text-generation-webui/modules/models.py

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import gc
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import os
import pprint
import re
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import time
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import traceback
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from pathlib import Path
import torch
import transformers
from accelerate import infer_auto_device_map, init_empty_weights
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from accelerate.utils import (
is_ccl_available,
is_npu_available,
is_xpu_available
)
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from transformers import (
AutoConfig,
AutoModel,
AutoModelForCausalLM,
AutoModelForSeq2SeqLM,
AutoTokenizer,
BitsAndBytesConfig,
GPTQConfig
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)
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import modules.shared as shared
from modules import sampler_hijack
from modules.logging_colors import logger
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from modules.models_settings import get_model_metadata
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transformers.logging.set_verbosity_error()
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local_rank = None
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if shared.args.deepspeed:
import deepspeed
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from transformers.deepspeed import (
HfDeepSpeedConfig,
is_deepspeed_zero3_enabled
)
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from modules.deepspeed_parameters import generate_ds_config
# Distributed setup
local_rank = shared.args.local_rank if shared.args.local_rank is not None else int(os.getenv("LOCAL_RANK", "0"))
world_size = int(os.getenv("WORLD_SIZE", "1"))
if is_xpu_available() and is_ccl_available():
torch.xpu.set_device(local_rank)
deepspeed.init_distributed(backend="ccl")
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elif is_npu_available():
torch.npu.set_device(local_rank)
deepspeed.init_distributed(dist_backend="hccl")
else:
torch.cuda.set_device(local_rank)
deepspeed.init_distributed()
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ds_config = generate_ds_config(shared.args.bf16, 1 * world_size, shared.args.nvme_offload_dir)
dschf = HfDeepSpeedConfig(ds_config) # Keep this object alive for the Transformers integration
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sampler_hijack.hijack_samplers()
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last_generation_time = time.time()
def load_model(model_name, loader=None):
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logger.info(f"Loading \"{model_name}\"")
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t0 = time.time()
shared.is_seq2seq = False
shared.model_name = model_name
load_func_map = {
'Transformers': huggingface_loader,
'AutoGPTQ': AutoGPTQ_loader,
'llama.cpp': llamacpp_loader,
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'llamacpp_HF': llamacpp_HF_loader,
'ExLlamav2': ExLlamav2_loader,
'ExLlamav2_HF': ExLlamav2_HF_loader,
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'AutoAWQ': AutoAWQ_loader,
'HQQ': HQQ_loader,
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'TensorRT-LLM': TensorRT_LLM_loader,
}
metadata = get_model_metadata(model_name)
if loader is None:
if shared.args.loader is not None:
loader = shared.args.loader
else:
loader = metadata['loader']
if loader is None:
logger.error('The path to the model does not exist. Exiting.')
raise ValueError
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shared.args.loader = loader
output = load_func_map[loader](model_name)
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if type(output) is tuple:
model, tokenizer = output
else:
model = output
if model is None:
return None, None
else:
tokenizer = load_tokenizer(model_name, model)
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shared.settings.update({k: v for k, v in metadata.items() if k in shared.settings})
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if loader.lower().startswith('exllama') or loader.lower().startswith('tensorrt'):
shared.settings['truncation_length'] = shared.args.max_seq_len
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elif loader in ['llama.cpp', 'llamacpp_HF']:
shared.settings['truncation_length'] = shared.args.n_ctx
logger.info(f"Loaded \"{model_name}\" in {(time.time()-t0):.2f} seconds.")
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logger.info(f"LOADER: \"{loader}\"")
logger.info(f"TRUNCATION LENGTH: {shared.settings['truncation_length']}")
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logger.info(f"INSTRUCTION TEMPLATE: \"{metadata['instruction_template']}\"")
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return model, tokenizer
def load_tokenizer(model_name, model):
tokenizer = None
path_to_model = Path(f"{shared.args.model_dir}/{model_name}/")
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if path_to_model.exists():
if shared.args.no_use_fast:
logger.info('Loading the tokenizer with use_fast=False.')
