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import os
from typing import List, Dict, Tuple, Optional
from langchain.text_splitter import RecursiveCharacterTextSplitter
from langchain_community.document_loaders import PyPDFLoader
from langchain_huggingface import HuggingFaceEmbeddings
from langchain_community.vectorstores import Chroma
from langchain_community.chat_models import ChatOpenAI
from langchain.chains import create_extraction_chain
from langchain.prompts import PromptTemplate
from dataclasses import dataclass
import uuid
import json
from anthropic import Anthropic
import numpy as np
from rank_bm25 import BM25Okapi
import logging
from cohere import Client
import requests
from setup.environment import api_url
from rest_framework.response import Response
from langchain.schema import Document
listaContador = []
def reciprocal_rank_fusion(result_lists, weights=None):
"""Combine multiple ranked lists using reciprocal rank fusion"""
fused_scores = {}
num_lists = len(result_lists)
if weights is None:
weights = [1.0] * num_lists
for i in range(num_lists):
for doc_id, score in result_lists[i]:
if doc_id not in fused_scores:
fused_scores[doc_id] = 0
fused_scores[doc_id] += weights[i] * score
# Sort by score in descending order
sorted_results = sorted(fused_scores.items(), key=lambda x: x[1], reverse=True)
return sorted_results
os.environ["LANGCHAIN_TRACING_V2"] = "true"
os.environ["LANGCHAIN_ENDPOINT"] = "https://api.smith.langchain.com"
os.environ.get("LANGCHAIN_API_KEY")
os.environ["LANGCHAIN_PROJECT"] = "VELLA"
@dataclass
class DocumentChunk:
content: str
page_number: int
chunk_id: str
start_char: int
end_char: int
@dataclass
class RetrievalConfig:
num_chunks: int = 5
embedding_weight: float = 0.5
bm25_weight: float = 0.5
context_window: int = 3
chunk_overlap: int = 200
chunk_size: int = 1000
@dataclass
class ContextualizedChunk(DocumentChunk):
context: str = ""
embedding: Optional[np.ndarray] = None
bm25_score: Optional[float] = None
class DocumentSummarizer:
def __init__(
self,
openai_api_key: str,
cohere_api_key: str,
embedding_model,
chunk_size,
chunk_overlap,
num_k_rerank,
model_cohere_rerank,
):
self.openai_api_key = openai_api_key
self.cohere_client = Client(cohere_api_key)
self.embeddings = HuggingFaceEmbeddings(model_name=embedding_model)
self.text_splitter = RecursiveCharacterTextSplitter(
chunk_size=chunk_size, chunk_overlap=chunk_overlap
)
self.chunk_metadata = {} # Store chunk metadata for tracing
self.num_k_rerank = num_k_rerank
self.model_cohere_rerank = model_cohere_rerank
def load_and_split_document(self, pdf_path: str) -> List[DocumentChunk]:
"""Load PDF and split into chunks with metadata"""
loader = PyPDFLoader(pdf_path)
pages = (
loader.load()
) # Gera uma lista de objetos Document, sendo cada item da lista referente a UMA PÁGINA inteira do PDF.
chunks = []
char_count = 0
for page in pages:
text = page.page_content
page_chunks = self.text_splitter.split_text(
text
) # Quebra o item que é um Document de UMA PÁGINA inteira em um lista onde cada item é referente a um chunk, que são pedaços menores do que uma página.
for chunk in page_chunks:
chunk_id = str(uuid.uuid4())
start_char = text.find(
chunk
) # Retorna a posição onde se encontra o chunk dentro da página inteira
end_char = start_char + len(chunk)
doc_chunk = DocumentChunk( # Gera o objeto do chunk com informações adicionais, como a posição e id do chunk
content=chunk,
page_number=page.metadata.get("page") + 1, # 1-based page numbering
chunk_id=chunk_id,
start_char=char_count + start_char,
end_char=char_count + end_char,
)
chunks.append(doc_chunk)
# Store metadata for later retrieval
self.chunk_metadata[chunk_id] = {
"page": doc_chunk.page_number,
"start_char": doc_chunk.start_char,
"end_char": doc_chunk.end_char,
}
char_count += len(text)
return chunks
def load_and_split_text(self, text: str) -> List[DocumentChunk]:
"""Load Text and split into chunks with metadata - Criei essa função apenas para o ragas"""
page = Document(page_content=text, metadata={"page": 1})
chunks = []
char_count = 0
text = page.page_content
page_chunks = self.text_splitter.split_text(
text
) # Quebra o item que é um Document de UMA PÁGINA inteira em um lista onde cada item é referente a um chunk, que são pedaços menores do que uma página.
