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# Copyright 2024 DeepMind Technologies Limited
#
# AlphaFold 3 source code is licensed under CC BY-NC-SA 4.0. To view a copy of
# this license, visit https://creativecommons.org/licenses/by-nc-sa/4.0/
#
# To request access to the AlphaFold 3 model parameters, follow the process set
# out at https://github.com/google-deepmind/alphafold3. You may only use these
# if received directly from Google. Use is subject to terms of use available at
# https://github.com/google-deepmind/alphafold3/blob/main/WEIGHTS_TERMS_OF_USE.md
"""AlphaFold 3 structure prediction script.
AlphaFold 3 source code is licensed under CC BY-NC-SA 4.0. To view a copy of
this license, visit https://creativecommons.org/licenses/by-nc-sa/4.0/
To request access to the AlphaFold 3 model parameters, follow the process set
out at https://github.com/google-deepmind/alphafold3. You may only use these
if received directly from Google. Use is subject to terms of use available at
https://github.com/google-deepmind/alphafold3/blob/main/WEIGHTS_TERMS_OF_USE.md
"""
from collections.abc import Callable, Iterable, Sequence
import csv
import dataclasses
import functools
import multiprocessing
import os
import pathlib
import shutil
import string
import textwrap
import time
import typing
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from typing import Protocol, Self, TypeVar, overload
from absl import app
from absl import flags
from alphafold3.common import base_config
from alphafold3.common import folding_input
from alphafold3.common import resources
from alphafold3.constants import chemical_components
import alphafold3.cpp
from alphafold3.data import featurisation
from alphafold3.data import pipeline
from alphafold3.jax.attention import attention
from alphafold3.model import features
from alphafold3.model import params
from alphafold3.model import post_processing
from alphafold3.model.components import base_model
from alphafold3.model.components import utils
from alphafold3.model.diffusion import model as diffusion_model
import haiku as hk
import jax
from jax import numpy as jnp
import numpy as np
_HOME_DIR = pathlib.Path(os.environ.get('HOME'))
_DEFAULT_MODEL_DIR = _HOME_DIR / 'models'
_DEFAULT_DB_DIR = _HOME_DIR / 'public_databases'
# Input and output paths.
_JSON_PATH = flags.DEFINE_string(
'json_path',
None,
'Path to the input JSON file.',
)
_INPUT_DIR = flags.DEFINE_string(
'input_dir',
None,
'Path to the directory containing input JSON files.',
)
_OUTPUT_DIR = flags.DEFINE_string(
'output_dir',
None,
'Path to a directory where the results will be saved.',
)
MODEL_DIR = flags.DEFINE_string(
_DEFAULT_MODEL_DIR.as_posix(),
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'Path to the model to use for inference.',
)
_FLASH_ATTENTION_IMPLEMENTATION = flags.DEFINE_enum(
'flash_attention_implementation',
default='triton',
enum_values=['triton', 'cudnn', 'xla'],
help=(
"Flash attention implementation to use. 'triton' and 'cudnn' uses a"
' Triton and cuDNN flash attention implementation, respectively. The'
' Triton kernel is fastest and has been tested more thoroughly. The'
" Triton and cuDNN kernels require Ampere GPUs or later. 'xla' uses an"
' XLA attention implementation (no flash attention) and is portable'
' across GPU devices.'
),
)
# Control which stages to run.
_RUN_DATA_PIPELINE = flags.DEFINE_bool(
'run_data_pipeline',
True,
'Whether to run the data pipeline on the fold inputs.',
)
_RUN_INFERENCE = flags.DEFINE_bool(
'run_inference',
True,
'Whether to run inference on the fold inputs.',
)
