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JOB_NAME = "1.8b_moe_train" | ||
DO_ALERT = False | ||
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SEQ_LEN = 2048 | ||
HIDDEN_SIZE = 1024 | ||
NUM_ATTENTION_HEAD = 16 | ||
MLP_RATIO = 1.5 | ||
NUM_LAYER = 24 | ||
VOCAB_SIZE = 92544 | ||
MULTIPLE_OF = 128 | ||
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MODEL_ONLY_FOLDER = "local:llm_ckpts/xxxx" | ||
# Ckpt folder format: | ||
# fs: 'local:/mnt/nfs/XXX' | ||
SAVE_CKPT_FOLDER = "local:llm_ckpts" | ||
LOAD_CKPT_FOLDER = "local:llm_ckpts/49" | ||
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# boto3 Ckpt folder format: | ||
# import os | ||
# BOTO3_IP = os.environ["BOTO3_IP"] # boto3 bucket endpoint | ||
# SAVE_CKPT_FOLDER = f"boto3:s3://model_weights.{BOTO3_IP}/internlm" | ||
# LOAD_CKPT_FOLDER = f"boto3:s3://model_weights.{BOTO3_IP}/internlm/snapshot/1/" | ||
CHECKPOINT_EVERY = 50 | ||
ckpt = dict( | ||
enable_save_ckpt=False, # enable ckpt save. | ||
save_ckpt_folder=SAVE_CKPT_FOLDER, # Path to save training ckpt. | ||
# load_ckpt_folder= dict(path=MODEL_ONLY_FOLDER, content=["model"], ckpt_type="normal"), | ||
load_ckpt_folder="local:llm_ckpts/", | ||
# 'load_ckpt_info' setting guide: | ||
# 1. the 'path' indicate ckpt path, | ||
# 2. the 'content‘ means what states will be loaded, support: "model", "sampler", "optimizer", "scheduler", "all" | ||
# 3. the ’ckpt_type‘ means the type of checkpoint to be loaded, support: "internevo", "llama", "hf_llama". | ||
load_ckpt_info=dict(path=MODEL_ONLY_FOLDER, content=("model",), ckpt_type="internevo"), | ||
# 'auto_resume' is designed to automatically load the latest checkpoint from 'save_ckpt_folder' when encountering | ||
# training interruptions/hangs caused by hardware failures, using a scheduling system (such as k8s/slurm) | ||
# with an automatic restart mechanism upon training reboot. | ||
# Please be aware that if `auto_resume` is not set (its default value is True), it will not load the checkpoint | ||
# path specified in `load_ckpt_info` by default. | ||
# If you want to initialize your model weights from another model, you must set `auto_resume` to False. | ||
# If you want to train from scratch, please set `auto_resume` to False and 'load_ckpt_info' to None. | ||
auto_resume=True, | ||
checkpoint_every=CHECKPOINT_EVERY, | ||
async_upload=True, # async ckpt upload. (only work for boto3 ckpt) | ||
async_upload_tmp_folder="/dev/shm/internlm_tmp_ckpt/", # path for temporarily files during asynchronous upload. | ||
oss_snapshot_freq=int(CHECKPOINT_EVERY / 2), # snapshot ckpt save frequency. | ||
) | ||
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TRAIN_FOLDER = None # "/path/to/dataset" | ||
VALID_FOLDER = None # "/path/to/dataset" | ||
data = dict( | ||
seq_len=SEQ_LEN, | ||
# micro_num means the number of micro_batch contained in one gradient update | ||
micro_num=4, | ||
# packed_length = micro_bsz * SEQ_LEN | ||
micro_bsz=2, | ||
# defaults to the value of micro_num | ||
valid_micro_num=4, | ||
# defaults to 0, means disable evaluate | ||
valid_every=5000, | ||
pack_sample_into_one=False, | ||
total_steps=5000, | ||
skip_batches="", | ||
# rampup_batch_size (str): A string with three space-separated integers representing the | ||
# starting batch size, the increment, and the number of steps between | ||
# each increment. For example, "192 24 8" means that the batch size (micro_num) | ||
# starts at 192 and increases by 24 every 8 steps. Defaults to None. | ||
# (IMPORTANT): The interval step size is 'micro_bsz'. | ||
rampup_batch_size="", | ||
