Python API
A complete reference for RAGFlow's Python APIs. Before proceeding, please ensure you have your RAGFlow API key ready for authentication.
Run the following command to download the Python SDK:
pip install ragflow-sdk
OpenAI-Compatible API
Create chat completion
Creates a model response for the given historical chat conversation via OpenAI's API.
Parameters
model: str
, Required
The model used to generate the response. The server will parse this automatically, so you can set it to any value for now.
messages: list[object]
, Required
A list of historical chat messages used to generate the response. This must contain at least one message with the user
role.
stream: boolean
Whether to receive the response as a stream. Set this to false
explicitly if you prefer to receive the entire response in one go instead of as a stream.
Returns
- Success: Response message like OpenAI
- Failure:
Exception
Examples
from openai import OpenAI
model = "model"
client = OpenAI(api_key="ragflow-api-key", base_url=f"http://ragflow_address/api/v1/chats_openai/<chat_id>")
completion = client.chat.completions.create(
model=model,
messages=[
{"role": "system", "content": "You are a helpful assistant."},
{"role": "user", "content": "Who are you?"},
],
stream=True
)
stream = True
if stream:
for chunk in completion:
print(chunk)
else:
print(completion.choices[0].message.content)
DATASET MANAGEMENT
Create dataset
RAGFlow.create_dataset(
name: str,
avatar: str = "",
description: str = "",
embedding_model: str = "BAAI/bge-large-zh-v1.5",
permission: str = "me",
chunk_method: str = "naive",
parser_config: DataSet.ParserConfig = None
) -> DataSet
Creates a dataset.
Parameters
name: str
, Required
The unique name of the dataset to create. It must adhere to the following requirements:
- Maximum 65,535 characters.
- Case-insensitive.
avatar: str
Base64 encoding of the avatar. Defaults to ""
description: str
A brief description of the dataset to create. Defaults to ""
.
permission
Specifies who can access the dataset to create. Available options:
"me"
: (Default) Only you can manage the dataset."team"
: All team members can manage the dataset.
chunk_method, str
The chunking method of the dataset to create. Available options:
"naive"
: General (default)"manual
: Manual"qa"
: Q&A"table"
: Table"paper"
: Paper"book"
: Book"laws"
: Laws"presentation"
: Presentation"picture"
: Picture"one"
: One"knowledge_graph"
: Knowledge Graph
Ensure your LLM is properly configured on the Settings page before selecting this. Please also note that Knowledge Graph consumes a large number of Tokens!"email"
: Email
parser_config
The parser configuration of the dataset. A ParserConfig
object's attributes vary based on the selected chunk_method
:
chunk_method
="naive"
:
{"chunk_token_num":128,"delimiter":"\\n!?;。;!?","html4excel":False,"layout_recognize":True,"raptor":{"user_raptor":False}}
.chunk_method
="qa"
:
{"raptor": {"user_raptor": False}}
chunk_method
="manuel"
:
{"raptor": {"user_raptor": False}}
chunk_method
="table"
:
None
chunk_method
="paper"
:
{"raptor": {"user_raptor": False}}
chunk_method
="book"
:
{"raptor": {"user_raptor": False}}
chunk_method
="laws"
:
{"raptor": {"user_raptor": False}}
chunk_method
="picture"
:
None
chunk_method
="presentation"
:
{"raptor": {"user_raptor": False}}
chunk_method
="one"
:
None
chunk_method
="knowledge-graph"
:
{"chunk_token_num":128,"delimiter":"\\n!?;。;!?","entity_types":["organization","person","location","event","time"]}
chunk_method
="email"
:
None
Returns
- Success: A
dataset
object. - Failure:
Exception
Examples
from ragflow_sdk import RAGFlow
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.create_dataset(name="kb_1")
Delete datasets
RAGFlow.delete_datasets(ids: list[str] = None)
Deletes datasets by ID.
Parameters
ids: list[str]
, Required
The IDs of the datasets to delete. Defaults to None
. If it is not specified, all datasets will be deleted.
Returns
- Success: No value is returned.
