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# Summarization_General_Lib.py
#########################################
# General Summarization Library
# This library is used to perform summarization.
#
####
####################
# Function List
#
# 1. extract_text_from_segments(segments: List[Dict]) -> str
# 2. summarize_with_openai(api_key, file_path, custom_prompt_arg)
# 3. summarize_with_anthropic(api_key, file_path, model, custom_prompt_arg, max_retries=3, retry_delay=5)
# 4. summarize_with_cohere(api_key, file_path, model, custom_prompt_arg)
# 5. summarize_with_groq(api_key, file_path, model, custom_prompt_arg)
#
#
####################
# Import necessary libraries
import json
import logging
import os
import time
from typing import Optional

import requests
from requests import RequestException

from App_Function_Libraries.Audio.Audio_Transcription_Lib import convert_to_wav, speech_to_text
from App_Function_Libraries.Chunk_Lib import semantic_chunking, rolling_summarize, recursive_summarize_chunks, \
    improved_chunking_process
from App_Function_Libraries.Audio.Diarization_Lib import combine_transcription_and_diarization
from App_Function_Libraries.Summarization.Local_Summarization_Lib import summarize_with_llama, summarize_with_kobold, \
    summarize_with_oobabooga, summarize_with_tabbyapi, summarize_with_vllm, summarize_with_local_llm, \
    summarize_with_ollama, summarize_with_custom_openai
from App_Function_Libraries.DB.DB_Manager import add_media_to_database
# Import Local
from App_Function_Libraries.Utils.Utils import load_and_log_configs, load_comprehensive_config, sanitize_filename, \
    clean_youtube_url, create_download_directory, is_valid_url
from App_Function_Libraries.Video_DL_Ingestion_Lib import download_video, extract_video_info

#
#######################################################################################################################
# Function Definitions
#
config = load_comprehensive_config()
openai_api_key = config.get('API', 'openai_api_key', fallback=None)


def summarize(
    input_data: str,
    custom_prompt_arg: Optional[str],
    api_name: str,
    api_key: Optional[str],
    temp: Optional[float],
    system_message: Optional[str]
) -> str:
    try:
        logging.debug(f"api_name type: {type(api_name)}, value: {api_name}")
        if api_name.lower() == "openai":
            return summarize_with_openai(api_key, input_data, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "anthropic":
            return summarize_with_anthropic(api_key, input_data, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "cohere":
            return summarize_with_cohere(api_key, input_data, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "groq":
            return summarize_with_groq(api_key, input_data, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "huggingface":
            return summarize_with_huggingface(api_key, input_data, custom_prompt_arg, temp)
        elif api_name.lower() == "openrouter":
            return summarize_with_openrouter(api_key, input_data, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "deepseek":
            return summarize_with_deepseek(api_key, input_data, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "mistral":
            return summarize_with_mistral(api_key, input_data, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "llama.cpp":
            return summarize_with_llama(input_data, custom_prompt_arg, api_key, temp, system_message)
        elif api_name.lower() == "kobold":
            return summarize_with_kobold(input_data, api_key, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "ooba":
            return summarize_with_oobabooga(input_data, api_key, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "tabbyapi":
            return summarize_with_tabbyapi(input_data, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "vllm":
            return summarize_with_vllm(input_data, custom_prompt_arg, None, system_message)
        elif api_name.lower() == "local-llm":
            return summarize_with_local_llm(input_data, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "huggingface":
            return summarize_with_huggingface(api_key, input_data, custom_prompt_arg, temp, )#system_message)
        elif api_name.lower() == "custom-openai":
            return summarize_with_custom_openai(api_key, input_data, custom_prompt_arg, temp, system_message)
        elif api_name.lower() == "ollama":
            return summarize_with_ollama(input_data, custom_prompt_arg, None, api_key, temp, system_message)
        else:
            return f"Error: Invalid API Name {api_name}"

    except Exception as e:
        logging.error(f"Error in summarize function: {str(e)}", exc_info=True)
        return f"Error: {str(e)}"


def extract_text_from_segments(segments):
    logging.debug(f"Segments received: {segments}")
    logging.debug(f"Type of segments: {type(segments)}")

    text = ""

    if isinstance(segments, list):
        for segment in segments:
            logging.debug(f"Current segment: {segment}")
            logging.debug(f"Type of segment: {type(segment)}")
            if 'Text' in segment:
                text += segment['Text'] + " "
            else:
                logging.warning(f"Skipping segment due to missing 'Text' key: {segment}")
    else:
        logging.warning(f"Unexpected type of 'segments': {type(segments)}")

    return text.strip()


def summarize_with_openai(api_key, input_data, custom_prompt_arg, temp=None, system_message=None):
    loaded_config_data = load_and_log_configs()
    try:
        # API key validation
        if not api_key or api_key.strip() == "":
            logging.info("OpenAI: #1 API key not provided as parameter")
            logging.info("OpenAI: Attempting to use API key from config file")
            api_key = loaded_config_data['api_keys']['openai']

        if not api_key or api_key.strip() == "":
            logging.error("OpenAI: #2 API key not found or is empty")
            return "OpenAI: API Key Not Provided/Found in Config file or is empty"

        openai_api_key = api_key
        logging.debug(f"OpenAI: Using API Key: {api_key[:5]}...{api_key[-5:]}")

        # Input data handling
        logging.debug(f"OpenAI: Raw input data type: {type(input_data)}")
        logging.debug(f"OpenAI: Raw input data (first 500 chars): {str(input_data)[:500]}...")

        if isinstance(input_data, str):
            if input_data.strip().startswith('{'):
                # It's likely a JSON string
                logging.debug("OpenAI: Parsing provided JSON string data for summarization")
                try:
                    data = json.loads(input_data)
                except json.JSONDecodeError as e:
                    logging.error(f"OpenAI: Error parsing JSON string: {str(e)}")
                    return f"OpenAI: Error parsing JSON input: {str(e)}"
            elif os.path.isfile(input_data):
                logging.debug("OpenAI: Loading JSON data from file for summarization")
                with open(input_data, 'r') as file:
                    data = json.load(file)
            else:
                logging.debug("OpenAI: Using provided string data for summarization")
                data = input_data
        else:
            data = input_data

        logging.debug(f"OpenAI: Processed data type: {type(data)}")
        logging.debug(f"OpenAI: Processed data (first 500 chars): {str(data)[:500]}...")

        # Text extraction
        if isinstance(data, dict):
            if 'summary' in data:
                logging.debug("OpenAI: Summary already exists in the loaded data")
                return data['summary']
            elif 'segments' in data:
                text = extract_text_from_segments(data['segments'])
            else:
                text = json.dumps(data)  # Convert dict to string if no specific format
        elif isinstance(data, list):
            text = extract_text_from_segments(data)
        elif isinstance(data, str):
            text = data
        else:
            raise ValueError(f"OpenAI: Invalid input data format: {type(data)}")

        logging.debug(f"OpenAI: Extracted text (first 500 chars): {text[:500]}...")
        logging.debug(f"OpenAI: Custom prompt: {custom_prompt_arg}")

        openai_model = loaded_config_data['models']['openai'] or "gpt-4o"
        logging.debug(f"OpenAI: Using model: {openai_model}")

        headers = {
            'Authorization': f'Bearer {openai_api_key}',
            'Content-Type': 'application/json'
        }

        logging.debug(
            f"OpenAI API Key: {openai_api_key[:5]}...{openai_api_key[-5:] if openai_api_key else None}")
        logging.debug("openai: Preparing data + prompt for submittal")
        openai_prompt = f"{text} \n\n\n\n{custom_prompt_arg}"
        if temp is None:
            temp = 0.7
        if system_message is None:
            system_message = "You are a helpful AI assistant who does whatever the user requests."
        temp = float(temp)
        data = {
            "model": openai_model,
            "messages": [
                {"role": "system", "content": system_message},
                {"role": "user", "content": openai_prompt}
            ],
            "max_tokens": 4096,
            "temperature": temp
        }

        logging.debug("OpenAI: Posting request")
        response = requests.post('https://api.openai.com/v1/chat/completions', headers=headers, json=data)

