438 lines
18 KiB
Python
438 lines
18 KiB
Python
import os
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import json
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from datetime import datetime
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from dotenv import load_dotenv
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import streamlit as st
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import base64
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# Load .env file
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load_dotenv()
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#from lib.chatbot_custom.chatbot_local_docqa import alwrity_chat_docqa
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from lib.utils.alwrity_utils import (blog_from_keyword, ai_agents_team, essay_writer, ai_news_writer, ai_seo_tools,
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ai_finance_ta_writer, ai_social_writer,
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do_web_research, competitor_analysis,
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)
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from lib.ai_writers.ai_story_writer.story_writer import story_input_section
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from lib.ai_writers.ai_product_description_writer import write_ai_prod_desc
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def check_api_keys():
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"""
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Checks if the required API keys are present in the environment variables.
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Prompts the user to enter missing keys and saves them in the .env file.
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"""
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api_keys = {
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"METAPHOR_API_KEY": "https://dashboard.exa.ai/login",
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"TAVILY_API_KEY": "https://tavily.com/#api",
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"SERPER_API_KEY": "https://serper.dev/signup",
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"STABILITY_API_KEY": "https://platform.stability.ai/",
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"FIRECRAWL_API_KEY": "https://www.firecrawl.dev/account"
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}
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missing_keys = {
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key: url for key, url in api_keys.items() if os.getenv(key) is None
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}
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if missing_keys:
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st.error("🚨 Some API keys are missing! Please provide them below:")
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for key, url in missing_keys.items():
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api_key = st.text_input(f"Enter 🔏 {key}: 👉[Get it here]({url})👈")
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if api_key:
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os.environ[key] = api_key
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with open(".env", "a") as env_file:
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env_file.write(f"{key}={api_key}\n")
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st.success(f"✅ {key} added successfully!")
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return False
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return True
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def check_llm_environs():
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"""
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Ensures that the LLM provider and corresponding API key are set.
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Prompts the user to select a provider and enter the API key if missing.
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"""
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gpt_provider = os.getenv("GPT_PROVIDER")
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supported_providers = {
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'google': "GEMINI_API_KEY",
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'openai': "OPENAI_API_KEY",
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'mistralai': "MISTRAL_API_KEY"
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}
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if not gpt_provider or gpt_provider.lower() not in supported_providers:
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gpt_provider = st.selectbox(
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"Select your LLM Provider", options=list(supported_providers.keys())
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)
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os.environ["GPT_PROVIDER"] = gpt_provider
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with open(".env", "a") as env_file:
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env_file.write(f"GPT_PROVIDER={gpt_provider}\n")
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st.success(f"GPT Provider set to {gpt_provider}")
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api_key_var = supported_providers[gpt_provider.lower()]
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if not os.getenv(api_key_var):
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api_key = st.text_input(f"Enter {api_key_var}:")
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if api_key:
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os.environ[api_key_var] = api_key
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with open(".env", "a") as env_file:
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env_file.write(f"{api_key_var}={api_key}\n")
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st.success(f"{api_key_var} added successfully!")
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return False
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return True
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def save_config(config):
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"""
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Saves the provided configuration dictionary to a JSON file specified by the environment variable.
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"""
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try:
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with open(os.getenv("ALWRITY_CONFIG"), "w") as config_file:
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json.dump(config, config_file, indent=4)
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except Exception as e:
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st.error(f"An error occurred while saving the configuration: {e}")
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# Sidebar configuration
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def sidebar_configuration():
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st.sidebar.title("🛠️ Personalization 🏗️")
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with st.sidebar.expander("**👷 Content Personalization**"):
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blog_length = st.text_input("**Content Length**", value="2000",
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help="Length of blogs Or word count. Note: It won't be exact and depends on GPT providers and Max token count.")
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blog_tone_options = ["Casual", "Professional", "How-to", "Beginner", "Research", "Programming", "Social Media", "Customize"]
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blog_tone = st.selectbox("**Content Tone**",
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options=blog_tone_options,
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help="Choose the tone of the blog.")
