About this Event
This NVIDIA Deep Learning Institute (DLI) course explores how to use Numba—the just-in-time, type-specializing Python function compiler—to accelerate Python programs to run on massively parallel NVIDIA GPUs. You’ll learn how to: · Use Numba to compile CUDA kernels from NumPy universal functions (ufuncs) · Use Numba to create and launch custom CUDA kernels · Apply key GPU memory management techniques Upon completion, you’ll be able to use Numba to compile and launch CUDA kernels to accelerate your Python applications on NVIDIA GPUs.
Dr. Recep Erol, one of two NVIDIA Deep Learning Institute ambassadors for the state of Arkansas, will lead this workshop. NVIDIA DLI certificates are awarded to all participants who pass the assessment test at the end of the workshop. There are 80 seats available for this workshop.
Learning Objectives
At the conclusion of the workshop, you’ll have an understanding of the fundamental tools and techniques for GPU-accelerated Python applications with CUDA and Numba:
- GPU-accelerate NumPy ufuncs with a few lines of code.
- Configure code parallelization using the CUDA thread hierarchy.
- Write custom CUDA device kernels for maximum performance and flexibility.
- Use memory coalescing and on-device shared memory to increase CUDA kernel bandwidth.
Topics Covered
- Numba
Location
Donaghey College of Engineering & Information Technology (EIT) building Auditorium, University of Arkansas in Little Rock, 2801 S University Ave, Little Rock, AR 72204
Parking
Please park in Lot 8 adjacent to the Donaghey College of Engineering & Information Technology (EIT) building.
Course Outline
Introduction to CUDA Python with Numba
- Begin working with the Numba compiler and CUDA programming in Python.
- Use Numba decorators to GPU-accelerate numerical Python functions.
- Optimize host-to-device and device-to-host memory transfers.
Custom CUDA Kernels in Python with Numba
- Learn CUDA’s parallel thread hierarchy and how to extend parallel program possibilities.
- Launch massively parallel custom CUDA kernels on the GPU.
- Utilize CUDA atomic operations to avoid race conditions during parallel execution.
Multidimensional Grids, and Shared Memory for CUDA Python with Numba
- Learn multidimensional grid creation and how to work in parallel on 2D matrices.
- Leverage on-device shared memory to promote memory coalescing while reshaping 2D matrices.
Final Review
- Review key learnings and wrap up questions.
- Complete the assessment to earn a certificate.
- Take the workshop survey.
Event Venue & Nearby Stays
University of Arkansas at Little Rock, 2801 South University Avenue, Little Rock, United States
USD 0.00







