| #!/usr/bin/bash |
|
|
| export HF_HOME="/root/workspace/huggingface_cache" |
|
|
| export HF_ENDPOINT=https://hf-mirror.com |
| |
|
|
| params="" |
| if [ $# -ne 0 ]; then |
| params="$*" |
| fi |
|
|
| |
| |
| |
| NNODE=${NNODE:-"1"} |
| NGPU=${NGPU:-"4"} |
| DEVICES=${DEVICES:-"0,1,2,3"} |
|
|
| LOG_RANK=${LOG_RANK:-0} |
|
|
| if [[ -z "${MASTER_ADDR}" ]]; then |
| export MASTER_ADDR="localhost" |
| fi |
| if [[ -z "${MASTER_PORT}" ]]; then |
| export MASTER_PORT="0" |
| fi |
|
|
| : ' |
| Usage: |
| |
| bash train.sh -h |
| |
| Training a 340M model: |
| |
| NNODE=1 NGPU=8 LOG_RANK=0 bash train.sh \ |
| --job.config_file flame/models/fla.toml \ |
| --job.dump_folder exp/transformer-340M-10B/batch32.seqlen2048.warmup1024.update1.steps20480.lr3e-4 \ |
| --model.config configs/transformer_340M.json \ |
| --model.tokenizer_path fla-hub/transformer-1.3B-100B \ |
| --optimizer.name AdamW \ |
| --optimizer.eps 1e-15 \ |
| --optimizer.lr 3e-4 \ |
| --lr_scheduler.warmup_steps 1024 \ |
| --lr_scheduler.lr_min 0.1 \ |
| --lr_scheduler.decay_type cosine \ |
| --training.batch_size 32 \ |
| --training.seq_len 2048 \ |
| --training.gradient_accumulation_steps 1 \ |
| --training.steps 20480 \ |
| --training.max_norm 1.0 \ |
| --training.skip_nan_inf \ |
| --training.dataset HuggingFaceFW/fineweb-edu \ |
| --training.dataset_name default \ |
| --training.dataset_split train \ |
| --training.streaming \ |
| --training.num_workers 32 \ |
| --training.prefetch_factor 2 \ |
| --training.seed 42 \ |
| --training.compile \ |
| --training.tensor_parallel_degree 1 \ |
| --training.disable_loss_parallel \ |
| --checkpoint.interval 2048 \ |
| --checkpoint.load_step -1 \ |
| --metrics.log_freq 1 |
| ' |
|
|
| echo "Launching training..." |
|
|
| set -x |
| path=$(grep -oP '(?<=--job.dump_folder )[^ ]+' <<< "$params") |
| steps=$(grep -oP '(?<=--training.steps )[^ ]+' <<< "$params") |
| config=$(grep -oP '(?<=--model.config )[^ ]+' <<< "$params") |
| tokenizer=$(grep -oP '(?<=--model.tokenizer_path )[^ ]+' <<< "$params") |
| model=$( |
| python -c "import fla, sys; from transformers import AutoConfig; print(AutoConfig.from_pretrained(sys.argv[1]).to_json_string())" "$config" | jq -r '.model_type' |
| ) |
|
|
| mkdir -p $path |
| cp * $path |
| cp -r configs $path |
| cp -r flame $path |
| cp -r 3rdparty/flash-linear-attention/fla $path |
| cp -r 3rdparty/torchtitan/torchtitan $path |
|
|
| |
| |
| |
| |
| if [ "$date" == "" ]; then |
| date=$(date +%Y%m%d%H%M) |
| fi |
| RUN_NAME="$model-$(basename $path)" |
| RUN_ID="$RUN_NAME-$date" |
|
|
| export WANDB_RESUME=allow |
| if [[ -z "${WANDB_PROJECT}" ]]; then |
| export WANDB_PROJECT="fla" |
| fi |
| if [[ -z "${WANDB_NAME}" ]]; then |
| export WANDB_NAME="$RUN_NAME" |
| fi |
| if [[ -z "${WANDB_RUN_ID}" ]]; then |
| export WANDB_RUN_ID="$RUN_ID" |
| fi |
|
|
| CUDA_VISIBLE_DEVICES=${DEVICES} \ |
| PYTORCH_CUDA_ALLOC_CONF="expandable_segments:True" \ |
| |
| torchrun --nnodes=${NNODE} \ |
| --nproc_per_node=${NGPU} \ |
| --rdzv_backend c10d \ |
| --rdzv_endpoint "${MASTER_ADDR}:${MASTER_PORT}" \ |
| --local-ranks-filter ${LOG_RANK} \ |
| --role rank \ |
| --tee 3 \ |
| --log-dir $path/logs \ |
| -m flame.train \ |
| $params |
|
|
| echo "TRAINING DONE!" |
| echo "Converting the DCP checkpoints to HF format..." |
|
|
| python -m flame.utils.convert_dcp_to_hf \ |
| --path $path \ |
| --step $steps \ |
| --config $config \ |
| --tokenizer $tokenizer |
|
|
| echo "RUNNING DONE!" |
|
|