Don't miss us at ...

Intel High Performance Computing Spring Webinar Series (Online)

Apr 5 - Jun 14 (09:00 - 10:00 PST)
These free webinars cover today’s hot topics, such as machine learning, deep learning, artificial intelligence (AI), and high-performance computing. Learn tips and techniques including vectorization...

Intel® Hacks (Online)

Online, United States
May 10 - Jul 28 (21:00 - 23:59 PST)

HOW Series: Webinars on Performance Optimization (Workshop)

Virtual, United States
May 15 - May 26
HOW Series “Deep Dive” is a free 20-hour hands-on in-depth training on parallel programming and performance optimization for Intel® Xeon Phi™ Processor.

PyCon 2017 (Conference)

Portland, OR, United States
May 17 - May 25 (09:00 - 17:00 PST)
PyCon is the largest annual gathering for developers of the Python programming language. Intel is a diamond sponsor with workshops, a booth and demos.

IXPUG Software-Defined Visualization Workshop (Workshop)

Austin, TX, United States
May 22 - May 25 (13:00 - 12:00 CST)
Include software-defined visualization capabilities directly into your simulation codes with experts.

Intel IoT Commercial Workshops - Intro and Edge Computing (Workshop)

Hartford, CT, United States
May 24 - Jun 1
Learn about IoT and how to commercialize projects to the next level.

Develop IoT Applications with the Intel® NUC and Ubuntu* Core (Online)

May 25, 2017 (09:00 - 10:00 PST)

Startup Weekend Denver | IoT 3.0 and Smart Cities (Workshop)

Denver, Co, United States
May 26 - May 28 (17:00 - 22:00 MST)
Join The Smart Revolution and the new potential in health, education, industry, public and private spaces.

Intel Code Modernization Workshop Poznan (Workshop)

Poznan, Poland
May 29 - May 30
Join Intel and Bayncore for this 2-Day Workshop learning Code Modernization steps to develop software for the Intel® Xeon Phi™ Processor.

Accelerate Application Performance with OpenMP* and SIMD Parallelism (Online)

May 31, 2017 (09:00 - 10:00 PST)
Using the OpenMP* programming model, we’ll work on and optimize sample multi-threaded code, and illustrate best practices for efficiency and speed ups.