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loreroma265-max/README.md

Lorenzo Roma

Research & Data Analyst | London

Mathematics & Philosophy (First Class BSc, Distinction MA, Durham) → Data Analysis internship at Zurich → Research Analyst at a London-based fund.

I work at the intersection of quantitative analysis and investment research — building data pipelines, automating reports, and doing manager due diligence.


Tech stack

Python SQL Excel Azure Pandas Jupyter


Featured projects

Project Description Stack
S&P 500 Price Forecasting End-to-end pipeline forecasting AMZN next-day closing prices Python, Pandas, sklearn
ARIMA Sales Forecasting Alcoholic beverages sales forecast using ARIMA & SARIMA Python, statsmodels

Currently

  • 🔭 Working on: fund data pipeline automation
  • 🌱 Learning: advanced SQL, Azure Data Factory
  • 📫 Reach me: LinkedIn

Popular repositories Loading

  1. loreroma265-max loreroma265-max Public

    Github repository profile readme

  2. Github-S-P-500-Companies-Forecasting Github-S-P-500-Companies-Forecasting Public

    An end-to-end data science project forecasting Amazon (AMZN) next-day closing prices using historical S&P 500 stock data. The project covers the full pipeline from raw data through to model evaluat…

    Jupyter Notebook

  3. ARIMA-and-Seasonal-ARIMA-Forecasting ARIMA-and-Seasonal-ARIMA-Forecasting Public

    This is a forecasting of alcoholic beverages sales using ARIMA and seasonal ARIMA. It analyses and cleans the data before creating a stationary series from the non-stationary initial series to then…

    Jupyter Notebook