Name | n3_chennan_CS_yinhangwangdian_5cm_cn |
---|---|
Data | 57.98M (+ 0B) |
Tables | 5 (+ 0) |
Columns | 30 (+ 0) |
Table Rows | 231,307 (+ 0) |
Media | 0B (+ 0B) |
Files | 0 (+ 0) |
Last Commit | 2023-06-19 18:36:38 (+ 169 d) |
这是全国33个省份,332个城市的83,433家银行网点信息数据库。每个银行网点记录包含有行号,名称,电话,邮编和地址。整个银行网点信息数据库共有5个表。
This bank outlets database has 83,433 records from 332 cities of 33 provinces in China. Each bank outlet is comprised of bank number, name, telephone number, zip code and address. The whole China bank outlets data set totally has 5 tables.
Tables | Rows | Columns | Non-empty |
---|---|---|---|
category_1 | 37,516 | title |
100%
|
shiji_id |
100%
|
||
shiji |
98.19%
|
||
category_1_x_yinhang_wangdian | 109,993 | category_1_id |
100%
|
yinhang_wangdian_id |
100%
|
||
sheng | 33 | title |
100%
|
shiji | 332 | title |
98.19%
|
sheng_id |
100%
|
||
sheng |
100%
|
||
yinhang_wangdian | 83,433 | hanghao |
100%
|
mingcheng |
100%
|
||
dianhua |
100%
|
||
youbian |
100%
|
||
dizhi |
100%
|
No media sets.
Time | Data | Tables | Columns | Rows | Media | Files |
---|---|---|---|---|---|---|
2023-06-19 (+ 169 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2023-01-01 (+ 95 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2022-09-27 (+ 271 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-12-30 (+ 115 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-09-05 (+ 150 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-04-08 (+ 68 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-01-29 (+ 120 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-10-01 (+ 38 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-08-23 (+ 141 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-04-04 (+ 196 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-09-21 (+ 197 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-03-07 (+ 43 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-01-23 (+ 44 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-12-09 (+ 29 d) | 57.98M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-11-09 (+ 27 d) | 57.98M (- 2.08M) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-10-13 (+ 29 d) | 60.06M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-09-13 (+ 34 d) | 60.06M (+ 0B) | 5 (+ 0) | 30 (+ 0) | 231,307 (+ 1,270) | 0B (+ 0B) | 0 (+ 0) |
2018-08-09 (+ 27 d) | 60.06M (+ 31.30M) | 5 (+ 0) | 30 (+ 0) | 230,037 (+ 26,562) | 0B (+ 0B) | 0 (+ 0) |
2018-07-12 | 28.77M | 5 | 30 | 203,475 | 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.