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Multimodal Search with LanceDB πŸ€Ήβ€β™‚οΈπŸ”

Using LanceDB's multimodal capabilities, combine text and image queries to find the most relevant results in your corpus ! πŸ”“πŸ’‘

Explore the Future of Search πŸš€

LanceDB supports multimodal search by indexing and querying vector representations of text and image data πŸ€–. This enables efficient retrieval of relevant documents and images using vector-based similarity search πŸ“Š. The platform facilitates cross-modal search, allowing for text-image and image-text retrieval, and supports scalable indexing of high-dimensional vector spaces πŸ’».

Multimodal Description Links
Multimodal CLIP: DiffusionDB 🌐πŸ’₯ Multi-Modal Search with CLIP and LanceDB Using DiffusionDB Data for Combined Text and Image Understanding ! πŸ”“ GitHub
Open In Collab
Python
Ghost
Multimodal CLIP: Youtube Videos πŸ“ΉπŸ‘€ Search Youtube videos using Multimodal CLIP, finding relevant content with ease and accuracy! 🎯 Github
Open In Collab
Python
Ghost
Multimodal Image + Text Search πŸ“ΈπŸ” Find relevant documents and images with a single query using LanceDB's multimodal search capabilities, to seamlessly integrate text and visuals ! πŸŒ‰ GitHub
Open In Collab
Python
Ghost
Cambrian-1: Vision-Centric Image Exploration πŸ”πŸ‘€ Learn how Cambrian-1 works, using an example of Vision-Centric exploration on images found through vector search ! Work on Flickr-8k dataset πŸ”Ž Kaggle
Ghost