Source code for cassandra.concurrent

# Copyright 2013-2015 DataStax, Inc.
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# 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
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# http://www.apache.org/licenses/LICENSE-2.0
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# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
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# See the License for the specific language governing permissions and
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from heapq import heappush, heappop
from itertools import cycle
import six
from six.moves import xrange, zip
from threading import Condition
import sys

from cassandra.cluster import ResultSet

import logging
log = logging.getLogger(__name__)

[docs]def execute_concurrent(session, statements_and_parameters, concurrency=100, raise_on_first_error=True, results_generator=False): """ Executes a sequence of (statement, parameters) tuples concurrently. Each ``parameters`` item must be a sequence or :const:`None`. The `concurrency` parameter controls how many statements will be executed concurrently. When :attr:`.Cluster.protocol_version` is set to 1 or 2, it is recommended that this be kept below 100 times the number of core connections per host times the number of connected hosts (see :meth:`.Cluster.set_core_connections_per_host`). If that amount is exceeded, the event loop thread may attempt to block on new connection creation, substantially impacting throughput. If :attr:`~.Cluster.protocol_version` is 3 or higher, you can safely experiment with higher levels of concurrency. If `raise_on_first_error` is left as :const:`True`, execution will stop after the first failed statement and the corresponding exception will be raised. `results_generator` controls how the results are returned. If :const:`False`, the results are returned only after all requests have completed. If :const:`True`, a generator expression is returned. Using a generator results in a constrained memory footprint when the results set will be large -- results are yielded as they return instead of materializing the entire list at once. The trade for lower memory footprint is marginal CPU overhead (more thread coordination and sorting out-of-order results on-the-fly). A sequence of ``(success, result_or_exc)`` tuples is returned in the same order that the statements were passed in. If ``success`` is :const:`False`, there was an error executing the statement, and ``result_or_exc`` will be an :class:`Exception`. If ``success`` is :const:`True`, ``result_or_exc`` will be the query result. Example usage:: select_statement = session.prepare("SELECT * FROM users WHERE id=?") statements_and_params = [] for user_id in user_ids: params = (user_id, ) statements_and_params.append((select_statement, params)) results = execute_concurrent( session, statements_and_params, raise_on_first_error=False) for (success, result) in results: if not success: handle_error(result) # result will be an Exception else: process_user(result[0]) # result will be a list of rows """ if concurrency <= 0: raise ValueError("concurrency must be greater than 0") if not statements_and_parameters: return [] executor = ConcurrentExecutorGenResults(session, statements_and_parameters) if results_generator else ConcurrentExecutorListResults(session, statements_and_parameters) return executor.execute(concurrency, raise_on_first_error)
class _ConcurrentExecutor(object): def __init__(self, session, statements_and_params): self.session = session self._enum_statements = enumerate(iter(statements_and_params)) self._condition = Condition() self._fail_fast = False self._results_queue = [] self._current = 0 self._exec_count = 0 def execute(self, concurrency, fail_fast): self._fail_fast = fail_fast self._results_queue = [] self._current = 0 self._exec_count = 0 with self._condition: for n in xrange(concurrency): if not self._execute_next(): break return self._results() def _execute_next(self): # lock must be held try: (idx, (statement, params)) = next(self._enum_statements) self._exec_count += 1 self._execute(idx, statement, params) return True except StopIteration: pass def _execute(self, idx, statement, params): try: future = self.session.execute_async(statement, params, timeout=None) args = (future, idx) future.add_callbacks( callback=self._on_success, callback_args=args, errback=self._on_error, errback_args=args) except Exception as exc: # exc_info with fail_fast to preserve stack trace info when raising on the client thread # (matches previous behavior -- not sure why we wouldn't want stack trace in the other case) e = sys.exc_info() if self._fail_fast and six.PY2 else exc self._put_result(e, idx, False) def _on_success(self, result, future, idx): future.clear_callbacks() self._put_result(ResultSet(future, result), idx, True) def _on_error(self, result, future, idx): self._put_result(result, idx, False) @staticmethod def _raise(exc): if six.PY2 and isinstance(exc, tuple): (exc_type, value, traceback) = exc six.reraise(exc_type, value, traceback) else: raise exc class ConcurrentExecutorGenResults(_ConcurrentExecutor): def _put_result(self, result, idx, success): with self._condition: heappush(self._results_queue, (idx, (success, result))) self._execute_next() self._condition.notify() def _results(self): with self._condition: while self._current < self._exec_count: while not self._results_queue or self._results_queue[0][0] != self._current: self._condition.wait() while self._results_queue and self._results_queue[0][0] == self._current: _, res = heappop(self._results_queue) try: self._condition.release() if self._fail_fast and not res[0]: self._raise(res[1]) yield res finally: self._condition.acquire() self._current += 1 class ConcurrentExecutorListResults(_ConcurrentExecutor): _exception = None def execute(self, concurrency, fail_fast): self._exception = None return super(ConcurrentExecutorListResults, self).execute(concurrency, fail_fast) def _put_result(self, result, idx, success): self._results_queue.append((idx, (success, result))) with self._condition: self._current += 1 if not success and self._fail_fast: if not self._exception: self._exception = result self._condition.notify() elif not self._execute_next() and self._current == self._exec_count: self._condition.notify() def _results(self): with self._condition: while self._current < self._exec_count: self._condition.wait() if self._exception and self._fail_fast: self._raise(self._exception) if self._exception and self._fail_fast: # raise the exception even if there was no wait self._raise(self._exception) return [r[1] for r in sorted(self._results_queue)]
[docs]def execute_concurrent_with_args(session, statement, parameters, *args, **kwargs): """ Like :meth:`~cassandra.concurrent.execute_concurrent()`, but takes a single statement and a sequence of parameters. Each item in ``parameters`` should be a sequence or :const:`None`. Example usage:: statement = session.prepare("INSERT INTO mytable (a, b) VALUES (1, ?)") parameters = [(x,) for x in range(1000)] execute_concurrent_with_args(session, statement, parameters, concurrency=50) """ return execute_concurrent(session, zip(cycle((statement,)), parameters), *args, **kwargs)