大数据项目实战之数据仓库:电商数据仓库系统——第8章 数仓开发之DIM层

news2024/11/13 9:29:05

文章目录

  • 第8章 数仓开发之DIM层
    • 8.1 商品维度表
    • 8.2 优惠券维度表
    • 8.3 活动维度表
    • 8.4 地区维度表
    • 8.5 日期维度表
    • 8.6 用户维度表
    • 8.7 数据装载脚本
      • 8.7.1 首日装载脚本
      • 8.7.2 每日装载脚本

第8章 数仓开发之DIM层

DIM层设计要点:

(1)DIM层的设计依据是维度建模理论,该层存储维度模型的维度表。

(2)DIM层的数据存储格式为orc列式存储+snappy压缩。

(3)DIM层表名的命名规范为dim_表名_全量表或者拉链表标识(full/zip)

8.1 商品维度表

1)建表语句

DROP TABLE IF EXISTS dim_sku_full;
CREATE EXTERNAL TABLE dim_sku_full
(
    `id`                   STRING COMMENT 'sku_id',
    `price`                DECIMAL(16, 2) COMMENT '商品价格',
    `sku_name`             STRING COMMENT '商品名称',
    `sku_desc`             STRING COMMENT '商品描述',
    `weight`               DECIMAL(16, 2) COMMENT '重量',
    `is_sale`              BOOLEAN COMMENT '是否在售',
    `spu_id`               STRING COMMENT 'spu编号',
    `spu_name`             STRING COMMENT 'spu名称',
    `category3_id`         STRING COMMENT '三级分类id',
    `category3_name`       STRING COMMENT '三级分类名称',
    `category2_id`         STRING COMMENT '二级分类id',
    `category2_name`       STRING COMMENT '二级分类名称',
    `category1_id`         STRING COMMENT '一级分类id',
    `category1_name`       STRING COMMENT '一级分类名称',
    `tm_id`                STRING COMMENT '品牌id',
    `tm_name`              STRING COMMENT '品牌名称',
    `sku_attr_values`      ARRAY<STRUCT<attr_id :STRING,value_id :STRING,attr_name :STRING,value_name:STRING>> COMMENT '平台属性',
    `sku_sale_attr_values` ARRAY<STRUCT<sale_attr_id :STRING,sale_attr_value_id :STRING,sale_attr_name :STRING,sale_attr_value_name:STRING>> COMMENT '销售属性',
    `create_time`          STRING COMMENT '创建时间'
) COMMENT '商品维度表'
    PARTITIONED BY (`dt` STRING)
    STORED AS ORC
    LOCATION '/warehouse/gmall/dim/dim_sku_full/'
    TBLPROPERTIES ('orc.compress' = 'snappy');

2)数据装载

with
sku as
(
    select
        id,
        price,
        sku_name,
        sku_desc,
        weight,
        is_sale,
        spu_id,
        category3_id,
        tm_id,
        create_time
    from ods_sku_info_full
    where dt='2020-06-14'
),
spu as
(
    select
        id,
        spu_name
    from ods_spu_info_full
    where dt='2020-06-14'
),
c3 as
(
    select
        id,
        name,
        category2_id
    from ods_base_category3_full
    where dt='2020-06-14'
),
c2 as
(
    select
        id,
        name,
        category1_id
    from ods_base_category2_full
    where dt='2020-06-14'
),
c1 as
(
    select
        id,
        name
    from ods_base_category1_full
    where dt='2020-06-14'
),
tm as
(
    select
        id,
        tm_name
    from ods_base_trademark_full
    where dt='2020-06-14'
),
attr as
(
    select
        sku_id,
        collect_set(named_struct('attr_id',attr_id,'value_id',value_id,'attr_name',attr_name,'value_name',value_name)) attrs
    from ods_sku_attr_value_full
    where dt='2020-06-14'
    group by sku_id
),
sale_attr as
(
    select
        sku_id,
        collect_set(named_struct('sale_attr_id',sale_attr_id,'sale_attr_value_id',sale_attr_value_id,'sale_attr_name',sale_attr_name,'sale_attr_value_name',sale_attr_value_name)) sale_attrs
    from ods_sku_sale_attr_value_full
    where dt='2020-06-14'
    group by sku_id
)
insert overwrite table dim_sku_full partition(dt='2020-06-14')
select
    sku.id,
    sku.price,
    sku.sku_name,
    sku.sku_desc,
    sku.weight,
    sku.is_sale,
    sku.spu_id,
    spu.spu_name,
    sku.category3_id,
    c3.name,
    c3.category2_id,
    c2.name,
    c2.category1_id,
    c1.name,
    sku.tm_id,
    tm.tm_name,
    attr.attrs,
    sale_attr.sale_attrs,
    sku.create_time
from sku
left join spu on sku.spu_id=spu.id
left join c3 on sku.category3_id=c3.id
left join c2 on c3.category2_id=c2.id
left join c1 on c2.category1_id=c1.id
left join tm on sku.tm_id=tm.id
left join attr on sku.id=attr.sku_id
left join sale_attr on sku.id=sale_attr.sku_id;

8.2 优惠券维度表

1)建表语句

DROP TABLE IF EXISTS dim_coupon_full;
CREATE EXTERNAL TABLE dim_coupon_full
(
    `id`               STRING COMMENT '购物券编号',
    `coupon_name`      STRING COMMENT '购物券名称',
    `coupon_type_code` STRING COMMENT '购物券类型编码',
    `coupon_type_name` STRING COMMENT '购物券类型名称',
    `condition_amount` DECIMAL(16, 2) COMMENT '满额数',
    `condition_num`    BIGINT COMMENT '满件数',
    `activity_id`      STRING COMMENT '活动编号',
    `benefit_amount`   DECIMAL(16, 2) COMMENT '减金额',
    `benefit_discount` DECIMAL(16, 2) COMMENT '折扣',
    `benefit_rule`     STRING COMMENT '优惠规则:满元*减*元,满*件打*折',
    `create_time`      STRING COMMENT '创建时间',
    `range_type_code`  STRING COMMENT '优惠范围类型编码',
    `range_type_name`  STRING COMMENT '优惠范围类型名称',
    `limit_num`        BIGINT COMMENT '最多领取次数',
    `taken_count`      BIGINT COMMENT '已领取次数',
    `start_time`       STRING COMMENT '可以领取的开始日期',
    `end_time`         STRING COMMENT '可以领取的结束日期',
    `operate_time`     STRING COMMENT '修改时间',
    `expire_time`      STRING COMMENT '过期时间'
) COMMENT '优惠券维度表'
    PARTITIONED BY (`dt` STRING)
    STORED AS ORC
    LOCATION '/warehouse/gmall/dim/dim_coupon_full/'
    TBLPROPERTIES ('orc.compress' = 'snappy');

