This presentation dive into applications of AI, progressing from modern machine learning techniques to more specific topic self-supervised learning. As the intricate nature of biological data demands sophisticated analytical tools, the gist points of this talk illustrating how self-supervised learning can be adeptly applied to RNA-seq analysis, offering a glimpse into the potential of AI in unraveling complex biological narratives.