Movatterモバイル変換


[0]ホーム

URL:


Logo: Fujitsu and home icon
Start  trial
    bnr-elephant-39-variation-01

    Fujitsu PostgreSQL blog

    < Back to blog homeFujitsu PostgreSQL blog
    Fujitsu PostgreSQL Blog listing page
    |

    At first glance, storing and querying embeddings in PostgreSQL may seem impractical—but with the right setup, it’s both efficient and effective. This post covers how to design your schema, store vectors properly, and perform fast similarity searches without the usual headaches.

    Embeddings are the foundation of vector search, allowing us to represent meaning-rich content like documents or queries as numerical vectors. But to use them effectively, it’s essential to understand what’s actually being embedded—whether that’s individual words, full sentences, or larger chunks of text.

    As vector search becomes a foundational feature in modern applications—from semantic search and recommendation engines to AI-driven insights—developers are increasingly adopting PostgreSQL with the pgvector extension. However, one concept often creates confusion: the difference betweensimilarity anddistance.

    Receive our blog

    Search by topic

    see all >

    Read our latest blogs

    Read our most recent articles regarding all aspects of PostgreSQL and Fujitsu Enterprise Postgres.

    Receive our blog

    Fill the form to receive notifications of future posts

    Search by topic

    see all >

    [8]ページ先頭

    ©2009-2025 Movatter.jp