This machine learning project aims to recommend the most suitable crop to grow based on various soil and environmental factors. The model takes into account the following input data:
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Updated
May 30, 2023 - Python
scikit-learn is a widely-used Python module for classic machine learning. It is built on top of SciPy.
This machine learning project aims to recommend the most suitable crop to grow based on various soil and environmental factors. The model takes into account the following input data:
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Released January 05, 2010
Latest release about 1 month ago