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YouTubeGPT ft. Marquees Brownlee (@mkbhd)

AI Chatbot with 100+ videos from YouTuber MKBHD

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Table of Contents

    📝 About
      💻 How to build
      🚀 Next steps
        🔧 Tools used
          👤 Contact

        📝 About

        Chat with 100+ YouTube videos from any creator in less than 10 minutes. This project combines basic Python scripting, vector embeddings, OpenAI, Pinecone, and Langchain into a modern chat interface, allowing you to quickly reference any content your favorite YouTuber covers. Type in natural language and get returned detailed answers: (1) in the style / tone of your YouTuber, and (2) with the top 2-3 specific videos referenced hyperlinked.

        Example used in this repo is tech content creator Marques Brownlee, also known as MKBHD

        💻 How to build

        Note: macOS version, adjust accordingly for Windows / Linux

        Initial setup

        Clone and install dependencies:

        git clone https://github.com/vdutts7/yt-ai-chat
        cd yt-ai-chat
        npm i

        Copy .env.example and rename to .env in root directory. Fill out API keys:

        ASSEMBLY_AI_API_TOKEN=""
        OPENAI_API_KEY=""
        PINECONE_API_KEY=""
        PINECONE_ENVIRONMENT=""
        PINECONE_INDEX=""

        Get API keys:

        IMPORTANT: Verify that .gitignore contains .env in it.

        Handle massive data

        Outline:

        • Export metadata (.csv) of YouTube videos ⬇️
        • Download the audio files
        • Transcribe audio files

        Navigate to scripts folder, which will host all of the data from the YouTube videos.

        cd scripts

        Setup python environemnt:

        conda env list
        conda activate youtube-chat
        pip install -r requirements.txt

        Scrape YouTube channel-- replace @mkbhd with channel of your choice. Replace 100 with the number of videos you want included (the script traverses backwards starting from most recent upload). A new file mkbhd.csv will be created at the directory as referenced below:

        python scripts/scrape_vids.py https://www.youtube.com/@mkbhd 100 scripts/vid_list/mkbhd.csv

        Refer to example_mkbhd.csv inside folder and verify your output matches this format:

        imageDownload audio files:
        python scripts/download_yt_audios.py scripts/vid_list/mkbhd.csv scripts/audio_files/
        image

        We will utilize AssemblyAI's API wrapper class for OpenAI's Whisper API. Their script provides step-by-step directions for a more efficient, faster speech-to-text conversion as Whisper is way too slow and will cost you more. I spent ~ $3.50 to transcribe the 100 videos for MKBHD.

        image
        python scripts/transcribe_audios.py scripts/audio_files/ scripts/transcripts
        image

        Upsert to Pinecone database:

        python scripts/pinecone_helper.py scripts/vid_list/mkbhd.csv scripts/transcripts/

        Pinecone index setup I used below. I used P1 since this is optimized for speed. 1536 is OpenAI's standard we're limited to when querying data from the vectorstore:

        image

        Embeddings and database backend

        Breaking down scripts/pinecone_helper.py :

        • Chunk size of 1000 characters with 500 character overlap. I found this working for me but obviously experiment and adjust according to your content library's size, complexity, etc.
        • Metadata: (1) video url and (2) video title

        With Pinecone vectorstore loaded, we use Langchain's Conversational Retrieval QA to ask questions, extract relevant metadata from our embeddings, and deliver back to the user in a packaged format as an answer.

        The relevant video titles are cited via hyperlinks directly to the video url.

        Frontend UI with chat

        NextJs styled with Tailwind CSS. src/pages/index.tsx contains base skeleton. src/pages/api/chat-chain.ts is heart of the code where the Langchain connections are outlined. You should be able to type and ask questions now. Done ✅

        LogoScreenshot 2023-06-20 at 4 17 08 PM

        🚀Next Steps

        • Add sidebar of video links to reference
        • User auth + DB backend to store chat history / log queries
        • Improve bot personality: edit prompt template in /src/pages/api/chat-chain.ts to fine-tune output to sound more realistic.

        🔧Tools Used

        Python Langchain OpenAI AssemblyAI Pinecone Next

        👤Contact

        Email Twitter