NVIDIA- Accelerated Computing System Transforming Data Science

NVIDIA- Accelerated Computing System Transforming Data Science

Accelerated computing refers to the employment of a graphics processing unit along with a computer processing unit. This facilitates operations such as analytics and engineering applications, deep learning, etc. It has now become an immediate requirement to acquire the ability to quickly abstract actionable insights from rapidly changing data.

In order to create end-to-end encryption for extracting actionable insights from data, modern data science teams are facing challenges. All the start-ups as well as leading cloud service providers are moving forward to merge accelerated computing platforms in order to speed the process of analytics and data processing.

It is becoming essential to provide acceleration computing as many data scientists use high-level languages and a flexible library for parallel computing in Python.

NVIDIA the developer of Accelerated computing, is working with all top leading server manufacturers and cloud service providers to help the companies transmute and analyze multifaceted data sets with the help of machine learning. Many of these associations are based on accelerated computing combining both hardware and software to fasten the speed of data science.

The main key behind the transformation of data science is the open-source software and APIs that run end-to-end data science and analytics entirely on NVIDIA GPUs. Walmart is one of the innovators that is actively catering to such a platform by using RAPIDS internally. The global super-center is making use of AI, to improve everything starting from stocking to customer experience and pricing.

With successful companies realizing that their data is the key to win more customers, accelerated data science is becoming more crucial and equally critical.  In almost every industry the data scientists are keen to put their company's most treasured assets into work. Accelerated data science is enabling the companies to test more ideas and innovation starting from data engineering to the use of AI models in different levels of production thus driving towards success.

Related Stories

No stories found.
logo
Analytics Insight
www.analyticsinsight.net