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import os
import sys

# Add source directory to path so sibling imports work
sys.path.insert(0, os.path.join(os.path.dirname(os.path.abspath(__file__)), "Code+Folder", "src"))

import streamlit as st

try:
    from streamlit_feedback import streamlit_feedback
    FEEDBACK_AVAILABLE = True
except ImportError:
    FEEDBACK_AVAILABLE = False

from langchain_classic.chains import ConversationChain
from langchain_classic.memory import ConversationBufferWindowMemory
from langchain_core.messages import SystemMessage
from langchain_core.prompts import ChatPromptTemplate, HumanMessagePromptTemplate
from langchain_community.chat_models import ChatLiteLLM
from constants import PROVIDERS, TEMPLATE_CONTENT, comparison_prompt, resume_analysis_prompt, \
    job_description_analysis_prompt, gap_analysis_prompt, actionable_steps_prompt, experience_enhancement_prompt, \
    additional_qualifications_prompt, resume_tailoring_prompt, relevant_skills_highlight_prompt, \
    resume_formatting_prompt, resume_length_prompt
from directory_reader import DirectoryReader

st.set_page_config(page_title="Resume Reviewer")

# Initialize llm as None at the top level
llm = None
resume_chain = None

# Initialize variables
resume_content = None
job_description_content = None

# Sidebar
with st.sidebar:
    st.title('Resume Reviewer')
    st.write("Upload your resume for my recommendations. Job description is optional.")

    # Provider & Model selection
    st.write("---")
    st.write("### LLM Provider")
    provider_names = list(PROVIDERS.keys())
    selected_provider = st.selectbox("Provider", provider_names)
    provider_info = PROVIDERS[selected_provider]

    selected_model = st.selectbox("Model", provider_info["models"])

    st.write(f"Get an API key at [{selected_provider}]({provider_info['url']})")
    api_key = st.text_input(
        f"{selected_provider} API Key", type="password",
        help="Your API key will not be stored",
    )

    if api_key:
        os.environ[provider_info["env_var"]] = api_key
        llm = ChatLiteLLM(model=selected_model, temperature=0.0)
    else:
        st.info(f"Please enter your {selected_provider} API key to start")
        llm = None

    # Resume upload (file only)
    st.write("---")
    st.write("### Resume")
    st.write("Note: File size should be less than 5MB")
    resume_file = st.file_uploader("Upload your resume (PDF)", type=["pdf"], accept_multiple_files=False)

    # JD input (file or text, optional)
    st.write("---")
    st.write("### Job Description (optional)")
    jd_file = st.file_uploader("Upload a JD (txt file)", type=["txt"], accept_multiple_files=False)
    jd_text = st.text_area("Or paste the job description here:", height=150)

# Process resume
if resume_file is not None and api_key:
    try:
        with st.spinner("Processing resume file..."):
            directory_reader = DirectoryReader("", "")
            resume_content = directory_reader.extract_text_from_pdf(resume_file)
            st.sidebar.success("Resume processed successfully!")
    except Exception as e:
        st.sidebar.error(f"Error processing resume file: {str(e)}")
        resume_content = None

# Process JD - prefer file upload, fall back to text input
if jd_file is not None:
    try:
        from io import StringIO
        stringio = StringIO(jd_file.getvalue().decode('utf-8'))
        job_description_content = stringio.read()
        st.sidebar.success("JD processed successfully!")
    except Exception as e:
        st.sidebar.error(f"Error processing JD file: {str(e)}")
elif jd_text:
    job_description_content = jd_text

# Build system prompt based on what's provided
if resume_content and job_description_content:
    SYSTEM_PROMPT = "\n\n" + TEMPLATE_CONTENT + \
        "<RESUME STARTS HERE> {}. <RESUME ENDS HERE> with the job description: " \
        "<JOB DESCRIPTION STARTS HERE> {}.<JOB DESCRIPTION ENDS HERE>\n\n" \
        "Be crisp and clear in response. DO NOT provide the resume and job description in the response.\n\n".format(
            resume_content, job_description_content)
elif resume_content:
    SYSTEM_PROMPT = "\n\n" + TEMPLATE_CONTENT + \
        "<RESUME STARTS HERE> {}. <RESUME ENDS HERE>\n\n" \
        "No job description was provided. Focus on general resume feedback, strengths, and areas for improvement. " \
        "Be crisp and clear in response. DO NOT provide the resume in the response.\n\n".format(resume_content)
else:
    SYSTEM_PROMPT = "\n\n" + TEMPLATE_CONTENT


# Store LLM generated responses
if "messages" not in st.session_state.keys():
    st.session_state.messages = [{"role": "assistant", "content": "How may I assist you today?"}]