        if response.status_code == 200:
            response_data = response.json()
            if 'choices' in response_data and len(response_data['choices']) > 0:
                summary = response_data['choices'][0]['message']['content'].strip()
                logging.debug("OpenAI: Summarization successful")
                logging.debug(f"OpenAI: Summary (first 500 chars): {summary[:500]}...")
                return summary
            else:
                logging.warning("OpenAI: Summary not found in the response data")
                return "OpenAI: Summary not available"
        else:
            logging.error(f"OpenAI: Summarization failed with status code {response.status_code}")
            logging.error(f"OpenAI: Error response: {response.text}")
            return f"OpenAI: Failed to process summary. Status code: {response.status_code}"
    except json.JSONDecodeError as e:
        logging.error(f"OpenAI: Error decoding JSON: {str(e)}", exc_info=True)
        return f"OpenAI: Error decoding JSON input: {str(e)}"
    except requests.RequestException as e:
        logging.error(f"OpenAI: Error making API request: {str(e)}", exc_info=True)
        return f"OpenAI: Error making API request: {str(e)}"
    except Exception as e:
        logging.error(f"OpenAI: Unexpected error: {str(e)}", exc_info=True)
        return f"OpenAI: Unexpected error occurred: {str(e)}"


def summarize_with_anthropic(api_key, input_data, custom_prompt_arg, temp=None, system_message=None, max_retries=3, retry_delay=5):
    logging.debug("Anthropic: Summarization process starting...")
    try:
        logging.debug("Anthropic: Loading and validating configurations")
        loaded_config_data = load_and_log_configs()
        if loaded_config_data is None:
            logging.error("Failed to load configuration data")
            anthropic_api_key = None
        else:
            # Prioritize the API key passed as a parameter
            if api_key and api_key.strip():
                anthropic_api_key = api_key
                logging.info("Anthropic: Using API key provided as parameter")
            else:
                # If no parameter is provided, use the key from the config
                anthropic_api_key = loaded_config_data['api_keys'].get('anthropic')
                if anthropic_api_key:
                    logging.info("Anthropic: Using API key from config file")
                else:
                    logging.warning("Anthropic: No API key found in config file")

        # Final check to ensure we have a valid API key
        if not anthropic_api_key or not anthropic_api_key.strip():
            logging.error("Anthropic: No valid API key available")
            # You might want to raise an exception here or handle this case as appropriate for your application
            #FIXME
            # For example: raise ValueError("No valid Anthropic API key available")


        logging.debug(f"Anthropic: Using API Key: {anthropic_api_key[:5]}...{anthropic_api_key[-5:]}")

        if isinstance(input_data, str) and os.path.isfile(input_data):
            logging.debug("AnthropicAI: Loading json data for summarization")
            with open(input_data, 'r') as file:
                data = json.load(file)
        else:
            logging.debug("AnthropicAI: Using provided string data for summarization")
            data = input_data

        # DEBUG - Debug logging to identify sent data
        logging.debug(f"AnthropicAI: Loaded data: {data[:500]}...(snipped to first 500 chars)")
        logging.debug(f"AnthropicAI: Type of data: {type(data)}")

        if isinstance(data, dict) and 'summary' in data:
            # If the loaded data is a dictionary and already contains a summary, return it
            logging.debug("Anthropic: Summary already exists in the loaded data")
            return data['summary']

        # If the loaded data is a list of segment dictionaries or a string, proceed with summarization
        if isinstance(data, list):
            segments = data
            text = extract_text_from_segments(segments)
        elif isinstance(data, str):
            text = data
        else:
            raise ValueError("Anthropic: Invalid input data format")

        if temp is None:
            temp = 0.1
        temp = float(temp)

        if system_message is None:
            system_message = "You are a helpful AI assistant who does whatever the user requests."

        headers = {
            'x-api-key': anthropic_api_key,
            'anthropic-version': '2023-06-01',
            'Content-Type': 'application/json'
        }

        anthropic_prompt = custom_prompt_arg
        logging.debug(f"Anthropic: Prompt is {anthropic_prompt}")
        user_message = {
            "role": "user",
            "content": f"{text} \n\n\n\n{anthropic_prompt}"
        }

        model = loaded_config_data['models']['anthropic']

        data = {
            "model": model,
            "max_tokens": 4096,  # max _possible_ tokens to return
            "messages": [user_message],
            "stop_sequences": ["\n\nHuman:"],
            "temperature": temp,
            "top_k": 0,
            "top_p": 1.0,
            "metadata": {
                "user_id": "example_user_id",
            },
            "stream": False,
            "system": system_message
        }

        for attempt in range(max_retries):
            try:
                logging.debug("anthropic: Posting request to API")
                response = requests.post('https://api.anthropic.com/v1/messages', headers=headers, json=data)

                # Check if the status code indicates success
                if response.status_code == 200:
                    logging.debug("anthropic: Post submittal successful")
                    response_data = response.json()
                    try:
                        summary = response_data['content'][0]['text'].strip()
                        logging.debug("anthropic: Summarization successful")
                        print("Summary processed successfully.")
                        return summary
                    except (IndexError, KeyError) as e:
                        logging.debug("anthropic: Unexpected data in response")
                        print("Unexpected response format from Anthropic API:", response.text)
                        return None
                elif response.status_code == 500:  # Handle internal server error specifically
                    logging.debug("anthropic: Internal server error")
                    print("Internal server error from API. Retrying may be necessary.")
                    time.sleep(retry_delay)
                else:
                    logging.debug(
                        f"anthropic: Failed to summarize, status code {response.status_code}: {response.text}")
                    print(f"Failed to process summary, status code {response.status_code}: {response.text}")
                    return None

            except RequestException as e:
                logging.error(f"anthropic: Network error during attempt {attempt + 1}/{max_retries}: {str(e)}")
                if attempt < max_retries - 1:
                    time.sleep(retry_delay)
                else:
                    return f"anthropic: Network error: {str(e)}"
    except FileNotFoundError as e:
        logging.error(f"anthropic: File not found: {input_data}")
        return f"anthropic: File not found: {input_data}"
    except json.JSONDecodeError as e:
        logging.error(f"anthropic: Invalid JSON format in file: {input_data}")
        return f"anthropic: Invalid JSON format in file: {input_data}"
    except Exception as e:
        logging.error(f"anthropic: Error in processing: {str(e)}")
        return f"anthropic: Error occurred while processing summary with Anthropic: {str(e)}"


# Summarize with Cohere
def summarize_with_cohere(api_key, input_data, custom_prompt_arg, temp=None, system_message=None):
    logging.debug("Cohere: Summarization process starting...")
    try:
        logging.debug("Cohere: Loading and validating configurations")
        loaded_config_data = load_and_log_configs()
        if loaded_config_data is None:
            logging.error("Failed to load configuration data")
            cohere_api_key = None
        else:
            # Prioritize the API key passed as a parameter
            if api_key and api_key.strip():
                cohere_api_key = api_key
                logging.info("Cohere: Using API key provided as parameter")
            else:
                # If no parameter is provided, use the key from the config
                cohere_api_key = loaded_config_data['api_keys'].get('cohere')
                if cohere_api_key:
                    logging.info("Cohere: Using API key from config file")
                else:
                    logging.warning("Cohere: No API key found in config file")

        # Final check to ensure we have a valid API key
        if not cohere_api_key or not cohere_api_key.strip():
            logging.error("Cohere: No valid API key available")
            # You might want to raise an exception here or handle this case as appropriate for your application
            # FIXME
            # For example: raise ValueError("No valid Anthropic API key available")

        if custom_prompt_arg is None:
            custom_prompt_arg = ""

        if system_message is None:
            system_message = ""

        logging.debug(f"Cohere: Using API Key: {cohere_api_key[:5]}...{cohere_api_key[-5:]}")

        if isinstance(input_data, str) and os.path.isfile(input_data):
            logging.debug("Cohere: Loading json data for summarization")
            with open(input_data, 'r') as file:
                data = json.load(file)
        else:
            logging.debug("Cohere: Using provided string data for summarization")
            data = input_data

        # DEBUG - Debug logging to identify sent data
        logging.debug(f"Cohere: Loaded data: {data[:500]}...(snipped to first 500 chars)")
        logging.debug(f"Cohere: Type of data: {type(data)}")

        if isinstance(data, dict) and 'summary' in data:
            # If the loaded data is a dictionary and already contains a summary, return it
            logging.debug("Cohere: Summary already exists in the loaded data")
            return data['summary']

