Deeplearning4j is a suite of deep learning tools for Java, letting you train models on the JVM and connect with Python, TensorFlow, and ONNX runtimes.
Train deep learning models in Java on the JVM
Deeplearning4j offers a powerful suite of tools for building and training deep learning models directly in Java. If you prefer working in the JVM ecosystem, you can create, train, and deploy neural networks without needing to switch to other languages.
What sets Deeplearning4j apart is its seamless integration with the Python ecosystem. You can use Python code, import models from popular frameworks like TensorFlow and ONNX, and take advantage of cpython bindings—all from your Java environment.
Whether you're a developer looking to bring deep learning to enterprise Java applications or someone interested in learning about neural networks, Deeplearning4j provides guides, tutorials, and reference material to help you get started quickly.
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