Data Scientist

AZ-Scottsdale, USA

General Dynamics Mission Systems

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Basic Qualifications

Education Requirements:

Requires a Bachelor’s degree in Engineering, or a related Science or Mathematics field. Also requires 5+ years of job-related experience, or a Master's degree plus 3 years of job-related experience.

 

Due to the nature of work performed within our facilities, U.S. citizenship is required.

Responsibilities for this Position

The Deep Learning Analytics Center of Excellence (DLA CoE) at General Dynamics Mission Systems is actively seeking an experienced mid-level data scientist with experience in Deep Learning (DL), software development, and MLOps life cycle management. This individual serves in a pivotal role that interfaces directly with our business development teams, aiding in identifying and cultivating innovative ML initiatives. Furthermore, the role entails the responsibility of engaging with our clientele, educating them about what AI can and cannot do, our approach to problem-solving, and our progress to date on their programs. 

 

They will collaborate closely with our interdisciplinary teams to tackle complex DL challenges. This involves leveraging and refining cutting-edge training methodologies and model architectures to solve problems across a diverse range of data modalities underwater, on land, in the air, and in space. 

Candidates for this position are expected to demonstrate a high level of data science acumen, excellent communication skills, and a passion for continuous learning within the ever-evolving field of artificial intelligence.

 

Our Commitment to You: 

  • A workplace that allows you to take your career to the next level. 
  • Access to expansive and diverse datasets to grow your data science portfolio. 
  • Applied research-oriented work, alongside award-winning teammates to develop practical solutions that directly impact the company’s bottom line. 
  • Training budget to help you develop your professional skills, attending conferences, obtaining certifications, even a masters degree. 
  • Flexibility to fully manage your own schedule including a hybrid work schedule to allow for a blend of in office and remote work. 
  • Opportunities & encouragement to patent and/or publish your work. 

 

What You’ll Do: 

  • Collaborating with teams of data scientists on full life cycle data-driven solutions. 
  • Data wrangling, preprocessing, and manipulation for ML applications. 
  • Applying advanced statistical methods and reporting techniques to large datasets. 
  • Interpreting data analysis and experimental results, and communicating insights. 
  • Developing ML systems for both supervised and unsupervised learning tasks. 
  • Mastering deep learning algorithms and addressing their limitations related to hardware or data. 
  • Conducting experiments to enhance model performance and clearly reporting outcomes to both technical and non-technical audiences. 
  • Optimizing DL architectures for performance and supporting systematic optimization efforts. 
  • Deploying ML solutions across diverse platforms, from large clusters to small SWaP (Size, Weight, and Power) environments. 
  • Monitoring ongoing model performance to detect and adjust for data drift. 
  • Following best practices for software documentation and reporting. 

 

Skills You’ll Bring: 

  • Proficiency in ML and DL frameworks, such as scikit-learn, TensorFlow, and PyTorch
  • Excellent written and verbal communication abilities. 
  • Experience with the Linux command line, including bash and shell scripting. 
  • Expertise in handling large, complex datasets including image, cyber, NLP, and signal data. 
  • Experience in distributed version control systems and DevOps tools, such as GitLab, Git, Docker, and Kubernetes. 
  • Skills in data preparation and corpus filtering using databases like PostgreSQL and MySQL. 
  • Software development experience in multiple programming languages, with an emphasis on Python. 
  • Understanding of validation methods for ML models. 
  • Familiarity with experimental design for data science projects. 
  • Competence in full life cycle ML operations (MLOps). 

Salary Note

This estimate represents the typical salary range for this position based on experience and other factors (geographic location, etc.). Actual pay may vary. This job posting will remain open until the position is filled.

Combined Salary Range

USD $119,752.00 - USD $132,849.00 /Yr.

Company Overview

At General Dynamics Mission Systems, we rise to the challenge each day to ensure the safety of those that lead, serve, and protect the world we live in. We do this by making the world’s most advanced defense platforms even smarter. Our engineers redefine what’s possible and our manufacturing team brings it to life, building the brains behind the brawn on submarines, ships, combat vehicles, aircraft, satellites, and other advanced systems.

 

We pride ourselves in being a great place to work with this shared sense of purpose, committed to a diverse and exciting employee experience that drives innovation and creates a community where all feel welcome and a part of something amazing.

 

We offer highly competitive benefits and a flexible work environment where contributions are recognized and rewarded. To see more about our benefits, visit https://gdmissionsystems.com/careers/why-work-for-us/benefits

 

General Dynamics is an Equal Opportunity/Affirmative Action Employer that is committed to hiring a diverse and talented workforce. EOE/Disability/Veteran

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Category: Data Science Jobs

Tags: Architecture Data analysis Deep Learning DevOps Docker Engineering Git GitLab Kubernetes Linux Machine Learning Mathematics ML models MLOps MySQL NLP PostgreSQL Python PyTorch Research Scikit-learn Shell scripting Statistics TensorFlow Unsupervised Learning

Perks/benefits: Career development Competitive pay Conferences Flex hours

Region: North America
Country: United States

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