# Licensed to Elasticsearch B.V under one or more agreements. # Elasticsearch B.V licenses this file to you under the Apache 2.0 License. # See the LICENSE file in the project root for more information import asyncio from ..exceptions import TransportError from ..compat import map from ..helpers.actions import ( _ActionChunker, _process_bulk_chunk_error, _process_bulk_chunk_success, expand_action, ) from ..helpers.errors import ScanError import logging logger = logging.getLogger("elasticsearch.helpers") async def _chunk_actions(actions, chunk_size, max_chunk_bytes, serializer): """ Split actions into chunks by number or size, serialize them into strings in the process. """ chunker = _ActionChunker( chunk_size=chunk_size, max_chunk_bytes=max_chunk_bytes, serializer=serializer ) async for action, data in actions: ret = chunker.feed(action, data) if ret: yield ret ret = chunker.flush() if ret: yield ret async def _process_bulk_chunk( client, bulk_actions, bulk_data, raise_on_exception=True, raise_on_error=True, *args, **kwargs ): """ Send a bulk request to elasticsearch and process the output. """ try: # send the actual request resp = await client.bulk("\n".join(bulk_actions) + "\n", *args, **kwargs) except TransportError as e: gen = _process_bulk_chunk_error( error=e, bulk_data=bulk_data, raise_on_exception=raise_on_exception, raise_on_error=raise_on_error, ) else: gen = _process_bulk_chunk_success( resp=resp, bulk_data=bulk_data, raise_on_error=raise_on_error ) for item in gen: yield item def aiter(x): """Turns an async iterable or iterable into an async iterator""" if hasattr(x, "__anext__"): return x elif hasattr(x, "__aiter__"): return x.__aiter__() async def f(): for item in x: yield item return f().__aiter__() async def azip(*iterables): """Zips async iterables and iterables into an async iterator with the same behavior as zip() """ aiters = [aiter(x) for x in iterables] try: while True: yield tuple([await x.__anext__() for x in aiters]) except StopAsyncIteration: pass async def async_streaming_bulk( client, actions, chunk_size=500, max_chunk_bytes=100 * 1024 * 1024, raise_on_error=True, expand_action_callback=expand_action, raise_on_exception=True, max_retries=0, initial_backoff=2, max_backoff=600, yield_ok=True, *args, **kwargs ): """ Streaming bulk consumes actions from the iterable passed in and yields results per action. For non-streaming usecases use :func:`~elasticsearch.helpers.async_bulk` which is a wrapper around streaming bulk that returns summary information about the bulk operation once the entire input is consumed and sent. If you specify ``max_retries`` it will also retry any documents that were rejected with a ``429`` status code. To do this it will wait (**by calling asyncio.sleep**) for ``initial_backoff`` seconds and then, every subsequent rejection for the same chunk, for double the time every time up to ``max_backoff`` seconds. :arg client: instance of :class:`~elasticsearch.AsyncElasticsearch` to use :arg actions: iterable or async iterable containing the actions to be executed :arg chunk_size: number of docs in one chunk sent to es (default: 500) :arg max_chunk_bytes: the maximum size of the request in bytes (default: 100MB) :arg raise_on_error: raise ``BulkIndexError`` containing errors (as `.errors`) from the execution of the last chunk when some occur. By default we raise. :arg raise_on_exception: if ``False`` then don't propagate exceptions from call to ``bulk`` and just report the items that failed as failed. :arg expand_action_callback: callback executed on each action passed in, should return a tuple containing the action line and the data line (`None` if data line should be omitted). :arg max_retries: maximum number of times a document will be retried when ``429`` is received, set to 0 (default) for no retries on ``429`` :arg initial_backoff: number of seconds we should wait before the first retry. Any subsequent retries will be powers of ``initial_backoff * 2**retry_number`` :arg max_backoff: maximum number of seconds a retry will wait :arg yield_ok: if set to False will skip successful documents in