run_docker.py 10.1 KB
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# 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.

"""Docker launch script for Alphafold docker image."""

import os
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import pathlib
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import signal
from typing import Tuple

from absl import app
from absl import flags
from absl import logging
import docker
from docker import types


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flags.DEFINE_bool(
    'use_gpu', True, 'Enable NVIDIA runtime to run with GPUs.')
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flags.DEFINE_boolean(
    'run_relax', True,
    'Whether to run the final relaxation step on the predicted models. Turning '
    'relax off might result in predictions with distracting stereochemical '
    'violations but might help in case you are having issues with the '
    'relaxation stage.')
flags.DEFINE_bool(
    'enable_gpu_relax', True, 'Run relax on GPU if GPU is enabled.')
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flags.DEFINE_string(
    'gpu_devices', 'all',
    'Comma separated list of devices to pass to NVIDIA_VISIBLE_DEVICES.')
flags.DEFINE_list(
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    'fasta_paths', None, 'Paths to FASTA files, each containing a prediction '
    'target that will be folded one after another. If a FASTA file contains '
    'multiple sequences, then it will be folded as a multimer. Paths should be '
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    'separated by commas. All FASTA paths must have a unique basename as the '
    'basename is used to name the output directories for each prediction.')
flags.DEFINE_string(
    'output_dir', '/tmp/alphafold',
    'Path to a directory that will store the results.')
flags.DEFINE_string(
    'data_dir', None,
    'Path to directory with supporting data: AlphaFold parameters and genetic '
    'and template databases. Set to the target of download_all_databases.sh.')
flags.DEFINE_string(
    'docker_image_name', 'alphafold', 'Name of the AlphaFold Docker image.')
flags.DEFINE_string(
    'max_template_date', None,
    'Maximum template release date to consider (ISO-8601 format: YYYY-MM-DD). '
    'Important if folding historical test sets.')
flags.DEFINE_enum(
    'db_preset', 'full_dbs', ['full_dbs', 'reduced_dbs'],
    'Choose preset MSA database configuration - smaller genetic database '
    'config (reduced_dbs) or full genetic database config (full_dbs)')
flags.DEFINE_enum(
    'model_preset', 'monomer',
    ['monomer', 'monomer_casp14', 'monomer_ptm', 'multimer'],
    'Choose preset model configuration - the monomer model, the monomer model '
    'with extra ensembling, monomer model with pTM head, or multimer model')
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flags.DEFINE_integer('num_multimer_predictions_per_model', 5, 'How many '
                     'predictions (each with a different random seed) will be '
                     'generated per model. E.g. if this is 2 and there are 5 '
                     'models then there will be 10 predictions per input. '
                     'Note: this FLAG only applies if model_preset=multimer')
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flags.DEFINE_boolean(
    'benchmark', False,
    'Run multiple JAX model evaluations to obtain a timing that excludes the '
    'compilation time, which should be more indicative of the time required '
    'for inferencing many proteins.')
flags.DEFINE_boolean(
    'use_precomputed_msas', False,
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    'Whether to read MSAs that have been written to disk instead of running '
    'the MSA tools. The MSA files are looked up in the output directory, so it '
    'must stay the same between multiple runs that are to reuse the MSAs. '
    'WARNING: This will not check if the sequence, database or configuration '
    'have changed.')
flags.DEFINE_string(
    'docker_user', f'{os.geteuid()}:{os.getegid()}',
    'UID:GID with which to run the Docker container. The output directories '
    'will be owned by this user:group. By default, this is the current user. '
    'Valid options are: uid or uid:gid, non-numeric values are not recognised '
    'by Docker unless that user has been created within the container.')
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FLAGS = flags.FLAGS

_ROOT_MOUNT_DIRECTORY = '/mnt/'


def _create_mount(mount_name: str, path: str) -> Tuple[types.Mount, str]:
  path = os.path.abspath(path)
  source_path = os.path.dirname(path)
  target_path = os.path.join(_ROOT_MOUNT_DIRECTORY, mount_name)
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  if not os.path.exists(source_path):
    raise ValueError(f'Failed to find source directory "{source_path}" to '
                     'mount in Docker container.')
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  logging.info('Mounting %s -> %s', source_path, target_path)
  mount = types.Mount(target_path, source_path, type='bind', read_only=True)
  return mount, os.path.join(target_path, os.path.basename(path))


def main(argv):
  if len(argv) > 1:
    raise app.UsageError('Too many command-line arguments.')

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  # You can individually override the following paths if you have placed the
  # data in locations other than the FLAGS.data_dir.

