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Denys SikorskyiDS

Denys Sikorskyi

Machine Learning Engineer

350 €/jour
Paris, FR
3-7 ans

Délai de réponse moyen : 1h

À propos de Denys

I help companies make their ML models faster, smaller, and ready for real-world deployment — on servers, mobile, or edge hardware.
At Huawei I compressed a computer vision model from 60MB to 1MB with 25x faster inference using quantization, pruning, knowledge distillation, and architecture modifications. At AVA I achieved 10x size reduction and 8x latency improvement on production NLP models.
I cover the full pipeline — profiling bottlenecks, applying compression techniques, validating on target hardware, delivering production-ready solutions.
Typical projects: model compression, computer vision optimization, inference speedup, PyTorch and TensorFlow development
  • Anglais

    Capacité professionnelle complète

  • Russe

    Bilingue ou natif

  • Ukrainien

    Bilingue ou natif

  • Français

    Notions

Accepte de travailler sur site
Paris (jusqu’à 50 km)

Expériences

  • Huawei Technologies France
    Machine Learning Engineer
    HIGH TECH
    juillet 2024 - janvier 2026 (1 an et 6 mois)
    Paris, France
    Developed ML solutions across three projects focused on optimization and computer vision:

    Compressed a computer vision model from 60MB to 1MB with 25x faster inference using quantization, pruning, knowledge distillation and architecture modifications — enabling deployment on resource-constrained hardware
    Extended an optimization solver from convex to non-convex functions via custom transformations, achieving 3x faster convergence
    Built probabilistic sequence forecasting models for app caching prediction using PyTorch
    Pytorch Python Computer Vision model-optimization Deep Learning
  • AVA France
    ML Engineer / R&D Intern
    HIGH TECH
    mai 2023 - octobre 2023 (5 mois)
    Paris, France
    Optimized a production speaker diarization model for edge deployment as part of master's thesis:

    Reduced model size by up to 10x and latency by 8x using knowledge distillation, quantization, and pruning with minimal accuracy loss
    Produced a full set of models covering different accuracy/latency trade-offs for flexible deployment across server and edge environments
    Enabled potential deployment on mobile devices previously requiring server-side compute
    Quantization Pytorch NLP TensorFlow Deep Learning
  • Fractal.AI
    Data Scientist
    HIGH TECH
    décembre 2021 - octobre 2022 (10 mois)
    Kiev, Ukraine
    Built an active learning system for time series outlier detection:

    Designed a human-in-the-loop pipeline collecting real-time business user feedback on model predictions
    Built Random Forest classifiers per time series enriched with sliding window and temporal features, retrained weekly on accumulated feedback
    Enabled continuous model improvement adapting to domain knowledge that pure mathematical detection couldn't capture
    Machine learning Deep Learning Python Time Series Anomaly Detection

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