# Binary paths.
_JACKHMMER_BINARY_PATH = flags.DEFINE_string(
'jackhmmer_binary_path',
shutil.which('jackhmmer'),
'Path to the Jackhmmer binary.',
)
_NHMMER_BINARY_PATH = flags.DEFINE_string(
'nhmmer_binary_path',
shutil.which('nhmmer'),
'Path to the Nhmmer binary.',
)
_HMMALIGN_BINARY_PATH = flags.DEFINE_string(
'hmmalign_binary_path',
shutil.which('hmmalign'),
'Path to the Hmmalign binary.',
)
_HMMSEARCH_BINARY_PATH = flags.DEFINE_string(
'hmmsearch_binary_path',
shutil.which('hmmsearch'),
'Path to the Hmmsearch binary.',
)
_HMMBUILD_BINARY_PATH = flags.DEFINE_string(
'hmmbuild_binary_path',
shutil.which('hmmbuild'),
'Path to the Hmmbuild binary.',
)
# Database paths.
DB_DIR = flags.DEFINE_multi_string(
(_DEFAULT_DB_DIR.as_posix(),),
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'Path to the directory containing the databases. Can be specified multiple'
' times to search multiple directories in order.',
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_SMALL_BFD_DATABASE_PATH = flags.DEFINE_string(
'small_bfd_database_path',
'${DB_DIR}/bfd-first_non_consensus_sequences.fasta',
'Small BFD database path, used for protein MSA search.',
)
_MGNIFY_DATABASE_PATH = flags.DEFINE_string(
'mgnify_database_path',
'${DB_DIR}/mgy_clusters_2022_05.fa',
'Mgnify database path, used for protein MSA search.',
)
_UNIPROT_CLUSTER_ANNOT_DATABASE_PATH = flags.DEFINE_string(
'uniprot_cluster_annot_database_path',
'${DB_DIR}/uniprot_all_2021_04.fa',
'UniProt database path, used for protein paired MSA search.',
)
_UNIREF90_DATABASE_PATH = flags.DEFINE_string(
'uniref90_database_path',
'${DB_DIR}/uniref90_2022_05.fa',
'UniRef90 database path, used for MSA search. The MSA obtained by '
'searching it is used to construct the profile for template search.',
)
_NTRNA_DATABASE_PATH = flags.DEFINE_string(
'ntrna_database_path',
'${DB_DIR}/nt_rna_2023_02_23_clust_seq_id_90_cov_80_rep_seq.fasta',
'NT-RNA database path, used for RNA MSA search.',
)
_RFAM_DATABASE_PATH = flags.DEFINE_string(
'rfam_database_path',
'${DB_DIR}/rfam_14_9_clust_seq_id_90_cov_80_rep_seq.fasta',
'Rfam database path, used for RNA MSA search.',
)
_RNA_CENTRAL_DATABASE_PATH = flags.DEFINE_string(
'rna_central_database_path',
'${DB_DIR}/rnacentral_active_seq_id_90_cov_80_linclust.fasta',
'RNAcentral database path, used for RNA MSA search.',
)
_PDB_DATABASE_PATH = flags.DEFINE_string(
'pdb_database_path',
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'${DB_DIR}/mmcif_files',
'PDB database directory with mmCIF files path, used for template search.',
)
_SEQRES_DATABASE_PATH = flags.DEFINE_string(
'seqres_database_path',
'${DB_DIR}/pdb_seqres_2022_09_28.fasta',
'PDB sequence database path, used for template search.',
)
# Number of CPUs to use for MSA tools.
_JACKHMMER_N_CPU = flags.DEFINE_integer(
'jackhmmer_n_cpu',
min(multiprocessing.cpu_count(), 8),
'Number of CPUs to use for Jackhmmer. Default to min(cpu_count, 8). Going'
' beyond 8 CPUs provides very little additional speedup.',
)
_NHMMER_N_CPU = flags.DEFINE_integer(
'nhmmer_n_cpu',
min(multiprocessing.cpu_count(), 8),
'Number of CPUs to use for Nhmmer. Default to min(cpu_count, 8). Going'
' beyond 8 CPUs provides very little additional speedup.',
)
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# Compilation cache.
_JAX_COMPILATION_CACHE_DIR = flags.DEFINE_string(
'jax_compilation_cache_dir',
None,
'Path to a directory for the JAX compilation cache.',
)
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# Compilation buckets.
