Best open restaurants Sagamihara on Thursday evening near you

Nearby open restaurants and hours for food in Sagamihara Japan on Thursday 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.

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Ramen Yamaokaya Sagamihara Shop (Ramen restaurant)
4089-2 Kamimizo Chuo Ward, Sagamihara, Kanagawa 252-0243 Japan
3.7

Ramen Yamaokaya Sagamihara Shop is most popular around 12 PM on Saturdays. Visitors usually stay 25 min to 1 hr here. It's most quiet on Thursdays.

For more info visit the website or checkout Google Maps.

West Machida (Restaurant)
4 Chome-8-2 Tadao Machida, Tokyo 194-0035 Japan
4.0

West Machida is most popular around 12 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.

夢庵 淵野辺店 (Japanese restaurant)
3 Chome-1-3 Fuchinobehoncho Chuo Ward, Sagamihara, Kanagawa 252-0202 Japan
3.6

夢庵 淵野辺店 is most popular around 7 PM on Saturdays. Visitors usually stay 30 min to 1,5 hr here. It's most quiet on Thursdays.

For more info visit the website or checkout Google Maps.

夜鳴き軒 (Ramen restaurant)
Japan 〒252-0234 Kanagawa, Sagamihara, Chuo Ward, Kyowa, 4 Chome−8−1
3.5

夜鳴き軒 is most popular around 9 PM on Saturdays. Visitors usually stay 25 min here. It's most quiet on Wednesdays.

Google Maps

自家製麺 二丁目ラーメン (Ramen restaurant)
Japan 〒252-0143 Kanagawa, Sagamihara, Midori Ward, Hashimoto, 2 Chome−2−13
3.7

Visitors usually stay 30 min here.

For more info visit the website or checkout Google Maps.

めん処 仁兵衛 橋本北口店 (Ramen restaurant)
3.7

Visitors usually stay 20 min to 1,5 hr here. It's most quiet on Tuesdays.

Google Maps



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