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import gradio as gr
from scrape_3gpp import *
from excel_chat import *
from classification import *
from chart_generation import *
from charts_advanced import *
from users_management import *
from code_df_custom import *


# Categories
categories = [
{
  "topic": "Confidentiality and Privacy Protection",
  "description": "This topic covers the protection of confidentiality, privacy, and integrity in security systems. It also includes authentication and authorization processes.",
  "experts": ["Mireille"]
},
{
  "topic": "Distributed Trust and End-User Trust Models",
  "description": "This topic focuses on distributed trust models and how end-users establish trust in secure systems.",
  "experts": ["Mireille", "Khawla"]
},
{
  "topic": "Secure Element and Key Provisioning",
  "description": "This topic involves the secure element in systems and the process of key provisioning.",
  "experts": ["Mireille"]
},
{
  "topic": "Residential Gateway Security",
  "description": "This topic covers the security aspects of Residential Gateways.",
  "experts": ["Mireille"]
},
{
  "topic": "Standalone Non-Public Network (SNPN) Inter-Connection and Cybersecurity",
  "description": "This topic focuses on the inter-connection of Standalone Non-Public Networks and related cyber-security topics.",
  "experts": ["Khawla"]
},
{
  "topic": "Distributed Ledger and Blockchain in SNPN",
  "description": "This topic covers the use of distributed ledger technology and blockchain in securing Standalone Non-Public Networks.",
  "experts": ["Khawla"]
},
{
  "topic": "Distributed Networks and Communication",
  "description": "This topic involves distributed networks such as mesh networks, ad-hoc networks, and multi-hop networks, and their cyber-security aspects.",
  "experts": ["Guillaume"]
},
{
  "topic": "Swarm of Drones and Unmanned Aerial Vehicles Network Infrastructure",
  "description": "This topic covers the network infrastructure deployed by Swarm of Drones and Unmanned Aerial Vehicles.",
  "experts": ["Guillaume"]
},
{
  "topic": "USIM and Over-the-Air Services",
  "description": "This topic involves USIM and related over-the-air services such as Steering of Roaming, roaming services, network selection, and UE configuration.",
  "experts": ["Vincent"]
},
{
  "topic": "Eco-Design and Societal Impact of Technology",
  "description": "This topic covers eco-design concepts, including energy saving, energy efficiency, carbon emissions, and the societal impact of technology.",
  "experts": ["Pierre"]
},
{
  "topic": "Service Requirements of New Services",
  "description": "This topic involves defining service requirements for new services, detecting low signals of new trends and technologies, and assessing their impact on USIM services or over-the-air services.",
  "experts": ["Ly-Thanh"]
},
{
  "topic": "Satellite and Non Terrestrial Networks",
  "description": "This topic covers satellite networks, Non Terrestrial Networks, Private Networks, IoT, Inter Satellite communication, and Radio Access Network.",
  "experts": ["Nicolas"]
},
{
  "topic": "Public Safety and Emergency Communication",
  "description": "This topic involves Public Safety Communication, Military Communication, Emergency Calls, Emergency Services, Disaster Communication Access, and other related areas.",
  "experts": ["Dorin"]
}
]

df_cate = pd.DataFrame(categories)

# def update_label(label1):
#     return gr.update(choices=list(df.columns))


with gr.Blocks() as demo:
    
    with gr.Row():
        with gr.Column():
            gr.Markdown("## Extraction, Classification and AI tool")
        with gr.Column():
            md_username = gr.Markdown(value='## Hi Guest!')
            btn_logout = gr.Button("Logout")
    with gr.Accordion(label="**Login** to keep user preferences", open=False):
        st_user = gr.State(value={"name":"Guest", "hashed_password":"e3b0c44298fc1c149afbf4c8996fb92427ae41e4649b934ca495991b7852b855", "history": { "keywords": [ "value1", "value3", "value4"], "prompts": [] }})
        with gr.Column():
            tb_user = gr.Textbox(label='Username')
            tb_pwd = gr.Textbox(label='Password', type='password')
        with gr.Row():
            btn_login = gr.Button('Login')

    with gr.Tab("File extraction"):
        gr.Markdown("### This part aims to extract the most relevant content and information about every contribution from a 3gpp meeting")
        gr.Markdown(" Put either just a link, or a link and an excel file with an 'Actions' column")
        with gr.Row():
            dd_url = gr.Dropdown(label="(e.g. https://www.3gpp.org/ftp/TSG_SA/WG1_Serv/TSGS1_105_Athens/Docs)", multiselect=False, value="https://www.3gpp.org/ftp/", allow_custom_value=True, scale=9)
            btn_search = gr.Button("Search")
        with gr.Accordion("Filter by file status", open=False):
            with gr.Row():
                dd_status =  gr.Dropdown(label="Status to look for (Optional)", allow_custom_value=False, multiselect=True, scale=7)
                btn_search_status = gr.Button("Search for status", scale=2)
        btn_extract = gr.Button("Extract excel from URL")


    with gr.Tab("Ask LLM"):
        gr.Markdown("### This section utilizes Large Language Models (LLMs) to query rows in an Excel file")
        dd_source_ask = gr.Dropdown(label="Source Column(s)", multiselect=True)
        tb_destcol = gr.Textbox(label="Destination column label (e.g. Summary, ELI5, PAB)")
        dd_prompt = gr.Dropdown(label="Prompt", allow_custom_value=True, multiselect=True, max_choices=1)
        dd_llm = gr.Dropdown(["Mistral Tiny","Mistral Small","Mistral Medium", "Claude Sonnet", "Claude Opus", "Groq (mixtral)"],value="Groq (mixtral)", label="Choose your LLM")
        with gr.Accordion("Filters", open=False):
            with gr.Row():
                dd_searchcol = gr.Dropdown(label="Column to look into (Optional)", value='[ALL]', multiselect=False, scale=4)
                dd_keywords =  gr.Dropdown(label="Words to look for (Optional)", multiselect=True, allow_custom_value=True, scale=5)
        mist_button = gr.Button("Ask AI")
            
