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For AFS developer to access Datasource

Project description

AFS2-DataSource SDK

The AFS2-DataSource SDK package allows developers to easily access PostgreSQL, MongoDB, InfluxDB, S3 and APM.

Installation

Support Python version 3.6 or later

pip install afs2-datasource

Development

pip install -e .

Notice

AFS2-DataSource SDK uses asyncio package, and Jupyter kernel is also using asyncio and running an event loop, but these loops can't be nested. (https://github.com/jupyter/notebook/issues/3397)

If using AFS2-DataSource SDK in Jupyter Notebook, please add the following codes to resolve this issue:

!pip install nest_asyncio
import nest_asyncio
nest_asyncio.apply()

API

DBManager


Init DBManager

With Database Config

Import database config via Python.

from afs2datasource import DBManager, constant

# For PostgreSQL
manager = DBManager(db_type=constant.DB_TYPE['POSTGRES'],
  username=username,
  password=password,
  host=host,
  port=port,
  database=database,
  querySql="select {field} from {schema}.{table}"
)

# For MongoDB
manager = DBManager(db_type=constant.DB_TYPE['MONGODB'],
  username=username,
  password=password,
  host=host,
  port=port,
  database=database,
  collection=collection,
  querySql="{"{key}": {value}}"
)

# For InfluxDB
manager = DBManager(db_type=constant.DB_TYPE['INFLUXDB'],
  username=username,
  password=password,
  host=host,
  port=port,
  database=database,
  querySql="select {field_key} from {measurement_name}"
)

# For S3
manager = DBManager(db_type=constant.DB_TYPE['S3'],
  endpoint=endpoint,
  access_key=access_key,
  secret_key=secret_key,
  is_verify=False,
  buckets=[{
    'bucket': 'bucket_name',
    'blobs': {
      'files': ['file_name'],
      'folders': ['folder_name']
    }
  }]
)

# For APM
manager = DBManager(db_type=constant.DB_TYPE['APM'],
  username=username,  # sso username
  password=password,  # sso password
  apmUrl=apmUrl,
  apm_config=[{
    'name': name  # dataset name
    'machines': [{
      'id': machine_id  # node_id in APM
    }],
    'parameters': [
      parameter1,      # parameter in APM
      parameter2
    ]
  }],
  mongouri=mongouri,
  # timeRange or timeLast
  timeRange=[{'start': start_ts, 'end': end_ts}],
  timeLast={'lastDays:' lastDay, 'lastHours': lastHour, 'lastMins': lastMin}
)

# For Azure Blob
manager = DBManager(db_type=constant.DB_TYPE['AZUREBLOB'],
  account_name=account_name,
  account_key=account_key,
  containers=[{
    'container': container_name,
    'blobs': {
      'files': ['file_name']
      'folders': ['folder_name']
    }
  }]
)
How to get APM machine id and parameters

Alt text

DBManager.connect()

Connect to PostgreSQL, MongoDB, InfluxDB, S3, APM with specified by the given config.

manager.connect()

DBManager.disconnect()

Close the connection. Note S3 datasource not support this function.

manager.disconnect()

DBManager.is_connected()

Return if the connection is connected.

manager.is_connected()

DBManager.is_connecting()

Return if the connection is connecting.

manager.is_connecting()

DBManager.get_dbtype()

Return database type of the connection.

manager.get_dbtype()

DBManager.execute_query()

Return the result in PostgreSQL, MongoDB or InfluxDB after executing the querySql in config.

Download files which are specified in buckets in S3 config or containers in Azure Blob config, and return buckets and containers name of the array.

Return dataframe of list which of Machine and Parameter in timeRange or timeLast from APM.

# For Postgres, MongoDB, InfluxDB and APM
df = manager.execute_query()
# Return type: DataFrame
"""
      Age  Cabin  Embarked      Fare  ...  Sex  Survived  Ticket_info  Title2
0    22.0    7.0       2.0    7.2500  ...  1.0       0.0          2.0     2.0
1    38.0    2.0       0.0   71.2833  ...  0.0       1.0         14.0     3.0
2    26.0    7.0       2.0    7.9250  ...  0.0       1.0         31.0     1.0
3    35.0    2.0       2.0   53.1000  ...  0.0       1.0         36.0     3.0
4    35.0    7.0       2.0    8.0500  ...  1.0       0.0         36.0     2.0
...
"""

# For Azure Blob
container_names = manager.execute_query()
# Return Array
"""
['container1', 'container2']
"""

# For S3
bucket_names = manager.execute_query()
# Return Array
"""
['bucket1', 'bucket2']
"""

DBManager.create_table(table_name, columns=[])

Create table in database for Postgres, MongoDB and InfluxDB. Noted, to create a new measurement in influxdb simply insert data into the measurement.

Create Bucket/Container in S3/Azure Blob.

