Skip to main content

No project description provided

Project description

NVTabular

PyPI LICENSE Documentation

NVTabular is a feature engineering and preprocessing library for tabular data that is designed to easily manipulate terabyte scale datasets and train deep learning (DL) based recommender systems. It provides high-level abstraction to simplify code and accelerates computation on the GPU using the RAPIDS Dask-cuDF library.

NVTabular is a component of NVIDIA Merlin, an open source framework for building and deploying recommender systems and works with the other Merlin components including Merlin Models, HugeCTR and Merlin Systems to provide end-to-end acceleration of recommender systems on the GPU. Extending beyond model training, with NVIDIA’s Triton Inference Server, the feature engineering and preprocessing steps performed on the data during training can be automatically applied to incoming data during inference.

Benefits

When training DL recommender systems, data scientists and machine learning (ML) engineers have been faced with the following challenges:

  • Huge Datasets: Commercial recommenders are trained on huge datasets that may be several terabytes in scale.
  • Complex Data Feature Engineering and Preprocessing Pipelines: Datasets need to be preprocessed and transformed so that they can be used with DL models and frameworks. In addition, feature engineering creates an extensive set of new features from existing ones, requiring multiple iterations to arrive at an optimal solution.
  • Input Bottleneck: Data loading, if not well optimized, can be the slowest part of the training process, leading to under-utilization of high-throughput computing devices such as GPUs.
  • Extensive Repeated Experimentation: The entire data engineering, training, and evaluation process can be repetitious and time consuming, requiring significant computational resources.

NVTabular alleviates these challenges and helps data scientists and ML engineers:

  • process datasets that exceed GPU and CPU memory without having to worry about scale.
  • focus on what to do with the data and not how to do it by using abstraction at the operation level.
  • prepare datasets quickly and easily for experimentation so that more models can be trained.
  • deploy models into production by providing faster dataset transformation

Learn more in the NVTabular core features documentation.

Performance

When running NVTabular on the Criteo 1TB Click Logs Dataset using a single V100 32GB GPU, feature engineering and preprocessing was able to be completed in 13 minutes. Furthermore, when running NVTabular on a DGX-1 cluster with eight V100 GPUs, feature engineering and preprocessing was able to be completed within three minutes. Combined with HugeCTR, the dataset can be processed and a full model can be trained in only six minutes.

The performance of the Criteo DRLM workflow also demonstrates the effectiveness of the NVTabular library. The original ETL script provided in Numpy took over five days to complete. Combined with CPU training, the total iteration time is over one week. By optimizing the ETL code in Spark and running on a DGX-1 equivalent cluster, the time to complete feature engineering and preprocessing was reduced to three hours. Meanwhile, training was completed in one hour.

Installation

NVTabular requires Python version 3.7+. Additionally, GPU support requires:

  • CUDA version 11.0+
  • NVIDIA Pascal GPU or later (Compute Capability >=6.0)
  • NVIDIA driver 450.80.02+
  • Linux or WSL

Installing NVTabular Using Conda

NVTabular can be installed with Anaconda from the nvidia channel by running the following command:

conda install -c nvidia -c rapidsai -c numba -c conda-forge nvtabular python=3.7 cudatoolkit=11.2

Installing NVTabular Using Pip

NVTabular can be installed with pip by running the following command:

pip install nvtabular

Installing NVTabular with Pip causes NVTabular to run on the CPU only and might require installing additional dependencies manually. When you run NVTabular in one of our Docker containers, the dependencies are already installed.

Installing NVTabular with Docker

NVTabular Docker containers are available in the NVIDIA Merlin container repository. The following table summarizes the key information about the containers:

Container Name Container Location Functionality
merlin-hugectr https://catalog.ngc.nvidia.com/orgs/nvidia/teams/merlin/containers/merlin-hugectr NVTabular, HugeCTR, and Triton Inference
merlin-tensorflow https://catalog.ngc.nvidia.com/orgs/nvidia/teams/merlin/containers/merlin-tensorflow NVTabular, Tensorflow and Triton Inference
merlin-pytorch https://catalog.ngc.nvidia.com/orgs/nvidia/teams/merlin/containers/merlin-pytorch NVTabular, PyTorch, and Triton Inference

To use these Docker containers, you'll first need to install the NVIDIA Container Toolkit to provide GPU support for Docker. You can use the NGC links referenced in the table above to obtain more information about how to launch and run these containers. To obtain more information about the software and model versions that NVTabular supports per container, see Support Matrix.

Notebook Examples and Tutorials

We provide a collection of examples, use cases, and tutorials as Jupyter notebooks covering:

  • Feature engineering and preprocessing with NVTabular
  • Advanced workflows with NVTabular
  • Scaling to multi-GPU and multi-node systems
  • Integrating NVTabular with HugeCTR
  • Deploying to inference with Triton

Feedback and Support

If you'd like to contribute to the library directly, see the Contributing.md. We're particularly interested in contributions or feature requests for our feature engineering and preprocessing operations. To further advance our Merlin Roadmap, we encourage you to share all the details regarding your recommender system pipeline in this survey.

If you're interested in learning more about how NVTabular works, see our NVTabular documentation. We also have API documentation that outlines the specifics of the available calls within the library.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

nvtabular-1.3.2.tar.gz (132.7 kB view details)

Uploaded Source

File details

Details for the file nvtabular-1.3.2.tar.gz.

File metadata

  • Download URL: nvtabular-1.3.2.tar.gz
  • Upload date:
  • Size: 132.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.1 CPython/3.9.13

File hashes

Hashes for nvtabular-1.3.2.tar.gz
Algorithm Hash digest
SHA256 30fcb380b551a1848239910d7b8b7d69e339d8a040036f3481fefb42102c43b9
MD5 cf82287a32c7a06363cfdb608da03b3a
BLAKE2b-256 43a2310461c9d4692d68d60f2bc9a05945648beaa205d28c985be9e4ab2bd5f2

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page