    with gr.Tab("Classification by topic"):
        gr.Markdown("### This section will categories each contribution in your own personalized categories")
        dd_source_class = gr.Dropdown(label="Source Column", multiselect=False)
        gr.Markdown("### The predefined categories can be modified at any time")
        df_category = gr.DataFrame(label='categories', value=df_cate, interactive=True)
        btn_classif = gr.Button("Categorize")

    with gr.Tab(" Personalised Charts Generation"):
        with gr.Row():
            dd_label1 = gr.Dropdown(label="Label 1", multiselect=False)
            dd_label2 = gr.Dropdown(label="Label 2", value="", multiselect=False)
        btn_chart = gr.Button("Generate Bar Plot")
        plt_figure = gr.Plot()

    with gr.Tab("Meeting Report (charts)"):
        #gr.Markdown("## 🚧 Actuellement en maintenance 🚧")
        with gr.Tab("Overall"):
            btn_overall = gr.Button("Overall Review")
        with gr.Tab("By Expert"):
            dd_exp=gr.Dropdown(label="Experts", multiselect=False, allow_custom_value=True,)
            btn_expert = gr.Button("Top 10 by expert")
        with gr.Tab("By Company"):
            tb_com=gr.Textbox(label="Company Name",info="You can write 1, 2 or 3 company names at the same time")
            btn_type = gr.Button("Company info")
        with gr.Row():
            plt_chart = gr.Plot(label="Graphique")
            plt_chart2 = gr.Plot(label="Graphique")
            plt_chart3 = gr.Plot(label="Graphique")

    with gr.Tab("Code on your file"):
        gr.Markdown("### This section lets you add your own code to add functions and filters to edit the files")
        with gr.Accordion("Input DataFrame Preview", open=False):
            df_input = gr.DataFrame(interactive=False)
        gr.Markdown("```python\ndf = pd.read_excel(YOUR_FILE)\n```")
        cd_code = gr.Code(value="# Create a copy of the original DataFrame\nnew_df = df.copy()\n\n# Add a new column to the copy\nnew_df['NewColumn'] = 'New Value'", language='python')
        gr.Markdown("```python\nnew_df.to_excel(YOUR_NEW_FILE)\nreturn YOUR_NEW_FILE\n```")

        btn_run_code = gr.Button()
        df_output_code = gr.DataFrame(interactive=False)
        btn_export_df = gr.Button('Export df as excel')
    st_filename = gr.State()
    
    with gr.Accordion("Excel Preview", open=False):
          df_output = gr.DataFrame()
    fi_excel = gr.File(label="Excel File")

    # authentication
    btn_login.click(auth_user, inputs=[tb_user, tb_pwd], outputs=[st_user, md_username, dd_prompt, dd_keywords])
    tb_pwd.submit(auth_user, inputs=[tb_user, tb_pwd], outputs=[st_user, md_username, dd_prompt, dd_keywords])
    btn_logout.click(logout, inputs=None, outputs=[st_user, md_username, dd_prompt, dd_keywords])
    
    # 3GPP scraping
    btn_search_status.click(extract_statuses, inputs=dd_url, outputs=dd_status)
    btn_search.click(browse_folder, inputs=dd_url, outputs=dd_url)
    dd_url.change(browse_folder, inputs=dd_url, outputs=dd_url)
    #fi_excel.change(get_expert,inputs=fi_excel, outputs=dd_exp)
    fi_excel.change(get_columns, inputs=[fi_excel], outputs=[dd_source_ask, dd_source_class, dd_label1, dd_label2, dd_searchcol, df_output,st_filename, df_input])
    
    btn_extract.click(extractionPrincipale, inputs=[dd_url, fi_excel, dd_status], outputs=[fi_excel])
    
    mist_button.click(chat_with_mistral, inputs=[dd_source_ask, tb_destcol, dd_prompt, fi_excel, dd_url, dd_searchcol, dd_keywords, dd_llm, st_user], outputs=[fi_excel, df_output, dd_prompt, dd_keywords, st_user])
    
    btn_classif.click(classification, inputs=[dd_source_class, fi_excel, df_category], outputs=[fi_excel, df_output])
    
    btn_chart.click(create_bar_plot, inputs=[fi_excel, dd_label1, dd_label2], outputs=[plt_figure])

    btn_run_code.click(run_code, inputs=[fi_excel, cd_code], outputs=[df_output_code])
    btn_export_df.click(export_df, inputs=[df_output_code, st_filename], outputs=fi_excel)
    
    
    btn_overall.click(generate_company_chart,inputs=[fi_excel], outputs=[plt_chart])
    btn_overall.click(status_chart,inputs=[fi_excel], outputs=[plt_chart2])
    btn_overall.click(category_chart,inputs=[fi_excel], outputs=[plt_chart3])
    btn_expert.click(chart_by_expert,inputs=[fi_excel,dd_exp], outputs=[plt_chart])
    btn_type.click(company_document_type,inputs=[fi_excel,tb_com], outputs=[plt_chart])
    # dd_label1.change(update_label, inputs=[dd_label1], outputs=[dd_label2])

 
demo.launch(debug=True)