Effective feature engineering is essential for achieving successful machine learning outcomes, but important signals within data are often missed. In this talk, Xavier will present his fresh and innovative approach to feature engineering ideation, exploring how to create features with different signal types, including timing, regularity, stability, diversity, and similarity. Using FeatureByte, a recently launched free and source-available feature platform that leverages popular data platforms like Snowflake, Spark, and DataBricks, Xavier will demonstrate the practical application of these techniques. Attendees can expect to gain valuable insights and techniques on how to creatively engineer features and unlock the full potential of their data for machine learning success.