Metadata-Version: 2.1
Name: mms-pip
Version: 0.8.3.1
Summary: A custom MMS Analytics module for Python3 by the Data Access Team
Home-page: https://github.com/MediaMarktSaturn/mms-pip
Author: Josef Goppold, Tobias Hoke
Author-email: goppold@mediamarktsaturn.com, hoke@mediamarktsaturn.com
License: UNKNOWN
Description: # mms-pip
        Public Python module from the Data-Access Team of MediaMarktSaturn Technology.
        
        !!!!!!!! ATTENTION: BETA VERSION !!!!!!!!!!
        ```
        pip install mms-pip --upgrade
        ```
        Topics:
        1. gcp_logger
        2. datastore_handler
        3. bq_handler
        4. redis_handler
        5. gcp_api_authentication
        6. kms_handler
        7. gcp_secret_manager
        ___
        
        ## 1. gcp_logger
        
        Log Module for standardized log purposes.
        
        ### How to use:
        
        #### 1.1 Import module:
        
        Import the module your app is running on GCP later on - at the moment the following products are supported: 
        
        - app_engine_logger
        - cloud_function_logger
        - cloud_run_logger
        - composer_logger
        - compute_engine_logger
        - dataproc_logger
        - kubernetes_logger
        
        
        ```python
        # e.g. for using the cloud run logger
        
        from mms.logger.cloud_run_logger import CloudRunLogger
        ```
        
        #### 1.2 Initalize the logger:
        
        ```python
        
        # Cloud Run (Serverless):
        logger = CloudRunLogger(project_id, local_run)
        logger = CloudRunLogger(project_id='my-project', local_run=True/False)
        
        **IMPORTANT**
        
        In every API route the following methods need to be called during initialization - currently only Flask is supported for this logger: 
            from flask import Flask, request
            
            logger.update_request_header(api_request=request)
            logger.update_trace_id(str(uuid.uuid4()))
        
        
        
        
        # Cloud Function Logging:
        logger = CloudFunctionLogger(service_name, trace_id, project_id, function_name)
        logger = CloudFunctionLogger(service_name='my-service', trace_id='lksjdf2', project_id='my-project-id', function_name='ppx-price-updates-de-gcs-bq')
        
        # App Engine Logging:
        logger = AppEngineLogger(service_name, trace_id, project_id, module_id, version_id)
        logger = AppEngineLogger(service_name='my-service', trace_id='lksjdfl98', project_id='v135-5683-alice-ksk-explore', module_id='app-flex-sample-service', version_id='v0.0.1')
        
        # Compute Engine:
        logger = ComputeEngineLogger(service_name, trace_id, project_id)
        logger = ComputeEngineLogger(service_name='my-service', trace_id='lksjdfl98', project_id='v135-5683-alice-ksk-explore')
        
        # Kubernetes Engine: 
        logger = KubernetesLogger(service_name, trace_id, project_id, cluster_name, container_name, location, namespace_name)
        logger = KubernetesLogger(service_name='my-service', trace_id='id12345', project_id='v135-5683-alice-ksk-explore', cluster_name='jg-k8-testcluster', container_name=CONTAINER_NAME, location=ZONE, namespace_name='default')
        
        # Dataproc:
        logger = DataprocLogger(service_name, trace_id, project_id, cluster_name, location)
        logger = DataprocLogger(service_name='my-service', trace_id='lksjdfl98', project_id='v135-5683-alice-ksk-explore', cluster_name='my-cluster', location='europe-west4')
        
        # Cloud Composer:
        logger = ComposerLogger(service_name, trace_id, project_id, environment_name, location)
        logger = ComposerLogger(service_name='my-service', trace_id='lksjdfl98', project_id='v135-5683-alice-ksk-explore', environment_name='my-composer-environment', location='europe-west4')
        
        ```
        
        #### 1.3 Use the logger:
        
        ```python
        logger.info('your message')
        logger.warning('your message')
        logger.error('your message')
        logger.critical('your message')
        logger.debug('your message')
        ```
        
        The logs are visible in Stackdriver Logging via:
        - GAE Application -> Module_id -> Version_id for App Engine.
        - Or under Cloudfunctions -> Function_id
        - Or under GCE VM Instance -> Instance_id
        - Or under Kubernetes Container -> cluster_name -> namespace_name -> container_name 
        - Or under Cloud Run Revision -> service_name -> revision_name 
        - Or under Global
        
        ### Important
        
        This log tool only works in App Engine Standard/Flexible, Cloud Function, Compute Engine and Kubernetes, Cloud Run (Serverless) environment.
        
