""" Creates LMDB files with extracted graph features from provided *.extxyz files for the S2EF task. """ import argparse import glob import multiprocessing as mp import os import pickle import random import sys import ase.io import lmdb import numpy as np import torch from tqdm import tqdm from ocpmodels.preprocessing import AtomsToGraphs def write_images_to_lmdb(mp_arg): a2g, db_path, samples, sampled_ids, idx, pid, args = mp_arg db = lmdb.open( db_path, map_size=1099511627776 * 2, subdir=False, meminit=False, map_async=True, ) pbar = tqdm( total=5000 * len(samples), position=pid, desc="Preprocessing data into LMDBs", ) for sample in samples: traj_logs = open(sample, "r").read().splitlines() xyz_idx = os.path.splitext(os.path.basename(sample))[0] traj_path = os.path.join(args.data_path, f"{xyz_idx}.extxyz") traj_frames = ase.io.read(traj_path, ":") for i, frame in enumerate(traj_frames): frame_log = traj_logs[i].split(",") sid = int(frame_log[0].split("random")[1]) fid = int(frame_log[1].split("frame")[1]) data_object = a2g.convert(frame) # add atom tags data_object.tags = torch.LongTensor(frame.get_tags()) data_object.sid = sid data_object.fid = fid # subtract off reference energy if args.ref_energy and not args.test_data: ref_energy = float(frame_log[2]) data_object.y -= ref_energy txn = db.begin(write=True) txn.put( f"{idx}".encode("ascii"), pickle.dumps(data_object, protocol=-1), ) txn.commit() idx += 1 sampled_ids.append(",".join(frame_log[:2]) + "\n") pbar.update(1) # Save count of objects in lmdb. txn = db.begin(write=True) txn.put("length".encode("ascii"), pickle.dumps(idx, protocol=-1)) txn.commit() db.sync() db.close() return sampled_ids, idx def main(args): xyz_logs = glob.glob(os.path.join(args.data_path, "*.txt")) if not xyz_logs: raise RuntimeError("No *.txt files found. Did you uncompress?") if args.num_workers > len(xyz_logs): args.num_workers = len(xyz_logs) # Initialize feature extractor. a2g = AtomsToGraphs( max_neigh=50, radius=6, r_energy=not args.test_data, r_forces=not args.test_data, r_fixed=True, r_distances=False, r_edges=args.get_edges, ) # Create output directory if it doesn't exist. os.makedirs(os.path.join(args.out_path), exist_ok=True) # Initialize lmdb paths db_paths = [ os.path.join(args.out_path, "data.%04d.lmdb" % i) for i in range(args.num_workers) ] # Chunk the trajectories into args.num_workers splits chunked_txt_files = np.array_split(xyz_logs, args.num_workers) # Extract features sampled_ids, idx = [[]] * args.num_workers, [0] * args.num_workers pool = mp.Pool(args.num_workers) mp_args = [ ( a2g, db_paths[i], chunked_txt_files[i], sampled_ids[i], idx[i], i, args, ) for i in range(args.num_workers) ] op = list(zip(*pool.imap(write_images_to_lmdb, mp_args))) sampled_ids, idx = list(op[0]), list(op[1]) # Log sampled image, trajectory trace for j, i in enumerate(range(args.num_workers)): ids_log = open( os.path.join(args.out_path, "data_log.%04d.txt" % i), "w" ) ids_log.writelines(sampled_ids[j]) def get_parser(): parser = argparse.ArgumentParser() parser.add_argument( "--data-path", help="Path to dir containing *.extxyz and *.txt files", ) parser.add_argument( "--out-path", help="Directory to save extracted features. Will create if doesn't exist", ) parser.add_argument( "--get-edges", action="store_true", help="Store edge indices in LMDB, ~10x storage requirement. Default: compute edge indices on-the-fly.", ) parser.add_argument( "--num-workers", type=int, default=1, help="No. of feature-extracting processes or no. of dataset chunks", ) parser.add_argument( "--ref-energy", action="store_true", help="Subtract reference energies" ) parser.add_argument( "--test-data", action="store_true", help="Is data being processed test data?", ) return parser if __name__ == "__main__": parser = get_parser() args = parser.parse_args() main(args)