2)数据装载

insert overwrite table dim_coupon_full partition(dt='2020-06-14')
select
    id,
    coupon_name,
    coupon_type,
    coupon_dic.dic_name,
    condition_amount,
    condition_num,
    activity_id,
    benefit_amount,
    benefit_discount,
    case coupon_type
        when '3201' then concat('满',condition_amount,'元减',benefit_amount,'元')
        when '3202' then concat('满',condition_num,'件打',10*(1-benefit_discount),'折')
        when '3203' then concat('减',benefit_amount,'元')
    end benefit_rule,
    create_time,
    range_type,
    range_dic.dic_name,
    limit_num,
    taken_count,
    start_time,
    end_time,
    operate_time,
    expire_time
from
(
    select
        id,
        coupon_name,
        coupon_type,
        condition_amount,
        condition_num,
        activity_id,
        benefit_amount,
        benefit_discount,
        create_time,
        range_type,
        limit_num,
        taken_count,
        start_time,
        end_time,
        operate_time,
        expire_time
    from ods_coupon_info_full
    where dt='2020-06-14'
)ci
left join
(
    select
        dic_code,
        dic_name
    from ods_base_dic_full
    where dt='2020-06-14'
    and parent_code='32'
)coupon_dic
on ci.coupon_type=coupon_dic.dic_code
left join
(
    select
        dic_code,
        dic_name
    from ods_base_dic_full
    where dt='2020-06-14'
    and parent_code='33'
)range_dic
on ci.range_type=range_dic.dic_code;

8.3 活动维度表

1)建表语句

DROP TABLE IF EXISTS dim_activity_full;
CREATE EXTERNAL TABLE dim_activity_full
(
    `activity_rule_id`   STRING COMMENT '活动规则ID',
    `activity_id`        STRING COMMENT '活动ID',
    `activity_name`      STRING COMMENT '活动名称',
    `activity_type_code` STRING COMMENT '活动类型编码',
    `activity_type_name` STRING COMMENT '活动类型名称',
    `activity_desc`      STRING COMMENT '活动描述',
    `start_time`         STRING COMMENT '开始时间',
    `end_time`           STRING COMMENT '结束时间',
    `create_time`        STRING COMMENT '创建时间',
    `condition_amount`   DECIMAL(16, 2) COMMENT '满减金额',
    `condition_num`      BIGINT COMMENT '满减件数',
    `benefit_amount`     DECIMAL(16, 2) COMMENT '优惠金额',
    `benefit_discount`   DECIMAL(16, 2) COMMENT '优惠折扣',
    `benefit_rule`       STRING COMMENT '优惠规则',
    `benefit_level`      STRING COMMENT '优惠级别'
) COMMENT '活动信息表'
    PARTITIONED BY (`dt` STRING)
    STORED AS ORC
    LOCATION '/warehouse/gmall/dim/dim_activity_full/'
    TBLPROPERTIES ('orc.compress' = 'snappy');

2)数据装载

insert overwrite table dim_activity_full partition(dt='2020-06-14')
select
    rule.id,
    info.id,
    activity_name,
    rule.activity_type,
    dic.dic_name,
    activity_desc,
    start_time,
    end_time,
    create_time,
    condition_amount,
    condition_num,
    benefit_amount,
    benefit_discount,
    case rule.activity_type
        when '3101' then concat('满',condition_amount,'元减',benefit_amount,'元')
        when '3102' then concat('满',condition_num,'件打',10*(1-benefit_discount),'折')
        when '3103' then concat('打',10*(1-benefit_discount),'折')
    end benefit_rule,
    benefit_level
from
(
    select
        id,
        activity_id,
        activity_type,
        condition_amount,
        condition_num,
        benefit_amount,
        benefit_discount,
        benefit_level
    from ods_activity_rule_full
    where dt='2020-06-14'
)rule
left join
(
    select
        id,
        activity_name,
        activity_type,
        activity_desc,
        start_time,
        end_time,
        create_time
    from ods_activity_info_full
    where dt='2020-06-14'
)info
on rule.activity_id=info.id
left join
(
    select
        dic_code,
        dic_name
    from ods_base_dic_full
    where dt='2020-06-14'
    and parent_code='31'
)dic
on rule.activity_type=dic.dic_code;

8.4 地区维度表

1)建表语句

DROP TABLE IF EXISTS dim_province_full;
CREATE EXTERNAL TABLE dim_province_full
(
    `id`            STRING COMMENT 'id',
    `province_name` STRING COMMENT '省市名称',
    `area_code`     STRING COMMENT '地区编码',
    `iso_code`      STRING COMMENT '旧版ISO-3166-2编码,供可视化使用',
    `iso_3166_2`    STRING COMMENT '新版IOS-3166-2编码,供可视化使用',
    `region_id`     STRING COMMENT '地区id',
    `region_name`   STRING COMMENT '地区名称'
) COMMENT '地区维度表'
    PARTITIONED BY (`dt` STRING)
    STORED AS ORC
    LOCATION '/warehouse/gmall/dim/dim_province_full/'
    TBLPROPERTIES ('orc.compress' = 'snappy');

