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Sonia GarrouchSG

Sonia Garrouch

Data Scientist & MLOps Engineer

550 €/jour
Toulouse, FR
3-7 ans

Délai de réponse moyen : 1h

À propos de Sonia

Hi there 👋

I’m an ML engineer passionate about building AI systems that are not just smart, but also clean, scalable, and production-ready. From early-stage prototypes to fully deployed pipelines, I love turning complex ideas into real, impactful products.

With a solid background in both R&D and client-facing projects, I bring a mix of deep technical skills and a strong product mindset. I enjoy collaborating with tech and product teams to co-create solutions that actually work — fast, maintainable, and easy to integrate.

Whether it’s deploying vision models, setting up monitoring for production ML, or making LLMs more useful in real workflows, I’m all about creating value through AI — with clarity and care.
  • Français

    Bilingue ou natif

  • Anglais

    Capacité professionnelle complète

En télétravail uniquement
Travaille majoritairement à distance

Expériences

  • PICSELLIA
    DATA SCIENTIST / MLOPS ENGINEER
    octobre 2021 - Aujourd'hui (4 ans et 8 mois)
    As a full-stack ML Engineer, I’ve contributed to both internal R&D and client-facing projects with a strong focus on model deployment, optimization, and automation.

    • Model Integration & Optimization: Integrated and productionized computer vision models in a scalable, Dockerized pipeline with unit/integration testing.
    • Plug-and-Play AI Tools: Designed AI-powered tools with clean APIs, ready for seamless integration by back-end and front-end teams.
    • R&D Innovation: Built monitoring tools (outlier detection, data drift) and integrated visual-language models to enhance image search. Automated documentation workflows using LLMs.
    • Client Project Delivery: Led end-to-end client projects, from needs assessment to delivery. Ran MLOps workshops and managed annotation teams for data labeling.
    • Platform Contribution: Performed QA testing for the platform and SDK, and contributed feature requests to improve UX and dev efficiency.
    • Documentation: Maintained clear, developer-friendly documentation for both internal tools and client-facing deliverables.
  • ID-Pal
    DATA SCIENTIST INTERN
    juin 2023 - septembre 2023 (3 mois)
    Worked on a fraud detection use case, applying computer vision to identify forged identity documents.

    • Fraud Detection Model: Designed and trained a deep learning model using open-source datasets to detect fake IDs via document analysis.
    • Plug-and-Play Deployment: Delivered a fully integrated solution designed to be easily consumed by backend and frontend teams for production use.
    • Performance Optimization: Fine-tuned the model for real-time performance and reliability.
    • Documentation: Provided detailed documentation to support long-term maintenance and development.
  • N7 CONSULTING
    TECHNICAL LEADER
    novembre 2020 - décembre 2021 (1 an et 1 mois)
    Led technical aspects of client projects within a student-run consulting firm, combining project management with hands-on development.

    • Client Interaction: Participated in client meetings to understand needs, propose solutions, and define project scope and budgets.
    • Team Management: Coordinated a team of junior consultants, reviewed code, and guided project delivery from start to finish.

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Formations

  • Ingénierie : Science du numérique (Informatique/Mathématiques appliquées/ Télécommunications/Réseaux)
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    2021
    Ingénierie : Science du numérique (Informatique/Mathématiques appliquées/ Télécommunications/Réseaux)
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