Mehdi-H / WeeklyCurationLinks
Interesting links I saw, every week
☆20Updated last year
Alternatives and similar repositories for WeeklyCuration
Users that are interested in WeeklyCuration are comparing it to the libraries listed below
Sorting:
- Hexagonal (ports and adapters) architecture applied to Spark and Python data engineering project☆33Updated last year
- Bulwark is a package for convenient property-based testing of pandas dataframes.☆225Updated 4 years ago
- Reference package for unit tests☆49Updated 6 years ago
- Test-Driven Data Analysis Functions☆299Updated 3 weeks ago
- ☆24Updated 2 years ago
- The easiest way to integrate Kedro and Great Expectations☆52Updated 2 years ago
- ☆49Updated 11 months ago
- ☆40Updated last year
- A kedro-plugin for integration of mlflow capabilities inside kedro projects (especially machine learning model versioning and packaging)☆215Updated 2 months ago
- A plugin for Flake8 that checks pandas code☆170Updated last year
- A kedro plugin to use pandera in your kedro projects☆35Updated 7 months ago
- First-party plugins maintained by the Kedro team.☆103Updated this week
- Decorators that logs stats.☆112Updated 3 months ago
- Test framework for software architecture based on imports between modules.☆106Updated this week
- Automatically export Jupyter notebooks to various file formats (.py, .html, and more) on save.☆77Updated last year
- A command line tool to easily add an ethics checklist to your data science projects.☆296Updated 10 months ago
- Kedro-Accelerator speeds up pipelines by parallelizing I/O in the background.☆35Updated 3 years ago
- ☆17Updated 3 years ago
- 🐍💻📊 All material from the PyCon.DE 2018 Talk "Beyond Jupyter Notebooks - Building your own data science platform with Python & …☆156Updated 6 years ago
- Domain-Oriented Clean Architecture python library.☆16Updated last year
- 💫 PyScaffold extension for data-science projects☆159Updated 2 months ago
- Data Exploration in PySpark made easy - Pyspark_dist_explore provides methods to get fast insights in your Spark DataFrames.