
I’m linking this repo because it’s the fastest way to reproduce the exact DeepSeek R1 (Ollama) vs Gemini Pro 1.5 setup I demo—same Streamlit UI, same RAG vs non-RAG flow. If you want a clean baseline for LLM comparison and RAG grounding with FAISS, this code gets you there without guesswork.
You'll be taken to Github to complete your purchase.
![How to Distill LLM? LLM Distilling [Explained] Step-by-Step using Python Hugging Face AutoTrain](https://img.youtube.com/vi/tpMOF1cT4Fc/mqdefault.jpg)
How to Distill LLM? LLM Distilling [Explained] Step-by-Step using Python Hugging Face AutoTrain
7K views · 2025-02-28 09:30:25
![Deepseek R1 Fine Tuning [ How to Fine Tune LLM ] Parameter Efficient Fine Tuning LORA Unsloth Ollama](https://img.youtube.com/vi/DM-kAwsFf1U/mqdefault.jpg)
Deepseek R1 Fine Tuning [ How to Fine Tune LLM ] Parameter Efficient Fine Tuning LORA Unsloth Ollama
18K views · 2025-02-12 12:30:23
![DeepSeek R1 vs Google Gemini [Comparison] Ollama FAISS VectorDB RAG Streamlit GenAI Project Tutorial](https://img.youtube.com/vi/cx10zFLSpHw/mqdefault.jpg)
DeepSeek R1 vs Google Gemini [Comparison] Ollama FAISS VectorDB RAG Streamlit GenAI Project Tutorial
1K views · 2025-02-08 12:30:16