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run_service.sh
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set -x
# export NCCL_PXN_DISABLE=1
# # export NCCL_DEBUG=INFO
# export NCCL_SOCKET_IFNAME=eth0
# export NCCL_IB_GID_INDEX=3
# export NCCL_IB_DISABLE=0
# export NCCL_NET_GDR_LEVEL=2
# export NCCL_IB_QPS_PER_CONNECTION=4
# export NCCL_IB_TC=160
# export NCCL_IB_TIMEOUT=22
# export NCCL_P2P=0
# export CUDA_DEVICE_MAX_CONNECTIONS=1
export PYTHONPATH=$PWD:$PYTHONPATH
# Select the model type
# The model is downloaded to a specified location on disk,
# or you can simply use the model's ID on Hugging Face,
# which will then be downloaded to the default cache path on Hugging Face.
export MODEL_TYPE="Flux"
# Configuration for different model types
# script, model_id, inference_step
declare -A MODEL_CONFIGS=(
["Flux"]="flux_service.py /cfs/dit/FLUX.1-schnell 4"
)
if [[ -v MODEL_CONFIGS[$MODEL_TYPE] ]]; then
IFS=' ' read -r SCRIPT MODEL_ID INFERENCE_STEP <<< "${MODEL_CONFIGS[$MODEL_TYPE]}"
export SCRIPT MODEL_ID INFERENCE_STEP
else
echo "Invalid MODEL_TYPE: $MODEL_TYPE"
exit 1
fi
mkdir -p ./results
for HEIGHT in 1024
do
for N_GPUS in 1;
do
TASK_ARGS="--height $HEIGHT --width $HEIGHT --no_use_resolution_binning"
PARALLEL_ARGS="--ulysses_degree 1 --ring_degree 1"
# By default, num_pipeline_patch = pipefusion_degree, and you can tune this parameter to achieve optimal performance.
# PIPEFUSION_ARGS="--num_pipeline_patch 8 "
# For high-resolution images, we use the latent output type to avoid runing the vae module. Used for measuring speed.
# OUTPUT_ARGS="--output_type latent"
# PARALLLEL_VAE="--use_parallel_vae"
# Another compile option is `--use_onediff` which will use onediff's compiler.
# COMPILE_FLAG="--use_torch_compile"
python ./examples/$SCRIPT \
--model $MODEL_ID \
$PARALLEL_ARGS \
$TASK_ARGS \
$PIPEFUSION_ARGS \
$OUTPUT_ARGS \
--num_inference_steps $INFERENCE_STEP \
--warmup_steps 0 \
--prompt "A small dog" \
$CFG_ARGS \
$PARALLLEL_VAE \
$COMPILE_FLAG
done
done