seed: 42
output_dir: './output' # path to save checkpoint/strategy
load_checkpoint: '' # can set in run_command --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: 'finetune'
load_ckpt_format: 'ckpt' # recommend use 'safetensors'

# trainer config
trainer:
  type: CausalLanguageModelingTrainer
  model_name: 'qwen2_32b'

# runner config
runner_config:
  epochs: 2
  batch_size: 1
  sink_mode: True
  sink_size: 1

# wrapper cell config
runner_wrapper:
  type: MFTrainOneStepCell
  use_clip_grad: True

# optimizer
optimizer:
  type: AdamW
  betas: [0.9, 0.95]
  eps: 1.e-8
  learning_rate: 1.e-6
  weight_decay: 0.1

# lr schedule
lr_schedule:
  type: CosineWithWarmUpLR
  learning_rate: 1.e-6
  lr_end: 1.e-7
  warmup_ratio: 0
  total_steps: -1 # -1 means it will load the total steps of the dataset

# dataset
train_dataset: &train_dataset
  data_loader:
    type: MindDataset
    dataset_dir: ""
    shuffle: False
  input_columns: ["input_ids", "target_ids", "attention_mask"]
  construct_args_key: ["input_ids", "labels"]
  num_parallel_workers: 8
  python_multiprocessing: False
  drop_remainder: True
  numa_enable: False
  prefetch_size: 1
train_dataset_task:
  type: CausalLanguageModelDataset
  dataset_config: *train_dataset

use_parallel: True
# parallel context config
parallel:
  parallel_mode: 1 # 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: True
  strategy_ckpt_save_file: "./ckpt_strategy.ckpt"
  parallel_optimizer_config:
    gradient_accumulation_shard: False
    parallel_optimizer_threshold: 64

# default parallel of device num = 8 for Atlas 800T A2
parallel_config:
  data_parallel: 2
  model_parallel: 8
  pipeline_stage: 2
  use_seq_parallel: True
  optimizer_shard: True  # optimizer_shard == enable_parallel_optimizer
  micro_batch_num: 128
  vocab_emb_dp: False
  gradient_aggregation_group: 8
# The size of micro_batch must be greater than or equal to stage_num(pipeline_stage).
# 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

# recompute config
recompute_config:
  recompute: True
  select_recompute: False
  parallel_optimizer_comm_recompute: False
  mp_comm_recompute: False
  recompute_slice_activation: False

# callbacks
callbacks:
  - type: MFLossMonitor
  - type: CheckpointMonitor
    prefix: "qwen2"
    checkpoint_format: "ckpt" # recommend use 'safetensors'
    save_checkpoint_steps: 5000
    keep_checkpoint_max: 1
    integrated_save: False

# mindspore context init config
context:
  jit_config:
    jit_level: "O1"
  memory_optimize_level: "O0"
  mode: 0 #0--Graph Mode; 1--Pynative Mode
  device_target: "Ascend"
  max_call_depth: 10000
  max_device_memory: "57GB"
  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
    seq_length: 32768
    hidden_size: 5120
    num_layers: 64
    num_heads: 40
    n_kv_heads: 8
    vocab_size: 152064
    intermediate_size: 27648
    qkv_has_bias: True
    rms_norm_eps: 1.0e-5
    theta: 1000000.0
    max_position_embedding: 131072
    emb_dropout_prob: 0.0
    eos_token_id: 151643
    pad_token_id: 151643
    compute_dtype: "bfloat16"
    layernorm_compute_type: "float32"
    softmax_compute_type: "float32"
    rotary_dtype: "float16" # for stable training, suggest configuring float32
    param_init_type: "float32"
    use_flash_attention: True
    use_past: False
    fine_grain_interleave: 1
    offset: 0
    checkpoint_name_or_path: ""
    repetition_penalty: 1
    max_decode_length: 2048
    top_k: 0
    top_p: 0.8
    do_sample: False
    compute_in_2d: True
    is_dynamic: False
    qkv_concat: True
    # configuration items copied from Qwen
    rotary_pct: 1.0
    rotary_emb_base: 1000000
    kv_channels: 128

  arch:
    type: LlamaForCausalLM