Publication Date

Fall 2024

Abstract

This paper details the insights and learning outcomes from my internship at SLM Impact Finance SA (SLM), where I gained hands-on experience in applying AI and machine learning to investment research. Throughout the internship, I worked on projects involving sentiment natural language processing (NLP) analysis, artificial intelligence (AI) model development, and data processing, directly contributing to SLM's innovative approach to market analysis and investment strategy. The experience allowed me to bridge theoretical knowledge with real-world applications, particularly in the areas of applying computer science to my financial knowledge.

One of the key lessons was overcoming cognitive biases related to the perceived exclusivity of quantitative finance, as I learned to approach complex problems with an open mind and a focus on collaboration. Additionally, I observed the importance of work-life balance in a multicultural work environment, where diverse approaches to time management and productivity were integrated into daily operations. The internship also provided valuable insights into the intersection of technology and finance, highlighting how AI-driven tools and data analysis can significantly enhance decision-making processes.

By engaging with industry professionals and collaborating across teams, I gained a deeper understanding of the complexities of modern finance, including the role of emerging technologies in shaping investment strategies. Overall, the internship significantly enhanced my technical skills, broadened my professional perspective, and underscored the importance of adaptability and effective communication in the global financial landscape.

Disciplines

Business

Included in

Business Commons

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Article Location

 
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