- Failure:
Exception
Examples
rag_object.delete_datasets(ids=["id_1","id_2"])
List datasets
RAGFlow.list_datasets(
page: int = 1,
page_size: int = 30,
orderby: str = "create_time",
desc: bool = True,
id: str = None,
name: str = None
) -> list[DataSet]
Lists datasets.
Parameters
page: int
Specifies the page on which the datasets will be displayed. Defaults to 1
.
page_size: int
The number of datasets on each page. Defaults to 30
.
orderby: str
The field by which datasets should be sorted. Available options:
"create_time"
(default)"update_time"
desc: bool
Indicates whether the retrieved datasets should be sorted in descending order. Defaults to True
.
id: str
The ID of the dataset to retrieve. Defaults to None
.
name: str
The name of the dataset to retrieve. Defaults to None
.
Returns
- Success: A list of
DataSet
objects. - Failure:
Exception
.
Examples
List all datasets
for dataset in rag_object.list_datasets():
print(dataset)
Retrieve a dataset by ID
dataset = rag_object.list_datasets(id = "id_1")
print(dataset[0])
Update dataset
DataSet.update(update_message: dict)
Updates configurations for the current dataset.
Parameters
update_message: dict[str, str|int]
, Required
A dictionary representing the attributes to update, with the following keys:
"name"
:str
The revised name of the dataset."embedding_model"
:str
The updated embedding model name.- Ensure that
"chunk_count"
is0
before updating"embedding_model"
.
- Ensure that
"chunk_method"
:str
The chunking method for the dataset. Available options:"naive"
: General"manual
: Manual"qa"
: Q&A"table"
: Table"paper"
: Paper"book"
: Book"laws"
: Laws"presentation"
: Presentation"picture"
: Picture"one"
: One"email"
: Email
Returns
- Success: No value is returned.
- Failure:
Exception
Examples
from ragflow_sdk import RAGFlow
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.list_datasets(name="kb_name")
dataset.update({"embedding_model":"BAAI/bge-zh-v1.5", "chunk_method":"manual"})
FILE MANAGEMENT WITHIN DATASET
Upload documents
DataSet.upload_documents(document_list: list[dict])
Uploads documents to the current dataset.
Parameters
document_list: list[dict]
, Required
A list of dictionaries representing the documents to upload, each containing the following keys:
"display_name"
: (Optional) The file name to display in the dataset."blob"
: (Optional) The binary content of the file to upload.
Returns
- Success: No value is returned.
- Failure:
Exception
Examples
dataset = rag_object.create_dataset(name="kb_name")
dataset.upload_documents([{"display_name": "1.txt", "blob": "<BINARY_CONTENT_OF_THE_DOC>"}, {"display_name": "2.pdf", "blob": "<BINARY_CONTENT_OF_THE_DOC>"}])
Update document
Document.update(update_message:dict)
Updates configurations for the current document.
Parameters
update_message: dict[str, str|dict[]]
, Required
A dictionary representing the attributes to update, with the following keys:
"display_name"
:str
The name of the document to update."meta_fields"
:dict[str, Any]
The meta fields of the document."chunk_method"
:str
The parsing method to apply to the document."naive"
: General"manual
: Manual"qa"
: Q&A"table"
: Table"paper"
: Paper"book"
: Book"laws"
: Laws"presentation"
: Presentation"picture"
: Picture"one"
: One"knowledge_graph"
: Knowledge Graph
Ensure your LLM is properly configured on the Settings page before selecting this. Please also note that Knowledge Graph consumes a large number of Tokens!"email"
: Email
"parser_config"
:dict[str, Any]
The parsing configuration for the document. Its attributes vary based on the selected"chunk_method"
:"chunk_method"
="naive"
:
{"chunk_token_num":128,"delimiter":"\\n!?;。;!?","html4excel":False,"layout_recognize":True,"raptor":{"user_raptor":False}}
.chunk_method
="qa"
:
{"raptor": {"user_raptor": False}}
chunk_method
="manuel"
:
{"raptor": {"user_raptor": False}}
chunk_method
="table"
:
None
chunk_method
="paper"
:
{"raptor": {"user_raptor": False}}
chunk_method
="book"
:
{"raptor": {"user_raptor": False}}
chunk_method
="laws"
:
{"raptor": {"user_raptor": False}}
chunk_method
="presentation"
:
{"raptor": {"user_raptor": False}}
chunk_method
="picture"
:
None
chunk_method
="one"
:
None
chunk_method
="knowledge-graph"
:
{"chunk_token_num":128,"delimiter":"\\n!?;。;!?","entity_types":["organization","person","location","event","time"]}
chunk_method
="email"
:
None
Returns
- Success: No value is returned.
