88d3c4867f
* Refactor nd4j-common: org.nd4j.* -> org.nd4j.common.* Signed-off-by: Alex Black <blacka101@gmail.com> * Fix CUDA (missed nd4j-common package refactoring changes) Signed-off-by: Alex Black <blacka101@gmail.com> * nd4j-kryo: org.nd4j -> org.nd4j.kryo Signed-off-by: Alex Black <blacka101@gmail.com> * Fix nd4j-common for deeplearning4j-cuda Signed-off-by: Alex Black <blacka101@gmail.com> * nd4j-grppc-client: org.nd4j.graph -> org.nd4j.remote.grpc Signed-off-by: Alex Black <blacka101@gmail.com> * deeplearning4j-common: org.deeplearning4.* -> org.deeplearning4j.common.* Signed-off-by: Alex Black <blacka101@gmail.com> * deeplearning4j-core: org.deeplearning4j.* -> org.deeplearning.core.* Signed-off-by: Alex Black <blacka101@gmail.com> * deeplearning4j-cuda: org.deeplearning4j.nn.layers.* -> org.deeplearning4j.cuda.* Signed-off-by: Alex Black <blacka101@gmail.com> * Import fixes Signed-off-by: Alex Black <blacka101@gmail.com> * deeplearning4j-nlp-*: org.deeplearning4.text.* -> org.deeplearning4j.nlp.(language).* Signed-off-by: Alex Black <blacka101@gmail.com> * deeplearning4j-ui-model: org.deeplearning4j.ui -> org.deeplearning4j.ui.model Signed-off-by: Alex Black <blacka101@gmail.com> * datavec-spark-inference-{server/model/client}: org.datavec.spark.transform -> org.datavec.spark.inference.{server/model/client} Signed-off-by: Alex Black <blacka101@gmail.com> * datavec-jdbc: org.datavec.api -> org.datavec.jdbc Signed-off-by: Alex Black <blacka101@gmail.com> * Delete org.deeplearning4j.datasets.iterator.impl.MultiDataSetIteratorAdapter in favor of (essentially identical) org.nd4j.linalg.dataset.adapter.MultiDataSetIteratorAdapter Signed-off-by: Alex Black <blacka101@gmail.com> * ND4S fixes Signed-off-by: Alex Black <blacka101@gmail.com> * Fixes Signed-off-by: Alex Black <blacka101@gmail.com> * nd4j-common-tests: org.nd4j.* -> org.nd4j.common.tests Signed-off-by: Alex Black <blacka101@gmail.com> * Trigger CI Signed-off-by: Alex Black <blacka101@gmail.com> * Fixes Signed-off-by: Alex Black <blacka101@gmail.com> * #8878 Ignore CUDA tests on modules with 'nd4j-native under cuda' issue Signed-off-by: Alex Black <blacka101@gmail.com> * Fix bad imports in tests Signed-off-by: Alex Black <blacka101@gmail.com> * Add ignore on test (already failing) due to #8882 Signed-off-by: Alex Black <blacka101@gmail.com> * Import fixes Signed-off-by: Alex Black <blacka101@gmail.com> * Additional import fixes Signed-off-by: Alex Black <blacka101@gmail.com> |
||
---|---|---|
.. | ||
project | ||
src | ||
.gitignore | ||
.scalafmt.conf | ||
.travis.yml | ||
LICENSE | ||
README.md | ||
build.sbt | ||
buildmultiplescalaversions.sh | ||
pom.xml | ||
sbt-pom.xml |
README.md
ScalNet
ScalNet is a wrapper around Deeplearning4J emulating a Keras like API for deep learning.
ScalNet is released under an Apache 2.0 license. By contributing code to this repository, you agree to make your contribution available under an Apache 2.0 license.
ScalNet is STILL ALPHA and we are open sourcing this in an attempt to get feedback.
Come in to gitter if you are interested in learning more.
Prerequisites
- JDK 8
- Scala 2.11.+ or 2.10.x
- SBT and Maven
How to build
ScalNet depends on Deeplearning4j and ND4J
sbt
ScalNet uses sbt, but due to resolving issues, you must have Maven available to copy some nd4j-native dependencies in your classpath, in order to run the examples.
This is automatically done in build.sbt
and you don't need to do anything besides having maven installed.
If you use sbt in your own project, you will probably have to proceed the same way. When ScalNet will be using releases instead of snapshots, this won't be necessary anymore.
To build, use:
$ sbt package
Alternatively, for some quick testing or usage in Jupyter for example, run:
$ sbt assembly
To obtain a JAR file with all needed dependencies.
See the official sbt documentation for more on how to use sbt.
Maven
Althought Maven is mainly used for release management, you can use the provided pom.xml to import ScalNet as a Maven project.
Target for scala 2.11
$ change-scala-versions.sh "2.11"
$ mvn package
Target for scala 2.10
$ change-scala-versions.sh "2.10"
$ mvn package
How to use
sbt
libraryDependencies ++= "org.deeplearning4j" % "scalnet_2.11" % "0.9.2-SNAPSHOT"
Maven
<dependency>
<groupId>org.deeplearning4j</groupId>
<artifactId>scalnet_2.11</artifactId>
<version>0.9.2-SNAPSHOT</version>
</dependency>
Getting started
ScalNet uses a Keras like API, wrapping deeplearning4j to make it more easier to start with.
Also, since you can call Java code from Scala, you can still use everything from deeplearning4j.
To see what ScalNet has to offer, run one of the [examples] (https://github.com/eclipse/deeplearning4j/tree/master/scalnet/src/test/scala/org/deeplearning4j/scalnet/examples) it ships with.
Please note that those examples are not state-of-the-art in any way, they're just enough to get you started.