  # Path to the Uniref90 database for use by JackHMMER.
  uniref90_database_path = os.path.join(
      FLAGS.data_dir, 'uniref90', 'uniref90.fasta')

  # Path to the Uniprot database for use by JackHMMER.
  uniprot_database_path = os.path.join(
      FLAGS.data_dir, 'uniprot', 'uniprot.fasta')

  # Path to the MGnify database for use by JackHMMER.
  mgnify_database_path = os.path.join(
      FLAGS.data_dir, 'mgnify', 'mgy_clusters_2018_12.fa')

  # Path to the BFD database for use by HHblits.
  bfd_database_path = os.path.join(
      FLAGS.data_dir, 'bfd',
      'bfd_metaclust_clu_complete_id30_c90_final_seq.sorted_opt')

  # Path to the Small BFD database for use by JackHMMER.
  small_bfd_database_path = os.path.join(
      FLAGS.data_dir, 'small_bfd', 'bfd-first_non_consensus_sequences.fasta')

  # Path to the Uniclust30 database for use by HHblits.
  uniclust30_database_path = os.path.join(
      FLAGS.data_dir, 'uniclust30', 'uniclust30_2018_08', 'uniclust30_2018_08')

  # Path to the PDB70 database for use by HHsearch.
  pdb70_database_path = os.path.join(FLAGS.data_dir, 'pdb70', 'pdb70')

  # Path to the PDB seqres database for use by hmmsearch.
  pdb_seqres_database_path = os.path.join(
      FLAGS.data_dir, 'pdb_seqres', 'pdb_seqres.txt')

  # Path to a directory with template mmCIF structures, each named <pdb_id>.cif.
  template_mmcif_dir = os.path.join(FLAGS.data_dir, 'pdb_mmcif', 'mmcif_files')

  # Path to a file mapping obsolete PDB IDs to their replacements.
  obsolete_pdbs_path = os.path.join(FLAGS.data_dir, 'pdb_mmcif', 'obsolete.dat')

  alphafold_path = pathlib.Path(__file__).parent.parent
  data_dir_path = pathlib.Path(FLAGS.data_dir)
  if alphafold_path == data_dir_path or alphafold_path in data_dir_path.parents:
    raise app.UsageError(
        f'The download directory {FLAGS.data_dir} should not be a subdirectory '
        f'in the AlphaFold repository directory. If it is, the Docker build is '
        f'slow since the large databases are copied during the image creation.')

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  mounts = []
  command_args = []

  # Mount each fasta path as a unique target directory.
  target_fasta_paths = []
  for i, fasta_path in enumerate(FLAGS.fasta_paths):
    mount, target_path = _create_mount(f'fasta_path_{i}', fasta_path)
    mounts.append(mount)
    target_fasta_paths.append(target_path)
  command_args.append(f'--fasta_paths={",".join(target_fasta_paths)}')

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  database_paths = [
      ('uniref90_database_path', uniref90_database_path),
      ('mgnify_database_path', mgnify_database_path),
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      ('data_dir', FLAGS.data_dir),
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      ('template_mmcif_dir', template_mmcif_dir),
      ('obsolete_pdbs_path', obsolete_pdbs_path),
  ]
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  if FLAGS.model_preset == 'multimer':
    database_paths.append(('uniprot_database_path', uniprot_database_path))
    database_paths.append(('pdb_seqres_database_path',
                           pdb_seqres_database_path))
  else:
    database_paths.append(('pdb70_database_path', pdb70_database_path))

  if FLAGS.db_preset == 'reduced_dbs':
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    database_paths.append(('small_bfd_database_path', small_bfd_database_path))
  else:
    database_paths.extend([
        ('uniclust30_database_path', uniclust30_database_path),
        ('bfd_database_path', bfd_database_path),
    ])
  for name, path in database_paths:
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    if path:
      mount, target_path = _create_mount(name, path)
      mounts.append(mount)
      command_args.append(f'--{name}={target_path}')

  output_target_path = os.path.join(_ROOT_MOUNT_DIRECTORY, 'output')
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  mounts.append(types.Mount(output_target_path, FLAGS.output_dir, type='bind'))
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  use_gpu_relax = FLAGS.enable_gpu_relax and FLAGS.use_gpu

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  command_args.extend([
      f'--output_dir={output_target_path}',
      f'--max_template_date={FLAGS.max_template_date}',
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      f'--db_preset={FLAGS.db_preset}',
      f'--model_preset={FLAGS.model_preset}',
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      f'--benchmark={FLAGS.benchmark}',
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      f'--use_precomputed_msas={FLAGS.use_precomputed_msas}',
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      f'--num_multimer_predictions_per_model={FLAGS.num_multimer_predictions_per_model}',
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      f'--run_relax={FLAGS.run_relax}',
      f'--use_gpu_relax={use_gpu_relax}',
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      '--logtostderr',
  ])

  client = docker.from_env()
  container = client.containers.run(
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      image=FLAGS.docker_image_name,
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      command=command_args,
      runtime='nvidia' if FLAGS.use_gpu else None,
      remove=True,
      detach=True,
      mounts=mounts,
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      user=FLAGS.docker_user,
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      environment={
          'NVIDIA_VISIBLE_DEVICES': FLAGS.gpu_devices,
          # The following flags allow us to make predictions on proteins that
          # would typically be too long to fit into GPU memory.
          'TF_FORCE_UNIFIED_MEMORY': '1',
          'XLA_PYTHON_CLIENT_MEM_FRACTION': '4.0',
      })

  # Add signal handler to ensure CTRL+C also stops the running container.
  signal.signal(signal.SIGINT,
                lambda unused_sig, unused_frame: container.kill())

  for line in container.logs(stream=True):
    logging.info(line.strip().decode('utf-8'))


if __name__ == '__main__':
  flags.mark_flags_as_required([
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      'data_dir',
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      'fasta_paths',
      'max_template_date',
  ])
  app.run(main)