deploy.py 36.6 KB
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# Copyright (c) OpenMMLab. All rights reserved.
import configparser
import json
import os
import os.path as osp
import re
import shutil
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import sys
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from pathlib import Path

import fire
import safetensors
import torch
from sentencepiece import SentencePieceProcessor

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import lmdeploy
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from lmdeploy.model import MODELS

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supported_formats = ['llama', 'hf', 'awq', 'qwen']
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def get_package_root_path():
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    import lmdeploy
    return Path(lmdeploy.__file__).parent
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def create_workspace(_path: str):
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    """Create a workspace.

    Args:
        _path (str): the path of the workspace
    Returns:
        bool: success or not
    """
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    try:
        if osp.exists(_path):
            shutil.rmtree(_path)
        os.makedirs(_path)
        print(f'create workspace in directory {_path}')
        return True
    except Exception as e:
        print(f'create workspace in {_path} failed: {e}')
        return False


def destroy_workspace(_path: str):
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    """destroy workspace.

    Args:
        _path(str): the path of the workspace
    Returns:
        bool: success or not
    """
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    try:
        shutil.rmtree(_path)
        print(f'destroy workspace in directory {_path}')
        return True
    except Exception as e:
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        print(f'destroy workspace in {_path} failed: {e}')
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        return False


def copy_triton_model_templates(_path: str):
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    """copy triton model templates to the specified path.

    Args:
        _path (str): the target path
    Returns:
        str: the path of the triton models
    """
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    try:
        cur_path = osp.abspath(__file__)
        dir_path = osp.dirname(cur_path)
        triton_models_path = osp.join(dir_path, 'triton_models')
        dst_path = osp.join(_path, 'triton_models')
        shutil.copytree(triton_models_path, dst_path, symlinks=True)
        print(f'copy triton model templates from "{triton_models_path}" to '
              f'"{dst_path}" successfully')
        shutil.copy(osp.join(dir_path, 'service_docker_up.sh'), _path)
        return dst_path
    except Exception as e:
        print(f'copy triton model templates from "{triton_models_path}"'
              f' to "{dst_path}" failed: {e}')
        return None


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def tokenizer_info_sp(model_path: str):
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    """Return the vocabulary size, bos token id and eos token id.

    Args:
        model_path (str): the tokenizer model's path
    Returns:
        tuple: vocabulary size, bos token id and eos token id
    """
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    assert os.path.isfile(model_path), model_path
    sp_model = SentencePieceProcessor(model_file=model_path)
    # BOS / EOS token IDs
    n_words = sp_model.vocab_size()
    bos_id = sp_model.bos_id()
    eos_id = sp_model.eos_id()
    return n_words, bos_id, eos_id


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def tokenizer_info_qwen(model_dir: str):
    n_words = 151851
    bos_id = 0
    eos_id = 151643
    return n_words, bos_id, eos_id


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def export(model_name: str,
           num_layer: int,
           norm_eps: float,
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           kv_head_num: int,
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           model_params: dict,
           tokenizer_path: str,
           out_dir: str,
           tp: int,
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           size_per_head: int = 128,
           group_size: int = 0,
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           weight_type: str = 'fp16',
           max_position_embeddings: int = 0,
           use_dynamic_ntk: int = 0,
           use_logn_attn: int = 0,
           tokenizer_info=tokenizer_info_sp):
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    """Export deploying information to a config file.

    Args:
        model_name (str): model's name
        num_layer (int): the number of transformer blocks
        norm_eps (float): norm epsilon
        model_params (dict): parameters of a model
        tokenizer_path (str): the tokenizer model's path
        out_dir (str): the path of the output directory
        tp (int): the number of tensor parallelism
        size_per_head (int): the dimension of each head
    """
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    out_dir = osp.join(out_dir, 'weights')
    os.makedirs(out_dir, exist_ok=True)

    def save_bin(param: torch.Tensor, name):
        print(name, param.shape)
        if param.dtype in [torch.float, torch.bfloat16]:
            param = param.half()
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        param.contiguous().cpu().numpy().tofile(osp.join(out_dir, name))
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    attn_bias = False
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    inter_size = 0
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    # reverse the splitting axes since the weights are transposed above
    for param_name, param_data in model_params.items():
        if param_name == 'tok_embeddings.weight':
            _vocab_size, dim = param_data.shape
            head_num = dim // size_per_head
        split_dim = None
        key, ext = param_name.split('.')[-2:]
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        if key == 'w_qkv' and ext == 'bias':
            attn_bias = True
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        copy = False
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        if key in ['w1', 'w3', 'w13']:
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            split_dim = -1
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            # TODO: move parameter extraction outside of the loop
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            if key == 'w1':
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                inter_size = max(inter_size, param_data.shape[-1])
            elif key == 'w13':
                inter_size = max(inter_size, param_data.shape[-1] // 2)

