from transformers import pipeline def generate(text, the_model, max_length, temperature, repetition_penalty): generator = pipeline("text-generation", model=the_model) result = generator( text, num_return_sequences=1, max_length=max_length, temperature=temperature, repetition_penalty=repetition_penalty, no_repeat_ngram_size=2, early_stopping=False, ) return result[0]["generated_text"] def complete_with_gpt( text, context, the_model, max_length, temperature, repetition_penalty ): # Use the last [context] characters of the text as context max_length = max_length + context return generate( text[-context:], the_model, max_length, temperature, repetition_penalty ) # complete_with_gpt("I am a language model",200,'gpt2-medium',1500,0.7,1.5) # def generate(genre:str,topic:str,main_name:str,type_of_main_character:str,antagonist_name:str, # antagonist_type:str,supporting_character_name:str,supporting_char_type:str,settings:str, # resoluton:str,chapter:int # ): # chapter_text={} # for x in range(chapter):0