The only hardware-to-software stack optimized for data science.
Data science workflows have traditionally been slow and cumbersome, relying on CPUs to load, filter, and manipulate data, and train and deploy models. With NVIDIA AI software, including RAPIDS? open-source software libraries, GPUs substantially reduce infrastructure costs and provide superior performance for end-to-end data science workflows. GPU-accelerated data science is available everywhere—on the laptop, in the data center, at the edge, and in the cloud.
Reduce time spent waiting to get the most valuable insights and accelerate ROI.
Accelerate machine learning training up to 215X faster and perform more iterations, increase experimentation and carry out deeper exploration.
Reduce data science infrastructure costs and increase data center efficiency.
Available for Spark, pandas, and networkX.
* Benchmark on Groupy advanced operation (5GB) DuckDB Data Benchmark
HW: Intel Xeon Platinum 8480CL CPU and NVIDIA Grace Hopper? GPU
SW: pandas v1.5 and cudf.pandas v23.10
* NDS 2.0 benchmarks were run with parquet decimal data @ SF3K with UCX off
CPU-only: 8x n1-standard-32
GPU: 8x g2-standard-16, 8x L4 24GB
SW: Spark RAPIDS 24.02
* Benchmark on PageRank with synthetic dataset having ~16,384 vertices and ~524,288 edges
HW: Intel Xeon Platinum 8480CL CPU and NVIDIA H100 80GB (1x GPU)
SW: NetworkX v3.2 and cuGraph v23.10
GPU-accelerated XGBoost brings game-changing performance to the world’s leading machine learning algorithm in both single node and distributed deployments. With significantly faster training speed over CPUs, data science teams can tackle larger data sets, iterate faster, and tune models to maximize prediction accuracy and business value.
CPU: Core i9 | End-to-end time = Data Prep + Conversion + Training + Validation
Learn how to get started today with GPU-accelerated XGBoost
Explore unparalleled acceleration across a variety of different NVIDIA GPU solutions.
Maximize performance, productivity and ROI for machine learning workflows.
RAPIDS, built on NVIDIA CUDA-X AI, leverages more than 15 years of NVIDIA? CUDA? development and machine learning expertise. It’s powerful software for executing end-to-end data science training pipelines completely in NVIDIA GPUs, reducing training time from days to minutes.
RAPIDS is open to all and being adopted globally in data science and analytics. Our partners together are transforming the traditional big data analytics ecosystem with GPU-accelerated analytics, machine learning, and deep learning advancements.
Explore GPU-accelerated hardware solutions
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