Best open cafes near you in Kaohsiung on Saturday afternoon (TW)

Best open cafes near you in Kaohsiung Taiwan on Saturday afternoon: Find your ideal quiet or bustling cafe nearby you.

Adjust the filters to find for example your desired busy, quiet, expensive, or highly rated cafes.

AI
(Cafe)
No. 176號, Liantan Rd, Zuoying District, Kaohsiung City, Taiwan 813
4.5

PAMMA COFFEE is most popular around 1 PM on Sundays. Visitors usually stay 45 min to 2 hr here. It's most quiet on Wednesdays.

For more info visit the website or checkout Google Maps.

(Cafe)
No. 9號, Meishu East 2nd Rd, Gushan District Kaohsiung City, Taiwan 804
4.3

STARBUCKS Meishu Yuanjing Shop is most popular around 5 PM on Fridays. Visitors usually stay 20 min to 2 hr here. It's most quiet on Mondays.

For more info visit the website or checkout Google Maps.

(Coffee)
西苑 No. 67號, Wufu 1st Rd, Lingya District Kaohsiung City, Taiwan 802
4.1

CAFFAINA COFFEE GALLERY Cultural Center Shop is most popular around 3 PM on Sundays. Visitors usually stay 45 min to 2,5 hr here. It's most quiet on Mondays.

Google Maps

(Cafe)
No. 44號, Zhongzheng 4th Rd, Sinsing District Kaohsiung City, Taiwan 800
4.4

步道咖啡館Cafe Strada is most popular around 7 PM on Wednesdays. Visitors usually stay 1,5-3 hours here. It's most quiet on Tuesdays.

Google Maps

(Coffee)
No. 103, Chaishan Ave, Gushan District
3.9

Ocean Corner Café is most popular around 4 PM on Sundays. Visitors usually stay 30 min to 2 hr here. It's most quiet on Tuesdays.

For more info visit the website or checkout Google Maps.

(Cafe)
804, Taiwan, Kaohsiung City, Gushan District, Guyuan St, 4號 2樓
4.4

書店喫茶 一二三亭 is most popular around 3 PM on Fridays. Visitors usually stay 1-2,5 hours here. It's most quiet on Tuesdays.

Google Maps



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