
Fraudulent Recruitment Notice : It has come to our attention that third parties are conducting fraudulent recruitment and onboarding processes using notably the domain Gleamer.us and impersonating…

Fraudulent Recruitment Notice : It has come to our attention that third parties are conducting fraudulent recruitment and onboarding processes using notably the domain Gleamer.us and impersonating…
Sector: AI for medical imaging (radiology)
Founded: 2017 (Paris, France)
Flagship product: BoneView (AI for bone trauma X‑rays)
Regulatory status: Products include FDA clearance and CE certification
Scale: Used across 2,500+ clinical sites; 45M+ exams/year
Series B €27M (June 2023); total ~€36M as of June 2023
Improving radiology workflow efficiency, prioritization, and reporting quality through AI assistance.
2017
Healthtech / Medical imaging AI
≈€1.5M
Seed round participants included XAnge, Elaia and Bpifrance
€7.5M
Participants included MACSF, Majycc eSanté Invest and Crista Galli Ventures
€27M
Reported June 28, 2023
“Has attracted specialist health/medtech investors and European VC participation across seed to Series B, including Supernova Invest, Heal Capital, XAnge, Elaia and Bpifrance”
As an intern, you join the core DL team and contribute at one or both layers of our training stack:
Work is prioritized by expected product and clinical impact; research is a means to that end.
Design and scale representation learning for 2D/3D medical imaging:
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Fine‑tuning (product models & VLMs)
Adapt and optimize models that power our products and workflows:
You’ll spend time where it moves metrics most. Some interns focus on pretraining, others on fine‑tuning/VLMs; many touch both.
PyTorch (Lightning), MONAI, timm/Hugging Face; NumPy/scikit‑image; DICOM tooling; W&ClearML/DVC; multi‑GPU training; ONNX/TensorRT for inference; containerized services.- Strong ML fundamentals (probability, linear algebra, optimization).
Nice to have: medical imaging (X‑ray/CT/MRI), 3D vision, detection/segmentation/registration, domain adaptation/uncertainty, CUDA/performance work, meaningful OSS or papers.