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if blog_tone == "Customize":
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custom_tone = st.text_input("Enter the tone of your content", help="Specify the tone of your content.")
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if custom_tone:
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blog_tone = custom_tone
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else:
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st.warning("Please specify the tone of your content.")
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blog_demographic_options = ["Professional", "Gen-Z", "Tech-savvy", "Student", "Digital Marketing", "Customize"]
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blog_demographic = st.selectbox("Target Audience",
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options=blog_demographic_options,
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help="Choose the target audience.")
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if blog_demographic == "Customize":
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custom_demographic = st.text_input("Enter your target audience",
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help="Specify your target audience.",
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placeholder="Eg. Domain expert, Content creator, Financial expert etc..")
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if custom_demographic:
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blog_demographic = custom_demographic
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else:
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st.warning("Please specify your target audience.")
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blog_type = st.selectbox("Content Type",
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options=["Informational", "Commercial", "Company", "News", "Finance", "Competitor", "Programming", "Scholar"],
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help="Choose the type of the blog.")
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blog_language = st.selectbox("Content Language",
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options=["English", "Spanish", "German", "Chinese", "Arabic", "Nepali", "Hindi", "Hindustani", "Customize"],
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help="Choose the language of the blog.")
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if blog_language == "Customize":
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custom_lang = st.text_input("Enter the language of your choice", help="Specify the content language.")
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if custom_lang:
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blog_language = custom_lang
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else:
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st.warning("Please specify the language of your content.")
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blog_output_format = st.selectbox("Content Output Format",
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options=["markdown", "HTML", "plaintext"],
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help="Choose the output format of the blog.")
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with st.sidebar.expander("**🩻 Images Personalization**"):
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image_generation_model = st.selectbox("Image Generation Model",
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options=["stable-diffusion", "dalle2", "dalle3"],
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help="Choose the image generation model.")
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number_of_blog_images = st.number_input("Number of Blog Images", value=1, help="Number of blog images to include.")
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with st.sidebar.expander("**🤖 LLM Personalization**"):
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gpt_provider = st.selectbox("GPT Provider",
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options=["google", "openai", "minstral"],
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help="Choose the GPT provider.")
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model = st.text_input("Model", value="gemini-1.5-flash-latest", help="Mention which model of the above provider to use.")
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temperature = st.slider(
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"Temperature",
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min_value=0.1,
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max_value=1.0,
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value=0.7,
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step=0.1,
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format="%.1f",
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help="""Temperature controls the 'creativity' or randomness of the text generated by GPT.
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Greater determinism with higher values indicating more randomness."""
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)
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top_p = st.slider(
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"Top-p",
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min_value=0.0,
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max_value=1.0,
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value=0.9,
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step=0.1,
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format="%.1f",
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help="Top-p sampling controls the level of diversity in the generated text."
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)
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# Selectbox for max tokens
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max_tokens_options = [500, 1000, 2000, 4000, 16000, 32000, 64000]
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max_tokens = st.selectbox(
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"Max Tokens",
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options=max_tokens_options,
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index=max_tokens_options.index(4000),
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help="Max tokens determine the maximum length of the output sequence generated by a model."
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)
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n = st.number_input("N",
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value=1,
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min_value=1,
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max_value=10,
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help="Defines the number of words or characters grouped together in a sequence when analyzing text.")
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frequency_penalty = st.slider(
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"Frequency Penalty",
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min_value=0.0,
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max_value=2.0,
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value=1.0,
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step=0.1,
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format="%.1f",
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help="Influences word selection during text generation, promoting diversity with higher values."
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)
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presence_penalty = st.slider(
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"Presence Penalty",
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min_value=0.0,
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max_value=2.0,
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value=1.0,
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step=0.1,
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format="%.1f",
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help="Encourages the use of diverse words by discouraging repetition."
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)
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with st.sidebar.expander("**🕵️ Search Engine Personalization**"):
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geographic_location = st.selectbox("Geographic Location",
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options=["us", "in", "fr", "cn"],
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help="Choose the geo location for the web search.")
