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# Copyright 2021 AlQuraishi Laboratory
# Copyright 2021 DeepMind Technologies Limited
# 
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#      http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

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from functools import partial
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import torch
import torch.nn as nn

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from openfold.utils.feats import (
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    pseudo_beta_fn,
    atom37_to_torsion_angles,
    build_extra_msa_feat,
    build_template_angle_feat,
    build_template_pair_feat,
    atom14_to_atom37,
)
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from openfold.model.embedders import (
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    InputEmbedder, 
    RecyclingEmbedder,
    TemplateAngleEmbedder,
    TemplatePairEmbedder,
    ExtraMSAEmbedder,
)
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from openfold.model.evoformer import EvoformerStack, ExtraMSAStack
from openfold.model.heads import AuxiliaryHeads
import openfold.np.residue_constants as residue_constants
from openfold.model.structure_module import StructureModule
from openfold.model.template import (
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    TemplatePairStack, 
    TemplatePointwiseAttention,
)
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from openfold.utils.loss import (
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    compute_plddt,
)
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from openfold.utils.tensor_utils import (
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    dict_multimap,
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    tensor_tree_map,
)
        

class AlphaFold(nn.Module):
    """ 
        Alphafold 2.

        Implements Algorithm 2 (but with training).
    """
    def __init__(self, config):
        """
            Args:
                config:
                    A dict-like config object (like the one in config.py)
        """
        super(AlphaFold, self).__init__()

        template_config = config.template
        extra_msa_config = config.extra_msa

        # Main trunk + structure module
        self.input_embedder = InputEmbedder(
            **config["input_embedder"],
        )
        self.recycling_embedder = RecyclingEmbedder(
            **config["recycling_embedder"],
        )
        self.template_angle_embedder = TemplateAngleEmbedder(
            **template_config["template_angle_embedder"],
        )
        self.template_pair_embedder = TemplatePairEmbedder(
            **template_config["template_pair_embedder"],
        )
        self.template_pair_stack = TemplatePairStack(
            **template_config["template_pair_stack"],
        )
        self.template_pointwise_att = TemplatePointwiseAttention(
            **template_config["template_pointwise_attention"],
        )
        self.extra_msa_embedder = ExtraMSAEmbedder(
            **extra_msa_config["extra_msa_embedder"],
        )
        self.extra_msa_stack = ExtraMSAStack(
            **extra_msa_config["extra_msa_stack"],
        )
        self.evoformer = EvoformerStack(
            **config["evoformer_stack"],
        )
        self.structure_module = StructureModule(
            **config["structure_module"],
        )

        self.aux_heads = AuxiliaryHeads(
            config["heads"],
        )

        self.config = config

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    def embed_templates(self, batch, z, pair_mask, templ_dim):
        # Embed the templates one at a time (with a poor man's vmap)
        template_embeds = []
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        n_templ = batch["template_aatype"].shape[templ_dim]
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        for i in range(n_templ): 
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            idx = batch["template_aatype"].new_tensor(i)
            single_template_feats = tensor_tree_map(
                lambda t: torch.index_select(t, templ_dim, idx),
                batch,
            )
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            # Build template angle feats
            angle_feats = atom37_to_torsion_angles(
                single_template_feats["template_aatype"], 
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                single_template_feats["template_all_atom_positions"],#.float(), 
                single_template_feats["template_all_atom_masks"],#.float(), 
                eps=self.config.template.eps,
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            )
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            template_angle_feat = build_template_angle_feat(
                angle_feats,
                single_template_feats["template_aatype"],
            )
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            # [*, S_t, N, C_m]
            a = self.template_angle_embedder(template_angle_feat)

            # [*, S_t, N, N, C_t]
            t = build_template_pair_feat(
                single_template_feats,
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                inf=self.config.template.inf,
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                eps=self.config.template.eps,
                **self.config.template.distogram
            )
            t = self.template_pair_embedder(t)
            t = self.template_pair_stack(
                t, 
                pair_mask.unsqueeze(-3),
                _mask_trans=self.config._mask_trans
            )
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            template_embeds.append({
                "angle": a, 
                "pair": t, 
                "torsion_mask": angle_feats["torsion_angles_mask"]
            })

        template_embeds = dict_multimap(
            partial(torch.cat, dim=templ_dim),
            template_embeds,
        )
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        # [*, N, N, C_z]
        t = self.template_pointwise_att(
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            template_embeds["pair"], 
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            z, 
            template_mask=batch["template_mask"]
        )
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        t = t * (torch.sum(batch["template_mask"]) > 0)
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        return {
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            "template_angle_embedding": template_embeds["angle"],
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            "template_pair_embedding": t,
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            "torsion_angles_mask": template_embeds["torsion_mask"],
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        }
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    def iteration(self, feats, m_1_prev, z_prev, x_prev):
        # Primary output dictionary
        outputs = {}

