mistletoe
bambi
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mistletoe | bambi | |
---|---|---|
2 | 5 | |
750 | 1,011 | |
- | 2.5% | |
7.5 | 7.9 | |
4 days ago | 11 days ago | |
Python | Python | |
MIT License | MIT License |
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mistletoe
- python development on logseq md files
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Which not so well known Python packages do you like to use on a regular basis and why?
mistletoe I originally came across when I was looking for a markup language processor that provided API access for manipulating the DOM tree. markdown-it-py's documentation was a bit hard for me to follow. Meanwhile, there's plenty of source code examples for extra syntax and converters that are easy to read in mistletoe.
bambi
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Bayesian Structural Equation Modeling using blavaan
It is much less challenging with Bambi[1] and brms[2].
[1] https://bambinos.github.io/bambi/
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Ask HN: What Are You Learning?
I’m trying to learn statistics. I’m up to implementing regressions in python using sci-kit learn.
I was playing around with Bayesian modelling last night with https://bambinos.github.io/bambi/ But I’m not really sure how to interpret the outputs.
Always open to reading about learning resources/books/videos/courses from others.
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how can I build a regression model which is penalised for moving away from an assumed set of coefficients?
I would suggest using Python's bambi; it is based on PyMC and it is very straightforward to use. We simply define our priors argument as a dictionary (quite literally: my_priors = {"feature_1": bmb.Prior("Normal", mu=4, sigma=4), "feature_n": bmb.Prior("Normal", mu=0.4, sigma=0.4)}) when creating our Bambi Model object and we are ready to go. They have a lot of worked exampling in their website.
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Which not so well known Python packages do you like to use on a regular basis and why?
For those interested in Bayesian modeling in Python we also have Bambi https://github.com/bambinos/bambi
- Release Bambi 0.6.0 · bambinos/bambi
What are some alternatives?
Python-Markdown - A Python implementation of John Gruber’s Markdown with Extension support.
brms - brms R package for Bayesian generalized multivariate non-linear multilevel models using Stan
Mistune - A fast yet powerful Python Markdown parser with renderers and plugins.
deffcode - A cross-platform High-performance FFmpeg based Real-time Video Frames Decoder in Pure Python 🎞️⚡
markdown2 - markdown2: A fast and complete implementation of Markdown in Python
pyroute2 - Python Netlink and PF_ROUTE library — network configuration and monitoring
pymorphy2 - Morphological analyzer / inflection engine for Russian and Ukrainian languages.
vimtk - A vim toolkit focused on gvim, IPython, and the terminal.
Kaitai Struct - Kaitai Struct: declarative language to generate binary data parsers in C++ / C# / Go / Java / JavaScript / Lua / Nim / Perl / PHP / Python / Ruby
auto-editor - Auto-Editor: Effort free video editing!
xlwings - xlwings is a Python library that makes it easy to call Python from Excel and vice versa. It works with Excel on Windows and macOS as well as with Google Sheets and Excel on the web.
static-frame - Immutable and statically-typeable DataFrames with runtime type and data validation