FAPM_demo / lavis /datasets /data_utils.py
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"""
Copyright (c) 2022, salesforce.com, inc.
All rights reserved.
SPDX-License-Identifier: BSD-3-Clause
For full license text, see the LICENSE file in the repo root or https://opensource.org/licenses/BSD-3-Clause
"""
import gzip
import logging
import os
import random as rnd
import tarfile
import zipfile
import decord
import webdataset as wds
import numpy as np
import torch
from torch.utils.data.dataset import IterableDataset, ChainDataset
from decord import VideoReader
from lavis.common.registry import registry
from lavis.datasets.datasets.base_dataset import ConcatDataset
from tqdm import tqdm
from Bio.Align import substitution_matrices
from Bio.Seq import Seq
import random
import math
import numpy as np
decord.bridge.set_bridge("torch")
MAX_INT = registry.get("MAX_INT")
def convert_blosum_to_prob(blosum62, temperature=1):
blosum_prob = {}
for alp in 'ARNDCQEGHILKMFPSTWYVBZX*':
aas, scores = [], []
for aa, score in blosum62[alp].items():
if score >= -1:
aas.append(aa)
scores.append(score)
scores_prob = [math.exp(score / temperature) for score in scores]
prob_sum = sum(scores_prob)
scores_prob = [x/prob_sum for x in scores_prob]
blosum_prob[alp] = (aas, scores_prob)
return blosum_prob
def mutate_amino_acid(amino_acid, blosum_prob, probability):
if amino_acid not in blosum_prob:
return amino_acid
if random.random() < probability:
subs = blosum_prob[amino_acid][0]
probs = blosum_prob[amino_acid][1]
sub = np.random.choice(subs, 1, p=probs)[0]
return sub
else:
return amino_acid
def load_video(video_path, n_frms=MAX_INT, height=-1, width=-1, sampling="uniform"):
vr = VideoReader(uri=video_path, height=height, width=width)
vlen = len(vr)
start, end = 0, vlen
n_frms = min(n_frms, vlen)
if sampling == "uniform":
indices = np.arange(start, end, vlen / n_frms).astype(int)
elif sampling == "headtail":
indices_h = sorted(rnd.sample(range(vlen // 2), n_frms // 2))
indices_t = sorted(rnd.sample(range(vlen // 2, vlen), n_frms // 2))
indices = indices_h + indices_t
else:
raise NotImplementedError
# get_batch -> T, H, W, C
frms = vr.get_batch(indices).permute(3, 0, 1, 2).float() # (C, T, H, W)
return frms
def apply_to_sample(f, sample):
if len(sample) == 0:
return {}
def _apply(x):
if torch.is_tensor(x):
return f(x)
elif isinstance(x, dict):
return {key: _apply(value) for key, value in x.items()}
elif isinstance(x, list):
return [_apply(x) for x in x]
else:
return x
return _apply(sample)
def move_to_cuda(sample):
def _move_to_cuda(tensor):
return tensor.cuda()
return apply_to_sample(_move_to_cuda, sample)
def protein_mutation(seq, blosum_prob):
mutated_sequence = []
for aa in seq:
mutated_aa = mutate_amino_acid(aa, blosum_prob, 0.1)
mutated_sequence.append(mutated_aa)
mutated_sequence = ''.join(mutated_sequence)
return mutated_sequence
def prepare_sample(samples, cuda_enabled=True):
#blosum62 = substitution_matrices.load("BLOSUM62")
#blosum_prob = convert_blosum_to_prob(blosum62, temperature=2)
#samples['image'] = [protein_mutation(x, blosum_prob) for x in samples['image']]
#images = []
#texts = []
#t_set = set()
#for i, j in zip(samples['image'], samples['text_input']):
# if j in t_set:
# continue
# images.append(i)
# texts.append(j)
# t_set.add(j)
#samples['image'] = images
#samples['text_input'] = texts
if cuda_enabled:
samples = move_to_cuda(samples)
# TODO fp16 support
return samples
def reorg_datasets_by_split(datasets):
"""
Organizes datasets by split.
Args:
datasets: dict of torch.utils.data.Dataset objects by name.
Returns:
Dict of datasets by split {split_name: List[Datasets]}.
"""
# if len(datasets) == 1:
# return datasets[list(datasets.keys())[0]]
# else:
reorg_datasets = dict()
# reorganize by split
for _, dataset in datasets.items():
for split_name, dataset_split in dataset.items():
if split_name not in reorg_datasets:
reorg_datasets[split_name] = [dataset_split]
else:
reorg_datasets[split_name].append(dataset_split)
return reorg_datasets
def concat_datasets(datasets):
"""
Concatenates multiple datasets into a single dataset.
It supports may-style datasets and DataPipeline from WebDataset. Currently, does not support
generic IterableDataset because it requires creating separate samplers.
Now only supports conctenating training datasets and assuming validation and testing
have only a single dataset. This is because metrics should not be computed on the concatenated
datasets.
Args:
datasets: dict of torch.utils.data.Dataset objects by split.
