def test_translation_with_glossary(self, client): doc = Document(data=b'testing') source_container_sas_url = self.create_source_container(data=[doc]) target_container_sas_url = self.create_target_container() container_client = ContainerClient(self.storage_endpoint, self.source_container_name, self.storage_key) with open(GLOSSARY_FILE_NAME, "rb") as fd: container_client.upload_blob(name=GLOSSARY_FILE_NAME, data=fd.read()) prefix, suffix = source_container_sas_url.split("?") glossary_file_sas_url = prefix + "/" + GLOSSARY_FILE_NAME + "?" + suffix poller = client.begin_translation( source_container_sas_url, target_container_sas_url, "es", glossaries=[TranslationGlossary(glossary_url=glossary_file_sas_url, file_format="csv")] ) result = poller.result() container_client = ContainerClient(self.storage_endpoint, self.target_container_name, self.storage_key) # download translated file and assert that translation reflects glossary changes document = doc.name + doc.suffix with open(document, "wb") as my_blob: download_stream = container_client.download_blob(document) my_blob.write(download_stream.readall()) with open(document, "rb") as fd: translated = fd.readline() assert b'essai' in translated # glossary worked os.remove(document)
def upload_file( file_path: Path, container_name: str, blob_name: str, service: ContainerClient, settings: Settings, force: bool, ) -> None: file_extension = get_file_extension(file_path) if file_extension in settings.mimes: file_mime = settings.mimes.get(file_extension) else: file_mime = mimetypes.guess_type(file_path)[0] blob_name = remove_empty_folders(blob_name) logger.debug("Using mime `%s` for blob `%s`", file_mime, blob_name) logger.debug("File `%s` mapped to blob `%s`", file_path, blob_name) logger.info(f"Uploading `{blob_name}` ({file_mime})") with open(file_path, mode="rb") as file: service.upload_blob( name=blob_name, data=file, content_settings=ContentSettings(content_type=file_mime), overwrite=force, )
def create_storage_item(self, data, mime_type=None, item_name=None) -> str: """Creates and uploads data into online-storage. Returns its storage ID.""" if not mime_type: mime_type = guess_data_mimetype(data) # get signed url to use signature client = self._client url = '{}/{}/project/{}/storage/signedurl'.format(client.HOME, client.API_1, self.id) if item_name: url += '?name={}'.format(item_name) resp = client._auth_get(url) blob_id = 'storage/' + resp['id'] url = resp['signedurl'] url_object = urlparse(url) sas_token = url_object.query account_url = url_object.scheme + '://' + url_object.netloc container_name = url_object.path.split('/')[1] container_client = ContainerClient(account_url, container_name, credential=sas_token) container_client.upload_blob( blob_id, data, blob_type='BlockBlob', content_settings=ContentSettings(content_type=mime_type) ) return resp['id']
def combine_azure(self): from azure.storage.blob import ContainerClient, ContentSettings feed_uri = self.settings.get("FEED_URI") feed_prefix = self.settings.get("CITY_SCRAPERS_DIFF_FEED_PREFIX", "%Y/%m/%d") account_name, account_key = feed_uri[8::].split("@")[0].split(":") container = feed_uri.split("@")[1].split("/")[0] container_client = ContainerClient( "{}.blob.core.windows.net".format(account_name), container, credential=account_key, ) max_days_previous = 3 days_previous = 0 prefix_blobs = [] while days_previous <= max_days_previous: prefix_blobs = [ blob for blob in container_client.list_blobs( name_starts_with=( datetime.now() - timedelta(days=days_previous) ).strftime(feed_prefix) ) ] if len(prefix_blobs) > 0: break days_previous += 1 spider_blob_names = self.get_spider_paths([blob.name for blob in prefix_blobs]) meetings = [] for blob_name in spider_blob_names: feed_blob = container_client.get_blob_client(blob_name) feed_text = feed_blob.download_blob().content_as_text() meetings.extend( [json.loads(line) for line in feed_text.split("\n") if line] ) meetings = sorted(meetings, key=itemgetter(self.start_key)) yesterday_iso = (datetime.now() - timedelta(days=1)).isoformat()[:19] upcoming = [ meeting for meeting in meetings if meeting[self.start_key][:19] > yesterday_iso ] container_client.upload_blob( "latest.json", "\n".join([json.dumps(meeting) for meeting in meetings]), content_settings=ContentSettings(cache_control="no-cache"), overwrite=True, ) container_client.upload_blob( "upcoming.json", "\n".join([json.dumps(meeting) for meeting in upcoming]), content_settings=ContentSettings(cache_control="no-cache"), overwrite=True, )
