This podcast episode presents a compelling case for the integration of programming in trading and investing, highlighting its benefits over traditional spreadsheet methods, such as reproducibility, automation, and enhanced collaboration through open-source tools. Hugo provides practical guidance on transitioning to programming, selecting suitable languages like R or Python based on specific project needs, and emphasizes the importance of hands-on, project-based learning. He addresses common frustrations faced by new programmers and advocates for community support, while underscoring the necessity of clear data-driven questioning and model interpretability in effective data analysis. Ultimately, his message encourages traders to engage deeply with programming to navigate the evolving landscape of financial data analysis.