Quantitative ML Researcher Needed for Predictive Backtesting Project
Budget: $750.0
FIXED /
⭐ 0.00 (0)
United Arab Emirates
data-science, machine-learning, python, statistics, data-analysis
Description
I’m looking for a quantitative data scientist / machine learning researcher to test whether a historical structured dataset contains a statistically significant predictive edge.
The first phase is not to build software, a dashboard, or an AI chatbot. The goal is to run a rigorous research/backtesting exercise and determine whether the data contains useful signal.
Deliverables
1. Clean and prepare the dataset
2. Define the target variable clearly
3. Build a simple baseline model
4. Build one or two predictive ML models
5. Run a proper out-of-sample backtest
6. Identify feature importance / drivers of prediction
7. Explain whether the model has genuine predictive edge or not
8. Provide a clean Jupyter Notebook or Python project with clear documentation
Required skills
Python, pandas, NumPy, scikit-learn, XGBoost / LightGBM / CatBoost, statistics, feature engineering, backtesting, model validation, SQL.
Preferred background
Quantitative finance, sports betting, credit risk, insurance, fraud detection, pricing models, forecasting, or other structured-data predictive modelling.
Important
I am not looking for a generic AI chatbot, LLM agent, automation specialist, or dashboard developer. This is a predictive modelling and backtesting project.
The ideal candidate should be able to think critically, avoid overfitting/data leakage, and honestly assess whether the model works or does not work.
Initial project scope
This is a fixed-price proof-of-concept. If the first phase shows promising results, there may be follow-on work to expand the dataset, improve the model, and eventually build a usable research platform.
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