phitter-hub / phitter-kernelLinks
Phitter is a python library for accurately fitting statistical distributions to datasets, offering intuitive usage, comprehensive visualization, and support for multiple distributions to enhance data analysis projects.
☆31Updated last month
Alternatives and similar repositories for phitter-kernel
Users that are interested in phitter-kernel are comparing it to the libraries listed below
Sorting:
- A Python library for manipulating indices of ndarrays☆109Updated last week
- For when your data won't fit in your dataframe☆49Updated 2 months ago
- Python histogram library - histograms as updateable, fully semantic objects with visualization tools. [P]ython [HYST]ograms.☆135Updated last week
- Numba-accelerated statistical distributions☆65Updated 3 weeks ago
- Robust statistics in Python☆67Updated 5 months ago
- IPython magic for parallel profiling (like `%time`, but parallel)☆72Updated 8 years ago
- A collection of creative AnyWidgets for Python notebook environments☆114Updated this week
- ☆84Updated last year
- Flexitext: Draw styled text in Matplotlib☆122Updated 10 months ago
- A Sphinx extension that integrates JupyterLite within your Sphinx documentation☆90Updated 3 weeks ago
- bayes-toolbox☆93Updated 5 months ago
- A profiler for Numba☆86Updated 9 months ago
- pytask is a workflow management system that facilitates reproducible data analyses.☆133Updated this week
- Rethinking machine learning pipelines☆33Updated 2 months ago
- Scientific Python Ecosystem Coordination (SPEC) documents☆97Updated last month
- Runtime software verification and automated testing for scientific software in Python☆95Updated last year
- Simple markdown changelogs for GitHub repositories☆53Updated this week
- A Python Module for intelligent reuse of docstrings☆32Updated 4 years ago
- Funnel plot☆45Updated 2 years ago
- Formulas for mixed-effects models in Python☆64Updated 10 months ago
- A defined interface for working with a cache of executed jupyter notebooks☆56Updated last month
- Efficient matrix representations for working with tabular data☆127Updated this week
- A pure-Python codified rant aspiring to a world where numbers and types can work together.☆45Updated last year
- Build jupyterlite apps out of repositories☆35Updated this week
- A pure Python library for benchmarked, scalable numerics using numba.☆26Updated 2 years ago
- ☆38Updated last year
- Jupyter kernels using Pixi for reproducible notebooks☆46Updated last week
- Kickstart your JupyterLab based standalone application 🚀☆23Updated 2 years ago
- create ipywidgets user input form pydantic model or jsonschema☆48Updated last week
- Python packaging made simple. Recommendations & guidance curated by the pyOpenSci community☆137Updated last week