RAiSD-AI
github.com/alachins/raisd-aiRAiSD-AI is a tool for training, testing, and deploying Convolutional Neural Networks to detect selective sweeps in genomic data, extending the functionality of the original RAiSD software with machine learning capabilities. It supports SNP data processing, CNN model training with TensorFlow or PyTorch, and genome-wide selective sweep detection.
Sourced from
- bio.tools — RAiSD-AI
- GitHub — github.com/alachins/raisd-ai
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