Mistral AI Development: AI with Mistral, LangChain & Ollama, Learn AI-powered document search, RAG, FastAPI, ChromaDB, embeddings, vector search, and Streamlit UI.
Course Description
Are you ready to build AI-powered applications with Mistral AI, LangChain, and Ollama? This course is designed to help you master local AI development by leveraging retrieval-augmented generation (RAG), document search, vector embeddings, and knowledge retrieval using FastAPI, ChromaDB, and Streamlit. You will learn how to process PDFs, DOCX, and TXT files, implement AI-driven search, and deploy a fully functional AI-powered assistant—all while running everything locally for maximum privacy and security.
What You’ll Learn in This Course?
- Set up and configure Mistral AI and Ollama for local AI-powered development.
- Extract and process text from documents using PDF, DOCX, and TXT file parsing.
- Convert text into embeddings with sentence-transformers and Hugging Face models.
- Store and retrieve vectorized documents efficiently using ChromaDB for AI search.
- Implement Retrieval-Augmented Generation (RAG) to enhance AI-powered question answering.
- Develop AI-driven APIs with FastAPI for seamless AI query handling.
- Build an interactive AI chatbot interface using Streamlit for document-based search.
- Optimize local AI performance for faster search and response times.
- Enhance AI search accuracy using advanced embeddings and query expansion techniques.
- Deploy and run a self-hosted AI assistant for private, cloud-free AI-powered applications.
Key Technologies & Tools Used
- Mistral AI – A powerful open-source LLM for local AI applications.
- Ollama – Run AI models locally without relying on cloud APIs.
- LangChain – Framework for retrieval-based AI applications and RAG implementation.
- ChromaDB – Vector database for storing embeddings and improving AI-powered search.
- Sentence-Transformers – Embedding models for better text retrieval and semantic search.
- FastAPI – High-performance API framework for building AI-powered search endpoints.
- Streamlit – Create interactive AI search UIs for document-based queries.
- Python – Core language for AI development, API integration, and automation.
Why Take This Course?
- AI-Powered Search & Knowledge Retrieval – Build document-based AI assistants that provide accurate, AI-driven answers.
- Self-Hosted & Privacy-Focused AI – No OpenAI API costs or data privacy concerns—everything runs locally.
- Hands-On AI Development – Learn by building real-world AI projects with LangChain, Ollama, and Mistral AI.
- Deploy AI Apps with APIs & UI – Create FastAPI-powered AI services and user-friendly AI interfaces with Streamlit.
- Optimize AI Search Performance – Implement query optimization, better embeddings, and fast retrieval techniques.
Who Should Take This Course?
- AI Developers & ML Engineers wanting to build local AI-powered applications.
- Python Programmers & Software Engineers exploring self-hosted AI with Mistral & LangChain.
- Tech Entrepreneurs & Startups looking for affordable, cloud-free AI solutions.
- Cybersecurity Professionals & Privacy-Conscious Users needing local AI without data leaks.
- Data Scientists & Researchers working on AI-powered document search & knowledge retrieval.
- Students & AI Enthusiasts eager to learn practical AI implementation with real-world projects.
Course Outcome: Build Real-World AI Solutions
By the end of this course, you will have a fully functional AI-powered knowledge assistant capable of searching, retrieving, summarizing, and answering questions from documents—all while running completely offline.
Enroll now and start mastering Mistral AI, LangChain, and Ollama for AI-powered local applications.
https://www.udemy.com/course/mistral-ai-development-mistral-langchain-ollama/?couponCode=MARCH012025