Offers “Hp”

Expires soon Hp

Data Science Intern

  • Santa Clara, Cuba
  • IT development

Job description

Data Science Intern

  

Job Description:

   

At HPE, we bring together the brightest minds to create breakthrough technology solutions and advance the way people live and work. Our legacy inspires us as we forge ahead dedicated to helping our customers make their mark on the world.

 

Learning does not only happen through training. Relationships are among the most powerful ways for people to learn and grow, and this is part of our HPE culture. In addition to working alongside talented colleagues, you will have many opportunities to learn through coaching and stretch assignment opportunities. You’ll be guided by feedback and support to accelerate your learning and maximize your knowledge. We also have a “reverse mentoring” program which allows us to share our knowledge and strengths across our multi-generation workforce.

 

About the Company

Aruba, a Hewlett Packard Enterprise company, is a leader in providing enterprise-scale WLAN/edge networking products. Our customers include major universities, giant tech companies, and international retail stores, with deployments numbering thousands of access points and tens of thousands of wireless devices.

Aruba, a Hewlett Packard Enterprise Company, is a leading provider of next-generation networking solutions for the mobile enterprise. We are looking for a highly motivated intern for the Data Science group within the Aruba NetInsight team in Santa Clara, CA.

Aruba designs and delivers Mobility-Defined Networks that empower IT departments and #GenMobile, a new generation of tech-savvy users who rely on their mobile devices for every aspect of work and personal communication. To create a mobility experience that #GenMobile and IT can rely upon, Aruba Mobility-Defined Networks automate infrastructure-wide performance optimization and trigger security actions that used to require manual IT intervention. The results are dramatically improved productivity and lower operational costs.

Aruba NetInsight is a cloud-based service that delivers actionable guidance for improving network performance and the quality of users’ mobile experience via continuous monitoring, analysis, and benchmarking. Using powerful machine learning algorithms and Aruba’s extensive wireless expertise, NetInsight provides IT organizations with the intelligence needed to proactively optimize how data, voice, and video applications perform across the entire network.

Intern responsibilities:
- Work with data scientists and domain experts on applications of machine learning for wireless and wired network diagnostics, root causing, problem remediation, and optimization
- Proof of concept implementation of machine learning algorithms on big data from customer networks
- Identify and track down problem signatures in customer networks
- Monitor and optimize data flow pipelines

Skills and expertise:
- PhD candidate in Electrical Engineering, with background in networking / wireless communication / WiFi preferred
- Deep understanding of wireless network protocols
- Data and signal processing
- Numerical optimization
- Data visualization
- Solid knowledge of Software Engineering

We offer:

·  A competitive salary and extensive social benefits
·  Diverse and dynamic work environment
·  Work-life balance and support for career development
·  An amazing life inside the element! Want to know more about it?

Then let’s stay connected!

https://www.facebook.com/HPECareers

https://twitter.com/HPE_Careers

Aruba, a Hewlett Packard Enterprise company is an Equal Opportunity Employer

int1

Job:
Administration

Job Level:
N/A

    

Hewlett Packard Enterprise is EEO F/M/Protected Veteran/ Individual with Disabilities.

   

HPE will comply with all applicable laws related to the use of arrest and conviction records, including the San Francisco Fair Chance Ordinance and similar laws and will consider for employment qualified applicants with criminal histories.

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