Socket
Socket
Sign inDemoInstall

utilities-hki

Package Overview
Dependencies
Maintainers
2
Alerts
File Explorer

Advanced tools

Socket logo

Install Socket

Detect and block malicious and high-risk dependencies

Install

utilities-hki

Global utilities for Humankind data science


Maintainers
2

Global Utilities

last modified 8 March 2023 by Colleen Treado

The utilities-hki repository contains the common utilities required by multiple other humankind-datascience repositories. Unlike the old utilities repo, this package contains no encrypted files, and credentials are now passed into the utility functions as input arguments.

Current status

This repository is the code repository for the utilities-hki pip package, which, together with the new credentials repository, replaces the current utilities submodule in the other repositories used for data science at Humankind. The package was created by following this guide and the package can be found on PyPI. Most of our repositories have been updated to import the new utilities-hki pip package and call the updated utility functions, passing in the credentials from the new credentials repo, instead. The repositories that still need to be updated are

  • daily_volume_predict
  • volume_predict (but this is not in use)
  • facebook_ads

Installation and setup

For first-time setup, clone the repository into a fresh work area:

# cloning via ssh is preferred but requires an ssh key connection in your account
git clone git@github.com:humankind-datascience/utilities-hki.git

The code requires a number of Python packages to run, which should be installed inside of a dedicated virtual environment. The preferred virtual environment tool is virtualenvwrapper.

To install the required packages in a new virtual environment, run the following command from the top-level directory of the git repository:

pip install -r requirements.txt

If additional packages need to be installed upon changes to the code, add them to the requirements-top-level.txt file. Then run the below commands to install (and upgrade) the top-level dependencies and update the requirements.txt file for future use.

pip install -r requirements-top-level.txt --upgrade
pip freeze -r requirements-top-level.txt > requirements.txt

Additionally, the AWS Command Line Interface (AWS CLI) is required for use of the botocore library, which is used in database utilitify functions to read from and write to the AWS RDS databases. See the AWS CLI documentation for installation instructions.

Now you can run the top-level scripts:

python <utilities-script.py>

The utilities-hki repository contains only testing top-level scripts, designed to test the utility functions during package development.

Code updates

When making changes to the code, follow GitHub flow, i.e. create a new branch, make changes on that branch, frequently committing and pushing those changes to that branch, and then create a pull request to merge those changes into master upon review and approval.

Utility code overview

The utilities-hki repository contains common utility functions used across repositories in the Humankind Data Science code base. The utility functions are grouped by type into separate modules, as outlined below.

  • analy_utils: analysis utility functions, including cleaning procedures for and assignment of engagement types to the visit-level data;
  • db_utils: database utility functions;
  • email_utils: email utility functions;
  • fb_utils: Facebook Ads utility functions.

Standard cleaning of the visit-level data should be implemented at the start of any analysis and can be achieved by calling the analy_utils.clean_visits function (see the docstrings for more details.

Sample code for applying the trained clustering model and assigning the letter/numeric grades to the engagement types for each visit is provided below, where visit is a DataFrame. Read the docstrings for assign_cluster() and get_cluster_grades() for more details.

from utilities-hki import analy_utils
# assumes visit data has already been pulled or loaded into visit

engagement = analy_utils.assign_cluster(visit)
engagement = engagement.reset_index().merge(
    analy_utils.get_cluster_grades(), how='left', on='engagement_type')
visit = visit.merge(engagement, how='inner', on='visit_id')

FAQs


Did you know?

Socket

Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.

Install

Related posts

SocketSocket SOC 2 Logo

Product

  • Package Alerts
  • Integrations
  • Docs
  • Pricing
  • FAQ
  • Roadmap
  • Changelog

Packages

Stay in touch

Get open source security insights delivered straight into your inbox.


  • Terms
  • Privacy
  • Security

Made with ⚡️ by Socket Inc