Skip to main content

A preview of an ADH (Aveva Data Hub) client library

Project description

AVEVA Data Hub Python Library Sample

:loudspeaker: Notice: This library is an AVEVA Data Hub targeted version of the ocs_sample_library_preview. The ocs_sample_library_preview library is being deprecated and this library should be used moving forward.

Version: 0.9.13_preview

Build Status

This sample library requires Python 3.7+. You can download Python here.

  • NOTE: The library previously required Python 3.9+ to take advantage of type annotations. To provide compatibility with environments that cannot upgrade Python to 3.9, from __future__ import annotations was added to each necessary file. This provides backwards compatibility down to Python 3.7.

About the library

The python ADH library is an introductory language-specific example of programming against Aveva Data Hub (ADH). It is intended as instructional samples only and are not for production use. The samples also work on OSIsoft Cloud Services unless otherwise noted.

They can be obtained by running: pip install adh_sample_library_preview

The library is not intended to show every endpoint and every option/parameter for endpoints it has. The library is known to be incomplete.

Other language libraries and samples are available on GitHub.

Testing

The library is tested using PyTest. To test locally, make sure that PyTest is installed, then navigate to the Tests directory and run the test classes by executing

python -m pytest {testclass} 

where {testclass} is the name of a test class, for example ./test_baseclient.py.

Optionally to run end to end tests, rename the appsettings.placeholder.json file to appsettings.json and populate the fields, (This file is included in the gitignore and will not be pushed to a remote repository), then run

python -m pytest {testclass} --e2e True

Logging

Every request made by the library is logged using the standard Python logging library. If the client application using the library creates a logger, then library will log to it at the following levels:

Level Usage
Error any non 200-level response code, along with the error message
Info all request urls and verbs
all response status codes
Debug data payload and all request headers (Authorization header value redacted)
response content and all response headers

The process for creating a logger is described in the Logging HOWTO documentation.

An example walkthrough is shown here:

Logger Creation Example

To initiate logging, the client must create a logger, defining a log file, a desired log level, and default formatting:

    # Step 0 - set up logger
    log_file = 'logfile.txt'
    log_level = logging.INFO
    logging.basicConfig(filename=log_file, encoding='utf-8', level=log_level, datefmt='%Y-%m-%d %H:%M:%S',
                    format='%(asctime)s %(module)16s,line: %(lineno)4d %(levelname)8s | %(message)s')

This creates a logger object that streams any logged messages to the desired output. The libraries called by the client, including this ADH Sample Library Python, that have implemented logging will send their messages to this logger automatically.

The log level specified will result in any log at that level or higher to be logged. For example, INFO captures INFO, WARNING, ERROR, and CRITICAL, but ignores DEBUG.

Logger Usage Example

To change the log level after creation, the level can be set using the following command

logging.getLogger().setLevel(logging.DEBUG)

This concept is particularly helpful when debugging a specific call within the application. Logging can be changed before and after a call to the library in order to provide debug logs for that specific call only, without flooding the logs with debug entries for every other call to the library.

An example of this can be seen here.

    # Step 4 - Retrieve the data view
    original_level = logging.getLogger().level
    logging.getLogger().setLevel(logging.DEBUG)

    dataview = adh_client.DataViews.getDataView(
        namespace_id, SAMPLE_DATAVIEW_ID)

    logging.getLogger().setLevel(original_level)

Note that the original level was recorded, logging was set to debug, the getDataView call was performed, then logging was set to its previous level. The logs will contain debug message for only this call, and all other calls before and after will be logged with their original level.


Developed using Python 3.10.1

AVEVA Samples are licensed under the Apache 2 license.

For the main ADH sample libraries page ReadMe
For the main ADH samples page ReadMe
For the main AVEVA samples page ReadMe

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

adh_sample_library_preview-0.9.13rc0.tar.gz (62.0 kB view details)

Uploaded Source

Built Distribution

File details

Details for the file adh_sample_library_preview-0.9.13rc0.tar.gz.

File metadata

File hashes

Hashes for adh_sample_library_preview-0.9.13rc0.tar.gz
Algorithm Hash digest
SHA256 4eff32b0462094557546e279c3a10ed0d39e6c1142b90c522e9006156137f73c
MD5 4934cf845cae6d89716d9cf7fcc8830d
BLAKE2b-256 4be3e10e3b77352b771f3bc6179259bc3fb0cd03784b8190bd3f58908f1cd0aa

See more details on using hashes here.

File details

Details for the file adh_sample_library_preview-0.9.13rc0-py3-none-any.whl.

File metadata

File hashes

Hashes for adh_sample_library_preview-0.9.13rc0-py3-none-any.whl
Algorithm Hash digest
SHA256 f8cf7bc74f8ccba7985f3eebf2aeb2af62306a8fbce34f5cd12ea803534763f5
MD5 77f0a77e9e59a79ce9888e4eeed47b8c
BLAKE2b-256 6bd541588640cf3c669de298d8e718e11865bce88aac87670ae9f58fb80088f1

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page