Metatensor is a self-describing sparse tensor data format for atomistic machine
learning and beyond; storing values and gradients of these values together.
Think numpy ndarray
or pytorch Tensor
equipped with extra metadata for
atomic systems and other point clouds data. The core of this library is written
in Rust and we provide API for C, C++, and Python.
The main class of metatensor is the TensorMap
data structure, defining a
custom block-sparse data format. If you are using metatensor from Python, we
additionally provide a collection of mathematical, logical and other utility
operations to make working with TensorMaps more convenient.
For details, tutorials, and examples, please have a look at our documentation.
Thanks goes to all people that make metatensor possible:
We always welcome new contributors. If you want to help us take a look at our contribution guidelines and afterwards you may start with an open issue marked as good first issue.