        For local testing please set the boolean flag 'local_run' during initialization to 'True'
        
        ### How we log
        
        We initialize the logger only in the "app.py" file. From there every log entry will be written - Modules used within app.py need to return the exceptions to the caller so
        error etc. get logged at one central point within app.py.
        
        
        ___
        
        
        ## 2. datastore_handler
        
        Python script for easy interacting with Google Cloud Datastore (DS)
        
        ### How to use:
        
        #### 2.1 Import Datastore class:
        ```python
        from mms.datastore_handler import Datastore
        ```
        #### 2.2 Initalize the datastore handler:
        ```python
        ds_handler = Datastore()
        ```
        #### 2.3 Use the Datastore handler:
        
        You can set/get an **id** or a **name** in Datastore. For this package if you specify the parameter **name** as a string, than it's a name in Datastore. If you specify the parameter **name** as an integer, than it's an id in Datastore. 
        
        - Creating a new Entity: 
        ```python
        ds_handler.put_new_entity(kind='kind_name', prop_df={'property1': 1, 'property2'='Test String'}, name='The Name/ID of the Entity')
        ```
        **kind** and **prop_df** is required, **name** is optional (Google generates an ID for you)
        
        - Getting and deleting Entity: 
        ```python
        result_entitiy_dict = ds_handler.get_entity(kind='kind_name', name='The Name/ID of the Entity')
        ds_handler.delete_entity(kind='kind_name', name='The Name/ID of the Entity')
        ```
        
        - Updating Entity: 
        ```python
        ds_handler.update_entity(kind='kind_name', name='The Name/ID of the Entity', prop_df={'property1': 1, 'property2'='Test String'})
        ```
        You cannot update specific properties of an entity. The Updates must include all properties that should be persisted. Whenever you need to do an update, you need to first retrieve the existing entity as a whole, then update one or more properties by setting new values on **prop_df** and update the entity.
        
        
        - Get all Entities of a specific kind: 
        ```python
        result = ds_handler.get_all_of_a_kind('kind_name')
        ```
        
        - Query Datastore: 
        With only one Filter: 
        ```python
        with_one_filter = ["property1", "=", 1]
        result1 = ds_handler.query(kind="TestKind1", filter=with_one_filter)
        ```
        With two or more Filter: 
        ```
        with_more_filter = [["property1", "=", 1], ["property3", "<=", 3.33]]
        result2 = ds_handler.query(kind="TestKind1", filter=with_more_filter)
        ```
        
        ___
        
        
        ## 3. bq_handler
        
        Python script for easy interacting with Google Cloud BigQuery (BQ)
        
        ### How to use:
        
        #### 3.1 Import BigQuery class:
        ```python
        from mms.bq_handler import BQ
        ```
        #### 3.2 Initalize the BigQuery handler:
        There are two Options: 
        
        i) Without default values: 
        ```python
        bq_handler = BQ()
        ```
        
        ii) With default values (i. e. if you only work with one dataset or table): 
        ```python
        bq_handler = BQ(dataset_id='default_dataset_id', table_id='default_table_id')
        ```
        Every time a **dataset_id** and/or a **table_id** is not specified in a specific method of the BQ class, the method will use the default dataset_id and/or table_id of the **bq_handler**. 
        
        
        
        You can also specify a **project_id** and/or a **cred_file_path** (credential file path) if you need it.
        