print("\n\n\n")
print("page_chunks: ", page_chunks)
for chunk in page_chunks:
chunk_id = str(uuid.uuid4())
start_char = text.find(
chunk
) # Retorna a posição onde se encontra o chunk dentro da página inteira
end_char = start_char + len(chunk)
doc_chunk = DocumentChunk( # Gera o objeto do chunk com informações adicionais, como a posição e id do chunk
content=chunk,
page_number=page.metadata.get("page") + 1, # 1-based page numbering
chunk_id=chunk_id,
start_char=char_count + start_char,
end_char=char_count + end_char,
)
chunks.append(doc_chunk)
# Store metadata for later retrieval
self.chunk_metadata[chunk_id] = {
"page": doc_chunk.page_number,
"start_char": doc_chunk.start_char,
"end_char": doc_chunk.end_char,
}
char_count += len(text)
return chunks
def create_vector_store(
self, chunks: List[DocumentChunk]
) -> Chroma: # Esta função nunca está sendo utilizada
"""Create vector store with metadata"""
texts = [chunk.content for chunk in chunks]
metadatas = [
{
"chunk_id": chunk.chunk_id,
"page": chunk.page_number,
"start_char": chunk.start_char,
"end_char": chunk.end_char,
}
for chunk in chunks
]
vector_store = Chroma.from_texts(
texts=texts, metadatas=metadatas, embedding=self.embeddings
)
return vector_store
def rerank_chunks( # Esta função nunca está sendo utilizada
self, chunks: List[Dict], query: str, k: int = 5
) -> List[Dict]:
"""
Rerank chunks using Cohere's reranking model.
Args:
chunks: List of dictionaries containing chunks and their metadata
query: Original search query
k: Number of top chunks to return
Returns:
List of reranked chunks with updated relevance scores
"""
try:
# Prepare documents for reranking
documents = [chunk["content"] for chunk in chunks]
# Get reranking scores from Cohere
results = self.cohere_client.rerank(
query=query,
documents=documents,
top_n=k,
model=self.model_cohere_rerank,
)
# Create reranked results with original metadata
reranked_chunks = []
for hit in results:
original_chunk = chunks[hit.index]
reranked_chunks.append(
{**original_chunk, "relevance_score": hit.relevance_score}
)
return reranked_chunks
except Exception as e:
logging.error(f"Reranking failed: {str(e)}")
return chunks[:k] # Fallback to original ordering
def generate_summary_with_sources( # Esta função nunca está sendo utilizada
self,
vector_store: Chroma,
query: str = "Summarize the main points of this document",
) -> List[Dict]:
"""Generate summary with source citations using reranking"""
# Retrieve more initial chunks for reranking
relevant_docs = vector_store.similarity_search_with_score(query, k=20)
# Prepare chunks for reranking
chunks = []
for doc, score in relevant_docs:
chunks.append(
{
"content": doc.page_content,
"page": doc.metadata["page"],
"chunk_id": doc.metadata["chunk_id"],
"relevance_score": score,
}
)
# Rerank chunks
reranked_chunks = self.rerank_chunks(chunks, query, k=self.num_k_rerank)
# Prepare context and sources from reranked chunks
contexts = []
sources = []
for chunk in reranked_chunks:
contexts.append(chunk["content"])
sources.append(
{
"content": chunk["content"],
"page": chunk["page"],
"chunk_id": chunk["chunk_id"],
"relevance_score": chunk["relevance_score"],
}
)
prompt_template = """
Based on the following context, provide multiple key points from the document.
For each point, create a new paragraph.
Each paragraph should be a complete, self-contained insight.
