Retrieval

Semantic search

Semantic search finds results based on meaning, not just keywords.

Quick definition

Semantic search finds results based on meaning, not just keywords.

  • Category: Retrieval
  • Focus: grounded answers and search relevance
  • Used in: Question answering over internal docs or knowledge bases.

What it means

It uses embeddings to match intent even with different wording. In retrieval workflows, semantic search often shapes grounded answers and search relevance.

How it works

Retrieval pipelines index content into chunks and embeddings, then fetch relevant pieces at query time. The model uses those snippets as context to answer.

Why it matters

Retrieval improves accuracy by grounding responses in your data.

Common use cases

  • Question answering over internal docs or knowledge bases.
  • Support assistants that cite sources and reduce hallucinations.
  • Enterprise search that understands intent beyond keywords.

Example

Search reset password and find account recovery.

Pitfalls and tips

Poor chunking or stale data leads to irrelevant results. Refresh indexes and tune chunk size to keep answers accurate.

In BoltAI

In BoltAI, this appears in search, knowledge, and grounding workflows.