        # If the loaded data is a list of segment dictionaries or a string, proceed with summarization
        if isinstance(data, list):
            segments = data
            text = extract_text_from_segments(segments)
        elif isinstance(data, str):
            text = data
        else:
            raise ValueError("Invalid input data format")

        cohere_model = loaded_config_data['models']['cohere']

        if temp is None:
            temp = 0.3
        temp = float(temp)
        if system_message is None:
            system_message = "You are a helpful AI assistant who does whatever the user requests."

        headers = {
            'accept': 'application/json',
            'content-type': 'application/json',
            'Authorization': f'Bearer {cohere_api_key}'
        }

        cohere_prompt = f"{text} \n\n\n\n{custom_prompt_arg}"
        logging.debug(f"cohere: Prompt being sent is {cohere_prompt}")

        data = {
            "preamble": system_message,
            "message": cohere_prompt,
            "model": cohere_model,
#            "connectors": [{"id": "web-search"}],
            "temperature": temp
        }

        logging.debug("cohere: Submitting request to API endpoint")
        response = requests.post('https://api.cohere.ai/v1/chat', headers=headers, json=data)
        response_data = response.json()
        logging.debug("API Response Data: %s", response_data)

        if response.status_code == 200:
            if 'text' in response_data:
                summary = response_data['text'].strip()
                logging.debug("cohere: Summarization successful")
                print("Summary processed successfully.")
                return summary
            else:
                logging.error("Expected data not found in API response.")
                return "Expected data not found in API response."
        else:
            logging.error(f"cohere: API request failed with status code {response.status_code}: {response.text}")
            print(f"Failed to process summary, status code {response.status_code}: {response.text}")
            return f"cohere: API request failed: {response.text}"

    except Exception as e:
        logging.error("cohere: Error in processing: %s", str(e))
        return f"cohere: Error occurred while processing summary with Cohere: {str(e)}"


# https://console.groq.com/docs/quickstart
def summarize_with_groq(api_key, input_data, custom_prompt_arg, temp=None, system_message=None):
    logging.debug("Groq: Summarization process starting...")
    try:
        logging.debug("Groq: Loading and validating configurations")
        loaded_config_data = load_and_log_configs()
        if loaded_config_data is None:
            logging.error("Failed to load configuration data")
            groq_api_key = None
        else:
            # Prioritize the API key passed as a parameter
            if api_key and api_key.strip():
                groq_api_key = api_key
                logging.info("Groq: Using API key provided as parameter")
            else:
                # If no parameter is provided, use the key from the config
                groq_api_key = loaded_config_data['api_keys'].get('groq')
                if groq_api_key:
                    logging.info("Groq: Using API key from config file")
                else:
                    logging.warning("Groq: No API key found in config file")

        # Final check to ensure we have a valid API key
        if not groq_api_key or not groq_api_key.strip():
            logging.error("Anthropic: No valid API key available")
            # You might want to raise an exception here or handle this case as appropriate for your application
            # FIXME
            # For example: raise ValueError("No valid Anthropic API key available")

        logging.debug(f"Groq: Using API Key: {groq_api_key[:5]}...{groq_api_key[-5:]}")

        # Transcript data handling & Validation
        if isinstance(input_data, str) and os.path.isfile(input_data):
            logging.debug("Groq: Loading json data for summarization")
            with open(input_data, 'r') as file:
                data = json.load(file)
        else:
            logging.debug("Groq: Using provided string data for summarization")
            data = input_data

        # DEBUG - Debug logging to identify sent data
        logging.debug(f"Groq: Loaded data: {data[:500]}...(snipped to first 500 chars)")
        logging.debug(f"Groq: Type of data: {type(data)}")

        if isinstance(data, dict) and 'summary' in data:
            # If the loaded data is a dictionary and already contains a summary, return it
            logging.debug("Groq: Summary already exists in the loaded data")
            return data['summary']

        # If the loaded data is a list of segment dictionaries or a string, proceed with summarization
        if isinstance(data, list):
            segments = data
            text = extract_text_from_segments(segments)
        elif isinstance(data, str):
            text = data
        else:
            raise ValueError("Groq: Invalid input data format")

        # Set the model to be used
        groq_model = loaded_config_data['models']['groq']

        if temp is None:
            temp = 0.2
        temp = float(temp)
        if system_message is None:
            system_message = "You are a helpful AI assistant who does whatever the user requests."

        headers = {
            'Authorization': f'Bearer {groq_api_key}',
            'Content-Type': 'application/json'
        }

        groq_prompt = f"{text} \n\n\n\n{custom_prompt_arg}"
        logging.debug("groq: Prompt being sent is {groq_prompt}")

        data = {
            "messages": [
                {
                    "role": "system",
                    "content": system_message,
                },
                {
                    "role": "user",
                    "content": groq_prompt,
                }
            ],
            "model": groq_model,
            "temperature": temp
        }

        logging.debug("groq: Submitting request to API endpoint")
        print("groq: Submitting request to API endpoint")
        response = requests.post('https://api.groq.com/openai/v1/chat/completions', headers=headers, json=data)

        response_data = response.json()
        logging.debug("API Response Data: %s", response_data)

        if response.status_code == 200:
            if 'choices' in response_data and len(response_data['choices']) > 0:
                summary = response_data['choices'][0]['message']['content'].strip()
                logging.debug("groq: Summarization successful")
                print("Summarization successful.")
                return summary
            else:
                logging.error("Expected data not found in API response.")
                return "Expected data not found in API response."
        else:
            logging.error(f"groq: API request failed with status code {response.status_code}: {response.text}")
            return f"groq: API request failed: {response.text}"

    except Exception as e:
        logging.error("groq: Error in processing: %s", str(e))
        return f"groq: Error occurred while processing summary with groq: {str(e)}"


def summarize_with_openrouter(api_key, input_data, custom_prompt_arg, temp=None, system_message=None):
    import requests
    import json
    global openrouter_model, openrouter_api_key
    try:
        logging.debug("OpenRouter: Loading and validating configurations")
        loaded_config_data = load_and_log_configs()
        if loaded_config_data is None:
            logging.error("Failed to load configuration data")
            openrouter_api_key = None
        else:
            # Prioritize the API key passed as a parameter
            if api_key and api_key.strip():
                openrouter_api_key = api_key
                logging.info("OpenRouter: Using API key provided as parameter")
            else:
                # If no parameter is provided, use the key from the config
                openrouter_api_key = loaded_config_data['api_keys'].get('openrouter')
                if openrouter_api_key:
                    logging.info("OpenRouter: Using API key from config file")
                else:
                    logging.warning("OpenRouter: No API key found in config file")

        # Model Selection validation
        logging.debug("OpenRouter: Validating model selection")
        loaded_config_data = load_and_log_configs()
        openrouter_model = loaded_config_data['models']['openrouter']
        logging.debug(f"OpenRouter: Using model from config file: {openrouter_model}")

        # Final check to ensure we have a valid API key
        if not openrouter_api_key or not openrouter_api_key.strip():
            logging.error("OpenRouter: No valid API key available")
            raise ValueError("No valid Anthropic API key available")
    except Exception as e:
        logging.error("OpenRouter: Error in processing: %s", str(e))
        return f"OpenRouter: Error occurred while processing config file with OpenRouter: {str(e)}"

    logging.debug(f"OpenRouter: Using API Key: {openrouter_api_key[:5]}...{openrouter_api_key[-5:]}")

    logging.debug(f"OpenRouter: Using Model: {openrouter_model}")

    if isinstance(input_data, str) and os.path.isfile(input_data):
        logging.debug("OpenRouter: Loading json data for summarization")
        with open(input_data, 'r') as file:
            data = json.load(file)
    else:
        logging.debug("OpenRouter: Using provided string data for summarization")
        data = input_data

    # DEBUG - Debug logging to identify sent data
    logging.debug(f"OpenRouter: Loaded data: {data[:500]}...(snipped to first 500 chars)")
    logging.debug(f"OpenRouter: Type of data: {type(data)}")

    if isinstance(data, dict) and 'summary' in data:
        # If the loaded data is a dictionary and already contains a summary, return it
        logging.debug("OpenRouter: Summary already exists in the loaded data")
        return data['summary']

    # If the loaded data is a list of segment dictionaries or a string, proceed with summarization
    if isinstance(data, list):
        segments = data
        text = extract_text_from_segments(segments)
    elif isinstance(data, str):
        text = data
    else:
        raise ValueError("OpenRouter: Invalid input data format")

    openrouter_prompt = f"{input_data} \n\n\n\n{custom_prompt_arg}"

    if temp is None:
        temp = 0.1
    temp = float(temp)
    if system_message is None:
        system_message = "You are a helpful AI assistant who does whatever the user requests."

    try:
        logging.debug("OpenRouter: Submitting request to API endpoint")
        print("OpenRouter: Submitting request to API endpoint")
        response = requests.post(
            url="https://openrouter.ai/api/v1/chat/completions",
            headers={
                "Authorization": f"Bearer {openrouter_api_key}",
            },
            data=json.dumps({
                "model": openrouter_model,
                "messages": [
                    {"role": "system", "content": system_message},
                    {"role": "user", "content": openrouter_prompt}
                ],
                "temperature": temp
            })
        )

        response_data = response.json()
        logging.debug("API Response Data: %s", response_data)

        if response.status_code == 200:
            if 'choices' in response_data and len(response_data['choices']) > 0:
                summary = response_data['choices'][0]['message']['content'].strip()
                logging.debug("openrouter: Summarization successful")
                print("openrouter: Summarization successful.")
                return summary
            else:
                logging.error("openrouter: Expected data not found in API response.")
                return "openrouter: Expected data not found in API response."
        else:
            logging.error(f"openrouter:  API request failed with status code {response.status_code}: {response.text}")
            return f"openrouter: API request failed: {response.text}"
    except Exception as e:
        logging.error("openrouter: Error in processing: %s", str(e))
        return f"openrouter: Error occurred while processing summary with openrouter: {str(e)}"


def summarize_with_huggingface(api_key, input_data, custom_prompt_arg, temp=None):
    logging.debug("HuggingFace: Summarization process starting...")
    try:
        logging.debug("HuggingFace: Loading and validating configurations")
        if api_key:
            # Prioritize the API key passed as a parameter
            if api_key and api_key.strip():
                huggingface_api_key = api_key
                logging.info("HuggingFace: Using API key provided as parameter")
        else:
            huggingface_api_key = os.getenv('HF_TOKEN')
        # Final check to ensure we have a valid API key
        if not huggingface_api_key or not huggingface_api_key.strip():
            logging.error("HuggingFace: No valid API key available")
            # You might want to raise an exception here or handle this case as appropriate for your application
            # FIXME
            # For example: raise ValueError("No valid Anthropic API key available")

        logging.debug(f"HuggingFace: Using API Key: {huggingface_api_key[:5]}...{huggingface_api_key[-5:]}")

        if isinstance(input_data, str) and os.path.isfile(input_data):
            logging.debug("HuggingFace: Loading json data for summarization")
            with open(input_data, 'r') as file:
                data = json.load(file)
        else:
            logging.debug("HuggingFace: Using provided string data for summarization")
            data = input_data

        # DEBUG - Debug logging to identify sent data
        logging.debug(f"HuggingFace: Loaded data: {data[:500]}...(snipped to first 500 chars)")
        logging.debug(f"HuggingFace: Type of data: {type(data)}")

        if isinstance(data, dict) and 'summary' in data:
            # If the loaded data is a dictionary and already contains a summary, return it
            logging.debug("HuggingFace: Summary already exists in the loaded data")
            return data['summary']

        # If the loaded data is a list of segment dictionaries or a string, proceed with summarization
        if isinstance(data, list):
            segments = data
            text = extract_text_from_segments(segments)
        elif isinstance(data, str):
            text = data
        else:
            raise ValueError("HuggingFace: Invalid input data format")

        headers = {
            "Authorization": f"Bearer {huggingface_api_key}"
        }
        huggingface_model = "meta-llama/Llama-3.1-70B-Instruct"
        API_URL = f"https://api-inference.huggingface.co/models/{huggingface_model}"
        if temp is None:
            temp = 0.1
        temp = float(temp)
        huggingface_prompt = f"{custom_prompt_arg}\n\n\n{text}"
        logging.debug("huggingface: Prompt being sent is {huggingface_prompt}")
        data = {
            "inputs": huggingface_prompt,
            "max_tokens": 4096,
            "stream": False,
            "temperature": temp
        }

        logging.debug("huggingface: Submitting request...")
        response = requests.post(API_URL, headers=headers, json=data)

        if response.status_code == 200:
            print(response.json())
            chat_response = response.json()[0]['generated_text'].strip()
            logging.debug("huggingface: Summarization successful")
            print("Chat request successful.")
            return chat_response
        else:
            logging.error(f"huggingface: Summarization failed with status code {response.status_code}: {response.text}")
            return f"Failed to process summary, status code {response.status_code}: {response.text}"

    except Exception as e:
        logging.error("huggingface: Error in processing: %s", str(e))
        print(f"Error occurred while processing summary with huggingface: {str(e)}")
        return None


def summarize_with_deepseek(api_key, input_data, custom_prompt_arg, temp=None, system_message=None):
    logging.debug("DeepSeek: Summarization process starting...")
    try:
        logging.debug("DeepSeek: Loading and validating configurations")
        loaded_config_data = load_and_log_configs()
        if loaded_config_data is None:
            logging.error("Failed to load configuration data")
            deepseek_api_key = None
        else:
            # Prioritize the API key passed as a parameter
            if api_key and api_key.strip():
                deepseek_api_key = api_key
                logging.info("DeepSeek: Using API key provided as parameter")
            else:
                # If no parameter is provided, use the key from the config
                deepseek_api_key = loaded_config_data['api_keys'].get('deepseek')
                if deepseek_api_key:
                    logging.info("DeepSeek: Using API key from config file")
                else:
                    logging.warning("DeepSeek: No API key found in config file")

        # Final check to ensure we have a valid API key
        if not deepseek_api_key or not deepseek_api_key.strip():
            logging.error("DeepSeek: No valid API key available")
            # You might want to raise an exception here or handle this case as appropriate for your application
            # FIXME
            # For example: raise ValueError("No valid deepseek API key available")


        logging.debug(f"DeepSeek: Using API Key: {deepseek_api_key[:5]}...{deepseek_api_key[-5:]}")

        # Input data handling
        if isinstance(input_data, str) and os.path.isfile(input_data):
            logging.debug("DeepSeek: Loading json data for summarization")
            with open(input_data, 'r') as file:
                data = json.load(file)
        else:
            logging.debug("DeepSeek: Using provided string data for summarization")
            data = input_data

        # DEBUG - Debug logging to identify sent data
        logging.debug(f"DeepSeek: Loaded data: {data[:500]}...(snipped to first 500 chars)")
        logging.debug(f"DeepSeek: Type of data: {type(data)}")

        if isinstance(data, dict) and 'summary' in data:
            # If the loaded data is a dictionary and already contains a summary, return it
            logging.debug("DeepSeek: Summary already exists in the loaded data")
            return data['summary']

        # Text extraction
        if isinstance(data, list):
            segments = data
            text = extract_text_from_segments(segments)
        elif isinstance(data, str):
            text = data
        else:
            raise ValueError("DeepSeek: Invalid input data format")

        deepseek_model = loaded_config_data['models']['deepseek'] or "deepseek-chat"

        if temp is None:
            temp = 0.1
        temp = float(temp)
        if system_message is None:
            system_message = "You are a helpful AI assistant who does whatever the user requests."

        headers = {
            'Authorization': f'Bearer {api_key}',
            'Content-Type': 'application/json'
        }

        logging.debug(
            f"Deepseek API Key: {api_key[:5]}...{api_key[-5:] if api_key else None}")
        logging.debug("openai: Preparing data + prompt for submittal")
        deepseek_prompt = f"{text} \n\n\n\n{custom_prompt_arg}"
        data = {
            "model": deepseek_model,
            "messages": [
                {"role": "system", "content": system_message},
                {"role": "user", "content": deepseek_prompt}
            ],
            "stream": False,
            "temperature": temp
        }

        logging.debug("DeepSeek: Posting request")
        response = requests.post('https://api.deepseek.com/chat/completions', headers=headers, json=data)

        if response.status_code == 200:
            response_data = response.json()
            if 'choices' in response_data and len(response_data['choices']) > 0:
                summary = response_data['choices'][0]['message']['content'].strip()
                logging.debug("DeepSeek: Summarization successful")
                return summary
            else:
                logging.warning("DeepSeek: Summary not found in the response data")
                return "DeepSeek: Summary not available"
        else:
            logging.error(f"DeepSeek: Summarization failed with status code {response.status_code}")
            logging.error(f"DeepSeek: Error response: {response.text}")
            return f"DeepSeek: Failed to process summary. Status code: {response.status_code}"
    except Exception as e:
        logging.error(f"DeepSeek: Error in processing: {str(e)}", exc_info=True)
        return f"DeepSeek: Error occurred while processing summary: {str(e)}"


def summarize_with_mistral(api_key, input_data, custom_prompt_arg, temp=None, system_message=None):
    logging.debug("Mistral: Summarization process starting...")
    try:
        logging.debug("Mistral: Loading and validating configurations")
        loaded_config_data = load_and_log_configs()
        if loaded_config_data is None:
            logging.error("Failed to load configuration data")
            mistral_api_key = None
        else:
            # Prioritize the API key passed as a parameter
            if api_key and api_key.strip():
                mistral_api_key = api_key
                logging.info("Mistral: Using API key provided as parameter")
            else:
                # If no parameter is provided, use the key from the config
                mistral_api_key = loaded_config_data['api_keys'].get('mistral')
                if mistral_api_key:
                    logging.info("Mistral: Using API key from config file")
                else:
                    logging.warning("Mistral: No API key found in config file")

        # Final check to ensure we have a valid API key
        if not mistral_api_key or not mistral_api_key.strip():
            logging.error("Mistral: No valid API key available")
            # You might want to raise an exception here or handle this case as appropriate for your application
            # FIXME
            # For example: raise ValueError("No valid deepseek API key available")


        logging.debug(f"Mistral: Using API Key: {mistral_api_key[:5]}...{mistral_api_key[-5:]}")

        # Input data handling
        if isinstance(input_data, str) and os.path.isfile(input_data):
            logging.debug("Mistral: Loading json data for summarization")
            with open(input_data, 'r') as file:
                data = json.load(file)
        else:
            logging.debug("Mistral: Using provided string data for summarization")
            data = input_data

        # DEBUG - Debug logging to identify sent data
        logging.debug(f"Mistral: Loaded data: {data[:500]}...(snipped to first 500 chars)")
        logging.debug(f"Mistral: Type of data: {type(data)}")

        if isinstance(data, dict) and 'summary' in data:
            # If the loaded data is a dictionary and already contains a summary, return it
            logging.debug("Mistral: Summary already exists in the loaded data")
            return data['summary']

        # Text extraction
        if isinstance(data, list):
            segments = data
            text = extract_text_from_segments(segments)
        elif isinstance(data, str):
            text = data
        else:
            raise ValueError("Mistral: Invalid input data format")

        mistral_model = loaded_config_data['models']['mistral'] or "mistral-large-latest"

        if temp is None:
            temp = 0.2
        temp = float(temp)
        if system_message is None:
            system_message = "You are a helpful AI assistant who does whatever the user requests."

        headers = {
            'Authorization': f'Bearer {mistral_api_key}',
            'Content-Type': 'application/json'
        }

        logging.debug(
            f"Deepseek API Key: {mistral_api_key[:5]}...{mistral_api_key[-5:] if mistral_api_key else None}")
        logging.debug("Mistral: Preparing data + prompt for submittal")
        mistral_prompt = f"{custom_prompt_arg}\n\n\n\n{text} "
        data = {
            "model": mistral_model,
            "messages": [
                {"role": "system",
                 "content": system_message},
                {"role": "user",
                "content": mistral_prompt}
            ],
            "temperature": temp,
            "top_p": 1,
            "max_tokens": 4096,
            "stream": "false",
            "safe_prompt": "false"
        }

        logging.debug("Mistral: Posting request")
        response = requests.post('https://api.mistral.ai/v1/chat/completions', headers=headers, json=data)

        if response.status_code == 200:
            response_data = response.json()
            if 'choices' in response_data and len(response_data['choices']) > 0:
                summary = response_data['choices'][0]['message']['content'].strip()
                logging.debug("Mistral: Summarization successful")
                return summary
            else:
                logging.warning("Mistral: Summary not found in the response data")
                return "Mistral: Summary not available"
        else:
            logging.error(f"Mistral: Summarization failed with status code {response.status_code}")
            logging.error(f"Mistral: Error response: {response.text}")
            return f"Mistral: Failed to process summary. Status code: {response.status_code}"
    except Exception as e:
        logging.error(f"Mistral: Error in processing: {str(e)}", exc_info=True)
        return f"Mistral: Error occurred while processing summary: {str(e)}"

#
#
#######################################################################################################################
#
#
# Gradio File Processing


# Handle multiple videos as input
def process_video_urls(url_list, num_speakers, whisper_model, custom_prompt_input, offset, api_name, api_key, vad_filter,
                       download_video_flag, download_audio, rolling_summarization, detail_level, question_box,
                       keywords, chunk_text_by_words, max_words, chunk_text_by_sentences, max_sentences,
                       chunk_text_by_paragraphs, max_paragraphs, chunk_text_by_tokens, max_tokens,  chunk_by_semantic,
                       semantic_chunk_size, semantic_chunk_overlap, recursive_summarization):
    global current_progress
    progress = []  # This must always be a list
    status = []  # This must always be a list

    if custom_prompt_input is None:
        custom_prompt_input = """
            You are a bulleted notes specialist. ```When creating comprehensive bulleted notes, you should follow these guidelines: Use multiple headings based on the referenced topics, not categories like quotes or terms. Headings should be surrounded by bold formatting and not be listed as bullet points themselves. Leave no space between headings and their corresponding list items underneath. Important terms within the content should be emphasized by setting them in bold font. Any text that ends with a colon should also be bolded. Before submitting your response, review the instructions, and make any corrections necessary to adhered to the specified format. Do not reference these instructions within the notes.``` \nBased on the content between backticks create comprehensive bulleted notes.
    **Bulleted Note Creation Guidelines**

    **Headings**:
    - Based on referenced topics, not categories like quotes or terms
    - Surrounded by **bold** formatting 
    - Not listed as bullet points
    - No space between headings and list items underneath

    **Emphasis**:
    - **Important terms** set in bold font
    - **Text ending in a colon**: also bolded

    **Review**:
    - Ensure adherence to specified format
    - Do not reference these instructions in your response.</s>[INST] {{ .Prompt }} [/INST]"""

    def update_progress(index, url, message):
        progress.append(f"Processing {index + 1}/{len(url_list)}: {url}")  # Append to list
        status.append(message)  # Append to list
        return "\n".join(progress), "\n".join(status)  # Return strings for display


    for index, url in enumerate(url_list):
        try:
            logging.info(f"Starting to process video {index + 1}/{len(url_list)}: {url}")
            transcription, summary, json_file_path, summary_file_path, _, _ = process_url(url=url,
                                                                                          num_speakers=num_speakers,
                                                                                          whisper_model=whisper_model,
                                                                                          custom_prompt_input=custom_prompt_input,
                                                                                          offset=offset,
                                                                                          api_name=api_name,
                                                                                          api_key=api_key,
                                                                                          vad_filter=vad_filter,
                                                                                          download_video_flag=download_video_flag,
                                                                                          download_audio=download_audio,
                                                                                          rolling_summarization=rolling_summarization,
                                                                                          detail_level=detail_level,
                                                                                          question_box=question_box,
                                                                                          keywords=keywords,
                                                                                          chunk_text_by_words=chunk_text_by_words,
                                                                                          max_words=max_words,
                                                                                          chunk_text_by_sentences=chunk_text_by_sentences,
                                                                                          max_sentences=max_sentences,
                                                                                          chunk_text_by_paragraphs=chunk_text_by_paragraphs,
                                                                                          max_paragraphs=max_paragraphs,
                                                                                          chunk_text_by_tokens=chunk_text_by_tokens,
                                                                                          max_tokens=max_tokens,
                                                                                          chunk_by_semantic=chunk_by_semantic,
                                                                                          semantic_chunk_size=semantic_chunk_size,
                                                                                          semantic_chunk_overlap=semantic_chunk_overlap,
                                                                                          recursive_summarization=recursive_summarization)
            # Update progress and transcription properly