Note: PostgreSQL table_name format schema.table

# For Postgres, MongoDB and InfluxDB
table_name = 'titanic'
columns = [
  {'name': 'index', 'type': 'INTEGER', 'is_primary': True},
  {'name': 'survived', 'type': 'FLOAT', 'is_not_null': True},
  {'name': 'age', 'type': 'FLOAT'},
  {'name': 'embarked', 'type': 'INTEGER'}
]
manager.create_table(table_name=table_name, columns=columns)

# For S3
bucket_name = 'bucket'
manager.create_table(table_name=bucket_name)

# For Azure Blob
container_name = 'container'
manager.create_table(table_name=container_name)

DBManager.is_table_exist(table_name)

Return if the table exists in Postgres, MongoDB or Influxdb.

Return if the bucket exists in S3.

Return if the container exists in Azure Blob.

# For Postgres, MongoDB and InfluxDB
table_name = 'titanic'
manager.is_table_exist(table_name=table_name)

# For S3
bucket_name = 'bucket'
manager.is_table_exist(table_name=bucket_name)

# For Azure blob
container_name = 'container'
manager.is_table_exist(table_name=container_name)

DBManager.is_file_exist(table_name, file_name)

Return if the file exists in the bucket in S3. Return if the file exists in the container in Azure Blob.

Note this function only support S3 and Azure Blob.

# For S3
bucket_name = 'bucket'
file_name = 'test.csv
manager.is_file_exist(table_name=bucket_name, file_name=file_name)
# Return: Boolean

# For Azure Blob
container_name = 'container'
file_name = 'test.csv
manager.is_file_exist(table_name=container_name, file_name=file_name)
# Return: Boolean

DBManager.insert(table_name, columns=[], records=[], source='', destination='')

Insert records into table in Postgres, MongoDB or InfluxDB.

Upload file to S3 and Azure Blob.

# For Postgres, MongoDB and InfluxDB
table_name = 'titanic'
columns = ['index', 'survived', 'age', 'embarked']
records = [
  [0, 1, 22.0, 7.0],
  [1, 1, 2.0, 0.0],
  [2, 0, 26.0, 7.0]
]
manager.insert(table_name=table_name, columns=columns, records=records)

# For S3
bucket_name = 'bucket'
source='test.csv' # local file path
destination='test_s3.csv' # the file path and name in s3
manager.insert(table_name=bucket_name, source=source, destination=destination)

# For Azure Blob
container_name = 'container'
source='test.csv' # local file path
destination='test_s3.csv' # the file path and name in Azure blob
manager.insert(table_name=container_name, source=source, destination=destination)

Use APM data source

  • Get Hist Raw data from SCADA Mongo data base
  • Required
    • username: APM SSO username
    • password: APM SSO password
    • mongouri: mongo data base uri
    • apmurl: APM api url
    • apm_config: APM config (type:Array)
      • name: dataset name
      • machines: APM machine list (type:Array)
        • id: APM machine Id
      • parameters: APM parameter name list (type:Array)
    • time range: Training date range
      • example:
      [{'start':'2019-05-01', 'end':'2019-05-31'}]
      
    • time last: Training date range
      • example:
      {'lastDays:' 1, 'lastHours': 2, 'lastMins': 3}
      

DBManager.delete_table(table_name)

Delete table in Postgres, MongoDB or InfluxDB, and return if the table is deleted successfully.

Delete the bucket in S3 and return if the table is deleted successfully.

Delete the container in Azure Blob and return if the table is deleted successfully.

# For Postgres, MongoDB or InfluxDB
table_name = 'titanic'
is_success = manager.delete_table(table_name=table_name)
# Return: Boolean

# For S3
bucket_name = 'bucket'
is_success = manager.delete_table(table_name=bucket_name)
# Return: Boolean

# For Azure Blob
container_name = 'container'
is_success = manager.delete_table(table_name=container_name)
# Return: Boolean

DBManager.delete_record(table_name, file_name, condition)

Delete record with condition in table_name in Postgres and MongoDB, and return if delete successfully.

Delete file in bucket in S3 and in container in Azure Blob, and return if the file is deleted successfully.

Note Influx not support this function.