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search_language = st.selectbox("Search Language",
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options=["en", "zn-cn", "de", "hi"],
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help="Choose the language for search results.")
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number_of_results = st.number_input("Number of Results",
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value=10,
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max_value=20,
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min_value=1,
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help="Number of Google search results to fetch.")
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time_range = st.selectbox("Time Range",
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options=["anytime", "past day", "past week", "past month", "past year"],
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help="Choose the time range for search results.")
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include_domains = st.text_input("Include Domains", value="",
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help="A list of domains to specifically include in the search results. Default is None, which includes all domains.")
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similar_url = st.text_input("Similar URL", value="", help="A single URL that instructs search engines to give results similar to the given URL.")
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# Storing collected inputs in a dictionary
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config = {
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"Blog Content Characteristics": {
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"Blog Length": blog_length,
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"Blog Tone": blog_tone,
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"Blog Demographic": blog_demographic,
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"Blog Type": blog_type,
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"Blog Language": blog_language,
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"Blog Output Format": blog_output_format
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},
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"Blog Images Details": {
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"Image Generation Model": image_generation_model,
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"Number of Blog Images": number_of_blog_images
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},
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"LLM Options": {
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"GPT Provider": gpt_provider,
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"Model": model,
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"Temperature": temperature,
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"Top-p": top_p,
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"Max Tokens": max_tokens,
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"N": n,
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"Frequency Penalty": frequency_penalty,
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"Presence Penalty": presence_penalty
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},
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"Search Engine Parameters": {
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"Geographic Location": geographic_location,
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"Search Language": search_language,
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"Number of Results": number_of_results,
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"Time Range": time_range,
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"Include Domains": include_domains,
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"Similar URL": similar_url
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}
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}
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# Writing the configuration to a file whenever a change is made
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save_config(config)
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# Function to read prompts from the file
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def read_prompts(file_path="prompt_llm.txt"):
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if os.path.exists(file_path):
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with open(file_path, "r") as file:
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prompts = file.readlines()
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return [prompt.strip() for prompt in prompts]
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return []
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# Function to write prompts to the file
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def write_prompts(prompts, file_path="prompt_llm.txt"):
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with open(file_path, "w") as file:
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for prompt in prompts:
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file.write(f"{prompt}\n")
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# Function to load and encode the image file
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def load_image(image_path):
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with open(image_path, "rb") as img_file:
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b64_string = base64.b64encode(img_file.read()).decode()
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return b64_string
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def main():
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# Use the encoded image in HTML
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# Load and encode the image
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try:
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# Read the CSS file content
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css_file_path = os.path.join('lib', 'workspace', 'alwrity_ui_styling.css')
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with open(css_file_path) as f:
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custom_css = f.read()
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# Set the page configuration
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st.set_page_config(page_title="Alwrity", layout="wide")
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# Inject custom CSS into the Streamlit app
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st.markdown(f'<style>{custom_css}</style>', unsafe_allow_html=True)
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except Exception as err:
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st.error(f"Failed in setting up Alwrity Streamlit UI: {err}")
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image_base64 = load_image("lib/workspace/alwrity_logo.png")
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st.markdown(f"""
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<div class='main-header'>
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<img src='data:image/png;base64,{image_base64}' alt='Alwrity Logo' style='height: 50px; margin-right: 10px; vertical-align: middle;'>
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Welcome to Alwrity!
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</div>
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""", unsafe_allow_html=True)
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# Export the paths and file names. Dont want alwrity to be chatty and prompt for inputs.
