Text Embeddings is a type of embedding in the domain of text machine learning models take requires numbers or numbers as input. When working with text, the first thing you must do is come up with a strategy to convert strings to numbers (or to “vectorize” the text) before feeding it to the model used to transform text features extracted from Information Extraction/NLP into numbers (or vectors) Text Embedding - Types Word Embeddings Sentence Embeddings Paragraph Embeddings Document Embeddings Text Embedding - Strategies/Methods Bag of Words (BoW) Term-Frequency Inverse-Document-Frequency (TF-IDF) Term Frequency - Inverse Document Frequency