def create_form_client_and_container_sas_url(self, **kwargs): form_recognizer_account = self.client_kwargs.pop("form_recognizer_account", None) if form_recognizer_account is None: form_recognizer_account = kwargs.pop("form_recognizer_account") form_recognizer_account_key = self.client_kwargs.pop("form_recognizer_account_key", None) if form_recognizer_account_key is None: form_recognizer_account_key = kwargs.pop("form_recognizer_account_key") storage_account = self.client_kwargs.pop("storage_account", None) if storage_account is None: storage_account = kwargs.pop("storage_account") storage_account_key = self.client_kwargs.pop("storage_account_key", None) if storage_account_key is None: storage_account_key = kwargs.pop("storage_account_key") if self.is_live: container_name = self.resource_random_name.replace("_", "-") # container names can't have underscore container_client = ContainerClient(storage_account.primary_endpoints.blob, container_name, storage_account_key) container_client.create_container() training_path = os.path.abspath(os.path.join(os.path.abspath(__file__), "..", "./sample_forms/training/")) for path, folder, files in os.walk(training_path): for document in files: with open(os.path.join(path, document), "rb") as data: if document == "Form_6.jpg": document = "subfolder/Form_6.jpg" # create virtual subfolder in container container_client.upload_blob(name=document, data=data) sas_token = generate_container_sas( storage_account.name, container_name, storage_account_key, permission=ContainerSasPermissions.from_string("rl"), expiry=datetime.utcnow() + timedelta(hours=1) ) container_sas_url = storage_account.primary_endpoints.blob + container_name + "?" + sas_token else: container_sas_url = "containersasurl" return self.client_cls( form_recognizer_account, AzureKeyCredential(form_recognizer_account_key), **self.client_kwargs ), container_sas_url
def create_source_container(self, data, blob_prefix=""): container_name = "src" + str(uuid.uuid4()) container_client = ContainerClient(self.storage_endpoint, container_name, self.storage_key) container_client.create_container() if isinstance(data, list): for blob in data: container_client.upload_blob(name=blob_prefix + str(uuid.uuid4()) + ".txt", data=blob) else: container_client.upload_blob(name=blob_prefix + str(uuid.uuid4()) + ".txt", data=data) return self.generate_sas_url(container_name, "rl")
def update_status_svg(self, spider, svg): from azure.storage.blob import ContainerClient, ContentSettings container_client = ContainerClient( "{}.blob.core.windows.net".format( self.crawler.settings.get("AZURE_ACCOUNT_NAME")), self.crawler.settings.get("CITY_SCRAPERS_STATUS_CONTAINER"), credential=self.crawler.settings.get("AZURE_ACCOUNT_KEY"), ) container_client.upload_blob( "{}.svg".format(spider.name), svg, content_settings=ContentSettings(content_type="image/svg+xml", cache_control="no-cache"), overwrite=True, )
def upload_opta_config(self) -> None: providers = self.layer.gen_providers(0) credentials = self.get_credentials() storage_account_name = providers["terraform"]["backend"]["azurerm"][ "storage_account_name"] container_name = providers["terraform"]["backend"]["azurerm"][ "container_name"] storage_client = ContainerClient( account_url=f"https://{storage_account_name}.blob.core.windows.net", container_name=container_name, credential=credentials, ) config_path = f"opta_config/{self.layer.name}" storage_client.upload_blob( name=config_path, data=json.dumps(self.layer.structured_config()), overwrite=True, )
class AzureBlobFeedStorage(BlockingFeedStorage): def __init__(self, uri): from azure.storage.blob import ContainerClient container = uri.split("@")[1].split("/")[0] filename = "/".join(uri.split("@")[1].split("/")[1::]) account_name, account_key = uri[8::].split("@")[0].split(":") self.account_name = account_name self.account_key = account_key self.container = container self.filename = filename self.container_client = ContainerClient( "{}.blob.core.windows.net".format(self.account_name), self.container, credential=self.account_key, ) def _store_in_thread(self, file): file.seek(0) self.container_client.upload_blob(self.filename, file, overwrite=True)
