Getting Started
Quickstart: Running Examples and DL4J in Your Projects
Comprehensive Setup Guide
Convolutional Neural Networks
Convolutional Net Introduction
Images Are 4-D Tensors?
ConvNet Definition
How Convolutional Nets Work
Maxpooling/Downsampling
DL4J Code Sample
Other Resources
Datasets
Datasets and Machine Learning
Custom Datasets
CSV Data Uploads
Scaleout
Iterative Reduce Defined
Multiprocessor / Clustering
Running Worker Nodes
Advanced DL2J
Build Locally From Master
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 |