Google Cloud Vertex AI 重排序器
The Vertex Search Ranking API is one of the standalone APIs in Vertex AI Agent Builder. It takes a list of documents and reranks those documents based on how relevant the documents are to a query. Compared to embeddings, which look only at the semantic similarity of a document and a query, the ranking API can give you precise scores for how well a document answers a given query. The ranking API can be used to improve the quality of search results after retrieving an initial set of candidate documents.
The ranking API is stateless so there's no need to index documents before calling the API. All you need to do is pass in the query and documents. This makes the API well suited for reranking documents from any document retrievers.
For more information, see Rank and rerank documents.
%pip install --upgrade --quiet langchain langchain-community langchain-google-community langchain-google-community[vertexaisearch] langchain-google-vertexai langchain-chroma langchain-text-splitters beautifulsoup4
设置
PROJECT_ID = ""
REGION = ""
RANKING_LOCATION_ID = "global" # @param {type:"string"}
# Initialize GCP project for Vertex AI
from google.cloud import aiplatform
aiplatform.init(project=PROJECT_ID, location=REGION)
加载并准备数据
对于这个示例,我们将使用Google 维基页面来演示 Vertex 排名 API 的工作原理。
我们使用标准的 load -> split -> embed data 流程。
嵌入是使用 Vertex 嵌入 API 模型 - textembedding-gecko@003 创建的
from langchain_chroma import Chroma
from langchain_community.document_loaders import WebBaseLoader
from langchain_google_vertexai import VertexAIEmbeddings
from langchain_text_splitters import RecursiveCharacterTextSplitter
vectordb = None
# Load wiki page
loader = WebBaseLoader("https://en.wikipedia.org/wiki/Google")
data = loader.load()
# Split doc into chunks
text_splitter = RecursiveCharacterTextSplitter(chunk_size=800, chunk_overlap=5)
splits = text_splitter.split_documents(data)
print(f"Your {len(data)} documents have been split into {len(splits)} chunks")
if vectordb is not None: # delete existing vectordb if it already exists
vectordb.delete_collection()
embedding = VertexAIEmbeddings(model_name="textembedding-gecko@003")
vectordb = Chroma.from_documents(documents=splits, embedding=embedding)
Your 1 documents have been split into 266 chunks
import pandas as pd
from langchain.retrievers.contextual_compression import ContextualCompressionRetriever
from langchain_google_community.vertex_rank import VertexAIRank
# Instantiate the VertexAIReranker with the SDK manager
reranker = VertexAIRank(
project_id=PROJECT_ID,
location_id=RANKING_LOCATION_ID,
ranking_config="default_ranking_config",
title_field="source",
top_n=5,
)
basic_retriever = vectordb.as_retriever(search_kwargs={"k": 5}) # fetch top 5 documents
# Create the ContextualCompressionRetriever with the VertexAIRanker as a Reranker
retriever_with_reranker = ContextualCompressionRetriever(
base_compressor=reranker, base_retriever=basic_retriever
)
测试Vertex排名API
让我们使用相同的查询来查询basic_retriever和retriever_with_reranker,并比较检索到的文档。
排名API接收来自basic_retriever的输入,并将其传递给排名API。
排名API用于提升排名质量,并确定一个分数,以表示每条记录与查询的相关性。
你可以看到未排序文档和已排序文档之间的区别。排名 API 会将语义最相关的文档移动到大型语言模型(LLM)上下文窗口的顶部,从而帮助其通过推理形成更好的答案。
import pandas as pd
# Use the basic_retriever and the retriever_with_reranker to get relevant documents
query = "how did the name google originate?"
