grid-line

Vector embeddings

Fundamental concept in machine learning and natural language processing, vector embeddings represent words, phrases, or documents as vectors of real numbers in a continuous vector space. This representation captures semantic meaning and relationships, enabling applications like information retrieval and sentiment analysis. Vector embeddings are essential for developers and researchers in AI and NLP fields seeking to enhance text understanding and processing capabilities.
8.1K
Volume
+2150%
Growth
exploding