Context: {context}
Key points:
"""
prompt = PromptTemplate(template=prompt_template, input_variables=["context"])
llm = ChatOpenAI(
temperature=0, model_name="gpt-4o-mini", api_key=self.openai_api_key
)
response = llm.predict(prompt.format(context="\n\n".join(contexts)))
# Split the response into paragraphs
summaries = [p.strip() for p in response.split("\n\n") if p.strip()]
# Create structured output
structured_output = []
for idx, summary in enumerate(summaries):
# Associate each summary with the most relevant source
structured_output.append(
{
"content": summary,
"source": {
"page": sources[min(idx, len(sources) - 1)]["page"],
"text": sources[min(idx, len(sources) - 1)]["content"][:200]
+ "...",
"relevance_score": sources[min(idx, len(sources) - 1)][
"relevance_score"
],
},
}
)
return structured_output
def get_source_context(
self, chunk_id: str, window: int = 100
) -> Dict: # Esta função nunca está sendo utilizada
"""Get extended context around a specific chunk"""
metadata = self.chunk_metadata.get(chunk_id)
if not metadata:
return None
return {
"page": metadata["page"],
"start_char": metadata["start_char"],
"end_char": metadata["end_char"],
}
class ContextualRetriever:
def __init__(
self, config: RetrievalConfig, claude_api_key: str, claude_context_model
):
self.config = config # Este self.config no momento não está sendo utilizada para nada dentro desta classe. Analisar se deveria estar sendo utilizada.
self.claude_client = Anthropic(api_key=claude_api_key)
self.logger = logging.getLogger(__name__)
self.bm25 = None
self.claude_context_model = claude_context_model
def generate_context(self, full_text: str, chunk: DocumentChunk) -> str:
"""Generate contextual description using Claude"""
try:
# prompt = f"""<document>
# {full_text}
# </document>
# Here is the chunk we want to situate within the whole document
# <chunk>
# {chunk.content}
# </chunk>
# Please give a short succinct context to situate this chunk within the overall document for the purposes of improving search retrieval of the chunk. Answer only with the succinct context and nothing else."""
prompt = f"""You are a language model tasked with providing context to improve the retrieval of information from a chunk extracted from a document. Follow these steps internally (do not display reasoning or reflection in the final output):
1. **Chain of Thought (internal)**:
- Identify the document ID, which is the value between "NUM." and "- Pág".
- Identify the document name from the header.
2. **Reflection (internal)**:
- Confirm the document ID and name are correctly identified.
- Ensure the final context is concise and helpful.
3. **Final Response**:
- Provide a short context situating the *chunk* within the document, including the document ID and document name.
- Do not include any reasoning or reflection in your response.
**Example Usage:**
```
<document> {full_text} </document>
<chunk> {chunk.content} </chunk>
Please return only the succinct context (without displaying your internal reasoning), including the document ID and the document name.
```
"""
response = self.claude_client.messages.create(
model=self.claude_context_model,
max_tokens=100,
messages=[{"role": "user", "content": prompt}],
)
return response.content[
0
].text # O response.content é uma lista pois é passada uma lista de mensagens, e também retornado uma lista de mensagens, sendo a primeira a mais recente, que é a resposta do model
except Exception as e:
self.logger.error(
f"Context generation failed for chunk {chunk.chunk_id}: {str(e)}"
)
return ""
def contextualize_chunks(
self, full_text: List[Document], chunks: List[DocumentChunk]
) -> List[
ContextualizedChunk
]: # Pega um chunk e apenas adiciona uma propriedade de contexto a ela, sendo esta propriedade a resposta da função acima, que chama um Model do Claude para dizer o contexto de um chunk
