| import torch |
| import numpy as np |
| from data import so3_utils |
| from data import utils as du |
| from scipy.spatial.transform import Rotation |
| from data import all_atom |
| import copy |
| from scipy.optimize import linear_sum_assignment |
|
|
|
|
| def _centered_gaussian(num_batch, num_res, device): |
| noise = torch.randn(num_batch, num_res, 3, device=device) |
| return noise - torch.mean(noise, dim=-2, keepdims=True) |
|
|
| def _uniform_so3(num_batch, num_res, device): |
| return torch.tensor( |
| Rotation.random(num_batch*num_res).as_matrix(), |
| device=device, |
| dtype=torch.float32, |
| ).reshape(num_batch, num_res, 3, 3) |
|
|
| def _trans_diffuse_mask(trans_t, trans_1, diffuse_mask): |
| return trans_t * diffuse_mask[..., None] + trans_1 * (1 - diffuse_mask[..., None]) |
|
|
| def _rots_diffuse_mask(rotmats_t, rotmats_1, diffuse_mask): |
| return ( |
| rotmats_t * diffuse_mask[..., None, None] |
| + rotmats_1 * (1 - diffuse_mask[..., None, None]) |
| ) |
|
|
|
|
| class Interpolant: |
|
|
| def __init__(self, cfg): |
| self._cfg = cfg |
| self._rots_cfg = cfg.rots |
| self._trans_cfg = cfg.trans |
| self._sample_cfg = cfg.sampling |
| self.add_noise = cfg.add_noise |
| self._igso3 = None |
|
|
| @property |
| def igso3(self): |
| if self._igso3 is None: |
| sigma_grid = torch.linspace(0.1, 1.5, 1000) |
| self._igso3 = so3_utils.SampleIGSO3( |
| 1000, sigma_grid, cache_dir='.cache') |
| return self._igso3 |
|
|
| def set_device(self, device): |
| self._device = device |
|
|
| def sample_t(self, num_batch): |
| |
| t = torch.rand(num_batch, device=self._device) |
| return t * (1 - 2*self._cfg.min_t) + self._cfg.min_t |
|
|
| def _esmfold_gaussian(self, num_batch, num_res, device, trans_esmfold): |
| noise = torch.randn(num_batch, num_res, 3, device=device) |
| noise = self._trans_cfg.noise_scale * noise + trans_esmfold |
| return noise - torch.mean(noise, dim=-2, keepdims=True) |
|
|
| def _corrupt_trans(self, trans_1, t, res_mask, trans_esmfold): |
| |
| |
|
|
| if self.add_noise: |
| trans_0 = self._esmfold_gaussian(*res_mask.shape, self._device, trans_esmfold) |
| else: |
| trans_0 = trans_esmfold |
|
|
|
|
| trans_0 = self._batch_ot(trans_0, trans_1, res_mask) |
| trans_t = (1 - t[..., None]) * trans_0 + t[..., None] * trans_1 |
| trans_t = _trans_diffuse_mask(trans_t, trans_1, res_mask) |
| return trans_t * res_mask[..., None] |
| |
| def _batch_ot(self, trans_0, trans_1, res_mask): |
| num_batch, num_res = trans_0.shape[:2] |
| noise_idx, gt_idx = torch.where( |
| torch.ones(num_batch, num_batch)) |
| batch_nm_0 = trans_0[noise_idx] |
| batch_nm_1 = trans_1[gt_idx] |
| batch_mask = res_mask[gt_idx] |
| aligned_nm_0, aligned_nm_1, _ = du.batch_align_structures( |
| batch_nm_0, batch_nm_1, mask=batch_mask |
| ) |
|
|
| aligned_nm_0 = aligned_nm_0.reshape(num_batch, num_batch, num_res, 3) |
| aligned_nm_1 = aligned_nm_1.reshape(num_batch, num_batch, num_res, 3) |
| |
| |
| batch_mask = batch_mask.reshape(num_batch, num_batch, num_res) |
| cost_matrix = torch.sum( |
| torch.linalg.norm(aligned_nm_0 - aligned_nm_1, dim=-1), dim=-1 |
