Chunk Relevance
Objective:
Chunk Relevance evaluates the relevance of distinct text chunks extracted from documents in response to a query. It splits the source text into meaningful units (chunks) and assesses whether the extracted segments are contextually relevant to the given prompt or query. A high score suggests that the model is efficient in isolating and extracting coherent, meaningful portions of text, ensuring relevance and cohesion.
Required Columns in Dataset:
Prompt
, Expected Chunks
, Retrieved Chunks
Interpretation:
High Chunk Relevance: Indicates that the model is efficiently selecting text segments that are contextually aligned and relevant to the query.
Low Chunk Relevance: Means the model often extracts irrelevant or incoherent text chunks, leading to low-quality or disjointed responses.
Execution via UI:

Execution via SDK:
metrics=[
{"name": "Chunk Relevance", "config": {"model": "gpt-4o-mini", "provider": "openai"}, "column_name": "your-text", "schema_mapping": schema_mapping}
]
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