_BUCKETS = flags.DEFINE_list(
'buckets',
# pyformat: disable
['256', '512', '768', '1024', '1280', '1536', '2048', '2560', '3072',
'3584', '4096', '4608', '5120'],
# pyformat: enable
'Strictly increasing order of token sizes for which to cache compilations.'
' For any input with more tokens than the largest bucket size, a new bucket'
' is created for exactly that number of tokens.',
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)
class ConfigurableModel(Protocol):
"""A model with a nested config class."""
class Config(base_config.BaseConfig):
...
def __call__(self, config: Config) -> Self:
...
@classmethod
def get_inference_result(
cls: Self,
batch: features.BatchDict,
result: base_model.ModelResult,
target_name: str = '',
) -> Iterable[base_model.InferenceResult]:
...
ModelT = TypeVar('ModelT', bound=ConfigurableModel)
def make_model_config(
*,
model_class: type[ModelT] = diffusion_model.Diffuser,
flash_attention_implementation: attention.Implementation = 'triton',
):
config = model_class.Config()
if hasattr(config, 'global_config'):
config.global_config.flash_attention_implementation = (
flash_attention_implementation
)
return config
class ModelRunner:
"""Helper class to run structure prediction stages."""
def __init__(
self,
model_class: ConfigurableModel,
config: base_config.BaseConfig,
device: jax.Device,
model_dir: pathlib.Path,
):
self._model_class = model_class
self._model_config = config
self._device = device
self._model_dir = model_dir
@functools.cached_property
def model_params(self) -> hk.Params:
"""Loads model parameters from the model directory."""
return params.get_model_haiku_params(model_dir=self._model_dir)
@functools.cached_property
def _model(
self,
) -> Callable[[jnp.ndarray, features.BatchDict], base_model.ModelResult]:
"""Loads model parameters and returns a jitted model forward pass."""
assert isinstance(self._model_config, self._model_class.Config)
@hk.transform
def forward_fn(batch):
result = self._model_class(self._model_config)(batch)
result['__identifier__'] = self.model_params['__meta__']['__identifier__']
return result
return functools.partial(
jax.jit(forward_fn.apply, device=self._device), self.model_params
)
def run_inference(
self, featurised_example: features.BatchDict, rng_key: jnp.ndarray
) -> base_model.ModelResult:
"""Computes a forward pass of the model on a featurised example."""
featurised_example = jax.device_put(
jax.tree_util.tree_map(
jnp.asarray, utils.remove_invalidly_typed_feats(featurised_example)
),
self._device,
)
result = self._model(rng_key, featurised_example)
result = jax.tree.map(np.asarray, result)
result = jax.tree.map(
lambda x: x.astype(jnp.float32) if x.dtype == jnp.bfloat16 else x,
result,
)
result['__identifier__'] = result['__identifier__'].tobytes()
return result
def extract_structures(
self,
batch: features.BatchDict,
result: base_model.ModelResult,
target_name: str,
) -> list[base_model.InferenceResult]:
"""Generates structures from model outputs."""
return list(
self._model_class.get_inference_result(
batch=batch, result=result, target_name=target_name
)
)
@dataclasses.dataclass(frozen=True, slots=True, kw_only=True)
class ResultsForSeed:
"""Stores the inference results (diffusion samples) for a single seed.
Attributes:
seed: The seed used to generate the samples.
inference_results: The inference results, one per sample.
full_fold_input: The fold input that must also include the results of
running the data pipeline - MSA and templates.
"""
seed: int
inference_results: Sequence[base_model.InferenceResult]
full_fold_input: folding_input.Input
def predict_structure(
fold_input: folding_input.Input,
model_runner: ModelRunner,
buckets: Sequence[int] | None = None,
) -> Sequence[ResultsForSeed]:
"""Runs the full inference pipeline to predict structures for each seed."""
print(f'Featurising data for seeds {fold_input.rng_seeds}...')
featurisation_start_time = time.time()
ccd = chemical_components.cached_ccd(user_ccd=fold_input.user_ccd)
featurised_examples = featurisation.featurise_input(
fold_input=fold_input, buckets=buckets, ccd=ccd, verbose=True
)
print(
f'Featurising data for seeds {fold_input.rng_seeds} took '
f' {time.time() - featurisation_start_time:.2f} seconds.'
