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François B.FB

François B.

AI & DSP Engineer | Radar | Sensors | Edge AI

£648/day
Liège, BE
3-7 years

Average response time: 1 hour

About François

I am a DSP and AI engineer specialized in developing intelligent algorithms for real-world sensing systems, with a strong focus on signal processing, machine learning and embedded AI.

My work sits at the intersection of signal processing, detection algorithms and production machine learning systems. I particularly enjoy solving complex technical problems involving noisy sensor data, real-time constraints and hardware limitations.

I have experience developing end-to-end AI solutions, from algorithm design and model training to deployment on embedded systems and production environments.

My main areas of expertise include:

• Real-time detection, tracking and classification algorithms
• Radar and LiDAR signal processing
• Medical image processing on CT, MRI and PET modalities
• Feature engineering and statistical learning for medical imaging and sensor data
• Edge AI and TinyML deployment on constrained hardware
• Machine learning pipelines and MLOps
• Software development

Throughout my experience, I have worked on:
• AI models for sensor-based people and vehicle detection
• Multi-object tracking and classification systems
• Medical imaging models for diagnosis and outcome prediction
• Deployment of neural networks on microcontrollers
• Data and ML infrastructure for reproducible AI development

My technical stack includes:
• Programming languages: Python | C | Matlab
• Machine learning: Tensorflow | LiteRT | MLflow
• Software development: Azure DevOps | Git | Docker

I am particularly interested in projects involving innovation, real-world impact and technically challenging environments, especially in domains such as intelligent sensing systems, medical technologies and advanced AI applications.

Driven by curiosity and a strong engineering mindset, I enjoy collaborating with multidisciplinary teams and turning complex ideas into robust and deployable solutions.
  • French

    Native or bilingual

  • English

    Fluent

Can work on-site
Liège (up to 50km), Bruxelles (up to 50km)

Experience

  • BEA Sensors Europe
    Digital Signal Processing Engineer
    TECH
    September 2023 - Today (2 years and 9 months)
    Liège, Belgium
    DSP and AI Algorithms for intelligent Radar and LiDAR sensing systems

    Design, development, simulation and validation of real-time detection, tracking and classification algorithms combining signal processing and machine learning.

    Selected contributions:
    • Design and development of real-time detection and tracking algorithms for sensor data
    • Algorithm simulation, validation and performance evaluation
    • Development of classification models for people and vehicle detection
    • Deployment of deep learning models on embedded hardware (Edge AI / TinyML)
    • Implementation of high-performance algorithms in Python and C
    • Development of Python APIs and web applications for testing and visualization
    • Development of ML pipelines and MLOps workflows (MLflow, CI/CD)
    • Feature engineering and statistical modeling for sensor data

    Sensor modalities:
    CW radar | FMCW/mmWave radar | LiDAR

    Tech stack:
    Python | C | TensorFlow | LiteRT | scikit-learn | MLflow | Docker | Azure DevOps | Git
    Traitement du signal Radar Edge AI Capteurs Machine learning
  • Radiomics.bio - Belgium
    R&D Team Lead
    BIOTECH
    June 2022 - September 2023 (1 year and 3 months)
    Liège, Belgium
    Leadership of medical AI research projects

    Led a multidisciplinary R&D team (AI scientists and mathematical engineers) developing machine learning solutions for medical imaging applications.

    Key contributions:
    • Technical leadership of AI research projects in medical imaging
    • Coordination of R&D activities and project roadmaps
    • Mentoring and supervision of AI scientists and engineers
    • Contribution to EU-funded innovation and research programs
    • Collaboration with cross-functional teams including researchers and clinicians

    Tech stack:
    Python | TensorFlow | PyTorch | ITK | SimpleITK | VTK | scikit-image | pydicom | MLflow | Docker | Git
    Recherche et développement Deep Learning MLOps Computer Vision Team Leadership
  • Radiomics.bio - Belgium
    AI Scientist
    BIOTECH
    February 2021 - June 2022 (1 year and 4 months)
    Liège, Belgium
    Machine learning for medical imaging and radiomics

    Development of machine learning models and advanced radiomic features for diagnosis support, outcome prediction and treatment response analysis using CT, MRI and PET imaging data.

    Key contributions:
    • Design of classification and segmentation models for medical images
    • Development of novel radiomic features and statistical models
    • Feature engineering for high-dimensional medical datasets
    • Explainable AI analyses, model validation and performance evaluation
    • Development of ML pipelines for medical data analysis

    Tech stack:
    Python | TensorFlow | PyTorch | ITK | SimpleITK | VTK | scikit-image | pydicom | MLflow | Docker | Git
    intelligence artificielle Machine learning Computer Vision imagerie médicale Feature Engineering

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Education

  • Master of Management
    Louvain School of Management
    2022
    Master's degree in General Management
  • Master's degree, Electrical, Electronics and Communications Engineering
    University of Liège
    2020
    Master's degree, Electrical, Electronics and Communications Engineering

Skill set

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