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tokenizer = AutoTokenizer.from_pretrained(
path_to_model,
trust_remote_code=shared.args.trust_remote_code,
use_fast=not shared.args.no_use_fast
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)
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return tokenizer
def huggingface_loader(model_name):
path_to_model = Path(f'{shared.args.model_dir}/{model_name}')
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params = {
'low_cpu_mem_usage': True,
'torch_dtype': torch.bfloat16 if shared.args.bf16 else torch.float16,
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}
if shared.args.trust_remote_code:
params['trust_remote_code'] = True
if shared.args.use_flash_attention_2:
params['use_flash_attention_2'] = True
if shared.args.force_safetensors:
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params['force_safetensors'] = True
config = AutoConfig.from_pretrained(path_to_model, trust_remote_code=shared.args.trust_remote_code)
if 'chatglm' in model_name.lower():
LoaderClass = AutoModel
else:
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if config.to_dict().get('is_encoder_decoder', False):
LoaderClass = AutoModelForSeq2SeqLM
shared.is_seq2seq = True
else:
LoaderClass = AutoModelForCausalLM
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# Load the model without any special settings
if not any([shared.args.cpu, shared.args.load_in_8bit, shared.args.load_in_4bit, shared.args.auto_devices, shared.args.disk, shared.args.deepspeed, shared.args.gpu_memory is not None, shared.args.cpu_memory is not None, shared.args.compress_pos_emb > 1, shared.args.alpha_value > 1, shared.args.disable_exllama, shared.args.disable_exllamav2]):
logger.info("TRANSFORMERS_PARAMS=")
pprint.PrettyPrinter(indent=4, sort_dicts=False).pprint(params)
print()
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model = LoaderClass.from_pretrained(path_to_model, **params)
if not (hasattr(model, 'is_loaded_in_4bit') and model.is_loaded_in_4bit):
if torch.backends.mps.is_available():
device = torch.device('mps')
model = model.to(device)
elif is_xpu_available():
device = torch.device("xpu")
model = model.to(device)
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elif is_npu_available():
device = torch.device("npu")
model = model.to(device)
else:
model = model.cuda()
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# DeepSpeed ZeRO-3
elif shared.args.deepspeed:
model = LoaderClass.from_pretrained(path_to_model, torch_dtype=params['torch_dtype'], trust_remote_code=params.get('trust_remote_code'))
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model = deepspeed.initialize(model=model, config_params=ds_config, model_parameters=None, optimizer=None, lr_scheduler=None)[0]
model.module.eval() # Inference
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logger.info(f'DeepSpeed ZeRO-3 is enabled: {is_deepspeed_zero3_enabled()}')
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# Load with quantization and/or offloading
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else:
if not any((shared.args.cpu, torch.cuda.is_available(), is_xpu_available(), torch.backends.mps.is_available())):
logger.warning('torch.cuda.is_available() and is_xpu_available() returned False. This means that no GPU has been detected. Falling back to CPU mode.')
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shared.args.cpu = True
if shared.args.cpu:
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params['torch_dtype'] = torch.float32
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else:
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params['device_map'] = 'auto'
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if x := get_max_memory_dict():
params['max_memory'] = x
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if shared.args.load_in_4bit:
# See https://github.com/huggingface/transformers/pull/23479/files
# and https://huggingface.co/blog/4bit-transformers-bitsandbytes
quantization_config_params = {
'load_in_4bit': True,
'bnb_4bit_compute_dtype': eval("torch.{}".format(shared.args.compute_dtype)) if shared.args.compute_dtype in ["bfloat16", "float16", "float32"] else None,
'bnb_4bit_quant_type': shared.args.quant_type,
'bnb_4bit_use_double_quant': shared.args.use_double_quant,
'llm_int8_enable_fp32_cpu_offload': True
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}
params['quantization_config'] = BitsAndBytesConfig(**quantization_config_params)
elif shared.args.load_in_8bit:
if any((shared.args.auto_devices, shared.args.gpu_memory)):
params['quantization_config'] = BitsAndBytesConfig(load_in_8bit=True, llm_int8_enable_fp32_cpu_offload=True)
else:
params['quantization_config'] = BitsAndBytesConfig(load_in_8bit=True)
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if params.get('max_memory') is not None:
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with init_empty_weights():
model = LoaderClass.from_config(config, trust_remote_code=params.get('trust_remote_code'))
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model.tie_weights()
params['device_map'] = infer_auto_device_map(
model,
dtype=torch.int8,
max_memory=params.get('max_memory'),
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no_split_module_classes=model._no_split_modules
)
if shared.args.disk:
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params['offload_folder'] = shared.args.disk_cache_dir
if shared.args.disable_exllama or shared.args.disable_exllamav2:
try:
gptq_config = GPTQConfig(
bits=config.quantization_config.get('bits', 4),
disable_exllama=shared.args.disable_exllama,
disable_exllamav2=shared.args.disable_exllamav2,
)
params['quantization_config'] = gptq_config
logger.info(f'Loading with disable_exllama={shared.args.disable_exllama} and disable_exllamav2={shared.args.disable_exllamav2}.')
except:
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exc = traceback.format_exc()
logger.error('Failed to disable exllama. Does the config.json for this model contain the necessary quantization info?')
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print(exc)
if shared.args.compress_pos_emb > 1:
params['rope_scaling'] = {'type': 'linear', 'factor': shared.args.compress_pos_emb}
elif shared.args.alpha_value > 1:
params['rope_scaling'] = {'type': 'dynamic', 'factor': shared.args.alpha_value}
logger.info("TRANSFORMERS_PARAMS=")
pprint.PrettyPrinter(indent=4, sort_dicts=False).pprint(params)
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print()
model = LoaderClass.from_pretrained(path_to_model, **params)
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return model
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def llamacpp_loader(model_name):
from modules.llamacpp_model import LlamaCppModel
path = Path(f'{shared.args.model_dir}/{model_name}')
if path.is_file():
model_file = path
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else:
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model_file = sorted(Path(f'{shared.args.model_dir}/{model_name}').glob('*.gguf'))[0]
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logger.info(f"llama.cpp weights detected: \"{model_file}\"")
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model, tokenizer = LlamaCppModel.from_pretrained(model_file)
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return model, tokenizer
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def llamacpp_HF_loader(model_name):
from modules.llamacpp_hf import LlamacppHF
path = Path(f'{shared.args.model_dir}/{model_name}')
# Check if a HF tokenizer is available for the model
if all((path / file).exists() for file in ['tokenizer_config.json']):
logger.info(f'Using tokenizer from: \"{path}\"')
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else:
logger.error("Could not load the model because a tokenizer in Transformers format was not found.")
