2 of 3 edited title

[Solved]After enough(200) epochs, LSTM LM return only <pad>, <unk>, 'the' token with Nan loss

I constructed Bi-LSTM Language Model by pytorch, and found that after 200 epochs, the model suddenly returned only meaningless tokens with Nan loss, while it returned reasonable tokens before.

Please refer to the code of model below:

# optimizer = torch.optim.Adam(model.parameters(), lr=0.009,  amsgrad=False)

class BiLSTM(nn.Module):
    
    def __init__(self, voc_size, hidn_size, emb_size=300):
        super().__init__()     
        self.voc_size = voc_size
        self.emb_size = emb_size
        self.hidn_size = hidn_size
        self.emb = nn.Embedding(num_embeddings=voc_size, embedding_dim=emb_size) 
        self.lstm = nn.LSTM(input_size=emb_size, hidden_size=hidn_size, bidirectional=True) 
        self.lm_out = nn.Linear(hidn_size*2, voc_size) 
        self.dropout = nn.Dropout(p=0.3)
        
    def forward(self, x, prev_state):
        state_h, state_c = prev_state
        bs = len(x)
                
        emb = self.emb(x)
        emb = emb.permute(1,0,-1)
        out, (state_h, state_c) = self.lstm(emb, (state_h[:,:bs,:].contiguous(), state_c[:,:bs,:].contiguous()))
        
        forward_out = out[:, :, :self.hidn_size] 
        backward_out = out[:, :, self.hidn_size:]
        concat_h = torch.cat([forward_out[:-2], backward_out[2:]], dim=2) 
        
        final_out = self.lm_out(self.dropout(concat_h.permute(1,0,2)))  
        
        return final_out.view(final_out.size()[0]*final_out.size()[1], final_out.size()[-1]), (state_h, state_c)