| ) / torch.sum(batch_mask, dim=-1) |
| noise_perm, gt_perm = linear_sum_assignment(du.to_numpy(cost_matrix)) |
| return aligned_nm_0[(tuple(gt_perm), tuple(noise_perm))] |
| |
| |
| def _esmfold_igso3(self, res_mask, rotmats_esmfold): |
| num_batch, num_res = res_mask.shape |
| noisy_rotmats = self.igso3.sample( |
| torch.tensor([self._rots_cfg.noise_scale]), |
| num_batch*num_res |
| ).to(self._device) |
| noisy_rotmats = noisy_rotmats.reshape(num_batch, num_res, 3, 3) |
| rotmats_0 = torch.einsum( |
| "...ij,...jk->...ik", rotmats_esmfold, noisy_rotmats) |
| return rotmats_0 |
|
|
| def _corrupt_rotmats(self, rotmats_1, t, res_mask, rotmats_esmfold): |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| if self.add_noise: |
| rotmats_0 = self._esmfold_igso3(res_mask, rotmats_esmfold) |
| else: |
| rotmats_0 = rotmats_esmfold |
|
|
|
|
| rotmats_t = so3_utils.geodesic_t(t[..., None], rotmats_1, rotmats_0) |
| identity = torch.eye(3, device=self._device) |
| rotmats_t = ( |
| rotmats_t * res_mask[..., None, None] |
| + identity[None, None] * (1 - res_mask[..., None, None]) |
| ) |
| return _rots_diffuse_mask(rotmats_t, rotmats_1, res_mask) |
| |
| def corrupt_batch(self, batch): |
| noisy_batch = copy.deepcopy(batch) |
|
|
| |
| trans_1 = batch['trans_1'] |
|
|
| |
| rotmats_1 = batch['rotmats_1'] |
|
|
| |
| res_mask = batch['res_mask'] |
| num_batch, _ = res_mask.shape |
|
|
| |
| t = self.sample_t(num_batch)[:, None] |
| noisy_batch['t'] = t |
|
|
| |
| trans_t = self._corrupt_trans(trans_1, t, res_mask, batch['trans_esmfold']) |
|
|
| noisy_batch['trans_t'] = trans_t |
|
|
| rotmats_t = self._corrupt_rotmats(rotmats_1, t, res_mask, batch['rotmats_esmfold']) |
|
|
| noisy_batch['rotmats_t'] = rotmats_t |
|
|
|
|
| |
| |
| |
|
|
|
|
| return noisy_batch |
| |
| def rot_sample_kappa(self, t): |
| if self._rots_cfg.sample_schedule == 'exp': |
| return 1 - torch.exp(-t*self._rots_cfg.exp_rate) |
| elif self._rots_cfg.sample_schedule == 'linear': |
| return t |
| else: |
| raise ValueError( |
| f'Invalid schedule: {self._rots_cfg.sample_schedule}') |
|
|
| def _trans_euler_step(self, d_t, t, trans_1, trans_t): |
| trans_vf = (trans_1 - trans_t) / (1 - t) |
| return trans_t + trans_vf * d_t |
|
|
| def _rots_euler_step(self, d_t, t, rotmats_1, rotmats_t): |
| if self._rots_cfg.sample_schedule == 'linear': |
| scaling = 1 / (1 - t) |
| elif self._rots_cfg.sample_schedule == 'exp': |
| scaling = self._rots_cfg.exp_rate |
| else: |
| raise ValueError( |
| f'Unknown sample schedule {self._rots_cfg.sample_schedule}') |
| return so3_utils.geodesic_t( |
| scaling * d_t, rotmats_1, rotmats_t) |
|
|
| def sample( |
| self, |
| batch, |
| model, |
| ): |
| res_mask = batch['res_mask'] |
| num_batch = batch['aatype'].shape[0] |
| num_res = batch['aatype'].shape[1] |
| aatype = batch['aatype'] |
| motif_mask = batch.get('motif_mask',torch.ones(aatype.shape)) |
|
|
|
|
| |
|
|
| |
| |
| |
|
|
|
|
| if self.add_noise: |
| trans_0 = self._esmfold_gaussian(*res_mask.shape, self._device, batch['trans_esmfold']) |
| rotmats_0 = self._esmfold_igso3(res_mask, batch['rotmats_esmfold']) |