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        elif key == 'w_qkv':
            split_dim = -2
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        elif key in ['w2', 'wo']:
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            if ext in ['scales', 'zeros', 'bias']:
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                copy = True
            else:
                split_dim = 0
        if split_dim is not None:
            print(f'*** splitting {param_name}, shape={param_data.shape}, '
                  f'split_dim={split_dim}')
            assert param_data.shape[split_dim] % tp == 0
            split_size = param_data.shape[split_dim] // tp
            splits = torch.split(param_data, split_size, dim=split_dim)
            for i, split in enumerate(splits):
                prefix, ext = osp.splitext(param_name)
                save_bin(split, f'{prefix}.{i}{ext}')
        elif copy:
            print(f'### copying {param_name}, shape={param_data.shape}')
            copies = [param_data] * tp
            for i, copy in enumerate(copies):
                prefix, ext = osp.splitext(param_name)
                save_bin(copy, f'{prefix}.{i}{ext}')
        else:
            save_bin(param_data, param_name)

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    assert inter_size > 0

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    # export config and save it to {out_dir}/config.ini
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    model = MODELS.get(model_name)()
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    vocab_size, bos_id, eos_id = tokenizer_info(tokenizer_path)
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    assert _vocab_size >= vocab_size, \
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        f'different vocab size {_vocab_size} vs {vocab_size}'
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    cfg = dict(llama=dict(
        model_name=model_name,
        head_num=head_num,
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        kv_head_num=kv_head_num,
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        size_per_head=size_per_head,
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        vocab_size=_vocab_size,
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        num_layer=num_layer,
        rotary_embedding=size_per_head,
        inter_size=inter_size,
        norm_eps=norm_eps,
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        attn_bias=int(attn_bias),
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        start_id=bos_id,
        end_id=eos_id,
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        weight_type=weight_type,
        group_size=group_size,
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        # parameters for turbomind
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        max_batch_size=32,
        max_context_token_num=4,
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        session_len=model.session_len + 8,
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        step_length=1,
        cache_max_entry_count=48,
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        cache_chunk_size=1,
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        use_context_fmha=1,
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        quant_policy=0,
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        tensor_para_size=tp,
        # extra attention params
        max_position_embeddings=max_position_embeddings,
        use_dynamic_ntk=int(use_dynamic_ntk),
        use_logn_attn=int(use_logn_attn)))
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    config = configparser.ConfigParser()
    for section, key_values in cfg.items():
        config[section] = key_values

    config_path = osp.join(out_dir, 'config.ini')
    with open(config_path, 'w') as f:
        config.write(f)
    return True


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def merge_qkv(q: torch.Tensor, k: torch.Tensor, v: torch.Tensor, tp: int,
              dim: int):

    def reshape(x):
        return x.view(x.size(0), tp, -1) if dim == 2 else x.view(tp, -1)

    return torch.cat((reshape(q), reshape(k), reshape(v)), dim=-1)


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def deploy_llama(model_name: str, model_path: str, tokenizer_path: str,
                 triton_models_path: str, tp: int):
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    """Deploy a model with huggingface transformers' format.

    Args:
        model_name (str): the name of the to-be-deployed model
        model_path (str): the path of the directory where the model weight
          files are
        tokenizer_path (str): the path of the tokenizer model path
        triton_models_path (str): the path of the exported triton models
        tp (int): the number of tensor parallelism
    """
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    if osp.exists(tokenizer_path):
        shutil.copy(tokenizer_path,
                    osp.join(triton_models_path, 'tokenizer/tokenizer.model'))
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        with get_package_root_path() as root_path:
            shutil.copy(osp.join(root_path, 'turbomind/tokenizer.py'),
                        osp.join(triton_models_path, 'tokenizer'))
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    else:
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        print(f'tokenizer model {tokenizer_path} does not exist')
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        return False
    # read model arguments from params.json
    try:
        params_path = osp.join(model_path, 'params.json')
        with open(params_path) as f:
            model_arg = json.load(f)
            num_layer = model_arg['n_layers']
            norm_eps = model_arg['norm_eps']
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            head_num = model_arg.get('n_heads', 32)
            kv_head_num = model_arg.get('n_kv_heads', head_num)
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    except Exception as e:
        print(f'get "n_layers" and "norm_eps" from {params_path} failed: {e}')
        return False