2)数据装载

insert overwrite table dim_province_full partition(dt='2020-06-14')
select
    province.id,
    province.name,
    province.area_code,
    province.iso_code,
    province.iso_3166_2,
    region_id,
    region_name
from
(
    select
        id,
        name,
        region_id,
        area_code,
        iso_code,
        iso_3166_2
    from ods_base_province_full
    where dt='2020-06-14'
)province
left join
(
    select
        id,
        region_name
    from ods_base_region_full
    where dt='2020-06-14'
)region
on province.region_id=region.id;

8.5 日期维度表

1)建表语句

DROP TABLE IF EXISTS dim_date;
CREATE EXTERNAL TABLE dim_date
(
    `date_id`    STRING COMMENT '日期ID',
    `week_id`    STRING COMMENT '周ID,一年中的第几周',
    `week_day`   STRING COMMENT '周几',
    `day`        STRING COMMENT '每月的第几天',
    `month`      STRING COMMENT '一年中的第几月',
    `quarter`    STRING COMMENT '一年中的第几季度',
    `year`       STRING COMMENT '年份',
    `is_workday` STRING COMMENT '是否是工作日',
    `holiday_id` STRING COMMENT '节假日'
) COMMENT '时间维度表'
    STORED AS ORC
    LOCATION '/warehouse/gmall/dim/dim_date/'
    TBLPROPERTIES ('orc.compress' = 'snappy');

2)数据装载

通常情况下,时间维度表的数据并不是来自于业务系统,而是手动写入,并且由于时间维度表数据的可预见性,无须每日导入,一般可一次性导入一年的数据。

(1)创建临时表

DROP TABLE IF EXISTS tmp_dim_date_info;
CREATE EXTERNAL TABLE tmp_dim_date_info (
    `date_id` STRING COMMENT '日',
    `week_id` STRING COMMENT '周ID',
    `week_day` STRING COMMENT '周几',
    `day` STRING COMMENT '每月的第几天',
    `month` STRING COMMENT '第几月',
    `quarter` STRING COMMENT '第几季度',
    `year` STRING COMMENT '年',
    `is_workday` STRING COMMENT '是否是工作日',
    `holiday_id` STRING COMMENT '节假日'
) COMMENT '时间维度表'
ROW FORMAT DELIMITED FIELDS TERMINATED BY '\t'
LOCATION '/warehouse/gmall/tmp/tmp_dim_date_info/';

(2)将数据文件上传到HFDS上临时表路径/warehouse/gmall/tmp/tmp_dim_date_info

date_info.txt

(3)执行以下语句将其导入时间维度表

insert overwrite table dim_date select * from tmp_dim_date_info;

(4)检查数据是否导入成功

select * from dim_date;

8.6 用户维度表

1)建表语句

DROP TABLE IF EXISTS dim_user_zip;
CREATE EXTERNAL TABLE dim_user_zip
(
    `id`           STRING COMMENT '用户id',
    `login_name`   STRING COMMENT '用户名称',
    `nick_name`    STRING COMMENT '用户昵称',
    `name`         STRING COMMENT '用户姓名',
    `phone_num`    STRING COMMENT '手机号码',
    `email`        STRING COMMENT '邮箱',
    `user_level`   STRING COMMENT '用户等级',
    `birthday`     STRING COMMENT '生日',
    `gender`       STRING COMMENT '性别',
    `create_time`  STRING COMMENT '创建时间',
    `operate_time` STRING COMMENT '操作时间',
    `start_date`   STRING COMMENT '开始日期',
    `end_date`     STRING COMMENT '结束日期'
) COMMENT '用户表'
    PARTITIONED BY (`dt` STRING)
    STORED AS ORC
    LOCATION '/warehouse/gmall/dim/dim_user_zip/'
    TBLPROPERTIES ('orc.compress' = 'snappy');

2)分区规划

用户拉链表分区

Untitled

3)数据装载

(1)数据装载过程

拉链表装在过程

Untitled

(2)数据流向

用户维度表

Untitled

(3)首日装载

insert overwrite table dim_user_zip partition (dt='9999-12-31')
select
    data.id,
    data.login_name,
    data.nick_name,
    md5(data.name),
    md5(data.phone_num),
    md5(data.email),
    data.user_level,
    data.birthday,
    data.gender,
    data.create_time,
    data.operate_time,
    '2020-06-14' start_date,
    '9999-12-31' end_date
from ods_user_info_inc
where dt='2020-06-14'
and type='bootstrap-insert';

