This working paper presents a practical framework for quantitative strategy research, portfolio analysis, and API-driven investment workflows. It brings together a series of Quantpedia research case studies focused on portfolio diversification, factor analysis, investment product replication, dividend investing versus total return approaches, commodity shock analysis, equity and gold portfolio risk reduction, and systematic strategy evaluation. The paper also demonstrates how the Quantpedia API can be used as a structured research layer for modern quantitative workflows. The included case studies show how strategy metadata, classifications, performance statistics, and equity curves can support AI-powered research assistants, meta-strategy construction, factor database analysis, strategy robustness checks, peer group benchmarking, and custom strategy grading. The objective of the paper is to show how quantitative research can move beyond isolated backtests and static portfolio reports toward reproducible, data-driven workflows. The examples focus on practical research problems such as diagnosing hidden portfolio concentration, explaining investment products through factors, testing portfolio behavior across crisis scenarios, comparing strategies against relevant peer groups, and validating whether a new strategy is differentiated from existing systematic investment ideas.
David Mesíček (Tue,) studied this question.
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