Langchain: Integration of ElasticSearch Vector Store and RAG with Gemini
Offered By: The Machine Learning Engineer via YouTube
Course Description
Overview
Explore the integration of Langchain with ElasticSearch and learn how to implement a Retrieval-Augmented Generation (RAG) component in this 17-minute video tutorial. Discover how to utilize ElasticSearch as both a Vector Store and Retrieval component within a RAG application. Follow along with the provided notebook to gain hands-on experience in combining these powerful tools for enhanced machine learning and data science projects. Dive into practical examples that demonstrate the seamless integration of Langchain, ElasticSearch, and Gemini, offering valuable insights for developers and data scientists looking to leverage these technologies in their work.
Syllabus
Langchain: Integration ElasticSearch Vector Store & RAG with Gemini #datascience #machinelearning
Taught by
The Machine Learning Engineer
Related Courses
Learn Google Bard and GeminiUdemy Gemini and the Future of Generative AI Tools - Interview with Simon Tokumine
TensorFlow via YouTube Gemini and GPT Sales Agents with RAG - Comparison and Implementation
echohive via YouTube Building a Streamlit Interface for Unified Chat with Multiple LLMs
echohive via YouTube Gemini 1.5 Pro for Code - Building LLM Agents with CrewAI
Sam Witteveen via YouTube