CUDA Training in Chicago, IL

Costs for this course can be paid online at the time of registration. To register, please fill out all the fields below.

Clicking Submit will redirect you to our PayPal payment page to purchase the course either by Credit Card or your PayPal account.

* .. proceed to PayPal to pay via
PayPal account or Credit Card.



Acceleware Online Payments accept
Acceleware accepts PayPal, VISA, MasterCard, AMEX
In Association with

Acceleware CUDA Training in Association with Microsoft
Date: October 23-26, 2012
Location: Chicago, IL
Contact: Acceleware
403.249.9099 x 356, services@acceleware.com
Cost: $3250 USD
Early Bird Offer: Register before Oct 2nd, 2012 and receive $200 off the registration fee! (enter discount code: AXTEB2012)
 
 
  • Use of a laptop equipped with CUDA capable GPU
  • Manual of all lectures
  • CD copy of lab exercises
  • Certificate of Completion
  • Morning beverages (coffee, tea, juices) and afternoon snacks

Space is limited - Please register early to guarantee your spot


Microsoft Visual Studio For our hands-on exercises students will be working with Microsoft Visual Studio™ and NVIDIA® Parallel Nsight™. NVIDIA Parallel Nsight

Schedule

Tue-Fri: 9:00AM – 5:00PM (incl. 1 hour lunch)
 

Agenda

  • Day 1:
    • Lecture: Overview of GPU Computing
    • Hands-on-Exercise: Memory Allocation and Memory Transfers
    • Lecture: Data-Parallel Architectures and the CUDA Programming Model
    • Hands-on-Exercise: Simple Kernels
    • Lecture: The CUDA Memory Model & Thread Cooperation
    • Hands-on-Exercise: Shared Memory and Constant Memory
  • Day 2:
    • Lecture: Textures
    • Hands-on-Exercise: Textures
    • Lecture: Asynchronous Operations
    • Hands-on-Exercise: Asynchronous Operations
    • Lecture: Other GPU Features
    • Lecture: CUDA Libraries
    • Hands-on-Exercise: CUDA Libraries
  • Day 3:
    • Lecture: Debugging Tools and Techniques
    • Hands-on-Exercise: Debugging Tools and Techniques
    • Lecture: Introduction to Optimization
    • Hands-on-Exercise: Arithmetic Optimization
    • Lecture: Resource Management, Latency and Occupancy
    • Hands-on-Exercise: Occupancy Calculator
  • Day 4 :
    • Lecture: Memory Performance Optimizations
    • Hands-on-Exercise: Memory Performance Optimizations
    • Lecture: Profiling CUDA/OpenCL Applications
    • Hands-on-Exercise: Profiling CUDA/OpenCL Applications
    • Lecture: Driver API
    • Hands-on-Exercise: Driver API

All lectures are a combination of teaching and hands-on tutorials

NVIDIA’s foundational training material is augmented with Acceleware’s experience over
the past 7 years and with examples specific to an HPC audience