"""Add context to all chunks"""
smaller_context = ""
contextualized_chunks = []
print("\n\n")
print("len(chunks): ", len(chunks))
for chunk in chunks:
contador_pagina = -1
while contador_pagina <= 1:
local_page = full_text[chunk.page_number + contador_pagina]
if local_page:
smaller_context += local_page.page_content
contador_pagina += 1
print("chunk.page_number: ", chunk.page_number)
context = self.generate_context(smaller_context, chunk)
contextualized_chunk = ContextualizedChunk(
content=chunk.content,
page_number=chunk.page_number,
chunk_id=chunk.chunk_id,
start_char=chunk.start_char,
end_char=chunk.end_char,
context=context,
)
contextualized_chunks.append(contextualized_chunk)
return contextualized_chunks
class EnhancedDocumentSummarizer(DocumentSummarizer):
def __init__(
self,
openai_api_key: str,
claude_api_key: str,
config: RetrievalConfig,
embedding_model,
chunk_size,
chunk_overlap,
num_k_rerank,
model_cohere_rerank,
claude_context_model,
prompt_relatorio,
gpt_model,
gpt_temperature,
id_modelo_do_usuario,
prompt_modelo,
):
super().__init__(
openai_api_key,
os.environ.get("COHERE_API_KEY"),
embedding_model,
chunk_size,
chunk_overlap,
num_k_rerank,
model_cohere_rerank,
)
self.config = config
self.contextual_retriever = ContextualRetriever(
config, claude_api_key, claude_context_model
)
self.logger = logging.getLogger(__name__)
self.prompt_relatorio = prompt_relatorio
self.gpt_model = gpt_model
self.gpt_temperature = gpt_temperature
self.id_modelo_do_usuario = id_modelo_do_usuario
self.prompt_modelo = prompt_modelo
def create_enhanced_vector_store(
self, chunks: List[ContextualizedChunk]
) -> Tuple[Chroma, BM25Okapi, List[str]]:
"""Create vector store and BM25 index with contextualized chunks"""
try:
# Prepare texts with context
texts = [f"{chunk.context} {chunk.content}" for chunk in chunks]
# Create vector store
metadatas = [
{
"chunk_id": chunk.chunk_id,
"page": chunk.page_number,
"start_char": chunk.start_char,
"end_char": chunk.end_char,
"context": chunk.context,
}
for chunk in chunks
]
vector_store = Chroma.from_texts(
texts=texts, metadatas=metadatas, embedding=self.embeddings
)
# Create BM25 index
tokenized_texts = [text.split() for text in texts]
bm25 = BM25Okapi(tokenized_texts)
# Get chunk IDs in order
chunk_ids = [chunk.chunk_id for chunk in chunks]
return vector_store, bm25, chunk_ids
except Exception as e:
self.logger.error(f"Error creating enhanced vector store: {str(e)}")
raise
def retrieve_with_rank_fusion(
self, vector_store: Chroma, bm25: BM25Okapi, chunk_ids: List[str], query: str
) -> List[Dict]:
"""Combine embedding and BM25 retrieval results"""
try:
# Get embedding results
embedding_results = vector_store.similarity_search_with_score(
query, k=self.config.num_chunks
)
# Convert embedding results to list of (chunk_id, score)
embedding_list = [
(doc.metadata["chunk_id"], 1 / (1 + score))
for doc, score in embedding_results
]
# Get BM25 results
tokenized_query = query.split()
bm25_scores = bm25.get_scores(tokenized_query)
# Convert BM25 scores to list of (chunk_id, score)
bm25_list = [
(chunk_ids[i], float(score)) for i, score in enumerate(bm25_scores)
]
# Sort bm25_list by score in descending order and limit to top N results
bm25_list = sorted(bm25_list, key=lambda x: x[1], reverse=True)[
: self.config.num_chunks
]
# Normalize BM25 scores
max_bm25 = max([score for _, score in bm25_list]) if bm25_list else 1
bm25_list = [(doc_id, score / max_bm25) for doc_id, score in bm25_list]
# Pass the lists to rank fusion
result_lists = [embedding_list, bm25_list]
weights = [self.config.embedding_weight, self.config.bm25_weight]
combined_results = reciprocal_rank_fusion(result_lists, weights=weights)
return combined_results
except Exception as e:
self.logger.error(f"Error in rank fusion retrieval: {str(e)}")
raise
def generate_enhanced_summary(
self,
vector_store: Chroma,
