Best open restaurants Niiza on Friday evening near you

Nearby open restaurants and hours for food in Niiza Japan on Friday evening: Secure a table before rush hour at the most popular open restaurants near you.

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

AI
(Ramen restaurant)
6 Chome-4-16 Nobitome
3.8

Kurumaya Ramen Niiza is most popular around 9 PM on Mondays. Visitors usually stay 30 min here. It's most quiet on Wednesdays.

For more info visit the website or checkout Google Maps.

(Restaurant)
4 Chome-4-40 Nobitome
3.8

Bikkuri Donkey Niiza Store is most popular around 7 PM on Saturdays. Visitors usually stay 45 min to 1,5 hr here. It's most quiet on Thursdays.

For more info visit the website or checkout Google Maps.

(Chinese restaurant)
1 Chome-1-6 Hatanaka Niiza, Saitama 352-0012 Japan
3.5

Hidakaya is most popular around 8 PM on Saturdays. Visitors usually stay 30 min here. It's most quiet on Wednesdays.

For more info visit the website or checkout Google Maps.

(Japanese restaurant)
Japan 〒351-0022 Saitama, Asaka, Higashibenzai, 1 Chome−4−12 Erba Asakadai, 4F
4.3

Shinobuya Asakadaiminamiguchiten is most popular around 7 PM on Fridays. Visitors usually stay 25 min to 3 hr here. It's most quiet on Sundays.

For more info visit the website or checkout Google Maps.

(Ramen restaurant)
Asaka Japan
3.8

Monzaemon is most popular around 8 PM on Fridays. Visitors usually stay 30 min to 2,5 hr here. It's most quiet on Wednesdays.

For more info visit the website or checkout Google Maps.

(Japanese restaurant)
Japan 〒351-0021 Saitama, Asaka, Nishibenzai, 1 Chome−10−25 保第一ビル
4.0

Visitors usually stay 1-2,5 hours here.

For more info visit the website or checkout Google Maps.



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