Learn to create six exciting applications of vector databases and implement them using Pinecone.
Building Applications with Vector Databases
Instructor: Tim Tully
Earn an accomplishment with PRO

- Beginner
- 1 hour 13 mins
- 8 Video Lessons
- 6 Code Examples
- 1 Graded Assignment PRO
- Earn an accomplishment with PRO
- Instructor: Tim Tully
Pinecone- Learn more aboutMembership PRO Plan
What you'll learn
Build a hybrid search app that combines both text and images for improved multimodal search results.
Learn how to build an app that measures and ranks facial similarity.
About this course
Vector databases use embeddings to capture the meaning of data, gauge the similarity between different pairs of vectors, and navigate large datasets to identify the most similar vectors. In the context of large language models, the primary use of vector databases is retrieval augmented generation (RAG), where text embeddings are stored and retrieved for specific queries.
However, the versatility of vector databases extends beyond RAG and makes it possible to build a wide range of applications quickly with minimal coding.
In this course, you’ll explore the implementation of six applications using vector databases:
- Semantic Search: Create a search tool that goes beyond keyword matching, focusing on the meaning of content for efficient text-based searches on a user Q/A dataset.
- RAG: Enhance your LLM applications by incorporating content from sources the model wasn’t trained on, like answering questions using the Wikipedia dataset.
- Recommender System: Develop a system that combines semantic search and RAG to recommend topics, and demonstrate it with a news article dataset.
- Hybrid Search: Build an application that finds items using both images and descriptive text, using an eCommerce dataset as an example.
- Facial Similarity: Create an app to compare facial features, using a database of public figures to determine the likeness between them.
- Anomaly Detection: Learn how to build an anomaly detection app that identifies unusual patterns in network communication logs.
After taking this course, you’ll be equipped with new ideas for building applications with any vector database.
Who should join?
Anyone with beginner Python, basic machine learning and large language models knowledge who wants to learn applications of vector databases.
Course Outline
8 Lessons・6 Code Examples- IntroductionVideo・4 mins
- Semantic SearchVideo with Code Example・10 mins
- Retrieval Augmented Generation (RAG)Video with Code Example・12 mins
- Recommender SystemsVideo with Code Example・11 mins
- Hybrid SearchVideo with Code Example・13 mins
- Facial Similarity SearchVideo with Code Example・12 mins
- Anomaly DetectionVideo with Code Example・8 mins
- ConclusionVideo・1 min
- Quiz
Graded・Quiz
・10 mins

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