I am a Glasgow-based Data Scientist bridging the gap between deep mathematical rigor and commercial AI product development. I specialize in Physics-Informed Machine Learning, utilizing TensorFlow and LSTMs , and advanced statistical models to optimize complex systems and generate direct business value.
- π¨βπ» Role: Data Scientist, Artificial Intelligence / Machine Learning Engineer.
- π Business Impact: I build production-ready predictive models and simulations that optimize efficiency, automate valuation pipelines, and reduce operational costs.
- π§ Top Skills: π Python, Deep Learning (TensorFlow/PyTorch), π Time-Series Forecasting, and Automated ETL Pipelines.
- β‘ Core Expertise: Renewable Energy Systems, Thermodynamics, Systems Modelling, and Predictive Analytics.
- π Currently working on: Integrating Deep Learning with Subsurface Thermal Energy Storage (STEaM) simulations to predict long-term thermal behavior.
- π€ Looking to collaborate on: AI-driven energy decarbonization projects and predictive maintenance models.
- π¬π§ Status: Endorsed by the UK Government as an exceptional talent. UK Global Talent Visa Holder β I can work for any employer immediately without sponsorship.
Industry Application: Renewable Energy Grid Balancing & Techno-Economic Modelling
- The Challenge: De-risking the conversion of legacy mine shafts into GigaWatt-hour thermal storage required complex modeling to validate feasibility and grid balancing potential.
- The Solution: Engineered a Python-based finite volume simulation engine (
shaftstore_1d_0i.py) to model thermodynamic stratification and heat diffusion, integrating control logic for Heat Pump and CHP systems. - The Impact: Generated critical Levelized Cost of Heat (LCOH) and COP metrics, providing the validation needed to repurpose industrial liabilities into renewable energy assets.
- Stack:
PythonNumPyPandasSciPyMatplotlibFinite Volume Method
Industry Application: System Efficiency Improvement
- The Challenge: Solar collectors were underperforming due to static configuration parameters.
- The Solution: Wrote custom Genetic Algorithms (Optimization) to cycle through thousands of design variables.
- The Impact: Identified a configuration that increased energy capture by 30%.
- Stack:
MATLABOptimizationData Visualization
Industry Application: Automated Valuation & Pricing Engines
- The Challenge: Traditional linear models failed to capture complex non-linear interactions between categorical attributes (cut, clarity) and price for accurate valuation.
- The Solution: Engineered a custom ResNet-MLP (Deep Learning) architecture using TensorFlow/Keras, implementing residual skip connections and Log-Norm target engineering to stabilize gradients.
- The Impact: Delivered a production-ready pipeline capable of real-time price inference, targeting an accuracy of RΒ² > 0.95.
- Stack:
TensorFlowKerasPandasScikit-LearnResNet
Industry Application: Healthcare Analytics & Resource Planning
- The Challenge: The Scottish Government needed rapid projections of ICU bed usage.
- The Solution: Applied statistical modelling to patient intake data to forecast demand spikes.
- The Impact: Directly supported public health resource planning during a critical crisis.
- Stack:
PythonScikit-LearnData Analysis