        #### 3.3 Use the BigQuery handler:
        - Creating a new Dataset: 
        ```python
        # With default values from bq_handler
        bq_handler.create_dataset()
        
        # Without defaults:
        bq_handler.create_dataset('test_dataset_id')
        ```
        
        
        - Creating a new Table (dataset have to exists): 
        ```python
        from google.cloud import bigquery
        SCHEMA = [bigquery.SchemaField('full_name', 'STRING', mode='required', description="Visitor's Name"),
                  bigquery.SchemaField('visit_time', 'TIMESTAMP', mode='required', description="Visit Time"),
                  bigquery.SchemaField('visit_length', 'INT64', mode='required', description="Length of Visit in Seconds"),
                  bigquery.SchemaField('sentiment', 'FLOAT64', mode='required', description="Calculated Happiness Score")]
        
        # With default values from bq_handler
        bq_handler.create_table(SCHEMA)
        
        # Without defaults:
        bq_handler.create_table(SCHEMA, dataset_id='test_dataset_id', table_id='test_table_id')
        
        # You can also create a table with day partitioning and/or with clustering:
        bq_handler.create_table(SCHEMA, dataset_id='test_dataset_id', table_id='test_table_id', partitioning_field='_PARTITIONTIME', require_partition_filter=True, clustering_fields=['visit_time'])
        # _PARTITIONTIME is the default partitioning of BigQuery
        ```
        
        - Checking if a table exists or not (ATTENTION: No guarantees! See source code.):
        ```python
        # With default values from bq_handler
        check = bq_handler.check_if_table_exists()
        
        # Without defaults:
        check = bq_handler.check_if_table_exists(dataset_id='test_dataset_id', table_id='test_table_id')
        ```
        
        - Getting a schema of an existing table:
        ```python
        # With default values from bq_handler
        schema = bq_handler.get_schema()
        
        # Without defaults:
        schema = bq_handler.get_schema(dataset_id='test_dataset_id', table_id='test_table_id')
        ```
        
        - Streaming a row into an existing BQ table (append to table):
        ```python
        # Create Dictionary:  
        data = {'full_name': 'Max Mustermann', 'visit_time': '2019-07-23 13:45:07.372826 UTC', 'visit_length': 100, 'sentiment': 1.111}
        
        # With default values from bq_handler
        bq_handler.streaming_insert_single_json(data)
        
        # Without defaults:
        bq_handler.streaming_insert_single_json(data, dataset_id='test_dataset_id', table_id='test_table_id')
        ```
        
        
        - Running a query and get results as a dataframe:
        ```python 
        query = '''
        SELECT * FROM `v135-5683-playground-goppold.test_dataset_id.test_table_id`
        '''
        df = bq_handler.run_query(query)
        ```
        
        ___
        
        
        ## 4. redis_handler
        
        Python script for easy usage of the Python redis class.
        
        ### How to use:
        
        #### 4.1 Import Redis class:
        ```python
        from mms.redis_handler import Redis
        ```
        #### 4.2 Initalize the redis handler:
        
        ```python
        redis-client = Redis(host, port, password)
        ```
        
        #### 4.3 Use the redis handler:
        There are only three methods available: 
        
        - set (there is a default expiration of 60*15 set as default)
        - get 
        - delete
        
        Reddis key 
        
        ````python
        redis_client.set_redis(set_key, set_value, exp)
        
        redis_client.get_redis(get_key)
        
        redis_client.delete_key(key_to_delete)
        ````
        
        ___
        
        ## 5. gcp_api_authentication
        
        ### 5.1 gcp_api_authentication.service_account.py
        
        Python Class for easy and secure interacting with GCP (Cloud Run) API endpoints with service accounts. All you have to
        do is
        - create service account, 
        - download service account json file, 
        - grant service account permission on cloud run service -> add service account email as Cloud Run Invoker to your service.
        
        After that you can make a GET or/and POST request to your routes on your cloud run service:
        
        ```Python3
        from mms.gcp_api_authentication.service_account import APICalls
        import json 
        
        # Init:
        sa_api_auth_handler = APICalls(service_url="https://test-api-h3e6iof3xq-ew.a.run.app", sa_key_dict={ ... service accout json file as dictionary ... })
        # or
        sa_api_auth_handler = APICalls(service_url="https://test-api-h3e6iof3xq-ew.a.run.app", sa_key_path="path/to/your/service_account.json")
        
        # POST request: 
        request_body = {"Your Request Body": "For Your API"}
        r1 = sa_api_auth_handler.post_request(url="https://test-api-h3e6iof3xq-ew.a.run.app/apis/test1", request_body=request_body)
        response_body = json.loads(r1.content.decode('utf-8'))
        status_code = r1.status_code
        
        # GET request: 
        r2 = sa_api_auth_handler.get_request(url="https://test-api-h3e6iof3xq-ew.a.run.app/apis/test2")
        response_body = json.loads(r2.content.decode('utf-8'))
        status_code = r2.status_code
        ```
        
        
        ### 5.2 gcp_api_authentication.service_to_service.py
        
        TODO
        
        https://cloud.google.com/run/docs/authenticating/service-to-service
        
        First, you'll need to configure the receiving service to accept requests from the calling service:
        Grant the Cloud Run Invoker (roles/run.invoker) role to the calling service identity on the receiving service.
        
