POSTGRESQL中如何利用SQL语句快速的进行同环比?

1. 引言

在数据驱动的时代,了解销售、收入或任何业务指标的同比和环比情况对企业决策至关重要。本文将深入介绍如何利用 PostgreSQL 和 SQL 语句快速、准确地进行这两种重要分析。

2. 数据准备

为了演示,假设我们有一张 sales 表,存储了销售数据,包括 date(日期)、product_id(产品ID)、revenue(收入)等字段。首先,确保数据准备工作:

CREATE TABLE sales (
    date DATE,
    product_id INT,
    revenue DECIMAL(10, 2)
);

INSERT INTO sales VALUES
    ('2020-01-01', 1, 400),
    ('2020-01-02', 1, 300),
    ('2020-01-01', 2, 3000),
    ('2020-01-02', 2, 3200),
    ('2022-01-01', 1, 500),
    ('2022-01-02', 1, 600),
    ('2022-01-01', 2, 1200),
    ('2022-01-02', 2, 1900),
    ('2023-01-01', 1, 1000),
    ('2023-01-02', 1, 1200),
    ('2023-01-01', 2, 800),
    ('2023-01-02', 2, 900);

插入上述数据后,进行数据查询:

SELECT
	* 
FROM
	sales 
ORDER BY
	product_id,
	DATE;

查询结果如下:
1

3. 时间序列数据处理

处理时间序列数据是同比和环比分析的关键。确保日期字段以正确的数据类型存储:

ALTER TABLE sales
ALTER COLUMN date SET DATA TYPE DATE;

4. 同比分析

同比分析是比较同一时间段内不同年份数据的变化情况。

4.1 对两年的数据进行对比

比如我们现在想看各年的总收入和平均收入。

SELECT
    EXTRACT(YEAR FROM date) AS year,
		sum(revenue) as sum_revenue,
		count(revenue) as count_revenue,
    AVG(revenue) AS avg_revenue
FROM sales
GROUP BY year
ORDER BY year;

运行后,结果如下:
2

4.2 计算两年的差额和同比

不考虑日期不连续的情况,即销售数据在原始序列中是每年连续的,如数据源中的2022年和2023年收入数据。代码如下:

--计算同比
WITH yearly_revenue AS (
    SELECT
        EXTRACT(YEAR FROM date) AS year,
				sum(revenue) as year_total_revenue,
        AVG(revenue) AS year_avg_revenue
    FROM sales
		WHERE EXTRACT(YEAR FROM date) in (2022,2023)
    GROUP BY year
)
select 
year,
year_total_revenue,
year_avg_revenue,
lag(year_total_revenue) over (partition by null order by year ) as pre_year_total_revenue, --计算去年的收入
COALESCE(year_total_revenue - LAG(year_total_revenue) OVER (ORDER BY year) , 0) AS yoy_growth_value, --计算各年之间的收入差额
COALESCE((year_total_revenue - LAG(year_total_revenue) OVER (ORDER BY year)) / NULLIF(LAG(year_total_revenue) OVER (ORDER BY year), 0) * 100, 0) AS yoy_growth_rate, --计算两年之间的增长比例
lag(year_avg_revenue) over (partition by null order by year ) as pre_year_avg_revenue, --计算去年的平均收入
COALESCE((year_avg_revenue - LAG(year_avg_revenue) OVER (ORDER BY year)) / NULLIF(LAG(year_avg_revenue) OVER (ORDER BY year), 0) * 100, 0) AS yoy_avg_growth_rate --计算平均收入增长比例
from yearly_revenue;

运行上述代码后,可以直接进行计算收入的同比数据,上述代码考虑了去年收入为0和为null的情况,运行后结果如下:

3

考虑日期不连续的情况,即销售数据在原始序列中是每年连续的,如数据源中的2020年和2022年收入数据。代码如下:

