| name | minicpm5-finetune-xtuner |
| description | Fine-tune MiniCPM5-1B with xtuner (mmengine config-driven SFT). Use when the user mentions "xtuner", "mmengine", InternLM's training framework, or wants config-file-driven training. |
Fine-tune MiniCPM5-1B with xtuner
mmengine config-driven SFT. Uses Python config files (not YAML) and integrates with mmengine's runner / hook system.
Required input
| Var | Example | Default |
|---|
BASE_MODEL | openbmb/MiniCPM5-1B | required |
DATA | path to messages-format jsonl | required |
WORK_DIR | ./runs/minicpm5_xtuner | required |
Steps
1. Install (once)
pip install "xtuner==0.2.0"
pip install --force-reinstall opencv-python-headless
pip uninstall -y opencv-python
2. Save the config — ${WORK_DIR}/minicpm5_lora.py
import torch
from datasets import load_dataset
from mmengine.dataset import DefaultSampler
from mmengine.hooks import (CheckpointHook, DistSamplerSeedHook, IterTimerHook,
LoggerHook, ParamSchedulerHook)
from mmengine.optim import AmpOptimWrapper, CosineAnnealingLR, LinearLR
from peft import LoraConfig
from torch.optim import AdamW
from transformers import AutoModelForCausalLM, AutoTokenizer
from xtuner.dataset import process_hf_dataset
from xtuner.dataset.collate_fns import default_collate_fn
from xtuner.dataset.map_fns import openai_map_fn, template_map_fn_factory
from xtuner.engine.hooks import DatasetInfoHook
from xtuner.engine.runner import TrainLoop
from xtuner.model import SupervisedFinetune
from xtuner.utils import PROMPT_TEMPLATE
pretrained_model_name_or_path = "${BASE_MODEL}"
data_path = "${DATA}"
prompt_template = PROMPT_TEMPLATE.qwen_chat
max_length = 2048
batch_size = 4
accumulative_counts = 4
max_epochs = 2
lr = 2e-4
warmup_ratio = 0.03
tokenizer = dict(type=AutoTokenizer.from_pretrained,
pretrained_model_name_or_path=pretrained_model_name_or_path,
trust_remote_code=False, padding_side="right")
model = dict(
type=SupervisedFinetune, use_varlen_attn=False,
llm=dict(type=AutoModelForCausalLM.from_pretrained,
pretrained_model_name_or_path=pretrained_model_name_or_path,
trust_remote_code=False, torch_dtype=torch.bfloat16),
lora=dict(type=LoraConfig, r=16, lora_alpha=32, lora_dropout=0.05,
bias="none", task_type="CAUSAL_LM",
target_modules=["q_proj","k_proj","v_proj","o_proj","gate_proj","up_proj","down_proj"]),
)
train_dataset = dict(
type=process_hf_dataset,
dataset=dict(type=load_dataset, path="json", data_files=dict(train=data_path)),
tokenizer=tokenizer, max_length=max_length,
dataset_map_fn=openai_map_fn,
template_map_fn=dict(type=template_map_fn_factory, template=prompt_template),
remove_unused_columns=True, shuffle_before_pack=True,
pack_to_max_length=False, use_varlen_attn=False,
)
train_dataloader = dict(
batch_size=batch_size, num_workers=2,
dataset=train_dataset,
sampler=dict(type=DefaultSampler, shuffle=True),
collate_fn=dict(type=default_collate_fn, use_varlen_attn=False),
)
optim_wrapper = dict(
type=AmpOptimWrapper,
optimizer=dict(type=AdamW, lr=lr, betas=(0.9, 0.999), weight_decay=0),
clip_grad=dict(max_norm=1, error_if_nonfinite=False),
accumulative_counts=accumulative_counts, loss_scale="dynamic", dtype="bfloat16",
)
param_scheduler = [
dict(type=LinearLR, start_factor=1e-2,
by_epoch=True, begin=0, end=warmup_ratio * max_epochs, convert_to_iter_based=True),
dict(type=CosineAnnealingLR, eta_min=0.0, by_epoch=True,
begin=warmup_ratio * max_epochs, end=max_epochs, convert_to_iter_based=True),
]
train_cfg = dict(type=TrainLoop, max_epochs=max_epochs)
default_hooks = dict(
timer=dict(type=IterTimerHook),
logger=dict(type=LoggerHook, log_metric_by_epoch=False, interval=10),
param_scheduler=dict(type=ParamSchedulerHook),
checkpoint=dict(type=CheckpointHook, by_epoch=False, interval=200, max_keep_ckpts=2),
sampler_seed=dict(type=DistSamplerSeedHook),
)
custom_hooks = [dict(type=DatasetInfoHook, tokenizer=tokenizer)]
env_cfg = dict(cudnn_benchmark=False, mp_cfg=dict(mp_start_method="fork"), dist_cfg=dict(backend="nccl"))
log_level = "INFO"
load_from = None
resume = False
randomness = dict(seed=42, deterministic=False)
log_processor = dict(by_epoch=False)
🔑 PROMPT_TEMPLATE.qwen_chat is correct — that's the ChatML template. Do NOT use llama3_chat (which is <|start_header_id|>...<|eot_id|> and would corrupt every example).
🔑 start_factor=1e-2 for LinearLR — xtuner's default start_factor=1e-5 combined with convert_to_iter_based=True produces an effective LR of ~1e-9 (way too small).
3. Train — invoke train.py directly (not xtuner train)
CUDA_VISIBLE_DEVICES=0 python -m xtuner.tools.train ${WORK_DIR}/minicpm5_lora.py --work-dir ${WORK_DIR}
🔑 Use python -m xtuner.tools.train directly — this keeps the command inside the active venv / conda env and avoids the CLI wrapper spawning a different python.
For multi-GPU, use the standard wrapper: NPROC_PER_NODE=8 xtuner train CONFIG --work-dir ....
4. Validate
05/17 09:33:59 - mmengine - INFO - Num train samples 200
05/17 09:34:00 - mmengine - INFO - train example:
<s><|im_start|>system
你是 ...<|im_end|>
<|im_start|>user
...<|im_end|>
<|im_start|>assistant
...<|im_end|>
Iter(train) [10/100] loss: 4.10
Iter(train) [50/100] loss: 3.50
Saving checkpoint at 200 iterations
The chat template should resolve into proper <|im_start|>...<|im_end|> markers (visible from DatasetInfoHook output). Loss should decrease.
Convert pth → HF adapter
xtuner saves epoch_X.pth (mmengine format). Convert to PEFT adapter:
xtuner convert pth_to_hf ${WORK_DIR}/minicpm5_lora.py ${WORK_DIR}/iter_XXXX.pth ./adapter_hf
Then load with PEFT:
from peft import PeftModel
base = AutoModelForCausalLM.from_pretrained("openbmb/MiniCPM5-1B", torch_dtype=torch.bfloat16, device_map="auto")
model = PeftModel.from_pretrained(base, "./adapter_hf").eval()
Common pitfalls
libGL.so.1: cannot open shared object file: replace opencv-python → opencv-python-headless (see install step).
xtuner train hangs without logs: invoke train.py directly (see step 3).
Failed to import mmengine.runner: ALLOWED_LAYER_TYPES: transformers too new. Pin transformers==4.57.x.
- Loss flat: scheduler LR underestimated. Use
start_factor=1e-2 (see config above).
Reference
docs/finetune/xtuner.md