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How NVIDIA Uses DGL

8 engineering articles about DGL from NVIDIA's engineering team

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NVIDIA
Intermediate
The article discusses the integration of AI-powered simulations in computer-aided engineering (CAE) to accelerate design processes.
Abouzar Ghasemi
12 min read
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NVIDIA
Intermediate
The article discusses the advancements in AI agents facilitated by NVIDIA AI Enterprise, emphasizing enhanced security, streamlined deployment, and management of AI pipelines.
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NVIDIA
Intermediate
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
Intermediate
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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NVIDIA
Intermediate
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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NVIDIA
Intermediate
The article discusses how Graph Neural Networks (GNNs) and NVIDIA GPUs can optimize fraud detection in financial services.
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NVIDIA
Advanced
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.
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NVIDIA
Intermediate
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...

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