Machine Learning in the PATANI application is a price prediction for the next week where the results of the prediction are used for price recommendations for farmers and buyers. Price recommendations for farmers aim to be information that can help farmers in determining prices, while price recommendations for buyers can be used as a benchmark in submitting price offers.
For the accuracy of price predictions, we use datasets that we collect from various sources such as BPS, from Google, and prices of agricultural products in other e-commerce.
For modeling, we used Tensorflow and Long Short Term Memory (LSTM) forcasting model to predict the price of the product on the next day. To measure the accuracy, we used Root Mean Square Error (RMSE) and the average RMSE we got from our model was <0.1. For the deployment stage, we use Tensorflow Serving which is deployed to Google Cloud.
- Android 12+
- Android Studion Giraffe
- Internet Connection
- Java Version 1.8
- targetSDK 33
- Download our project here Zip Application
- Build and run our project from Android Studio
- Muhammad Abdanul Ikhlas (M297BSY1103) - muhabdanulikhlas0983@gmail.com - ML
- Hisyam Agus Setiawan (M179BSY1396) - hisyamagus12@gmail.com - ML
- Zulia Amalia (M183BSX1518) - zuliaamalia108@gmail.com - ML
- Komang Yuda Saputra (C297BSY3618) - yudasaputra082@gmail.com - CC
- Bella Febriany Nawangsari (C297BSX3626) - bellafebrianynws@gmail.com - CC
- Muhamad Firdaus (A629BSY2144) - muhfrds345@gmail.com - MD
- Muhammad Nur Faiz (A123BSY2557) - mnurfaiz26@gmail.com - MD