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os.environ["SEARCH_SAVE_FILE"] = os.path.join(os.getcwd(), "lib", "workspace", "alwrity_web_research",
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f"web_research_report_{datetime.now().strftime('%Y-%m-%d_%H-%M-%S')}")
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os.environ["IMG_SAVE_DIR"] = os.path.join(os.getcwd(), "lib", "workspace", "alwrity_content")
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os.environ["CONTENT_SAVE_DIR"] = os.path.join(os.getcwd(), "lib", "workspace", "alwrity_content")
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os.environ["PROMPTS_DIR"] = os.path.join(os.getcwd(), "lib", "workspace", "alwrity_prompts")
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os.environ["ALWRITY_CONFIG"] = os.path.join(os.getcwd(), "lib", "workspace", "alwrity_config", "main_config.json")
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# Check API keys and LLM environment settings
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sidebar_configuration()
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if check_api_keys() and check_llm_environs():
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# Define the tabs
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tab1, tab2, tab3, tab4, tab5, tab6 = st.tabs(
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["✍️🤖AI Writers", " 📝📅Content Planning", "🤝🤖Agents Teams", "🛠️🔍AI SEO tools", "📱AI Social Tools", " 💬Ask Alwrity"])
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with tab1:
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ai_writers()
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with tab2:
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content_planning_tools()
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with tab3:
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ai_agents_team()
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with tab4:
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ai_seo_tools()
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with tab5:
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ai_social_writer()
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with tab6:
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st.subheader("Chat with your Data, Chat with any Data.. COMING SOON !")
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st.markdown("Create a collection by uploading files (PDF, MD, CSV, etc), or crawl a data source (Websites, more sources coming soon.")
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st.markdown("One can ask/chat, summarize and do semantic search over the uploaded data")
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#alwrity_chat_docqa()
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# Sidebar for prompt modification
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st.sidebar.title("📝 Modify Prompts")
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prompts = read_prompts()
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if prompts:
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edited_prompts = []
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for i, prompt in enumerate(prompts):
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edited_prompt = st.sidebar.text_area(f"Prompt {i+1}", prompt)
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edited_prompts.append(edited_prompt)
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if st.sidebar.button("Save Prompts"):
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write_prompts(edited_prompts)
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st.sidebar.success("Prompts saved successfully!")
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else:
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st.sidebar.warning("No prompts found in the file.")
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# Functions for the main options
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def ai_writers():
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options = [
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"AI Blog Writer",
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"Story Writer",
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"Essay writer",
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"Write News reports",
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"Write Financial TA report",
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"AI Product Description Writer",
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"AI Copywriter",
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"Quit"
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]
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choice = st.selectbox("**👇Select a content creation type:**", options, index=0, format_func=lambda x: f"📝 {x}")
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if choice == "AI Blog Writer":
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blog_from_keyword()
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elif choice == "Write from audio files":
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blog_from_audio()
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elif choice == "Story Writer":
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story_input_section()
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elif choice == "Essay writer":
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essay_writer()
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elif choice == "Write News reports":
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ai_news_writer()
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elif choice == "Write Financial TA report":
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ai_finance_ta_writer()
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elif choice == "AI Product Description Writer":
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write_ai_prod_desc()
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elif choice == "Quit":
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st.subheader("Exiting, Getting Lost. But.... I have nowhere to go 🥹🥹")
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def content_planning_tools():
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st.markdown("""**Alwrity content Ideation & Planning** : Provide few keywords to do comprehensive web research.
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Provide few keywords to get Google, Neural, pytrends analysis. Know keywords, blog titles to target.
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Generate months long content calendar around given keywords.""")
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options = [
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"Keywords Researcher",
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"Competitor Analysis",
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"Get Content Calender"
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]
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choice = st.radio("Select a content planning tool:", options, index=0, format_func=lambda x: f"🔍 {x}")
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if choice == "Keywords Researcher":
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do_web_research()
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elif choice == "Competitor Analysis":
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competitor_analysis()
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elif choice == "Get Content Calender":
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planning_agents()
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def alwrity_brain():
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st.title("🧠 Alwrity Brain, Better than yours!")
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st.write("Choose a folder to write content on. Alwrity will do RAG on these documents. The documents can of any type, pdf, pptx, docs, txt, cs etc. Video files and Audio files are also permitted.")
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folder_path = st.text_input("**Enter folder path:**")
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if st.button("**Process Folder**"):
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if folder_path:
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try:
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process_folder_for_rag(folder_path)
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st.success("Folder processed successfully!")
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except Exception as e:
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st.error(f"Error processing folder: {e}")
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else:
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st.warning("Please enter a valid folder path.")
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if __name__ == "__main__":
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main()
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