# Display or clear chat messages
for message in st.session_state.messages:
    if message["role"] != "feedback":
        with st.chat_message(message["role"]):
            st.write(message["content"])


def clear_chat_history():
    global resume_chain
    st.session_state.messages = [{"role": "assistant", "content": "How may I help you today?"}]
    if llm is not None:
        resume_chain = ConversationChain(
            llm=llm,
            prompt=prompt_template,
            memory=memory,
            verbose=False
        )


def generate_report():
    user_message = {"role": "user", "content": "Generate a Report!"}
    st.session_state.messages.append(user_message)
    if resume_content is None:
        st.error("Please upload a resume first!")
        return

    with st.chat_message("assistant"):
        with st.spinner("Just a moment..."):
            resume_analysis = generate_response(resume_analysis_prompt.format(resume_content))
            resume_formatting_analysis = generate_response(
                resume_formatting_prompt.format(resume_content, "N/A"))

            report = f"**Resume Analysis:**\n{resume_analysis}\n\n" \
                     f"**Resume Formatting:**\n{resume_formatting_analysis}"

            if job_description_content is not None:
                comparison_analysis = generate_response(
                    comparison_prompt.format(resume_content, job_description_content))
                job_description_analysis = generate_response(
                    job_description_analysis_prompt.format(job_description_content))
                gap_analysis = generate_response(
                    gap_analysis_prompt.format(resume_content, job_description_content))
                actionable_steps_analysis = generate_response(
                    actionable_steps_prompt.format(resume_content, job_description_content))
                experience_enhancement_analysis = generate_response(
                    experience_enhancement_prompt.format(resume_content, job_description_content))
                additional_qualifications_analysis = generate_response(
                    additional_qualifications_prompt.format(resume_content, job_description_content))
                resume_tailoring_analysis = generate_response(
                    resume_tailoring_prompt.format(resume_content, job_description_content))
                relevant_skills_highlight_analysis = generate_response(
                    relevant_skills_highlight_prompt.format(resume_content, job_description_content))
                resume_length_analysis = generate_response(
                    resume_length_prompt.format(resume_content, job_description_content))

                report += f"\n\n**Comparison Analysis:**\n{comparison_analysis}\n\n" \
                          f"**Job Description Analysis:**\n{job_description_analysis}\n\n" \
                          f"**Gap Analysis:**\n{gap_analysis}\n\n" \
                          f"**Actionable Steps:**\n{actionable_steps_analysis}\n\n" \
                          f"**Experience Enhancement:**\n{experience_enhancement_analysis}\n\n" \
                          f"**Additional Qualifications:**\n{additional_qualifications_analysis}\n\n" \
                          f"**Resume Tailoring:**\n{resume_tailoring_analysis}\n\n" \
                          f"**Relevant Skills Highlight:**\n{relevant_skills_highlight_analysis}\n\n" \
                          f"**Resume Length:**\n{resume_length_analysis}"

    report_message = {"role": "assistant", "content": report}
    st.session_state.messages.append(report_message)


# Setup the system message and prompt template
system_message = SystemMessage(content=TEMPLATE_CONTENT)
human_message = HumanMessagePromptTemplate.from_template("{history} User:{input} Assistant:")
prompt_template = ChatPromptTemplate(messages=[system_message, human_message])
memory = ConversationBufferWindowMemory(k=2)

# Initialize the chain if llm is available
if llm is not None:
    resume_chain = ConversationChain(
        llm=llm,
        prompt=prompt_template,
        memory=memory,
        verbose=False
    )

def generate_response(prompt_input):
    if resume_chain is None:
        return "Please enter your API key to use this application"
    output = resume_chain.predict(input=prompt_input)
    return output


st.sidebar.button('Clear Chat History', on_click=clear_chat_history)
st.sidebar.button('Generate Report', on_click=generate_report)


def get_feedback():
    st.session_state.messages.append({"role": "feedback", "content": st.session_state.fbk})


# At the beginning of your script, initialize the prompt in session state
if "current_prompt" not in st.session_state:
    st.session_state.current_prompt = ""

# When user enters a prompt
if prompt := st.chat_input():
    st.session_state.current_prompt = prompt
    st.session_state.messages.append({"role": "user", "content": prompt})
    with st.chat_message("user"):
        st.write(prompt)


def get_llm_response():
    with st.chat_message("assistant"):
        with st.spinner("Thinking..."):
            response = generate_response(st.session_state.current_prompt + SYSTEM_PROMPT)
            placeholder = st.empty()
            placeholder.markdown(response)
            full_response = response
    message = {"role": "assistant", "content": full_response}
    st.session_state.messages.append(message)

    # Only show feedback form if the feature is available
    if FEEDBACK_AVAILABLE:
        with st.form("form"):
            streamlit_feedback(feedback_type="thumbs", optional_text_label="[Optional] Please provide an explanation", key="fbk")
            st.form_submit_button('Save feedback', on_click=get_feedback)


# Generate a new response if last message is not from assistant
if st.session_state.messages[-1]["role"] not in ["assistant", "feedback"]:
    get_llm_response()

if st.session_state.messages[-1]["role"] in ["feedback"]:
    try:
        feedback_response = st.session_state.messages[-1]["content"]
        score_mappings = {
            "thumbs": {"thumbs_up": 1, "thumbs_down": 0},
        }
        score = score_mappings[feedback_response["type"]][feedback_response["score"]]
        if score == 0:
            feedback = st.session_state.messages[-1]["content"]['text']
            prompt = "Please respond according to feedback '{0}' on the previous response on \n".format(feedback) \
                     + st.session_state.messages[-3]["content"]
            get_llm_response()
    except:
        pass