session_id,
FIRST_VALUE(GetParamValue(event_params, 'ga_session_number').int_value)
OVER (UserWindow) AS ga_session_number
FROM
-- Replace table name.
`bigquery-public-data.ga4_obfuscated_sample_ecommerce.events_*`
WHERE
user_id IN UNNEST(USER_ID_LIST)
AND RIGHT(_TABLE_SUFFIX, 8)
BETWEEN GetDateSuffix(-3, REPORTING_TIMEZONE)
AND GetDateSuffix(0, REPORTING_TIMEZONE)
WINDOW UserWindow AS (PARTITION BY user_pseudo_id ORDER BY event_timestamp DESC);
除非另有註明,否則本頁面中的內容是採用創用 CC 姓名標示 4.0 授權,程式碼範例則為阿帕契 2.0 授權。詳情請參閱《Google Developers 網站政策》。Java 是 Oracle 和/或其關聯企業的註冊商標。
上次更新時間:2024-09-12 (世界標準時間)。
[null,null,["上次更新時間:2024-09-12 (世界標準時間)。"],[[["\u003cp\u003eThis page provides advanced BigQuery queries for analyzing Google Analytics 4 event export data, going beyond basic queries.\u003c/p\u003e\n"],["\u003cp\u003eIt includes queries to identify products frequently purchased together, calculate average spending per purchase session, and retrieve the latest session information for specific users.\u003c/p\u003e\n"],["\u003cp\u003eThe queries are demonstrated with examples and explanations, including simplified and optimized versions where applicable.\u003c/p\u003e\n"],["\u003cp\u003eBefore using these advanced queries, it's recommended to familiarize yourself with the basic BigQuery queries for Google Analytics 4.\u003c/p\u003e\n"],["\u003cp\u003eUsers of Universal Analytics can find similar resources in the BigQuery cookbook for Universal Analytics linked on the page.\u003c/p\u003e\n"]]],["This document provides advanced BigQuery queries for Google Analytics event data. It details how to identify other products purchased by customers who bought a specific item, offering both simplified and optimized query examples that filter purchase lists. Another query calculates the average amount spent per purchase session per user. Lastly, it outlines how to retrieve the latest session ID and number for users, with examples for both `user_pseudo_id` and `user_id` lists.\n"],null,["# Advanced queries\n\nThe advanced queries in this page apply to the BigQuery event export data for\nGoogle Analytics. See [BigQuery cookbook for Universal Analytics](https://support.google.com/analytics/answer/4419694) if you are\nlooking for the same resource for Universal Analytics. Try the [basic queries](/analytics/bigquery/basic-queries)\nfirst before trying out the advanced ones.\n\n### Products purchased by customers who purchased a certain product\n\nThe following query shows what other products were purchased by customers who\npurchased a specific product. This example does not assume that the products\nwere purchased in the same order.\n\nThe optimized example relies on BigQuery scripting features to define a variable\nthat declares which items to filter on. While this does not improve performance,\nthis is a more readable approach for defining variables compared creating a\nsingle value table using a `WITH` clause. The simplified query uses the latter\napproach using the `WITH` clause.\n\nThe simplified query creats a separate list of \"Product A buyers\" and does a\njoin with that data. The optimized query, instead, creates a list of all items a\nuser has purchased across orders using the `ARRAY_AGG` function. Then using the\nouter `WHERE` clause, purchase lists across all users are filtered for the\n`target_item` and only relevant items are shown. \n\n### Simplified\n\n -- Example: Products purchased by customers who purchased a specific product.\n --\n -- `Params` is used to hold the value of the selected product and is referenced\n -- throughout the query.\n\n WITH\n Params AS (\n -- Replace with selected item_name or item_id.\n SELECT 'Google Navy Speckled Tee' AS selected_product\n ),\n PurchaseEvents AS (\n SELECT\n user_pseudo_id,\n items\n FROM\n -- Replace table name.\n `bigquery-public-data.ga4_obfuscated_sample_ecommerce.events_*`\n WHERE\n -- Replace date range.\n _TABLE_SUFFIX BETWEEN '20201101' AND '20210131'\n AND event_name = 'purchase'\n ),\n ProductABuyers AS (\n SELECT DISTINCT\n user_pseudo_id\n FROM\n Params,\n PurchaseEvents,\n UNNEST(items) AS items\n WHERE\n -- item.item_id can be used instead of items.item_name.\n items.item_name = selected_product\n )\n SELECT\n items.item_name AS item_name,\n SUM(items.quantity) AS item_quantity\n FROM\n Params,\n PurchaseEvents,\n UNNEST(items) AS items\n WHERE\n user_pseudo_id IN (SELECT user_pseudo_id FROM ProductABuyers)\n -- item.item_id can be used instead of items.item_name\n AND items.item_name != selected_product\n GROUP BY 1\n ORDER BY item_quantity DESC;\n\n### Optimized\n\n -- Optimized Example: Products purchased by customers who purchased a specific product.