glouppe / tutorial-sklearn-lhcb
Tutorial "An introduction to Machine Learning with Scikit-Learn", presented at CERN
☆12Updated 9 years ago
Alternatives and similar repositories for tutorial-sklearn-lhcb:
Users that are interested in tutorial-sklearn-lhcb are comparing it to the libraries listed below
- Likelihood-free inference toolbox.☆57Updated 7 years ago
- Pandas-aware non-linear least squares regression using Lmfit☆10Updated 8 years ago
- Repository for the code of "QCD-Aware Recursive Neural Networks for Jet Physics"☆46Updated 5 years ago
- Versatile, high-performance histogram toolkit for Numpy.☆109Updated 6 years ago
- A matplotlibrc that produces plots close to the official LHCb style.☆16Updated 10 years ago
- Jim's tutorials for LPC HATS on May 28 and 29, 2019: the Numpy ecosystem, uproot, and awkward-array.☆9Updated 4 years ago
- Short course on nonparametric inference in auditing and litigation, XXIX Foro Internacional de Estadistica, Puebla, MX☆15Updated 7 years ago
- ☆10Updated 9 years ago
- Conda recipes for building ROOT 5 and ROOT 6 binaries, root_numpy, rootpy, root_pandas, with both Python 2 and Python 3 support.☆29Updated 6 years ago
- Lecture notes for the "Programming with Python" course I have taught in Spring 2015. at The University of Manchester☆20Updated 8 years ago
- Easy conversions between different styles of expressions☆12Updated last week
- LHCb data analysis lessons☆12Updated 7 years ago
- Pure python statistic tools for high energy physics.☆17Updated 5 years ago
- Aghast: aggregated, histogram-like statistics, sharable as Flatbuffers.☆17Updated 2 years ago
- ☆9Updated 6 years ago
- %conda magic for IPython☆28Updated 7 years ago
- Main repository for image generation and CNN training https://arxiv.org/abs/1609.00607☆22Updated 4 years ago
- ☆28Updated 7 years ago
- Quick manipulation of structured data for data analysis.☆25Updated 7 years ago
- Hands-on boosted decision tree tutorial (using XGBoost) for September 2017 Fermilab Machine Learning Group Meeting.☆16Updated 7 years ago
- 💻 Material for a course on applied machine-learning for scientists. Taught at EPFL in spring 2017☆23Updated 7 years ago
- Scientific numbers with multiple uncertainties, correlation-aware gaussian error propagation and numpy support.☆28Updated last month
- Tutorials for CMS analysis in scientific Python☆13Updated 4 years ago
- Machine Learning for High Energy Physics.☆183Updated 4 months ago
- A Python module for conveniently loading/saving ROOT files as pandas DataFrames☆109Updated 3 years ago
- a set of Dockerfiles defining docker containers for HEP software and appliances.☆17Updated 6 years ago
- Cost function builder. For fitting distributions.☆51Updated 9 months ago
- Machine Learning in High Energy Physics 2016☆76Updated 5 years ago
- Package template for a project using Cython☆58Updated 8 years ago
- ☆20Updated 8 years ago