High-Performance Data Analytics

Iterate on large datasets, deploy models more frequently, and lower total cost of ownership.

Data analytics workflows have traditionally been slow and cumbersome, relying on CPU compute for data preparation, training, and deployment. Accelerated data science can dramatically boost the performance of end-to-end analytics workflows, speeding up value generation while reducing cost.

Transformative Technology for Immediate Results

Industry Challenges

  • Data preparation is a complex, time-consuming process that consumes a majority of a data scientist's time.

  • Iteration takes substantial time leading to less robust analyses. 

  • Downsampling datasets leads to suboptimal results.

Businesses utilize analytics to understand their data and drive business decisions. While data analytics has unlocked vast potential, traditional CPU-based data processing and analysis have increased overhead and added complexity to business operations, decreasing the return on investment. Accelerated data science ushers in a new era of data analytics, allowing for organizations and practitioners to get the most out of their data and their infrastructure.

Accelerated data science delivers improvements across the end-to-end data analytics workflow, whether you’re transforming data for enterprise consumption or visualizing terabyte-scale data to understand a particular problem domain. Data practitioners can leverage NVIDIA GPUs with ease using their preferred toolset, bringing the power of high-performance computing to your organization with a minimal learning curve.

By harnessing the power of high-performance data analytics, businesses can better serve their customers, develop products faster, and enable innovations across their enterprise.

Lightning-Fast Performance on Big Data

Results show that GPUs provide dramatic cost and time-savings for small and large-scale Big Data analytics problems. Using familiar APIs like Pandas and Dask, at 10 terabyte scale, RAPIDS performs at up to 20x faster on GPUs than the top CPU baseline. Using just 16 NVIDIA DGX A100s to achieve the performance of 350 CPU-based servers, NVIDIA’s solution is 7x more cost effective while delivering HPC-level performance.

Lightning-Fast Performance on Big Data

The Benefits of Accelerated Analytics

  • Data Scientists
  • Data Engineers
  • IT and DevOps Professionals
Spend Less Time Waiting for Processes to Finish

Less Wait

Spend less time waiting for processes to finish, and more time iterating and testing solutions to answer business problems at hand.

Multi-terabyte Datasets with High Performance Processing

Better Results

Analyze multi-terabyte datasets with high performance processing to drive higher accuracy results and quicker reporting.

No Refactoring - Scale Your Existing Data Science Toolchain

No Refactoring

Accelerate and scale your existing data science toolchain with no need to learn new tools and minimal code changes.

Deliver High Quality Datasets Faster to Enable Practitioners

Faster Processing

Churn through large-scale data transformations and deliver high quality datasets faster to enable practitioners and operations across your organization.

Easily Share Device Memory Across a Huge Number of Popular Analytics Libraries

Vast Interoperability

Easily share device memory across a huge number of popular analytics libraries to avoid costly and time-consuming data copy-over operations.

Utilize the Data Formats

No Refactoring

Don’t spend countless hours converting files from one format to another, utilize the data formats that work best within your organization.

Get the most out of your budget with GPU acceleration

Less Spending

Get the most out of your budget with GPU acceleration instead of accruing costs buying, deploying  and managing more CPUs.

Leverage all of your Data to make Better Business Decisions

Better Decisions

Leverage all of your data to make better business decisions, improve organizational performance, and better meet customer needs.

Effortlessly Scale from a Desktop to Multi-Node

Seamless Scaling

Effortlessly scale from a desktop to multi-node, multi-GPU clusters with a consistent, intuitive architecture.

End-to-End Accelerated Analytics with NVIDIA

NVIDIA offers solutions to accelerate the entirety of the end-to-end analytics workflow, whether your organization needs to reduce processing time of your ETL pipelines or accelerate to a large-scale machine learning workflow. NVIDIA and its partners provide solutions to run data science workflows from your laptop, to the cloud, as well as on-premises with NVIDIA-Certified Systems. These solutions combine hardware and software optimized for high-performance data analytics to make it easy for businesses to get the most out of their data. With the RAPIDS open-source software suites and NVIDIA CUDA, data practitioners can accelerate analytics pipelines on NVIDIA GPUs, reducing data analytics operations like data loading, processing and training from days to minutes. CUDA's power can be harnessed through familiar Python of Java-based languages, making it simple to get started with accelerated analytics.

Machine Learning to Deep Learning, All on GPU

Machine Learning to Deep Learning, All on GPU

Data Prep + ETL

Churn through terabyte scale ETL pipelines on NVIDIA GPUs using RAPIDS + Spark 3.0 or Dask to arm your practitioners with high-quality datasets.

Training

Develop, iterate, and refine business-enabling models to support your operations with RAPIDS cuML and Dask.

Visualize

Gain a deeper understanding of your data through massive-scale visualizations with RAPIDS + Plotly Dash.

Inference

Generate business insights fast to bolster operations and decision making with RAPIDS FIL.

Accelerated Analytics Solutions From Desktop to Data Center

PC

Get started in machine learning.

Workstations

A new breed of workstations for data science.

Data Center

AI systems for enterprise production.

Cloud

Versatile, accelerated machine learning.

Unlock the Value of Big Data with the Power of AI

Download our new e-book, Accelerating Apache Spark 3.x—Leveraging NVIDIA GPUs to Power the Next Era of Analytics and AI, to learn more about the next evolution of Apache Spark.

  翻译: