Mistral Small but Mighty – Apache 2.0, Multimodal & Fast

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​ Exploring Mistral Small 3.1: The Latest Open-Source AI Model

In this video, I dive into the features and benchmarks of Mistral Small 3.1, a new open-source, multimodal, and multilingual model. I compare it with Google’s Gemma 3, showcase its context window, latency, and multilingual abilities, and provide examples of its performance in text classification and image understanding.

LINKS:
https://colab.research.google.com/drive/1G0RJx3_omAWNTCWb5KFrUwXw7gBLJbxS?usp=sharing

RAG Beyond Basics Course:
https://prompt-s-site.thinkific.com/courses/rag
https://mistral.ai/news/mistral-small-3-1
https://docs.mistral.ai/getting-started/models/models_overview/
https://huggingface.co/mistralai/Mistral-Small-3.1-24B-Instruct-2503
https://docs.google.com/document/d/1ja4xYm985hH6pmfioYbeRoFMTBwbADKq-shHeUzcYTg/edit?usp=sharing

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Supercharge Your RAG Pipeline with DeepSeq R1: A Step-by-Step Guide

00:00 Introduction to Mistral Small 3.1
00:27 Model Overview and Benchmarks
01:40 Multimodal and Multilingual Capabilities
02:28 Performance on Long Context Tasks
03:59 Getting Started with Mistral Small 3.1
04:17 System Prompt and Usage Guidelines
07:27 API Interaction Examples
09:47 Image and OCR Capabilities
13:51 Conclusion and Future Plans   Read More Prompt Engineering 

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