Apply Now    
Job ID: JR0092515
Job Category: Intern/Student
Primary Location: Haifa, IL
Other Locations:
Job Type: Intern

Deep learning Software student for Intel Architecture Group

Job Description

About us:

Client CPU Power Management Architecture is the group that define the next generation processors for client and their power management solution: power delivery, power states and algorithms. We are expanding our algorithms into the area of Artificial intelligence and Deep learning. We are working with SW and HW groups worldwide to define end-to-end solution. We are looking for AI SW student to join us.

About you :

We are looking for a talented AI software engineer (student position) to help develop deep learning algorithms for our products.

The job responsibilities may include but are not limited to:

  • Working with Deep Learning suites to learn and develop algorithms
  • Tuning of algorithms
  • Lab work on workloads to help build the knowledge required for the development of those algorithms


Qualifications

Recommended Qualifications

* Student in Computer Science, Computer Engineering, or related field.

* Passion for AI and specifically deep learning.

* Experience building and using neural networks – academic experience.

* Machine learning course completion.

* Python proficiency.

* Good written and verbal communication skills for expressing technical ideas.

Inside this Business Group

The Core and Visual Computing Group (CVCG) is responsible for the architecture, design and development of the CPU core and visual technology IPs that are central to Intel's system-on-a-chip (SoC) products and key to our datacenter, client and Internet-of-Things (IOT) platforms. CVCG strives to lead the industry through continuous innovation and world class engineering.

ILInternJR0092515
Apply Now    

What would you like to do now?

Connect with Us

Get Job Alerts

Get started
Student Center

Find out more about working at Intel

Learn more
Hiring Process

Hiring Process

Learn more

Grow your network of opportunities