Source code for airflow.contrib.example_dags.example_gcp_speech
# -*- coding: utf-8 -*-
#
# Licensed to the Apache Software Foundation (ASF) under one
# or more contributor license agreements. See the NOTICE file
# distributed with this work for additional information
# regarding copyright ownership. The ASF licenses this file
# to you 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.
"""
Example Airflow DAG that runs speech synthesizing and stores output in Google Cloud Storage
This DAG relies on the following OS environment variables
* GCP_PROJECT_ID - Google Cloud Platform project for the Cloud SQL instance.
* GCP_SPEECH_TEST_BUCKET - Name of the bucket in which the output file should be stored.
"""
import os
from airflow.utils import dates
from airflow import models
from airflow.contrib.operators.gcp_text_to_speech_operator import GcpTextToSpeechSynthesizeOperator
from airflow.contrib.operators.gcp_speech_to_text_operator import GcpSpeechToTextRecognizeSpeechOperator
from airflow.contrib.operators.gcp_translate_speech_operator import GcpTranslateSpeechOperator
# [START howto_operator_text_to_speech_env_variables]
GCP_PROJECT_ID = os.environ.get("GCP_PROJECT_ID", "example-project")
BUCKET_NAME = os.environ.get("GCP_SPEECH_TEST_BUCKET", "gcp-speech-test-bucket")
# [END howto_operator_text_to_speech_env_variables]
# [START howto_operator_text_to_speech_gcp_filename]
FILENAME = "gcp-speech-test-file"
# [END howto_operator_text_to_speech_gcp_filename]
# [START howto_operator_text_to_speech_api_arguments]
INPUT = {"text": "Sample text for demo purposes"}
VOICE = {"language_code": "en-US", "ssml_gender": "FEMALE"}
AUDIO_CONFIG = {"audio_encoding": "LINEAR16"}
# [END howto_operator_text_to_speech_api_arguments]
# [START howto_operator_speech_to_text_api_arguments]
CONFIG = {"encoding": "LINEAR16", "language_code": "en_US"}
AUDIO = {"uri": "gs://{bucket}/{object}".format(bucket=BUCKET_NAME, object=FILENAME)}
# [END howto_operator_speech_to_text_api_arguments]
# [START howto_operator_translate_speech_arguments]
TARGET_LANGUAGE = 'pl'
FORMAT = 'text'
MODEL = 'base'
SOURCE_LANGUAGE = None
# [END howto_operator_translate_speech_arguments]
default_args = {"start_date": dates.days_ago(1)}
with models.DAG(
"example_gcp_speech", default_args=default_args, schedule_interval=None # Override to match your needs
) as dag:
# [START howto_operator_text_to_speech_synthesize]
text_to_speech_synthesize_task = GcpTextToSpeechSynthesizeOperator(
project_id=GCP_PROJECT_ID,
input_data=INPUT,
voice=VOICE,
audio_config=AUDIO_CONFIG,
target_bucket_name=BUCKET_NAME,
target_filename=FILENAME,
task_id="text_to_speech_synthesize_task",
)
# [END howto_operator_text_to_speech_synthesize]
# [START howto_operator_speech_to_text_recognize]
speech_to_text_recognize_task = GcpSpeechToTextRecognizeSpeechOperator(
project_id=GCP_PROJECT_ID, config=CONFIG, audio=AUDIO, task_id="speech_to_text_recognize_task"
)
# [END howto_operator_speech_to_text_recognize]
text_to_speech_synthesize_task >> speech_to_text_recognize_task
# [START howto_operator_translate_speech]
translate_speech_task = GcpTranslateSpeechOperator(
project_id=GCP_PROJECT_ID,
audio=AUDIO,
config=CONFIG,
target_language=TARGET_LANGUAGE,
format_=FORMAT,
source_language=SOURCE_LANGUAGE,
model=MODEL,
task_id='translate_speech_task'
)
# [END howto_operator_translate_speech]
text_to_speech_synthesize_task >> translate_speech_task