Machine Learning for High Energy Physics.
☆198Dec 1, 2025Updated 5 months ago
Alternatives and similar repositories for hep_ml
Users that are interested in hep_ml are comparing it to the libraries listed below. We may earn a commission when you buy through links labeled 'Ad' on this page.
Sorting:
- Listing of useful learning resources for machine learning applications in high energy physics (HEPML)☆359May 5, 2021Updated 5 years ago
- Machine Learning in High Energy Physics 2016☆77Oct 14, 2019Updated 6 years ago
- The interface between ROOT and NumPy☆134Jan 6, 2023Updated 3 years ago
- Generative Adversarial Networks for High Energy Physics extended to a multi-layer calorimeter simulation☆113Jun 8, 2024Updated last year
- A matplotlibrc that produces plots close to the official LHCb style.☆16Apr 1, 2014Updated 12 years ago
- Bare Metal GPUs on DigitalOcean Gradient AI • AdPurpose-built for serious AI teams training foundational models, running large-scale inference, and pushing the boundaries of what's possible.
- Metapackage of Scikit-HEP project data analysis packages for Particle Physics.☆173May 19, 2026Updated last week
- Lessons taught at the Starterkit workshops.☆43Apr 9, 2026Updated last month
- Extended histogram plotting on top of matplotlib and HEP collaboration compatible styling☆217Updated this week
- Write-ups☆22Mar 7, 2026Updated 2 months ago
- LHCb data analysis lessons☆12Oct 2, 2017Updated 8 years ago
- Tutorials on computing essentials for HEP☆56May 11, 2026Updated 2 weeks ago
- Conda recipes for building ROOT 5 and ROOT 6 binaries, root_numpy, rootpy, root_pandas, with both Python 2 and Python 3 support.☆29Feb 13, 2019Updated 7 years ago
- Model manipulation and fitting library based on TensorFlow and optimised for simple and direct manipulation of probability density functi…☆203Apr 8, 2026Updated last month
- ROOT I/O in pure Python and NumPy.☆313Feb 19, 2021Updated 5 years ago
- 1-Click AI Models by DigitalOcean Gradient • AdDeploy popular AI models on DigitalOcean Gradient GPU virtual machines with just a single click. Zero configuration with optimized deployments.
- Physical pdfs and more to extend zfit☆11Apr 6, 2026Updated last month
- A Python package for flavour physics phenomenology in the Standard model and beyond☆82Mar 30, 2026Updated last month
- Easy conversions between different styles of expressions☆14May 4, 2026Updated 3 weeks ago
- Introduction to root_numpy, pandas, Keras in simple Deep Learning application at CERN☆51Nov 16, 2017Updated 8 years ago
- Jupyter-friendly Python interface for C++ MINUIT2☆317May 18, 2026Updated last week
- Collection of Notebook for Tutorials on TMVA☆21Feb 2, 2023Updated 3 years ago
- Package to parse decay files, describe and convert particle decays between digital representations.☆44May 19, 2026Updated last week
- A Python module for conveniently loading/saving ROOT files as pandas DataFrames☆111Mar 16, 2021Updated 5 years ago
- HEP statistics tools and utilities.☆83Apr 16, 2026Updated last month
- Deploy to Railway using AI coding agents - Free Credits Offer • AdUse Claude Code, Codex, OpenCode, and more. Autonomous software development now has the infrastructure to match with Railway.
- pure-Python HistFactory implementation with tensors and autodiff☆300May 19, 2026Updated last week
- PyHEP Numba tutorial on February 3, 2021☆12Feb 9, 2021Updated 5 years ago
- Units and constants in the HEP system of units☆31Updated this week
- Machine Learning toolbox for Humans☆700Jul 31, 2024Updated last year
- An addon to matplotlib for creating high energy physics plots☆14Apr 22, 2016Updated 10 years ago
- Materials for the course of machine learning at Imperial College organized by YSDA☆23Feb 13, 2016Updated 10 years ago
- Machine learning–based inference toolkit for particle physics☆93Nov 11, 2024Updated last year
- Phase space generation implemented in TensorFlow☆24Apr 17, 2026Updated last month
- ROOT I/O in pure Python and NumPy.☆268May 21, 2026Updated last week
- Deploy on Railway without the complexity - Free Credits Offer • AdConnect your repo and Railway handles the rest with instant previews. Quickly provision container image services, databases, and storage volumes.
- Basic tools and wrappers for enabling not-too-alien syntax when running columnar Collider HEP analysis.☆142Updated this week
- Numerical derivatives for Python☆52May 18, 2026Updated last week
- Computing essentials for HEP analysts☆11Oct 22, 2019Updated 6 years ago
- A framework to perform a statistical combination of measurements.☆15Updated this week
- Phase space generation of b hadron decays☆22May 21, 2026Updated last week
- Living Review of Machine Learning for Particle Physics☆434May 15, 2026Updated 2 weeks ago
- Hands-on boosted decision tree tutorial (using XGBoost) for September 2017 Fermilab Machine Learning Group Meeting.☆17Feb 5, 2018Updated 8 years ago