Files
2026-07-13 13:18:33 +08:00

147 lines
5.7 KiB
Python

#!/usr/bin/env python3
# Copyright (c) Microsoft Corporation.
# SPDX-License-Identifier: Apache-2.0
# DeepSpeed Team
import base64
import os
from typing import Optional, Union
import hjson
import torch
from deepspeed.runtime.config_utils import dict_raise_error_on_duplicate_keys
_TP_MODEL_INIT_ARGS = None
def load_ds_config(config: Union[str, dict]) -> dict:
if isinstance(config, dict):
return config
if isinstance(config, str):
if os.path.exists(config):
return hjson.load(open(config, "r"), object_pairs_hook=dict_raise_error_on_duplicate_keys)
try:
config_decoded = base64.urlsafe_b64decode(config).decode('utf-8')
return hjson.loads(config_decoded)
except (UnicodeDecodeError, AttributeError, ValueError) as exc:
raise ValueError(
f"Expected a string path to an existing deepspeed config, or a dictionary or a valid base64. "
f"Received: {config}") from exc
raise ValueError(f"Expected a string path to an existing deepspeed config, or a dictionary or a valid base64. "
f"Received: {config}")
def record_tp_model_init_args(tp_size, dtype, tp_group, dist_module):
global _TP_MODEL_INIT_ARGS
new_args = {
"tp_size": tp_size,
"dtype": dtype,
"tp_group": tp_group,
}
if _TP_MODEL_INIT_ARGS is None:
_TP_MODEL_INIT_ARGS = new_args
return
if _TP_MODEL_INIT_ARGS["tp_size"] != tp_size or _TP_MODEL_INIT_ARGS["dtype"] != dtype:
raise ValueError("Conflicting tp_model_init arguments detected across multiple calls.")
existing_group = _TP_MODEL_INIT_ARGS.get("tp_group")
if existing_group is None and tp_group is None:
return
if (existing_group is None) != (tp_group is None):
raise ValueError("Conflicting tp_model_init arguments detected across multiple calls.")
existing_group_size = tp_group_world_size(existing_group, dist_module)
new_group_size = tp_group_world_size(tp_group, dist_module)
if existing_group_size != new_group_size:
raise ValueError("Conflicting tp_model_init arguments detected across multiple calls.")
def tp_group_world_size(tp_group, dist_module):
if tp_group is None or dist_module is None:
return None
return dist_module.get_world_size(group=tp_group)
def infer_config_dtype(config_dict: dict) -> Optional[torch.dtype]:
bf16_config = config_dict.get("bf16", {})
if isinstance(bf16_config, dict) and bf16_config.get("enabled", False):
return torch.bfloat16
fp16_config = config_dict.get("fp16", {})
if isinstance(fp16_config, dict) and fp16_config.get("enabled", False):
return torch.float16
return None
def merge_tp_model_init_into_config(config_dict: dict, mpu, mesh_param, dist_module):
if _TP_MODEL_INIT_ARGS is None:
return
tp_size = _TP_MODEL_INIT_ARGS["tp_size"]
dtype = _TP_MODEL_INIT_ARGS["dtype"]
tp_group = _TP_MODEL_INIT_ARGS["tp_group"]
if tp_group is not None and mpu is not None:
raise ValueError("tp_model_init provided tp_group; deepspeed.initialize must not receive mpu.")
if tp_group is None and mpu is None and mesh_param is None:
# Auto-create TP groups for compatibility with HF Trainer (mpu is not passed).
from deepspeed.utils import groups
groups._init_tp_mesh_device(tensor_model_parallel_size=tp_size)
tp_section = config_dict.get("tensor_parallel")
if tp_section is None:
tp_section = {}
config_dict["tensor_parallel"] = tp_section
config_autotp_size = tp_section.get("autotp_size")
if config_autotp_size is not None and config_autotp_size != tp_size:
raise ValueError(
f"Conflicting tensor_parallel.autotp_size in config ({config_autotp_size}) and tp_model_init ({tp_size}).")
if config_autotp_size is None:
tp_section["autotp_size"] = tp_size
tp_config = tp_section.get("tp") or {}
if not isinstance(tp_config, dict):
raise ValueError("tensor_parallel.tp must be a dict when provided.")
config_tp_size = tp_config.get("tp_size")
if config_tp_size is not None and config_tp_size != tp_size:
raise ValueError(
f"Conflicting tensor_parallel.tp.tp_size in config ({config_tp_size}) and tp_model_init ({tp_size}).")
if config_tp_size is None:
tp_config["tp_size"] = tp_size
if tp_group is not None:
config_tp_group = tp_config.get("tp_group")
if config_tp_group is not None and config_tp_group is not tp_group:
raise ValueError("Conflicting tensor_parallel.tp.tp_group in config and tp_model_init.")
tp_config["tp_group"] = tp_group
tp_group_size = tp_group_world_size(tp_group, dist_module)
if tp_group_size is not None and tp_group_size != tp_size:
raise ValueError(f"tp_model_init tp_size ({tp_size}) does not match tp_group size ({tp_group_size}).")
tp_section["tp"] = tp_config
config_dtype = infer_config_dtype(config_dict)
if config_dtype is not None and config_dtype != dtype:
raise ValueError(f"Conflicting dtype: config uses {config_dtype} but tp_model_init requested {dtype}.")
tp_dtype = tp_section.get("dtype")
if tp_dtype is not None:
if isinstance(tp_dtype, str):
tp_dtype_map = {
"fp16": torch.float16,
"bf16": torch.bfloat16,
"fp32": torch.float32,
}
tp_dtype_value = tp_dtype_map.get(tp_dtype.lower())
else:
tp_dtype_value = tp_dtype
if tp_dtype_value is not None and tp_dtype_value != dtype:
raise ValueError(f"Conflicting tensor_parallel.dtype in config ({tp_dtype}) and tp_model_init ({dtype}).")