# Datasets with less than 50 rows will be discarded | ||
min_length=50, | ||
train_folder=TRAIN_FOLDER, | ||
valid_folder=VALID_FOLDER, | ||
empty_cache_and_diag_interval=200, | ||
diag_outlier_ratio=1.1, | ||
) | ||
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grad_scaler = dict( | ||
fp16=dict( | ||
# the initial loss scale, defaults to 2**16 | ||
initial_scale=2**16, | ||
# the minimum loss scale, defaults to None | ||
min_scale=1, | ||
# the number of steps to increase loss scale when no overflow occurs | ||
growth_interval=1000, | ||
), | ||
# the multiplication factor for increasing loss scale, defaults to 2 | ||
growth_factor=2, | ||
# the multiplication factor for decreasing loss scale, defaults to 0.5 | ||
backoff_factor=0.5, | ||
# the maximum loss scale, defaults to None | ||
max_scale=2**24, | ||
# the number of overflows before decreasing loss scale, defaults to 2 | ||
hysteresis=2, | ||
) | ||
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hybrid_zero_optimizer = dict( | ||
# Enable low_level_optimzer overlap_communication | ||
overlap_sync_grad=False, | ||
overlap_sync_param=False, | ||
# bucket size for nccl communication params | ||
reduce_bucket_size=512 * 1024 * 1024, | ||
# grad clipping | ||
clip_grad_norm=1.0, | ||
) | ||
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loss = dict( | ||
label_smoothing=0, | ||
moe_loss_coeff=0.1, | ||
) | ||
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adam = dict( | ||
lr=1e-4, | ||
adam_beta1=0.9, | ||
adam_beta2=0.95, | ||
adam_beta2_c=0, | ||
adam_eps=1e-8, | ||
weight_decay=0.01, | ||
) | ||
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lr_scheduler = dict( | ||
total_steps=data["total_steps"], | ||
init_steps=0, # optimizer_warmup_step | ||
warmup_ratio=0.01, | ||
eta_min=1e-5, | ||
last_epoch=-1, | ||
) | ||
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beta2_scheduler = dict( | ||
init_beta2=adam["adam_beta2"], | ||
c=adam["adam_beta2_c"], | ||
cur_iter=-1, | ||
) | ||
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use_fp32_norm = False | ||
model = dict( | ||
checkpoint=False, # The proportion of layers for activation aheckpointing, the optional value are True/False/[0-1] | ||
num_attention_heads=NUM_ATTENTION_HEAD, | ||
embed_split_hidden=True, | ||
vocab_size=VOCAB_SIZE, | ||
embed_grad_scale=1, | ||
parallel_output=False, | ||
hidden_size=HIDDEN_SIZE, | ||
num_layers=NUM_LAYER, | ||
mlp_ratio=MLP_RATIO, | ||
apply_post_layer_norm=False, | ||
dtype="torch.bfloat16", # Support: "torch.float16", "torch.half", "torch.bfloat16", "torch.float32", "torch.tf32" | ||
norm_type="rmsnorm", | ||
layer_norm_epsilon=1e-5, | ||
use_flash_attn=True, | ||
multiple_of=MULTIPLE_OF, | ||
# Whether the odd and even columns of the query and key in the model are normally interleaved. | ||
# If it's True, the model's odd and even columns are normally ordered; if it's False, | ||
# it means that the model has prematurely concatenated all odd columns and even columns in front | ||
# and back, in order to improve the RoPE's computational efficiency. | ||
# Example: | ||
# qk_interleaved = True: q[-1] = [q1,q2,q3,q4,q5,q6,...], k[-1] = [k1,k2,k3,k4,k5,k6,...] | ||
# qk_interleaved = False: q[-1] = [q1,q3,q5,...,q2,q4,q6,...], k[-1] = [k1,k3,k5,...,k2,k4,k6,...] | ||
qk_interleaved=False, | ||
num_chunks=1, # if num_chunks > 1, interleaved pipeline scheduler is used. | ||
num_experts=16, | ||
moe_use_residual=False, | ||