WITH yearly_revenue AS (
    SELECT
        EXTRACT(YEAR FROM date) AS year,
        SUM(revenue) AS year_total_revenue,
        AVG(revenue) AS year_avg_revenue
    FROM sales
    GROUP BY year
)
SELECT
  current_year.year,
  current_year.year_total_revenue,
  previous_year.year_total_revenue AS last_year_total_revenue,
  previous_year.year_avg_revenue AS last_year_avg_revenue,
	COALESCE(current_year.year_total_revenue - previous_year.year_total_revenue,0)   yoy_growth_value,
	COALESCE(current_year.year_total_revenue / nullif(previous_year.year_total_revenue,0)-1,0) * 100  yoy_growth_rate
--   ,CASE
--     WHEN previous_year.year_total_revenue IS NOT NULL THEN
--       (current_year.year_total_revenue - previous_year.year_total_revenue) / previous_year.year_total_revenue * 100
--     ELSE
--       NULL
--   END AS year_on_year_growth
FROM
  yearly_revenue current_year
LEFT JOIN
  yearly_revenue previous_year ON current_year.year = previous_year.year + 1
-- WHERE 
-- 	previous_year.year_total_revenue is not null
ORDER BY
  current_year.year;

运行代码后,结果如下:
4

4.3 细分后的同比计算

我们只需要将上述的代码进行简单的修改后,就可以统计细分到任意维度的同比计算。代码如下:

	WITH yearly_revenue AS (
    SELECT
        EXTRACT(YEAR FROM date) AS year,
				product_id,
        SUM(revenue) AS year_total_revenue,
        AVG(revenue) AS year_avg_revenue
    FROM sales
    GROUP BY year,product_id
)
SELECT
  current_year.year,
  current_year.product_id,
  current_year.year_total_revenue,
  previous_year.year_total_revenue AS last_year_total_revenue,
  previous_year.year_avg_revenue AS last_year_avg_revenue,
	COALESCE(current_year.year_total_revenue - previous_year.year_total_revenue,0)   yoy_growth_value,
	COALESCE(current_year.year_total_revenue / NULLIF(previous_year.year_total_revenue, 0) - 1, 0) * 100  yoy_growth_rate
--   ,CASE
--     WHEN previous_year.year_total_revenue IS NOT NULL THEN
--       (current_year.year_total_revenue - previous_year.year_total_revenue) / previous_year.year_total_revenue * 100
--     ELSE
--       NULL
--   END AS year_on_year_growth
FROM
  yearly_revenue current_year
LEFT JOIN
  yearly_revenue previous_year ON current_year.year = previous_year.year + 1 and current_year.product_id = previous_year.product_id
-- WHERE 
-- 	previous_year.year_total_revenue is not null
ORDER BY
  current_year.year,current_year.product_id;

运行上述代码后,结果如下:
5

5. 环比分析

环比分析是比较相邻时间段的数据变化情况。

5.1 简单的日期环比计算

不考虑数据缺失的情况下,如果要对2023年product_id为1的产品进行环比计算,可以使用以下代码进行简单的环比计算:

SELECT
    date,
    revenue,
    LAG(revenue) OVER (ORDER BY date) AS prev_revenue,
    (revenue - LAG(revenue) OVER (ORDER BY date)) / LAG(revenue) OVER (ORDER BY date) * 100 AS growth_rate
FROM sales
WHERE
		extract(year from date) in (2023) and product_id in (1);

筛选后的数据:
5.1.1

进行计算后的数据:
5.1.2

5.2 先聚合再进行环比计算

在不考虑日期缺失情况下,如果我们要计算2023年的收入环比,那么我们就需要先按照日期进行聚合,然后再进行环比计算。这里有两种方法,代码如下:

-- 计算写法1
WITH daily_revenue AS (
    SELECT
        date,
				sum(revenue) as day_total_revenue
    FROM sales
    GROUP BY date
)
select 
*,
LAG(day_total_revenue) OVER (ORDER BY day_total_revenue) AS prev_revenue,
COALESCE((day_total_revenue - LAG(day_total_revenue) OVER (ORDER BY date)),0) day_growth_value,
COALESCE((day_total_revenue - LAG(day_total_revenue) OVER (ORDER BY date)) / LAG(day_total_revenue) OVER (ORDER BY date) * 100,0) AS day_growth_rate
from daily_revenue
WHERE EXTRACT(YEAR FROM date) in (2023);
#计算写法2
SELECT
    date,
    sum(revenue),
		LAG(sum(revenue)) OVER (ORDER BY date) AS prev_revenue,
		COALESCE((sum(revenue) - LAG(sum(revenue)) OVER (ORDER BY date)),0) day_growth_value,
    COALESCE((sum(revenue) - LAG(sum(revenue)) OVER (ORDER BY date)) / LAG(sum(revenue)) OVER (ORDER BY date) * 100,0) AS growth_rate
FROM sales
WHERE
		extract(year from date) in (2023)
		group by date;

