For the second year in a row, we’re partnering with Aggieland’s premier festival, Chilifest. Check out our ride guide for info and tips to make sure you get a 5-star ride all weekend long.
Pickup + dropoff at Chilifest
Our official pickup and dropoff location is located to the right of the stage, next to the pedestrian exit. Follow the arrow above, and look for Uber cones directing you to the location.
Check the price
With upfront pricing, you know the exact cost of your trip before requesting. To avoid the highest fares, head back to Aggieland early or hang back with your team a little longer and wait for the crowds to die down after the concerts end.
Split the fare and save
Use our Split Fare feature if you’re headed to Snook with your friends. uberX can seat groups up to four, while uberXL can handle a larger team of up to six passengers.
Confirm your driver
We recommend that you call or text your driver through the app to coordinate the best pickup location, which is just outside the main entrance gates. Before the trip begins, be sure to use the info in your app to confirm the model and license plate of your driver’s car.
Avoid a cleaning fee
Make sure you don’t get charged a cleaning fee by throwing away your drinks and snacks before you jump in the car to avoid any accidental messes.
Contact support
Leave something behind? Get in contact with your driver directly through the app or online. Problems with your trip? Reach out to our support team by selecting ‘Help’ within the app and we can look into it for you!
Earn free rides for Chilifest
You can earn free rides by inviting friends to sign up and ride with Uber. To see your invite code, tap ‘Free Rides’ in the app menu.
Never taken an Uber? Enter promo code CHILIFEST17 for $20 off your first trip.
Posted by Eric
Get a ride when you need one
Start earning in your city
Get a ride when you need one
Start earning in your city
Related articles
Most popular
Balancing HDFS DataNodes in the Uber DataLake
Introducing flat rates, a new way to earn
Model Excellence Scores: A Framework for Enhancing the Quality of Machine Learning Systems at Scale
DataK9: Auto-categorizing an exabyte of data at field level through AI/ML
Products
Company