| else: |
| trans_0 = batch['trans_esmfold'] |
| rotmats_0 = batch['rotmats_esmfold'] |
|
|
| |
| if not torch.all(motif_mask==torch.ones(aatype.shape,device=motif_mask.device)): |
| trans_0 = motif_mask[...,None]*trans_0+(1-motif_mask[...,None])*batch['trans_fix'] |
| rotmats_0 = motif_mask[...,None,None]*rotmats_0+(1-motif_mask[...,None,None])*batch['rotmats_fix'] |
|
|
|
|
| |
| |
| ts = torch.linspace( |
| self._cfg.min_t, 1.0, self._sample_cfg.num_timesteps) |
| |
| |
| |
|
|
|
|
|
|
| t_1 = ts[0] |
|
|
| prot_traj = [(trans_0, rotmats_0)] |
| clean_traj = [] |
| for t_2 in ts[1:]: |
|
|
| |
| trans_t_1, rotmats_t_1 = prot_traj[-1] |
| batch['trans_t'] = trans_t_1 |
| batch['rotmats_t'] = rotmats_t_1 |
| t = torch.ones((num_batch, 1), device=self._device) * t_1 |
| batch['t'] = t |
| with torch.no_grad(): |
| model_out = model(batch) |
|
|
| |
|
|
|
|
| pred_trans_1 = model_out['pred_trans'] |
| pred_rotmats_1 = model_out['pred_rotmats'] |
| if not torch.all(motif_mask==torch.ones(aatype.shape,device=motif_mask.device)): |
| pred_trans_1 = motif_mask[...,None]* pred_trans_1+(1-motif_mask[...,None])*batch['trans_fix'] |
| pred_rotmats_1 = motif_mask[...,None,None]*pred_rotmats_1+(1-motif_mask[...,None,None])*batch['rotmats_fix'] |
|
|
|
|
| clean_traj.append( |
| (pred_trans_1.detach(), pred_rotmats_1.detach()) |
| ) |
| if self._cfg.self_condition: |
| batch['trans_sc'] = pred_trans_1 |
|
|
| |
| d_t = t_2 - t_1 |
|
|
|
|
| trans_t_2 = self._trans_euler_step( |
| d_t, t_1, pred_trans_1, trans_t_1) |
| rotmats_t_2 = self._rots_euler_step( |
| d_t, t_1, pred_rotmats_1, rotmats_t_1) |
| if not torch.all(motif_mask==torch.ones(aatype.shape,device=motif_mask.device)): |
| trans_t_2 = motif_mask[...,None]* trans_t_2+(1-motif_mask[...,None])*batch['trans_fix'] |
| rotmats_t_2 = motif_mask[...,None,None]*rotmats_t_2+(1-motif_mask[...,None,None])*batch['rotmats_fix'] |
|
|
|
|
|
|
| prot_traj.append((trans_t_2, rotmats_t_2)) |
| t_1 = t_2 |
|
|
| |
| t_1 = ts[-1] |
| trans_t_1, rotmats_t_1 = prot_traj[-1] |
| batch['trans_t'] = trans_t_1 |
| batch['rotmats_t'] = rotmats_t_1 |
| batch['t'] = torch.ones((num_batch, 1), device=self._device) * t_1 |
| with torch.no_grad(): |
| model_out = model(batch) |
|
|
|
|
| pred_trans_1 = model_out['pred_trans'] |
| pred_rotmats_1 = model_out['pred_rotmats'] |
| if not torch.all(motif_mask==torch.ones(aatype.shape,device=motif_mask.device)): |
| pred_trans_1 = motif_mask[...,None]* pred_trans_1+(1-motif_mask[...,None])*batch['trans_fix'] |
| pred_rotmats_1 = motif_mask[...,None,None]*pred_rotmats_1+(1-motif_mask[...,None,None])*batch['rotmats_fix'] |
|
|
|
|
| clean_traj.append( |
| (pred_trans_1.detach(), pred_rotmats_1.detach()) |
| ) |
| prot_traj.append((pred_trans_1, pred_rotmats_1)) |
|
|
| |
| atom37_traj = all_atom.transrot_to_atom37(prot_traj, res_mask, aatype=aatype, torsions_with_CB=model_out['pred_torsions_with_CB']) |
| clean_atom37_traj = all_atom.transrot_to_atom37(clean_traj, res_mask, aatype=aatype, torsions_with_CB=model_out['pred_torsions_with_CB']) |
|
|
| return atom37_traj, clean_atom37_traj, clean_traj |
|
|