- Failure:
Exception
Examples
from ragflow_sdk import RAGFlow
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.list_datasets(id='id')
dataset = dataset[0]
doc = dataset.list_documents(id="wdfxb5t547d")
doc = doc[0]
doc.update([{"parser_config": {"chunk_token_count": 256}}, {"chunk_method": "manual"}])
Download document
Document.download() -> bytes
Downloads the current document.
Returns
The downloaded document in bytes.
Examples
from ragflow_sdk import RAGFlow
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.list_datasets(id="id")
dataset = dataset[0]
doc = dataset.list_documents(id="wdfxb5t547d")
doc = doc[0]
open("~/ragflow.txt", "wb+").write(doc.download())
print(doc)
List documents
Dataset.list_documents(id:str =None, keywords: str=None, page: int=1, page_size:int = 30, order_by:str = "create_time", desc: bool = True) -> list[Document]
Lists documents in the current dataset.
Parameters
id: str
The ID of the document to retrieve. Defaults to None
.
keywords: str
The keywords used to match document titles. Defaults to None
.
page: int
Specifies the page on which the documents will be displayed. Defaults to 1
.
page_size: int
The maximum number of documents on each page. Defaults to 30
.
orderby: str
The field by which documents should be sorted. Available options:
"create_time"
(default)"update_time"
desc: bool
Indicates whether the retrieved documents should be sorted in descending order. Defaults to True
.
Returns
- Success: A list of
Document
objects. - Failure:
Exception
.
A Document
object contains the following attributes:
id
: The document ID. Defaults to""
.name
: The document name. Defaults to""
.thumbnail
: The thumbnail image of the document. Defaults toNone
.dataset_id
: The dataset ID associated with the document. Defaults toNone
.chunk_method
The chunk method name. Defaults to"naive"
.source_type
: The source type of the document. Defaults to"local"
.type
: Type or category of the document. Defaults to""
. Reserved for future use.created_by
:str
The creator of the document. Defaults to""
.size
:int
The document size in bytes. Defaults to0
.token_count
:int
The number of tokens in the document. Defaults to0
.chunk_count
:int
The number of chunks in the document. Defaults to0
.progress
:float
The current processing progress as a percentage. Defaults to0.0
.progress_msg
:str
A message indicating the current progress status. Defaults to""
.process_begin_at
:datetime
The start time of document processing. Defaults toNone
.process_duation
:float
Duration of the processing in seconds. Defaults to0.0
.run
:str
The document's processing status:"UNSTART"
(default)"RUNNING"
"CANCEL"
"DONE"
"FAIL"
status
:str
Reserved for future use.parser_config
:ParserConfig
Configuration object for the parser. Its attributes vary based on the selectedchunk_method
:chunk_method
="naive"
:
{"chunk_token_num":128,"delimiter":"\\n!?;。;!?","html4excel":False,"layout_recognize":True,"raptor":{"user_raptor":False}}
.chunk_method
="qa"
:
{"raptor": {"user_raptor": False}}
chunk_method
="manuel"
:
{"raptor": {"user_raptor": False}}
chunk_method
="table"
:
None
chunk_method
="paper"
:
{"raptor": {"user_raptor": False}}
chunk_method
="book"
:
{"raptor": {"user_raptor": False}}
chunk_method
="laws"
:
{"raptor": {"user_raptor": False}}
chunk_method
="presentation"
:
{"raptor": {"user_raptor": False}}
chunk_method
="picure"
:
None
chunk_method
="one"
:
None
chunk_method
="knowledge-graph"
:
{"chunk_token_num":128,"delimiter": "\\n!?;。;!?","entity_types":["organization","person","location","event","time"]}
chunk_method
="email"
:
None
Examples
from ragflow_sdk import RAGFlow
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.create_dataset(name="kb_1")
filename1 = "~/ragflow.txt"
blob = open(filename1 , "rb").read()
dataset.upload_documents([{"name":filename1,"blob":blob}])
for doc in dataset.list_documents(keywords="rag", page=0, page_size=12):
print(doc)
Delete documents
DataSet.delete_documents(ids: list[str] = None)
Deletes documents by ID.
Parameters
ids: list[list]
The IDs of the documents to delete. Defaults to None
. If it is not specified, all documents in the dataset will be deleted.
Returns
- Success: No value is returned.
- Failure:
Exception
Examples
from ragflow_sdk import RAGFlow
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.list_datasets(name="kb_1")
dataset = dataset[0]
dataset.delete_documents(ids=["id_1","id_2"])
Parse documents
DataSet.async_parse_documents(document_ids:list[str]) -> None
Parses documents in the current dataset.
Parameters
document_ids: list[str]
, Required
The IDs of the documents to parse.
Returns
- Success: No value is returned.
- Failure:
Exception
Examples
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.create_dataset(name="dataset_name")
documents = [
{'display_name': 'test1.txt', 'blob': open('./test_data/test1.txt',"rb").read()},
{'display_name': 'test2.txt', 'blob': open('./test_data/test2.txt',"rb").read()},
{'display_name': 'test3.txt', 'blob': open('./test_data/test3.txt',"rb").read()}
]
dataset.upload_documents(documents)
documents = dataset.list_documents(keywords="test")
ids = []
for document in documents:
ids.append(document.id)
dataset.async_parse_documents(ids)
print("Async bulk parsing initiated.")
Stop parsing documents
DataSet.async_cancel_parse_documents(document_ids:list[str])-> None
Stops parsing specified documents.
Parameters
document_ids: list[str]
, Required
The IDs of the documents for which parsing should be stopped.
Returns
- Success: No value is returned.
- Failure:
Exception
Examples
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.create_dataset(name="dataset_name")
documents = [
{'display_name': 'test1.txt', 'blob': open('./test_data/test1.txt',"rb").read()},
{'display_name': 'test2.txt', 'blob': open('./test_data/test2.txt',"rb").read()},
{'display_name': 'test3.txt', 'blob': open('./test_data/test3.txt',"rb").read()}
]
dataset.upload_documents(documents)
documents = dataset.list_documents(keywords="test")
ids = []
for document in documents:
ids.append(document.id)
dataset.async_parse_documents(ids)
print("Async bulk parsing initiated.")
dataset.async_cancel_parse_documents(ids)
print("Async bulk parsing cancelled.")
CHUNK MANAGEMENT WITHIN DATASET
Add chunk
Document.add_chunk(content:str, important_keywords:list[str] = []) -> Chunk
Adds a chunk to the current document.
Parameters
content: str
, Required
The text content of the chunk.
important_keywords: list[str]
The key terms or phrases to tag with the chunk.
Returns
- Success: A
Chunk
object. - Failure:
Exception
.
A Chunk
object contains the following attributes:
id
:str
: The chunk ID.content
:str
The text content of the chunk.important_keywords
:list[str]
A list of key terms or phrases tagged with the chunk.create_time
:str
The time when the chunk was created (added to the document).create_timestamp
:float
The timestamp representing the creation time of the chunk, expressed in seconds since January 1, 1970.dataset_id
:str
The ID of the associated dataset.document_name
:str
The name of the associated document.document_id
:str
The ID of the associated document.available
:bool
The chunk's availability status in the dataset. Value options:False
: UnavailableTrue
: Available (default)
Examples
from ragflow_sdk import RAGFlow
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
datasets = rag_object.list_datasets(id="123")
dataset = datasets[0]
doc = dataset.list_documents(id="wdfxb5t547d")
doc = doc[0]
chunk = doc.add_chunk(content="xxxxxxx")
List chunks
Document.list_chunks(keywords: str = None, page: int = 1, page_size: int = 30, id : str = None) -> list[Chunk]
Lists chunks in the current document.