)
all_inference_start_time = time.time()
all_inference_results = []
for seed, example in zip(fold_input.rng_seeds, featurised_examples):
print(f'Running model inference for seed {seed}...')
inference_start_time = time.time()
rng_key = jax.random.PRNGKey(seed)
result = model_runner.run_inference(example, rng_key)
print(
f'Running model inference for seed {seed} took '
f' {time.time() - inference_start_time:.2f} seconds.'
)
print(f'Extracting output structures (one per sample) for seed {seed}...')
extract_structures = time.time()
inference_results = model_runner.extract_structures(
batch=example, result=result, target_name=fold_input.name
)
print(
f'Extracting output structures (one per sample) for seed {seed} took '
f' {time.time() - extract_structures:.2f} seconds.'
)
all_inference_results.append(
ResultsForSeed(
seed=seed,
inference_results=inference_results,
full_fold_input=fold_input,
)
)
print(
'Running model inference and extracting output structures for seed'
f' {seed} took {time.time() - inference_start_time:.2f} seconds.'
)
print(
'Running model inference and extracting output structures for seeds'
f' {fold_input.rng_seeds} took '
f' {time.time() - all_inference_start_time:.2f} seconds.'
)
return all_inference_results
def write_fold_input_json(
fold_input: folding_input.Input,
output_dir: os.PathLike[str] | str,
) -> None:
"""Writes the input JSON to the output directory."""
os.makedirs(output_dir, exist_ok=True)
with open(
os.path.join(output_dir, f'{fold_input.sanitised_name()}_data.json'), 'wt'
) as f:
f.write(fold_input.to_json())
def write_outputs(
all_inference_results: Sequence[ResultsForSeed],
output_dir: os.PathLike[str] | str,
job_name: str,
) -> None:
"""Writes outputs to the specified output directory."""
ranking_scores = []
max_ranking_score = None
max_ranking_result = None
output_terms = (
pathlib.Path(alphafold3.cpp.__file__).parent / 'OUTPUT_TERMS_OF_USE.md'
).read_text()
os.makedirs(output_dir, exist_ok=True)
for results_for_seed in all_inference_results:
seed = results_for_seed.seed
for sample_idx, result in enumerate(results_for_seed.inference_results):
sample_dir = os.path.join(output_dir, f'seed-{seed}_sample-{sample_idx}')
os.makedirs(sample_dir, exist_ok=True)
post_processing.write_output(
inference_result=result, output_dir=sample_dir
)
ranking_score = float(result.metadata['ranking_score'])
ranking_scores.append((seed, sample_idx, ranking_score))
if max_ranking_score is None or ranking_score > max_ranking_score:
max_ranking_score = ranking_score
max_ranking_result = result
if max_ranking_result is not None: # True iff ranking_scores non-empty.
post_processing.write_output(
inference_result=max_ranking_result,
output_dir=output_dir,
# The output terms of use are the same for all seeds/samples.
terms_of_use=output_terms,
name=job_name,
)
# Save csv of ranking scores with seeds and sample indices, to allow easier
# comparison of ranking scores across different runs.
with open(os.path.join(output_dir, 'ranking_scores.csv'), 'wt') as f:
writer = csv.writer(f)
writer.writerow(['seed', 'sample', 'ranking_score'])
writer.writerows(ranking_scores)
@overload
def process_fold_input(
fold_input: folding_input.Input,
data_pipeline_config: pipeline.DataPipelineConfig | None,
model_runner: None,
output_dir: os.PathLike[str] | str,
buckets: Sequence[int] | None = None,
) -> folding_input.Input:
...
