High-Speed Pandas on GPU in AWS Cloud with RAPIDS and NVIDIA NGC
Offered By: Jeff Heaton via YouTube
Course Description
Overview
          Explore high-speed data processing using NVIDIA RAPIDS on AWS Cloud in this 21-minute video tutorial. Learn how to leverage GPU-accelerated Pandas-like dataframes for fast preprocessing and seamless integration with GPU-based models. Follow step-by-step instructions to set up an AWS environment, including S3 bucket creation, IAM access configuration, EC2 instance setup with spot pricing, and EBS volume management. Discover how to access NVIDIA NGC containers, use Jupyter notebooks, and implement RAPIDS for efficient data manipulation. Gain insights into utilizing XGBoost on NVIDIA GPUs for machine learning tasks. Perfect for data scientists and engineers looking to optimize their workflow with cloud-based GPU computing.
        
Syllabus
 AWS File Systems
 RAPIDS on Real Data
 Kaggle Otto Group Challenge
 Create an AWS S3 Bucket
 Sending Data to AWS S3
 Setting up AWS IAM Access
 Create an AWS IAM Role for AWS EC2
 Create an AWS IAM Policy
 Create a new AWS EC2 Instance with spot
 Connect to the Running EC2 Instance with Putty and Tunneling
 Starting Docker on AWS EC2
 Creating an AWS EBS Volume for EC2
 Mount and format EBS Volume
 Access NGC Images
 Jeff's AWS Setup Chart
 Accessing Jupyter NGC Instance
 Using RAPIDS
 Using XGBoost on an NVIDIA GPU
Taught by
Jeff Heaton
Related Courses
Statistical Data Visualization with SeabornCoursera Project Network via Coursera Compare time series predictions of COVID-19 deaths
Coursera Project Network via Coursera Machine Learning con Python. Nivel Avanzado
Coursera Project Network via Coursera Complete Machine Learning with R Studio - ML for 2024
Udemy Modern Artificial Intelligence Masterclass: Build 6 Projects
Udemy