Parameters
keywords: str
The keywords used to match chunk content. Defaults to None
page: int
Specifies the page on which the chunks will be displayed. Defaults to 1
.
page_size: int
The maximum number of chunks on each page. Defaults to 30
.
id: str
The ID of the chunk to retrieve. Default: None
Returns
- Success: A list of
Chunk
objects. - Failure:
Exception
.
Examples
from ragflow_sdk import RAGFlow
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.list_datasets("123")
dataset = dataset[0]
docs = dataset.list_documents(keywords="test", page=1, page_size=12)
for chunk in docs[0].list_chunks(keywords="rag", page=0, page_size=12):
print(chunk)
Delete chunks
Document.delete_chunks(chunk_ids: list[str])
Deletes chunks by ID.
Parameters
chunk_ids: list[str]
The IDs of the chunks to delete. Defaults to None
. If it is not specified, all chunks of the current document will be deleted.
Returns
- Success: No value is returned.
- Failure:
Exception
Examples
from ragflow_sdk import RAGFlow
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.list_datasets(id="123")
dataset = dataset[0]
doc = dataset.list_documents(id="wdfxb5t547d")
doc = doc[0]
chunk = doc.add_chunk(content="xxxxxxx")
doc.delete_chunks(["id_1","id_2"])
Update chunk
Chunk.update(update_message: dict)
Updates content or configurations for the current chunk.
Parameters
update_message: dict[str, str|list[str]|int]
Required
A dictionary representing the attributes to update, with the following keys:
"content"
:str
The text content of the chunk."important_keywords"
:list[str]
A list of key terms or phrases to tag with the chunk."available"
:bool
The chunk's availability status in the dataset. Value options:False
: UnavailableTrue
: Available (default)
Returns
- Success: No value is returned.
- Failure:
Exception
Examples
from ragflow_sdk import RAGFlow
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.list_datasets(id="123")
dataset = dataset[0]
doc = dataset.list_documents(id="wdfxb5t547d")
doc = doc[0]
chunk = doc.add_chunk(content="xxxxxxx")
chunk.update({"content":"sdfx..."})
Retrieve chunks
RAGFlow.retrieve(question:str="", dataset_ids:list[str]=None, document_ids=list[str]=None, page:int=1, page_size:int=30, similarity_threshold:float=0.2, vector_similarity_weight:float=0.3, top_k:int=1024,rerank_id:str=None,keyword:bool=False,higlight:bool=False) -> list[Chunk]
Retrieves chunks from specified datasets.
Parameters
question: str
, Required
The user query or query keywords. Defaults to ""
.
dataset_ids: list[str]
, Required
The IDs of the datasets to search. Defaults to None
. If you do not set this argument, ensure that you set document_ids
.
document_ids: list[str]
The IDs of the documents to search. Defaults to None
. You must ensure all selected documents use the same embedding model. Otherwise, an error will occur. If you do not set this argument, ensure that you set dataset_ids
.
page: int
The starting index for the documents to retrieve. Defaults to 1
.
page_size: int
The maximum number of chunks to retrieve. Defaults to 30
.
Similarity_threshold: float
The minimum similarity score. Defaults to 0.2
.
vector_similarity_weight: float
The weight of vector cosine similarity. Defaults to 0.3
. If x represents the vector cosine similarity, then (1 - x) is the term similarity weight.
top_k: int
The number of chunks engaged in vector cosine computation. Defaults to 1024
.
rerank_id: str
The ID of the rerank model. Defaults to None
.
keyword: bool
Indicates whether to enable keyword-based matching:
True
: Enable keyword-based matching.False
: Disable keyword-based matching (default).
highlight: bool
Specifies whether to enable highlighting of matched terms in the results:
True
: Enable highlighting of matched terms.False
: Disable highlighting of matched terms (default).
Returns
- Success: A list of
Chunk
objects representing the document chunks. - Failure:
Exception
Examples
from ragflow_sdk import RAGFlow
rag_object = RAGFlow(api_key="<YOUR_API_KEY>", base_url="http://<YOUR_BASE_URL>:9380")
dataset = rag_object.list_datasets(name="ragflow")
dataset = dataset[0]
name = 'ragflow_test.txt'
path = './test_data/ragflow_test.txt'
documents =[{"display_name":"test_retrieve_chunks.txt","blob":open(path, "rb").read()}]
docs = dataset.upload_documents(documents)
doc = docs[0]
doc.add_chunk(content="This is a chunk addition test")
for c in rag_object.retrieve(dataset_ids=[dataset.id],document_ids=[doc.id]):
print(c)
CHAT ASSISTANT MANAGEMENT
Create chat assistant
RAGFlow.create_chat(
name: str,
avatar: str = "",
dataset_ids: list[str] = [],
llm: Chat.LLM = None,
prompt: Chat.Prompt = None
) -> Chat
Creates a chat assistant.
Parameters
name: str
, Required
The name of the chat assistant.
avatar: str
Base64 encoding of the avatar. Defaults to ""
.
dataset_ids: list[str]
The IDs of the associated datasets. Defaults to [""]
.
llm: Chat.LLM
The LLM settings for the chat assistant to create. Defaults to None
. When the value is None
, a dictionary with the following values will be generated as the default. An LLM
object contains the following attributes:
model_name
:str
The chat model name. If it isNone
, the user's default chat model will be used.temperature
:float
Controls the randomness of the model's predictions. A lower temperature results in more conservative responses, while a higher temperature yields more creative and diverse responses. Defaults to0.1
.top_p
:float
Also known as “nucleus sampling”, this parameter sets a threshold to select a smaller set of words to sample from. It focuses on the most likely words, cutting off the less probable ones. Defaults to0.3
presence_penalty
:float
This discourages the model from repeating the same information by penalizing words that have already appeared in the conversation. Defaults to0.2
.frequency penalty
:float
Similar to the presence penalty, this reduces the model’s tendency to repeat the same words frequently. Defaults to0.7
.max_token
:int
The maximum length of the model's output, measured in the number of tokens (words or pieces of words). Defaults to512
. If disabled, you lift the maximum token limit, allowing the model to determine the number of tokens in its responses.
prompt: Chat.Prompt
Instructions for the LLM to follow. A Prompt
object contains the following attributes:
similarity_threshold
:float
RAGFlow employs either a combination of weighted keyword similarity and weighted vector cosine similarity, or a combination of weighted keyword similarity and weighted reranking score during retrieval. If a similarity score falls below this threshold, the corresponding chunk will be excluded from the results. The default value is0.2
.keywords_similarity_weight
:float
This argument sets the weight of keyword similarity in the hybrid similarity score with vector cosine similarity or reranking model similarity. By adjusting this weight, you can control the influence of keyword similarity in relation to other similarity measures. The default value is0.7
.top_n
:int
This argument specifies the number of top chunks with similarity scores above thesimilarity_threshold
that are fed to the LLM. The LLM will only access these 'top N' chunks. The default value is8
.variables
:list[dict[]]
This argument lists the variables to use in the 'System' field of Chat Configurations. Note that:knowledge
is a reserved variable, which represents the retrieved chunks.- All the variables in 'System' should be curly bracketed.
- The default value is
[{"key": "knowledge", "optional": True}]
.
rerank_model
:str
If it is not specified, vector cosine similarity will be used; otherwise, reranking score will be used. Defaults to""
.top_k
:int
Refers to the process of reordering or selecting the top-k items from a list or set based on a specific ranking criterion. Default to 1024.empty_response
:str
If nothing is retrieved in the dataset for the user's question, this will be used as the response. To allow the LLM to improvise when nothing is found, leave this blank. Defaults toNone
.opener
:str
The opening greeting for the user. Defaults to"Hi! I am your assistant, can I help you?"
.show_quote
:bool
Indicates whether the source of text should be displayed. Defaults toTrue
.prompt
:str
The prompt content.