retrieved_docs = basic_retriever.invoke(query)
reranked_docs = retriever_with_reranker.invoke(query)
# Create two lists of results for unranked and ranked docs
unranked_docs_content = [docs.page_content for docs in retrieved_docs]
ranked_docs_content = [docs.page_content for docs in reranked_docs]
# Create a comparison DataFrame using the padded lists
comparison_df = pd.DataFrame(
{
"Unranked Documents": unranked_docs_content,
"Ranked Documents": ranked_docs_content,
}
)
comparison_df
<div id="df-43c4f5f2-c31d-4664-85dd-60cad39bd5fa" class="colab-df-container">
<div>
<style scoped>
.dataframe tbody tr th:only-of-type {
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</style>
<table border="1" class="dataframe">
<thead>
<tr style="text-align: right;">
<th></th>
<th>Unranked Documents</th>
<th>Ranked Documents</th>
</tr>
</thead>
<tbody>
<tr>
<th>0</th>
<td>^ a b Brin, Sergey; Page, Lawrence (1998). "The anatomy of a large-scale hypertextual Web search engine" (PDF). Computer Networks and ISDN Systems. 30 (1–7): 107–117. CiteSeerX 10.1.1.115.5930. doi:10.1016/S0169-7552(98)00110-X. ISSN 0169-7552. S2CID 7587743. Archived (PDF) from the original on September 27, 2015. Retrieved April 7, 2019.\n\n^ "About: RankDex". Archived from the original on January 20, 2012. Retrieved September 29, 2010., RankDex\n\n^ "Method for node ranking in a linked database". Google Patents. Archived from the original on October 15, 2015. Retrieved October 19, 2015.\n\n^ Koller, David (January 2004). "Origin of the name "Google"". Stanford University. Archived from the original on June 27, 2012.</td>
<td>The name "Google" originated from a misspelling of "googol",[211][212] which refers to the number represented by a 1 followed by one-hundred zeros. Page and Brin write in their original paper on PageRank:[33] "We chose our system name, Google, because it is a common spelling of googol, or 10100[,] and fits well with our goal of building very large-scale search engines." Having found its way increasingly into everyday language, the verb "google" was added to the Merriam Webster Collegiate Dictionary and the Oxford English Dictionary in 2006, meaning "to use the Google search engine to obtain information on the Internet."[213][214] Google's mission statement, from the outset, was "to organize the world's information and make it universally accessible and useful",[215] and its unofficial</td>
</tr>
<tr>
<th>1</th>
<td>Eventually, they changed the name to Google; the name of the search engine was a misspelling of the word googol,[21][36][37] a very large number written 10100 (1 followed by 100 zeros), picked to signify that the search engine was intended to provide large quantities of information.[38]</td>
<td>Eventually, they changed the name to Google; the name of the search engine was a misspelling of the word googol,[21][36][37] a very large number written 10100 (1 followed by 100 zeros), picked to signify that the search engine was intended to provide large quantities of information.[38]</td>
</tr>
<tr>
<th>2</th>
<td>The name "Google" originated from a misspelling of "googol",[211][212] which refers to the number represented by a 1 followed by one-hundred zeros. Page and Brin write in their original paper on PageRank:[33] "We chose our system name, Google, because it is a common spelling of googol, or 10100[,] and fits well with our goal of building very large-scale search engines." Having found its way increasingly into everyday language, the verb "google" was added to the Merriam Webster Collegiate Dictionary and the Oxford English Dictionary in 2006, meaning "to use the Google search engine to obtain information on the Internet."[213][214] Google's mission statement, from the outset, was "to organize the world's information and make it universally accessible and useful",[215] and its unofficial</td>
<td>^ Meijer, Bart (January 3, 2019). "Google shifted $23 billion to tax haven Bermuda in 2017: filing". Reuters. Archived from the original on January 3, 2019. Retrieved January 3, 2019. Google moved 19.9 billion euros ($22.7 billion) through a Dutch shell company to Bermuda in 2017, as part of an arrangement that allows it to reduce its foreign tax bill\n\n^ Hamburger, Tom; Gold, Matea (April 13, 2014). "Google, once disdainful of lobbying, now a master of Washington influence". The Washington Post. Archived from the original on October 27, 2017. Retrieved August 22, 2017.\n\n^ Koller, David (January 2004). "Origin of the name, "Google."". Stanford University. Archived from the original on June 27, 2012. Retrieved May 28, 2006.</td>
</tr>
<tr>
<th>3</th>
<td>^ Meijer, Bart (January 3, 2019). "Google shifted $23 billion to tax haven Bermuda in 2017: filing". Reuters. Archived from the original on January 3, 2019. Retrieved January 3, 2019. Google moved 19.9 billion euros ($22.7 billion) through a Dutch shell company to Bermuda in 2017, as part of an arrangement that allows it to reduce its foreign tax bill\n\n^ Hamburger, Tom; Gold, Matea (April 13, 2014). "Google, once disdainful of lobbying, now a master of Washington influence". The Washington Post. Archived from the original on October 27, 2017. Retrieved August 22, 2017.\n\n^ Koller, David (January 2004). "Origin of the name, "Google."". Stanford University. Archived from the original on June 27, 2012. Retrieved May 28, 2006.</td>
