Vector Database Instance
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A Vector Database Instance is a database instance that stores and manages high-dimensional vector data (arrays of numbers representing points in a high-dimensional space).
- Context:
- It can (typically) be created and managed using a Vector DBMS.
- It can (often) include specialized indexing mechanisms to facilitate efficient searching and retrieval of similar vectors.
- It can (often) employ similarity measures like cosine similarity or Euclidean distance to compare vectors.
- It can support advanced query types that are specific to vector data, such as k-nearest neighbor (k-NN) searches.
- It can range from being a Small Vector Database to being a Large Vector Database.
- ...
- Example(s):
- one that stores Text Vector Records.
- one that stores Image Vector Records.
- ...
- Counter-Example(s):
- ...
- See: Vector DBMS, High-Dimensional Data Management, Nearest Neighbor Search, Machine Learning Embeddings, Indexing Mechanisms.
References
2024
- GPT-4
- Vector Database Instance for Text Data: Instances in vector databases can store and manage high-dimensional vector data derived from text, such as the `dbpedia-openai-1M-angular` dataset with 1 million vectors and 1536 dimensions, for natural language processing tasks.
- Vector Database Instance for Image Data: Vector databases also support instances for storing and analyzing image data, utilizing vectorization to focus on essential image features and improving processes like traffic management through efficient image analysis.