Esempio n. 1
0
    def initialize(self):
        """
        Initialise the processing
        """
        # Get the start time
        start_time = time()

        # Ensure the reflections contain bounding boxes
        assert "bbox" in self.reflections, "Reflections have no bbox"

        # Split the reflections into partials
        self._split_reflections()

        # Create the reflection manager
        frames = self.experiments[0].scan.get_array_range()
        self.manager = ReflectionManagerPerImage(frames, self.reflections)

        # Parallel reading of HDF5 from the same handle is not allowed. Python
        # multiprocessing is a bit messed up and used fork on linux so need to
        # close and reopen file.
        for exp in self.experiments:
            if exp.imageset.reader().is_single_file_reader():
                exp.imageset.reader().nullify_format_instance()

        # Set the initialization time
        self.time.initialize = time() - start_time
Esempio n. 2
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    def initialize(self):
        '''
    Initialise the processing

    '''
        from dials_algorithms_integration_integrator_ext import ReflectionManagerPerImage
        from time import time

        # Get the start time
        start_time = time()

        # Ensure the reflections contain bounding boxes
        assert "bbox" in self.reflections, "Reflections have no bbox"

        # Split the reflections into partials
        self._split_reflections()

        # Create the reflection manager
        frames = self.experiments[0].scan.get_array_range()
        self.manager = ReflectionManagerPerImage(frames, self.reflections)

        # Parallel reading of HDF5 from the same handle is not allowed. Python
        # multiprocessing is a bit messed up and used fork on linux so need to
        # close and reopen file.
        from dxtbx.imageset import SingleFileReader
        for exp in self.experiments:
            if isinstance(exp.imageset.reader(), SingleFileReader):
                exp.imageset.reader().nullify_format_instance()

        # Set the initialization time
        self.time.initialize = time() - start_time
Esempio n. 3
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  def initialize(self):
    '''
    Initialise the processing

    '''
    from dials_algorithms_integration_integrator_ext import ReflectionManagerPerImage
    from time import time

    # Get the start time
    start_time = time()

    # Ensure the reflections contain bounding boxes
    assert "bbox" in self.reflections, "Reflections have no bbox"

    # Split the reflections into partials
    self._split_reflections()

    # Create the reflection manager
    frames = self.experiments[0].scan.get_array_range()
    self.manager = ReflectionManagerPerImage(frames, self.reflections)

    # Parallel reading of HDF5 from the same handle is not allowed. Python
    # multiprocessing is a bit messed up and used fork on linux so need to
    # close and reopen file.
    from dxtbx.imageset import SingleFileReader
    for exp in self.experiments:
      if isinstance(exp.imageset.reader(), SingleFileReader):
        exp.imageset.reader().nullify_format_instance()

    # Set the initialization time
    self.time.initialize = time() - start_time
Esempio n. 4
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    def initialize(self):
        """
        Initialise the processing
        """
        # Get the start time
        start_time = time()

        # Ensure the reflections contain bounding boxes
        assert "bbox" in self.reflections, "Reflections have no bbox"

        # Split the reflections into partials
        self._split_reflections()

        # Create the reflection manager
        frames = self.experiments[0].scan.get_array_range()
        self.manager = ReflectionManagerPerImage(frames, self.reflections)

        # Set the initialization time
        self.time.initialize = time() - start_time
Esempio n. 5
0
class ManagerImage:
    """
    A class to manage processing book-keeping
    """
    def __init__(self, experiments, reflections, params):
        """
        Initialise the manager.

        :param experiments: The list of experiments
        :param reflections: The list of reflections
        :param params: The phil parameters
        """
        # Initialise the callbacks
        self.executor = None

        # Save some data
        self.experiments = experiments
        self.reflections = reflections

        # Save some parameters
        self.params = params

        # Set the finalized flag to False
        self.finalized = False

        # Initialise the timing information
        self.time = dials.algorithms.integration.TimingInfo()

    def initialize(self):
        """
        Initialise the processing
        """
        # Get the start time
        start_time = time()

        # Ensure the reflections contain bounding boxes
        assert "bbox" in self.reflections, "Reflections have no bbox"

        # Split the reflections into partials
        self._split_reflections()

        # Create the reflection manager
        frames = self.experiments[0].scan.get_array_range()
        self.manager = ReflectionManagerPerImage(frames, self.reflections)

