Name | n3_lyz_travelsearch.fliggy.com_feature |
---|---|
Data | 107.86M (+ 0B) |
Tables | 24 (+ 0) |
Columns | 114 (+ 0) |
Table Rows | 310,470 (+ 0) |
Media | 214.69M (+ 0B) |
Files | 799 (+ 0) |
Last Commit | 2023-06-19 18:12:05 (+ 169 d) |
这是中国34个地区的1,331家公司的旅游产品数据库,共计20,489条记录,每条旅游产品记录中有评论,描述,总分数,月销售额,价格和持续期间。该全国旅游产品数据库中还包含有1,007个目的地,3,496个旅游特色,46,130个旅游路线, 3,687个旅游路线价格和65,844个旅游总结。除此之外,旅游产品数据库中还有54,669张旅游图片。整个全国旅游产品数据库共有24个表。
In the tourism product database, there are 20,489 travel records with description, comment account, score overall, month sale, price from and duration in each. All these tourism product are from 1,331 companies of 34 regions in China. There are 5 tables mostly related with these tourism product, they are destination with 1,007 records, travel feature with 3,496 records, travel route with 46,130 records, travel route price with 3,687 records and 65,844 travel summary records with content in each. It also has 54,669 travel images in the data. The whole China tourism product data set totally has 24 tables.
Tables | Rows | Columns | Non-empty |
---|---|---|---|
company | 1,331 | logistics_score |
100%
|
company |
100%
|
||
title |
100%
|
||
company_loaction |
100%
|
||
description_score |
100%
|
||
service_score |
100%
|
||
destination | 1,007 | destination |
100%
|
image_slug | 54,669 | travel_id |
100%
|
place_from | 426 | place_from |
100%
|
region | 34 | region |
100%
|
region_x_travel | 20,602 | region_id |
100%
|
travel_id |
100%
|
||
travel | 20,489 | sub_title |
92%
|
description |
0%
|
||
title |
100%
|
||
comment_account |
100%
|
||
score_overall |
100%
|
||
month_sale |
100%
|
||
price_from |
100%
|
||
duration |
56.81%
|
||
travel_comment | 0 | comment_idt |
0%
|
comment |
0%
|
||
travel_id |
0%
|
||
travel_comment_x_author | 0 | travel_comment_id |
0%
|
author_id |
0%
|
||
travel_feature | 3,496 | feature |
100%
|
travel_route | 46,130 | travel_id |
100%
|
set_name |
100%
|
||
travel_route_content | 3 | title |
100%
|
travel_route_id |
100%
|
||
content |
100%
|
||
class |
100%
|
||
num |
100%
|
||
unit |
100%
|
||
travel_route_day | 29 | day |
100%
|
travel_id |
100%
|
||
title |
100%
|
||
description |
100%
|
||
travel_route_price | 3,687 | orignal_price |
100%
|
travel_route_id |
0%
|
||
travel_route |
100%
|
||
travel_summary | 65,844 | title |
14.53%
|
content |
99.93%
|
||
travel_id |
100%
|
||
travel_tag | 12 | tag |
91.67%
|
travel_x_company | 20,322 | travel_id |
100%
|
company_id |
100%
|
||
travel_x_destination | 18,748 | travel_id |
100%
|
destination_id |
100%
|
||
travel_x_place_from | 9,232 | travel_id |
100%
|
place_from_id |
100%
|
||
travel_x_travel_feature | 28,808 | travel_id |
100%
|
travel_feature_id |
100%
|
||
travel_x_travel_tag | 15,601 | travel_id |
100%
|
travel_tag_id |
100%
|
||
author | 0 | user |
0%
|
comment_slug | 0 | travel_comment_id |
0%
|
Size (Bytes) | Files |
---|---|
214.69M | 799 |
Time | Data | Tables | Columns | Rows | Media | Files |
---|---|---|---|---|---|---|
2023-06-19 (+ 169 d) | 107.86M (+ 0B) | 24 (+ 0) | 114 (+ 0) | 310,470 (+ 0) | 214.69M (+ 0B) | 799 (+ 0) |
2023-01-01 (+ 95 d) | 107.86M (+ 0B) | 24 (+ 0) | 114 (+ 0) | 310,470 (+ 0) | 214.69M (+ 0B) | 799 (+ 0) |
2022-09-27 (+ 271 d) | 107.86M (+ 0B) | 24 (+ 0) | 114 (+ 0) | 310,470 (+ 0) | 214.69M (+ 0B) | 799 (+ 0) |
2021-12-30 (+ 115 d) | 107.86M (+ 0B) | 24 (+ 0) | 114 (+ 0) | 310,470 (+ 0) | 214.69M (+ 0B) | 799 (+ 0) |
2021-09-05 (+ 150 d) | 107.86M (+ 0B) | 24 (+ 0) | 114 (+ 0) | 310,470 (+ 0) | 214.69M (+ 0B) | 799 (+ 0) |
2021-04-08 (+ 68 d) | 107.86M (+ 49.31M) | 24 (+ 0) | 114 (+ 0) | 310,470 (+ 0) | 214.69M (+ 0B) | 799 (+ 0) |
2021-01-29 (+ 120 d) | 58.55M (+ 0B) | 24 (+ 0) | 114 (+ 0) | 310,470 (+ 0) | 214.69M (+ 0B) | 799 (+ 0) |
2020-10-01 (+ 38 d) | 58.55M (+ 0B) | 24 (+ 0) | 114 (+ 0) | 310,470 (+ 0) | 214.69M (+ 0B) | 799 (+ 0) |
2020-08-23 (+ 141 d) | 58.55M (+ 0B) | 24 (+ 0) | 114 (+ 0) | 310,470 (+ 0) | 214.69M (+ 0B) | 799 (+ 0) |
2020-04-04 (+ 196 d) | 58.55M (+ 0B) | 24 (+ 0) | 114 (+ 0) | 310,470 (+ 0) | 214.69M (+ 0B) | 799 (+ 0) |
2019-09-21 (+ 197 d) | 58.55M (+ 720K) | 24 (+ 4) | 114 (+ 17) | 310,470 (+ 800) | 214.69M (+ 214.69M) | 799 (+ 799) |
2019-03-07 (+ 43 d) | 57.84M (+ 56.55M) | 20 (+ 0) | 97 (+ 2) | 309,670 (+ 308,508) | 0B (+ 0B) | 0 (+ 0) |
2019-01-23 (+ 44 d) | 1.30M (+ 0B) | 20 (+ 0) | 95 (+ 0) | 1,162 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-12-09 (+ 29 d) | 1.30M (+ 0B) | 20 (+ 0) | 95 (+ 0) | 1,162 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-11-09 (+ 27 d) | 1.30M (+ 16K) | 20 (+ 0) | 95 (+ 0) | 1,162 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-10-13 (+ 29 d) | 1.28M (+ 0B) | 20 (+ 0) | 95 (+ 0) | 1,162 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-09-13 (+ 34 d) | 1.28M (+ 0B) | 20 (+ 0) | 95 (+ 0) | 1,162 (+ 0) | 0B (+ 0B) | 0 (+ 0) |
2018-08-09 | 1.28M | 20 | 95 | 1,162 | 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.