            current_progress, current_status = update_progress(index, url, "Video processed and ingested into the database.")
            logging.info(f"Successfully processed video {index + 1}/{len(url_list)}: {url}")

            time.sleep(1)
        except Exception as e:
            logging.error(f"Error processing video {index + 1}/{len(url_list)}: {url}")
            logging.error(f"Error details: {str(e)}")
            current_progress, current_status = update_progress(index, url, f"Error: {str(e)}")

        yield current_progress, current_status, None, None, None, None

    success_message = "All videos have been transcribed, summarized, and ingested into the database successfully."
    return current_progress, success_message, None, None, None, None


def perform_transcription(video_path, offset, whisper_model, vad_filter, diarize=False, overwrite=False):
    temp_files = []
    logging.info(f"Processing media: {video_path}")
    global segments_json_path
    audio_file_path = convert_to_wav(video_path, offset)
    logging.debug(f"Converted audio file: {audio_file_path}")
    temp_files.append(audio_file_path)
    logging.debug("Setting up segments JSON path")

    # Update path to include whisper model in filename
    base_path = audio_file_path.replace('.wav', '')
    segments_json_path = f"{base_path}-whisper_model-{whisper_model}.segments.json"
    temp_files.append(segments_json_path)

    if diarize:
        diarized_json_path = f"{base_path}-whisper_model-{whisper_model}.diarized.json"

        # Check if diarized JSON already exists and is valid
        if os.path.exists(diarized_json_path):
            logging.info(f"Diarized file already exists: {diarized_json_path}")
            try:
                with open(diarized_json_path, 'r', encoding='utf-8') as file:
                    diarized_segments = json.load(file)
                # Check if segments are empty or invalid
                if not diarized_segments or not isinstance(diarized_segments, list):
                    if not overwrite:
                        logging.info("Overwrite flag not set. Existing file not overwritten.")
                        return None, "Overwrite flag not set. Existing file not overwritten."
                    logging.warning(f"Diarized JSON file is empty or invalid, re-generating: {diarized_json_path}")
                    raise ValueError("Invalid diarized JSON file")
                # Check if segments contain expected content
                if not all('Text' in segment for segment in diarized_segments):
                    if not overwrite:
                        logging.info("Overwrite flag not set. Existing file not overwritten.")
                        return None, "Overwrite flag not set. Existing file not overwritten."
                    logging.warning(f"Diarized segments missing required fields, re-generating: {diarized_json_path}")
                    raise ValueError("Invalid segment format")
                logging.debug(f"Loaded valid diarized segments from {diarized_json_path}")
                return audio_file_path, diarized_segments
            except (json.JSONDecodeError, ValueError) as e:
                if not overwrite:
                    logging.info("Overwrite flag not set. Existing file not overwritten.")
                    return None, "Overwrite flag not set. Existing file not overwritten."
                logging.error(f"Failed to read or parse the diarized JSON file: {e}")
                if os.path.exists(diarized_json_path):
                    os.remove(diarized_json_path)

        # Generate new diarized transcription
        logging.info(f"Generating diarized transcription for {audio_file_path}")
        diarized_segments = combine_transcription_and_diarization(audio_file_path)

        # Validate diarized segments before saving
        if not diarized_segments or not isinstance(diarized_segments, list):
            logging.error("Generated diarized segments are empty or invalid")
            return None, None

        # Save diarized segments
        json_str = json.dumps(diarized_segments, indent=2)
        with open(diarized_json_path, 'w', encoding='utf-8') as f:
            f.write(json_str)

        return audio_file_path, diarized_segments

    # Non-diarized transcription
    try:
        # If segments file exists, try to load it
        if os.path.exists(segments_json_path):
            logging.info(f"Segments file already exists: {segments_json_path}")
            try:
                with open(segments_json_path, 'r', encoding='utf-8') as file:
                    segments = json.load(file)
                # Check if segments are empty or invalid
                if not segments or not isinstance(segments, list):
                    if not overwrite:
                        logging.info("Overwrite flag not set. Existing file not overwritten.")
                        return None, "Overwrite flag not set. Existing file not overwritten."
                    raise ValueError("Invalid segments JSON file")
                # Check if segments contain expected content
                if not all(
                        isinstance(segment, dict) and all(key in segment for key in ['Text', 'Time_Start', 'Time_End'])
                        for segment in segments):
                    if not overwrite:
                        logging.info("Overwrite flag not set. Existing file not overwritten.")
                        return None, "Overwrite flag not set. Existing file not overwritten."
                    raise ValueError("Invalid segment format")
                logging.debug(f"Loaded valid segments from {segments_json_path}")
                return audio_file_path, segments
            except (json.JSONDecodeError, ValueError, KeyError) as e:
                if not overwrite:
                    logging.info("Overwrite flag not set. Existing file not overwritten.")
                    return None, "Overwrite flag not set. Existing file not overwritten."
                logging.error(f"Failed to read or parse the segments JSON file: {str(e)}")
                if os.path.exists(segments_json_path):
                    os.remove(segments_json_path)

        # Generate new transcription if file doesn't exist
        audio_file, segments = re_generate_transcription(audio_file_path, whisper_model, vad_filter)
        if segments is None:
            logging.error("Failed to generate new transcription")
            return None, None

        return audio_file_path, segments

    except Exception as e:
        logging.error(f"Error in perform_transcription: {str(e)}")
        return None, None


def re_generate_transcription(audio_file_path, whisper_model, vad_filter):
    global segments_json_path
    try:
        logging.info(f"Generating new transcription for {audio_file_path}")
        segments = speech_to_text(audio_file_path, whisper_model=whisper_model, vad_filter=vad_filter)

        # Print the first few segments for debugging
        logging.debug(f"First few segments from speech_to_text: {segments[:2] if segments else 'None'}")

        # Validate segments before saving
        if not segments or not isinstance(segments, list):
            logging.error("Generated segments are empty or invalid")
            return None, None

        # More detailed validation
        if not all(isinstance(segment, dict) and all(key in segment for key in ['Text', 'Time_Start', 'Time_End']) for
                   segment in segments):
            logging.error("Generated segments are missing required fields or have invalid format")
            logging.debug(f"Segments structure: {segments[:2]}")  # Log first two segments for debugging
            return None, None

        # Save segments to JSON
        json_str = json.dumps(segments, indent=2)
        with open(segments_json_path, 'w', encoding='utf-8') as f:
            f.write(json_str)

        logging.debug(f"Valid transcription segments saved to {segments_json_path}")
        return audio_file_path, segments
    except Exception as e:
        logging.error(f"Error in re_generate_transcription: {str(e)}")
        return None, None


def save_transcription_and_summary(transcription_text, summary_text, download_path, info_dict):
    try:
        video_title = sanitize_filename(info_dict.get('title', 'Untitled'))

        # Handle different transcription_text formats
        if isinstance(transcription_text, dict):
            if 'transcription' in transcription_text:
                # Handle the case where it's a dict with 'transcription' key
                text_to_save = '\n'.join(segment['Text'] for segment in transcription_text['transcription'])
            else:
                # Handle other dictionary formats
                text_to_save = str(transcription_text)
        elif isinstance(transcription_text, list):
            # Handle list of segments
            text_to_save = '\n'.join(segment['Text'] for segment in transcription_text)
        else:
            # Handle string input
            text_to_save = str(transcription_text)

        # Validate the extracted text
        if not text_to_save or not text_to_save.strip():
            logging.error("Transcription text is empty or contains only whitespace")
            return None, None

        # Save transcription
        transcription_file_path = os.path.join(download_path, f"{video_title}_transcription.txt")
        with open(transcription_file_path, 'w', encoding='utf-8') as f:
            f.write(text_to_save)

