/pdf-q-a-llamaindex-llama2

Chat with your PDF files using LlamaIndex, Astra DB (Apache Cassandra), and Gradient's open-source models, including LLama2 and Streamlit, all designed for seamless interaction with PDF files.

Primary LanguageJupyter NotebookApache License 2.0Apache-2.0

Build a PDF Document Question Answering System with Llama2, LlamaIndex

I'll walk you through the steps to create a powerful PDF Document-based Question Answering System using using Retrieval Augmented Generation. We'll harness the power of LlamaIndex, enhanced with the Llama2 model API using Gradient's LLM solution, seamlessly merge it with DataStax's Apache Cassandra as a vector database. This innovative blend unlocks exciting opportunities for immersive interactions with pdf documents through engaging conversations. Get ready to explore this cutting-edge technology!

Click to open the Notebook directly in Google Colab

Open in Colab

To view the video

or click on the image below

pdf_q_a

GitHub Sponsor Telegram Channel Link

If you like my work, you can support me by buying me a coffee by clicking the link below

Buy Me A Coffee

🛠 Languages & Tools Used:

Python Git logo Jupyter

Follow Me

Show your support by starring the repository 🙂