Customer-Facing Machine Learning Engineer

Understanding Recruitment
Sheffield
1 year ago
Applications closed

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Customer-Facing Machine Learning Engineer


Location:Remote (with occasional travel) |Type:Full-Time


Are you passionate about using AI to solve real-world challenges? Join our diverse team where your expertise will directly impact our customers' success!


We welcome candidates from all backgrounds. If you bring some of the following, we'd love to talk:

  • Technical knowledge in machine learning and deep learning workflows
  • Programming experience, particularly with Python
  • Familiarity with cloud technologies, especially AWS
  • Comfort in dynamic environments and occasional travel
  • Experience working with enterprise-level customers (a plus, but not required)


Our Inclusive Culture and Benefits

  • Embrace flexibility with our remote-first approach
  • Connect with colleagues at occasional in-person gatherings
  • Enjoy a stipend for co-working space or home office setup
  • Build long-term wealth with our equity-based compensation plan
  • Thrive in a supportive environment that values diverse perspectives


Our Inclusive Interview Process

  1. CV Review:We look at your unique experiences and potential, not just keywords.
  2. Technical Discussion:A chance to showcase your knowledge and learn about our challenges.
  3. Team Collaboration:Meet potential colleagues and see how we work together.


We're committed to fair and bias-aware hiring. If you need any accommodations during the interview process, please let us know.


Ready to Make an Impact?


We encourage applications from candidates of all backgrounds, identities, and experiences. If you're excited about using AI to solve customer challenges, we want to hear from you!


We are committed to providing reasonable accommodations for candidates with disabilities in our recruiting process. If you need any assistance or accommodations, please contact us at [insert appropriate contact information

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