        # Save summary if available
        summary_file_path = None
        if summary_text:
            if isinstance(summary_text, str) and summary_text.strip():
                summary_file_path = os.path.join(download_path, f"{video_title}_summary.txt")
                with open(summary_file_path, 'w', encoding='utf-8') as f:
                    f.write(summary_text)
            else:
                logging.warning("Summary text is not a string or contains only whitespace")

        return transcription_file_path, summary_file_path
    except Exception as e:
        logging.error(f"Error in save_transcription_and_summary: {str(e)}", exc_info=True)
        return None, None


def summarize_chunk(api_name, text, custom_prompt_input, api_key, temp=None, system_message=None):
    logging.debug("Entered 'summarize_chunk' function")
    try:
        result = summarize(text, custom_prompt_input, api_name, api_key, temp, system_message)
        if result is None or result.startswith("Error:"):
            logging.warning(f"Summarization with {api_name} failed: {result}")
            return None
        logging.info(f"Summarization with {api_name} successful")
        return result
    except Exception as e:
        logging.error(f"Error in summarize_chunk with {api_name}: {str(e)}", exc_info=True)
        return None


def extract_metadata_and_content(input_data):
    metadata = {}
    content = ""

    if isinstance(input_data, str):
        if os.path.exists(input_data):
            with open(input_data, 'r', encoding='utf-8') as file:
                data = json.load(file)
        else:
            try:
                data = json.loads(input_data)
            except json.JSONDecodeError:
                return {}, input_data
    elif isinstance(input_data, dict):
        data = input_data
    else:
        return {}, str(input_data)

    # Extract metadata
    metadata['title'] = data.get('title', 'No title available')
    metadata['author'] = data.get('author', 'Unknown author')

    # Extract content
    if 'transcription' in data:
        content = extract_text_from_segments(data['transcription'])
    elif 'segments' in data:
        content = extract_text_from_segments(data['segments'])
    elif 'content' in data:
        content = data['content']
    else:
        content = json.dumps(data)

    return metadata, content


def format_input_with_metadata(metadata, content):
    formatted_input = f"Title: {metadata.get('title', 'No title available')}\n"
    formatted_input += f"Author: {metadata.get('author', 'Unknown author')}\n\n"
    formatted_input += content
    return formatted_input

def perform_summarization(api_name, input_data, custom_prompt_input, api_key, recursive_summarization=False, temp=None, system_message=None):
    loaded_config_data = load_and_log_configs()
    logging.info("Starting summarization process...")
    if system_message is None:
        system_message = """
        You are a bulleted notes specialist. ```When creating comprehensive bulleted notes, you should follow these guidelines: Use multiple headings based on the referenced topics, not categories like quotes or terms. Headings should be surrounded by bold formatting and not be listed as bullet points themselves. Leave no space between headings and their corresponding list items underneath. Important terms within the content should be emphasized by setting them in bold font. Any text that ends with a colon should also be bolded. Before submitting your response, review the instructions, and make any corrections necessary to adhered to the specified format. Do not reference these instructions within the notes.``` \nBased on the content between backticks create comprehensive bulleted notes.
**Bulleted Note Creation Guidelines**

**Headings**:
- Based on referenced topics, not categories like quotes or terms
- Surrounded by **bold** formatting 
- Not listed as bullet points
- No space between headings and list items underneath

**Emphasis**:
- **Important terms** set in bold font
- **Text ending in a colon**: also bolded

**Review**:
- Ensure adherence to specified format
- Do not reference these instructions in your response.</s>[INST] {{ .Prompt }} [/INST]"""

    try:
        logging.debug(f"Input data type: {type(input_data)}")
        logging.debug(f"Input data (first 500 chars): {str(input_data)[:500]}...")

        # Extract metadata and content
        metadata, content = extract_metadata_and_content(input_data)

        logging.debug(f"Extracted metadata: {metadata}")
        logging.debug(f"Extracted content (first 500 chars): {content[:500]}...")

        # Prepare a structured input for summarization
        structured_input = format_input_with_metadata(metadata, content)

        # Perform summarization on the structured input
        if recursive_summarization:
            chunk_options = {
                'method': 'words',  # or 'sentences', 'paragraphs', 'tokens' based on your preference
                'max_size': 1000,  # adjust as needed
                'overlap': 100,  # adjust as needed
                'adaptive': False,
                'multi_level': False,
                'language': 'english'
            }
            chunks = improved_chunking_process(structured_input, chunk_options)
            logging.debug(f"Chunking process completed. Number of chunks: {len(chunks)}")
            logging.debug("Now performing recursive summarization on each chunk...")
            logging.debug("summary = recursive_summarize_chunks")
            summary = recursive_summarize_chunks([chunk['text'] for chunk in chunks],
                                                 lambda x: summarize_chunk(api_name, x, custom_prompt_input, api_key),
                                                 custom_prompt_input, temp, system_message)
        else:
            logging.debug("summary = summarize_chunk")
            summary = summarize_chunk(api_name, structured_input, custom_prompt_input, api_key, temp, system_message)

        # add some actual validation logic
        if summary is not None:
            logging.info(f"Summary generated using {api_name} API")
            if isinstance(input_data, str) and os.path.exists(input_data):
                summary_file_path = input_data.replace('.json', '_summary.txt')
                with open(summary_file_path, 'w', encoding='utf-8') as file:
                    file.write(summary)
        else:
            logging.warning(f"Failed to generate summary using {api_name} API")

        logging.info("Summarization completed successfully.")

        return summary

    except requests.exceptions.ConnectionError:
        logging.error("Connection error while summarizing")
    except Exception as e:
        logging.error(f"Error summarizing with {api_name}: {str(e)}", exc_info=True)
        return f"An error occurred during summarization: {str(e)}"
    return None

def extract_text_from_input(input_data):
    if isinstance(input_data, str):
        try:
            # Try to parse as JSON
            data = json.loads(input_data)
        except json.JSONDecodeError:
            # If not valid JSON, treat as plain text
            return input_data
    elif isinstance(input_data, dict):
        data = input_data
    else:
        return str(input_data)

    # Extract relevant fields from the JSON object
    text_parts = []
    if 'title' in data:
        text_parts.append(f"Title: {data['title']}")
    if 'description' in data:
        text_parts.append(f"Description: {data['description']}")
    if 'transcription' in data:
        if isinstance(data['transcription'], list):
            transcription_text = ' '.join([segment.get('Text', '') for segment in data['transcription']])
        elif isinstance(data['transcription'], str):
            transcription_text = data['transcription']
        else:
            transcription_text = str(data['transcription'])
        text_parts.append(f"Transcription: {transcription_text}")
    elif 'segments' in data:
        segments_text = extract_text_from_segments(data['segments'])
        text_parts.append(f"Segments: {segments_text}")

    return '\n\n'.join(text_parts)



def process_url(
        url,
        num_speakers,
        whisper_model,
        custom_prompt_input,
        offset,
        api_name,
        api_key,
        vad_filter,
        download_video_flag,
        download_audio,
        rolling_summarization,
        detail_level,
        # It's for the asking a question about a returned prompt - needs to be removed #FIXME
        question_box,
        keywords,
        chunk_text_by_words,
        max_words,
        chunk_text_by_sentences,
        max_sentences,
        chunk_text_by_paragraphs,
        max_paragraphs,
        chunk_text_by_tokens,
        max_tokens,
        chunk_by_semantic,
        semantic_chunk_size,
        semantic_chunk_overlap,
        local_file_path=None,
        diarize=False,
        recursive_summarization=False,
        temp=None,
        system_message=None):
    # Handle the chunk summarization options
    set_chunk_txt_by_words = chunk_text_by_words
    set_max_txt_chunk_words = max_words
    set_chunk_txt_by_sentences = chunk_text_by_sentences
    set_max_txt_chunk_sentences = max_sentences
    set_chunk_txt_by_paragraphs = chunk_text_by_paragraphs
    set_max_txt_chunk_paragraphs = max_paragraphs
    set_chunk_txt_by_tokens = chunk_text_by_tokens
    set_max_txt_chunk_tokens = max_tokens
    set_chunk_txt_by_semantic = chunk_by_semantic
    set_semantic_chunk_size = semantic_chunk_size
    set_semantic_chunk_overlap = semantic_chunk_overlap

    progress = []
    success_message = "All videos processed successfully. Transcriptions and summaries have been ingested into the database."

