Eclipse Deeplearning4J: Neural Networks for Java/JVM
=========================
---
## Using Eclipse Deeplearning4j
To get started using Deeplearning4j, please go to our [Quickstart](https://deeplearning4j.org/docs/latest/deeplearning4j-quickstart). You'll need to be familiar with a Java automated build tool such as Maven and an IDE such as IntelliJ.
## Main Features
- Versatile n-dimensional array class
- GPU integration (supports devices starting from Kepler, cc3.0. You can check your device's compute compatibility [here](https://developer.nvidia.com/cuda-gpus).)
---
## Modules
- datavec = Library for converting images, text and CSV data into format suitable for Deep Learning
- nn = core neural net structures MultiLayer Network and Computation graph for designing Neural Net structures
- core = additional functionality building on deeplearning4j-nn
- modelimport = functionality to import models from Keras
- nlp = natural language processing components including vectorizers, models, sample datasets and renderers
- scaleout = integrations
- spark = integration with Apache Spark versions 1.3 to 1.6 (Spark 2.0 coming soon)
- parallel-wraper = Single machine model parallelism (for multi-GPU systems, etc)
- aws = loading data to and from aws resources EC2 and S3
Documentation is available at [deeplearning4j.org](https://deeplearning4j.org/overview) and [JavaDocs](https://deeplearning4j.org/api/latest/). Open-source contributors can help us improve our documentation for Deeplearning4j by sending pull requests for the DL4J website [here](https://github.com/eclipse/deeplearning4j-docs)
. Github issues should focus on bug reports and feature requests.
Please join the community on [Gitter](https://community.konduit.ai), where we field questions about how to install the software and work with neural nets. For support from Skymind, please see our [contact page](https://skymind.io/contact).
To install Deeplearning4J, see our [Quickstart](https://deeplearning4j.org/docs/latest/deeplearning4j-quickstart) and below. More information can be found on the [ND4J web site](http://nd4j.org/getstarted.html) as well as [here](https://deeplearning4j.org/tutorials/00-quickstart-for-deeplearning4j).
#### Use Maven Central Repository
Search Maven Central for [deeplearning4j](https://search.maven.org/#search%7Cga%7C1%7Cdeeplearning4j) to get a list of dependencies.
Add the dependency information to your `pom.xml` file. **We highly recommend downloading via Maven unless you plan to help us develop DL4J.** An easy way to get up-to-date dependencies is to use the ones listed in our [dl4j-examples POM](https://github.com/eclipse/deeplearning4j-examples/blob/master/pom.xml).
Create a yum repo and run yum install to load the Red Hat Package Management (RPM) files. First create the repo file to setup the configuration locally.