class AzureCloudInterface(CloudInterface): # Azure block blob limitations # https://docs.microsoft.com/en-us/rest/api/storageservices/understanding-block-blobs--append-blobs--and-page-blobs MAX_CHUNKS_PER_FILE = 50000 # Minimum block size allowed in Azure Blob Storage is 64KB MIN_CHUNK_SIZE = 64 << 10 # Azure Blob Storage permit a maximum of 4.75TB per file # This is a hard limit, while our upload procedure can go over the specified # MAX_ARCHIVE_SIZE - so we set a maximum of 1TB per file MAX_ARCHIVE_SIZE = 1 << 40 # The size of each chunk in a single object upload when the size of the # object exceeds max_single_put_size. We default to 2MB in order to # allow the default max_concurrency of 8 to be achieved when uploading # uncompressed WAL segments of the default 16MB size. DEFAULT_MAX_BLOCK_SIZE = 2 << 20 # The maximum amount of concurrent chunks allowed in a single object upload # where the size exceeds max_single_put_size. We default to 8 based on # experiments with in-region and inter-region transfers within Azure. DEFAULT_MAX_CONCURRENCY = 8 # The largest file size which will be uploaded in a single PUT request. This # should be lower than the size of the compressed WAL segment in order to # force the Azure client to use concurrent chunk upload for archiving WAL files. DEFAULT_MAX_SINGLE_PUT_SIZE = 4 << 20 # The maximum size of the requests connection pool used by the Azure client # to upload objects. REQUESTS_POOL_MAXSIZE = 32 def __init__( self, url, jobs=2, encryption_scope=None, credential=None, tags=None, max_block_size=DEFAULT_MAX_BLOCK_SIZE, max_concurrency=DEFAULT_MAX_CONCURRENCY, max_single_put_size=DEFAULT_MAX_SINGLE_PUT_SIZE, ): """ Create a new Azure Blob Storage interface given the supplied account url :param str url: Full URL of the cloud destination/source :param int jobs: How many sub-processes to use for asynchronous uploading, defaults to 2. """ super(AzureCloudInterface, self).__init__( url=url, jobs=jobs, tags=tags, ) self.encryption_scope = encryption_scope self.credential = credential self.max_block_size = max_block_size self.max_concurrency = max_concurrency self.max_single_put_size = max_single_put_size parsed_url = urlparse(url) if parsed_url.netloc.endswith(AZURE_BLOB_STORAGE_DOMAIN): # We have an Azure Storage URI so we use the following form: # <http|https>://<account-name>.<service-name>.core.windows.net/<resource-path> # where <resource-path> is <container>/<blob>. # Note that although Azure supports an implicit root container, we require # that the container is always included. self.account_url = parsed_url.netloc try: self.bucket_name = parsed_url.path.split("/")[1] except IndexError: raise ValueError("azure blob storage URL %s is malformed" % url) path = parsed_url.path.split("/")[2:] else: # We are dealing with emulated storage so we use the following form: # http://<local-machine-address>:<port>/<account-name>/<resource-path> logging.info("Using emulated storage URL: %s " % url) if "AZURE_STORAGE_CONNECTION_STRING" not in os.environ: raise ValueError( "A connection string must be provided when using emulated storage" ) try: self.bucket_name = parsed_url.path.split("/")[2] except IndexError: raise ValueError("emulated storage URL %s is malformed" % url) path = parsed_url.path.split("/")[3:] self.path = "/".join(path) self.bucket_exists = None self._reinit_session() def _reinit_session(self): """ Create a new session """ if self.credential: # Any supplied credential takes precedence over the environment credential = self.credential elif "AZURE_STORAGE_CONNECTION_STRING" in os.environ: logging.info("Authenticating to Azure with connection string") self.container_client = ContainerClient.from_connection_string( conn_str=os.getenv("AZURE_STORAGE_CONNECTION_STRING"), container_name=self.bucket_name, ) return else: if "AZURE_STORAGE_SAS_TOKEN" in os.environ: logging.info("Authenticating to Azure with SAS token") credential = os.getenv("AZURE_STORAGE_SAS_TOKEN") elif "AZURE_STORAGE_KEY" in os.environ: logging.info("Authenticating to Azure with shared key") credential = os.getenv("AZURE_STORAGE_KEY") else: logging.info( "Authenticating to Azure with default