statnett / data_cache
Python data cache decorator
☆51Updated last year
Alternatives and similar repositories for data_cache:
Users that are interested in data_cache are comparing it to the libraries listed below
- Extremely lightweight compatibility layer between pandas and Polars☆39Updated 9 months ago
- Typed wrappers over pandas DataFrames with schema validation☆100Updated last year
- Convert pyproject.toml to environment.yaml☆129Updated last year
- pandas data creation by data classes☆50Updated last month
- Polars plugin for pairwise distance functions☆62Updated last month
- Use pathlib syntax to easily work with Pandas series containing file paths.☆69Updated last year
- Install and run applications packaged with conda in isolated environments☆116Updated 5 months ago
- Wrapper allowing to use Polars DataFrames and LazyFrames for plotting with seaborn☆27Updated 11 months ago
- ☆94Updated this week
- Runs black on code cells in a Jupyter notebook☆50Updated 3 years ago
- Automatically upgrade your Polars code to use the latest syntax available☆62Updated 7 months ago
- Coming soon☆59Updated last year
- RFC document, tooling and other content related to the dataframe API standard☆105Updated 10 months ago
- Your go-to for easy access to a plethora of compression algorithms, all neatly bundled in one simple installation.☆99Updated last week
- Polars extension for fzf-style fuzzy matching☆21Updated 6 months ago
- Time based splits for cross validation☆35Updated 2 weeks ago
- Simple utility that retrieves current Jupyter notebook filename or path, when run from Jupyter notebook.☆57Updated 6 months ago
- Arrow, pydantic style☆84Updated 2 years ago
- Pandas type stubs. Helps you type-check your code.☆122Updated last year
- Identifiers and Standard Format Parsing for Polars Dataframe☆14Updated 6 months ago
- Combining holoviz panel and golden-layout in pure python.☆26Updated 4 years ago
- Flat files, flat land.☆26Updated this week
- A pytest plugin for regression testing and regenerating Jupyter Notebooks☆51Updated this week
- A powerful data analysis package based on mathematical step functions. Strongly aligned with pandas.☆59Updated last month
- Lossless in-memory compression of pandas DataFrames and Series powered by the visions type system. Up to 10x less RAM needed for the same…☆28Updated 2 years ago
- A curated list of polars projects and resources.☆36Updated 2 years ago
- Flake8 checking for jupyter notebooks☆28Updated 2 months ago
- Sensible multi-core apply function for Pandas☆79Updated 2 weeks ago
- Cluster tools for running Dask on Databricks☆13Updated 8 months ago
- Robust statistics in Python☆65Updated last year