\n\n -- Replace item name\n DECLARE target_item STRING DEFAULT 'Google Navy Speckled Tee';\n\n SELECT\n IL.item_name AS item_name,\n SUM(IL.quantity) AS quantity\n FROM\n (\n SELECT\n user_pseudo_id,\n ARRAY_AGG(STRUCT(item_name, quantity)) AS item_list\n FROM\n -- Replace table\n `bigquery-public-data.ga4_obfuscated_sample_ecommerce.events_*`, UNNEST(items)\n WHERE\n -- Replace date range\n _TABLE_SUFFIX BETWEEN '20201201' AND '20201210'\n AND event_name = 'purchase'\n GROUP BY\n 1\n ),\n UNNEST(item_list) AS IL\n WHERE\n target_item IN (SELECT item_name FROM UNNEST(item_list))\n -- Remove the following line if you want the target_item to appear in the results\n AND target_item != IL.item_name\n GROUP BY\n item_name\n ORDER BY\n quantity DESC;\n\n### Average amount of money spent per purchase session by user\n\nThe following query shows the average amount of money spent per session by each\nuser. This takes into account only the sessions where the user made a purchase. \n\n -- Example: Average amount of money spent per purchase session by user.\n\n WITH\n events AS (\n SELECT\n session.value.int_value AS session_id,\n COALESCE(spend.value.int_value, spend.value.float_value, spend.value.double_value, 0.0)\n AS spend_value,\n event.*\n\n -- Replace table name\n FROM `bigquery-public-data.ga4_obfuscated_sample_ecommerce.events_*` AS event\n LEFT JOIN UNNEST(event.event_params) AS session\n ON session.key = 'ga_session_id'\n LEFT JOIN UNNEST(event.event_params) AS spend\n ON spend.key = 'value'\n\n -- Replace date range\n WHERE _TABLE_SUFFIX BETWEEN '20201101' AND '20210131'\n )\n SELECT\n user_pseudo_id,\n COUNT(DISTINCT session_id) AS session_count,\n SUM(spend_value) / COUNT(DISTINCT session_id) AS avg_spend_per_session_by_user\n FROM events\n WHERE event_name = 'purchase' and session_id IS NOT NULL\n GROUP BY user_pseudo_id\n\n### Latest Session Id and Session Number for users\n\nThe following query provides the list of the latest ga_session_id and\nga_session_number from last 4 days for a list of users. You can provide either a\n`user_pseudo_id` list or a `user_id` list. \n\n### user_pseudo_id\n\n -- Get the latest ga_session_id and ga_session_number for specific users during last 4 days.\n\n -- Replace timezone. List at https://en.wikipedia.org/wiki/List_of_tz_database_time_zones.\n DECLARE REPORTING_TIMEZONE STRING DEFAULT 'America/Los_Angeles';\n\n -- Replace list of user_pseudo_id's with ones you want to query.\n DECLARE USER_PSEUDO_ID_LIST ARRAY\u003cSTRING\u003e DEFAULT\n [\n '1005355938.1632145814', '979622592.1632496588', '1101478530.1632831095'];\n\n CREATE TEMP FUNCTION GetParamValue(params ANY TYPE, target_key STRING)\n AS (\n (SELECT `value` FROM UNNEST(params) WHERE key = target_key LIMIT 1)\n );\n\n CREATE TEMP FUNCTION GetDateSuffix(date_shift INT64, timezone STRING)\n AS (\n (SELECT FORMAT_DATE('%Y%m%d', DATE_ADD(CURRENT_DATE(timezone), INTERVAL date_shift DAY)))\n );\n\n SELECT DISTINCT\n user_pseudo_id,\n FIRST_VALUE(GetParamValue(event_params, 'ga_session_id').int_value)\n OVER (UserWindow) AS ga_session_id,\n FIRST_VALUE(GetParamValue(event_params, 'ga_session_number').int_value)\n OVER (UserWindow) AS ga_session_number\n FROM\n -- Replace table name.\n `bigquery-public-data.ga4_obfuscated_sample_ecommerce.events_*`\n WHERE\n user_pseudo_id IN UNNEST(USER_PSEUDO_ID_LIST)\n AND RIGHT(_TABLE_SUFFIX, 8)\n BETWEEN GetDateSuffix(-3, REPORTING_TIMEZONE)\n AND GetDateSuffix(0, REPORTING_TIMEZONE)\n WINDOW UserWindow AS (PARTITION BY user_pseudo_id ORDER BY event_timestamp DESC);\n\n### user_id\n\n -- Get the latest ga_session_id and ga_session_number for specific users during last 4 days.\n\n -- Replace timezone. List at https://en.wikipedia.org/wiki/List_of_tz_database_time_zones.\n DECLARE REPORTING_TIMEZONE STRING DEFAULT 'America/Los_Angeles';\n\n -- Replace list of user_id's with ones you want to query.\n DECLARE USER_ID_LIST ARRAY\u003cSTRING\u003e DEFAULT ['\u003cuser_id_1\u003e', '\u003cuser_id_2\u003e', '\u003cuser_id_n\u003e'];\n\n CREATE TEMP FUNCTION GetParamValue(params ANY TYPE, target_key STRING)\n AS (\n (SELECT `value` FROM UNNEST(params) WHERE key = target_key LIMIT 1)\n );\n\n CREATE TEMP FUNCTION GetDateSuffix(date_shift INT64, timezone STRING)\n AS (\n (SELECT FORMAT_DATE('%Y%m%d', DATE_ADD(CURRENT_DATE(timezone), INTERVAL date_shift DAY)))\n );\n\n SELECT DISTINCT\n user_pseudo_id,\n FIRST_VALUE(GetParamValue(event_params, 'ga_session_id').int_value)\n OVER (UserWindow) AS ga_session_id,\n FIRST_VALUE(GetParamValue(event_params, 'ga_session_number').int_value)\n OVER (UserWindow) AS ga_session_number\n FROM\n -- Replace table name.\n `bigquery-public-data.ga4_obfuscated_sample_ecommerce.events_*`\n WHERE\n user_id IN UNNEST(USER_ID_LIST)\n AND RIGHT(_TABLE_SUFFIX, 8)\n BETWEEN GetDateSuffix(-3, REPORTING_TIMEZONE)\n AND GetDateSuffix(0, REPORTING_TIMEZONE)\n WINDOW UserWindow AS (PARTITION BY user_pseudo_id ORDER BY event_timestamp DESC);"]]