(4)每日装载

装载思路

Untitled

装载语句

with
tmp as
(
    select
        old.id old_id,
        old.login_name old_login_name,
        old.nick_name old_nick_name,
        old.name old_name,
        old.phone_num old_phone_num,
        old.email old_email,
        old.user_level old_user_level,
        old.birthday old_birthday,
        old.gender old_gender,
        old.create_time old_create_time,
        old.operate_time old_operate_time,
        old.start_date old_start_date,
        old.end_date old_end_date,
        new.id new_id,
        new.login_name new_login_name,
        new.nick_name new_nick_name,
        new.name new_name,
        new.phone_num new_phone_num,
        new.email new_email,
        new.user_level new_user_level,
        new.birthday new_birthday,
        new.gender new_gender,
        new.create_time new_create_time,
        new.operate_time new_operate_time,
        new.start_date new_start_date,
        new.end_date new_end_date
    from
    (
        select
            id,
            login_name,
            nick_name,
            name,
            phone_num,
            email,
            user_level,
            birthday,
            gender,
            create_time,
            operate_time,
            start_date,
            end_date
        from dim_user_zip
        where dt='9999-12-31'
    )old
    full outer join
    (
        select
            id,
            login_name,
            nick_name,
            md5(name) name,
            md5(phone_num) phone_num,
            md5(email) email,
            user_level,
            birthday,
            gender,
            create_time,
            operate_time,
            '2020-06-15' start_date,
            '9999-12-31' end_date
        from
        (
            select
                data.id,
                data.login_name,
                data.nick_name,
                data.name,
                data.phone_num,
                data.email,
                data.user_level,
                data.birthday,
                data.gender,
                data.create_time,
                data.operate_time,
                row_number() over (partition by data.id order by ts desc) rn
            from ods_user_info_inc
            where dt='2020-06-15'
        )t1
        where rn=1
    )new
    on old.id=new.id
)
insert overwrite table dim_user_zip partition(dt)
select
    if(new_id is not null,new_id,old_id),
    if(new_id is not null,new_login_name,old_login_name),
    if(new_id is not null,new_nick_name,old_nick_name),
    if(new_id is not null,new_name,old_name),
    if(new_id is not null,new_phone_num,old_phone_num),
    if(new_id is not null,new_email,old_email),
    if(new_id is not null,new_user_level,old_user_level),
    if(new_id is not null,new_birthday,old_birthday),
    if(new_id is not null,new_gender,old_gender),
    if(new_id is not null,new_create_time,old_create_time),
    if(new_id is not null,new_operate_time,old_operate_time),
    if(new_id is not null,new_start_date,old_start_date),
    if(new_id is not null,new_end_date,old_end_date),
    if(new_id is not null,new_end_date,old_end_date) dt
from tmp
union all
select
    old_id,
    old_login_name,
    old_nick_name,
    old_name,
    old_phone_num,
    old_email,
    old_user_level,
    old_birthday,
    old_gender,
    old_create_time,
    old_operate_time,
    old_start_date,
    cast(date_add('2020-06-15',-1) as string) old_end_date,
    cast(date_add('2020-06-15',-1) as string) dt
from tmp
where old_id is not null
and new_id is not null;
insert overwrite table dim_user_zip partition(dt)
select
    id,
    login_name,
    nick_name,
    name,
    phone_num,
    email,
    user_level,
    birthday,
    gender,
    create_time,
    operate_time,
    start_date,
    if(rk=2, date_sub('2020-06-15', 1), end_date) end_date,
    if(rk=1, '9999-12-31', date_sub('2020-06-15', 1))
from
(
    select
        id,
        login_name,
        nick_name,
        name,
        phone_num,
        email,
        user_level,
        birthday,
        gender,
        create_time,
        operate_time,
        start_date,
        end_date,
        rank() over (partition by id order by start_date desc) rk
    from
    (
        select
            id,
            login_name,
            nick_name,
            name,
            phone_num,
            email,
            user_level,
            birthday,
            gender,
            create_time,
            operate_time,
            start_date,
            end_date
        from dim_user_zip
        where dt='9999-12-31'
        union all
        select
            id,
            login_name,
            nick_name,
            md5(name) name,
            md5(phone_num) phone_num,
            md5(email) email,
            user_level,
            birthday,
            gender,
            create_time,
            operate_time,
            '2020-06-15' start_date,
            '9999-12-31' end_date
        from
        (
            select
                data.id,
                data.login_name,
                data.nick_name,
                data.name,
                data.phone_num,
                data.email,
                data.user_level,
                data.birthday,
                data.gender,
                data.create_time,
                data.operate_time,
                row_number() over (partition by data.id order by ts desc) rn
            from ods_user_info_inc
            where dt='2020-06-15'
        )t1
        where rn=1
    )t2
)t3

8.7 数据装载脚本

8.7.1 首日装载脚本

(1)在hadoop102的/home/atguigu/bin目录下创建ods_to_dim_init.sh

[atguigu@hadoop102 bin]$ vim ods_to_dim_init.sh

(2)编写如下内容

#!/bin/bash

APP=gmall

if [ -n "$2" ] ;then
   do_date=$2
else 
   echo "请传入日期参数"
   exit
fi 

dim_user_zip="
insert overwrite table ${APP}.dim_user_zip partition (dt='9999-12-31')
select
    data.id,
    data.login_name,
    data.nick_name,
    md5(data.name),
    md5(data.phone_num),
    md5(data.email),
    data.user_level,
    data.birthday,
    data.gender,
    data.create_time,
    data.operate_time,
    '$do_date' start_date,
    '9999-12-31' end_date
from ${APP}.ods_user_info_inc
where dt='$do_date'
and type='bootstrap-insert';
"

dim_sku_full="
with
sku as
(
    select
        id,
        price,
        sku_name,
        sku_desc,
        weight,
        is_sale,
        spu_id,
        category3_id,
        tm_id,
        create_time
    from ${APP}.ods_sku_info_full
    where dt='$do_date'
),
spu as
(
    select
        id,
        spu_name
    from ${APP}.ods_spu_info_full
    where dt='$do_date'
),
c3 as
(
    select
        id,
        name,
        category2_id
    from ${APP}.ods_base_category3_full
    where dt='$do_date'
),
c2 as
(
    select
        id,
        name,
        category1_id
    from ${APP}.ods_base_category2_full
    where dt='$do_date'
),
c1 as
(
    select
        id,
        name
    from ${APP}.ods_base_category1_full
    where dt='$do_date'
),
tm as
(
    select
        id,
        tm_name
    from ${APP}.ods_base_trademark_full
    where dt='$do_date'
),
attr as
(
    select
        sku_id,
        collect_set(named_struct('attr_id',attr_id,'value_id',value_id,'attr_name',attr_name,'value_name',value_name)) attrs
    from ${APP}.ods_sku_attr_value_full
    where dt='$do_date'
    group by sku_id
),
sale_attr as
(
    select
        sku_id,
        collect_set(named_struct('sale_attr_id',sale_attr_id,'sale_attr_value_id',sale_attr_value_id,'sale_attr_name',sale_attr_name,'sale_attr_value_name',sale_attr_value_name)) sale_attrs
    from ${APP}.ods_sku_sale_attr_value_full
    where dt='$do_date'
    group by sku_id
)
insert overwrite table ${APP}.dim_sku_full partition(dt='$do_date')
select
    sku.id,
    sku.price,
    sku.sku_name,
    sku.sku_desc,
    sku.weight,
    sku.is_sale,
    sku.spu_id,
    spu.spu_name,
    sku.category3_id,
    c3.name,
    c3.category2_id,
    c2.name,
    c2.category1_id,
    c1.name,
    sku.tm_id,
    tm.tm_name,
    attr.attrs,
    sale_attr.sale_attrs,
    sku.create_time
from sku
left join spu on sku.spu_id=spu.id
left join c3 on sku.category3_id=c3.id
left join c2 on c3.category2_id=c2.id
left join c1 on c2.category1_id=c1.id
left join tm on sku.tm_id=tm.id
left join attr on sku.id=attr.sku_id
left join sale_attr on sku.id=sale_attr.sku_id;
"