        # Grab some data about the input
        batch_dims = feats["target_feat"].shape[:-2]
        no_batch_dims = len(batch_dims)
        n = feats["target_feat"].shape[-2]
        n_seq = feats["msa_feat"].shape[-3]
        device = feats["target_feat"].device

        # Prep some features
        seq_mask = feats["seq_mask"]
        pair_mask = seq_mask[..., None] * seq_mask[..., None, :]
        msa_mask = feats["msa_mask"]

        # Initialize the MSA and pair representations

        # m: [*, S_c, N, C_m]
        # z: [*, N, N, C_z]
        m, z = self.input_embedder(
            feats["target_feat"], 
            feats["residue_index"], 
            feats["msa_feat"],
        )

        # Inject information from previous recycling iterations
        if(self.config.no_cycles > 1):
            # Initialize the recycling embeddings, if needs be
            if(None in [m_1_prev, z_prev, x_prev]):
                # [*, N, C_m]
                m_1_prev = m.new_zeros(
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                    (*batch_dims, n, self.config.input_embedder.c_m), 
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                )

                # [*, N, N, C_z]
                z_prev = z.new_zeros(
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                    (*batch_dims, n, n, self.config.input_embedder.c_z),
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                )

                # [*, N, 3]
                x_prev = z.new_zeros(
                    (*batch_dims, n, residue_constants.atom_type_num, 3),
                )

            x_prev = pseudo_beta_fn(
                feats["aatype"],
                x_prev,
                None
            )

            # m_1_prev_emb: [*, N, C_m]
            # z_prev_emb: [*, N, N, C_z]
            m_1_prev_emb, z_prev_emb = self.recycling_embedder(
                m_1_prev, 
                z_prev, 
                x_prev,
            )

            # [*, S_c, N, C_m]
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            m[..., 0, :, :] = m[..., 0, :, :] + m_1_prev_emb
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            # [*, N, N, C_z]
            z = z + z_prev_emb

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            # This can matter during inference when N_res is very large
            del m_1_prev_emb, z_prev_emb

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        # Embed the templates + merge with MSA/pair embeddings
        if(self.config.template.enabled):
            template_feats = {
                k:v for k,v in feats.items() if "template_" in k
            }
            template_embeds = self.embed_templates(
                template_feats,
                z,
                pair_mask,
                no_batch_dims,
            )

            # [*, N, N, C_z]
            z = z + template_embeds["template_pair_embedding"]
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            if(self.config.template.embed_angles):
                # [*, S = S_c + S_t, N, C_m]
                m = torch.cat(
                    [m, template_embeds["template_angle_embedding"]], 
                    dim=-3
                )

                # [*, S, N]
                torsion_angles_mask = template_embeds["torsion_angles_mask"]
                msa_mask = torch.cat(
                    [feats["msa_mask"], torsion_angles_mask[..., 2]], axis=-2
                )

        # Embed extra MSA features + merge with pairwise embeddings 
        if(self.config.extra_msa.enabled):
            # [*, S_e, N, C_e]
            a = self.extra_msa_embedder(build_extra_msa_feat(feats))
        
            # [*, N, N, C_z]
            z = self.extra_msa_stack(
                a, 
                z, 
                msa_mask=feats["extra_msa_mask"],
                pair_mask=pair_mask,
                _mask_trans=self.config._mask_trans,
            )

        # Run MSA + pair embeddings through the trunk of the network
        # m: [*, S, N, C_m]
        # z: [*, N, N, C_z]
        # s: [*, N, C_s]
        m, z, s = self.evoformer(
            m, 
            z, 
            msa_mask=msa_mask, 
            pair_mask=pair_mask,
            _mask_trans=self.config._mask_trans
        )

        outputs["msa"] = m[..., :n_seq, :, :]
        outputs["pair"] = z
        outputs["single"] = s