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    # convert weights from llama to turbomind format
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    checkpoints = []
    for pattern in ['*.pth', '*.pt']:
        checkpoints += sorted(Path(model_path).glob(pattern))
    print(checkpoints)
    n_ckpt = len(checkpoints)
    model_params = {}

    def get_param(_name, _size):
        print(_name, _size)
        if _name not in model_params:
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            model_params[_name] = torch.zeros(_size,
                                              dtype=torch.float16,
                                              device='cpu')
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        return model_params[_name]

    for i, ckpt_path in enumerate(checkpoints):
        ckpt = torch.load(ckpt_path, map_location='cpu')
        for param_name, param_data in ckpt.items():
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            key, ext = param_name.split('.')[-2:]
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            # column-parallel
            if key in ['w1', 'w3', 'wq', 'wk', 'wv', 'output']:
                size = param_data.size(0)
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                if ext == 'weight':
                    param = get_param(
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                        param_name,
                        [size * n_ckpt, param_data.size(1)])
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                    param.data[size * i:size * (i + 1), :] = param_data
                else:  # bias
                    param = get_param(param_name, [size * n_ckpt])
                    param.data[size * i:size * (i + 1)] = param_data
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            # row-parallel
            elif key in ['w2', 'wo', 'tok_embeddings']:
                size = param_data.size(-1)
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                if ext == 'weight':
                    param = get_param(param_name,
                                      [param_data.size(0), size * n_ckpt])
                    param.data[:, size * i:size * (i + 1)] = param_data
                else:  # bias
                    param = get_param(param_name, [size])
                    param.data = param_data
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            elif i == 0:
                param = get_param(param_name, param_data.size())
                param.data = param_data
        del ckpt

    for name, param in model_params.items():
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        # transpose all weights as TurboMind is expecting column-major
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        # weights: (output_dims, input_dims) -> (input_dims, output_dims)
        key = name.split('.')[-2]
        if key in ['w1', 'w3', 'wq', 'wk', 'wv', 'w2', 'wo']:
            param.data = param.data.t()

    # concat qkv projection
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    for t in ['weight', 'bias']:
        for i in range(1000):
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            _qkv = [
                f'layers.{i}.attention.{k}.{t}' for k in ['wq', 'wk', 'wv']
            ]
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            try:
                qkv = tuple(map(model_params.pop, _qkv))
            except KeyError:
                break
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            # concat by heads
            qkv = merge_qkv(*qkv, tp, dim=2 if t == 'weight' else 1)
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            print(f'layers.{i}.attention.w_qkv.{t}', qkv.shape)
            model_params[f'layers.{i}.attention.w_qkv.{t}'] = qkv
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    assert i == 0 or num_layer == i, f'miss matched layers: {num_layer} vs {i}'
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    return export(model_name, num_layer, norm_eps, kv_head_num, model_params,
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                  tokenizer_path, triton_models_path, tp)


def permute(x: torch.Tensor):
    SIZE_PER_HEAD = 128
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    if x.shape[-1] > 1:
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        dim = x.shape[-1]
        n_heads = dim // SIZE_PER_HEAD
        return x.view(-1, n_heads, 2,
                      dim // n_heads // 2).transpose(2, 3).reshape(-1, dim)
    else:  # scales, zeros
        dim = x.shape[0]
        n_heads = dim // SIZE_PER_HEAD
        return x.view(n_heads, 2, dim // n_heads // 2,
                      1).transpose(1, 2).reshape(dim, 1)


def deploy_hf(model_name: str, model_path: str, tokenizer_path: str,
              triton_models_path: str, tp: int):
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    """Deploy a model with huggingface transformers' format.

    Args:
        model_name (str): the name of the to-be-deployed model
        model_path (str): the path of the directory where the model weight
          files are
        tokenizer_path (str): the path of the tokenizer model path
        triton_models_path (str): the path of the exported triton models
        tp (int): the number of tensor parallelism
    """
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    if tokenizer_path is None:
        tokenizer_path = osp.join(model_path, 'tokenizer.model')
    if osp.exists(tokenizer_path):
        shutil.copy(tokenizer_path,
                    osp.join(triton_models_path, 'tokenizer/tokenizer.model'))
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        for _file in os.listdir(model_path):
            if _file.endswith('.json') or _file.endswith('.py'):
                json_path = osp.join(model_path, _file)
                shutil.copy(json_path,
                            osp.join(triton_models_path, 'tokenizer', _file))
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        with get_package_root_path() as root_path:
            shutil.copy(osp.join(root_path, 'turbomind/tokenizer.py'),
                        osp.join(triton_models_path, 'tokenizer'))
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    else:
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        print(f'tokenizer model {tokenizer_path} does not exist')
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        exit(-1)

    # read model arguments from params.json
    try:
        params_path = osp.join(model_path, 'config.json')
        with open(params_path) as f:
            model_arg = json.load(f)
            num_layer = model_arg['num_hidden_layers']
            norm_eps = model_arg['rms_norm_eps']
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            if 'num_key_value_heads' in model_arg:
                kv_head_num = model_arg['num_key_value_heads']
            else:
                kv_head_num = model_arg['num_attention_heads']
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    except Exception as e:
        print(f'get "num_hidden_layers" and "rms_norm_eps" from '
              f'{params_path} failed: {e}')
        return False

