How NVIDIA Uses DGL
8 engineering articles about DGL from NVIDIA's engineering team
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The article discusses the integration of AI-powered simulations in computer-aided engineering (CAE) to accelerate design processes.
The article discusses the advancements in AI agents facilitated by NVIDIA AI Enterprise, emphasizing enhanced security, streamlined deployment, and management of AI pipelines.
Charu Chaubal
5 min read
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The article discusses WholeGraph, a feature in the RAPIDS cuGraph library designed to optimize memory and retrieval for Graph Neural Networks (GNNs).
Dongxu Yang
9 min read
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NVIDIA has launched AI-accelerated DGL and PyG containers designed for Graph Neural Networks (GNNs), enhancing data sampling and training performance.
Nirmal Kumar Juluru
8 min read
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This article introduces Graph Neural Networks (GNNs) and how to utilize cuGraph-DGL, a GPU-accelerated library for graph computations.
Vibhu Jawa
7 min read
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The article discusses how Graph Neural Networks (GNNs) and NVIDIA GPUs can optimize fraud detection in financial services.
Ashish Sardana
21 min read
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NVIDIA has announced significant updates to its AI software suite, including JAX, NVIDIA CV-CUDA, and NVIDIA RAPIDS, aimed at accelerating AI research, computer vision, and data science.
ApacheApache SparkComputer VisionDaskDeep LearningDGLGoogle CloudGPTJAXKubernetesNeural NetworksNumPyPyTorchPyTorch GeometricSQL
Siddharth Sharma
7 min read
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NVIDIA has introduced GPU-accelerated Deep Graph Library (DGL) containers to assist developers, researchers, and data scientists in working with Graph Neural Networks (GNN) on large heterogeneous g...
Gordana Neskovic
3 min read
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