bm25: BM25Okapi,
chunk_ids: List[str],
query: str = "Summarize the main points of this document",
) -> List[Dict]:
"""Generate enhanced summary using both vector and BM25 retrieval"""
try:
# Get combined results using rank fusion
ranked_results = self.retrieve_with_rank_fusion(
vector_store, bm25, chunk_ids, query
)
# Prepare context and track sources
contexts = []
sources = []
# Get full documents for top results
for chunk_id, score in ranked_results[: self.config.num_chunks]:
results = vector_store.get(
where={"chunk_id": chunk_id}, include=["documents", "metadatas"]
)
if results["documents"]:
context = results["documents"][0]
metadata = results["metadatas"][0]
contexts.append(context)
sources.append(
{
"content": context,
"page": metadata["page"],
"chunk_id": chunk_id,
"relevance_score": score,
"context": metadata.get("context", ""),
}
)
url_request = f"{api_url}/modelo/{self.id_modelo_do_usuario}"
resposta = requests.get(url_request)
if resposta.status_code != 200:
return Response(
{
"error": "Ocorreu um problema. Pode ser que o modelo não tenha sido encontrado. Tente novamente e/ou entre em contato com a equipe técnica"
}
)
modelo_buscado = resposta.json()["modelo"]
llm = ChatOpenAI(
temperature=self.gpt_temperature,
model_name=self.gpt_model,
api_key=self.openai_api_key,
)
prompt_gerar_relatorio = PromptTemplate(
template=self.prompt_relatorio, input_variables=["context"]
)
relatorio_gerado = llm.predict(
prompt_gerar_relatorio.format(context="\n\n".join(contexts))
)
prompt_gerar_modelo = PromptTemplate(
template=self.prompt_modelo,
input_variables=["context", "modelo_usuario"],
)
modelo_gerado = llm.predict(
prompt_gerar_modelo.format(
context=relatorio_gerado, modelo_usuario=modelo_buscado
)
)
# Split the response into paragraphs
summaries = [p.strip() for p in modelo_gerado.split("\n\n") if p.strip()]
# Create structured output
structured_output = []
for idx, summary in enumerate(summaries):
source_idx = min(idx, len(sources) - 1)
structured_output.append(
{
"content": summary,
"source": {
"page": sources[source_idx]["page"],
"text": sources[source_idx]["content"][:200] + "...",
"context": sources[source_idx]["context"],
"relevance_score": sources[source_idx]["relevance_score"],
"chunk_id": sources[source_idx]["chunk_id"],
},
}
)
return structured_output
except Exception as e:
self.logger.error(f"Error generating enhanced summary: {str(e)}")
raise
async def get_llm_summary_answer_by_cursor_complete(
serializer, listaPDFs=None, contexto=None
):
"""Parâmetro "contexto" só deve ser passado quando quiser utilizar o teste com ragas, e assim, não quiser passar PDFs"""
allPdfsChunks = []
# Configuration
config = RetrievalConfig(
num_chunks=serializer["num_chunks_retrieval"],
embedding_weight=serializer["embedding_weight"],
bm25_weight=serializer["bm25_weight"],
context_window=serializer["context_window"],
chunk_overlap=serializer["chunk_overlap"],
)
# Initialize enhanced summarizer
summarizer = EnhancedDocumentSummarizer(
openai_api_key=os.environ.get("OPENAI_API_KEY"),
claude_api_key=os.environ.get("CLAUDE_API_KEY"),
config=config,
embedding_model=serializer["hf_embedding"],
chunk_overlap=serializer["chunk_overlap"],
chunk_size=serializer["chunk_size"],
num_k_rerank=serializer["num_k_rerank"],
model_cohere_rerank=serializer["model_cohere_rerank"],
claude_context_model=serializer["claude_context_model"],
prompt_relatorio=serializer["prompt_relatorio"],
gpt_model=serializer["model"],
gpt_temperature=serializer["gpt_temperature"],
id_modelo_do_usuario=serializer["id_modelo_do_usuario"],
prompt_modelo=serializer["prompt_modelo"],
)
full_text = ""
if contexto:
full_text = contexto
chunks = summarizer.load_and_split_text(full_text)
allPdfsChunks = chunks
else:
# # Load and process document
# pdf_path = "./Im_a_storyteller.pdf"
# chunks = summarizer.load_and_split_document(pdf_path)
# Load and process document
for pdf in listaPDFs:
