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import pandas as pd
from tqdm import tqdm
import pinecone
import torch
from sentence_transformers import SentenceTransformer
from transformers import (
    pipeline,
    AutoTokenizer,
    AutoModelForCausalLM,
    AutoModelForSeq2SeqLM,
)
import streamlit as st
import openai


# Initialize models from HuggingFace


@st.experimental_singleton
def get_t5_model():
    return pipeline("summarization", model="t5-small", tokenizer="t5-small")


@st.experimental_singleton
def get_flan_t5_model():
    return pipeline(
        "summarization", model="google/flan-t5-small", tokenizer="google/flan-t5-small"
    )


@st.experimental_singleton
def get_mpnet_embedding_model():
    device = "cuda" if torch.cuda.is_available() else "cpu"
    model = SentenceTransformer(
        "sentence-transformers/all-mpnet-base-v2", device=device
    )
    model.max_seq_length = 512
    return model


@st.experimental_singleton
def get_sgpt_embedding_model():
    device = "cuda" if torch.cuda.is_available() else "cpu"
    model = SentenceTransformer(
        "Muennighoff/SGPT-125M-weightedmean-nli-bitfit", device=device
    )
    model.max_seq_length = 512
    return model


@st.experimental_memo
def save_key(api_key):
    return api_key


def query_pinecone(query, top_k, model, index):
    # generate embeddings for the query
    xq = model.encode([query]).tolist()
    # search pinecone index for context passage with the answer
    xc = index.query(xq, top_k=top_k, include_metadata=True)
    return xc


def format_query(query_results):
    # extract passage_text from Pinecone search result
    context = [result["metadata"]["Text"] for result in query_results["matches"]]
    return context


def gpt3_summary(text):
    response = openai.Completion.create(
        model="text-davinci-003",
        prompt=text + "\n\nTl;dr",
        temperature=0.1,
        max_tokens=512,
        top_p=1.0,
        frequency_penalty=0.0,
        presence_penalty=1,
    )
    return response.choices[0].text


def gpt3_qa(query, answer):
    response = openai.Completion.create(
        model="text-davinci-003",
        prompt="Q: " + query + "\nA: " + answer,
        temperature=0,
        max_tokens=512,
        top_p=1,
        frequency_penalty=0.0,
        presence_penalty=0.0,
        stop=["\n"],
    )
    return response.choices[0].text


st.title("Abstractive Question Answering - APPL")

query_text = st.text_input("Input Query", value="Who is the CEO of Apple?")

num_results = int(st.number_input("Number of Results to query", 1, 5, value=2))


# Choose encoder model

encoder_models_choice = ["MPNET", "SGPT"]

encoder_model = st.selectbox("Select Encoder Model", encoder_models_choice)


# Choose decoder model

decoder_models_choice = ["GPT3 (QA_davinci)", "GPT3 (text_davinci)", "T5", "FLAN-T5"]

decoder_model = st.selectbox("Select Decoder Model", decoder_models_choice)


if encoder_model == "MPNET":
    # Connect to pinecone environment
    pinecone.init(
        api_key="ea9fd320-6f8a-4edd-bf41-9e972b95cbf9", environment="us-east1-gcp"
    )
    pinecone_index_name = "week2-all-mpnet-base"
    pinecone_index = pinecone.Index(pinecone_index_name)
    retriever_model = get_mpnet_embedding_model()

elif encoder_model == "SGPT":
    # Connect to pinecone environment
    pinecone.init(
        api_key="0d8215d7-4ad5-4c76-8c45-4a40c0f6a1b7", environment="us-east1-gcp"
    )
    pinecone_index_name = "week2-sgpt-125m"
    pinecone_index = pinecone.Index(pinecone_index_name)
    retriever_model = get_sgpt_embedding_model()


query_results = query_pinecone(query_text, num_results, retriever_model, pinecone_index)

context_list = format_query(query_results)


st.subheader("Answer:")


if decoder_model == "GPT3 (text_davinci)":
    openai_key = st.text_input(
        "Enter OpenAI key",
        value="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",
        type="password",
    )
    api_key = save_key(openai_key)
    openai.api_key = api_key
    output_text = []
    for context_text in context_list:
        output_text.append(gpt3_summary(context_text))
    generated_text = " ".join(output_text)
    st.write(gpt3_summary(generated_text))

elif decoder_model == "GPT3 - QA":
    openai_key = st.text_input(
        "Enter OpenAI key",
        value="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",
        type="password",
    )
    api_key = save_key(openai_key)
    openai.api_key = api_key
    output_text = []
    for context_text in context_list:
        output_text.append(gpt3_qa(query_text, context_text))
    generated_text = " ".join(output_text)
    st.write(gpt3_qa(query_text, generated_text))

elif decoder_model == "T5":
    t5_pipeline = get_t5_model()
    output_text = []
    for context_text in context_list:
        output_text.append(t5_pipeline(context_text)[0]["summary_text"])
    generated_text = " ".join(output_text)
    st.write(t5_pipeline(generated_text)[0]["summary_text"])

elif decoder_model == "FLAN-T5":
    flan_t5_pipeline = get_flan_t5_model()
    output_text = []
    for context_text in context_list:
        output_text.append(flan_t5_pipeline(context_text)[0]["summary_text"])
    generated_text = " ".join(output_text)
    st.write(flan_t5_pipeline(generated_text)[0]["summary_text"])

show_retrieved_text = st.checkbox("Show Retrieved Text", value=False)

if show_retrieved_text:

    st.subheader("Retrieved Text:")

    for context_text in context_list:
        st.markdown(f"- {context_text}")