    # Validate input
    if not url and not local_file_path:
        return "Process_URL: No URL provided.", "No URL provided.", None, None, None, None, None, None

    if isinstance(url, str):
        urls = url.strip().split('\n')
        if len(urls) > 1:
            return process_video_urls(urls, num_speakers, whisper_model, custom_prompt_input, offset, api_name, api_key, vad_filter,
                                      download_video_flag, download_audio, rolling_summarization, detail_level, question_box,
                                      keywords, chunk_text_by_words, max_words, chunk_text_by_sentences, max_sentences,
                                      chunk_text_by_paragraphs, max_paragraphs, chunk_text_by_tokens, max_tokens, chunk_by_semantic, semantic_chunk_size, semantic_chunk_overlap, recursive_summarization)
        else:
            urls = [url]

    if url and not is_valid_url(url):
        return "Process_URL: Invalid URL format.", "Invalid URL format.", None, None, None, None, None, None

    if url:
        # Clean the URL to remove playlist parameters if any
        url = clean_youtube_url(url)
        logging.info(f"Process_URL: Processing URL: {url}")

    if api_name:
        print("Process_URL: API Name received:", api_name)  # Debugging line

    video_file_path = None
    global info_dict

    # If URL/Local video file is provided
    try:
        info_dict, title = extract_video_info(url)
        download_path = create_download_directory(title)
        current_whsiper_model = whisper_model
        video_path = download_video(url, download_path, info_dict, download_video_flag, current_whsiper_model)
        global segments
        audio_file_path, segments = perform_transcription(video_path, offset, whisper_model, vad_filter)

        if diarize:
            transcription_text = combine_transcription_and_diarization(audio_file_path)
        else:
            audio_file, segments = perform_transcription(video_path, offset, whisper_model, vad_filter)
            transcription_text = {'audio_file': audio_file, 'transcription': segments}


        if audio_file_path is None or segments is None:
            logging.error("Process_URL: Transcription failed or segments not available.")
            return "Process_URL: Transcription failed.", "Transcription failed.", None, None, None, None

        logging.debug(f"Process_URL: Transcription audio_file: {audio_file_path}")
        logging.debug(f"Process_URL: Transcription segments: {segments}")

        logging.debug(f"Process_URL: Transcription text: {transcription_text}")

        # FIXME - Implement chunking calls here
        # Implement chunking calls here
        chunked_transcriptions = []
        if chunk_text_by_words:
            chunked_transcriptions = chunk_text_by_words(transcription_text['transcription'], max_words)
        elif chunk_text_by_sentences:
            chunked_transcriptions = chunk_text_by_sentences(transcription_text['transcription'], max_sentences)
        elif chunk_text_by_paragraphs:
            chunked_transcriptions = chunk_text_by_paragraphs(transcription_text['transcription'], max_paragraphs)
        elif chunk_text_by_tokens:
            chunked_transcriptions = chunk_text_by_tokens(transcription_text['transcription'], max_tokens)
        elif chunk_by_semantic:
            chunked_transcriptions = semantic_chunking(transcription_text['transcription'], semantic_chunk_size, 'tokens')

        # If we did chunking, we now have the chunked transcripts in 'chunked_transcriptions'
        elif rolling_summarization:
        # FIXME - rolling summarization
        #     text = extract_text_from_segments(segments)
        #     summary_text = rolling_summarize_function(
        #         transcription_text,
        #         detail=detail_level,
        #         api_name=api_name,
        #         api_key=api_key,
        #         custom_prompt_input=custom_prompt_input,
        #         chunk_by_words=chunk_text_by_words,
        #         max_words=max_words,
        #         chunk_by_sentences=chunk_text_by_sentences,
        #         max_sentences=max_sentences,
        #         chunk_by_paragraphs=chunk_text_by_paragraphs,
        #         max_paragraphs=max_paragraphs,
        #         chunk_by_tokens=chunk_text_by_tokens,
        #         max_tokens=max_tokens
        #     )
            pass
        else:
            pass

        summarized_chunk_transcriptions = []

        if chunk_text_by_words or chunk_text_by_sentences or chunk_text_by_paragraphs or chunk_text_by_tokens or chunk_by_semantic and api_name:
            # Perform summarization based on chunks
            for chunk in chunked_transcriptions:
                summarized_chunks = []
                if api_name == "anthropic":
                    summary = summarize_with_anthropic(api_key, chunk, custom_prompt_input)
                elif api_name == "cohere":
                    summary = summarize_with_cohere(api_key, chunk, custom_prompt_input, temp, system_message)
                elif api_name == "openai":
                    summary = summarize_with_openai(api_key, chunk, custom_prompt_input, temp, system_message)
                elif api_name == "Groq":
                    summary = summarize_with_groq(api_key, chunk, custom_prompt_input, temp, system_message)
                elif api_name == "DeepSeek":
                    summary = summarize_with_deepseek(api_key, chunk, custom_prompt_input, temp, system_message)
                elif api_name == "OpenRouter":
                    summary = summarize_with_openrouter(api_key, chunk, custom_prompt_input, temp, system_message)
                # Local LLM APIs
                elif api_name == "Llama.cpp":
                    summary = summarize_with_llama(chunk, custom_prompt_input, api_key, temp, system_message)
                elif api_name == "Kobold":
                    summary = summarize_with_kobold(chunk, None, custom_prompt_input, system_message, temp)
                elif api_name == "Ooba":
                    summary = summarize_with_oobabooga(chunk, None, custom_prompt_input, system_message, temp)
                elif api_name == "Tabbyapi":
                    summary = summarize_with_tabbyapi(chunk, custom_prompt_input, system_message, None, temp)
                elif api_name == "VLLM":
                    summary = summarize_with_vllm(chunk, custom_prompt_input, None, None, system_message)
                elif api_name == "Ollama":
                    summary = summarize_with_ollama(chunk, custom_prompt_input, api_key, temp, system_message, None)
                elif api_name == "custom_openai_api":
                    summary = summarize_with_custom_openai(chunk, custom_prompt_input, api_key, temp=None, system_message=None)

                summarized_chunk_transcriptions.append(summary)

        # Combine chunked transcriptions into a single file
        combined_transcription_text = '\n\n'.join(chunked_transcriptions)
        combined_transcription_file_path = os.path.join(download_path, 'combined_transcription.txt')
        with open(combined_transcription_file_path, 'w') as f:
            f.write(combined_transcription_text)

        # Combine summarized chunk transcriptions into a single file
        combined_summary_text = '\n\n'.join(summarized_chunk_transcriptions)
        combined_summary_file_path = os.path.join(download_path, 'combined_summary.txt')
        with open(combined_summary_file_path, 'w') as f:
            f.write(combined_summary_text)

        # Handle rolling summarization
        if rolling_summarization:
            summary_text = rolling_summarize(
                text=extract_text_from_segments(segments),
                detail=detail_level,
                model='gpt-4-turbo',
                additional_instructions=custom_prompt_input,
                summarize_recursively=recursive_summarization
            )
        elif api_name:
            summary_text = perform_summarization(api_name, segments_json_path, custom_prompt_input, api_key,
                                                 recursive_summarization, temp=None)
        else:
            summary_text = 'Summary not available'

        # Check to see if chunking was performed, and if so, return that instead
        if chunk_text_by_words or chunk_text_by_sentences or chunk_text_by_paragraphs or chunk_text_by_tokens or chunk_by_semantic:
            # Combine chunked transcriptions into a single file
            # FIXME - validate this works....
            json_file_path, summary_file_path = save_transcription_and_summary(combined_transcription_file_path, combined_summary_file_path, download_path, info_dict)
            add_media_to_database(url, info_dict, segments, summary_text, keywords, custom_prompt_input, whisper_model)
            return transcription_text, summary_text, json_file_path, summary_file_path, None, None
        else:
            json_file_path, summary_file_path = save_transcription_and_summary(transcription_text, summary_text, download_path, info_dict)
            add_media_to_database(url, info_dict, segments, summary_text, keywords, custom_prompt_input, whisper_model)
            return transcription_text, summary_text, json_file_path, summary_file_path, None, None

    except Exception as e:
        logging.error(f": {e}")
        return str(e), 'process_url: Error processing the request.', None, None, None, None

#
#
############################################################################################################################################