the output """ async def map_actions(): async for item in aiter(actions): yield expand_action_callback(item) async for bulk_data, bulk_actions in _chunk_actions( map_actions(), chunk_size, max_chunk_bytes, client.transport.serializer ): for attempt in range(max_retries + 1): to_retry, to_retry_data = [], [] if attempt: await asyncio.sleep( min(max_backoff, initial_backoff * 2 ** (attempt - 1)) ) try: async for data, (ok, info) in azip( bulk_data, _process_bulk_chunk( client, bulk_actions, bulk_data, raise_on_exception, raise_on_error, *args, **kwargs ), ): if not ok: action, info = info.popitem() # retry if retries enabled, we get 429, and we are not # in the last attempt if ( max_retries and info["status"] == 429 and (attempt + 1) <= max_retries ): # _process_bulk_chunk expects strings so we need to # re-serialize the data to_retry.extend( map(client.transport.serializer.dumps, data) ) to_retry_data.append(data) else: yield ok, {action: info} elif yield_ok: yield ok, info except TransportError as e: # suppress 429 errors since we will retry them if attempt == max_retries or e.status_code != 429: raise else: if not to_retry: break # retry only subset of documents that didn't succeed bulk_actions, bulk_data = to_retry, to_retry_data async def async_bulk(client, actions, stats_only=False, *args, **kwargs): """ Helper for the :meth:`~elasticsearch.AsyncElasticsearch.bulk` api that provides a more human friendly interface - it consumes an iterator of actions and sends them to elasticsearch in chunks. It returns a tuple with summary information - number of successfully executed actions and either list of errors or number of errors if ``stats_only`` is set to ``True``. Note that by default we raise a ``BulkIndexError`` when we encounter an error so options like ``stats_only`` only+ apply when ``raise_on_error`` is set to ``False``. When errors are being collected original document data is included in the error dictionary which can lead to an extra high memory usage. If you need to process a lot of data and want to ignore/collect errors please consider using the :func:`~elasticsearch.helpers.async_streaming_bulk` helper which will just return the errors and not store them in memory. :arg client: instance of :class:`~elasticsearch.AsyncElasticsearch` to use :arg actions: iterator containing the actions :arg stats_only: if `True` only report number of successful/failed operations instead of just number of successful and a list of error responses Any additional keyword arguments will be passed to :func:`~elasticsearch.helpers.async_streaming_bulk` which is used to execute the operation, see :func:`~elasticsearch.helpers.async_streaming_bulk` for more accepted parameters. """ success, failed = 0, 0 # list of errors to be collected is not stats_only errors = [] # make streaming_bulk yield successful results so we can count them kwargs["yield_ok"] = True async for ok, item in async_streaming_bulk(client, actions, *args, **kwargs): # go through request-response pairs and detect failures if not ok: if not stats_only: errors.append(item) failed += 1 else: success += 1 return success, failed if stats_only else errors async def async_scan( client, query=None, scroll="5m", raise_on_error=True, preserve_order=False, size=1000, request_timeout=None, clear_scroll=True, scroll_kwargs=None, **kwargs ): """ Simple abstraction on top of the :meth:`~elasticsearch.AsyncElasticsearch.scroll` api - a simple iterator that yields all hits as returned by underlining scroll requests. By default scan does not return results in any pre-determined order. To have a standard order in the returned documents (either by score or explicit sort definition) when scrolling, use ``preserve_order=True``. This may be an expensive operation and will negate the performance benefits of using ``scan``. :arg client: instance of :class:`~elasticsearch.AsyncElasticsearch` to use :arg query: body for the :meth:`~elasticsearch.AsyncElasticsearch.search` api :arg scroll: Specify how long a consistent view of the index should be maintained for scrolled search :arg raise_on_error: raises an