dim_province_full="
insert overwrite table ${APP}.dim_province_full partition(dt='$do_date')
select
    province.id,
    province.name,
    province.area_code,
    province.iso_code,
    province.iso_3166_2,
    region_id,
    region_name
from
(
    select
        id,
        name,
        region_id,
        area_code,
        iso_code,
        iso_3166_2
    from ${APP}.ods_base_province_full
    where dt='$do_date'
)province
left join
(
    select
        id,
        region_name
    from ${APP}.ods_base_region_full
    where dt='$do_date'
)region
on province.region_id=region.id;
"

dim_coupon_full="
insert overwrite table ${APP}.dim_coupon_full partition(dt='$do_date')
select
    id,
    coupon_name,
    coupon_type,
    coupon_dic.dic_name,
    condition_amount,
    condition_num,
    activity_id,
    benefit_amount,
    benefit_discount,
    case coupon_type
        when '3201' then concat('满',condition_amount,'元减',benefit_amount,'元')
        when '3202' then concat('满',condition_num,'件打',10*(1-benefit_discount),'折')
        when '3203' then concat('减',benefit_amount,'元')
    end benefit_rule,
    create_time,
    range_type,
    range_dic.dic_name,
    limit_num,
    taken_count,
    start_time,
    end_time,
    operate_time,
    expire_time
from
(
    select
        id,
        coupon_name,
        coupon_type,
        condition_amount,
        condition_num,
        activity_id,
        benefit_amount,
        benefit_discount,
        create_time,
        range_type,
        limit_num,
        taken_count,
        start_time,
        end_time,
        operate_time,
        expire_time
    from ${APP}.ods_coupon_info_full
    where dt='$do_date'
)ci
left join
(
    select
        dic_code,
        dic_name
    from ${APP}.ods_base_dic_full
    where dt='$do_date'
    and parent_code='32'
)coupon_dic
on ci.coupon_type=coupon_dic.dic_code
left join
(
    select
        dic_code,
        dic_name
    from ${APP}.ods_base_dic_full
    where dt='$do_date'
    and parent_code='33'
)range_dic
on ci.range_type=range_dic.dic_code;
"

dim_activity_full="
insert overwrite table ${APP}.dim_activity_full partition(dt='$do_date')
select
    rule.id,
    info.id,
    activity_name,
    rule.activity_type,
    dic.dic_name,
    activity_desc,
    start_time,
    end_time,
    create_time,
    condition_amount,
    condition_num,
    benefit_amount,
    benefit_discount,
    case rule.activity_type
        when '3101' then concat('满',condition_amount,'元减',benefit_amount,'元')
        when '3102' then concat('满',condition_num,'件打',10*(1-benefit_discount),'折')
        when '3103' then concat('打',10*(1-benefit_discount),'折')
    end benefit_rule,
    benefit_level
from
(
    select
        id,
        activity_id,
        activity_type,
        condition_amount,
        condition_num,
        benefit_amount,
        benefit_discount,
        benefit_level
    from ${APP}.ods_activity_rule_full
    where dt='$do_date'
)rule
left join
(
    select
        id,
        activity_name,
        activity_type,
        activity_desc,
        start_time,
        end_time,
        create_time
    from ${APP}.ods_activity_info_full
    where dt='$do_date'
)info
on rule.activity_id=info.id
left join
(
    select
        dic_code,
        dic_name
    from ${APP}.ods_base_dic_full
    where dt='$do_date'
    and parent_code='31'
)dic
on rule.activity_type=dic.dic_code;
"

case $1 in
"dim_user_zip")
    hive -e "$dim_user_zip"
;;
"dim_sku_full")
    hive -e "$dim_sku_full"
;;
"dim_province_full")
    hive -e "$dim_province_full"
;;
"dim_coupon_full")
    hive -e "$dim_coupon_full"
;;
"dim_activity_full")
    hive -e "$dim_activity_full"
;;
"all")
    hive -e "$dim_user_zip$dim_sku_full$dim_province_full$dim_coupon_full$dim_activity_full"
;;
esac

