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Angelo CharryAC

Angelo Charry

Data Scientist PhD | AI & Biophysics

€1,000/day
Paris, FR
3-7 years

Average response time: 1 hour

About Angelo

PhD in Biophysics & AI (Sorbonne/ESPCI/Collège de France), I co-founded Asio Data to bring the high standards of academic research to the corporate world.


❌ My Approach: I do not simply apply off-the-shelf "Black Box" models to your data.

✅ My Method: I seek out the causal and physical rules governing your activity to build robust, explainable, and reliable models.

💡 HOW I CAN HELP YOU:

  • 1️⃣ Data Project Audit & Rescue: Your model isn't performing? Your data seems unusable? I intervene to diagnose failures, clean pipelines, and restructure your Data strategy to save drifting projects.
  • 2️⃣ Custom Algorithms (Beyond Standard ML): Development of complex predictive models (Bayesian Inference, Physics-Informed Deep Learning) specifically designed for Industry, Biotech, or Finance constraints.
  • 3️⃣ Process Optimization & Decision Making: Making noisy data "speak" to extract optimal decision-making levers and reduce uncertainty in your operations.

🛠 Tech Stack:
Python, PyTorch, Scikit-learn, Pandas, NumPy, Git, Docker, Cloud (AWS/GCP).

🎓 The Asio Data Advantage:
Working with me means accessing the methodology of a consulting firm founded by physicists. Rigor, transparency, and documentation are our non-negotiable standards.

📅 Availability:
Part-time or Full-time (Remote preferred / On-site in Paris possible).

👉 Contact me for an initial diagnostic of your specific issues.
  • French

    Native or bilingual

  • English

    Fluent

Remote only
Primarily works remotely

Experience

  • Asio Data (Deep Tech Consultancy)
    Co-founder & Lead Data Scientist | Scientific Consulting
    January 2026 - Today (5 months)
    Paris, France
    Co-founder & Lead Data Scientist | Scientific Consulting
    Asio Data (Deep Tech Consultancy)

    Mission:

    Co-founder of Asio Data, a consulting firm bridging Academic Research rigor and Business Data challenges. We replace "Black Box" approaches with explainable, physics-informed models.

    My Role (Expertise):

    As a PhD in Biophysics & Statistical Learning, I translate complex business ambiguities into rigorous mathematical problems.
    • 🧠 Advanced Modeling: Constraining AI models with fundamental laws (thermodynamics, symmetries) to ensure robustness.
    • 🔍 Bayesian Inference: Extracting weak signals from noisy environments where standard approaches fail.
    • 🛡️ Risk Management: Systematically quantifying uncertainty in predictions to secure decision-making.

    Services Delivered:


    🚀 Operational & Structural Audit:
    • Diagnosing data quality issues and "cleaning" bias.
    • Refactoring fragile manual processes into robust automated pipelines.

    💡 Innovation & Custom Algorithms:
    • Development of bespoke predictive models (Deep Learning, Simulation In Silico / Digital Twins).
    • Optimization of complex processes using noisy data.

    🎓 Training & Mentoring:
    • Upskilling technical teams on advanced analysis tools.
    • "Data Literacy" training for business stakeholders to understand Data Science potential and limits.

    Value Proposition:

    "We don't just find correlations; we seek the causes and rules governing your data."
    Data Strategy Mentoring Data Cleaning Gestion de projet Conseil
  • Collège de France - Sorbonne Université - ESPCI
    PhD Researcher – AI & Biophysics (Physics-Informed AI)Sorbonne Université / ESPCI / Collège de France
    BIOTECH
    January 2021 - January 2025 (4 years)
    Paris, France

    Context:

    Research conducted within top-tier laboratories (Sorbonne, ESPCI, Collège de France) at the crossroads of Theoretical Physics, Artificial Intelligence and Biology.

    Objective:

    Developing "Physics-Informed" AI models for protein engineering, outperforming classical "Black Box" approaches.

    Technical Challenges & Achievements:

    🚀 Hybrid Deep Learning Architecture:
    • Design of Neural Networks (PyTorch) integrating strict thermodynamic constraints.
    • Result: Ability to simultaneously predict the affinity and stability of protein variants with guaranteed physical consistency.

    📊 Big Data Processing & Noise Management:
    • Analysis of massive sequencing datasets (~100 million reads / Deep Mutational Scanning).
    • Applied Bayesian Inference to model and clean experimental noise (over-dispersion, PCR bias) to extract relevant weak signals.

    ⚙️ Optimization under Constraints:
    • Implementation of regularization and "Coarse-graining" strategies to enable learning on limited or heterogeneous data, effectively preventing overfitting.

    🛠 Technical Stack:
    Python, PyTorch (Deep Learning), NumPy/Pandas (Data Analysis), HPC (High-Performance Computing), Git.
    Python Pytorch Deep Learning Machine learning Pandas
  • Sorbonne Université
    Scientific Mentor & Lecturer (Python/Physics) - Sorbonne Université
    EDUCATION AND E-LEARNING
    January 2021 - January 2023 (2 years)
    Paris, France

    Description:

    Teaching and technical mentoring mission for undergraduate Physics students.

    • 🗣 Pedagogy & Simplification: Transmitting complex concepts in Thermodynamics and Statistical Physics. Proven ability to adapt technical discourse to various audiences.
    • 💻 Digital Project Supervision: Supervision of simulation and programming projects (Python). Code reviews and methodological support.
    • 🎓 Group Management: Leading Tutorials (TD) and Practical Labs (TP).

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Education

  • PhD in Biophysics & Machine Learning
    Sorbonne Université / ESPCI Paris / Collège de France
    2024
    "Biophysical Modeling of High Throughput Proteins Selection" Research conducted at the crossroads of Statistical Physics and AI within elite laboratories (Collège de France, ESPCI). • Focus: Development of mathematical models and machine learning algorithms to understand and predict protein selection mechanisms. • Key Competencies: Complex Systems Modeling, Statistical Physics, Advanced Deep Learning. (See "Experience" section for technical details and stack).
  • MSc in Theoretical Physics of Complex Systems (i-PCS)
    Sorbonne Université & Politecnico di Torino
    2021
    "Biophysical Modeling of High Throughput Proteins Selection" Research conducted at the crossroads of Statistical Physics and AI within elite laboratories (Collège de France, ESPCI). • Focus: Development of mathematical models and machine learning algorithms to understand and predict protein selection mechanisms. • Key Competencies: Complex Systems Modeling, Statistical Physics, Advanced Deep Learning. (See "Experience" section for technical details and stack).

Skill set

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