exception (``ScanError``) if an error is encountered (some shards fail to execute). By default we raise. :arg preserve_order: don't set the ``search_type`` to ``scan`` - this will cause the scroll to paginate with preserving the order. Note that this can be an extremely expensive operation and can easily lead to unpredictable results, use with caution. :arg size: size (per shard) of the batch send at each iteration. :arg request_timeout: explicit timeout for each call to ``scan`` :arg clear_scroll: explicitly calls delete on the scroll id via the clear scroll API at the end of the method on completion or error, defaults to true. :arg scroll_kwargs: additional kwargs to be passed to :meth:`~elasticsearch.AsyncElasticsearch.scroll` Any additional keyword arguments will be passed to the initial :meth:`~elasticsearch.AsyncElasticsearch.search` call:: async_scan(es, query={"query": {"match": {"title": "python"}}}, index="orders-*", doc_type="books" ) """ scroll_kwargs = scroll_kwargs or {} if not preserve_order: query = query.copy() if query else {} query["sort"] = "_doc" # initial search resp = await client.search( body=query, scroll=scroll, size=size, request_timeout=request_timeout, **kwargs ) scroll_id = resp.get("_scroll_id") try: while scroll_id and resp["hits"]["hits"]: for hit in resp["hits"]["hits"]: yield hit # check if we have any errors if (resp["_shards"]["successful"] + resp["_shards"]["skipped"]) < resp[ "_shards" ]["total"]: logger.warning( "Scroll request has only succeeded on %d (+%d skipped) shards out of %d.", resp["_shards"]["successful"], resp["_shards"]["skipped"], resp["_shards"]["total"], ) if raise_on_error: raise ScanError( scroll_id, "Scroll request has only succeeded on %d (+%d skiped) shards out of %d." % ( resp["_shards"]["successful"], resp["_shards"]["skipped"], resp["_shards"]["total"], ), ) resp = await client.scroll( body={"scroll_id": scroll_id, "scroll": scroll}, **scroll_kwargs ) scroll_id = resp.get("_scroll_id") finally: if scroll_id and clear_scroll: await client.clear_scroll(body={"scroll_id": [scroll_id]}, ignore=(404,)) async def async_reindex( client, source_index, target_index, query=None, target_client=None, chunk_size=500, scroll="5m", scan_kwargs={}, bulk_kwargs={}, ): """ Reindex all documents from one index that satisfy a given query to another, potentially (if `target_client` is specified) on a different cluster. If you don't specify the query you will reindex all the documents. Since ``2.3`` a :meth:`~elasticsearch.AsyncElasticsearch.reindex` api is available as part of elasticsearch itself. It is recommended to use the api instead of this helper wherever possible. The helper is here mostly for backwards compatibility and for situations where more flexibility is needed. .. note:: This helper doesn't transfer mappings, just the data. :arg client: instance of :class:`~elasticsearch.AsyncElasticsearch` to use (for read if `target_client` is specified as well) :arg source_index: index (or list of indices) to read documents from :arg target_index: name of the index in the target cluster to populate :arg query: body for the :meth:`~elasticsearch.AsyncElasticsearch.search` api :arg target_client: optional, is specified will be used for writing (thus enabling reindex between clusters) :arg chunk_size: number of docs in one chunk sent to es (default: 500) :arg scroll: Specify how long a consistent view of the index should be maintained for scrolled search :arg scan_kwargs: additional kwargs to be passed to :func:`~elasticsearch.helpers.async_scan` :arg bulk_kwargs: additional kwargs to be passed to :func:`~elasticsearch.helpers.async_bulk` """ target_client = client if target_client is None else target_client docs = async_scan( client, query=query, index=source_index, scroll=scroll, **scan_kwargs ) async def _change_doc_index(hits, index): async for h in hits: h["_index"] = index if "fields" in h: h.update(h.pop("fields")) yield h kwargs = {"stats_only": True} kwargs.update(bulk_kwargs) return await async_bulk( target_client, _change_doc_index(docs, target_index), chunk_size=chunk_size, **kwargs )