# rstsr **Repository Path**: ajz34/rstsr ## Basic Information - **Project Name**: rstsr - **Description**: No description available - **Primary Language**: Rust - **License**: Apache-2.0 - **Default Branch**: master - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2025-02-11 - **Last Updated**: 2025-02-11 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README # RSTSR: An n-Dimension Rust Tensor Toolkit
| Resources | Badges | |--|--| | User Document | [![User Documentation](https://readthedocs.org/projects/rstsr-book/badge/?version=latest)](https://rstsr-book.readthedocs.io/latest/) | | API Document | [![API Documentation](https://docs.rs/rstsr/badge.svg)](https://docs.rs/rstsr) | | Crate | [![Crate](https://img.shields.io/crates/v/rstsr.svg)](https://crates.io/crates/rstsr) |
Welcome to RSTSR, a n-dimensional tensor toolkit library, in native rust. This crate will be a building block for scientific computation in native Rust, similar to NumPy of Python. ## Features - Simple syntex (looks like NumPy, and some core concepts from rust crate [ndarray](https://github.com/rust-ndarray/ndarray/)). - % (remainder) as matrix multiplication (you can `&a % &b` to perform `a.matmul(&b)`). - Allow different devices in framework. Currently supports `DeviceFaer` and `DeviceOpenBLAS`. - We will try to support CUDA and HIP in near future. - Full support of n-dimensional, broadcasting, basic slicing, reshape. - Fast on multi-threading CPU. - Matmul is provided by backends (such as [faer](https://github.com/sarah-quinones/faer-rs/) or [OpenBLAS](https://github.com/OpenMathLib/OpenBLAS/)). - Other cases (summation, element-wise operations) are on-par or even much faster than NumPy (by fast layout iterators and [rayon](https://github.com/rayon-rs/rayon/) threading). ## Illustrative Example To start with, you may try to run the following code: ```rust use rstsr::prelude::*; // 3x2 matrix with c-contiguous memory layout let a = rt::asarray((vec![6., 2., 7., 4., 8., 5.], [3, 2].c())); // 2x4x3 matrix by arange and reshaping let b = rt::arange(24.); let b = b.reshape((-1, 4, 3)); // in one line, you can also // let b = rt::arange(24.).into_shape((-1, 4, 3)); // broadcasted matrix multiplication let c = &b % &a; // print the result println!("{:6.1}", c) // output: // [[[ 23.0 14.0] // [ 86.0 47.0] // [ 149.0 80.0] // [ 212.0 113.0]] // // [[ 275.0 146.0] // [ 338.0 179.0] // [ 401.0 212.0] // [ 464.0 245.0]]] // print layout of the result println!("{:?}", c.layout()); // output: // 3-Dim (dyn), contiguous: Cc // shape: [2, 4, 2], stride: [8, 2, 1], offset: 0 ``` ## Short FAQs > **Why RSTSR? There seems many numeric and machine-learning libraries in rust already.** We need a numeric library that supports - a data structure that supports arbitary types (including complex, half, and arbitary-precision) - a framework that supports different backends - fast, at least efficient on server CPU - supports parallel by threading (specifically rayon) - large dynamic dimension tensor and its reshape - functionality can be extended by other crates And further more, - the framework may not overwhelm chemist scientists Many crates in native rust done well in some aspects but not all. This crate gets inspires from [NumPy](https://github.com/data-apis/array-api/), [Array API standard](https://github.com/data-apis/array-api/), [ndarray](https://github.com/rust-ndarray/ndarray/), [candle](https://github.com/huggingface/candle), [Burn](https://github.com/tracel-ai/burn). > **What is supposed to be supported in near future?** - Lapack functions and basic linear algebra APIs - CUDA and HIP device support - MKL and BLIS device support - Full support of [Python array API standard](https://data-apis.org/array-api/latest/) (in native rust instead of python binding) - statistical (reduction) functions (norm, std, etc) - searching functions - manuplication functions (stack, unstack, tile, roll, moveaxis) - Einstein summation > **What's RSTSR meaning?** RSTSR actually refers to its relationship with **R**E**S**T **T**en**s**o**r** ([REST](https://github.com/igor-1982/rest)), instead of **R**u**s**t **T**en**s**o**r**. This crate was originally tried to developed a more dev-friendly experience for chemist programmer from numpy/scipy/pytorch. > **Is there an illustrative project for using RSTSR in real-world project?** We refer a project that developed before rstsr v0.1: [showcase of RI-CCSD](https://github.com/ajz34/showcase_rust_riccsd). File [riccsd.rs](https://github.com/ajz34/showcase_rust_riccsd/blob/master/src/riccsd.rs) is a demonstration of code style to use RSTSR. > **What features will not be implemented?** We do not support autodiff and lazy-evaluation in far future. In this mean time, we are not very concern on machine-learning applications, but focus more on traditional scientific computing, especially applications in electronic structure. ## Miscellaneous You are welcomed to raise problems or suggestions in github repo issues or discussions. This project is still in early stage, and radical code factorization could occur; dev-documentation can still be greatly improved.