Name | n3_chennan_CS_huangye_qiye_99114_com |
---|---|
Data | 92.67M (+ 0B) |
Tables | 4 (+ 0) |
Columns | 37 (+ 0) |
Table Rows | 272,013 (+ 0) |
Media | 0B (+ 0B) |
Files | 0 (+ 0) |
Last Commit | 2023-06-19 18:36:38 (+ 169 d) |
企业信息数据库中有来自全国1,836个地区的40,833家企业,每个企业信息记录中包含有主营产品,地址,注册资本,经营模式,联系电话,公司简介,经营范围,联系人,电子邮箱,注册地址,主营业务,企业类型,职员人数,公司网址,所属分类,所驻城市和年营业额。这些企业按照产品类型被分为54个类别。该全国企业信息数据库共有4个表。
This is a China enterprise database having 40,833 records with main product, address, registered capital, management model, telephone, company profile, business scope, contact, email address, registered address, main business, type, number of employee, company website, classification, city and annual turnover in each. Theses enterprises are categorized into 54 classifications and from 1,836 regions. The whole China enterprises database totally has 4 tables.
Tables | Rows | Columns | Non-empty |
---|---|---|---|
category_1 | 54 | title |
100%
|
diqu | 1,836 | title |
100%
|
category_1_id |
100%
|
||
category_1 |
100%
|
||
diqu_x_qiye | 229,290 | diqu_id |
100%
|
qiye_id |
100%
|
||
qiye | 40,833 | title |
100%
|
zhuying_chanpin |
99.83%
|
||
dizhi |
99.98%
|
||
zhuce_ziben |
65.76%
|
||
jingying_moshi |
100%
|
||
lianxi_dianhua |
99.98%
|
||
gongsi_jianjie |
99.15%
|
||
jingying_fanwei |
95.67%
|
||
lianxiren |
99.92%
|
||
dianzi_youxiang |
95.84%
|
||
zhuce_dizhi |
89.97%
|
||
zhuying_yewu |
99.73%
|
||
qiye_leixing |
99.41%
|
||
zhiyuan_renshu |
99.94%
|
||
gongsi_wangzhi |
99.93%
|
||
suoshu_fenlei |
99.94%
|
||
suozhu_chengshi |
99.94%
|
||
nian_yingyee |
63.11%
|
No media sets.
Time | Data | Tables | Columns | Rows | Media | Files |
---|---|---|---|---|---|---|
2023-06-19 (+ 169 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2023-01-01 (+ 95 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2022-09-27 (+ 271 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-12-30 (+ 115 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-09-05 (+ 150 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-04-08 (+ 68 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2021-01-29 (+ 120 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-10-01 (+ 38 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-08-23 (+ 141 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2020-04-04 (+ 196 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-09-21 (+ 197 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-03-07 (+ 43 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2019-01-23 (+ 44 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-12-09 (+ 29 d) | 92.67M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-11-09 (+ 27 d) | 92.67M (+ 40.03M) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-10-13 (+ 29 d) | 52.64M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-09-13 (+ 34 d) | 52.64M (+ 0B) | 4 (+ 0) | 37 (+ 0) | 272,013 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-08-09 (+ 27 d) | 52.64M (+ 18M) | 4 (+ 0) | 37 (+ 12) | 272,013 (+ 123,356) | 0B (+ 0B) | 0 (+ 0) |
2018-07-12 | 34.64M | 4 | 25 | 148,657 | 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.