Description: Quantitative Evaluation of Multimodal Data is a methodological approach that allows for the numerical analysis and measurement of data sets coming from different modalities, such as text, images, audio, and video. This type of evaluation focuses on integrating diverse information to gain a more comprehensive and accurate understanding of a specific phenomenon or problem. The main characteristics of this approach include the ability to combine heterogeneous data, the use of advanced statistical techniques, and the implementation of machine learning algorithms that facilitate the extraction of significant patterns and relationships among different types of data. The relevance of quantitative evaluation of multimodal data lies in its application in various fields, including artificial intelligence, social research, and medicine, where information comes from multiple sources and its joint analysis can provide deeper insights. This approach not only improves the accuracy of predictive models but also enables better decision-making by providing a holistic view of the available data.