Commit 093603ee authored by Geoffrey Yu's avatar Geoffrey Yu
Browse files

update multimer data input pipeline

parent f3c1af45
......@@ -443,7 +443,7 @@ class OpenFoldSingleMultimerDataset(torch.utils.data.Dataset):
)
self.feature_pipeline = feature_pipeline.FeaturePipeline(config)
def _parse_mmcif(self, path, file_id, alignment_dir, alignment_index):
def _parse_mmcif(self, path, file_id,alignment_dir, alignment_index):
with open(path, 'r') as f:
mmcif_string = f.read()
......@@ -475,6 +475,7 @@ class OpenFoldSingleMultimerDataset(torch.utils.data.Dataset):
def __getitem__(self, idx):
mmcif_id = self.idx_to_mmcif_id(idx)
alignment_index = None
if(self.mode == 'train' or self.mode == 'eval'):
path = os.path.join(self.data_dir, f"{mmcif_id}")
ext = None
......@@ -505,7 +506,7 @@ class OpenFoldSingleMultimerDataset(torch.utils.data.Dataset):
return data
# process all_chain_features
data = self.feature_pipeline.process_features(data,
data,ground_truth = self.feature_pipeline.process_features(data,
mode=self.mode,
is_multimer=True)
......@@ -515,7 +516,7 @@ class OpenFoldSingleMultimerDataset(torch.utils.data.Dataset):
dtype=torch.int64,
device=data["aatype"].device)
return data
return data, ground_truth
def __len__(self):
return len(self._chain_ids)
......
......@@ -90,6 +90,7 @@ def np_example_to_features(
tensor_dict = np_to_tensor_dict(
np_example=np_example, features=feature_names
)
with torch.no_grad():
if(not is_multimer):
features = input_pipeline.process_tensors_from_config(
......@@ -98,7 +99,7 @@ def np_example_to_features(
cfg[mode],
)
else:
features = input_pipeline_multimer.process_tensors_from_config(
features,gt_features = input_pipeline_multimer.process_tensors_from_config(
tensor_dict,
cfg.common,
cfg[mode],
......@@ -119,7 +120,7 @@ def np_example_to_features(
dtype=torch.float32,
)
return {k: v for k, v in features.items()}
return {k: v for k, v in features.items()},gt_features
class FeaturePipeline:
......
......@@ -21,19 +21,11 @@ from openfold.data import (
data_transforms_multimer,
)
def grountruth_transforms_fns():
def nonensembled_transform_fns(common_cfg, mode_cfg):
"""Input pipeline data transformers that are not ensembled."""
transforms = [
data_transforms.cast_to_64bit_ints,
data_transforms_multimer.make_msa_profile,
data_transforms_multimer.create_target_feat,
data_transforms.make_atom14_masks,
]
if mode_cfg.supervised:
transforms = []
transforms.extend(
[
[ data_transforms.make_atom14_masks,
data_transforms.make_atom14_positions,
data_transforms.atom37_to_frames,
data_transforms.atom37_to_torsion_angles(""),
......@@ -42,6 +34,16 @@ def nonensembled_transform_fns(common_cfg, mode_cfg):
data_transforms.get_chi_angles,
]
)
return transforms
def nonensembled_transform_fns(common_cfg, mode_cfg):
"""Input pipeline data transformers that are not ensembled."""
transforms = [
data_transforms.cast_to_64bit_ints,
data_transforms_multimer.make_msa_profile,
data_transforms_multimer.create_target_feat,
data_transforms.make_atom14_masks
]
return transforms
......@@ -118,6 +120,11 @@ def ensembled_transform_fns(common_cfg, mode_cfg, ensemble_seed):
def process_tensors_from_config(tensors, common_cfg, mode_cfg):
"""Based on the config, apply filters and transformations to the data."""
GROUNDTRUTH_FEATURES=['all_atom_mask', 'all_atom_positions']
input_tensors = {k:v for k,v in tensors.items() if k not in GROUNDTRUTH_FEATURES}
gt_tensors = {k:v for k,v in tensors.items() if k in GROUNDTRUTH_FEATURES}
gt_tensors['aatype'] = tensors['aatype'].to(torch.long)
del tensors
ensemble_seed = random.randint(0, torch.iinfo(torch.int32).max)
def wrap_ensemble_fn(data, i):
......@@ -132,27 +139,23 @@ def process_tensors_from_config(tensors, common_cfg, mode_cfg):
d["ensemble_index"] = i
return fn(d)
no_templates = True
if("template_aatype" in tensors):
no_templates = tensors["template_aatype"].shape[0] == 0
nonensembled = nonensembled_transform_fns(
common_cfg,
mode_cfg,
)
gt_tensors = compose(grountruth_transforms_fns())(gt_tensors)
tensors = compose(nonensembled)(tensors)
if("no_recycling_iters" in tensors):
num_recycling = int(tensors["no_recycling_iters"])
input_tensors = compose(nonensembled)(input_tensors)
if("no_recycling_iters" in input_tensors):
num_recycling = int(input_tensors["no_recycling_iters"])
else:
num_recycling = common_cfg.max_recycling_iters
tensors = map_fn(
lambda x: wrap_ensemble_fn(tensors, x), torch.arange(num_recycling + 1)
input_tensors = map_fn(
lambda x: wrap_ensemble_fn(input_tensors, x), torch.arange(num_recycling + 1)
)
return tensors
return input_tensors,gt_tensors
@data_transforms.curry1
......
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