π Vector databases are gaining popularity and funding, but they may not be necessary for all projects.
π‘ Vector databases are fascinating and have applications in long-term memory for large language models.
π Unstructured data like social media posts, images, videos, and audio cannot easily fit into a relational database.
π‘ Vector databases index and store vector embeddings for fast retrieval and similarity search.
π Vector embeddings are calculated using clever algorithms and machine learning models, representing data numerically.
π Vector embeddings enable finding similar vectors, allowing for efficient searching of similar images, text, and more.
π Vector databases use distance calculations and nearest neighbor search to find similar items quickly.
π Indexing is crucial for efficient search in vector databases and involves mapping vectors to a new data structure.
π‘ Vector databases have various use cases, such as equipping large language models with long-term memory.
π Vector databases are useful for semantic and similarity search.
π‘ They can be used for ranking and recommendation in online retail.
π» Some examples of vector databases are Pinecone, vv8, chroma, Redis, and Vespa AI.
π Vector databases are used in AI for efficient storage and retrieval of data.
π Embeddings and indexes play a crucial role in vector databases.
π Vector databases enable various AI applications such as similarity search and recommendation systems.