        # Set the initialization time
        self.time.initialize = time() - start_time

    def task(self, index):
        """
        Get a task.
        """
        return Task(
            index=index,
            frames=self.manager.frames(index),
            reflections=self.manager.split(index),
            experiments=self.experiments,
            params=self.params,
            executor=self.executor,
        )

    def tasks(self):
        """
        Iterate through the tasks.
        """
        for i in range(len(self)):
            yield self.task(i)

    def accumulate(self, result):
        """
        Accumulate the results.
        """
        self.manager.accumulate(result.index, result.reflections)
        if result.data is not None:
            self.executor.accumulate(result.index, result.data)
        self.time.read += result.read_time
        self.time.process += result.process_time
        self.time.total += result.total_time

    def finalize(self):
        """
        Finalize the processing and finish.
        """
        # Get the start time
        start_time = time()

        # Check manager is finished
        assert self.manager.finished(), "Manager is not finished"

        # Update the time and finalized flag
        self.time.finalize = time() - start_time
        self.finalized = True

    def result(self):
        """
        Return the result.

        :return: The result
        """
        assert self.finalized, "Manager is not finalized"
        return self.reflections

    def finished(self):
        """
        Return if all tasks have finished.

        :return: True/False all tasks have finished
        """
        return self.finalized and self.manager.finished()

    def __len__(self):
        """
        Return the number of tasks.

        :return: the number of tasks
        """
        return len(self.manager)

    def summary(self):
        return ""

    def _split_reflections(self):
        """
        Split the reflections into partials or over job boundaries
        """

        # Optionally split the reflection table into partials, otherwise,
        # split over job boundaries
        num_full = len(self.reflections)
        self.reflections.split_partials()
        num_partial = len(self.reflections)
        assert num_partial >= num_full, "Invalid number of partials"
        if num_partial > num_full:
            logger.info(
                " Split %d reflections into %d partial reflections\n",
                num_full,
                num_partial,
            )
Esempio n. 6
0
class ManagerImage(object):
    '''
  A class to manage processing book-keeping

  '''
    def __init__(self, experiments, reflections, params):
        '''
    Initialise the manager.

    :param experiments: The list of experiments
    :param reflections: The list of reflections
    :param params: The phil parameters

    '''
        # Initialise the callbacks
        self.executor = None

        # Save some data
        self.experiments = experiments
        self.reflections = reflections

        # Save some parameters
        self.params = params

        # Set the finalized flag to False
        self.finalized = False

        # Initialise the timing information
        self.time = TimingInfo()

    def initialize(self):
        '''
    Initialise the processing

    '''
        from dials_algorithms_integration_integrator_ext import ReflectionManagerPerImage
        from time import time

        # Get the start time
        start_time = time()

        # Ensure the reflections contain bounding boxes
        assert "bbox" in self.reflections, "Reflections have no bbox"

        # Split the reflections into partials
        self._split_reflections()

        # Create the reflection manager
        frames = self.experiments[0].scan.get_array_range()
        self.manager = ReflectionManagerPerImage(frames, self.reflections)

        # Parallel reading of HDF5 from the same handle is not allowed. Python
        # multiprocessing is a bit messed up and used fork on linux so need to
        # close and reopen file.
        from dxtbx.imageset import SingleFileReader
        for exp in self.experiments:
            if isinstance(exp.imageset.reader(), SingleFileReader):
                exp.imageset.reader().nullify_format_instance()

        # Set the initialization time
        self.time.initialize = time() - start_time

    def task(self, index):
        '''
    Get a task.

    '''
        return Task(index=index,
                    frames=self.manager.frames(index),
                    reflections=self.manager.split(index),
                    experiments=self.experiments,
                    params=self.params,
                    executor=self.executor)

    def tasks(self):
        '''
    Iterate through the tasks.

    '''
        for i in range(len(self)):
            yield self.task(i)

    def accumulate(self, result):
        '''
    Accumulate the results.

    '''
        self.manager.accumulate(result.index, result.reflections)
        if result.data is not None:
            self.executor.accumulate(result.index, result.data)
        self.time.read += result.read_time
        self.time.process += result.process_time
        self.time.total += result.total_time

    def finalize(self):
        '''
    Finalize the processing and finish.

    '''
        from time import time

        # Get the start time
        start_time = time()

        # Check manager is finished
        assert self.manager.finished(), "Manager is not finished"

        # Update the time and finalized flag
        self.time.finalize = time() - start_time
        self.finalized = True

    def result(self):
        '''
    Return the result.

