Abstract:
Vector databases have emerged as the computation engine that enables us to successfully interact with vector embeddings in our applications as a result of the exponential...Show MoreMetadata
Abstract:
Vector databases have emerged as the computation engine that enables us to successfully interact with vector embeddings in our applications as a result of the exponential rise of vector embeddings in disciplines like NLP (Natural Language Processing), computer vision, and other AI applications. In order to address the issues that arise when handling vector embeddings in production applications, vector databases were specifically created. Vector databases that offer quick and precise nearest-neighbor search, clustering, and similarity matching, and that are simple to deploy on cloud infrastructure or distributed computing systems, are more likely to be well-liked by users. They therefore provide a number of advantages over conventional scalar-based databases and independent vector indexes. This research reveals that embedding vectors are frequently utilized for analyzing and exploring unstructured data with the creation of learning-based embedding models. Completely managed and horizontally scalable vector databases are required as vector collections reach billion-scale numbers. The proposal relaxes the data model and consistency restrictions in exchange for the aforementioned benefits because the majority of vector data applications do not call for intricate data models and robust data consistency. VectorDB of Python has been used for implementation and test case which does faster similarity search.
Date of Conference: 08-09 December 2023
Date Added to IEEE Xplore: 19 March 2024
ISBN Information: