In order to demonstrate your machine learning abilities on your resume, you may want to create a separate section that lists your machine learning skills. This will emphasize your expertise in various machine learning domains, such as data analysis, data visualization, data engineering, and model development. You can also include the machine learning tools, frameworks, libraries, and platforms that you are familiar with or have used in your projects. For instance, you could list the following: data analysis (pandas, numpy, scipy, statsmodels), data visualization (matplotlib, seaborn, plotly), data engineering (SQL, MongoDB, Apache Spark, Apache Kafka), model development (Scikit-learn, TensorFlow, PyTorch, Keras), model evaluation (ROC, AUC, confusion matrix, accuracy, precision, recall) and model deployment (Flask, Docker, AWS, Azure). Highlighting these skills on your resume will help you showcase your machine learning proficiency and attract potential employers.