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    # convert weights from hf to turbomind
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    model_params = {}

    _qweight = 'weight'
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    _suffixes = [_qweight, 'bias']
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    _files = [file for file in os.listdir(model_path) if file.endswith('.bin')]
    _files = sorted(_files)
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    print(_files)
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    _params = {}
    for _file in _files:
        _tmp = torch.load(osp.join(model_path, _file), map_location='cpu')
        _params.update(_tmp)

    def get_tensor(name):
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        """return tensor according its name."""
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        return _params[name]

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    def get_tensor_transposed(name: str):
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        """return a transposed tensor according its name."""
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        if name not in _params and name.find('bias'):
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            return None
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        return _params[name].t()
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    w_pack = False
    if 'model.layers.0.self_attn.W_pack.weight' in _params:
        w_pack = True
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    for i in range(1000):
        try:
            # attention weights
            for suffix in _suffixes:
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                if w_pack:
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                    _qkvo = [
                        f'model.layers.{i}.self_attn.{t}'
                        for t in ['W_pack', 'o_proj']
                    ]
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                    qkv, o = map(get_tensor_transposed,
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                                 map(('{}.' + suffix).format, _qkvo))
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                    if qkv is None:
                        continue
                    _shape = qkv.shape[1] // 3
                    _qkv = torch.split(qkv, [_shape, _shape, _shape], dim=1)
                    q = _qkv[0]
                    k = _qkv[1]
                    v = _qkv[2]

                else:
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                    _qkvo = [
                        f'model.layers.{i}.self_attn.{t}_proj' for t in 'qkvo'
                    ]
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                    q, k, v, o = map(get_tensor_transposed,
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                                     map(('{}.' + suffix).format, _qkvo))
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                if q is None:
                    continue
                # q, k has different layout for fb & hf, convert to fb's
                # layout
                q = permute(q)
                k = permute(k)
                if suffix == _qweight:  # weight, qweight
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                    qkv = merge_qkv(q, k, v, tp, dim=2)
                    print(suffix, qkv.shape)
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                else:  # scales, zeros, bias
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                    qkv = merge_qkv(q, k, v, tp, dim=1)
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                    print(suffix, qkv.shape)
                for k, v in [('w_qkv', qkv), ('wo', o)]:
                    model_params[f'layers.{i}.attention.{k}.{suffix}'] = v
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            # ffn weights
            _w123 = [
                f'model.layers.{i}.mlp.{t}_proj'
                for t in ['gate', 'down', 'up']
            ]
            for suffix in _suffixes:
                w1, w2, w3 = map(get_tensor_transposed,
                                 map(('{}.' + suffix).format, _w123))
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                if w1 is None:
                    continue
                if suffix in ['scales', 'zeros', 'bias']:
                    w1, w2, w3 = map(lambda x: x.squeeze(dim=-1), [w1, w2, w3])
                for k, v in [('w1', w1), ('w2', w2), ('w3', w3)]:
                    model_params[f'layers.{i}.feed_forward.{k}.{suffix}'] = v
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            other = [('attention_norm.weight', 'input_layernorm.weight'),
                     ('ffn_norm.weight', 'post_attention_layernorm.weight')]
            for ft, hf in other:
                model_params[f'layers.{i}.' +
                             ft] = get_tensor(f'model.layers.{i}.' + hf)
        except safetensors.SafetensorError:
            break
        except KeyError:
            break

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    assert num_layer == i, f'miss matched layers: {num_layer} vs {i}'
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    other = [('tok_embeddings.weight', 'model.embed_tokens.weight'),
             ('norm.weight', 'model.norm.weight'),
             ('output.weight', 'lm_head.weight')]
    for ft, hf in other:
        model_params[ft] = get_tensor(hf)

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    return export(model_name, num_layer, norm_eps, kv_head_num, model_params,
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                  tokenizer_path, triton_models_path, tp)
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def deploy_awq(model_name: str, model_path: str, tokenizer_path: str,
               triton_models_path: str, tp: int, quant_path: str,
               group_size: int):
    """Deploy a model with huggingface transformers' format.

