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Library for the Piscada Cloud including authentication and data access.

Project description

Piscada Cloud

Library for the Piscada Cloud including authentication and data access.

Features

  • Login to Piscada Cloud and retrieve credentials
  • Persist credentialss locally
  • Read historic values for multiple tags as a Pandas DataFrame
  • Possible apply time-based linear interpolation to measurements
  • Utils to add fractional representations of periods: day, week, year

Install

Install from PyPI:

pip install piscada-cloud

or

poetry add piscada-cloud

Install from local source:

pip install --editable path/to/piscada_cloud

or

poetry add path/to/piscada_cloud

Usage

Authentication

To log-in interactively and persist the retrieved credentials on disk (under $HOME/.piscada_credentials) simply run:

python -m piscada_cloud.auth

or

poetry run python -m piscada_cloud.auth

Any future invocation, e.g. credentials = piscada_cloud.auth.persisted_login() will return the credentials on disk without user interaction.

credentials = piscada_cloud.auth.login(username, password, host) can be used to retrieve the credentials programmatically.

Getting Data

The credentials retrieved through the login can be used to get the host and acccesss-token for the historical data API:

from piscada_cloud import auth

credentials = auth.login_persisted()
host, token = auth.get_historian_credentials(credentials)

The host and token can be used to retrieve historic data as a Pandas DataFrame. The get_historic_values method takes a row of parameters:

  • start: Datetime object
  • end: Datetime object
  • tags: List of Tag objects
  • host (optional): Endpoint to which we send the historian queries. e.g. historian.piscada.online.
  • token (optional): Access token, associated with the endpoint, used for authentication.

The if the host or token arguments are not provided, the environment variables HISTORIAN_HOST and HISTORIAN_TOKEN are used in stead, respectively.

from datetime import datetime, timedelta, timezone

from piscada_cloud.data import get_historic_values
from piscada_cloud.mappings import Tag


tags = [
    Tag(controller_id="fe7bd2c3-6c20-44d4-aecc-df5822457400", name="ServerCpuUsage"),
    Tag(controller_id="fe7bd2c3-6c20-44d4-aecc-df5822457400", name="ServerMemoryUsage"),
]

df = get_historic_values(
    start=datetime.now(timezone.utc) - timedelta(days=30),
    end=datetime.now(timezone.utc),
    tags=tags
)

Write Data

In this example the column oCU135001RT90_MV is selected and the average value is calculated using the method .mean().

To write the result back to the Piscada Cloud, the data module offers the write_value function. It takes these arguments:

  • tag: A Tag object
  • value: The float, string, or dict value to write to the tag. Float and string will be sent as is, dict will be serialised as JSON string.
  • timestamp (optional): The timestamp in milliseconds since epoch at which to write the value, by default int(time.time() * 1000).
  • host: Endpoint to send post request. Overrides the default, which is os.environ['WRITEAPI_HOST'].
  • token: Access token accosiated with the host. Overrides the default, which is os.environ['WRITEAPI_TOKEN'].

The Tag.name must use the prefix py_ as this is the only namespace allowed for writing data via the API.

from piscada_cloud.data import write_value
from piscada_cloud.mappings import Tag


mean = df["oCU135001RT90_MV"].mean()
response = write_value(Tag(controller_id="0798ac4a-4d4f-4648-95f0-12676b3411d5", name="py_oCU135001RT90_MV_1h_mean"), value=mean)
if response.ok:
    print("OK")
else:
    print(response.text)

The response returned by the write_value method allows to check if the writing of data was successful response.ok == True.

Manipulations

In order to support analysis in the context of periodic patters, the manipulations allow you to add fractional representations of day, week, and year as additional columns in the DataFrame:

  • 00:00:00 -> 0.0 --- 23:59:59 -> 1.0
  • Monday 00:00:00 -> 0.0 --- Sunday 23:59:59 -> 1.0
  • 1st Jan. 00:00:00 -> 0.0 --- 31st Dec. 23:59:59 -> 1.0
from piscada_cloud import manipulations

manipulations.add_weekdays(data)
manipulations.add_day_fraction(data)
manipulations.add_week_fraction(data)
manipulations.add_year_fraction(data)

Development

Run QA as a pre-commit hook

Enable the provided git pre commit hook: ln -s ./qa.sh .git/hooks/pre-commit

Documentation

Build and run MkDocs documentation:

poetry run mkdocs build
poetry run mkdocs serve

Note: If you want to deploy a new version of your documentation, use below commands instead:

poetry run mike deploy [version]
poetry run mike serve

Run documentation via docker image

docker pull piscada/piscada-cloud-documentation:tagname
docker run -p 8000:8000 piscada/piscada-cloud-documentation:tagname

Requirements

The package will support the two latest version of Python.

Authors

License

© Piscada AS 2019

Project details


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