klieret / everything-you-didnt-now-you-needed
Tips & Tricks for python, the command line, and more.
☆31Updated 4 months ago
Related projects ⓘ
Alternatives and complementary repositories for everything-you-didnt-now-you-needed
- Universal Histogram Interface☆15Updated this week
- Statistics tools and utilities.☆73Updated last week
- Mini-course at Princeton on High Performance Python☆70Updated last year
- Numerical derivatives for Python☆42Updated this week
- ☆12Updated this week
- Vector classes and utilities☆81Updated this week
- Lightweight Python interface to read Les Houches Event (LHE) files☆41Updated this week
- ☆28Updated last month
- A common package to provide example files (e.g., ROOT) for testing and developing packages against.☆13Updated this week
- Pages defining the website of the Scikit-HEP project.☆12Updated 2 weeks ago
- design and steer profile likelihood fits☆29Updated last week
- Repository dedicated to AGC preparations & execution☆24Updated last week
- Manipulating ragged arrays in an Array API compliant way.☆31Updated this week
- Software Engineering for Scientific Computing☆31Updated this week
- Backend for columnar, fully orchestrated HEP analyses with pure Python, law and order.☆25Updated this week
- Units and constants in the HEP system of units☆26Updated this week
- Provides differentiable versions of common HEP operations and objectives.☆24Updated last year
- A curated list of awesome high energy and particle physics software.☆52Updated 3 years ago
- Native Dask collection for awkward arrays, and the library to use it.☆61Updated this week
- GPU development for the Madgraph5_aMC@NLO event generator software package☆30Updated last month
- Histograms with task scheduling.☆23Updated this week
- Histogramming for analysis powered by boost-histogram☆128Updated last week
- Visualize and compare data in a scalable way and a beautiful style.☆18Updated this week
- differentiable (binned) likelihoods with JAX☆18Updated last week
- A class over Computational Physics in Jupyter☆36Updated 4 years ago
- An open-source machine learning framework for global analyses of parton distributions.☆30Updated this week
- Automatically generate symbolic amplitude models for Partial Wave Analysis☆11Updated 2 weeks ago
- Utilities for nonlinear least-squares fits.☆40Updated 4 months ago
- Princeton mini course on GPUs in Python☆38Updated last month
- Repo for the 2023 SciPy conference Tutorial session on VS Code for dev workflows☆14Updated last year