    :return: The result

    '''
        assert self.finalized, "Manager is not finalized"
        return self.reflections

    def finished(self):
        '''
    Return if all tasks have finished.

    :return: True/False all tasks have finished

    '''
        return self.finalized and self.manager.finished()

    def __len__(self):
        '''
    Return the number of tasks.

    :return: the number of tasks

    '''
        return len(self.manager)

    def summary(self):
        return ''

    def _split_reflections(self):
        '''
    Split the reflections into partials or over job boundaries

    '''

        # Optionally split the reflection table into partials, otherwise,
        # split over job boundaries
        num_full = len(self.reflections)
        self.reflections.split_partials()
        num_partial = len(self.reflections)
        assert num_partial >= num_full, "Invalid number of partials"
        if num_partial > num_full:
            logger.info(' Split %d reflections into %d partial reflections\n' %
                        (num_full, num_partial))
Esempio n. 7
0
class ManagerImage(object):
  '''
  A class to manage processing book-keeping

  '''

  def __init__(self, experiments, reflections, params):
    '''
    Initialise the manager.

    :param experiments: The list of experiments
    :param reflections: The list of reflections
    :param params: The phil parameters

    '''
    # Initialise the callbacks
    self.executor = None

    # Save some data
    self.experiments = experiments
    self.reflections = reflections

    # Save some parameters
    self.params = params

    # Set the finalized flag to False
    self.finalized = False

    # Initialise the timing information
    self.time = TimingInfo()

  def initialize(self):
    '''
    Initialise the processing

    '''
    from dials_algorithms_integration_integrator_ext import ReflectionManagerPerImage
    from time import time

    # Get the start time
    start_time = time()

    # Ensure the reflections contain bounding boxes
    assert "bbox" in self.reflections, "Reflections have no bbox"

    # Split the reflections into partials
    self._split_reflections()

    # Create the reflection manager
    frames = self.experiments[0].scan.get_array_range()
    self.manager = ReflectionManagerPerImage(frames, self.reflections)

    # Parallel reading of HDF5 from the same handle is not allowed. Python
    # multiprocessing is a bit messed up and used fork on linux so need to
    # close and reopen file.
    from dxtbx.imageset import SingleFileReader
    for exp in self.experiments:
      if isinstance(exp.imageset.reader(), SingleFileReader):
        exp.imageset.reader().nullify_format_instance()

    # Set the initialization time
    self.time.initialize = time() - start_time

  def task(self, index):
    '''
    Get a task.

    '''
    return Task(
        index       = index,
        frames      = self.manager.frames(index),
        reflections = self.manager.split(index),
        experiments = self.experiments,
        params      = self.params,
        executor    = self.executor)

  def tasks(self):
    '''
    Iterate through the tasks.

    '''
    for i in range(len(self)):
      yield self.task(i)

  def accumulate(self, result):
    '''
    Accumulate the results.

    '''
    self.manager.accumulate(result.index, result.reflections)
    if result.data is not None:
      self.executor.accumulate(result.index, result.data)
    self.time.read += result.read_time
    self.time.process += result.process_time
    self.time.total += result.total_time

  def finalize(self):
    '''
    Finalize the processing and finish.

    '''
    from time import time

    # Get the start time
    start_time = time()

    # Check manager is finished
    assert self.manager.finished(), "Manager is not finished"

    # Update the time and finalized flag
    self.time.finalize = time() - start_time
    self.finalized = True

  def result(self):
    '''
    Return the result.

    :return: The result

    '''
    assert self.finalized, "Manager is not finalized"
    return self.reflections

  def finished(self):
    '''
    Return if all tasks have finished.

    :return: True/False all tasks have finished

    '''
    return self.finalized and self.manager.finished()

  def __len__(self):
    '''
    Return the number of tasks.

    :return: the number of tasks

    '''
    return len(self.manager)

  def summary(self):
    return ''

  def _split_reflections(self):
    '''
    Split the reflections into partials or over job boundaries

    '''

    # Optionally split the reflection table into partials, otherwise,
    # split over job boundaries
    num_full = len(self.reflections)
    self.reflections.split_partials()
    num_partial = len(self.reflections)
    assert num_partial >= num_full, "Invalid number of partials"
    if num_partial > num_full:
      logger.info(' Split %d reflections into %d partial reflections\n' % (
        num_full,
        num_partial))