    Args:
        model_name (str): the name of the to-be-deployed model
        model_path (str): the path of the directory where the model weight
          files are
        tokenizer_path (str): the path of the tokenizer model path
        triton_models_path (str): the path of the exported triton models
        tp (int): the number of tensor parallelism
        quant_path (str): path of the quantized model, which can be None
        group_size (int): a parameter used in AWQ to quantize fp16 weights
            to 4 bits
    """
    if tokenizer_path is None:
        tokenizer_path = osp.join(model_path, 'tokenizer.model')
    if osp.exists(tokenizer_path):
        shutil.copy(tokenizer_path,
                    osp.join(triton_models_path, 'tokenizer/tokenizer.model'))
        for _file in os.listdir(model_path):
            if _file.endswith('.json') or _file.endswith('.py'):
                json_path = osp.join(model_path, _file)
                shutil.copy(json_path,
                            osp.join(triton_models_path, 'tokenizer', _file))
        with get_package_root_path() as root_path:
            shutil.copy(osp.join(root_path, 'turbomind/tokenizer.py'),
                        osp.join(triton_models_path, 'tokenizer'))
    else:
        print(f'tokenizer model {tokenizer_path} does not exist')
        exit(-1)

    # read model arguments from params.json
    try:
        params_path = osp.join(model_path, 'config.json')
        with open(params_path) as f:
            model_arg = json.load(f)
            num_layer = model_arg['num_hidden_layers']
            norm_eps = model_arg['rms_norm_eps']
            if 'num_key_value_heads' in model_arg:
                kv_head_num = model_arg['num_key_value_heads']
            else:
                kv_head_num = model_arg['num_attention_heads']
    except Exception as e:
        print(f'get "num_hidden_layers" and "rms_norm_eps" from '
              f'{params_path} failed: {e}')
        return False

    # convert weights from hf to turbomind
    if quant_path is None:
        _files = [
            osp.join(model_path, file) for file in os.listdir(model_path)
            if file.endswith('.bin')
        ]
        _files = sorted(_files)
    else:
        _files = [quant_path]

    model_params = {}

    _params = {}
    for _file in _files:
        _tmp = torch.load(_file, map_location='cpu')
        _params.update(_tmp)

    def get_tensor(name):
        """return tensor according its name."""
        return _params[name].cuda().contiguous()

    # import _turbomind as _tm
    # TODO: find another way import _turbomind
    lmdeploy_dir = osp.split(lmdeploy.__file__)[0]
    sys.path.append(osp.join(lmdeploy_dir, 'lib'))
    import _turbomind as _tm  # noqa: E402

    def transpose_qk(src: torch.Tensor):
        assert src.is_contiguous()
        dst = torch.zeros_like(src)
        _tm.transpose_qk_s4_k_m8(src, dst,
                                 src.size(-1) * 8, src.size(0), group_size)
        return dst

    def fuse_w1_w3(w1_qw: torch.Tensor, w1_qz: torch.Tensor,
                   w1_s: torch.Tensor, w3_qw: torch.Tensor,
                   w3_qz: torch.Tensor, w3_s: torch.Tensor):

        def fuse(a: torch.Tensor, b: torch.Tensor):
            ab = torch.cat((a, b)).contiguous()
            _ab = torch.zeros_like(ab)
            _tm.fuse_w1_w3_s4_k_m8(ab, _ab, a.size(-1) * 8, a.size(0))
            return _ab.view(a.size(0), -1)

        w13_qw = fuse(w1_qw, w3_qw)
        w13_qz = fuse(w1_qz, w3_qz)

        w13_s = torch.cat((w1_s, w3_s)).view(2, w1_s.size(0), -1)
        w13_s = w13_s.permute(1, 2, 0).contiguous().view(w1_s.size(0), -1)

        return w13_qw, w13_qz, w13_s

    def convert_s4(qw: torch.Tensor, qz: torch.Tensor, s: torch.Tensor,
                   group_size: int):
        assert qw.is_contiguous()
        assert qz.is_contiguous()
        assert s.is_contiguous()
        _qw = torch.zeros_like(qw)
        _sz = torch.zeros_like(s, dtype=torch.int32)
        _ws = torch.zeros_like(s)
        _tm.convert_s4_k_m8(_qw, _sz, _ws, qw, s, qz,
                            qw.size(-1) * 8, qw.size(0), group_size)
        return _qw, _sz

    attn_bias = False

    for i in range(num_layer):
        print(i)

        # attention weights
        q_qw = get_tensor(f'model.layers.{i}.self_attn.q_proj.qweight')
        k_qw = get_tensor(f'model.layers.{i}.self_attn.k_proj.qweight')
        v_qw = get_tensor(f'model.layers.{i}.self_attn.v_proj.qweight')
        o_qw = get_tensor(f'model.layers.{i}.self_attn.o_proj.qweight')

        q_qz = get_tensor(f'model.layers.{i}.self_attn.q_proj.qzeros')
        k_qz = get_tensor(f'model.layers.{i}.self_attn.k_proj.qzeros')
        v_qz = get_tensor(f'model.layers.{i}.self_attn.v_proj.qzeros')
        o_qz = get_tensor(f'model.layers.{i}.self_attn.o_proj.qzeros')

