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Founding ML Engineer

Draftaid | Toronto, Ontario, Canada | 1mo ago
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Original posting (closed) below
CA$140,000 – CA$200,000/yr| full-time | hybrid | lead | 6+ years
skills: representation learning, encoder-decoder architectures, llms, 3d data, meshes, b-rep, point clouds, geometric representations, data pipelines, training infrastructure, eval harnesses, dataset curation, c#, typescript
  • DraftAid is building the intelligence layer for mechanical engineering. We started by auto-generating manufacturing drawings from 3D CAD parts. We are now building representations that enable us to go much further.

What you'll do

  • Design learned representations over a large corpus of 3D assemblies and their associated manufacturing drawings
  • Train and evaluate models that drive drawing generation decisions
  • Build the data and training infrastructure from scratch: pipelines, eval harnesses, dataset curation
  • Integrate models into a production geometry engine written in C#
  • Own the full ML stack. There is no existing ML team; you are it
  • Own problems, not tickets

What we're looking for

  • Deep experience training encoder-decoder architectures and representation learning systems from scratch
  • Practical experience building with LLMs as components in larger systems
  • Comfort working with 3D data: meshes, B-rep, point clouds, or similar geometric representations
  • The ability to look at a messy, domain-specific corpus and figure out what signal is in it

Nice to have

  • Experience with 3D world models and spatial reasoning systems
  • Background in robotics perception, 3D reconstruction, NeRFs, or geometric deep learning
  • Familiarity with C# or TypeScript

What we offer

  • Flexible hours and hybrid in-office
  • Competitive salary and equity package.
  • Small team, high ownership

Benefits

flexible hours · hybrid in-office · competitive salary · equity package
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