Name | n3_chennan_CS_shucaijiage_vipveg_com |
---|---|
Data | 37.83M (+ 0B) |
Tables | 4 (+ 0) |
Columns | 22 (+ 0) |
Table Rows | 163,770 (+ 0) |
Media | 0B (+ 0B) |
Files | 0 (+ 0) |
Last Commit | 2023-06-19 18:36:38 (+ 169 d) |
这是一个蔬菜价格信息数据库,共包含有81,859个蔬菜价格且每个蔬菜价格中有品种,批发市场,发布时间,最低价格,最高价格和平均价格。这些蔬菜主要分为以下9大类和43个二级分类。该蔬菜价格信息数据库共有4个表。
In the vegetables prices database, it has 81,859 records with variety, wholesale markets, release time, lowest price, highest price and average price in each. All these vegetables are categorized into 9 main categories and further into 43 secondary classifications. The whole vegetables prices data set totally has 4 tables.
Tables | Rows | Columns | Non-empty |
---|---|---|---|
category_2_x_shucai_jiage | 81,859 | shucai_jiage_id |
100%
|
category_2_id |
100%
|
||
shucai_jiage | 81,859 | pingjun_jiage |
100%
|
zuigao_jiage |
100%
|
||
zuidi_jiage |
100%
|
||
fabu_shijian |
100%
|
||
pifa_shichang |
100%
|
||
pinzhong |
100%
|
||
category_2 | 43 | category_1_id |
100%
|
title |
100%
|
||
category_1 | 9 | title |
100%
|
No media sets.
Time | Data | Tables | Columns | Rows | Media | Files |
---|---|---|---|---|---|---|
2023-06-19 (+ 169 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2023-01-01 (+ 95 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2022-09-27 (+ 271 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-12-30 (+ 115 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-09-05 (+ 150 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-04-08 (+ 68 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-01-29 (+ 120 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-10-01 (+ 38 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-08-23 (+ 141 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-04-04 (+ 196 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-09-21 (+ 197 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-03-07 (+ 43 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-01-23 (+ 44 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-12-09 (+ 29 d) | 37.83M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-11-09 (+ 27 d) | 37.83M (- 6.05M) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-10-13 (+ 29 d) | 43.88M (+ 0B) | 4 (+ 0) | 22 (+ 0) | 163,770 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-09-13 | 43.88M | 4 | 22 | 163,770 | 0B | 0 |
Contact us for pricing to download the latest commit / release of this database.
In the same time, you can also access this data set via API.
Select a membership plan and sign up. Return to this page, click Online Query to access the API query maker. Create and open an API call to acquire the data.
The scanning and profiling of data size increments are done separately from those of the number of rows.
Subscribe to be notified of major data releases and updates.
STAY IN THE LOOP.