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Real Estate Data Analytics in Latin America: Web Scraping and Forecasting
AI and Machine Learning
Project Guide :
Mayya Lihovidov
Development :
Start :
2025-10-30
Finish :
2026-03-01
Hebrew Year :
תשפו
Semesters :
1st & 2nd
Description
General Description The real estate sector in Latin America is undergoing significant changes, with increasing demand for reliable and up-to-date information on property markets. This project focuses on collecting real estate data (rental and sale listings) from online platforms in Uruguay and Argentina through web scraping techniques. Students will then enrich the dataset with relevant macroeconomic indicators to better understand market dynamics. Finally, they will apply forecasting methods to predict future trends, combining technical skills with analytical thinking to produce actionable insights. Project Scope The purpose of the project is to introduce students to real-world data analytics challenges in the real estate domain. Students will first design and implement a scraping model to gather property listings, then clean and organize the data for analysis. By integrating macroeconomic variables such as inflation, GDP, or interest rates, students will learn how to contextualize real estate data within broader economic trends. The main objectives are to develop practical skills in programming and data science, while also strengthening critical thinking, teamwork, and communication through a final presentation of the results. Student Requirements Teamwork and collaboration in small groups Full attendance and active participation in weekly meetings High motivation and problem-solving mindset Independent learning and research capabilities Personal responsibility for assigned tasks and deadlines Development Tools Python (BeautifulSoup, Scrapy, Pandas, Scikit-learn) Data sources: Real estate listing websites (Uruguay and Argentina), macroeconomic datasets (World Bank, IMF, national agencies) GitHub for version control and code sharing PowerPoint or Google Slides for presentation Deliverables List all required deliverables: Specification document (project plan and methodology) GitHub link to the code (scraping scripts, dataset, and forecasting model) Presentation (slides summarizing process, findings, and insights) Additional Notes • Each project team may include up to 5 students. • Please include your contact details at the end of the document for student inquiries: - Full name - Email address For any questions, you may also contact: Shirany.hit@gmail.com
Emphasis in project execution
The project is has cooperation with the industry and combines meeting deadlines while being creative and focused on the task
Status:
Shown in Available Projects
THE PROJECT IS AT FULL CAPACITY
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