无论那个代码都可以,运行后结果如下:
5.2.1

5.3 考虑日期不连续的环比计算

然而在现实统计中,我们的日期往往是不连续的,因此可以考虑下面的思路:

  • 1、先按照所需维度进行如何;
  • 2、进行日期拼接和计算

代码如下:

-- 1.先聚合到指定维度		
WITH daily_revenue AS (
		SELECT 
				DATE, 
				SUM ( revenue )	AS day_total_revenue 
		FROM sales 
		GROUP BY DATE 
) 
-- 2.再进行拼接
SELECT
		current_day.DATE,
		current_day.day_total_revenue,
		prev_day.day_total_revenue prev_day_total_revenue,
		COALESCE ( current_day.day_total_revenue - prev_day.day_total_revenue, 0 ) day_growth_value,
		COALESCE ( current_day.day_total_revenue / NULLIF ( prev_day.day_total_revenue, 0 ) - 1, 0 ) * 100 day_growth_rate  --处理异常情况
FROM
	daily_revenue current_day
	LEFT JOIN daily_revenue prev_day ON DATE_TRUNC( 'day', current_day.DATE ) = DATE_TRUNC( 'day', prev_day.DATE ) + INTERVAL '1 day' 
-- WHERE 
-- prev_day.day_total_revenue is not null
	
ORDER BY
	DATE;

运行后,效果如下:
5.3.1

6. 性能优化技巧

数据库性能是关键,特别是在处理大量数据时。

-- 为 date 列创建索引
CREATE INDEX idx_date ON sales (date);
-- 向上方一样,采用视图
WITH daily_revenue AS (
		SELECT 
				DATE, 
				SUM ( revenue )	AS day_total_revenue 
		FROM sales 
		GROUP BY DATE 
) SELECT *
FROM
	daily_revenue;

7. 注意事项与常见问题

数据规范性和异常值处理是关键。确保日期格式正确,避免数据异常对分析造成的影响。

8. 结语

本文介绍了在 PostgreSQL 中利用 SQL 进行同比和环比分析的方法。从数据准备到复杂场景下的 SQL 查询,每一步都经过详细解释和示例演示。这些技能不仅能提升数据分析效率,还能为业务决策提供重要支持。利用这些方法,你可以更加准确、快速地分析业务数据,为企业带来更大价值。

希望这篇文章能帮助你更好地利用 SQL 在 PostgreSQL 中进行同比和环比分析!

最近更新

  1. TCP协议是安全的吗?

    2023-12-06 01:18:02       18 阅读
  2. 阿里云服务器执行yum,一直下载docker-ce-stable失败

    2023-12-06 01:18:02       19 阅读
  3. 【Python教程】压缩PDF文件大小

    2023-12-06 01:18:02       18 阅读
  4. 通过文章id递归查询所有评论(xml)

    2023-12-06 01:18:02       20 阅读

热门阅读

  1. Last Week in Milvus

    2023-12-06 01:18:02       32 阅读
  2. Linux下管道重定向深入了解

    2023-12-06 01:18:02       33 阅读
  3. linux | crond cron | service systemctl chkconfig

    2023-12-06 01:18:02       25 阅读
  4. 【.NET Core】委托(Delegate)应用详解

    2023-12-06 01:18:02       21 阅读
  5. asp.net core构造函数注入

    2023-12-06 01:18:02       32 阅读
  6. asp.net core HttpContextAccessor类

    2023-12-06 01:18:02       35 阅读
  7. docker compose 搭建reids集群 1主2从架构

    2023-12-06 01:18:02       35 阅读
  8. Kotlin(十二) 定义静态方法

    2023-12-06 01:18:02       37 阅读