(3)增加脚本执行权限

[atguigu@hadoop102 bin]$ chmod +x ods_to_dim_init.sh

(4)脚本用法

[atguigu@hadoop102 bin]$ ods_to_dim_init.sh all 2020-06-14

8.7.2 每日装载脚本

(1)在hadoop102的/home/atguigu/bin目录下创建ods_to_dim.sh

[atguigu@hadoop102 bin]$ vim ods_to_dim.sh

(2)编写如下内容

#!/bin/bash

APP=gmall

# 如果是输入的日期按照取输入日期;如果没输入日期取当前时间的前一天
if [ -n "$2" ] ;then
    do_date=$2
else 
    do_date=`date -d "-1 day" +%F`
fi

dim_user_zip="
set hive.exec.dynamic.partition.mode=nonstrict;
with
tmp as
(
    select
        old.id old_id,
        old.login_name old_login_name,
        old.nick_name old_nick_name,
        old.name old_name,
        old.phone_num old_phone_num,
        old.email old_email,
        old.user_level old_user_level,
        old.birthday old_birthday,
        old.gender old_gender,
        old.create_time old_create_time,
        old.operate_time old_operate_time,
        old.start_date old_start_date,
        old.end_date old_end_date,
        new.id new_id,
        new.login_name new_login_name,
        new.nick_name new_nick_name,
        new.name new_name,
        new.phone_num new_phone_num,
        new.email new_email,
        new.user_level new_user_level,
        new.birthday new_birthday,
        new.gender new_gender,
        new.create_time new_create_time,
        new.operate_time new_operate_time,
        new.start_date new_start_date,
        new.end_date new_end_date
    from
    (
        select
            id,
            login_name,
            nick_name,
            name,
            phone_num,
            email,
            user_level,
            birthday,
            gender,
            create_time,
            operate_time,
            start_date,
            end_date
        from ${APP}.dim_user_zip
        where dt='9999-12-31'
    )old
    full outer join
    (
        select
            id,
            login_name,
            nick_name,
            md5(name) name,
            md5(phone_num) phone_num,
            md5(email) email,
            user_level,
            birthday,
            gender,
            create_time,
            operate_time,
            '$do_date' start_date,
            '9999-12-31' end_date
        from
        (
            select
                data.id,
                data.login_name,
                data.nick_name,
                data.name,
                data.phone_num,
                data.email,
                data.user_level,
                data.birthday,
                data.gender,
                data.create_time,
                data.operate_time,
                row_number() over (partition by data.id order by ts desc) rn
            from ${APP}.ods_user_info_inc
            where dt='$do_date'
        )t1
        where rn=1
    )new
    on old.id=new.id
)
insert overwrite table ${APP}.dim_user_zip partition(dt)
select
    if(new_id is not null,new_id,old_id),
    if(new_id is not null,new_login_name,old_login_name),
    if(new_id is not null,new_nick_name,old_nick_name),
    if(new_id is not null,new_name,old_name),
    if(new_id is not null,new_phone_num,old_phone_num),
    if(new_id is not null,new_email,old_email),
    if(new_id is not null,new_user_level,old_user_level),
    if(new_id is not null,new_birthday,old_birthday),
    if(new_id is not null,new_gender,old_gender),
    if(new_id is not null,new_create_time,old_create_time),
    if(new_id is not null,new_operate_time,old_operate_time),
    if(new_id is not null,new_start_date,old_start_date),
    if(new_id is not null,new_end_date,old_end_date),
    if(new_id is not null,new_end_date,old_end_date) dt
from tmp
union all
select
    old_id,
    old_login_name,
    old_nick_name,
    old_name,
    old_phone_num,
    old_email,
    old_user_level,
    old_birthday,
    old_gender,
    old_create_time,
    old_operate_time,
    old_start_date,
    cast(date_add('$do_date',-1) as string) old_end_date,
    cast(date_add('$do_date',-1) as string) dt
from tmp
where old_id is not null
and new_id is not null;
"

dim_sku_full="
with
sku as
(
    select
        id,
        price,
        sku_name,
        sku_desc,
        weight,
        is_sale,
        spu_id,
        category3_id,
        tm_id,
        create_time
    from ${APP}.ods_sku_info_full
    where dt='$do_date'
),
spu as
(
    select
        id,
        spu_name
    from ${APP}.ods_spu_info_full
    where dt='$do_date'
),
c3 as
(
    select
        id,
        name,
        category2_id
    from ${APP}.ods_base_category3_full
    where dt='$do_date'
),
c2 as
(
    select
        id,
        name,
        category1_id
    from ${APP}.ods_base_category2_full
    where dt='$do_date'
),
c1 as
(
    select
        id,
        name
    from ${APP}.ods_base_category1_full
    where dt='$do_date'
),
tm as
(
    select
        id,
        tm_name
    from ${APP}.ods_base_trademark_full
    where dt='$do_date'
),
attr as
(
    select
        sku_id,
        collect_set(named_struct('attr_id',attr_id,'value_id',value_id,'attr_name',attr_name,'value_name',value_name)) attrs
    from ${APP}.ods_sku_attr_value_full
    where dt='$do_date'
    group by sku_id
),
sale_attr as
(
    select
        sku_id,
        collect_set(named_struct('sale_attr_id',sale_attr_id,'sale_attr_value_id',sale_attr_value_id,'sale_attr_name',sale_attr_name,'sale_attr_value_name',sale_attr_value_name)) sale_attrs
    from ${APP}.ods_sku_sale_attr_value_full
    where dt='$do_date'
    group by sku_id
)
insert overwrite table ${APP}.dim_sku_full partition(dt='$do_date')
select
    sku.id,
    sku.price,
    sku.sku_name,
    sku.sku_desc,
    sku.weight,
    sku.is_sale,
    sku.spu_id,
    spu.spu_name,
    sku.category3_id,
    c3.name,
    c3.category2_id,
    c2.name,
    c2.category1_id,
    c1.name,
    sku.tm_id,
    tm.tm_name,
    attr.attrs,
    sale_attr.sale_attrs,
    sku.create_time
from sku
left join spu on sku.spu_id=spu.id
left join c3 on sku.category3_id=c3.id
left join c2 on c3.category2_id=c2.id
left join c1 on c2.category1_id=c1.id
left join tm on sku.tm_id=tm.id
left join attr on sku.id=attr.sku_id
left join sale_attr on sku.id=sale_attr.sku_id;
"

dim_province_full="
insert overwrite table ${APP}.dim_province_full partition(dt='$do_date')
select
    province.id,
    province.name,
    province.area_code,
    province.iso_code,
    province.iso_3166_2,
    region_id,
    region_name
from
(
    select
        id,
        name,
        region_id,
        area_code,
        iso_code,
        iso_3166_2
    from ${APP}.ods_base_province_full
    where dt='$do_date'
)province
left join
(
    select
        id,
        region_name
    from ${APP}.ods_base_region_full
    where dt='$do_date'
)region
on province.region_id=region.id;
"

