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Last active January 6, 2020 09:21
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Quotes Generation - Medium
def predict(x, temp):
probs = F.softmax(x / temp, dim = 0)
probs = np.squeeze(probs.detach().cpu().numpy())
ind = np.random.choice(vocab_len, 1, p = probs)
return ind[0]
generated_text = ['there','is','no','one','love']
curr_len = 0
embeds = []
is_end = word_to_int[';']
qt_gen.eval()
for i in generated_text:
embeds.append(emb[word_to_int[i]])
while(curr_len < 50):
curr_len += 1
input_tensor = torch.Tensor(embeds).view(1,5,128).float().to(device)
h_h, h_c = qt_gen.zero_states(1)
output, (h_h, h_c) = qt_gen(input_tensor, (h_h,h_c))
word_ind = predict(output[-1], 1.6)
embeds[0][:4].tolist().extend(emb[word_ind])
generated_text.append(int_to_word[word_ind])
if word_ind == is_end:
break
print(' '.join(generated_text))
torch.cuda.empty_cache()
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