Best restaurants Ebina (JP)
Popular restaurants and hours for eating in Ebina Japan : Secure a table before rush hour at the most popular restaurants.
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うまい軒 (Ramen restaurant)
Japan 〒243-0418 Kanagawa, Ebina, Oyaminami, 1 Chome−2−11Chaya Akiko (Restaurant)
112-1 Katsuse Ebina, Kanagawa 243-0404 JapanChaya Akiko is most popular around 1 PM on Wednesdays. Visitors usually stay 1-2,5 hours here. It's most quiet on Tuesdays.
For more info visit the website or checkout Google Maps.
KATSU-GYU Ebina (Restaurant)
112-1 Katsuse Ebina, Kanagawa 243-0404 JapanKATSU-GYU Ebina is most popular around 1 PM on Saturdays. Visitors usually stay 45 min to 1,5 hr here. It's most quiet on Mondays.
For more info visit the website or checkout Google Maps.
Seishomaru Ebina (Ramen restaurant)
1 Chome-18-1 Central Ebina, Kanagawa 243-0432 JapanSeishomaru Ebina is most popular around 11 PM on Fridays. Visitors usually stay 20 min here. It's most quiet on Mondays.
Ebina Ueno Yabu Soba (Restaurant)
1 Chome-1-17 Nakashinden Ebina, Kanagawa 243-0422 JapanEbina Ueno Yabu Soba is most popular around 12 PM on Sundays. Visitors usually stay 45 min here. It's most quiet on Fridays.
ぎょうてん屋 海老名店 (Ramen restaurant)
Japan 〒243-0432 Kanagawa, Ebina, Central, 1 Chome−9−18ぎょうてん屋 海老名店 is most popular around 8 PM on Fridays. Visitors usually stay 30 min here. It's most quiet on Sundays.
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