Getting Started
Quickstart: Running Examples and DL4J in Your Projects
Comprehensive Setup Guide
Introduction to Neural Networks
Restricted Boltzmann Machines
Convolutional Nets (ConvNets)
Long Short-Term Memory Units (LSTMs)
Denoising Autoencoders
Recurrent Nets and LSTMs
Multilayer Neural Nets
Deep-Belief Network
Deep AutoEncoder
Stacked Denoising Autoencoders
Tutorials
Using Recurrent Nets in DL4J
MNIST DBN Tutorial
Iris Flower Tutorial
Canova: Vectorization Lib for ML Tools
Neural Net Updaters: SGD, Adam, Adagrad, Adadelta, RMSProp
Datasets
Datasets and Machine Learning
Custom Datasets
CSV Data Uploads
Scaleout
Iterative Reduce Defined
Multiprocessor / Clustering
Running Worker Nodes
Text
DL4J's NLP Framework
Word2vec for Java and Scala
Textual Analysis and DL
Bag of Words
Sentence and Document Segmentation
Tokenization
Vocab Cache
Advanced DL2J
Build Locally From Master
Contribute to DL4J (Developer Guide)
Choose a Neural Net
Use the Maven Build Tool
Vectorize Data With Canova
Build a Data Pipeline
Run Benchmarks
Configure DL4J in Ivy, Gradle, SBT etc
Find a DL4J Class or Method
Save and Load Models
Interpret Neural Net Output
Visualize Data with t-SNE
Swap CPUs for GPUs
Customize an Image Pipeline
Perform Regression With Neural Nets
Troubleshoot Training & Select Network Hyperparameters
Visualize, Monitor and Debug Network Learning
Speed Up Spark With Native Binaries
Build a Recommendation Engine With DL4J
Use Recurrent Networks in DL4J
Build Complex Network Architectures with Computation Graph
Train Networks using Early Stopping
Download Snapshots With Maven
Customize a Loss Function
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