moe_type="GShard", # Support: "GShard", "MegaBlock", "MegaBlock-D" | ||
) | ||
""" | ||
zero1 parallel (dict): | ||
1. size: int | ||
* if size <= 0, the size of the zero process group is equal to the size of the dp process group, | ||
so parameters will be divided within the range of dp. | ||
* if size == 1, zero is not used, and all dp groups retain the full amount of model parameters. | ||
* if size > 1 and size <= dp world size, the world size of zero is a subset of dp world size. | ||
For smaller models, it is usually a better choice to split the parameters within nodes with a setting <= 8. | ||
2. fsdp: bool, enable/disable torch's fully sharded data parallel, defaults to False. | ||
tensor parallel (dict): | ||
1. size: int, the size of tensor parallel. | ||
2. mode: str, the tensor parallel mode, should be in ['mtp', 'msp', 'fsp', 'isp'], | ||
defaults to 'mtp', means the pure megatron tensor parallel without sequence parallel. | ||
msp: megatron tensor parallel with sequence parallel, sequence parallel size = tensor parallel size. | ||
fsp: tensor parallel by flash-attn with sequence parallel, sequence parallel size = tensor parallel size. | ||
isp: customed intern sequence parallel without tensor parallel, can be used with weight parallel. | ||
pipeline parallel (dict): | ||
1. size: int, the size of pipeline parallel. | ||
2. interleaved_overlap: bool, enable/disable communication overlap when using interleaved pipeline scheduler, | ||
defaults to False. | ||
weight parallel (dict): | ||
1. size: int, the size of weight parallel. | ||
2. overlap: bool, enable/disable all_gather/reduce_scatter communication overlap, defaults to False. | ||
3. memory_pool: bool, enable/disable memory pool, defaults to False. | ||
""" | ||
parallel = dict( | ||
zero1=dict(size=-1, fsdp=False), | ||
tensor=dict(size=1, mode="mtp"), | ||
pipeline=dict(size=1, interleaved_overlap=True), | ||
weight=dict(size=1, overlap=True, memory_pool=True), | ||
) | ||
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cudnn_deterministic = False | ||
cudnn_benchmark = False | ||
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monitor = dict( | ||
# feishu alert configs | ||
alert=dict( | ||
enable_feishu_alert=DO_ALERT, | ||
feishu_alert_address=None, # feishu webhook to send alert message | ||
light_monitor_address=None, # light_monitor address to send heartbeat | ||
alert_file_path=f"llm_alter/{JOB_NAME}_alert.log", | ||
), | ||
tensorboard=dict( | ||
queue_max_length=10, | ||
), | ||
) | ||
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# custom moe impl configs | ||
# GShard MoE config | ||
# moe = dict( | ||
# top_k=2, | ||
# capacity_factor=1.0, | ||
# eval_capacity_factor=1.0, | ||
# min_capacity=4, | ||
# noisy_gate_policy=None, | ||
# drop_tokens=True, | ||
# use_rts=True, | ||
# use_fused_gating=False, | ||
# ) | ||
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# MegaBlock MoE config | ||
moe = dict( | ||
top_k=2, | ||
# capacity_factor=1.0, # only used in MegaBlock(non-dmoe) | ||
# drop_tokens=True, # only used in MegaBlock(non-dmoe) | ||
# parallel_mode="tensor", # only used in MegaBlock-D(dmoe), parallel_mode can be tensor or weight | ||
) | ||
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model_type = "INTERNLM_MoE" | ||
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# metric_dtype can be "fp32" or other string | ||
# only when set to "fp32" will use fp32 to calc in metrics | ||
# metric_dtype = "fp32" |
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