Menu

M2M FEATURE NEWS

MapR Announces Complementary Data Management and Logistics for NVIDIA Software

By Ken Briodagh October 15, 2018

According to a recent announcement, MapR Technologies, provider of a data platform for Artificial Intelligence (AI) and Analytics, will now support data access and production deployments for data science through the NVIDIA RAPIDS open-source software.

MapR helps data scientists accelerate the access of required training data by focusing on easing the issues of on-boarding, cleansing, cataloging, and feeding data at high performance to GPUs and NVIDIA DGX systems. The MapR solution also manages the deployment and management of multiple models into production to speed business impact.

“The challenge for most data scientists is the data logistics to locate, prep and access the right data for training. In many cases, 90 percent of the time is spent data wrangling,” said Anil Gadre, EVP and chief product officer, MapR Technologies. “MapR complements RAPIDS with a data management and logistics fabric to accelerate the high-scale processing and access of disparate data across geographies. The same fabric also speeds the deployment of models into production and coordinates the continuous deployment and updating of multiple models to impact business in real-time at scale.”

Central to the solution is the ability to coordinate data flows from across the enterprise and, through a pre-built MapR container for GPUs, make it easy to integrate into NVIDIA’s complete end-to-end data science training pipelines. The MapR Data Platform for RAPIDS is designed to enable data scientists to:

  • Collect data at scale from a variety of sources and preserve raw data so that potentially valuable features are not lost
  • Make input and output data available to many independent applications even across geographically distant locations, on premises, in the cloud or at the edge
  • Manage multiple models during development and easily roll into production
  • Improve evaluation methods for comparing models during development and production, including use of a reference model for baseline successful performance
  • Support rapid stream-based delivery of standard files including Parquet, ORC, JSON, AVRO, and CSV file formats directly into RAPIDS

“MapR’s work with NVIDIA in the RAPIDS ecosystem is helping make broad adoption in the enterprise easy for the largest breadth of workloads,” said Clément Farabet, VP, AI infrastructure, NVIDIA. “MapR’s ability to span on-prem and cloud, from IoT edge to core with a scalable, high-performance common platform means that more data can be fed to GPUs and more innovative applications can be created by data scientists faster.”


Ken Briodagh is a writer and editor with more than a decade of experience under his belt. He is in love with technology and if he had his druthers would beta test everything from shoe phones to flying cars.
Get stories like this delivered straight to your inbox. [Free eNews Subscription]

Editorial Director

SHARE THIS ARTICLE
Related Articles

Beyond the Closet, Connecting to IoT

By: Gary Audin    11/11/2020

Two challenges arise when considering cable based IoT.

Read More

Banyan Security Enhances Secure Remote Access for Engineering Resources

By: Ken Briodagh    10/27/2020

Banyan's Continuous Authorization Can Grant or Revoke Access to Sensitive Engineering Environments and Applications in Real-time Based on TrustScore

Read More

Senet Eyes RAN Partnerships as Key to Delivering Network Services for Massive IoT

By: Arti Loftus    10/21/2020

To meet the challenges that come with providing network connectivity for IoT solutions, Senet is executing a strategy for massive IoT that will be bui…

Read More

mimik Selected by 5G Open Innovation Lab to Drive Early Adoption of 5G

By: Ken Briodagh    10/15/2020

mimik's patented Hybrid Edge Cloud platform will boost the performance and reduce the cost of 5G Networks

Read More

5G Sets New Standards for Vertical Industries' IoT Connectivity

By: Special Guest    10/13/2020

As 5G rolls out across the world, vertical industries across IoT are working on additional standards to make the technology suitable for their industr…

Read More