Embeddings Projects .

Technology

Embeddings

Embeddings are dense, low-dimensional vectors that translate complex data (text, images, audio) into a mathematical space, enabling machines to process and understand semantic relationships.

Embeddings are the crucial machine learning technique for transforming discrete data (like words or images) into continuous, dense vectors of real numbers. This vectorization maps objects into a high-dimensional space where proximity directly correlates with semantic similarity: closer vectors mean more related objects. For example, a BERT model might generate a 768-dimensional vector for a sentence, capturing its full context. This is foundational for AI applications, including semantic search, where a query vector finds document vectors that are mathematically near, and for recommendation systems, which use vector distance to suggest similar items. The entire process is learned via neural networks (e.g., Word2Vec, GloVe), automating the capture of complex, nuanced relationships in the data.

https://www.ibm.com/topics/embedding
22 projects · 16 cities

Related technologies

Recent Talks & Demos

Showing 1-22 of 22

Members-Only

Sign in to see who built these projects

Santé Nutrir: Multi-Agentes no n8n
Curitiba Jun 10
n8n (self-hosted): orquestrador central; State Machine de sessão debounce de mensagens
Clasio: 6D Gemini Document Intelligence
San Diego Feb 26
Gemini Cloud Run Gen2
Detect Issues, Fix with Agents
Prague Feb 26
Gemini 3 Temporal
Oracle NVIDIA AI Vector RAG
Singapore Feb 11
Oracle Database 26ai Oracle Vector Search
Más allá del RAG: Grafos universales para datos no universales
Santiago Oct 29
GraphRAG RAG
Vector Search for Music Tracks
Paris Jan 30
Vector Search Embeddings
Bootstrapping AI with Embeddings Visualization
Portland Jan 28
Discord Graph Visualization
NParks Zero-shot Wildlife Recognition
Singapore Jan 10
Foundational Models Embeddings
Covariate Search
Hong Kong Dec 19
Covariate search semantic search
AI Fashion assistant
Paris Dec 10
GenAI Computer Vision
SAEs for LLM Steering
Mumbai Nov 23
Sparse Autoencoders GPT-4
Bismuth Agent Context Selection
San Francisco Nov 21
Django tree-sitter
Revo.pm: LLM Context Locking System
Palo Alto Nov 20
Python C#
AI Search for Web Tables
New York City Nov 12
TabLib Embeddings
WeMadeThis: Worldbuilding Fact Extraction
Seattle Oct 24
Llama 2 7B Discord
Layer
New York City Oct 17
Visual Studio Code VS Code Extensions
GraphRAG: Text to Q&A
Berlin Jul 18
LangChain GraphRAG Q&A
Hacker News Search with Llama
Berlin Jul 18
LLaMA-70B Streamlit
Semanticards
Zürich May 8
sentence-transformers Embeddings
SOTA Embeddings and Rerank Model
Berlin Mar 21
text-embedding-v3 OpenAI
midpage: Fixing Vector Search Context
Munich Jan 18
Vector Search Embeddings
Embedding Playground
San Francisco Sep 21
nat Embeddings