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AI Application Boost with NVIDIA RAPIDS Acceleration

High-speed and high-performance GPU and CUDA computing! Build Data Science pipelines 50 times faster!

Data science and machine learning represent the largest computational sectors in the world, where modest improvements in the accuracy of analytical models can translate into billions of impact on the bottom line. Data scientists are constantly striving to train, evaluate, iterate, and optimize models to achieve highly accurate results and exceptional performance. With NVIDIA’s powerful RAPIDS platform, what used to take days can now be accomplished in a matter of minutes, making the construction and deployment of high-value models easier and more agile. In data science, additional computational power means faster and more effective insights. RAPIDS harnesses the power of NVIDIA CUDA to accelerate the entire data science model training workflow, running it on graphics processing units (GPUs).

What you’ll learn

Course Content

Requirements

Data science and machine learning represent the largest computational sectors in the world, where modest improvements in the accuracy of analytical models can translate into billions of impact on the bottom line. Data scientists are constantly striving to train, evaluate, iterate, and optimize models to achieve highly accurate results and exceptional performance. With NVIDIA’s powerful RAPIDS platform, what used to take days can now be accomplished in a matter of minutes, making the construction and deployment of high-value models easier and more agile. In data science, additional computational power means faster and more effective insights. RAPIDS harnesses the power of NVIDIA CUDA to accelerate the entire data science model training workflow, running it on graphics processing units (GPUs).

In this course, you will learn everything you need to take your machine learning applications to the next level! Check out some of the topics that will be covered below:

Throughout the course, we will use the Python programming language and the online Google Colab. This way, you don’t need to have a local GPU to follow the classes, as we will use the free hardware provided by Google.