SubhangiSati/QuantumFold-Hybrid-Deep-Learning-for-Protein-Structure-Prediction
QuantumFold integrates quantum circuits with classical deep learning to predict protein structures. Utilizing SidechainNet, it combines quantum feature encoding with LSTM layers for accurate predictions. The project offers metric logging, data visualization, and a saved model for advanced protein folding analysis.
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Jan 13, 2025
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