pdf_path = pdf
chunks = summarizer.load_and_split_document(pdf_path)
allPdfsChunks = allPdfsChunks + chunks
# Get full text for contextualization
loader = PyPDFLoader(pdf_path)
pages = loader.load()
full_text = " ".join([page.page_content for page in pages])
# Contextualize chunks
contextualized_chunks = await summarizer.contextual_retriever.contextualize_chunks(
pages, allPdfsChunks
)
# Create enhanced vector store and BM25 index
vector_store, bm25, chunk_ids = summarizer.create_enhanced_vector_store(
contextualized_chunks
)
# Generate enhanced summary
structured_summaries = summarizer.generate_enhanced_summary(
vector_store, bm25, chunk_ids, serializer["user_message"]
)
# Output results as JSON
json_output = json.dumps(structured_summaries, indent=2)
print("\nStructured Summaries:")
print(json_output)
texto_completo = ""
for x in structured_summaries:
texto_completo = texto_completo + x["content"]
return {
"resultado": structured_summaries,
"texto_completo": texto_completo,
"parametros-utilizados": {
"num_chunks_retrieval": serializer["num_chunks_retrieval"],
"embedding_weight": serializer["embedding_weight"],
"bm25_weight": serializer["bm25_weight"],
"context_window": serializer["context_window"],
"chunk_overlap": serializer["chunk_overlap"],
"num_k_rerank": serializer["num_k_rerank"],
"model_cohere_rerank": serializer["model_cohere_rerank"],
"more_initial_chunks_for_reranking": serializer[
"more_initial_chunks_for_reranking"
],
"claude_context_model": serializer["claude_context_model"],
"gpt_temperature": serializer["gpt_temperature"],
"user_message": serializer["user_message"],
"model": serializer["model"],
"hf_embedding": serializer["hf_embedding"],
"chunk_size": serializer["chunk_size"],
"chunk_overlap": serializer["chunk_overlap"],
"prompt_relatorio": serializer["prompt_relatorio"],
"prompt_modelo": serializer["prompt_modelo"],
},
}
from ragas import evaluate
from langchain.chains import SequentialChain
from langchain.prompts import PromptTemplate
# from langchain.schema import ChainResult
from langchain.memory import SimpleMemory
def test_ragas(serializer, listaPDFs):
# Step 2: Setup RetrievalConfig and EnhancedDocumentSummarizer
config = RetrievalConfig(
num_chunks=serializer["num_chunks_retrieval"],
embedding_weight=serializer["embedding_weight"],
bm25_weight=serializer["bm25_weight"],
context_window=serializer["context_window"],
chunk_overlap=serializer["chunk_overlap"],
)
summarizer = EnhancedDocumentSummarizer(
openai_api_key=os.environ.get("OPENAI_API_KEY"),
claude_api_key=os.environ.get("CLAUDE_API_KEY"),
config=config,
embedding_model=serializer["hf_embedding"],
chunk_overlap=serializer["chunk_overlap"],
chunk_size=serializer["chunk_size"],
num_k_rerank=serializer["num_k_rerank"],
model_cohere_rerank=serializer["model_cohere_rerank"],
claude_context_model=serializer["claude_context_model"],
prompt_relatorio=serializer["prompt_relatorio"],
gpt_model=serializer["model"],
gpt_temperature=serializer["gpt_temperature"],
id_modelo_do_usuario=serializer["id_modelo_do_usuario"],
prompt_modelo=serializer["prompt_modelo"],
)
# Step 1: Define the components
def load_and_split_documents(pdf_list, summarizer):
"""Loads and splits PDF documents into chunks."""
all_chunks = []
for pdf_path in pdf_list:
chunks = summarizer.load_and_split_document(pdf_path)
all_chunks.extend(chunks)
return {"chunks": all_chunks}
def get_full_text_from_pdfs(pdf_list):
"""Gets the full text from PDFs for contextualization."""
full_text = []
for pdf_path in pdf_list:
loader = PyPDFLoader(pdf_path)
pages = loader.load()
text = " ".join([page.page_content for page in pages])
full_text.append(text)
return {"full_text": " ".join(full_text)}
def contextualize_chunks(full_text, chunks, contextual_retriever):
"""Adds context to chunks using Claude."""
