301 lines
9.9 KiB
Python
301 lines
9.9 KiB
Python
# Provides terminal-based chat interface for RWKV model.
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import os
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import sys
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import argparse
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import pathlib
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import copy
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from typing import List
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import sampling
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import tokenizers
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import rwkv_cpp_model
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import rwkv_cpp_shared_library
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# ======================================== Script settings ========================================
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# Copied from https://github.com/BlinkDL/ChatRWKV/blob/9ca4cdba90efaee25cfec21a0bae72cbd48d8acd/chat.py#L92-L178
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CHAT_LANG = 'English' # English // Chinese
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QA_PROMPT = False # True: Q & A prompt // False: chat prompt (need large model)
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if CHAT_LANG == 'English':
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interface = ':'
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if QA_PROMPT:
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user = "User"
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bot = "Bot" # Or: 'The following is a verbose and detailed Q & A conversation of factual information.'
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init_prompt = f'''
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The following is a verbose and detailed conversation between an AI assistant called {bot}, and a human user called {user}. {bot} is intelligent, knowledgeable, wise and polite.
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{user}{interface} french revolution what year
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{bot}{interface} The French Revolution started in 1789, and lasted 10 years until 1799.
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{user}{interface} 3+5=?
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{bot}{interface} The answer is 8.
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{user}{interface} guess i marry who ?
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{bot}{interface} Only if you tell me more about yourself - what are your interests?
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{user}{interface} solve for a: 9-a=2
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{bot}{interface} The answer is a = 7, because 9 - 7 = 2.
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{user}{interface} what is lhc
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{bot}{interface} LHC is a high-energy particle collider, built by CERN, and completed in 2008. They used it to confirm the existence of the Higgs boson in 2012.
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'''
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else:
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user = "Bob"
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bot = "Alice"
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init_prompt = f'''
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The following is a verbose detailed conversation between {user} and a young girl {bot}. {bot} is intelligent, friendly and cute. {bot} is likely to agree with {user}.
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{user}{interface} Hello {bot}, how are you doing?
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{bot}{interface} Hi {user}! Thanks, I'm fine. What about you?
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{user}{interface} I am very good! It's nice to see you. Would you mind me chatting with you for a while?
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{bot}{interface} Not at all! I'm listening.
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'''
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elif CHAT_LANG == 'Chinese':
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interface = ":"
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if QA_PROMPT:
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user = "Q"
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bot = "A"
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init_prompt = f'''
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Expert Questions & Helpful Answers
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Ask Research Experts
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'''
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else:
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user = "Bob"
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bot = "Alice"
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init_prompt = f'''
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The following is a verbose and detailed conversation between an AI assistant called {bot}, and a human user called {user}. {bot} is intelligent, knowledgeable, wise and polite.
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{user}{interface} what is lhc
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{bot}{interface} LHC is a high-energy particle collider, built by CERN, and completed in 2008. They used it to confirm the existence of the Higgs boson in 2012.
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{user}{interface} 企鹅会飞吗
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{bot}{interface} 企鹅是不会飞的。它们的翅膀主要用于游泳和平衡,而不是飞行。
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'''
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FREE_GEN_LEN: int = 100
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# Sampling settings.
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GEN_TEMP: float = 0.8 # It could be a good idea to increase temp when top_p is low
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GEN_TOP_P: float = 0.5 # Reduce top_p (to 0.5, 0.2, 0.1 etc.) for better Q&A accuracy (and less diversity)
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# =================================================================================================
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parser = argparse.ArgumentParser(description='Provide terminal-based chat interface for RWKV model')
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parser.add_argument('model_path', help='Path to RWKV model in ggml format')
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args = parser.parse_args()
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assert init_prompt != '', 'Prompt must not be empty'
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print('Loading 20B tokenizer')
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tokenizer_path = pathlib.Path(os.path.abspath(__file__)).parent / '20B_tokenizer.json'
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tokenizer = tokenizers.Tokenizer.from_file(str(tokenizer_path))
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library = rwkv_cpp_shared_library.load_rwkv_shared_library()
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print(f'System info: {library.rwkv_get_system_info_string()}')
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print('Loading RWKV model')
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model = rwkv_cpp_model.RWKVModel(library, args.model_path)
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prompt_tokens = tokenizer.encode(init_prompt).ids
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prompt_token_count = len(prompt_tokens)
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print(f'Processing {prompt_token_count} prompt tokens, may take a while')
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########################################################################################################
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def run_rnn(tokens: List[int]):
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global model_tokens, model_state, logits
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tokens = [int(x) for x in tokens]
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model_tokens += tokens
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for token in tokens:
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logits, model_state = model.eval(token, model_state, model_state, logits)
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return logits
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all_state = {}
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def save_all_stat(thread: str, last_out):
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n = f'{thread}'
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all_state[n] = {}
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all_state[n]['logits'] = copy.deepcopy(last_out)
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all_state[n]['rnn'] = copy.deepcopy(model_state)
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all_state[n]['token'] = copy.deepcopy(model_tokens)
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def load_all_stat(thread: str):
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global model_tokens, model_state
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n = f'{thread}'
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model_state = copy.deepcopy(all_state[n]['rnn'])
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model_tokens = copy.deepcopy(all_state[n]['token'])
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return copy.deepcopy(all_state[n]['logits'])
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########################################################################################################
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model_tokens = []
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logits, model_state = None, None
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for token in prompt_tokens:
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logits, model_state = model.eval(token, model_state, model_state, logits)
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model_tokens.append(token)
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save_all_stat('chat_init', logits)
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print('\nChat initialized! Write something and press Enter.')
