# 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. """Library to run Jackhmmer from Python.""" from concurrent import futures import glob import os import subprocess from typing import Any, Callable, Mapping, Optional, Sequence from urllib import request from absl import logging from alphafold.data.tools import utils # Internal import (7716). class Jackhmmer: """Python wrapper of the Jackhmmer binary.""" def __init__(self, *, binary_path: str, database_path: str, n_cpu: int = 8, n_iter: int = 1, e_value: float = 0.0001, z_value: Optional[int] = None, get_tblout: bool = False, filter_f1: float = 0.0005, filter_f2: float = 0.00005, filter_f3: float = 0.0000005, incdom_e: Optional[float] = None, dom_e: Optional[float] = None, num_streamed_chunks: Optional[int] = None, streaming_callback: Optional[Callable[[int], None]] = None): """Initializes the Python Jackhmmer wrapper. Args: binary_path: The path to the jackhmmer executable. database_path: The path to the jackhmmer database (FASTA format). n_cpu: The number of CPUs to give Jackhmmer. n_iter: The number of Jackhmmer iterations. e_value: The E-value, see Jackhmmer docs for more details. z_value: The Z-value, see Jackhmmer docs for more details. get_tblout: Whether to save tblout string. filter_f1: MSV and biased composition pre-filter, set to >1.0 to turn off. filter_f2: Viterbi pre-filter, set to >1.0 to turn off. filter_f3: Forward pre-filter, set to >1.0 to turn off. incdom_e: Domain e-value criteria for inclusion of domains in MSA/next round. dom_e: Domain e-value criteria for inclusion in tblout. num_streamed_chunks: Number of database chunks to stream over. streaming_callback: Callback function run after each chunk iteration with the iteration number as argument. """ self.binary_path = binary_path self.database_path = database_path self.num_streamed_chunks = num_streamed_chunks if not os.path.exists(self.database_path) and num_streamed_chunks is None: logging.error('Could not find Jackhmmer database %s', database_path) raise ValueError(f'Could not find Jackhmmer database {database_path}') self.n_cpu = n_cpu self.n_iter = n_iter self.e_value = e_value self.z_value = z_value self.filter_f1 = filter_f1 self.filter_f2 = filter_f2 self.filter_f3 = filter_f3 self.incdom_e = incdom_e self.dom_e = dom_e self.get_tblout = get_tblout self.streaming_callback = streaming_callback def _query_chunk(self, input_fasta_path: str, database_path: str ) -> Mapping[str, Any]: """Queries the database chunk using Jackhmmer.""" with utils.tmpdir_manager(base_dir='/tmp') as query_tmp_dir: sto_path = os.path.join(query_tmp_dir, 'output.sto') # The F1/F2/F3 are the expected proportion to pass each of the filtering # stages (which get progressively more expensive), reducing these # speeds up the pipeline at the expensive of sensitivity. They are # currently set very low to make querying Mgnify run in a reasonable # amount of time. cmd_flags = [ # Don't pollute stdout with Jackhmmer output. '-o', '/dev/null', '-A', sto_path, '--noali', '--F1', str(self.filter_f1), '--F2', str(self.filter_f2), '--F3', str(self.filter_f3), '--incE', str(self.e_value), # Report only sequences with E-values <= x in per-sequence output. '-E', str(self.e_value), '--cpu', str(self.n_cpu), '-N', str(self.n_iter) ] if self.get_tblout: tblout_path = os.path.join(query_tmp_dir, 'tblout.txt') cmd_flags.extend(['--tblout', tblout_path]) if self.z_value: cmd_flags.extend(['-Z', str(self.z_value)]) if self.dom_e is not None: cmd_flags.extend(['--domE', str(self.dom_e)]) if self.incdom_e is not None: cmd_flags.extend(['--incdomE', str(self.incdom_e)]) cmd = [self.binary_path] + cmd_flags + [input_fasta_path, database_path] logging.info('Launching subprocess "%s"', ' '.join(cmd)) process = subprocess.Popen( cmd, stdout=subprocess.PIPE, stderr=subprocess.PIPE) with utils.timing( f'Jackhmmer ({os.path.basename(database_path)}) query'): _, stderr = process.communicate() retcode = process.wait() if retcode: raise RuntimeError( 'Jackhmmer failed\nstderr:\n%s\n' % stderr.decode('utf-8')) # Get e-values for each target name tbl = '' if self.get_tblout: with open(tblout_path) as f: tbl = f.read() with open(sto_path) as f: sto = f.read() raw_output = dict( sto=sto, tbl=tbl, stderr=stderr, n_iter=self.n_iter, e_value=self.e_value) return raw_output def query(self, input_fasta_path: str) -> Sequence[Mapping[str, Any]]: """Queries the database using Jackhmmer.""" if self.num_streamed_chunks is None: return [self._query_chunk(input_fasta_path, self.database_path)] db_basename = os.path.basename(self.database_path) db_remote_chunk = lambda db_idx: f'{self.database_path}.{db_idx}' db_local_chunk = lambda db_idx: f'/tmp/ramdisk/{db_basename}.{db_idx}' # Remove existing files to prevent OOM for f in glob.glob(db_local_chunk('[0-9]*')): try: os.remove(f) except OSError: print(f'OSError while deleting {f}') # Download the (i+1)-th chunk while Jackhmmer is running on the i-th chunk with futures.ThreadPoolExecutor(max_workers=2) as executor: chunked_output = [] for i in range(1, self.num_streamed_chunks + 1): # Copy the chunk locally if i == 1: future = executor.submit( request.urlretrieve, db_remote_chunk(i), db_local_chunk(i)) if i < self.num_streamed_chunks: next_future = executor.submit( request.urlretrieve, db_remote_chunk(i+1), db_local_chunk(i+1)) # Run Jackhmmer with the chunk future.result() chunked_output.append( self._query_chunk(input_fasta_path, db_local_chunk(i))) # Remove the local copy of the chunk os.remove(db_local_chunk(i)) future = next_future if self.streaming_callback: self.streaming_callback(i) return chunked_output