contextualized_chunks = contextual_retriever.contextualize_chunks(
full_text, chunks
)
return {"contextualized_chunks": contextualized_chunks}
def create_vector_store(contextualized_chunks, summarizer):
"""Creates an enhanced vector store and BM25 index."""
vector_store, bm25, chunk_ids = summarizer.create_enhanced_vector_store(
contextualized_chunks
)
return {"vector_store": vector_store, "bm25": bm25, "chunk_ids": chunk_ids}
def generate_summary(vector_store, bm25, chunk_ids, query, summarizer):
"""Generates an enhanced summary using the vector store and BM25 index."""
structured_summaries = summarizer.generate_enhanced_summary(
vector_store, bm25, chunk_ids, query
)
return {"structured_summaries": structured_summaries}
# Step 3: Define Sequential Chain
chain = SequentialChain(
chains=[
lambda inputs: load_and_split_documents(inputs["pdf_list"], summarizer),
lambda inputs: get_full_text_from_pdfs(inputs["pdf_list"]),
lambda inputs: contextualize_chunks(
inputs["full_text"], inputs["chunks"], summarizer.contextual_retriever
),
lambda inputs: create_vector_store(
inputs["contextualized_chunks"], summarizer
),
lambda inputs: generate_summary(
inputs["vector_store"],
inputs["bm25"],
inputs["chunk_ids"],
inputs["user_message"],
summarizer,
),
],
input_variables=["pdf_list", "user_message"],
output_variables=["structured_summaries"],
)
from ragas.langchain.evalchain import RagasEvaluatorChain
from ragas.metrics import (
LLMContextRecall,
Faithfulness,
FactualCorrectness,
SemanticSimilarity,
)
from ragas import evaluate
from ragas.llms import LangchainLLMWrapper
# from ragas.embeddings import LangchainEmbeddingsWrapper
# evaluator_llm = LangchainLLMWrapper(ChatOpenAI(model="gpt-4o-mini"))
evaluator_llm = LangchainLLMWrapper(chain)
# evaluator_embeddings = LangchainEmbeddingsWrapper(OpenAIEmbeddings())
from datasets import load_dataset
dataset = load_dataset(
"explodinggradients/amnesty_qa", "english_v3", trust_remote_code=True
)
from ragas import EvaluationDataset
eval_dataset = EvaluationDataset.from_hf_dataset(dataset["eval"])
metrics = [
LLMContextRecall(llm=evaluator_llm),
FactualCorrectness(llm=evaluator_llm),
Faithfulness(llm=evaluator_llm),
# SemanticSimilarity(embeddings=evaluator_embeddings)
]
results = evaluate(dataset=eval_dataset, metrics=metrics)
print("results: ", results)
# Step 4: Run the Chain
inputs = {
"pdf_list": listaPDFs,
"user_message": serializer["user_message"],
}
# result = chain.run(inputs)
return Response({"msg": results})
# Step 5: Format the Output
# return {
# "resultado": result["structured_summaries"],
# "parametros-utilizados": {
# "num_chunks_retrieval": serializer["num_chunks_retrieval"],
# "embedding_weight": serializer["embedding_weight"],
# "bm25_weight": serializer["bm25_weight"],
# "context_window": serializer["context_window"],
# "chunk_overlap": serializer["chunk_overlap"],
# "num_k_rerank": serializer["num_k_rerank"],
# "model_cohere_rerank": serializer["model_cohere_rerank"],
# "more_initial_chunks_for_reranking": serializer["more_initial_chunks_for_reranking"],
# "claude_context_model": serializer["claude_context_model"],
# "gpt_temperature": serializer["gpt_temperature"],
# "user_message": serializer["user_message"],
# "model": serializer["model"],
# "hf_embedding": serializer["hf_embedding"],
# "chunk_size": serializer["chunk_size"],
# "chunk_overlap": serializer["chunk_overlap"],
# "prompt_relatorio": serializer["prompt_relatorio"],
# "prompt_modelo": serializer["prompt_modelo"],
# },
# }
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