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Building Multimodal Search and RAG
Coursera
Guided Project
Unknown

Building Multimodal Search and RAG

DeepLearning.AI

Learn to build multimodal search and RAG systems that integrate diverse data types to enhance large language models' contextual understanding.

Unknown1 weeksEnglish

About this Course

Learn how to build multimodal search and RAG systems. RAG systems enhance an LLM by incorporating proprietary data into the prompt context. Typically, RAG applications use text documents, but, what if the desired context includes multimedia like images, audio, and video? This course covers the technical aspects of implementing RAG with multimodal data to accomplish this. 1. Learn how multimodal models are trained through contrastive learning and implement it on a real dataset. 2. Build any-to-any multimodal search to retrieve relevant context across different data types. 3. Learn how LLMs are trained to understand multimodal data through visual instruction tuning and use them on multiple image reasoning examples. 4. Implement an end-to-end multimodal RAG system that analyzes retrieved multimodal context to generate insightful answers. 5. Explore industry applications like visually analyzing invoices and flowcharts to output structured data. 6. Create a multi-vector recommender system that suggests relevant items by comparing their similarities across multiple modalities. As AI systems increasingly need to process and reason over multiple data modalities, learning how to build such systems is an important skill for AI developers. This course equips you with the key skills to embed, retrieve, and generate across different modalities. By gaining a strong foundation in multimodal AI, you’ll be prepared to build smarter search, RAG, and recommender systems

What You'll Learn

  • Understand contrastive learning to create modality-independent embeddings
  • Build multimodal RAG systems that retrieve and reason over multimodal context
  • Implement multimodal search applications and multi-vector recommender systems

Prerequisites

  • Basic familiarity with the software or workflow used in the project
  • Ability to follow step-by-step instructions in English

Instructors

S

Sebastian Witalec

Head of Developer Relations

Topics

Algorithms
Computer Science
Software Development
Large Language Modeling
Embeddings
Image Analysis
Multimodal Prompts
Vector Databases
Applied Machine Learning
Generative AI

Course Info

PlatformCoursera
LevelUnknown
PacingUnknown
PriceFree

Skills

الخوارزميات
علوم الحاسوب
تطوير البرمجيات
نمذجة اللغة الكبيرة
التضمينات
تحليل الصور
الإرشادات متعددة الوسائط
قواعد البيانات المتجهة
Applied Machine Learning
Generative AI

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