Crates.io | juice |
lib.rs | juice |
version | 0.3.0 |
source | src |
created_at | 2017-07-19 07:07:50.473843 |
updated_at | 2021-11-21 11:15:30.239115 |
description | Machine Learning Framework for Hackers |
homepage | https://github.com/spearow/juice |
repository | https://github.com/spearow/juice |
max_upload_size | |
id | 24047 |
size | 4,895,716 |
Juice is a open Machine Learning Framework for hackers to build classical, deep or hybrid machine learning applications. It was inspired by the brilliant people behind TensorFlow, Torch, Caffe, Rust and numerous research papers and brings modularity, performance and portability to deep learning.
Juice has one of the simplest APIs, is lean and tries to introduce minimal technical debt to your stack.
See the Juice - Machine Learning for Hackers book for more.
See more Deep Neural Networks benchmarks on [Deep Learning Benchmarks][deep-learning-benchmarks-website].
Juice is portable. Run it on CPUs, GPUs, and FPGAs, on machines with an OS, or on machines without one. Run it with OpenCL or CUDA. Credit goes to Coaster and Rust.
We see Juice as the core of constructing high-performance machine intelligence applications. Juice's design makes it easy to publish independent modules to make e.g. deep reinforcement learning, visualization and monitoring, network distribution, automated preprocessing or scaleable production deployment easily accessible for everyone.
Disclaimer: Juice is currently in an early stage of development. If you are experiencing any bugs with features that have been implemented, feel free to create a issue.
To learn how to build classical, deep or hybrid machine learning applications with Juice, check out the Juice - Machine Learning for Hackers book.
For additional information see the Rust API Documentation.
Or start by running the Juice examples.
We are providing a set of Juice examples, where we and others publish executable machine learning models built with Juice. It features a CLI for easy usage and has a detailed guide in the project README.md.
Juice comes with an examples directory as well, which features popular neural networks (e.g. Alexnet, Overfeat, VGG). To run them on your machine, just follow the install guide, clone this repoistory and then run
# The examples currently require CUDA support.
cargo run --release --no-default-features --features cuda --example benchmarks alexnet
Juice is build in Rust. If you are new to Rust you can install Rust as detailed here. We also recommend taking a look at the official Rust - Getting Started Guide.
To start building a machine learning application (Rust only for now. Wrappers are welcome) and you are using Cargo, just add Juice to your Cargo.toml
:
[dependencies]
juice = "0.2.3"
If you are on a machine that doesn't have support for CUDA or OpenCL you
can selectively enable them like this in your Cargo.toml
:
[dependencies]
juice = { version = "0.3", default-features = false }
[features]
default = ["native"] # include only the ones you want to use, in this case "native"
native = ["juice/native"]
cuda = ["juice/cuda"]
opencl = ["juice/opencl"]
More information on the use of feature flags in Juice can be found in FEATURE-FLAGS.md
If you want to start hacking on Juice (e.g.adding a new Layer
)
you should start with forking and cloning the repository.
We have more instructions to help you get started in the CONTRIBUTING.md.
We also has a near real-time collaboration culture, which happens here on Github and on the Gitter Channel.
Unless you explicitly state otherwise, any contribution intentionally submitted for inclusion in the work by you, as defined in the Apache-2.0 license, shall be dual licensed as below, without any additional terms or conditions.
Juice is designed to be as modular and extensible as possible. More helpful crates you can use with Juice:
You can find the release history at the CHANGELOG.md. We are using Clog, the Rust tool for auto-generating CHANGELOG files.
Licensed under either of
at your option.