# For Postgres
table_name = 'titanic'
condition = 'passenger_id = 1'
is_success = manager.delete_record(table_name=table_name, condition=condition)
# Return: Boolean

# For Postgres
table_name = 'titanic'
condition = {'passanger_id': 1}
is_success = manager.delete_record(table_name=table_name, condition=condition)
# Return: Boolean

# For S3
bucket_name = 'bucket'
file_name = 'data/titanic.csv'
is_success = manager.delete_record(table_name=bucket_name, file_name=file_name)
# Return: Boolean

# For Azure Blob
container_name = 'container'
file_name = 'data/titanic.csv'
is_success = manager.delete_record(table_name=container_name,file_name=file_name)
# Return: Boolean

Example

MongoDB Example

from afs2datasource import DBManager, constant

# Init DBManager
manager = DBManager(
 db_type=constant.DB_TYPE['MONGODB'],
 username={USERNAME},
 password={PASSWORD},
 host={HOST},
 port={PORT},
 database={DATABASE},
 collection={COLLECTION},
 querySql={QUERYSQL}
)

## Mongo query ISODate Example
QUERYSQL = "{\"ts\": {\"$lte\": ISODate(\"2020-09-26T02:53:00Z\")}}"
QUERYSQL = {'ts': {'$lte': datetime.datetime(2020,9,26,2,53,0)}}

# Connect DB
manager.connect()

# Check the status of connection
is_connected = manager.is_connected()
# Return type: boolean

# Check is the table is exist
table_name = 'titanic'
manager.is_table_exist(table_name)
# Return type: boolean

# Create Table
columns = [
  {'name': 'index', 'type': 'INTEGER', 'is_not_null': True},
  {'name': 'survived', 'type': 'INTEGER'},
  {'name': 'age', 'type': 'FLOAT'},
  {'name': 'embarked', 'type': 'INTEGER'}
]
manager.create_table(table_name=table_name, columns=columns)

# Insert Record
columns = ['index', 'survived', 'age', 'embarked']
records = [
  [0, 1, 22.0, 7.0],
  [1, 1, 2.0, 0.0],
  [2, 0, 26.0, 7.0]
]
manager.insert(table_name=table_name, columns=columns, records=records)

# Execute querySql in DB config
data = manager.execute_query()
# Return type: DataFrame
"""
      index  survived   age   embarked
0         0         1   22.0       7.0
1         1         1    2.0       0.0
2         2         0   26.0       7.0
...
"""

# Delete Document
condition = {'survived': 0}
is_success = db.delete_record(table_name=table_name, condition=condition)
# Return type: Boolean

# Delete Table
is_success = db.delete_table(table_name=table_name)
# Return type: Boolean

# Disconnect to DB
manager.disconnect()

S3 Example

from afs2datasource import DBManager, constant

# Init DBManager
manager = DBManager(
  db_type = constant.DB_TYPE['S3'],
  endpoint={ENDPOINT},
  access_key={ACCESSKEY},
  secret_key={SECRETKEY},
  buckets=[{
    'bucket': {BUCKET_NAME},
    'blobs': {
      'files': ['titanic.csv'],
      'folders': ['models/']
    }
  }]
)

# Connect S3
manager.connect()

# Check is the table is exist
bucket_name = 'titanic'
manager.is_table_exist(table_name=bucket_name)
# Return type: boolean

# Create Bucket
manager.create_table(table_name=bucket_name)

# Upload File to S3
local_file = '../titanic.csv'
s3_file = 'titanic.csv'
manager.insert(table_name=bucket_name, source=local_file, destination=s3_file)

# Download files in blob_list
# Download all files in directory
bucket_names = manager.execute_query()
# Return type: Array

# Check if file is exist or not
is_exist = manager.is_file_exist(table_name=bucket_name, file_name=s3_file)
# Return type: Boolean

# Delete the file in Bucket and return if the file is deleted successfully
is_success = manager.delete_record(table_name=bucket_name, file_name=s3_file)
# Return type: Boolean

# Delete Bucket
is_success = manager.delete_table(table_name=bucket_name)
# Return type: Boolean

APM Data source example

APMDSHelper(
  username,
  password,
  apmurl,
  machineIdList,
  parameterList,
  mongouri,
  timeRange)
APMDSHelper.execute()

Azure Blob Example

from afs2datasource import DBManager, constant

# Init DBManager
manager = DBManager(
 db_type=constant.DB_TYPE['AZUREBLOB'],
 account_key={ACCESS_KEY},
 account_name={ACCESS_NAME}
 containers=[{
   'container': {CONTAINER_NAME},
   'blobs': {
     'files': ['titanic.csv'],
     'folders': ['test/']
   }
 }]
)

# Connect Azure Blob
manager.connect()

# Check is the container is exist
container_name = 'container'
manager.is_table_exist(table_name=container_name)
# Return type: boolean

# Create container
manager.create_table(table_name=container_name)

# Upload File to Azure Blob
local_file = '../titanic.csv'
azure_file = 'titanic.csv'
manager.insert(table_name=container_name, source=local_file, destination=azure_file)

# Download files in `containers`
# Download all files in directory
container_names = manager.execute_query()
# Return type: Array

# Check if file is exist in container or not
is_exist = manager.is_file_exist(table_name=container_name, file_name=azure_file)
# Return type: Boolean

# Delete File
is_success = manager.delete_record(table_name=container_name,
file_file=azure_file)

# Delete Container
is_success = manager.delete_table(table_name=container_name)
# Return type: Boolean

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