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seed: 0
output_dir: './output' # path to save checkpoint/strategy
load_checkpoint: ''
src_strategy_path_or_dir: ''
auto_trans_ckpt: False # If true, auto transform load_checkpoint to load in distributed model
only_save_strategy: False
resume_training: False
run_mode: 'predict'
# trainer config
trainer:
type: CausalLanguageModelingTrainer
model_name: 'llama2_13b'
# if True, do evaluate during the training process. if false, do nothing.
# note that the task trainer should support _evaluate_in_training function.
do_eval: False
# runner config
runner_config:
epochs: 2
batch_size: 1
sink_mode: True
sink_size: 1
# eval dataset
eval_dataset: &eval_dataset
data_loader:
type: MindDataset
dataset_dir: ""
shuffle: False
input_columns: ["input_ids"]
num_parallel_workers: 8
python_multiprocessing: False
drop_remainder: False
repeat: 1
numa_enable: False
prefetch_size: 1
eval_dataset_task:
type: CausalLanguageModelDataset
dataset_config: *eval_dataset
use_parallel: False
# parallel context config
parallel:
parallel_mode: 3 # 0-data parallel, 1-semi-auto parallel, 2-auto parallel, 3-hybrid parallel
gradients_mean: False
enable_alltoall: False
full_batch: True
search_mode: "sharding_propagation"
enable_parallel_optimizer: False
strategy_ckpt_save_file: "./ckpt_strategy.ckpt"
parallel_optimizer_config:
gradient_accumulation_shard: False
parallel_optimizer_threshold: 64
# default parallel of device num = 16 for Atlas 800T A2
parallel_config:
data_parallel: 1
model_parallel: 2 # write npu num as much as you need to export
pipeline_stage: 1
use_seq_parallel: False
micro_batch_num: 16
vocab_emb_dp: False
gradient_aggregation_group: 4
# when model parallel is greater than 1, we can set micro_batch_interleave_num=2, that may accelerate the train process.
micro_batch_interleave_num: 1
# mindspore context init config
context:
mode: 1 #0--Graph Mode; 1--Pynative Mode
device_target: "Ascend"
max_call_depth: 10000
max_device_memory: "58GB"
save_graphs: False
save_graphs_path: "./graph"
device_id: 0
ascend_config:
precision_mode: "must_keep_origin_dtype"
# model config
model:
model_config:
type: LlamaConfig
batch_size: 1 # add for increase predict
seq_length: 4096
hidden_size: 5120
num_layers: 40
num_heads: 40
max_position_embedding: 4096
vocab_size: 32000
multiple_of: 256
rms_norm_eps: 1.0e-5
bos_token_id: 1
eos_token_id: 2
pad_token_id: 0
ignore_token_id: -100
compute_dtype: "float16"
layernorm_compute_type: "float16"
softmax_compute_type: "float16"
rotary_dtype: "float16"
param_init_type: "float16"
use_past: True
extend_method: "None" # support "None", "PI", "NTK"
use_flash_attention: True
block_size: 16
num_blocks: 512
is_dynamic: True
qkv_concat: True
offset: 0
checkpoint_name_or_path: ""
repetition_penalty: 1
max_decode_length: 512
top_k: 3
top_p: 1
do_sample: False
quantization_config:
quant_method: 'ptq'
weight_dtype: 'int8'
activation_dtype: 'int8'
kvcache_dtype: 'int8'
outliers_suppression: 'smooth'
modules_to_not_convert: ['lm_head', 'w2']
algorithm_args: {}
arch:
type: ParallelLlamaForCausalLM
processor:
return_tensors: ms
tokenizer:
unk_token: '<unk>'
bos_token: '<s>'
eos_token: '</s>'
pad_token: '<unk>'
type: LlamaTokenizer
type: LlamaProcessor
# metric
metric:
type: EmF1Metric
# wrapper cell config
runner_wrapper:
type: MFTrainOneStepCell
scale_sense:
type: DynamicLossScaleUpdateCell
loss_scale_value: 65536
scale_factor: 2
scale_window: 1000
use_clip_grad: True
eval_callbacks:
- type: ObsMonitor
auto_tune: False
filepath_prefix: './autotune'
autotune_per_step: 10
profile: False
profile_start_step: 1
profile_stop_step: 10
init_start_profile: False
profile_communication: False
profile_memory: True
layer_scale: False
layer_decay: 0.65
lr_scale_factor: 256
# aicc
remote_save_url: "Please input obs url on AICC platform."
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