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Hi, I'm Harouna Traore 👋

Data Analyst & Scientist | Quantitative Modeler | MSc Applied Econometrics & Statistics


👤 About Me

I'm a quantitative Data Analyst & Scientist with a strong background in statistical modeling, data pipeline engineering, and credit risk modeling. Holding a Master's in Applied Econometrics & Statistics from the University of Orléans (France) and an engineering degree from ENSAE Dakar, I combine rigorous analytical thinking with a passion for building reliable, production-ready data solutions.


💼 Professional Experience

🌍 International Data Consultant — International Trade Centre (UN Agency), Geneva

Sept 2023 – Jan 2026

  • Automated data pipelines for trade data processing: quality control, cleaning, standardization, and indicator production
  • Designed visualizations and quality monitoring dashboards for trade flow analysis
  • Stored, consolidated, and made data available in a SQL Server data warehouse for reporting and analytics
  • Migrated SAS codebases to Python to industrialize analytical processes; documented business rules and processes
  • Leveraged data to produce analytical and thematic reports for internal teams and institutional partners
  • Delivered targeted training sessions on data tools, dashboards, and analytics (internal & partners)
  • Stack: Python · Dagster · R/Shiny · SQL · SAS · Power BI · SAP Analytics Cloud

🏦 Model Risk Manager Intern — Société Générale, Paris (La Défense)

Mar 2023 – Aug 2023

  • Built an R/Shiny application to automate backtesting of credit stress test models — cutting report production from several days to 7 minutes
  • Enriched performance indicators: PSI, HHI, AR/AUC, Hosmer-Lemeshow, MAE/RMSE, conformity tests
  • Extended data quality diagnostics: missing values, outlier detection (Grubbs), population stability
  • Conducted IFRS9 PD model backtesting: PiT PD vs ODR comparison, migration matrices, conservatism evaluation
  • Analyzed climate stress tests (NGFS scenarios, transition & physical risks)
  • Stack: Python · R/Shiny

🚀 Projects

📊 Credit Scoring Model — MSc ESA Project

  • Feature engineering, Logistic Regression, Decision Tree, Random Forest, Bagging, XGBoost
  • Class imbalance handling via SMOTE resampling; model evaluation & scorecard construction

📉 Probability of Default (PD) Modeling — RiskMDP Advisory

  • Segmentation: feature engineering, logistic regression, scorecard construction
  • Calibration: Long-Run Average (LRA) estimation and Margin of Conservatism (MoC) quantification

🌍 African Countries GNI Per Capita Animation (Public — GitHub)

🔗 github.com/tharoun/African-Countries-GNI-Per-Capita-Animation

Python Matplotlib License: MIT

  • Animated bar chart race showing the evolution of the top 10 African countries by GNI per capita (1960–2024)
  • Features country flags, World Bank income classification thresholds, and smooth year-by-year transitions
  • Outputs available as MP4 video, HTML animation, or GIF
  • Data sourced from World Bank World Development Indicators (Atlas method)
  • Stack: Python · Matplotlib · Pandas · Pillow · FFmpeg

🗄️ WDI Data Pipeline (Public — GitHub)

🔗 github.com/tharoun/wdi-data-pipeline

R PostgreSQL License: MIT

  • Automated pipeline to download the full World Bank WDI dataset via API and load it into a PostgreSQL database
  • Creates 6 structured tables: data, country, series, footnotes, and relationship tables
  • Handles data cleaning, column standardization, schema management, and connection lifecycle
  • Stack: R · WDI · RPostgres · DBI · tidyverse · PostgreSQL

🦠 COVID-19 Dashboard — Burkina Faso (Public — GitHub)

🔗 github.com/tharoun/covid-2019-dashboard · 🌐 Live Demo

R

  • Interactive dashboard to monitor the evolution of COVID-19 in Burkina Faso
  • Built a data collection and processing pipeline to generate key epidemic indicators
  • Features choropleth mapping and trend visualizations of case evolution
  • Stack: R · Shiny · ShinyApps.io

🛠️ Tech Stack

Domain expertise: Basel Regulation · IFRS9 · Credit Risk (PD / LGD / CCF / EAD / RWA) · Backtesting · Stress Testing · Machine Learning · Spatial Econometrics · Data Warehousing


🎓 Education

Degree Institution Period
MSc Applied Econometrics & Statistics (ESA) University of Orléans, France 2021 – 2023
Ingénieur des Travaux Statistqiues (ITS) ENSAE Dakar, Senegal 2017 – 2021

📜 Certifications

  • 🏅 Designing Stories with SAP Analytics Cloud — 2025
  • 🏅 Advanced Python Programming — Udemy, 2024
  • 🏅 Data Analyst in Power BI — DataCamp, 2024
  • 🏅 Quantitative Analyst Pro (Scoring, PD, LGD, Prudential Regulation) — RiskMDP Advisory
  • 🏅 Base Programming SAS — 2022
  • 🏅 Core Designer — Dataiku, 2022

🌐 Languages

  • 🇬🇧 English — Fluent (speaking, writing, reading, listening)
  • 🇫🇷 French — Native

Open to opportunities in Data Analytics, Data Science, and Quantitative Risk Modeling.
📬

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