@overload
def process_fold_input(
fold_input: folding_input.Input,
data_pipeline_config: pipeline.DataPipelineConfig | None,
model_runner: ModelRunner,
output_dir: os.PathLike[str] | str,
buckets: Sequence[int] | None = None,
) -> Sequence[ResultsForSeed]:
...
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def replace_db_dir(path_with_db_dir: str, db_dirs: Sequence[str]) -> str:
"""Replaces the DB_DIR placeholder in a path with the given DB_DIR."""
template = string.Template(path_with_db_dir)
if 'DB_DIR' in template.get_identifiers():
for db_dir in db_dirs:
path = template.substitute(DB_DIR=db_dir)
if os.path.exists(path):
return path
raise FileNotFoundError(
f'{path_with_db_dir} with ${{DB_DIR}} not found in any of {db_dirs}.'
)
if not os.path.exists(path_with_db_dir):
raise FileNotFoundError(f'{path_with_db_dir} does not exist.')
return path_with_db_dir
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def process_fold_input(
fold_input: folding_input.Input,
data_pipeline_config: pipeline.DataPipelineConfig | None,
model_runner: ModelRunner | None,
output_dir: os.PathLike[str] | str,
buckets: Sequence[int] | None = None,
) -> folding_input.Input | Sequence[ResultsForSeed]:
"""Runs data pipeline and/or inference on a single fold input.
Args:
fold_input: Fold input to process.
data_pipeline_config: Data pipeline config to use. If None, skip the data
pipeline.
model_runner: Model runner to use. If None, skip inference.
output_dir: Output directory to write to.
buckets: Bucket sizes to pad the data to, to avoid excessive re-compilation
of the model. If None, calculate the appropriate bucket size from the
number of tokens. If not None, must be a sequence of at least one integer,
in strictly increasing order. Will raise an error if the number of tokens
is more than the largest bucket size.
Returns:
The processed fold input, or the inference results for each seed.
Raises:
ValueError: If the fold input has no chains.
"""
print(f'Processing fold input {fold_input.name}')
if not fold_input.chains:
raise ValueError('Fold input has no chains.')
if model_runner is not None:
# If we're running inference, check we can load the model parameters before
# (possibly) launching the data pipeline.
print('Checking we can load the model parameters...')
_ = model_runner.model_params
if data_pipeline_config is None:
print('Skipping data pipeline...')
else:
print('Running data pipeline...')
fold_input = pipeline.DataPipeline(data_pipeline_config).process(fold_input)
print(f'Output directory: {output_dir}')
print(f'Writing model input JSON to {output_dir}')
write_fold_input_json(fold_input, output_dir)
if model_runner is None:
print('Skipping inference...')
output = fold_input
else:
print(
f'Predicting 3D structure for {fold_input.name} for seed(s)'
f' {fold_input.rng_seeds}...'
)
all_inference_results = predict_structure(
fold_input=fold_input,
model_runner=model_runner,
buckets=buckets,
)
print(
f'Writing outputs for {fold_input.name} for seed(s)'
f' {fold_input.rng_seeds}...'
)
write_outputs(
all_inference_results=all_inference_results,
output_dir=output_dir,
job_name=fold_input.sanitised_name(),
)
output = all_inference_results
print(f'Done processing fold input {fold_input.name}.')
return output
def main(_):
if _JAX_COMPILATION_CACHE_DIR.value is not None:
jax.config.update(
'jax_compilation_cache_dir', _JAX_COMPILATION_CACHE_DIR.value
)
if _JSON_PATH.value is None == _INPUT_DIR.value is None:
raise ValueError(
'Exactly one of --json_path or --input_dir must be specified.'
)
if not _RUN_INFERENCE.value and not _RUN_DATA_PIPELINE.value:
raise ValueError(
'At least one of --run_inference or --run_data_pipeline must be'
' set to true.'
)
if _INPUT_DIR.value is not None:
fold_inputs = folding_input.load_fold_inputs_from_dir(
pathlib.Path(_INPUT_DIR.value)
)
elif _JSON_PATH.value is not None:
fold_inputs = folding_input.load_fold_inputs_from_path(
pathlib.Path(_JSON_PATH.value)
)
else:
raise AssertionError(
'Exactly one of --json_path or --input_dir must be specified.'
