Name | n3_chennan_CS_caipu_caipu_911cha_com |
---|---|
Data | 36.81M (+ 0B) |
Tables | 7 (+ 0) |
Columns | 49 (+ 0) |
Table Rows | 224,875 (+ 0) |
Media | 0B (+ 0B) |
Files | 0 (+ 0) |
Last Commit | 2023-06-19 18:36:38 (+ 169 d) |
在该菜谱数据库中共有5,212个菜谱,每个菜谱中有工艺,口味,做法,相克食物,适用,口感,类别,主料,辅料,调料,推荐指数,麻辣指数,营养指数,难易指数,减肥指数,养颜指数等。这些菜谱按照地区被分为21个类别。其中,菜谱数据中还包含有83,396条营养成分记录。共有7个表。
Database of recipes contians 5,212 records with craft work, taste, practice, allelopathy product, suitable for, mouth feel, category, main material, accessories, seasoning, recommend index, spicy index, nutrient index, difficulty index, lose weight index, beauty index, etc. in each. All these recipes are typed into 21 categories by regions of China. It also comes with 83,396 nutritional ingredient records in this data. The whole China recipes data set has 7 tables in total.
Tables | Rows | Columns | Non-empty |
---|---|---|---|
caipu | 5,212 | title |
99.98%
|
gongyi |
100%
|
||
kouwei |
100%
|
||
zuofa |
99.98%
|
||
xiangke_shiwu |
63.55%
|
||
shiyong |
100%
|
||
kougan |
71.26%
|
||
leibie |
100%
|
||
zhuliao |
99.9%
|
||
fuliao |
71.64%
|
||
tiaoliao |
99.88%
|
||
tuijian_zhishu |
100%
|
||
mala_zhishu |
100%
|
||
yingyang_zhishu |
100%
|
||
nanyi_zhishu |
100%
|
||
shijian_zhishu |
100%
|
||
jianfei_zhishu |
100%
|
||
yangyan_zhishu |
100%
|
||
caipu_x_yingyang_chengfen | 131,033 | caipu_id |
100%
|
yingyang_chengfen_id |
100%
|
||
category | 0 | category |
0%
|
category_1 | 21 | title |
100%
|
category_1_x_caipu | 5,213 | category_1_id |
100%
|
caipu_id |
100%
|
||
subcategory | 0 | subcategory |
0%
|
category_id |
0%
|
||
yingyang_chengfen | 83,396 | key |
100%
|
value |
100%
|
No media sets.
Time | Data | Tables | Columns | Rows | Media | Files |
---|---|---|---|---|---|---|
2023-06-19 (+ 169 d) | 36.81M (+ 0B) | 7 (+ 0) | 49 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2023-01-01 (+ 95 d) | 36.81M (+ 112K) | 7 (+ 2) | 49 (+ 8) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2022-09-27 (+ 271 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-12-30 (+ 115 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-09-05 (+ 150 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-04-08 (+ 68 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-01-29 (+ 120 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-10-01 (+ 38 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-08-23 (+ 141 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-04-04 (+ 196 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-09-21 (+ 197 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-03-07 (+ 43 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-01-23 (+ 44 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-12-09 (+ 29 d) | 36.70M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-11-09 (+ 27 d) | 36.70M (- 8.02M) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-10-13 (+ 29 d) | 44.72M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-09-13 (+ 34 d) | 44.72M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-08-09 (+ 27 d) | 44.72M (+ 0B) | 5 (+ 0) | 41 (+ 0) | 224,875 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-07-12 | 44.72M | 5 | 41 | 224,875 | 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.