jakevdp / 2014_fall_ASTR599Links
Content for my Astronomy 599 / Applied Math 500 Course: Intro to scientific computing in Python
☆80Updated 7 years ago
Alternatives and similar repositories for 2014_fall_ASTR599
Users that are interested in 2014_fall_ASTR599 are comparing it to the libraries listed below
Sorting:
- DEPRECATED: use dfm/emcee version 3 instead☆21Updated 6 years ago
- Bayesian Methods in Astronomy workshop, presented at AAS227☆123Updated 9 years ago
- chapters of a book Hogg will never write☆90Updated 9 months ago
- Materials for the 2016 Astro Hack Week☆23Updated 9 years ago
- Source for our paper on multiband periodograms.☆32Updated 6 years ago
- Pure Python, MIT-licensed implementation of nested sampling algorithms for evaluating Bayesian evidence.☆75Updated 2 years ago
- Materials for the 2017 Astro Hack Week☆31Updated 4 years ago
- Friendly professional-level data reduction...documentation here:☆27Updated last month
- Python tool for ADS☆183Updated last week
- General tools for Astronomical Time Series in Python☆87Updated last year
- Scalable 1D Gaussian Processes in C++, Python, and Julia☆188Updated last week
- Some notes about MCMC☆44Updated 7 years ago
- Participant selection for workshops and conferences made easy☆81Updated last year
- Materials for the 2015 Astro Hack Week☆33Updated 10 years ago
- A non-traditional TensorFlow tutorial☆48Updated 5 years ago
- The Office of Astronomy for Development's Data Science Toolkit.☆19Updated 2 years ago
- Practical Python for Astronomers workshop☆90Updated last year
- Python module for performing linear regression for data with measurement errors and intrinsic scatter☆61Updated last year
- Save matplotlib figures with embedded metadata for reproducibility and profit☆31Updated 5 years ago
- MCMC Sampler for Performing Bayesian Inference on Continuous Time Autoregressive Models.☆41Updated 11 months ago
- The Ginga astronomical FITS file viewer☆124Updated last week
- MCMC package for Bayesian data analysis☆59Updated 8 years ago
- Tutorials for creating figures, tables, or other content for AAS Journals.☆40Updated last year
- Course notes and resources for Stanford University graduate course PHYS366: Statistical Methods in Astrophysics☆117Updated 10 months ago
- Lecture slides, Jupyter notebooks, and other material from the LSSTC Data Science Fellowship Program☆310Updated 5 months ago
- Pythonic stellar model grid access; easy MCMC fitting of stellar properties☆130Updated last year
- Simple recipes for a variety of tasks in Scientific Computing☆45Updated 10 years ago
- A tool for creating catterplots in Python with matplotlib☆52Updated 3 years ago
- a data-driven method for determining stellar parameters and abundances from stellar spectra☆43Updated 7 years ago
- Easily generate acknowledgment sections for papers☆44Updated 8 months ago