Skip to content

phong1233/PickYeetUp

Repository files navigation


Logo

Pick Yeet Up

Web application aimed to revolutionize the scheduling of pick-up orders! 🚗💨


homepage summary time

Inspiration

During this pandemic, we have seen many changes in our day-to-day lives. Moving towards an online world has made it hard to schedule activities. For example, we had to go through endless dropdowns simply to make a reservation to go to the gym. As such, we here at Pick Yeet Up are aiming to revolutionize the way we schedule by making the experience as intuitive as possible.

What it does

Pick Yeet Up is a web app that allows customers to schedule the pick-up of their order. Using Google's API and the information of the customer, our application is able to smartly determine the best pick-up spot without having to enter any additional information! Beyond that, we have created our own time-picking interface that is both intuitive and informative.

How we built it

Our solution is simplistic and makes maximum use of the API provided by SAP. The frontend is built using React with Node.js. For storage, we are using a combination of localStorage and Firebase.

Challenges we ran into

Working with Google's Map API was new to us and we spent countless hours debugging before landing with a nice UI/UX. We've also faced difficulty finding a suitable solution to the scheduling problem. It is a hard task in terms of logistics. However, with diligent brainstorming and multiple mocks, we finally landed a solution that we are satisfied with.

Accomplishments that we're proud of

Our team is proud to deliver a project that we would happily see on the market!

What we learned

We learned a lot about the complexity of scheduling systems such as the features involved. We also learned a lot about Google's Map API through many trials and errors. Finally, while making this application we learned the true power of friendship.

What's next for Pick Yeet Up

Many features are on the way. Such as a mobile version of the app, better pick-up time suggestions to optimize the time of employees, automatic scheduling based on historical data and so much more.

Contributors

Name Github
Phong Le phong1233
Sébastien Blain-Nadeau sebastien-blain
Kevin Jiang kevjiang64

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Contributors