<td>^ a b Brin, Sergey; Page, Lawrence (1998). "The anatomy of a large-scale hypertextual Web search engine" (PDF). Computer Networks and ISDN Systems. 30 (1–7): 107–117. CiteSeerX 10.1.1.115.5930. doi:10.1016/S0169-7552(98)00110-X. ISSN 0169-7552. S2CID 7587743. Archived (PDF) from the original on September 27, 2015. Retrieved April 7, 2019.\n\n^ "About: RankDex". Archived from the original on January 20, 2012. Retrieved September 29, 2010., RankDex\n\n^ "Method for node ranking in a linked database". Google Patents. Archived from the original on October 15, 2015. Retrieved October 19, 2015.\n\n^ Koller, David (January 2004). "Origin of the name "Google"". Stanford University. Archived from the original on June 27, 2012.</td>
</tr>
<tr>
<th>4</th>
<td>^ Swant, Marty. "The World's Valuable Brands". Forbes. Archived from the original on October 18, 2020. Retrieved January 19, 2022.\n\n^ "Best Global Brands". Interbrand. Archived from the original on February 1, 2022. Retrieved March 7, 2011.\n\n^ a b c d "How we started and where we are today – Google". about.google. Archived from the original on April 22, 2020. Retrieved April 24, 2021.\n\n^ Brezina, Corona (2013). Sergey Brin, Larry Page, Eric Schmidt, and Google (1st ed.). New York: Rosen Publishing Group. p. 18. ISBN 978-1-4488-6911-4. LCCN 2011039480.\n\n^ a b c "Our history in depth". Google Company. Archived from the original on April 1, 2012. Retrieved July 15, 2017.</td>
<td>^ Swant, Marty. "The World's Valuable Brands". Forbes. Archived from the original on October 18, 2020. Retrieved January 19, 2022.\n\n^ "Best Global Brands". Interbrand. Archived from the original on February 1, 2022. Retrieved March 7, 2011.\n\n^ a b c d "How we started and where we are today – Google". about.google. Archived from the original on April 22, 2020. Retrieved April 24, 2021.\n\n^ Brezina, Corona (2013). Sergey Brin, Larry Page, Eric Schmidt, and Google (1st ed.). New York: Rosen Publishing Group. p. 18. ISBN 978-1-4488-6911-4. LCCN 2011039480.\n\n^ a b c "Our history in depth". Google Company. Archived from the original on April 1, 2012. Retrieved July 15, 2017.</td>
</tr>
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让我们检查几个重新排序的文档。我们注意到检索器仍然返回相关的 Langchain 类型 文档,但在元数据字段中,我们也收到了来自排名 API 的 relevance_score。
for i in range(2):
print(f"Document {i}")
print(reranked_docs[i])
print("----------------------------------------------------------\n")
<style>
pre {
white-space: pre-wrap;
}
</style>
Document 0
page_content='The name "Google" originated from a misspelling of "googol",[211][212] which refers to the number represented by a 1 followed by one-hundred zeros. Page and Brin write in their original paper on PageRank:[33] "We chose our system name, Google, because it is a common spelling of googol, or 10100[,] and fits well with our goal of building very large-scale search engines." Having found its way increasingly into everyday language, the verb "google" was added to the Merriam Webster Collegiate Dictionary and the Oxford English Dictionary in 2006, meaning "to use the Google search engine to obtain information on the Internet."[213][214] Google\'s mission statement, from the outset, was "to organize the world\'s information and make it universally accessible and useful",[215] and its unofficial' metadata={'id': '2', 'relevance_score': 0.9800000190734863, 'source': 'https://en.wikipedia.org/wiki/Google'}
----------------------------------------------------------
Document 1
page_content='Eventually, they changed the name to Google; the name of the search engine was a misspelling of the word googol,[21][36][37] a very large number written 10100 (1 followed by 100 zeros), picked to signify that the search engine was intended to provide large quantities of information.[38]' metadata={'id': '1', 'relevance_score': 0.75, 'source': 'https://en.wikipedia.org/wiki/Google'}
----------------------------------------------------------
将所有内容整合在一起
这展示了一个完整的RAG链的示例,其中包含一个简单的提示模板,说明了如何使用Vertex排名API进行重新排序。
from langchain.chains import LLMChain
from langchain_core.documents import Document
from langchain_core.prompts import PromptTemplate
from langchain_core.runnables import RunnableParallel, RunnablePassthrough
from langchain_google_vertexai import VertexAI
llm = VertexAI(model_name="gemini-1.0-pro-002")
# Instantiate the VertexAIReranker with the SDK manager
reranker = VertexAIRank(
project_id=PROJECT_ID,
location_id=RANKING_LOCATION_ID,
ranking_config="default_ranking_config",
title_field="source", # metadata field key from your existing documents
top_n=5,
)
# value of k can be set to a higher value as well for tweaking performance
# eg: # of docs: basic_retriever(100) -> reranker(5)
basic_retriever = vectordb.as_retriever(search_kwargs={"k": 5}) # fetch top 5 documents
# Create the ContextualCompressionRetriever with the VertexAIRanker as a Reranker
retriever_with_reranker = ContextualCompressionRetriever(
base_compressor=reranker, base_retriever=basic_retriever
)
template = """
<context>
{context}
</context>
Question:
{query}
Don't give information outside the context or repeat your findings.
Answer:
"""
prompt = PromptTemplate.from_template(template)
reranker_setup_and_retrieval = RunnableParallel(
{"context": retriever_with_reranker, "query": RunnablePassthrough()}
)
chain = reranker_setup_and_retrieval | prompt | llm
<style>
pre {
white-space: pre-wrap;
}
</style>
query = "how did the name google originate?"
<style>
pre {
white-space: pre-wrap;
}
</style>
chain.invoke(query)
<style>
pre {
white-space: pre-wrap;
}
</style>
'The name "Google" originated as a misspelling of the word "googol," a mathematical term for the number 1 followed by 100 zeros. Larry Page and Sergey Brin, the founders of Google, chose the name because it reflected their goal of building a search engine that could handle massive amounts of information. \n'