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Artera.net logo
Artera.net

Artera is a Swiss ISP that produces premium hosting and cloud services.

Machine Learning Engineer

Machine Learning EngineerMachine Learning EngineerOtherRemoteMid LevelTeam 11-50Since 2002H1B No SponsorCompany SiteLinkedIn

Location

United States

Posted

156 days ago

Salary

$140K - $180K / year

Seniority

Mid Level

Bachelor Degree2 yrs expEnglishPyTorchTensorFlow

Job Description

Machine Learning Engineer

Artera.net

• Help develop AI-based biomarkers that support the personalization of cancer therapy. • Work on multimodal deep-learning models that integrate large-scale pathology whole-slide images with diverse modalities to predict patient risk and response to therapy. • Contribute to developing robust, scalable solutions in this space. • Collaborate closely with fellow ML engineers, biostatisticians, scientific directors, and product partners to build, validate, and deploy models that ultimately impact patient care.

Job Requirements

  • 2+ years of industry experience using PyTorch or TensorFlow.
  • Experience contributing to machine-learning systems deployed or maintained in production environments.
  • Ability to clearly communicate complex technical concepts to cross-functional, non-ML collaborators.
  • Experience working with large-scale image data or computer vision models.
  • Familiarity with self-supervised representation learning (e.g., MoCo, DINOv2) and / or vision–language models (VLMs) and multimodal representation learning.
  • Interest in healthcare, medical imaging, or applied machine learning in regulated or high-impact domains.

Benefits

  • 401k matching
  • Unlimited paid time off (PTO)

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