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return None, None
model = LlamacppHF.from_pretrained(model_name)
return model
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def AutoAWQ_loader(model_name):
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from awq import AutoAWQForCausalLM
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model_dir = Path(f'{shared.args.model_dir}/{model_name}')
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model = AutoAWQForCausalLM.from_quantized(
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quant_path=model_dir,
max_new_tokens=shared.args.max_seq_len,
trust_remote_code=shared.args.trust_remote_code,
fuse_layers=not shared.args.no_inject_fused_attention,
max_memory=get_max_memory_dict(),
batch_size=1,
safetensors=any(model_dir.glob('*.safetensors')),
)
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return model
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def AutoGPTQ_loader(model_name):
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import modules.AutoGPTQ_loader
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return modules.AutoGPTQ_loader.load_quantized(model_name)
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def ExLlamav2_loader(model_name):
from modules.exllamav2 import Exllamav2Model
model, tokenizer = Exllamav2Model.from_pretrained(model_name)
return model, tokenizer
def ExLlamav2_HF_loader(model_name):
from modules.exllamav2_hf import Exllamav2HF
return Exllamav2HF.from_pretrained(model_name)
def HQQ_loader(model_name):
from hqq.core.quantize import HQQBackend, HQQLinear
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from hqq.models.hf.base import AutoHQQHFModel
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logger.info(f"Loading HQQ model with backend: \"{shared.args.hqq_backend}\"")
model_dir = Path(f'{shared.args.model_dir}/{model_name}')
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model = AutoHQQHFModel.from_quantized(str(model_dir))
HQQLinear.set_backend(getattr(HQQBackend, shared.args.hqq_backend))
return model
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def TensorRT_LLM_loader(model_name):
from modules.tensorrt_llm import TensorRTLLMModel
model = TensorRTLLMModel.from_pretrained(model_name)
return model
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def get_max_memory_dict():
max_memory = {}
max_cpu_memory = shared.args.cpu_memory.strip() if shared.args.cpu_memory is not None else '99GiB'
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if shared.args.gpu_memory:
memory_map = list(map(lambda x: x.strip(), shared.args.gpu_memory))
for i in range(len(memory_map)):
max_memory[i] = f'{memory_map[i]}GiB' if not re.match('.*ib$', memory_map[i].lower()) else memory_map[i]
max_memory['cpu'] = f'{max_cpu_memory}GiB' if not re.match('.*ib$', max_cpu_memory.lower()) else max_cpu_memory
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# If --auto-devices is provided standalone, try to get a reasonable value
# for the maximum memory of device :0
elif shared.args.auto_devices:
if is_xpu_available():
total_mem = (torch.xpu.get_device_properties(0).total_memory / (1024 * 1024))
else:
total_mem = (torch.cuda.get_device_properties(0).total_memory / (1024 * 1024))
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suggestion = round((total_mem - 1000) / 1000) * 1000
if total_mem - suggestion < 800:
suggestion -= 1000
suggestion = int(round(suggestion / 1000))
logger.warning(f"Auto-assiging --gpu-memory {suggestion} for your GPU to try to prevent out-of-memory errors. You can manually set other values.")
max_memory[0] = f'{suggestion}GiB'
max_memory['cpu'] = f'{max_cpu_memory}GiB' if not re.match('.*ib$', max_cpu_memory.lower()) else max_cpu_memory
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return max_memory if len(max_memory) > 0 else None
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def clear_torch_cache():
gc.collect()
if not shared.args.cpu:
if is_xpu_available():
torch.xpu.empty_cache()
else:
torch.cuda.empty_cache()
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def unload_model():
shared.model = shared.tokenizer = None
shared.previous_model_name = shared.model_name
shared.model_name = 'None'
shared.lora_names = []
shared.model_dirty_from_training = False
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clear_torch_cache()
def reload_model():
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unload_model()
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shared.model, shared.tokenizer = load_model(shared.model_name)
def unload_model_if_idle():
global last_generation_time
logger.info(f"Setting a timeout of {shared.args.idle_timeout} minutes to unload the model in case of inactivity.")
while True:
shared.generation_lock.acquire()
try:
if time.time() - last_generation_time > shared.args.idle_timeout * 60:
if shared.model is not None:
logger.info("Unloading the model for inactivity.")
unload_model()
finally:
shared.generation_lock.release()
time.sleep(60)