Short video applications pose unique challenges for recommender systems due to the constant influx of new content and the absence of historical user interactions for quality assessment of uploaded content. This research characterizes the evolution of embeddings in short video recommendation systems, comparing batch and real-time updates to content embeddings. The analysis investigates embedding maturity, the learning peak during view accumulation, popularity bias, l2-norm distribution of learned embeddings, and their impact on user engagement metrics. The study unveils the contrast in the number of interactions needed to achieve mature embeddings in both learning modes, identifies the ideal learning point, and explores the distribution of l2-norm across various update methods. Utilizing a production system deployed on a large-scale short video app with over 180 million users, the findings offer insights into designing effective recommendation systems and enhancing user satisfaction and engagement in short video applications.