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save_all_stat('chat', logits)
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while True:
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# Read user input
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user_input = input(f'> {user}{interface} ')
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msg = user_input.replace('\\n','\n').strip()
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temperature = GEN_TEMP
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top_p = GEN_TOP_P
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if ("-temp=" in msg):
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temperature = float(msg.split("-temp=")[1].split(" ")[0])
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msg = msg.replace("-temp="+f'{temperature:g}', "")
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# print(f"temp: {temperature}")
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if ("-top_p=" in msg):
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top_p = float(msg.split("-top_p=")[1].split(" ")[0])
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msg = msg.replace("-top_p="+f'{top_p:g}', "")
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# print(f"top_p: {top_p}")
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if temperature <= 0.2:
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temperature = 0.2
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if temperature >= 5:
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temperature = 5
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if top_p <= 0:
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top_p = 0
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msg = msg.strip()
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# + reset --> reset chat
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if msg == '+reset':
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logits = load_all_stat('chat_init')
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save_all_stat('chat', logits)
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print(f'{bot}{interface} "Chat reset."\n')
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continue
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elif msg[:5].lower() == '+gen ' or msg[:3].lower() == '+i ' or msg[:4].lower() == '+qa ' or msg[:4].lower() == '+qq ' or msg.lower() == '+++' or msg.lower() == '++':
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# +gen YOUR PROMPT --> free single-round generation with any prompt. Requires Novel model.
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if msg[:5].lower() == '+gen ':
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new = '\n' + msg[5:].strip()
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# print(f'### prompt ###\n[{new}]')
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model_state = None
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model_tokens = []
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logits = run_rnn(tokenizer.encode(new).ids)
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save_all_stat('gen_0', logits)
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# +i YOUR INSTRUCT --> free single-round generation with any instruct. Requires Raven model.
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elif msg[:3].lower() == '+i ':
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new = f'''
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Below is an instruction that describes a task. Write a response that appropriately completes the request.
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# Instruction:
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{msg[3:].strip()}
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# Response:
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'''
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# print(f'### prompt ###\n[{new}]')
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model_state = None
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model_tokens = []
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logits = run_rnn(tokenizer.encode(new).ids)
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save_all_stat('gen_0', logits)
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# +qq YOUR QUESTION --> answer an independent question with more creativity (regardless of context).
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elif msg[:4].lower() == '+qq ':
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new = '\nQ: ' + msg[4:].strip() + '\nA:'
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# print(f'### prompt ###\n[{new}]')
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model_state = None
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model_tokens = []
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logits = run_rnn(tokenizer.encode(new).ids)
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save_all_stat('gen_0', logits)
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# +qa YOUR QUESTION --> answer an independent question (regardless of context).
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elif msg[:4].lower() == '+qa ':
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logits = load_all_stat('chat_init')
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real_msg = msg[4:].strip()
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new = f"{user}{interface} {real_msg}\n\n{bot}{interface}"
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# print(f'### qa ###\n[{new}]')
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logits = run_rnn(tokenizer.encode(new).ids)
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save_all_stat('gen_0', logits)
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# +++ --> continue last free generation (only for +gen / +i)
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elif msg.lower() == '+++':
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try:
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logits = load_all_stat('gen_1')
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save_all_stat('gen_0', logits)
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except Exception as e:
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print(e)
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continue
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# ++ --> retry last free generation (only for +gen / +i)
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elif msg.lower() == '++':
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try:
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logits = load_all_stat('gen_0')
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except Exception as e:
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print(e)
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continue
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thread = "gen_1"
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else:
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# + --> alternate chat reply
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if msg.lower() == '+':
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try:
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logits = load_all_stat('chat_pre')
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except Exception as e:
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print(e)
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continue
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# chat with bot
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else:
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logits = load_all_stat('chat')
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new = f"{user}{interface} {msg}\n\n{bot}{interface}"
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# print(f'### add ###\n[{new}]')
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logits = run_rnn(tokenizer.encode(new).ids)
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save_all_stat('chat_pre', logits)
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thread = 'chat'
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# Print bot response
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print(f"> {bot}{interface}", end='')
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decoded = ''
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begin = len(model_tokens)
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out_last = begin
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for i in range(FREE_GEN_LEN):
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token = sampling.sample_logits(logits, temperature, top_p)
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logits = run_rnn([token])
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decoded = tokenizer.decode(model_tokens[out_last:])
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if '\ufffd' not in decoded: # avoid utf-8 display issues
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print(decoded, end='', flush=True)
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out_last = begin + i + 1
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if thread == 'chat':
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send_msg = tokenizer.decode(model_tokens[begin:])
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if '\n\n' in send_msg:
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send_msg = send_msg.strip()
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break
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if i == FREE_GEN_LEN - 1:
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print()
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save_all_stat(thread, logits)
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