mirror of
https://github.com/aqlaboratory/openfold.git
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194 lines
6.5 KiB
Python
194 lines
6.5 KiB
Python
# Copyright 2021 AlQuraishi Laboratory
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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import torch
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import numpy as np
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import unittest
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from openfold.model.template import (
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TemplatePointwiseAttention,
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TemplatePairStack,
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)
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from openfold.utils.tensor_utils import tree_map
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import tests.compare_utils as compare_utils
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from tests.config import consts
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from tests.data_utils import random_template_feats
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if compare_utils.alphafold_is_installed():
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alphafold = compare_utils.import_alphafold()
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import jax
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import haiku as hk
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class TestTemplatePointwiseAttention(unittest.TestCase):
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def test_shape(self):
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batch_size = consts.batch_size
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n_seq = consts.n_seq
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c_t = consts.c_t
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c_z = consts.c_z
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c = 26
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no_heads = 13
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n_res = consts.n_res
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inf = 1e7
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tpa = TemplatePointwiseAttention(
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c_t, c_z, c, no_heads, inf=inf
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)
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t = torch.rand((batch_size, n_seq, n_res, n_res, c_t))
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z = torch.rand((batch_size, n_res, n_res, c_z))
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z_update = tpa(t, z, chunk_size=None)
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self.assertTrue(z_update.shape == z.shape)
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class TestTemplatePairStack(unittest.TestCase):
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def test_shape(self):
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batch_size = consts.batch_size
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c_t = consts.c_t
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c_hidden_tri_att = 7
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c_hidden_tri_mul = 7
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no_blocks = 2
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no_heads = 4
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pt_inner_dim = 15
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dropout = 0.25
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n_templ = consts.n_templ
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n_res = consts.n_res
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blocks_per_ckpt = None
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chunk_size = 4
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inf = 1e7
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eps = 1e-7
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tpe = TemplatePairStack(
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c_t,
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c_hidden_tri_att=c_hidden_tri_att,
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c_hidden_tri_mul=c_hidden_tri_mul,
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no_blocks=no_blocks,
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no_heads=no_heads,
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pair_transition_n=pt_inner_dim,
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dropout_rate=dropout,
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blocks_per_ckpt=None,
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inf=inf,
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eps=eps,
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)
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t = torch.rand((batch_size, n_templ, n_res, n_res, c_t))
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mask = torch.randint(0, 2, (batch_size, n_templ, n_res, n_res))
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shape_before = t.shape
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t = tpe(t, mask, chunk_size=chunk_size)
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shape_after = t.shape
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self.assertTrue(shape_before == shape_after)
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@compare_utils.skip_unless_alphafold_installed()
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def test_compare(self):
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def run_template_pair_stack(pair_act, pair_mask):
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config = compare_utils.get_alphafold_config()
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c_ee = config.model.embeddings_and_evoformer
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tps = alphafold.model.modules.TemplatePairStack(
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c_ee.template.template_pair_stack,
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config.model.global_config,
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name="template_pair_stack",
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)
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act = tps(pair_act, pair_mask, is_training=False)
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ln = hk.LayerNorm([-1], True, True, name="output_layer_norm")
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act = ln(act)
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return act
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f = hk.transform(run_template_pair_stack)
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n_res = consts.n_res
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pair_act = np.random.rand(n_res, n_res, consts.c_t).astype(np.float32)
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pair_mask = np.random.randint(
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low=0, high=2, size=(n_res, n_res)
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).astype(np.float32)
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params = compare_utils.fetch_alphafold_module_weights(
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"alphafold/alphafold_iteration/evoformer/template_embedding/"
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+ "single_template_embedding/template_pair_stack"
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)
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params.update(
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compare_utils.fetch_alphafold_module_weights(
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"alphafold/alphafold_iteration/evoformer/template_embedding/"
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+ "single_template_embedding/output_layer_norm"
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)
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)
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out_gt = f.apply(
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params, jax.random.PRNGKey(42), pair_act, pair_mask
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).block_until_ready()
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out_gt = torch.as_tensor(np.array(out_gt))
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model = compare_utils.get_global_pretrained_openfold()
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out_repro = model.template_pair_stack(
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torch.as_tensor(pair_act).unsqueeze(-4).cuda(),
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torch.as_tensor(pair_mask).unsqueeze(-3).cuda(),
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chunk_size=None,
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_mask_trans=False,
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).cpu()
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self.assertTrue(torch.max(torch.abs(out_gt - out_repro)) < consts.eps)
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class Template(unittest.TestCase):
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@compare_utils.skip_unless_alphafold_installed()
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def test_compare(self):
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def test_template_embedding(pair, batch, mask_2d):
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config = compare_utils.get_alphafold_config()
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te = alphafold.model.modules.TemplateEmbedding(
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config.model.embeddings_and_evoformer.template,
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config.model.global_config,
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)
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act = te(pair, batch, mask_2d, is_training=False)
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return act
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f = hk.transform(test_template_embedding)
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n_res = consts.n_res
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n_templ = consts.n_templ
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pair_act = np.random.rand(n_res, n_res, consts.c_z).astype(np.float32)
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batch = random_template_feats(n_templ, n_res)
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batch["template_all_atom_masks"] = batch["template_all_atom_mask"]
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pair_mask = np.random.randint(0, 2, (n_res, n_res)).astype(np.float32)
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# Fetch pretrained parameters (but only from one block)]
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params = compare_utils.fetch_alphafold_module_weights(
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"alphafold/alphafold_iteration/evoformer/template_embedding"
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)
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out_gt = f.apply(
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params, jax.random.PRNGKey(42), pair_act, batch, pair_mask
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).block_until_ready()
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out_gt = torch.as_tensor(np.array(out_gt))
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inds = np.random.randint(0, 21, (n_res,))
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batch["target_feat"] = np.eye(22)[inds]
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model = compare_utils.get_global_pretrained_openfold()
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out_repro = model.embed_templates(
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{k: torch.as_tensor(v).cuda() for k, v in batch.items()},
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torch.as_tensor(pair_act).cuda(),
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torch.as_tensor(pair_mask).cuda(),
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templ_dim=0,
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)
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out_repro = out_repro["template_pair_embedding"]
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out_repro = out_repro.cpu()
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self.assertTrue(torch.max(torch.abs(out_gt - out_repro) < consts.eps))
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if __name__ == "__main__":
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unittest.main()
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