Course Outline

Introduction to CUDA

  • Overview of CUDA technology and ecosystem
  • Understanding CUDA versions and compatibility

Installing CUDA

  • Pre-installation requirements
  • Downloading and installing CUDA Toolkit
  • Verifying the installation

Configuring CUDA Environment

  • Setting up environment variables
  • Configuring CUDA for multiple GPUs
  • Managing CUDA libraries and paths

Managing CUDA Resources

  • User access and permissions
  • Allocating GPU resources
  • CUDA resource monitoring tools

Performance Tuning and Optimization

  • Profiling CUDA applications
  • Tuning for maximum performance
  • Best practices for optimization

CUDA Troubleshooting

  • Common installation and configuration issues
  • Debugging CUDA applications
  • Resolving performance bottlenecks

Advanced Topics

  • Updates and upgrades in CUDA
  • Integrating CUDA with other applications
  • Future trends in CUDA technology

Summary and Next Steps

Requirements

  • Basic understanding of computer operations
  • Familiarity with operating systems, preferably Linux or Windows
  • Interest in learning about parallel computing and CUDA

Audience

  • System administrators
  • IT professionals
 35 Hours

Testimonials (1)

Related Courses

GPU Programming with CUDA and Python

14 Hours

AMD GPU Programming

28 Hours

NVIDIA GPU Programming

14 Hours

Introduction to GPU Programming

21 Hours

GPU Programming with CUDA

28 Hours

GPU Programming with OpenACC

28 Hours

GPU Programming with OpenCL

28 Hours

GPU Programming - OpenCL vs CUDA vs ROCm

28 Hours

NVIDIA GPU Programming - Extended

21 Hours

ROCm for Windows

21 Hours

Hardware-Accelerated Video Analytics

14 Hours

Related Categories

1