numba / euroscipy2019-numba
EuroSciPy 2019 Numba Tutorial
☆12Updated 5 years ago
Alternatives and similar repositories for euroscipy2019-numba:
Users that are interested in euroscipy2019-numba are comparing it to the libraries listed below
- ☆40Updated last year
- Dask and Spark interactions☆21Updated 7 years ago
- Generate ipywidgets from Parameterized objects in the notebook☆36Updated 5 years ago
- Helpers for constructing scikit-learn grid search☆37Updated 5 years ago
- Jupyterhub backed by carina!☆15Updated 9 years ago
- A Bayesian testing framework written in Python.☆94Updated 10 years ago
- ☆36Updated 6 years ago
- Scalable pattern search optimization with dask☆21Updated 7 years ago
- IPython magic for parallel profiling (like `%time`, but parallel)☆71Updated 7 years ago
- Inline, interactive graphs inside jupyter/ipython notebooks☆16Updated 7 years ago
- Pandas Msgpack☆23Updated 2 years ago
- Bidirectional communication for the HoloViz ecosystem☆33Updated last month
- Build a tested, sphinx-based website from notebooks☆30Updated last week
- Tools to manage jobs on supercomputer☆40Updated 9 years ago
- `%hierarchy` and `%%dot` magics for IPython☆40Updated 12 years ago
- Deploy an interactive data science environment with JupyterHub on Docker Swarm☆21Updated 8 years ago
- Async IPython Magic for Asynchronous Notebook Cell Execution☆22Updated 2 years ago
- Subsumed into xnd☆25Updated last year
- Slideshow template for Voilà based on RevealJS☆16Updated 3 years ago
- Python edition of ActivePapers☆41Updated last year
- Tiny Dask Docker images based on Alpine Linux☆17Updated 5 years ago
- Simple Python3 Supervisor library☆13Updated last week
- scikit-learn addon to operate on set/"group"-based features☆41Updated 8 years ago
- Basic notebook checks. Do they run? Do they contain lint?☆17Updated last year
- Generate nbgitpuller links from inside GitHub with this webextension (Chrome, Firefox)☆11Updated last year
- Set-oriented Operations in Pandas☆24Updated 4 years ago
- Material for "PyTorch from Ground Up", a training session at PyCon Nove (Florence, 2018)☆10Updated 6 years ago
- Perform high-speed calculations on columnar data without creating intermediate objects.☆81Updated 6 years ago
- Process, visualize and use data easily.☆20Updated last year
- A python module that will check for package updates.☆28Updated 3 years ago