arogozhnikov / arogozhnikov.github.ioLinks
'Brilliantly wrong' blog, Machine Learning visualizations live here
☆133Updated last month
Alternatives and similar repositories for arogozhnikov.github.io
Users that are interested in arogozhnikov.github.io are comparing it to the libraries listed below
Sorting:
- Machine Learning in High Energy Physics 2016☆76Updated 6 years ago
- Jupyter notebook-post of advanced numpy techniques☆58Updated 7 years ago
- Tutorial on interpreting and understanding machine learning models☆69Updated 7 years ago
- Experimental Gradient Boosting Machines in Python with numba.☆189Updated 7 years ago
- InfiniteBoost: building infinite ensembles with gradient descent☆183Updated 7 years ago
- Automatic differentiation + optimization☆101Updated 6 years ago
- Slides and materials for most of my talks by year☆93Updated 2 years ago
- MLHEP 2015 materials (http://hse.ru/mlhep2015)☆19Updated 10 years ago
- Pure Python/Numpy implementation of the Nelder-Mead algorithm.☆131Updated 4 years ago
- Tutorial on "Efficient Python for High-Performance Computing"☆121Updated 11 months ago
- Materials for the course of machine learning at Imperial College organized by Yandex SDA☆84Updated 9 years ago
- demos for PyBay talk: Using Randomness to make code faster☆51Updated 8 years ago
- Tutorial material and instruction for scipy 2018 jupyterlab tutorial☆73Updated 5 months ago
- Tutorial on "Modern Optimization Methods in Python"☆251Updated 11 months ago
- Table of Contents extension for JupyterLab☆72Updated 6 years ago
- bayesian bootstrapping in python☆123Updated 3 years ago
- PyMC3 tutorial for DataScience LA (January 2017)☆67Updated 7 years ago
- PyDataLondonTutorial☆26Updated 9 years ago
- Personal project to compare hierarchical linear regression in PyMC3 and PyStan, as presented at http://pydata.org/london2016/schedule/pre…☆127Updated 9 years ago
- Lightweight, Python library for fast and reproducible experimentation☆136Updated 7 years ago
- Materials for "Bayesian Methods for Machine Learning" Coursera MOOC☆138Updated 5 years ago
- Course of Machine Learning in Science and Industry at Heidelberg university☆47Updated 8 years ago
- Material for my lectures at the ESAC statistics conference, Oct 27-31 2014☆68Updated 11 years ago
- 3-day dive into deep learning at csc☆25Updated 9 years ago
- A repository for public storage of slides given at the 17th Python in Science Conferences (2018)☆134Updated 6 years ago
- Source for my Pythonic Perambulations blog☆84Updated last year
- Presented at Scipy Conference 2019☆128Updated 5 years ago
- ☆64Updated 7 years ago
- Mini module with syntax sugar for pandas/sklearn☆107Updated 5 years ago
- https://events.kaspersky.com/hackathon/☆29Updated 8 years ago