)
# Make sure we can create the output directory before running anything.
try:
os.makedirs(_OUTPUT_DIR.value, exist_ok=True)
except OSError as e:
print(f'Failed to create output directory {_OUTPUT_DIR.value}: {e}')
raise
if _RUN_INFERENCE.value:
# Fail early on incompatible devices, but only if we're running inference.
gpu_devices = jax.local_devices(backend='gpu')
if gpu_devices and float(gpu_devices[0].compute_capability) < 8.0:
raise ValueError(
'There are currently known unresolved numerical issues with using'
' devices with compute capability less than 8.0. See '
' https://github.com/google-deepmind/alphafold3/issues/59 for'
' tracking.'
)
notice = textwrap.wrap(
'Running AlphaFold 3. Please note that standard AlphaFold 3 model'
' parameters are only available under terms of use provided at'
' https://github.com/google-deepmind/alphafold3/blob/main/WEIGHTS_TERMS_OF_USE.md.'
' If you do not agree to these terms and are using AlphaFold 3 derived'
' model parameters, cancel execution of AlphaFold 3 inference with'
' CTRL-C, and do not use the model parameters.',
break_long_words=False,
break_on_hyphens=False,
width=80,
)
print('\n'.join(notice))
if _RUN_DATA_PIPELINE.value:
expand_path = lambda x: replace_db_dir(x, DB_DIR.value)
data_pipeline_config = pipeline.DataPipelineConfig(
jackhmmer_binary_path=_JACKHMMER_BINARY_PATH.value,
nhmmer_binary_path=_NHMMER_BINARY_PATH.value,
hmmalign_binary_path=_HMMALIGN_BINARY_PATH.value,
hmmsearch_binary_path=_HMMSEARCH_BINARY_PATH.value,
hmmbuild_binary_path=_HMMBUILD_BINARY_PATH.value,
Augustin Zidek
committed
small_bfd_database_path=expand_path(_SMALL_BFD_DATABASE_PATH.value),
mgnify_database_path=expand_path(_MGNIFY_DATABASE_PATH.value),
uniprot_cluster_annot_database_path=expand_path(
_UNIPROT_CLUSTER_ANNOT_DATABASE_PATH.value
),
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uniref90_database_path=expand_path(_UNIREF90_DATABASE_PATH.value),
ntrna_database_path=expand_path(_NTRNA_DATABASE_PATH.value),
rfam_database_path=expand_path(_RFAM_DATABASE_PATH.value),
rna_central_database_path=expand_path(_RNA_CENTRAL_DATABASE_PATH.value),
pdb_database_path=expand_path(_PDB_DATABASE_PATH.value),
seqres_database_path=expand_path(_SEQRES_DATABASE_PATH.value),
jackhmmer_n_cpu=_JACKHMMER_N_CPU.value,
nhmmer_n_cpu=_NHMMER_N_CPU.value,
)
else:
print('Skipping running the data pipeline.')
data_pipeline_config = None
if _RUN_INFERENCE.value:
devices = jax.local_devices(backend='gpu')
print(f'Found local devices: {devices}')
print('Building model from scratch...')
model_runner = ModelRunner(
model_class=diffusion_model.Diffuser,
config=make_model_config(
flash_attention_implementation=typing.cast(
attention.Implementation, _FLASH_ATTENTION_IMPLEMENTATION.value
)
),
device=devices[0],
model_dir=pathlib.Path(MODEL_DIR.value),
)
else:
print('Skipping running model inference.')
model_runner = None
print(f'Processing {len(fold_inputs)} fold inputs.')
for fold_input in fold_inputs:
process_fold_input(
fold_input=fold_input,
data_pipeline_config=data_pipeline_config,
model_runner=model_runner,
output_dir=os.path.join(_OUTPUT_DIR.value, fold_input.sanitised_name()),
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buckets=tuple(int(bucket) for bucket in _BUCKETS.value),