        q_s = get_tensor(f'model.layers.{i}.self_attn.q_proj.scales')
        k_s = get_tensor(f'model.layers.{i}.self_attn.k_proj.scales')
        v_s = get_tensor(f'model.layers.{i}.self_attn.v_proj.scales')
        o_s = get_tensor(f'model.layers.{i}.self_attn.o_proj.scales')

        try:
            q_b = get_tensor(f'model.layers.{i}.self_attn.q_proj.bias')
            k_b = get_tensor(f'model.layers.{i}.self_attn.k_proj.bias')
            v_b = get_tensor(f'model.layers.{i}.self_attn.v_proj.bias')
            o_b = get_tensor(f'model.layers.{i}.self_attn.o_proj.bias')
            attn_bias = True
        except:  # noqa: E722
            pass

        q_qw = transpose_qk(q_qw)
        k_qw = transpose_qk(k_qw)
        q_qz = transpose_qk(q_qz)
        k_qz = transpose_qk(k_qz)
        q_s = permute(q_s)
        k_s = permute(k_s)

        qkv_qw = merge_qkv(q_qw, k_qw, v_qw, tp, dim=2)
        qkv_qz = merge_qkv(q_qz, k_qz, v_qz, tp, dim=2)
        qkv_s = merge_qkv(q_s, k_s, v_s, tp, dim=2)

        qkv_qw, qkv_sz = convert_s4(qkv_qw, qkv_qz, qkv_s, group_size)

        model_params[f'layers.{i}.attention.w_qkv.qweight'] = qkv_qw
        model_params[f'layers.{i}.attention.w_qkv.scales_zeros'] = qkv_sz

        o_qw, o_sz = convert_s4(o_qw, o_qz, o_s, group_size)

        model_params[f'layers.{i}.attention.wo.qweight'] = o_qw
        model_params[f'layers.{i}.attention.wo.scales_zeros'] = o_sz

        if attn_bias:
            q_b = permute(q_b)
            k_b = permute(k_b)
            qkv_b = merge_qkv(q_b, k_b, v_b, tp, dim=1)
            model_params[f'layers.{i}.attention.w_qkv.bias'] = qkv_b
            model_params[f'layers.{i}.attention.wo.bias'] = o_b

        # ffn weights
        w1_qw = get_tensor(f'model.layers.{i}.mlp.gate_proj.qweight')
        w2_qw = get_tensor(f'model.layers.{i}.mlp.down_proj.qweight')
        w3_qw = get_tensor(f'model.layers.{i}.mlp.up_proj.qweight')

        w1_qz = get_tensor(f'model.layers.{i}.mlp.gate_proj.qzeros')
        w2_qz = get_tensor(f'model.layers.{i}.mlp.down_proj.qzeros')
        w3_qz = get_tensor(f'model.layers.{i}.mlp.up_proj.qzeros')

        w1_s = get_tensor(f'model.layers.{i}.mlp.gate_proj.scales')
        w2_s = get_tensor(f'model.layers.{i}.mlp.down_proj.scales')
        w3_s = get_tensor(f'model.layers.{i}.mlp.up_proj.scales')

        w13_qw, w13_qz, w13_s = fuse_w1_w3(w1_qw, w1_qz, w1_s, w3_qw, w3_qz,
                                           w3_s)

        w13_qw, w13_sz = convert_s4(w13_qw, w13_qz, w13_s, group_size)
        w2_qw, w2_sz = convert_s4(w2_qw, w2_qz, w2_s, group_size)

        model_params[f'layers.{i}.feed_forward.w13.qweight'] = w13_qw
        model_params[f'layers.{i}.feed_forward.w13.scales_zeros'] = w13_sz

        model_params[f'layers.{i}.feed_forward.w2.qweight'] = w2_qw
        model_params[f'layers.{i}.feed_forward.w2.scales_zeros'] = w2_sz

        # norm weights
        attn_norm = get_tensor(f'model.layers.{i}.input_layernorm.weight')
        ffn_norm = get_tensor(
            f'model.layers.{i}.post_attention_layernorm.weight')

        model_params[f'layers.{i}.attention_norm.weight'] = attn_norm
        model_params[f'layers.{i}.ffn_norm.weight'] = ffn_norm

    other = [('tok_embeddings.weight', 'model.embed_tokens.weight'),
             ('norm.weight', 'model.norm.weight'),
             ('output.weight', 'lm_head.weight')]
    for ft, hf in other:
        model_params[ft] = get_tensor(hf)

    return export(model_name,
                  num_layer,
                  norm_eps,
                  kv_head_num,
                  model_params,
                  tokenizer_path,
                  triton_models_path,
                  tp,
                  weight_type='int4',
                  group_size=group_size)


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def deploy_qwen(model_name: str, model_path: str, tokenizer_path: str,
                triton_models_path: str, tp: int):
    """Deploy a model with huggingface transformers' format.

