Оригинальный репозиторий
https://github.com/JetBrains/KotlinDL

KotlinDL: High-level Deep Learning API in Kotlin official JetBrains project

Kotlin
Slack channel

KotlinDL is a high-level Deep Learning API written in Kotlin and inspired by Keras.
Under the hood, it uses TensorFlow Java API and ONNX Runtime API for Java. KotlinDL offers simple APIs for training deep learning models from scratch,
importing existing Keras and ONNX models for inference, and leveraging transfer learning for tailoring existing pre-trained models to your tasks.

This project aims to make Deep Learning easier for JVM developers and simplify deploying deep learning models in JVM production environments.

Here’s an example of what a classic convolutional neural network LeNet would look like in KotlinDL:

private const val EPOCHS = 3
private const val TRAINING_BATCH_SIZE = 1000
private const val NUM_CHANNELS = 1L
private const val IMAGE_SIZE = 28L
private const val SEED = 12L
private const val TEST_BATCH_SIZE = 1000

private val lenet5Classic = Sequential.of(
    Input(
        IMAGE_SIZE,
        IMAGE_SIZE,
        NUM_CHANNELS
    ),
    Conv2D(
        filters = 6,
        kernelSize = intArrayOf(5, 5),
        strides = intArrayOf(1, 1, 1, 1),
        activation = Activations.Tanh,
        kernelInitializer = GlorotNormal(SEED),
        biasInitializer = Zeros(),
        padding = ConvPadding.SAME
    ),
    AvgPool2D(
        poolSize = intArrayOf(1, 2, 2, 1),
        strides = intArrayOf(1, 2, 2, 1),
        padding = ConvPadding.VALID
    ),
    Conv2D(
        filters = 16,
        kernelSize = intArrayOf(5, 5),
        strides = intArrayOf(1, 1, 1, 1),
        activation = Activations.Tanh,
        kernelInitializer = GlorotNormal(SEED),
        biasInitializer = Zeros(),
        padding = ConvPadding.SAME
    ),
    AvgPool2D(
        poolSize = intArrayOf(1, 2, 2, 1),
        strides = intArrayOf(1, 2, 2, 1),
        padding = ConvPadding.VALID
    ),
    Flatten(), // 3136
    Dense(
        outputSize = 120,
        activation = Activations.Tanh,
        kernelInitializer = GlorotNormal(SEED),
        biasInitializer = Constant(0.1f)
    ),
    Dense(
        outputSize = 84,
        activation = Activations.Tanh,
        kernelInitializer = GlorotNormal(SEED),
        biasInitializer = Constant(0.1f)
    ),
    Dense(
        outputSize = NUMBER_OF_CLASSES,
        activation = Activations.Linear,
        kernelInitializer = GlorotNormal(SEED),
        biasInitializer = Constant(0.1f)
    )
)


fun main() {
    val (train, test) = mnist()
    
    lenet5Classic.use {
        it.compile(
            optimizer = Adam(clipGradient = ClipGradientByValue(0.1f)),
            loss = Losses.SOFT_MAX_CROSS_ENTROPY_WITH_LOGITS,
            metric = Metrics.ACCURACY
        )
    
        it.logSummary()
    
        it.fit(dataset = train, epochs = EPOCHS, batchSize = TRAINING_BATCH_SIZE)
    
        val accuracy = it.evaluate(dataset = test, batchSize = TEST_BATCH_SIZE).metrics[Metrics.ACCURACY]
    
        println("Accuracy: $accuracy")
    }
}

Table of Contents

TensorFlow Engine

KotlinDL is built on top of the TensorFlow 1.15 Java API.
The Java API for TensorFlow 2.+ has recently had its first public release, and this project will be switching to it in the nearest future.
This, however, does not affect the high-level API.

How to configure KotlinDL in your project

To use the full power of KotlinDL (including the onnx and visualization modules) in your project, add the following dependencies to your build.gradle file:

   repositories {
      mavenCentral()
   }
   
   dependencies {
       implementation 'org.jetbrains.kotlinx:kotlin-deeplearning-api:[KOTLIN-DL-VERSION]'
       implementation 'org.jetbrains.kotlinx:kotlin-deeplearning-onnx:[KOTLIN-DL-VERSION]'
       implementation 'org.jetbrains.kotlinx:kotlin-deeplearning-visualization:[KOTLIN-DL-VERSION]'
   }

Or add just one dependency if you don’t need ONNX and visualization:

   repositories {
      mavenCentral()
   }
   
   dependencies {
       implementation 'org.jetbrains.kotlinx:kotlin-deeplearning-api:[KOTLIN-DL-VERSION]'
   }

The latest KotlinDL version is 0.3.0.
The latest stable KotlinDL version is 0.3.0.

For more details, as well as for pom.xml and build.gradle.kts examples, please refer to the Quick Start Guide.

Working with KotlinDL in Jupyter Notebook

You can work with KotlinDL interactively in Jupyter Notebook with the Kotlin kernel. To do so, add the following dependency in your notebook:

   @file:DependsOn("org.jetbrains.kotlinx:kotlin-deeplearning-api:[KOTLIN-DL-VERSION]")

For more details on installing Jupyter Notebook and adding the Kotlin kernel, check out the Quick Start Guide.

