In Wordle, the words used in the game are used to train and evaluate the model used for recognizing the solution word and identifying the attributes associated with each category of the given words associated with each category of the given words. Meanwhile, the words are used to create training and testing datasets, which are used to train and evaluate the model. The training data consists of a set of words that are labeled with their solution words and the categories associated with the given words. The model is then trained on this data to learn how to recognize the solution word and identify the associated categories. During the training process, the model is exposed to a wide range of words and categories, allowing it to learn patterns and associations between words and categories. The model is trained using various machine learning algorithms, including deep learning techniques, which can learn complex The model is trained using various machine learning algorithms, including deep learning techniques, which can learn complex relationships between words and categories. Once the model is trained, it is tested using a separate set of data that was not used in the training process. The testing data consists of words that the model has not seen before, and the model's accuracy in recognizing the solution word and identifying the categories associated with the given words is evaluated. The testing data consists of words that the model has not seen before, and the model's accuracy in recognizing the solution word and identifying the categories associated with the given words is evaluated.