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modules.py
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modules.py
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import torch
import torch.nn as nn
import torch.nn.functional as F
from unifold.modules.structure_module import *
from ..modules.common import Linear
from ..modules.embedders import InputEmbedder
from typing import *
import torch
import torch.nn as nn
class PseudoResidueResnetBlock(nn.Module):
def __init__(self, c_hidden):
"""
Args:
c_hidden:
Hidden channel dimension
"""
super(PseudoResidueResnetBlock, self).__init__()
self.c_hidden = c_hidden
self.linear_1 = Linear(self.c_hidden, self.c_hidden)
self.act = nn.GELU()
self.linear_2 = Linear(self.c_hidden, self.c_hidden)
def forward(self, x: torch.Tensor) -> torch.Tensor:
x_0 = x
x = self.act(x)
x = self.linear_1(x)
x = self.act(x)
x = self.linear_2(x)
return x + x_0
class PseudoResidueEmbedder(nn.Module):
def __init__(
self,
d_in: int,
d_out: int,
d_hidden: int,
num_blocks: int,
**kwargs,
):
"""
Args:
c_in:
Input channel dimension
c_out:
Output channel dimension
"""
super(PseudoResidueEmbedder, self).__init__()
self.d_in = d_in
self.d_out = d_out
self.d_hidden = d_hidden
self.num_blocks = num_blocks
self.linear_in = Linear(self.d_in, self.d_hidden)
self.act = nn.GELU()
self.layers = nn.ModuleList()
for _ in range(self.num_blocks):
layer = PseudoResidueResnetBlock(c_hidden=self.d_hidden)
self.layers.append(layer)
self.linear_out = Linear(self.d_hidden, self.d_out)
def forward(self, x: torch.Tensor) -> torch.Tensor:
"""
Args:
x:
[*, C_in] pseudo residue feature
Returns:
[*, C_out] embedding
"""
x = x.type(self.linear_in.weight.dtype)
x = self.linear_in(x)
x = self.act(x)
for l in self.layers:
x = l(x)
x = self.linear_out(x)
return x
class SymmInputEmbedder(InputEmbedder):
def __init__(
self,
pr_dim: Optional[int] = None,
**kwargs,
):
super(SymmInputEmbedder, self).__init__(**kwargs)
d_pair = kwargs.get("d_pair")
d_msa = kwargs.get("d_msa")
self.pr_dim = pr_dim
self.linear_pr_z_i = Linear(pr_dim, d_pair)
self.linear_pr_z_j = Linear(pr_dim, d_pair)
self.linear_pr_m = Linear(pr_dim, d_msa)
def forward(
self,
tf: torch.Tensor,
msa: torch.Tensor,
prf: torch.Tensor,
) -> Tuple[torch.Tensor, torch.Tensor]:
# [*, N_res, c_z]
if self.tf_dim == 21:
# multimer use 21 target dim
tf = tf[...,1:]
# convert type if necessary
tf = tf.type(self.linear_tf_z_i.weight.dtype)
msa = msa.type(self.linear_tf_z_i.weight.dtype)
tf_emb_i = self.linear_tf_z_i(tf) # [*, N_res, c_z]
tf_emb_j = self.linear_tf_z_j(tf)
pr_emb_i = self.linear_pr_z_i(prf) # [*, c_z]
pr_emb_j = self.linear_pr_z_j(prf)
tf_emb_i = torch.cat([pr_emb_i[..., None, :], tf_emb_i], dim=-2)
tf_emb_j = torch.cat([pr_emb_j[..., None, :], tf_emb_j], dim=-2)
# [*, N_res, N_res, c_z]
pair_emb = tf_emb_i[..., :, None, :] + tf_emb_j[..., None, :, :]
# [*, N_clust, N_res, c_m]
n_clust = msa.shape[-3]
tf_m = (
self.linear_tf_m(tf)
.unsqueeze(-3)
.expand(((-1,) * len(tf.shape[:-2]) + (n_clust, -1, -1)))
)
msa_emb = self.linear_msa_m(msa) + tf_m
pr_m = self.linear_pr_m(prf)[..., None, None, :]
pr_m_expand = pr_m.expand((-1,) * len(tf.shape[:-2]) + (n_clust, -1, -1))
msa_emb = torch.cat([pr_m_expand, msa_emb], dim=-2)
return msa_emb, pair_emb, pr_m
class SymmStructureModule(StructureModule):
def forward(
self,
s,
z,
aatype,
mask=None,
):
if mask is None:
mask = s.new_ones(s.shape[:-1])
mask = F.pad(mask, (1, 0), "constant", 1.)
# generate square mask
square_mask = mask.unsqueeze(-1) * mask.unsqueeze(-2)
square_mask = gen_attn_mask(square_mask, -self.inf).unsqueeze(-3)
s = self.layer_norm_s(s)
z = self.layer_norm_z(z)
initial_s = s
s = self.linear_in(s)
quat_encoder = Quaternion.identity(
s.shape[:-1],
s.dtype,
s.device,
requires_grad=False,
)
backb_to_global = Frame(
Rotation(
mat=quat_encoder.get_rot_mats(),
),
quat_encoder.get_trans(),
)
outputs = []
for i in range(self.num_blocks):
s = residual(s, self.ipa(s, z, backb_to_global, square_mask), self.training)
s = self.ipa_dropout(s)
s = self.layer_norm_ipa(s)
s = self.transition(s)
# update quaternion encoder
# use backb_to_global to avoid quat-to-rot conversion
quat_encoder = quat_encoder.compose_update_vec(
self.bb_update(s), pre_rot_mat=backb_to_global.get_rots()
)
# initial_s is always used to update the backbone
unnormalized_angles, angles = self.angle_resnet(s[..., 1:, :], initial_s[..., 1:, :])
# convert quaternion to rotation matrix
backb_to_global = Frame(
Rotation(
mat=quat_encoder.get_rot_mats(),
),
quat_encoder.get_trans(),
)
global_frame = backb_to_global[..., 0:1]
local_frames = backb_to_global[..., 1:]
local_frames = global_frame.compose(local_frames)
preds = {
"frames": local_frames.scale_translation(
self.trans_scale_factor
).to_tensor_4x4(), # no pr
"unnormalized_angles": unnormalized_angles,
"angles": angles,
}
outputs.append(preds)
if i < (self.num_blocks - 1):
# stop gradient in iteration
quat_encoder = quat_encoder.stop_rot_gradient()
backb_to_global = backb_to_global.stop_rot_gradient()
else:
all_frames_to_global = self.torsion_angles_to_frames(
local_frames.scale_translation(self.trans_scale_factor),
angles,
aatype,
) # no pr
pred_positions = self.frames_and_literature_positions_to_atom14_pos(
all_frames_to_global,
aatype,
) # no pr
outputs = dict_multimap(torch.stack, outputs)
outputs["sidechain_frames"] = all_frames_to_global.to_tensor_4x4()
outputs["positions"] = pred_positions
outputs["single"] = s[..., 1:, :]
outputs["global_center_position"] = global_frame.get_trans()
return outputs