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      "text": "Discriminator neural network is lightly trained on normal human antibodies. Generator creates antibody structures that sometimes fool the Discriminator, and learns from this experience. Discriminator is trained with more real human antibodies, forcing the Generator to improve. Eventually Generator produces a diverse library of antibodies indistinguishable for human antibodies",
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