L
AI

Founding ML Engineer

Lir Labs Germany · Hannover, NI, DE

Actively hiring Posted about 1 month ago

Responsibilities

  • Own the computer vision architecture: evaluate the existing baseline, make architectural decisions, and take full accountability for model performance in production
  • Build and maintain cloud inference serving live testing sites across Europe
  • Design and maintain pipelines that ingest and process live sensor data from industrial installations
  • Build the correlation layer between vision derived features and downstream process variables
  • Structure model outputs as clean, documented inputs for the operator-facing interface
  • Collaborate with the founding team to integrate operational observations with model behavior
  • 3+ years in applied ML (not necessarily professional), with at least one deployment of a computer vision system
  • Fluent in German and English
  • A clear opinion about segmentation architectures and the ability to defend it
  • Experience extracting performance from small datasets: augmentation, transfer learning, semi-supervised approaches
  • Solid time series modelling skills: feature engineering from sensor data, handling irregular sampling, autocorrelation and non-stationarity
  • Sufficient software engineering fundamentals to own cloud infrastructure and data pipelines without dedicated support

Preferred qualifications

  • Background in live cell imaging, medical imaging, industrial sensing, or water industry
  • Experience with process optimisation or control systems
  • Familiarity with MLOps practices
  • Demonstrated work recognised in your field

Benefits

  • Flexibility: Hybrid working model with a focus on output, not hours.
  • Professional Growth: Direct access to founders and the opportunity to grow into a leadership role as we scale the team and access to upskilling resources.
  • Tools for Success: A dedicated budget for the hardware and compute you need to do your best work.
  • Health: We want you to be the best version of yourself and will try to support this as best as we can. Let us know what perks and benefits you would like to see.

Tags & focus areas

Used for matching and alerts on DevFound
Fulltime Remote Machine Learning Computer Vision Ai
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