dim_coupon_full="
insert overwrite table ${APP}.dim_coupon_full partition(dt='$do_date')
select
    id,
    coupon_name,
    coupon_type,
    coupon_dic.dic_name,
    condition_amount,
    condition_num,
    activity_id,
    benefit_amount,
    benefit_discount,
    case coupon_type
        when '3201' then concat('满',condition_amount,'元减',benefit_amount,'元')
        when '3202' then concat('满',condition_num,'件打',10*(1-benefit_discount),'折')
        when '3203' then concat('减',benefit_amount,'元')
    end benefit_rule,
    create_time,
    range_type,
    range_dic.dic_name,
    limit_num,
    taken_count,
    start_time,
    end_time,
    operate_time,
    expire_time
from
(
    select
        id,
        coupon_name,
        coupon_type,
        condition_amount,
        condition_num,
        activity_id,
        benefit_amount,
        benefit_discount,
        create_time,
        range_type,
        limit_num,
        taken_count,
        start_time,
        end_time,
        operate_time,
        expire_time
    from ${APP}.ods_coupon_info_full
    where dt='$do_date'
)ci
left join
(
    select
        dic_code,
        dic_name
    from ${APP}.ods_base_dic_full
    where dt='$do_date'
    and parent_code='32'
)coupon_dic
on ci.coupon_type=coupon_dic.dic_code
left join
(
    select
        dic_code,
        dic_name
    from ${APP}.ods_base_dic_full
    where dt='$do_date'
    and parent_code='33'
)range_dic
on ci.range_type=range_dic.dic_code;
"

dim_activity_full="
insert overwrite table ${APP}.dim_activity_full partition(dt='$do_date')
select
    rule.id,
    info.id,
    activity_name,
    rule.activity_type,
    dic.dic_name,
    activity_desc,
    start_time,
    end_time,
    create_time,
    condition_amount,
    condition_num,
    benefit_amount,
    benefit_discount,
    case rule.activity_type
        when '3101' then concat('满',condition_amount,'元减',benefit_amount,'元')
        when '3102' then concat('满',condition_num,'件打',10*(1-benefit_discount),'折')
        when '3103' then concat('打',10*(1-benefit_discount),'折')
    end benefit_rule,
    benefit_level
from
(
    select
        id,
        activity_id,
        activity_type,
        condition_amount,
        condition_num,
        benefit_amount,
        benefit_discount,
        benefit_level
    from ${APP}.ods_activity_rule_full
    where dt='$do_date'
)rule
left join
(
    select
        id,
        activity_name,
        activity_type,
        activity_desc,
        start_time,
        end_time,
        create_time
    from ${APP}.ods_activity_info_full
    where dt='$do_date'
)info
on rule.activity_id=info.id
left join
(
    select
        dic_code,
        dic_name
    from ${APP}.ods_base_dic_full
    where dt='$do_date'
    and parent_code='31'
)dic
on rule.activity_type=dic.dic_code;
"

case $1 in
"dim_user_zip")
    hive -e "$dim_user_zip"
;;
"dim_sku_full")
    hive -e "$dim_sku_full"
;;
"dim_province_full")
    hive -e "$dim_province_full"
;;
"dim_coupon_full")
    hive -e "$dim_coupon_full"
;;
"dim_activity_full")
    hive -e "$dim_activity_full"
;;
"all")
    hive -e "$dim_user_zip$dim_sku_full$dim_province_full$dim_coupon_full$dim_activity_full"
;;
esac

(3)增加脚本执行权限

[atguigu@hadoop102 bin]$ chmod +x ods_to_dim.sh

(4)脚本用法

[atguigu@hadoop102 bin]$ ods_to_dim.sh all 2020-06-14

本文来自互联网用户投稿,该文观点仅代表作者本人,不代表本站立场。本站仅提供信息存储空间服务,不拥有所有权,不承担相关法律责任。如若转载,请注明出处:http://www.coloradmin.cn/o/441178.html

如若内容造成侵权/违法违规/事实不符,请联系多彩编程网进行投诉反馈,一经查实,立即删除!

相关文章

解决 Microsoft Edge Dev 版本中右上角的 bing 按钮消失的问题 让 New Bing 还能阅读分析文档!

Microsoft Edge Dev 右上角的必应图标消失了&#xff0c;使得无法用 New Bing 阅读分析文档&#xff0c;到底什么原因呢&#xff1f; 针对 Microsoft Edge Dev 版本中右上角的发现按钮消失的问题&#xff0c;网上搜索解决方案。发现也有一些用户反馈在更新 Microsoft Edge Dev …

【C++STL精讲】优先级队列(priority_queue)与双端队列(deque)

文章目录 &#x1f490;专栏导读&#x1f490;文章导读&#x1f337;优先级队列——priority_queue&#x1f338;什么是优先级队列&#xff1f;&#x1f338;优先级队列的基本使用&#x1f338;什么是仿函数&#xff1f;&#x1f338;优先级队列的模拟实现 &#x1f337;双端队…

本地Pycharm连接远程服务器训练模型教程-yolov5为例

本篇文章解决的问题&#xff1a; 本地pycharm 与云服务器/实验室服务器进行远程连接跑实验训练、同步本地与云服务器的全部或者部分文件。 在这之前需要做的的工作&#xff1a; 1.服务器上已经创建好虚拟环境&#xff08;不会的可以看下篇文章&#xff09;&#xff1a;使用云…

git commit三种回退的方式

git commit 回退 弄清楚三个区 工作区&#xff08;working tree&#xff09;&#xff1a; 本地编辑器 暂存区&#xff08;index&#xff09;&#xff1a;git add操作后进入暂存区&#xff0c;可用git status查看 本地仓库&#xff08;repository&#xff09;&#xff1a;git …

C#上位机与三菱FX3UPLC实现异步伪实时串口通信机制(串口类通信可参考)

C#上位机与三菱FX3UPLC实现异步伪实时串口通信机制&#xff08;串口类通信可参考&#xff09; 一、串口通信概述1.1 串口通信1.2 串行通信1.2.1 串行同步通信1.2.2 串行异步通信1.2.2.1 异步通信的数据格式1.2.2.2 异步通信的数据发送过程1.2.2.3 异步通信的数据接收过程 1.3 串…

Redis如何保障缓存与数据库的数据一致性问题?

