Geospatial Data Scientist: Fuel-Retail Demand & Site-Selection Model
Бюджет: -
HOURLY / PART_TIME
⭐ 0.00 (0)
United Arab Emirates
python, data-modeling, data-analysis, api
I need a spatial data scientist to build the predictive model behind a fuel-retail network planning platform for the UAE. The UI, data pipelines, and product layer already exist. The model does not. You build it end to end.
What you build:
Demand and revenue model: predicted fuel volume and revenue in real units for any location
Cannibalization model: demand impact of a new site on an existing fleet of ~600 stations
Site scoring and white-space detection
Calibration and back-testing against 2 years of station transaction data (target 85-90% accuracy)
Model served via API (e.g. FastAPI) for the front-end to consume
Data you will work with: GPS mobility, demographics on a 250x250m grid, competitor POIs, real-estate costs, and EV/growth forecasts. Ground truth: station list and historical fuel and C-store transactions.
Required:
Proven spatial demand or site-selection modelling (fuel retail, retail/QSR, telco coverage, or quant real estate)
Gravity / Huff / competing-destinations models for trade-area and market-share allocation
Predictive ML: regression and gradient boosting (XGBoost, LightGBM)
You understand why random cross-validation fails on spatial data and how to back-test correctly
Geospatial Python: GeoPandas, shapely, PySAL or rasterio
Notes:
Front-end and dashboards are out of scope, already covered
Work runs inside a secured Azure UAE North environment (data stays in-region). Remote is fine
~4 month contract, with a likely 30-month follow-on if the pilot is approved
When you apply, do not send a generic ML pitch. Tell me about one spatial demand or site-selection model you have actually built: what it predicted, how you validated it, and the accuracy you achieved.
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Extra details in the attached PDF
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