mirror of
https://github.com/oobabooga/text-generation-webui.git
synced 2024-11-25 17:29:22 +01:00
174 lines
6.0 KiB
Python
174 lines
6.0 KiB
Python
import re
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from functools import partial
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import numpy as np
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import torch
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from modules import shared
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from modules.callbacks import Iteratorize
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from modules.llama_cpp_python_hijack import llama_cpp_lib
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from modules.logging_colors import logger
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from modules.text_generation import get_max_prompt_length
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def ban_eos_logits_processor(eos_token, input_ids, logits):
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logits[eos_token] = -float('inf')
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return logits
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def custom_token_ban_logits_processor(token_ids, input_ids, logits):
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for token_id in token_ids:
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logits[token_id] = -float('inf')
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return logits
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class LlamaCppModel:
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def __init__(self):
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self.initialized = False
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self.grammar_string = ''
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self.grammar = None
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def __del__(self):
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del self.model
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@classmethod
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def from_pretrained(self, path):
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Llama = llama_cpp_lib().Llama
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LlamaCache = llama_cpp_lib().LlamaCache
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result = self()
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cache_capacity = 0
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if shared.args.cache_capacity is not None:
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if 'GiB' in shared.args.cache_capacity:
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cache_capacity = int(re.sub('[a-zA-Z]', '', shared.args.cache_capacity)) * 1000 * 1000 * 1000
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elif 'MiB' in shared.args.cache_capacity:
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cache_capacity = int(re.sub('[a-zA-Z]', '', shared.args.cache_capacity)) * 1000 * 1000
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else:
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cache_capacity = int(shared.args.cache_capacity)
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if cache_capacity > 0:
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logger.info("Cache capacity is " + str(cache_capacity) + " bytes")
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if shared.args.tensor_split is None or shared.args.tensor_split.strip() == '':
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tensor_split_list = None
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else:
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tensor_split_list = [float(x) for x in shared.args.tensor_split.strip().split(",")]
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params = {
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'model_path': str(path),
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'n_ctx': shared.args.n_ctx,
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'n_threads': shared.args.threads or None,
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'n_threads_batch': shared.args.threads_batch or None,
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'n_batch': shared.args.n_batch,
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'use_mmap': not shared.args.no_mmap,
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'use_mlock': shared.args.mlock,
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'mul_mat_q': not shared.args.no_mul_mat_q,
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'numa': shared.args.numa,
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'n_gpu_layers': shared.args.n_gpu_layers,
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'rope_freq_base': shared.args.rope_freq_base,
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'tensor_split': tensor_split_list,
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'rope_freq_scale': 1.0 / shared.args.compress_pos_emb,
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'offload_kqv': not shared.args.no_offload_kqv,
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'split_mode': 1 if not shared.args.row_split else 2,
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'flash_attn': shared.args.flash_attn
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}
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if shared.args.cache_4bit:
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params["type_k"] = 2
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params["type_v"] = 2
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elif shared.args.cache_8bit:
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params["type_k"] = 8
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params["type_v"] = 8
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result.model = Llama(**params)
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if cache_capacity > 0:
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result.model.set_cache(LlamaCache(capacity_bytes=cache_capacity))
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# This is ugly, but the model and the tokenizer are the same object in this library.
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return result, result
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def encode(self, string):
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if type(string) is str:
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string = string.encode()
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return self.model.tokenize(string)
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def decode(self, ids, **kwargs):
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return self.model.detokenize(ids).decode('utf-8')
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def get_logits(self, tokens):
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self.model.reset()
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self.model.eval(tokens)
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logits = self.model._scores
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logits = np.expand_dims(logits, 0) # batch dim is expected
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return torch.tensor(logits, dtype=torch.float32)
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def load_grammar(self, string):
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if string != self.grammar_string:
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self.grammar_string = string
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if string.strip() != '':
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self.grammar = llama_cpp_lib().LlamaGrammar.from_string(string)
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else:
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self.grammar = None
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def generate(self, prompt, state, callback=None):
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LogitsProcessorList = llama_cpp_lib().LogitsProcessorList
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prompt = prompt if type(prompt) is str else prompt.decode()
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# Handle truncation
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prompt = self.encode(prompt)
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prompt = prompt[-get_max_prompt_length(state):]
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prompt = self.decode(prompt)
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self.load_grammar(state['grammar_string'])
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logit_processors = LogitsProcessorList()
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if state['ban_eos_token']:
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logit_processors.append(partial(ban_eos_logits_processor, self.model.token_eos()))
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if state['custom_token_bans']:
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to_ban = [int(x) for x in state['custom_token_bans'].split(',')]
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if len(to_ban) > 0:
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logit_processors.append(partial(custom_token_ban_logits_processor, to_ban))
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completion_chunks = self.model.create_completion(
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prompt=prompt,
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max_tokens=state['max_new_tokens'],
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temperature=state['temperature'],
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top_p=state['top_p'],
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min_p=state['min_p'],
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typical_p=state['typical_p'],
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frequency_penalty=state['frequency_penalty'],
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presence_penalty=state['presence_penalty'],
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repeat_penalty=state['repetition_penalty'],
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top_k=state['top_k'],
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stream=True,
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seed=int(state['seed']) if state['seed'] != -1 else None,
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tfs_z=state['tfs'],
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mirostat_mode=int(state['mirostat_mode']),
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mirostat_tau=state['mirostat_tau'],
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mirostat_eta=state['mirostat_eta'],
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logits_processor=logit_processors,
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grammar=self.grammar
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)
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output = ""
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for completion_chunk in completion_chunks:
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if shared.stop_everything:
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break
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text = completion_chunk['choices'][0]['text']
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output += text
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if callback:
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callback(text)
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return output
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def generate_with_streaming(self, *args, **kwargs):
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with Iteratorize(self.generate, args, kwargs, callback=None) as generator:
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reply = ''
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for token in generator:
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reply += token
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yield reply
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