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1.5B_lora.yaml
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1.5B_lora.yaml
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# Config for multi-device LoRA finetuning in lora_finetune_distributed.py
# using a Qwen2 1.5B model
#
# This config assumes that you've run the following command before launching
# this run:
# tune download Qwen/Qwen2-1.5B-Instruct --output-dir /tmp/Qwen2-1.5B-Instruct
#
# To launch on 2 devices, run the following command from root:
# tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config qwen2/1.5B_lora
#
# You can add specific overrides through the command line. For example
# to override the checkpointer directory while launching training
# you can run:
# tune run --nnodes 1 --nproc_per_node 2 lora_finetune_distributed --config qwen2/1.5B_lora checkpointer.checkpoint_dir=<YOUR_CHECKPOINT_DIR>
#
# This config works best when the model is being fine-tuned on 2+ GPUs.
output_dir: /tmp/torchtune/qwen2_1_5B/lora # /tmp may be deleted by your system. Change it to your preference.
# Model Arguments
model:
_component_: torchtune.models.qwen2.lora_qwen2_1_5b
lora_attn_modules: ['q_proj', 'v_proj', 'output_proj']
apply_lora_to_mlp: True
lora_rank: 32 # higher increases accuracy and memory
lora_alpha: 64 # usually alpha=2*rank
lora_dropout: 0.0
tokenizer:
_component_: torchtune.models.qwen2.qwen2_tokenizer
path: /tmp/Qwen2-1.5B-Instruct/vocab.json
merges_file: /tmp/Qwen2-1.5B-Instruct/merges.txt
max_seq_len: null
checkpointer:
_component_: torchtune.training.FullModelHFCheckpointer
checkpoint_dir: /tmp/Qwen2-1.5B-Instruct
checkpoint_files: [
model.safetensors
]
recipe_checkpoint: null
output_dir: ${output_dir}
model_type: QWEN2
resume_from_checkpoint: False
# Dataset and Sampler
dataset:
_component_: torchtune.datasets.alpaca_cleaned_dataset
packed: False # True increases speed
seed: null
shuffle: True
batch_size: 2
# Optimizer and Scheduler
optimizer:
_component_: torch.optim.AdamW
fused: True
lr: 2e-5
lr_scheduler:
_component_: torchtune.training.lr_schedulers.get_cosine_schedule_with_warmup
num_warmup_steps: 100
loss:
_component_: torchtune.modules.loss.CEWithChunkedOutputLoss
# Training
epochs: 1
max_steps_per_epoch: null
gradient_accumulation_steps: 8 # Use to increase effective batch size
compile: False # torch.compile the model + loss, True increases speed + decreases memory
# Logging
metric_logger:
_component_: torchtune.training.metric_logging.DiskLogger
log_dir: ${output_dir}/logs
log_every_n_steps: 1
log_peak_memory_stats: True
# Environment
device: cuda
dtype: bf16
enable_activation_checkpointing: True # True reduces memory
enable_activation_offloading: False # True reduces memory
# Show case the usage of pytorch profiler
# Set enabled to False as it's only needed for debugging training
profiler:
_component_: torchtune.training.setup_torch_profiler
enabled: False
#Output directory of trace artifacts
output_dir: ${output_dir}/profiling_outputs
#`torch.profiler.ProfilerActivity` types to trace
cpu: True
cuda: True
#trace options passed to `torch.profiler.profile`
profile_memory: False
with_stack: False
record_shapes: True
with_flops: False
# `torch.profiler.schedule` options:
# wait_steps -> wait, warmup_steps -> warmup, active_steps -> active, num_cycles -> repeat
wait_steps: 5
warmup_steps: 5
active_steps: 2
num_cycles: 1