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Quentin RevillonQR

Quentin Revillon

Deep Learning | Expert Computer Vision & MLOps

300 €/jour
Paris, FR
0-2 ans

Délai de réponse moyen : 1h

À propos de Quentin

Machine Learning Engineer — From Research to Production

Engineering student at Télécom Paris (IP Paris), with hands-on R&D experience at Mila / NeuroPoly (Montréal) and Synspective (Tokyo). I have built end-to-end ML pipelines that actually ship: optimized models, clean Python packages, and production-ready deployment stacks.

I have worked on a wide range of problems — medical image segmentation on multi-site MRI/CT datasets, semantic segmentation of SAR satellite imagery, and real-time signal processing — always with a focus on delivering something usable, not just a proof of concept.

My technical stack spans model training & fine-tuning (YOLO, Transformers, nnUNet, MONAI), inference optimization (ONNX, pruning, quantization), MLOps tooling (Docker, SLURM, Weights & Biases), and data pipelines (Python, SQL, NumPy, Pandas).
I have also worked on quantitative and statistical modeling as part of my applied mathematics curriculum, and I bring that analytical rigor to every project.

Primarily available for remote missions.
  • Français

    Bilingue ou natif

  • Anglais

    Capacité professionnelle complète

  • Espagnol

    Capacité professionnelle limitée

En télétravail uniquement
Travaille majoritairement à distance

Expériences

  • Mila – Quebec AI Institute & NeuroPoly
    Machine Learning Research Intern
    mars 2026 - Aujourd'hui (3 mois)
    Montreal, QC, Canada
    • • Designed and open-sourced sc-crop (github.com/ivadomed/sc-crop), a Python package/CLI for automatic spinal cord detection and cropping in MRI/CT volumes, cutting segmentation inference from ∼2 min to ∼10–30 s
    • • Trained a 2.5D YOLO detector (Ultralytics) on multi-site, multi-contrast datasets (T1, T2, MP2RAGE, DWI, CT), achieving contrast-agnostic detection robust to distribution shift
    • • Built deployment stack: ONNX export + ONNX Runtime inference (authored nnunet-onnx), end-to-end detect–crop–infer–restore pipeline integrated with nnUNet
    • • Shipped production tooling: automated QC reports (CSV/JSON), 10+ versioned model releases, pyproject packaging, integration into the Spinal Cord Toolbox (SCT)
    Computer Vision intelligence artificielle Medical Imaging MLOps MLflow
  • Synspective
    Machine Learning R&D Intern
    septembre 2025 - février 2026 (5 mois)
    Tokyo, Japan
    • • Developed a modified SegFormer (Vision Transformer) for semantic segmentation of ocean-surface patterns in SAR satellite imagery, using Hugging Face Transformers
    • • Applied model compression (pruning, quantization) for on-board embedded deployment on a JAXA SAR satellite; containerized with Docker
    • • Contributed to design and evaluation of vessel-detection algorithms (object detection on SAR imagery)
  • BDS T´ el´ ecom Paris
    Co-Organizer
    janvier 2024 - janvier 2025 (1 an)
    Palaiseau, France
    • • Co-organized a 550+ participant relay marathon with 60+ volunteers: course design, logistics, safety, timekeeping, communication strategy

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Formations

  • MSc-level Engineering Degree
    – Institut Polytechnique de Paris
    2027
    MSc-level Engineering Degree
  • Intensive Mathematics & Physics
    Lyc´ ee Henri-IV – Classes Pr´ eparatoires MPSI/MP
    2023
    Intensive Mathematics & Physics

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