credentials") # azure-identity is not part of azure-storage-blob so only import # it if needed try: from azure.identity import DefaultAzureCredential except ImportError: raise SystemExit( "Missing required python module: azure-identity") credential = DefaultAzureCredential() session = requests.Session() adapter = requests.adapters.HTTPAdapter( pool_maxsize=self.REQUESTS_POOL_MAXSIZE) session.mount("https://", adapter) self.container_client = ContainerClient( account_url=self.account_url, container_name=self.bucket_name, credential=credential, max_single_put_size=self.max_single_put_size, max_block_size=self.max_block_size, session=session, ) @property def _extra_upload_args(self): optional_args = {} if self.encryption_scope: optional_args["encryption_scope"] = self.encryption_scope return optional_args def test_connectivity(self): """ Test Azure connectivity by trying to access a container """ try: # We are not even interested in the existence of the bucket, # we just want to see if Azure blob service is reachable. self.bucket_exists = self._check_bucket_existence() return True except (HttpResponseError, ServiceRequestError) as exc: logging.error("Can't connect to cloud provider: %s", exc) return False def _check_bucket_existence(self): """ Chck Azure Blob Storage for the target container Although there is an `exists` function it cannot be called by container-level shared access tokens. We therefore check for existence by calling list_blobs on the container. :return: True if the container exists, False otherwise :rtype: bool """ try: self.container_client.list_blobs().next() except ResourceNotFoundError: return False except StopIteration: # The bucket is empty but it does exist pass return True def _create_bucket(self): """ Create the container in cloud storage """ # By default public access is disabled for newly created containers. # Unlike S3 there is no concept of regions for containers (this is at # the storage account level in Azure) self.container_client.create_container() def _walk_blob_tree(self, obj, ignore=None): """ Walk a blob tree in a directory manner and return a list of directories and files. :param ItemPaged[BlobProperties] obj: Iterable response of BlobProperties obtained from ContainerClient.walk_blobs :param str|None ignore: An entry to be excluded from the returned list, typically the top level prefix :return: List of objects and directories in the tree :rtype: List[str] """ if obj.name != ignore: yield obj.name if isinstance(obj, BlobPrefix): # We are a prefix and not a leaf so iterate children for child in obj: for v in self._walk_blob_tree(child): yield v def list_bucket(self, prefix="", delimiter=DEFAULT_DELIMITER): """ List bucket content in a directory manner :param str prefix: :param str delimiter: :return: List of objects and dirs right under the prefix :rtype: List[str] """ res = self.container_client.walk_blobs(name_starts_with=prefix, delimiter=delimiter) return self._walk_blob_tree(res, ignore=prefix) def download_file(self, key, dest_path, decompress=None): """ Download a file from Azure Blob Storage :param str key: The key to download :param str dest_path: Where to put the destination file :param str|None decompress: Compression scheme to use for decompression """ obj = self.container_client.download_blob(key) with open(dest_path, "wb") as dest_file: if decompress is None: obj.download_to_stream(dest_file) return blob = StreamingBlobIO(obj) decompress_to_file(blob, dest_file, decompress) def remote_open(self, key, decompressor=None): """ Open a remote Azure Blob Storage object and return a readable stream :param str key: The key identifying the object to open :param barman.clients.cloud_compression.ChunkedCompressor decompressor: A ChunkedCompressor object which will be used to decompress chunks of bytes as they are read from the stream :return: A file-like object from which the stream can be read or None if the key does not exist """ try: obj = self.container_client.download_blob(key) resp = StreamingBlobIO(obj) if decompressor: return DecompressingStreamingIO(resp, decompressor) else: return resp except ResourceNotFoundError: return None def upload_fileobj( self, fileobj, key, override_tags=None, ): """ Synchronously upload the content of a file-like object to a cloud key :param fileobj IOBase: File-like object to upload :param str key: The key to identify the uploaded object :param List[tuple] override_tags: List of tags as k,v tuples to be added to the uploaded object """ # Find length of the file so we can pass it to the Azure client fileobj.seek(0, SEEK_END) length = fileobj.tell() fileobj.seek(0) extra_args = self._extra_upload_args.copy() tags = override_tags or self.tags if tags is not None: extra_args["tags"] = dict(tags) self.container_client.upload_blob(name=key, data=fileobj, overwrite=True, length=length, max_concurrency=self.max_concurrency, **extra_args) def create_multipart_upload(self, key): """No-op method because Azure has no concept of multipart uploads Instead of multipart upload, blob blocks are staged and then committed. However this does not require anything to be created up front. This method therefore does nothing. """ pass def _upload_part(self, upload_metadata, key, body, part_number): """ Upload a single block of this block blob. Uses the supplied part number to generate the block ID and returns it as the "PartNumber" in the part metadata. :param dict upload_metadata: Provider-specific metadata about the upload (not used in Azure) :param str key: The key to use in the cloud service :param object body: A stream-like object to upload :param int part_number: Part number, starting from 1 :return: The part metadata :rtype: dict[str, None|str] """ # Block IDs must be the same length for all bocks in the blob # and no greater than 64 characters. Given there is a limit of # 50000 blocks per blob we zero-pad the part_number to five # places. block_id = str(part_number).zfill(5) blob_client = self.container_client.get_blob_client(key) blob_client.stage_block(block_id, body, **self._extra_upload_args) return {"PartNumber": block_id} def _complete_multipart_upload(self, upload_metadata, key, parts): """ Finish a "multipart upload" by committing all blocks in the blob. :param dict upload_metadata: Provider-specific metadata about the upload (not used in Azure) :param str key: The key to use in the cloud service :param parts: The list of block IDs for the blocks which compose this blob """ blob_client = self.container_client.get_blob_client(key) block_list = [part["PartNumber"] for part in parts] extra_args = self._extra_upload_args.copy() if self.tags is not None: extra_args["tags"] = dict(self.tags) blob_client.commit_block_list(block_list, **extra_args) def _abort_multipart_upload(self, upload_metadata, key): """ Abort the upload of a block blob The objective of this method is to clean up any dangling resources - in this case those resources are uncommitted blocks. :param dict upload_metadata: Provider-specific metadata about the upload (not used in Azure) :param str key: The key to use in the cloud service """ # Ideally we would clean up uncommitted blocks at this point # however there is no way of doing that. # Uncommitted blocks will be discarded after 7 days or when # the blob is committed (if they're not included in the commit). # We therefore create an empty blob (thereby discarding all uploaded # blocks for that blob) and then delete it. blob_client = self.container_client.get_blob_client(key) blob_client.commit_block_list([], **self._extra_upload_args) blob_client.delete_blob() def delete_objects(self, paths): """ Delete the objects at the specified paths :param List[str] paths: """ try: # If paths is empty because the files have already been deleted then # delete_blobs will return successfully so we just call it with whatever # we were given responses = self.container_client.delete_blobs(*paths) except PartialBatchErrorException as exc: # Although the docs imply any errors will be returned in the response # object, in practice a PartialBatchErrorException is raised which contains # the response objects in its `parts` attribute. # We therefore set responses to reference the response in the exception and # treat it the same way we would a regular response. logging.warning( "PartialBatchErrorException received from Azure: %s" % exc.message) responses = exc.parts # resp is an iterator of HttpResponse objects so we check the status codes # which should all be 202 if successful errors = False for resp in responses: if resp.status_code == 404: logging.warning( "Deletion of object %s failed because it could not be found" % resp.request.url) elif resp.status_code != 202: errors = True logging.error( 'Deletion of object %s failed with error code: "%s"' % (resp.request.url, resp.status_code)) if errors: raise CloudProviderError( "Error from cloud provider while deleting objects - " "please check the Barman logs")
