#!/bin/bash af3_input_json=$1 input_dir=$2 prediction_dir=$3 evaluation_dir=$4 gpu_id=$5 PYTHON_PATH="/opt/conda/bin/python" # convert af3 input data to model format $PYTHON_PATH ./preprocess.py --af3_input_json="$af3_input_json" --input_dir="$input_dir" # run inference export CUDA_VISIBLE_DEVICES=$gpu_id N_sample=5 N_step=200 N_cycle=10 # seed=42 seed=42,66,101,2024,8888 $PYTHON_PATH /algo/Protenix/runner/inference.py \ --seeds ${seed} \ --dump_dir ${prediction_dir} \ --input_json_path $input_dir/inputs.json \ --model.N_cycle ${N_cycle} \ --sample_diffusion.N_sample ${N_sample} \ --sample_diffusion.N_step ${N_step} \ --use_msa_server # Convert predictions to the general cif format, # and generate evaluation prediction_reference.csv in evaluation_dir $PYTHON_PATH ./postprocess.py --input_dir="$input_dir" --prediction_dir="$prediction_dir" --evaluation_dir="$evaluation_dir"