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import os
import random
from functools import cache
from operator import itemgetter

import langsmith
from langchain.memory import ConversationBufferWindowMemory
from langchain.retrievers import EnsembleRetriever
from langchain_community.document_transformers import LongContextReorder
from langchain_core.documents import Document
from langchain_core.output_parsers import StrOutputParser
from langchain_core.runnables import RunnableLambda
from langchain_openai.chat_models import ChatOpenAI

from .prompt_template import generate_prompt_template
from .retrievers_setup import (
    DenseRetrieverClient,
    SparseRetrieverClient,
    compression_retriever_setup,
    multi_query_retriever_setup,
)

# Helpers


def reorder_documents(docs: list[Document]) -> list[Document]:
    """Reorder documents to mitigate performance degradation with long contexts."""
    return LongContextReorder().transform_documents(docs)


def randomize_documents(documents: list[Document]) -> list[Document]:
    """Randomize documents to vary model recommendations."""
    random.shuffle(documents)
    return documents


class DocumentFormatter:
    def __init__(self, prefix: str):
        self.prefix = prefix

    def __call__(self, docs: list[Document]) -> str:
        """Format the Documents to markdown.
        Args:
            docs (list[Documents]): List of Langchain documents
        Returns:
            docs (str):
        """
        return f"\n---\n".join(
            [
                f"- {self.prefix} {i+1}:\n\n\t" + d.page_content
                for i, d in enumerate(docs)
            ]
        )


def create_langsmith_client():
    """Create a Langsmith client."""
    os.environ["LANGCHAIN_TRACING_V2"] = "true"
    os.environ["LANGCHAIN_PROJECT"] = "talltree-ai-assistant"
    os.environ["LANGCHAIN_ENDPOINT"] = "https://api.smith.langchain.com"
    langsmith_api_key = os.getenv("LANGCHAIN_API_KEY")
    if not langsmith_api_key:
        raise EnvironmentError("Missing environment variable: LANGCHAIN_API_KEY")
    return langsmith.Client()


# Set up Runnable and Memory


@cache
def get_rag_chain(
    model_name: str = "gpt-4", temperature: float = 0.2
) -> tuple[ChatOpenAI, ConversationBufferWindowMemory]:
    """Set up runnable and chat memory

    Args:
        model_name (str, optional): LLM model. Defaults to "gpt-4" 30012024.
        temperature (float, optional): Model temperature. Defaults to 0.2.

    Returns:
        Runnable, Memory: Chain and Memory
    """

    RETRIEVER_PARAMETERS = {
        "embeddings_model": "text-embedding-3-small",
        "k_dense_practitioners_db": 8,
        "k_sparse_practitioners_db": 15,
        "weights_ensemble_practitioners_db": [0.2, 0.8],
        "k_compression_practitioners_db": 12,
        "k_dense_talltree": 6,
        "k_compression_talltree": 6,
    }

    # Set up Langsmith to trace the chain
    langsmith_tracing = create_langsmith_client()

    # LLM and prompt template
    llm = ChatOpenAI(
        model_name=model_name,
        temperature=temperature,
    )

    prompt = generate_prompt_template()

    # Set retrievers pointing to the practitioners's dataset
    dense_retriever_client = DenseRetrieverClient(
        embeddings_model=RETRIEVER_PARAMETERS["embeddings_model"],
        collection_name="practitioners_db",
        search_type="similarity",
        k=RETRIEVER_PARAMETERS["k_dense_practitioners_db"],
    )  # k x 4 using multiquery retriever

    # Qdrant db as a retriever
    practitioners_db_dense_retriever = dense_retriever_client.get_dense_retriever()

    # Multiquery retriever using the dense retriever
    # This retriever can be passed or not to the EnsembleRetriever. It uses GPT-3.5-turbo.
    practitioners_db_dense_multiquery_retriever = multi_query_retriever_setup(
        practitioners_db_dense_retriever
    )

    # Sparse vector retriever
    sparse_retriever_client = SparseRetrieverClient(
        collection_name="practitioners_db_sparse_collection",
        vector_name="sparse_vector",
        splade_model_id="naver/splade-cocondenser-ensembledistil",
        k=RETRIEVER_PARAMETERS["k_sparse_practitioners_db"],
    )

    practitioners_db_sparse_retriever = sparse_retriever_client.get_sparse_retriever()

    # Ensemble retriever for hyprid search (dense retriever seems to work better but the dense retriever is good for acronyms like RMT)
    practitioners_ensemble_retriever = EnsembleRetriever(
        retrievers=[
            practitioners_db_dense_retriever,
            practitioners_db_sparse_retriever,
        ],
        weights=RETRIEVER_PARAMETERS["weights_ensemble_practitioners_db"],
    )

    # Compression retriever for practitioners db
    practitioners_db_compression_retriever = compression_retriever_setup(
        practitioners_ensemble_retriever,
        embeddings_model=RETRIEVER_PARAMETERS["embeddings_model"],
        k=RETRIEVER_PARAMETERS["k_compression_practitioners_db"],
    )

    # Set retrievers pointing to the tall_tree_db
    dense_retriever_client = DenseRetrieverClient(
        embeddings_model=RETRIEVER_PARAMETERS["embeddings_model"],
        collection_name="tall_tree_db",
        search_type="similarity",
        k=RETRIEVER_PARAMETERS["k_dense_talltree"],
    )

    tall_tree_db_dense_retriever = dense_retriever_client.get_dense_retriever()

    # Compression retriever for tall_tree_db
    tall_tree_db_compression_retriever = compression_retriever_setup(
        tall_tree_db_dense_retriever,
        embeddings_model=RETRIEVER_PARAMETERS["embeddings_model"],
        k=RETRIEVER_PARAMETERS["k_compression_talltree"],
    )

    # Set conversation history window memory. It only uses the last k interactions.
    memory = ConversationBufferWindowMemory(
        memory_key="history",
        return_messages=True,
        k=6,
    )

    # Set up runnable using LCEL
    setup_and_retrieval = {
        "practitioners_db": itemgetter("message")
        | practitioners_db_compression_retriever
        | DocumentFormatter("Practitioner #"),
        "tall_tree_db": itemgetter("message")
        | tall_tree_db_dense_retriever
        | DocumentFormatter("No."),
        "history": RunnableLambda(memory.load_memory_variables) | itemgetter("history"),
        "message": itemgetter("message"),
    }

    chain = setup_and_retrieval | prompt | llm | StrOutputParser()

    return chain, memory