def main(args): blob_account_url = f"https://{args.storageaccountname}.blob.core.windows.net" input_blob = BlobClient.from_blob_url(args.url) _, filename = os.path.split(input_blob.blob_name) root, ext = os.path.splitext(filename) print(f"root: {root}") assert ext.lower() == ".mp4" gps_output_container = ContainerClient(account_url=blob_account_url, container_name="gpsdata", credential=credential) assert gps_output_container.exists() video_upload_container = ContainerClient( account_url=blob_account_url, container_name="inputvideos", credential=credential, ) assert video_upload_container.exists() # Download blob into "input.mp4" print("Downloading video file") with open(local_video_filename, "wb") as fh: input_blob.download_blob().readinto(fh) # GET CREATION DATE FROM FILE print("Probing File") probe = ffmpeg.probe(filename="input.mp4") creation_time = probe["format"]["tags"]["creation_time"] creation_datetime = datetime.datetime.strptime(creation_time, "%Y-%m-%dT%H:%M:%S.%fZ") print(f"Creation time: {creation_datetime}") # STORE JSON TO YYYY/DD/MM/GOPROFILENAME.JSON target_folder = os.path.join( str(creation_datetime.year), str(creation_datetime.month), str(creation_datetime.day), ) gps_json_output_filename = os.path.join(target_folder, f"{root}.json") video_upload_filename = os.path.join(target_folder, f"{root}.MP4") print(f"JSON FILENAME: {gps_json_output_filename}") # Extract GPS data into gps_json_output_filename print("Extracting GPS data") result = subprocess.check_output("node process.js", shell=True) print(result) # Upload json file to gps data container try: with open("out.json", "rb") as fh: extracted_gps = json.load(fh) print("extraction successful") gps_output_blob = gps_output_container.upload_blob( name=gps_json_output_filename, data=json.dumps(extracted_gps), overwrite=True, ) print(f"file '{gps_json_output_filename}' uploaded.") print(gps_output_blob.get_blob_properties()) except ResourceExistsError: print("File already exists") # upload to inputvideos folder with open(local_video_filename, "rb") as data: length = os.path.getsize(local_video_filename) gps_output_blob = video_upload_container.upload_blob( name=video_upload_filename, data=data, length=length, overwrite=True, )
def sample_batch_translation_with_storage(): import os from azure.core.credentials import AzureKeyCredential from azure.ai.documenttranslation import (DocumentTranslationClient, DocumentTranslationInput, TranslationTarget) from azure.storage.blob import ContainerClient, generate_container_sas, ContainerSasPermissions endpoint = os.environ["AZURE_DOCUMENT_TRANSLATION_ENDPOINT"] key = os.environ["AZURE_DOCUMENT_TRANSLATION_KEY"] source_storage_endpoint = os.environ["AZURE_STORAGE_SOURCE_ENDPOINT"] source_storage_account_name = os.environ[ "AZURE_STORAGE_SOURCE_ACCOUNT_NAME"] source_storage_container_name = os.environ[ "AZURE_STORAGE_SOURCE_CONTAINER_NAME"] source_storage_key = os.environ["AZURE_STORAGE_SOURCE_KEY"] target_storage_endpoint = os.environ["AZURE_STORAGE_TARGET_ENDPOINT"] target_storage_account_name = os.environ[ "AZURE_STORAGE_TARGET_ACCOUNT_NAME"] target_storage_container_name = os.environ[ "AZURE_STORAGE_TARGET_CONTAINER_NAME"] target_storage_key = os.environ["AZURE_STORAGE_TARGET_KEY"] translation_client = DocumentTranslationClient(endpoint, AzureKeyCredential(key)) container_client = ContainerClient( source_storage_endpoint, container_name=source_storage_container_name, credential=source_storage_key) with open("document.txt", "rb") as doc: container_client.upload_blob("document.txt", doc) source_container_sas = generate_container_sas( account_name=source_storage_account_name, container_name=source_storage_container_name, account_key=source_storage_key, permission=ContainerSasPermissions.from_string("rl")) target_container_sas = generate_container_sas( account_name=target_storage_account_name, container_name=target_storage_container_name, account_key=target_storage_key, permission=ContainerSasPermissions.from_string("rlwd")) source_container_url = source_storage_endpoint + "/" + source_storage_container_name + "?" + source_container_sas target_container_url = target_storage_endpoint + "/" + target_storage_container_name + "?" + target_container_sas translation_inputs = [ DocumentTranslationInput(source_url=source_container_url, targets=[ TranslationTarget( target_url=target_container_url, language_code="es") ], prefix="document") ] job_detail = translation_client.create_translation_job(translation_inputs) job_result = translation_client.wait_until_done(job_detail.id) if job_result.status == "Succeeded": print("We translated our documents!") if job_result.documents_failed_count > 0: check_documents(translation_client, job_result.id) elif job_result.status in ["Failed", "ValidationFailed"]: if job_result.error: print("Translation job failed: {}: {}".format( job_result.error.code, job_result.error.message)) check_documents(translation_client, job_result.id) exit(1) container_client = ContainerClient( target_storage_endpoint, container_name=target_storage_container_name, credential=target_storage_key) target_container_client = container_client.from_container_url( target_container_url) with open("translated.txt", "wb") as my_blob: download_stream = target_container_client.download_blob("document.txt") my_blob.write(download_stream.readall())
def _upload_image_chunked(paths, session, create_url, complete_url, log, workload_info, mime, use_azure_client=False, imageset_id=None): # noqa: E501 results = [] # get all signed urls at once try: if imageset_id: id_set = { "ids": [ f'imagesets/{imageset_id}/{str(uuid.uuid4())}' for path in paths ] } else: id_set = {"ids": [str(uuid.uuid4()) for path in paths]} signed_urls = http.post_json(session, create_url, id_set) except Exception as ex: log.error("Could not get signed urls for image uploads: {}".format(ex)) return index = 0 for fpath in paths: try: file_name = os.path.basename(fpath) file_ext = os.path.splitext(fpath)[-1] if mime is not None: file_mime = mime else: file_mime = MIMES.get(file_ext, MIMES['.jpg']) except Exception as ex: log.error("issue with file info: {}".format(ex)) with open(fpath, 'rb') as f: blob_id = id_set["ids"][index] info = { "image": { "blob_id": blob_id, "name": file_name, "size": os.path.getsize(fpath), "mimetype": file_mime } } index = index + 1 try: # Post file to storage location url = signed_urls[blob_id] if use_azure_client: url_object = urlparse(url) # get SAS token from url sas_token = url_object.query account_url = url_object.scheme + '://' + url_object.netloc container_name = url_object.path.split('/')[1] # upload blob using client blob_client = ContainerClient(account_url, container_name, credential=sas_token) blob_client.upload_blob(blob_id, f, content_settings=ContentSettings( content_type=file_mime)) results.append(info["image"]) else: # TODO fetch project storage location to decide this is_gcp_storage = url.startswith("/") if is_gcp_storage: url = 'https://storage.googleapis.com{}'.format(url) http.put_file(session, url, f, file_mime) # pop the info into a temp array, upload only once later results.append(info["image"]) except Exception as ex: log.error("File upload failed: {}".format(ex)) # send the chunk of images as a bulk operation rather than per image try: url = complete_url + "?start={}".format(workload_info["start"]) log.debug("POSTING TO: {}".format(url)) http.post_json(session, url, {'images': results}) except Exception as ex: log.error("Failed to complete workload: {}".format(ex))
result, image = cv2.imencode('.JPEG', image_np) io_buf = io.BytesIO(image) file_name = secrets.token_hex(32) + ".jpg" try: if args.blob == "s3": s3.upload_fileobj(io_buf, os.getenv('S3_BUCKET_NAME'), file_name, ExtraArgs={ 'ACL': 'public-read', 'ContentType': 'image/jpeg' }) elif args.blob == "azure": az_container.upload_blob(file_name, io_buf, content_settings=ContentSettings( content_type='image/jpeg')) except: continue occurrences = collections.Counter(items) occurrences['file_name'] = '"' + file_name + '"' mqttc.publish(names[j], payload=json.dumps(occurrences)) except KeyboardInterrupt: for i in range(num_feeds): if type[i] == "video": cap[i].release() mqttc.loop_stop() mqttc.disconnect()