Skip to content
@python-supply

python.supply

Use Python to learn foundational topics in computer science, programming, and software engineering.

Popular repositories

  1. guide-to-publishing-packages guide-to-publishing-packages Public

    This article is a step-by-step guide to assembling and publishing a small, open-source Python package; topics covered include directory structure, basic unit tests, basic continuous integration set…

    8 1

  2. published published Public

    Python library that serves as an example/template for a package publishing guide.

    Python 3

  3. analyzing-and-transforming-abstract-syntax analyzing-and-transforming-abstract-syntax Public

    Python's built-in libraries include powerful tools for retrieving and operating over abstract syntax trees. This article provides an overview of how to use these features to analyze and transform P…

    Jupyter Notebook 2 1

  4. map-reduce-and-multiprocessing map-reduce-and-multiprocessing Public

    Multiprocessing can be an effective way to speed up a time-consuming workflow via parallelization. This article illustrates how multiprocessing can be utilized in a concise way when implementing Ma…

    Jupyter Notebook 1 1

  5. advantages-of-type-annotations advantages-of-type-annotations Public

    Native syntactic support for type annotations was introduced in Python 3. This article provides an overview of this feature, reviews how it can be used to document information about expressions and…

    Jupyter Notebook 1

  6. python-supply.github.io python-supply.github.io Public

    Landing/redirect page for python.supply, where you can use Python as a platform to learn foundational concepts and practical techniques in computer science, programming, and software engineering.

    HTML

Repositories

Showing 10 of 15 repositories
  • code-serialization-and-transport Public

    Python's built-in libraries include flexible tools for serialization and deserialization of data structures, including abstract representations of source code. This article provides an overview of how these features can enable workflows that involve transportation of code between different components.

    0 MIT 0 0 0 Updated Jun 2, 2022
  • published Public

    Python library that serves as an example/template for a package publishing guide.

    Python 3 MIT 0 0 0 Updated Sep 18, 2021
  • python-supply.github.io Public

    Landing/redirect page for python.supply, where you can use Python as a platform to learn foundational concepts and practical techniques in computer science, programming, and software engineering.

    HTML 0 0 0 0 Updated Dec 30, 2020
  • strings-regular-expressions-and-text-data-analysis Public

    While built-in string methods and regular expressions have limitations, they can be leveraged in creative ways to implement scalable workflows that process and analyze text data. This article explores these tools and introduces a few useful peripheral techniques within the context of a use case involving a large text data corpus.

    Jupyter Notebook 0 MIT 0 0 0 Updated Dec 28, 2020
  • applications-of-immutability Public

    Both built-in and user-defined data structures in Python can be either mutable or immutable. This article explains why Python makes this distinction for built-in data structures and reviews some use cases within which you may want to define an immutable data structure of your own.

    Jupyter Notebook 0 MIT 0 0 0 Updated Dec 26, 2020
  • working-with-foreign-functions Public

    Python offers a rich set of APIs that make it possible to build wrappers for foreign functions written in another language (such as C/C++) and compiled into shared libraries. This article introduces some basic techniques that will allow you to start using shared libraries in your projects.

    Jupyter Notebook 0 MIT 0 0 0 Updated Dec 23, 2020
  • comprehensions-and-combinations Public

    Python comprehensions are a powerful language feature that can greatly improve the productivity of a programmer and the readability of code. This article explores how comprehensions can be used to build concise solutions for problems that require generating various kinds of combinations of all the elements from a finite (or infinite) set.

    Jupyter Notebook 0 MIT 0 0 0 Updated Dec 22, 2020
  • guide-to-publishing-packages Public

    This article is a step-by-step guide to assembling and publishing a small, open-source Python package; topics covered include directory structure, basic unit tests, basic continuous integration setup, and publication to a repository.

    8 MIT 1 0 0 Updated Nov 11, 2020
  • static-checking-via-metaclasses Public

    Python metaclasses are how classes are created, and by defining your own metaclasses you can guide and constrain code contributors in a complex codebase. This article reviews how metaclasses can be employed to implement static checking of user-defined derived classes.

    Jupyter Notebook 0 MIT 0 0 0 Updated Oct 28, 2020
  • advantages-of-type-annotations Public

    Native syntactic support for type annotations was introduced in Python 3. This article provides an overview of this feature, reviews how it can be used to document information about expressions and functions in a structured way, and illustrates some of the advantages of leveraging it for applicable use cases.

    Jupyter Notebook 1 MIT 0 0 0 Updated Oct 26, 2020

Top languages

Loading…

Most used topics

Loading…