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01

Create Embeddings, Vector Search, and RAG with BigQuery

01

Create Embeddings, Vector Search, and RAG with BigQuery

magic_button Recommender System MLOps Semantic Search Natural Language Processing
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2 hours Advanced

This course explores a Retrieval Augmented Generation (RAG) solution in BigQuery to mitigate AI hallucinations. It introduces a RAG workflow that encompasses creating embeddings, searching a vector space, and generating improved answers. The course explains the conceptual reasons behind these steps and their practical implementation with BigQuery. By the end of the course, learners will be able to build a RAG pipeline using BigQuery and generative AI models like Gemini and embedding models to address their own AI hallucination use cases.

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Course Info
Objectives
  • Generate embeddings using the embedding models with BigQuery.
  • Perform vector search in BigQuery and understand its process.
  • Create a RAG (Retrieval Augmented Generation) pipeline with BigQuery.
Prerequisites

Prior experience with programming languages including SQL or Python

Basic knowledge of ML and generative AI

Audience
Data scientists, data analysts, AI developers
Available languages
English, Deutsch, español (Latinoamérica), français, bahasa Indonesia, 日本語, 한국어, português (Brasil), 简体中文, and 繁體中文
How do I earn a completion badge?
Upon finishing a course you will earn a badge of completion. Badges can be viewed on your profile and shared with your social network.
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View the public classroom schedule here

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