Returns:
Dict of concatenated datasets by split, "train" is the concatenation of multiple datasets,
"val" and "test" remain the same.
If the input training datasets contain both map-style and DataPipeline datasets, returns
a tuple, where the first element is a concatenated map-style dataset and the second
element is a chained DataPipeline dataset.
"""
# concatenate datasets in the same split
for split_name in datasets:
if split_name != "train":
assert (
len(datasets[split_name]) == 1
), "Do not support multiple {} datasets.".format(split_name)
datasets[split_name] = datasets[split_name][0]
else:
iterable_datasets, map_datasets = [], []
for dataset in datasets[split_name]:
if isinstance(dataset, wds.DataPipeline):
logging.info(
"Dataset {} is IterableDataset, can't be concatenated.".format(
dataset
)
)
iterable_datasets.append(dataset)
elif isinstance(dataset, IterableDataset):
raise NotImplementedError(
"Do not support concatenation of generic IterableDataset."
)
else:
map_datasets.append(dataset)
# if len(iterable_datasets) > 0:
# concatenate map-style datasets and iterable-style datasets separately
chained_datasets = (
ChainDataset(iterable_datasets) if len(iterable_datasets) > 0 else None
)
concat_datasets = (
ConcatDataset(map_datasets) if len(map_datasets) > 0 else None
)
train_datasets = concat_datasets, chained_datasets
train_datasets = tuple([x for x in train_datasets if x is not None])
train_datasets = (
train_datasets[0] if len(train_datasets) == 1 else train_datasets
)
datasets[split_name] = train_datasets
return datasets
def extract_archive(from_path, to_path=None, overwrite=False):
"""Extract archive.
Args:
from_path: the path of the archive.
to_path: the root path of the extracted files (directory of from_path)
overwrite: overwrite existing files (False)
Returns:
List of paths to extracted files even if not overwritten.
Examples:
>>> url = 'http://www.quest.dcs.shef.ac.uk/wmt16_files_mmt/validation.tar.gz'
>>> from_path = './validation.tar.gz'
>>> to_path = './'
>>> torchtext.utils.download_from_url(url, from_path)
>>> torchtext.utils.extract_archive(from_path, to_path)
>>> ['.data/val.de', '.data/val.en']
>>> torchtext.utils.download_from_url(url, from_path)
>>> torchtext.utils.extract_archive(from_path, to_path)
>>> ['.data/val.de', '.data/val.en']
"""
if to_path is None:
to_path = os.path.dirname(from_path)
if from_path.endswith((".tar.gz", ".tgz")):
logging.info("Opening tar file {} to {}.".format(from_path, to_path))
with tarfile.open(from_path, "r") as tar:
files = []
for file_ in tqdm(tar):
file_path = os.path.join(to_path, file_.name)
if file_.isfile():
files.append(file_path)
if os.path.exists(file_path):
logging.info("{} already extracted.".format(file_path))
if not overwrite:
continue
tar.extract(file_, to_path)
logging.info("Finished extracting tar file {}.".format(from_path))
return files
elif from_path.endswith(".zip"):
assert zipfile.is_zipfile(from_path), from_path
logging.info("Opening zip file {} to {}.".format(from_path, to_path))
with zipfile.ZipFile(from_path, "r") as zfile:
files = []
for file_ in tqdm(zfile.namelist()):
file_path = os.path.join(to_path, file_)
files.append(file_path)
if os.path.exists(file_path):
logging.info("{} already extracted.".format(file_path))
if not overwrite:
continue
zfile.extract(file_, to_path)
files = [f for f in files if os.path.isfile(f)]
logging.info("Finished extracting zip file {}.".format(from_path))
return files
elif from_path.endswith(".gz"):
logging.info("Opening gz file {} to {}.".format(from_path, to_path))
default_block_size = 65536
filename = from_path[:-3]
files = [filename]
with gzip.open(from_path, "rb") as gzfile, open(filename, "wb") as d_file:
while True:
block = gzfile.read(default_block_size)
if not block:
break
else:
d_file.write(block)
d_file.write(block)
logging.info("Finished extracting gz file {}.".format(from_path))
return files
else:
raise NotImplementedError(
"We currently only support tar.gz, .tgz, .gz and zip achives."
)
def save_frames_grid(img_array, out_path):
import torch
from PIL import Image
from torchvision.utils import make_grid
if len(img_array.shape) == 3:
img_array = img_array.unsqueeze(0)
elif len(img_array.shape) == 5:
b, t, c, h, w = img_array.shape
img_array = img_array.view(-1, c, h, w)
elif len(img_array.shape) == 4:
pass
else:
raise NotImplementedError(
"Supports only (b,t,c,h,w)-shaped inputs. First two dimensions can be ignored."
)
assert img_array.shape[1] == 3, "Exepcting input shape of (H, W, 3), i.e. RGB-only."
grid = make_grid(img_array)
ndarr = grid.permute(1, 2, 0).to("cpu", torch.uint8).numpy()
img = Image.fromarray(ndarr)
img.save(out_path)