Doc theme (#5)

* change docs theme + links + logo

* move mlx intro to landing page
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Awni Hannun 2023-12-05 12:08:05 -08:00 committed by GitHub
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5 changed files with 36 additions and 24 deletions

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@ -7,7 +7,7 @@ for example with `conda`:
``` ```
conda install sphinx conda install sphinx
pip install sphinx-rtd-theme pip install sphinx-book-theme
``` ```
### Build ### Build

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@ -39,7 +39,17 @@ pygments_style = "sphinx"
# -- Options for HTML output ------------------------------------------------- # -- Options for HTML output -------------------------------------------------
html_theme = "sphinx_rtd_theme" html_theme = "sphinx_book_theme"
html_theme_options = {
"show_toc_level": 2,
"repository_url": "https://github.com/ml-explore/mlx",
"use_repository_button": True,
"navigation_with_keys": False,
}
html_logo = "_static/mlx_logo.png"
# -- Options for HTMLHelp output --------------------------------------------- # -- Options for HTMLHelp output ---------------------------------------------

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@ -1,6 +1,30 @@
MLX MLX
=== ===
MLX is a NumPy-like array framework designed for efficient and flexible
machine learning on Apple silicon.
The Python API closely follows NumPy with a few exceptions. MLX also has a
fully featured C++ API which closely follows the Python API.
The main differences between MLX and NumPy are:
- **Composable function transformations**: MLX has composable function
transformations for automatic differentiation, automatic vectorization,
and computation graph optimization.
- **Lazy computation**: Computations in MLX are lazy. Arrays are only
materialized when needed.
- **Multi-device**: Operations can run on any of the supported devices (CPU,
GPU, ...)
The design of MLX is strongly inspired by frameworks like `PyTorch
<https://pytorch.org/>`_, `Jax <https://github.com/google/jax>`_, and
`ArrayFire <https://arrayfire.org/>`_. A noteable difference from these
frameworks and MLX is the *unified memory model*. Arrays in MLX live in shared
memory. Operations on MLX arrays can be performed on any of the supported
device types without performing data copies. Currently supported device types
are the CPU and GPU.
.. toctree:: .. toctree::
:caption: Install :caption: Install
:maxdepth: 1 :maxdepth: 1

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@ -1,28 +1,6 @@
Quick Start Guide Quick Start Guide
================= =================
MLX is a NumPy-like array framework designed for efficient and flexible
machine learning on Apple silicon. The Python API closely follows NumPy with
a few exceptions. MLX also has a fully featured C++ API which closely follows
the Python API.
The main differences between MLX and NumPy are:
- **Composable function transformations**: MLX has composable function
transformations for automatic differentiation, automatic vectorization,
and computation graph optimization.
- **Lazy computation**: Computations in MLX are lazy. Arrays are only
materialized when needed.
- **Multi-device**: Operations can run on any of the supported devices (CPU,
GPU, ...)
The design of MLX is strongly inspired by frameworks like `PyTorch
<https://pytorch.org/>`_, `Jax <https://github.com/google/jax>`_, and
`ArrayFire <https://arrayfire.org/>`_. A noteable difference from these
frameworks and MLX is the *unified memory model*. Arrays in MLX live in shared
memory. Operations on MLX arrays can be performed on any of the supported
device types without performing data copies. Currently supported device types
are the CPU and GPU.
Basics Basics
------ ------