Best restaurants Nairobi on Friday evening (KE)
Popular restaurants and hours for eating in Nairobi Kenya on Friday evening: Secure a table before rush hour at the most popular restaurants.
Adjust the filters to find for example your desired busy,
quiet,
expensive, or
highly rated restaurants.
Java House - Hurlingham (Restaurant)
Argwings Kodhek Road Shell Service Station Nairobi KenyaJava House - Hurlingham is most popular around 1 PM on Wednesdays. It's most quiet on Sundays.
For more info visit the website or checkout Google Maps.
Nerkwo Restaurant (Restaurant)
Athi River Plainsview Rd Nairobi KenyaAl-Yusra Restaurant (Restaurant)
Banda St Nairobi City KenyaAl-Yusra Restaurant is most popular around 3 PM on Fridays. Visitors usually stay 30 min to 1,5 hr here. It's most quiet on Sundays.
Restaurant
For more info visit the website or checkout Google Maps.
Java House - Kimathi Street (Restaurant)
Kimathi St Nairobi KenyaJava House - Kimathi Street is most popular around 6 PM on Fridays. It's most quiet on Sundays.
For more info visit the website or checkout Google Maps.
Nairobi Java House-ThikaRoad (Restaurant)
Thika Super Highway Thika Road Mall Nairobi KenyaNairobi Java House-ThikaRoad is most popular around 6 PM on Fridays. Visitors usually stay 20 min to 1.5 hr here. It's most quiet on Mondays.
Roasters Inn (Restaurant)
QV8C+G7 Garden Estate Rd Nairobi KenyaRoasters Inn is most popular around 10 PM on Saturdays. It's most quiet on Mondays.
For more info visit the website or checkout Google Maps.
Special pages for Nairobi Kenya
View on map
Map view and advanced filters
Heatmap for best restaurants nairobi on friday evening (ke)
Nearby cities and areas
Also checkout restaurants in other cities and areas on Friday evening nearby Nairobi
Missing venues? This is a free, but limited tool. Use the BestTime software get more world wide foot traffic data in Nairobi, Kenya. Filter points of interest (venues) on foot traffic levels, day, time, dwell time, location, ratings, etc. BestTime provides retail foot traffic and foot traffic analytics.