        # Predict 3D structure
        outputs["sm"] = self.structure_module(
            s, z, feats["aatype"], mask=feats["seq_mask"],
        )        
        outputs["final_atom_positions"] = atom14_to_atom37(
            outputs["sm"]["positions"][-1], feats
        )
        outputs["final_atom_mask"] = feats["atom37_atom_exists"]
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        outputs["final_affine_tensor"] = outputs["sm"]["frames"][-1]
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        # Save embeddings for use during the next recycling iteration 

        # [*, N, C_m]
        m_1_prev = m[..., 0, :, :]

        # [* N, N, C_z]
        z_prev = z

        # [*, N, 3]
        x_prev = outputs["final_atom_positions"]

        return outputs, m_1_prev, z_prev, x_prev

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    def _disable_activation_checkpointing(self):
        self.template_pair_stack.blocks_per_ckpt = None
        self.evoformer.blocks_per_ckpt = None
        self.extra_msa_stack.stack.blocks_per_ckpt = None

    def _enable_activation_checkpointing(self):
        self.template_pair_stack.blocks_per_ckpt = (
            self.config.template.template_pair_stack.blocks_per_ckpt
        )
        self.evoformer.blocks_per_ckpt = (
            self.config.evoformer_stack.blocks_per_ckpt
        )
        self.extra_msa_stack.stack.blocks_per_ckpt = (
            self.config.extra_msa.extra_msa_stack.blocks_per_ckpt
        )

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    def forward(self, batch):
        """
            Args:
                batch:
                    Dictionary of arguments outlined in Algorithm 2. Keys must
                    include the official names of the features in the
                    supplement subsection 1.2.9.

                    The final dimension of each input must have length equal to
                    the number of recycling iterations.

                    Features (without the recycling dimension):

                        "aatype" ([*, N_res]): 
                            Contrary to the supplement, this tensor of residue
                            indices is not one-hot.
                        "target_feat" ([*, N_res, C_tf])
                            One-hot encoding of the target sequence. C_tf is
                            config.model.input_embedder.tf_dim.
                        "residue_index" ([*, N_res])
                            Tensor whose final dimension consists of
                            consecutive indices from 0 to N_res.
                        "msa_feat" ([*, N_seq, N_res, C_msa])
                            MSA features, constructed as in the supplement.
                            C_msa is config.model.input_embedder.msa_dim.
                        "seq_mask" ([*, N_res])
                            1-D sequence mask
                        "msa_mask" ([*, N_seq, N_res])
                            MSA mask
                        "pair_mask" ([*, N_res, N_res])
                            2-D pair mask
                        "extra_msa_mask" ([*, N_extra, N_res])
                            Extra MSA mask
                        "template_mask" ([*, N_templ])
                            Template mask (on the level of templates, not 
                            residues)
                        "template_aatype" ([*, N_templ, N_res])
                            Tensor of template residue indices (indices greater
                            than 19 are clamped to 20 (Unknown))
                        "template_all_atom_pos" ([*, N_templ, N_res, 37, 3])
                            Template atom coordinates in atom37 format
                        "template_all_atom_mask" ([*, N_templ, N_res, 37])
                            Template atom coordinate mask
                        "template_pseudo_beta" ([*, N_templ, N_res, 3])
                            Positions of template carbon "pseudo-beta" atoms
                            (i.e. C_beta for all residues but glycine, for
                            for which C_alpha is used instead)
                        "template_pseudo_beta_mask" ([*, N_templ, N_res])
                            Pseudo-beta mask 
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        """
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        # Initialize recycling embeddings
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        m_1_prev, z_prev, x_prev = None, None, None
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        is_grad_enabled = torch.is_grad_enabled()
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        self._disable_activation_checkpointing()
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        # Main recycling loop
        for cycle_no in range(self.config.no_cycles):
            # Select the features for the current recycling cycle
            fetch_cur_batch = lambda t: t[..., cycle_no] 
            feats = tensor_tree_map(fetch_cur_batch, batch)
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            # Enable grad iff we're training and it's the final recycling layer
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            is_final_iter = (cycle_no == (self.config.no_cycles - 1))
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            with torch.set_grad_enabled(is_grad_enabled and is_final_iter):
                # Sidestep AMP bug discussed in pytorch issue #65766
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                if(is_final_iter):
                    self._enable_activation_checkpointing()
                    if(torch.is_autocast_enabled()):
                        torch.clear_autocast_cache()
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                # Run the next iteration of the model
                outputs, m_1_prev, z_prev, x_prev = self.iteration(
                    feats, m_1_prev, z_prev, x_prev,
                )
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        # Run auxiliary heads 
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        outputs.update(self.aux_heads(outputs))

        return outputs