Artificial intelligence (AI) is rapidly transforming industries, but significant challenges remain, particularly in the tools and processes used by data science and machine learning (ML) teams. While software engineering is grounded in the provable correctness of its programs, this paradigm does not extend to AI and ML due to the inherent uncertainty and complexity of these systems. Andrew Ng highlighted at the Amazon re:MARS conference that AI is akin to a new electricity, driving the need for tools designed specifically for ML, rather than relying on those from traditional software engineering. Comet, a platform designed to support ML practitioners, addresses this need by facilitating experiment tracking and comparison, allowing teams to manage the intricate details of ML projects more effectively. Ng's advocacy for 1-day sprints underscores the experimental nature of ML, emphasizing rapid iteration and hypothesis testing to build effective models. Comet's users report time savings and improved model development, reflecting the platform's potential to enhance workflow efficiency and collaboration in AI endeavors.