        
        ___
        
        
        
        ## 6. KMS handler
        
        There is a module available to easily use KMS:
        
        #### 6.1 Import KMS class:
        
        ````python
        from mms.kms_handler import KmsService
        
        ````
        
        #### 6.2 Use the KMS client: 
        
        ```python
        decrpyted = KmsService.decrypt(project_id, location_id, key_ring_id, crypto_key_id, ciphertext)
        
        encrypted = KmsService.encrypt(project_id, location_id, key_ring_id, crypto_key_id, plaintext)
        ```
        
        
        ## 7. GCP Secret Manager: 
        
        First, enable the secret manager API  on GCP console
        
        #### 7.1 Init Secret Manager:
        
        ```python
        from mms.gcp_secret_manager import SecretManager
        # Init secretmanager object with your the default credential from your environment:
        secretmanager = SecretManager("v135-5683-playground-goppold")
        # Init secretmanager object with your a service account json file - specify the path to your file:
        #secretmanager = SecretManager("v135-5683-playground-goppold", "test.json")
        ```
        
        #### 7.2 Create Secret Value: 
        
        ```python
        # Create a secret value:
        secret_name = secretmanager.create_secret("my-secret")
        print(secret_name)
        # Create a secret with value
        secret_version_name = secretmanager.create_secret("my-secret-with-value", "This is my secret value")
        print(secret_version_name)
        ```
        By default: ``regions=["europe-west4"]`` and ``labels=None``. Please specify this params of you need to.
        
           
        #### 7.3 Add a secret value to a existing secret: 
        
        ```python
        # Add a secret value to a existing secret:
        secret_version_name_1 = secretmanager.add_secret_version("my-secret", "This is another secret value")
        print(secret_version_name_1)
        secret_version_name_2 = secretmanager.add_secret_version("my-secret", "This is a new verison of my secret value")
        print(secret_version_name_2)
        ```
        
        #### 7.4 Accessing value of a secret version: 
        
        !!!WARNING: Do not print the secret in a production environment!!!
        ```python
        value_1 = secretmanager.access_secret_version("my-secret", 1)
        print(value_1)
        value_2 = secretmanager.access_secret_version("my-secret", 2)
        print(value_2)
        value_3 = secretmanager.access_secret_version("my-secret-with-value", 1)
        print(value_3)
        ```
        
        #### 7.5 List secrets and secret versions: 
        
        ```python
        # List all secrets in my project:
        secrets = secretmanager.list_secrets()
        print(secrets)
        
        # List all version of a specified secret:
        secret_verions = secretmanager.list_secret_versions("my-secret")
        print(secret_verions)
        ```
        
        #### 7.6 Get metadata of a specific secret:
        
        ```python
        # Get metadata of a specific secret:
        metadata = secretmanager.get_secret("my-secret")
        print(metadata.name)
        ```
        
        #### 7.7 Delete secrets: 
        
        ```python
        # Delete a secret with the given name and all of its versions:
        secretmanager.delete_secret("my-secret")
        secretmanager.delete_secret("my-secret-with-value")
        ```
        
        #### 7.8 Update Secret Version: 
        
        !! Attention !! This method is only applicable if there is only one version of the secret. It's not possible to update
        specific secret versions
        
        ```python
        secretmanager.update_secret_version('my-secret', 'new value')
        ```
        
        ___
        
        ####  TODOs
        - Complete README
        - Add Docstrings to Python scripts
        ___
        
        
        #### CHANGELOG:
        see [changelog.txt](https://github.com/MediaMarktSaturn/mms-pip/blob/master/changelog.txt)
        
        ***
        Tobias Hoke - Josef Goppold - 17.06.2020
        
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Description-Content-Type: text/markdown