    Args:
        model_name (str): the name of the to-be-deployed model
        model_path (str): the path of the directory where the model weight
          files are
        tokenizer_path (str): the path of the tokenizer model path
        triton_models_path (str): the path of the exported triton models
        tp (int): the number of tensor parallelism
        quant_path (str): path of the quantized model, which can be None
        group_size (int): a parameter used in AWQ to quantize fp16 weights
            to 4 bits
    """

    if osp.exists(model_path):
        shutil.copy(osp.join(model_path, 'qwen.tiktoken'),
                    osp.join(triton_models_path, 'tokenizer'))
        for _file in os.listdir(model_path):
            if _file.endswith('.json') or _file.endswith('.py'):
                json_path = osp.join(model_path, _file)
                shutil.copy(json_path,
                            osp.join(triton_models_path, 'tokenizer', _file))
        with get_package_root_path() as root_path:
            shutil.copy(osp.join(root_path, 'turbomind/tokenizer.py'),
                        osp.join(triton_models_path, 'tokenizer'))
    else:
        print(f'tokenizer model {tokenizer_path} does not exist')
        exit(-1)

    # read model arguments from params.json
    try:
        params_path = osp.join(model_path, 'config.json')
        with open(params_path) as f:
            config = json.load(f)
            num_layer = config['num_hidden_layers']
            norm_eps = config['layer_norm_epsilon']
            if 'num_key_value_heads' in config:
                kv_head_num = config['num_key_value_heads']
            else:
                kv_head_num = config['num_attention_heads']
            seq_length = config['seq_length']
            use_dynamic_ntk = config['use_dynamic_ntk']
            use_logn_attn = config['use_logn_attn']
    except Exception as e:
        print(f'get "num_hidden_layers" and "layer_norm_epsilon" from '
              f'{params_path} failed: {e}')
        return False

    # convert weights from hf to turbomind
    model_params = {}

    _files = [file for file in os.listdir(model_path) if file.endswith('.bin')]
    _files = sorted(_files)
    print(_files)

    _params = {}
    for _file in _files:
        _tmp = torch.load(osp.join(model_path, _file), map_location='cpu')
        _params.update(_tmp)

    def get_tensor(name, trans=True):
        """return a transposed tensor according its name."""
        if trans:
            return _params[name].cuda().t()
        else:
            return _params[name].cuda()

    for i in range(num_layer):
        print(i)

        # qkv weights
        qkv_w = get_tensor(f'transformer.h.{i}.attn.c_attn.weight')
        q_w, k_w, v_w = torch.split(qkv_w, qkv_w.size(-1) // 3, dim=-1)
        q_w, k_w = permute(q_w), permute(k_w)
        qkv_w = merge_qkv(q_w, k_w, v_w, tp, dim=2)
        model_params[f'layers.{i}.attention.w_qkv.weight'] = qkv_w

        # qkv bias
        qkv_b = get_tensor(f'transformer.h.{i}.attn.c_attn.bias')
        q_b, k_b, v_b = torch.split(qkv_b, qkv_b.size(-1) // 3)
        q_b, k_b = permute(q_b), permute(k_b)
        qkv_b = merge_qkv(q_b, k_b, v_b, tp, dim=1)
        model_params[f'layers.{i}.attention.w_qkv.bias'] = qkv_b

        # o weights
        o_w = get_tensor(f'transformer.h.{i}.attn.c_proj.weight')
        model_params[f'layers.{i}.attention.wo.weight'] = o_w
        model_params[f'layers.{i}.attention.wo.bias'] = torch.zeros_like(q_b)

        # ffn weights
        # ours: w2(silu(w1(x)) * w3(x))
        # qwen: c_proj(w1(x) * silu(w2(x)))
        w1 = get_tensor(f'transformer.h.{i}.mlp.w2.weight')
        w3 = get_tensor(f'transformer.h.{i}.mlp.w1.weight')
        w2 = get_tensor(f'transformer.h.{i}.mlp.c_proj.weight')
        model_params[f'layers.{i}.feed_forward.w1.weight'] = w1
        model_params[f'layers.{i}.feed_forward.w2.weight'] = w2
        model_params[f'layers.{i}.feed_forward.w3.weight'] = w3

        # norm weights
        attn_norm = get_tensor(f'transformer.h.{i}.ln_1.weight')
        ffn_norm = get_tensor(f'transformer.h.{i}.ln_2.weight')

        model_params[f'layers.{i}.attention_norm.weight'] = attn_norm
        model_params[f'layers.{i}.ffn_norm.weight'] = ffn_norm

    other = [('tok_embeddings.weight', 'transformer.wte.weight'),
             ('norm.weight', 'transformer.ln_f.weight'),
             ('output.weight', 'lm_head.weight')]
    for ft, hf in other:
        model_params[ft] = get_tensor(hf, trans=False)

    return export(model_name,
                  num_layer,
                  norm_eps,
                  kv_head_num,
                  model_params,
                  model_path,
                  triton_models_path,
                  tp,
                  max_position_embeddings=seq_length,
                  use_dynamic_ntk=use_dynamic_ntk,
                  use_logn_attn=use_logn_attn,
                  tokenizer_info=tokenizer_info_qwen)


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def pack_model_repository(workspace_path: str):
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    """package the model repository.

