Full-Time

Qubit Characterization Scientist

Confirmed live in the last 24 hours

HRL Laboratories

HRL Laboratories

501-1,000 employees

Develops cognitive systems for human-machine collaboration

AI & Machine Learning
Defense

Compensation Overview

$132.8k - $166kAnnually

+ Bonus + Benefits

Senior, Expert

No H1B Sponsorship

Malibu, CA, USA

This position requires onsite presence in Malibu, CA.

US Citizenship, US Top Secret Clearance Required

Category
Electronics Design Engineering
Embedded Systems Engineering
Electrical Engineering
Required Skills
Data Analysis
Requirements
  • Detailed knowledge of modern experimental physics techniques including troubleshooting analog electronics and noise analysis
  • Familiarity with scientific programming for data analysis and hardware interfacing (specific language is not critical)
  • Experience in scientific communication through technical presentations and journal publications
  • Ph.D. in Physics, Applied Physics, or Electrical Engineering with an emphasis on quantum devices or technologies
  • U.S. citizenship
  • Must be able to obtain and maintain a US Government security clearance as required
Responsibilities
  • Conduct low-noise, cryogenic experiments on sensitive spin qubit devices
  • Develop new measurement techniques and methods
  • Analyze results
  • Write script level code to support experimental development and data analysis
  • Report findings to other team members in oral presentations and written reports
  • Analyze measurement results through application of relevant theory and modeling to define approaches for further device improvements in performance and/or yield
  • Collaborate with measurement-system-engineering team
  • Utilize applicable engineering analysis tools to identify and implement improvements to qubit-control, interconnect, and environmental subsystems

HRL Laboratories focuses on research and development in advanced cognitive systems and human-machine collaboration, enhancing human cognitive abilities through artificial intelligence (AI) and machine learning (ML). The company develops solutions that improve how humans and machines interact, with projects like ICArUS for machine interpretation and MEMES for memory enhancement. Operating on a project-based model, HRL generates revenue through customized solutions and collaborations with various clients, including government and defense sectors. The goal is to lead in creating cognitive systems that improve decision-making and autonomy in complex environments.

Company Stage

Grant

Total Funding

$2M

Headquarters

Malibu, California

Founded

1997

Growth & Insights
Headcount

6 month growth

0%

1 year growth

0%

2 year growth

0%
Simplify Jobs

Simplify's Take

What believers are saying

  • HRL's involvement in high-impact projects like the DOE's COOLERCHIPS program positions it as a leader in energy-efficient data center solutions.
  • The company's partnerships with industry giants like General Motors and participation in cutting-edge research projects offer significant opportunities for professional growth and innovation.
  • The recent appointment of Roberto Vasquez as CEO could bring fresh strategic direction and leadership to the company.

What critics are saying

  • The highly specialized nature of HRL's projects may limit its market to niche sectors, potentially constraining revenue growth.
  • Dependence on government contracts and grants can lead to financial instability if funding priorities shift.

What makes HRL Laboratories unique

  • HRL Laboratories specializes in advanced cognitive systems and human-machine collaboration, setting it apart from competitors focused solely on traditional AI and ML applications.
  • Their project-based business model, funded by government contracts and private sector grants, allows for highly customized and innovative solutions.
  • HRL's expertise in cognitive architectures, memory enhancement, and neurosynchrony provides a unique edge in developing technologies that enhance human cognitive abilities.

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