Agtor: an agricultural water management model built in Python 3
-
Updated
Nov 28, 2019 - Python
Agtor: an agricultural water management model built in Python 3
Project to predict production quantities for a given dataset using Machine Learning algorithms.
Plant disease detection bot
AgriVision is a project designed to identify cultivatable land for agricultural purposes using real-time satellite imagery and advanced image processing techniques. The project leverages an R Shiny app to provide a user-friendly interface where users can upload satellite images, view processed results, and receive precise crop suitability recommend
Modeling the budding process of the beet plant with neural networks
An Optimal Crop Allocation Model constructed using Operational Research
Innovation in agriculture productivity and gaining time (Smart irrigation system)
My personal GitHub profile repo!
A toolkit for geospatial crop simulations
Harmonize heterogenous spatiotemporal gridded agriculture-related datasets. Part of a larger ongoing project to monitor land and water use by combining irrigation and gridded data via remote sensing data with machine learning.
An interactive introduction to modelling using the life-cycle of an agricultural weed as an example.
Projeto de Ciência de Dados para a estimativa de tempo de ordens de serviço, voltado à área agrícola. Desenvolvido em Python, através do Google Colab
Predicting the price of agricultural
A machine learning application that detects diseases in cotton plants using image analysis and convolutional neural networks (CNNs). Built with Flask for a user-friendly interface and fast, accurate disease classification.
AI agent with custom plant sensor data input, designed to assist your grow 24/7
🌾 OWL Ontology for the EURAKNOS project about EU agricultural resources
Predicting the best suitable crop based on various parameters. The model is based on Random Forest Algorithm
Aquacrop-OSPY implementation to analyze the effects of changing irrigation schedules and irrigation depths on key crop parameters.
Add a description, image, and links to the agricultural-modelling topic page so that developers can more easily learn about it.
To associate your repository with the agricultural-modelling topic, visit your repo's landing page and select "manage topics."