    Args:
        workspace_path: the path of workspace
    """
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    os.symlink(src='../../tokenizer',
               dst=osp.join(workspace_path, 'triton_models', 'preprocessing',
                            '1', 'tokenizer'))
    os.symlink(src='../../tokenizer',
               dst=osp.join(workspace_path, 'triton_models', 'postprocessing',
                            '1', 'tokenizer'))
    os.symlink(src='../../weights',
               dst=osp.join(workspace_path, 'triton_models', 'interactive',
                            '1', 'weights'))
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    model_repo_dir = osp.join(workspace_path, 'model_repository')
    os.makedirs(model_repo_dir, exist_ok=True)
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    os.symlink(src=osp.join('../triton_models/interactive'),
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               dst=osp.join(model_repo_dir, 'turbomind'))
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    os.symlink(src=osp.join('../triton_models/preprocessing'),
               dst=osp.join(model_repo_dir, 'preprocessing'))
    os.symlink(src=osp.join('../triton_models/postprocessing'),
               dst=osp.join(model_repo_dir, 'postprocessing'))
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def main(model_name: str,
         model_path: str,
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         model_format: str = None,
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         tokenizer_path: str = None,
         dst_path: str = './workspace',
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         tp: int = 1,
         quant_path: str = None,
         group_size: int = 0):
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    """deploy llama family models via turbomind.
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    Args:
        model_name (str): the name of the to-be-deployed model, such as
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            llama-7b, llama-13b, vicuna-7b and etc
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        model_path (str): the directory path of the model
        model_format (str): the format of the model, fb or hf. 'fb' stands for
            META's llama format, and 'hf' means huggingface format
        tokenizer_path (str): the path of tokenizer model
        dst_path (str): the destination path that saves outputs
        tp (int): the number of GPUs used for tensor parallelism
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        quant_path (str): path of the quantized model, which can be None
        group_size (int): a parameter used in AWQ to quantize fp16 weights
            to 4 bits
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    """
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    assert model_name in MODELS.module_dict.keys(), \
        f"'{model_name}' is not supported. " \
        f'The supported models are: {MODELS.module_dict.keys()}'
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    if model_format is None:
        model_format = 'qwen' if model_name == 'qwen-7b' else 'hf'

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    if model_format not in supported_formats:
        print(f'the model format "{model_format}" is not supported. '
              f'The supported format are: {supported_formats}')
        exit(-1)

    if model_format == 'llama' and tokenizer_path is None:
        print('The model is llama. Its tokenizer model path should be '
              'specified')
        exit(-1)

    if not create_workspace(dst_path):
        exit(-1)

    triton_models_path = copy_triton_model_templates(dst_path)
    if triton_models_path is None:
        exit(-1)

    if model_format == 'llama':
        res = deploy_llama(model_name, model_path, tokenizer_path,
                           triton_models_path, tp)
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        res = deploy_hf(model_name, model_path, tokenizer_path,
                        triton_models_path, tp)
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    elif model_format == 'awq':
        res = deploy_awq(model_name, model_path, tokenizer_path,
                         triton_models_path, tp, quant_path, group_size)
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    elif model_format == 'qwen':
        res = deploy_qwen(model_name, model_path, tokenizer_path,
                          triton_models_path, tp)
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    # update `tensor_para_size` in `triton_models/interactive/config.pbtxt`
    with open(osp.join(triton_models_path, 'interactive/config.pbtxt'),
              'a') as f:
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        param = \
            'parameters {\n  key: "tensor_para_size"\n  value: {\n    ' \
            'string_value: ' + f'"{tp}"\n' + '  }\n}\n' + \
            'parameters {\n  key: "model_name"\n  value: {\n    ' \
            'string_value: ' + f'"{model_name}"\n' + '  }\n}\n'
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        f.write(param)
    if not res:
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        print(f'deploy model "{model_name}" via turbomind failed')
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        destroy_workspace(dst_path)
        exit(-1)

    # pack model repository for triton inference server
    pack_model_repository(dst_path)

    # update the value of $TP in `service_docker_up.sh`
    file_path = osp.join(dst_path, 'service_docker_up.sh')
    with open(file_path, 'r') as f:
        content = f.read()
        content = re.sub('TP=1', f'TP={tp}', content)
    with open(file_path, 'w') as f:
        f.write(content)


if __name__ == '__main__':
    fire.Fire(main)