目录 一.最经典的数据库加缓存的双写双删模式 二. 高并发场景下的缓存数据库双写不一致问题分析与解决方案设计 三、上面高并发的场景下&#xff0c;该解决方案要注意的问题 一.最经典的数据库加缓存的双写双删模式 1.1 Cache Aside Pattern概念以及读写逻辑 &#xff08;…

redis非关系型数据库部署和使用(linux)

1.概念 NoSQL非关系型数据库是一种不使用关系模型来组织数据的数据库&#xff0c;通常用于存储非结构化或半结构化的数据&#xff0c;不支持或只部分支持SQL语言&#xff0c;满足最终一致性。非关系型数据库有多种类型&#xff0c;例如键值数据库、文档数据库、列式数据库、图形…

Shopee、Grab、Gojek 打造超级app已成为主流

超级App的概念在全球范围内逐渐被接受和采用。 超级App是指一种综合性的应用程序&#xff0c;允许用户在同一个平台上访问多个不同的服务&#xff0c;包括支付、社交媒体、出行、点餐等等。它的发源地是东南亚地区&#xff0c;如中国的微信、印度的Paytm和印尼的Gojek等应用&a…

Spring入门案例--bean的生命周期

bean的生命周期 关于bean的相关知识还有最后一个是bean的生命周期,对于生命周期&#xff0c;我们主要围绕着bean生命周期控 制 来讲解: 首先理解下什么是生命周期? 从创建到消亡的完整过程,例如人从出生到死亡的整个过程就是一个生命周期。 bean生命周期是什么? bean对…

C++ | 说说类中的static成员

【概念】&#xff1a;声明为static的类成员称为类的静态成员&#xff0c;用static修饰的成员变量&#xff0c;称之为静态成员变量&#xff1b;用static修饰的成员函数&#xff0c;称之为静态成员函数。静态成员变量一定要在类外进行初始化 文章目录 一、面试题引入二、static特…

5个实用的JavaScript原生API

本文带来5个难得一见的JavaScript原生API&#xff0c;为我们的前端开发带来意想不到的便利。 1. getBoundingClientRect() Element.getBoundingClientRect() 方法返回一个 DOMRect 对象&#xff0c;该对象提供有关元素大小及其相对于视口的位置的信息。 domRect element.ge…

Java笔记_11(常用API)

Java笔记_11 一、常用的API1.1、MathMath练习 1.2、System1.3、Runtime1.4、Object1.5、浅克隆、深克隆1.6、对象工具类的Objects1.7、BigInteger&#xff08;大整数&#xff09;1.8、BigDecimal&#xff08;大小数&#xff09; 二、正则表达式2.1、正则表达式基础知识2.2、正则…

关于WordPress的20个有趣事实

时值 2022 年&#xff0c;互联网格局和 WordPress 的流行发生了重大变化。COVID-19 流行几乎影响到人类生存的方方面面&#xff0c;包括我们的互联网习惯&#xff0c;这也不例外。 到 2022 年&#xff0c;我们在家工作的人数显着增加&#xff0c;下岗或发现自己有更多空闲时间…

Python基础实战3-Pycharm安装简介

Pycharm下载、安装与使用 1.打开pycharm官网&#xff1a;下载 PyCharm&#xff1a; Python IDE for Professional Developers by JetBrains 2.选择自己对应的操作系统&#xff0c;点击Download&#xff0c;默认是最新版本&#xff0c;想安装其他版本可以选择Other versions下载…

【iOS】—— Masonry源码学习(浅看,未完)

Masonry 文章目录 MasonryNSLayoutConstraint用法Masonry源码 Masonry在我们之前的学习中是一个非常有用的第三方库。 Masonry是一种基于Objective-C语言的轻量级布局框架&#xff0c;它可以简化iOS应用程序中的自动布局任务。Masonry提供了一个方便的API&#xff0c;可以编写更…

Kubernetes Service、Ingress

Service&#xff08;4层负载均衡器&#xff09; 1、K8S 可以保证任意 Pod 挂掉时自动从任意节点启动一个新的Pod进行代替&#xff0c;以及某个Pod超负载时动态对Pod进行扩容。每当 Pod 发生变化时其 IP地址也会发生变化&#xff0c;且Pod只有在K8S集群内部才可以被访问&#xf…

Flink高手之路4-Flink流批一体

文章目录 Flink高手之路4-Flink流批一体API开发一、流批一体相关的概念1.数据的时效性2.流处理和批处理1)批处理2)流处理3)两者对比 3.流批一体API4.流批一体的编程模型 二、Data Source1.预定义的Source1)基于集合的Sources(1)API(2)演示 2)基于文件的Source(1)API(2)演示 3)基…

2023.4.19 + 4.20

文章目录 String类1&#xff1a;介绍&#xff1a;2&#xff1a;String类实现了很多的接口&#xff1a;3&#xff1b;String类常用构造器4&#xff1a;不同方式创建String类对象的区别&#xff08;1&#xff09;直接赋值的方式&#xff08;2&#xff09;常规new的方式&#xff0…

【筛质数】——朴素筛,埃式筛,欧拉筛

题目描述&#xff1a; 题目分析&#xff1a; 这道题可以用&#xff0c;朴素筛&#xff0c;埃氏筛&#xff0c;欧拉筛来写。 普通筛&#xff1a; 时间复杂度&#xff1a;O(n logn) 时间复杂度太高&#xff0c;会超时的&#xff01;&#xff01;&#xff08;9/10&#xff09; #…

Keil5----显示空白符和设置使用空白格表示Tab键

一、Keil5界面----显示空白符 首先打开Keil5-MDK界面&#xff0c;然后按照下面步骤操作。 步骤1&#xff1a;点击 Edit(编辑)&#xff0c;然后点击 Configuration(配置) 步骤2&#xff1a;勾选 View White Spaces(查看空白) 步骤3&#xff1a;显示设置后的结果 具体显示结果分…