Data Scientist

Remote

Sustainment

Save time and mitigate risk with the first supplier relationship platform built for the manufacturing industry.

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Company Overview: Sustainment is a company whose products enable US-based manufacturers to confidently build and manage vetted domestic supplier networks, with modern tools to find, communicate, collaborate with, and manage qualified manufacturing suppliers. Our vision is to reimagine the American manufacturing base as a hyperconnected, secure, and resilient ecosystem of local and regional suppliers who can more easily interact and transact with the government and industry organizations that rely on them. As a public benefit corporation, we are committed to a mission-driven approach that will enable continued success for American industry.

Job Overview: The Data Scientist will apply AI such as large language models (LLM’s), machine learning, computer vision, neural networks, etc., to modernize the procurement process in mechanical manufacturing.  This individual must have strong relevant computer science knowledge as well as practical computer programming skills. 

Responsibilities: 

  • Work with subject matter experts and product managers to define new features and functions that can be automated with artificial intelligence to assist buyers and manufacturers of mechanical parts and assemblies.
  • Design, code, test, and document data science software modules – typically in Python -- as part of a highly-collaborative, distributed R&D team. Typical examples include:
    • Natural language interface using LLM chatbot connected to an SQL database
    • Using an LLM to get spreadsheet data into an SQL database
    • Automated messaging assistant using an LLM
    • Automatic interpretation of two-dimensional mechanical drawings
    • Neural networks to capture expert knowledge about metal machining and other mechanical fabrication
    • Ranking algorithms for finding best manufacturers to make specific parts and assemblies
  • Keep abreast of Industry 4.0 and AI/ML trends and look for opportunities to enhance Sustainment products using artificial intelligence.

Qualifications: 

  • 4+ years of experience in commercial or industrial data science work, including at least one example of a substantial application delivered into production
  • Graduate degree or equivalent experience requiring substantial application of data science skills
  • Demonstrated ability to design, code, test, and document substantial software modules in Python
  • Evidence of creative ability to apply AI such as LLM’s, machine learning, computer vision, neural networks, etc., in innovative ways
  • Preferred: mechanical engineering degree or equivalent experience
  • Preferred: experience with work breakdown structures and estimating labor required for each task

 

Sustainment offers a competitive benefits package including medical, dental, vision, paid time off, company holidays, and 401K matching.

Sustainment is proud to be an equal opportunity employer. We provide employment opportunities without regard to age, race, color, ancestry, national origin, religion, disability, sex, gender identity or expression, sexual orientation, veteran status, or any other protected class.

Applicants must be authorized to work for ANY employer in the U.S. We are unable to sponsor or take over sponsorship of an employment Visa at this time.

Sustainment participates in E-Verify.

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* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰

Tags: Chatbots Computer Science Computer Vision Engineering Industrial LLMs Machine Learning Python R R&D SQL

Perks/benefits: Career development Health care

Regions: Remote/Anywhere North America
Country: United States
Job stats:  69  14  0
Category: Data Science Jobs

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