Retrieval and generation output of Vertex AI RAG Engine¶
This page explains each field of the output from Vertex AI RAG Engine.
retrieveContexts
¶
This section describes each field defined in the retrieveContexts
API and
uses the fields in sample code.
Fields¶
Field name | Description |
---|---|
source_uri |
The original source file before it's imported into RAG. If the file is imported from Cloud Storage or Google Drive, source_uri is the original file URI in Cloud Storage or Drive. If the file is uploaded, source_uri is the file's display name. |
source_display_name |
The file's display name. |
text |
The text chunk that is relevant to the query. |
score |
The similarity or distance between the query and the text chunk. The similarity or distance depends on the vectorDB that you choose. For ragManagedDB , the score is the COSINE_DISTANCE . |
Sample output¶
This code sample demonstrates the use of the fields to produce sample output.
contexts {
source_uri: "gs://sample_folder/hello_world.txt"
source_display_name: "hello_world.txt"
text: "Hello World!"
score: 0.60545359030757784
}
generateContent
¶
Most of the fields defined for the generateContent
API can found in the
Response body.
Fields¶
This section describes each field defined in the grounding_metadata
part of
the generateContent
API and uses the fields in sample code.
Field name | Description |
---|---|
text |
The response generated by Gemini. |
grounding_chunks |
The chunks returned by Vertex AI RAG Engine. |
retrieved_context |
A repeated field that can have zero or more chunks used to ground the generated content. |
- uri |
- The source_uri specifies where the data is originally stored. |
- title |
- The source_display_name is the filename or display name of the original file. |
- text |
- The text chunk is used to ground the Gemini response. |
grounding_supports |
The relationship between the generated content and the grounding chunks. This is a repeated field. Each grounding_supports field shows the relationship between one text segment of the generated context and one or more text chunks that are RAG retrieved. |
segment |
The grounded text segment of the generated text. |
- start_index |
- The first index of the grounded text. If the start_index is missing, then the start_index is 0 . |
- end_index |
- The last index of the grounded text. |
- text |
- The grounded text. |
grounding_chunk_indices |
The chunk that's used to ground the text segment. There can be more than one chunk used to ground the text. The index starts from 0 , which represents the first chunk in the grounding_chunks field. The ground is on the entire chunk. The part of the chunk that grounds the response isn't specified. |
confidence_scores |
The score that's used to ground the text on a given chunk. The highest score possible is 1 and the higher the score, the higher the confidence level. Each score matches each grounding_chunk_indices . Only the chunks with a confidence score of at least 0.6 are included in the output. |
Sample output¶
This code sample demonstrates the use of the fields to produce sample output.
candidates {
content {
role: "model"
parts {
text: "The rectangle is red and the background is white. The rectangle appears to be on some type of document editing software. \n"
}
}
grounding_metadata {
grounding_chunks {
retrieved_context {
uri: "a.txt"
title: "a.txt"
text: "Okay , I see a red rectangle on a white background . It looks like it\'s on some sort of document editing software. It has those small squares and circles around it, indicating that it\'s a selected object ."
}
}
grounding_chunks {
retrieved_context {
uri: "b.txt"
title: "b.txt"
text: "The video is identical to the last time I described it . It shows a blue rectangle on a white background."
}
}
grounding_chunks {
retrieved_context {
uri: "c.txt"
title: "c.txt"
text: "Okay , I remember the rectangle was blue in the past session . Now it is red.\n The red rectangle is still there . It \' s still in the same position on the white background, with the same handles around it. Nothing new is visible since last time.\n You \' re welcome . The red rectangle is still the only thing visible."
}
}
grounding_supports {
segment {
end_index: 49
text: "The rectangle is red and the background is white."
}
grounding_chunk_indices: 2
grounding_chunk_indices: 0
confidence_scores: 0.958192229
confidence_scores: 0.992316723
}
grounding_supports {
segment {
start_index: 50
end_index: 120
text: "The rectangle appears to be on some type of document editing software."
}
grounding_chunk_indices: 0
confidence_scores: 0.98374176
}
}
}
What's next¶
- To learn more about RAG context in the API reference, see Context.
- To learn more about RAG, see Vertex AI RAG Engine overview.