Documentation

Examples and tutorials

You do not need to have any prior deep learning experience to start using KotlinDL.
We are working on including extensive documentation to help you get started.
At this point, please feel free to check out the following tutorials we have prepared:

For more inspiration, take a look at the code examples in this repo.

Running KotlinDL on GPU

To enable the training and inference on a GPU, please read this TensorFlow GPU Support page
and install the CUDA framework to enable calculations on a GPU device.

Note that only NVIDIA devices are supported.

You will also need to add the following dependencies in your project if you wish to leverage a GPU:

  compile 'org.tensorflow:libtensorflow:1.15.0'_
  compile 'org.tensorflow:libtensorflow_jni_gpu:1.15.0'_

On Windows, the following distributions are required:

Logging

By default, the API module uses the kotlin-logging library to organize the logging process separately from the specific logger implementation.

You could use any widely known JVM logging library with a Simple Logging Facade for Java (SLF4J) implementation such as Logback or Log4j/Log4j2.

You will also need to add the following dependencies and configuration file log4j2.xml to the src/resource folder in your project if you wish to use log4j2:

  implementation 'org.apache.logging.log4j:log4j-api:2.16.0'
  implementation 'org.apache.logging.log4j:log4j-core:2.16.0'
  implementation 'org.apache.logging.log4j:log4j-slf4j-impl:2.16.0'

<Configuration status="WARN">
    <Appenders>
        <Console name="STDOUT" target="SYSTEM_OUT">
            <PatternLayout pattern="%d{HH:mm:ss.SSS} [%thread] %-5level %logger{36} - %msg%n"/>
        </Console>
    </Appenders>

    <Loggers>
        <Root level="debug">
            <AppenderRef ref="STDOUT" level="DEBUG"/>
        </Root>
        <Logger name="io.jhdf" level="off" additivity="true">
            <appender-ref ref="STDOUT" />
        </Logger>
    </Loggers>
</Configuration>

If you wish to use Logback, include the following dependency and configuration file logback.xml to src/resource folder in your project

  compile 'ch.qos.logback:logback-classic:1.2.3'

<configuration>
    <appender name="STDOUT" class="ch.qos.logback.core.ConsoleAppender">
        <encoder>
            <pattern>%d{HH:mm:ss.SSS} [%thread] %-5level %logger{36} - %msg%n</pattern>
        </encoder>
    </appender>

    <root level="info">
        <appender-ref ref="STDOUT"/>
    </root>
</configuration>

These configuration files can be found in the examples module.

Fat Jar issue

There is a known Stack Overflow question
and TensorFlow issue with Fat Jar creation and execution on Amazon EC2 instances.

java.lang.UnsatisfiedLinkError: /tmp/tensorflow_native_libraries-1562914806051-0/libtensorflow_jni.so: libtensorflow_framework.so.1: cannot open shared object file: No such file or directory

Despite the fact that the bug describing this problem was closed in the release of TensorFlow 1.14,
it was not fully fixed and required an additional line in the build script.

One simple solution is to add a TensorFlow version specification to the Jar’s Manifest.
Below you can find an example of a Gradle build task for Fat Jar creation.

// build.gradle

task fatJar(type: Jar) {
    manifest {
        attributes 'Implementation-Version': '1.15'
    }
    classifier = 'all'
    from { configurations.runtimeClasspath.collect { it.isDirectory() ? it : zipTree(it) } }
    with jar
}

// build.gradle.kts

plugins {
    kotlin("jvm") version "1.5.31"
    id("com.github.johnrengelman.shadow") version "7.0.0"
}

tasks{
    shadowJar {
        manifest {
            attributes(Pair("Main-Class", "MainKt"))
            attributes(Pair("Implementation-Version", "1.15"))
        }
    }
}

Limitations

Currently, only a limited set of deep learning architectures are supported. Here’s the list of available layers:

  • Input
  • Flatten
  • Dense
  • Dropout
  • Conv2D
  • MaxPool2D
  • AvgPool2D
  • BatchNorm
  • ActivationLayer
  • DepthwiseConv2D
  • SeparableConv2D
  • Merge layers (Add, Subtract, Multiply, Average, Concatenate, Maximum, Minimum)
  • GlobalAvgPool2D
  • GlobalMaxPool2D
  • Cropping2D
  • UpSampling2D
  • ZeroPadding2D
  • Reshape
  • Permute
  • RepeatVector
  • Softmax
  • LeakyReLU
  • PReLU
  • ELU
  • ThresholdedReLU
  • Conv1D
  • MaxPooling1D
  • AveragePooling1D
  • GlobalMaxPooling1D
  • GlobalAveragePooling1D
  • UpSampling1D
  • Cropping1D
  • Conv3D
  • MaxPooling3D
  • AveragePooling3D
  • GlobalAveragePooling3D
  • GlobalMaxPool3D
  • Cropping3D

KotlinDL supports model inference in JVM backend applications. Android support is coming in later releases.

Contributing

Read the Contributing Guidelines.

Reporting issues/Support

Please use GitHub issues for filing feature requests and bug reports.
You are also welcome to join the #kotlindl channel in the Kotlin Slack.

Code of Conduct

This project and the corresponding community are governed by the JetBrains Open Source and Community Code of Conduct. Please make sure you read it.

License

KotlinDL is licensed under the Apache 2.0 License.

GitHub

View Github