AI MODELS
Voyage AI
State-of-the-art embedding models and rerankers for building accurate, reliable semantic search and AI applications.
Best-In-Class Performance
Voyage AI models consistently achieve top rankings in retrieval benchmarks because our research team is obsessed with building the best-performing models. This obsession allows developers to create AI applications that truly understand data's meaning, delivering unmatched accuracy for semantic search, RAG, and agentic solutions.
Frontier AI Innovation
Our research team constantly finds new ways to help you understand your data on a deeper level. We're developing innovative approaches like multimodal data retrieval, embeddings with automatic context-awareness, and instruction-following reranking to give you the most accurate and insightful results.
Domain-Specific Specialization
Our domain-specific embedding models are built for industries and use cases including legal, financial services, and code retrieval. This specialization generates highly accurate embeddings for industries requiring deep, specialized knowledge, ensuring optimal performance for your AI applications.
Build a Minimal Retrieval System

Co-Founder, Code Assistant

Co-Founder, Code Assistant

Learning hub
FAQ
Vector embeddings (or embeddings) are mathematical representations of text or other unstructured data created by translating words or sentences into numbers—a language that computers can understand. They bridge the rich, nuanced world of human language (text, images, audio, and video) and the precise environment of machine learning models (numbers) by representing data points numerically.
Rerankers are neural networks that output relevance scores between a query and multiple documents. It is common practice to use the relevance scores to rerank the documents initially retrieved with embedding-based methods (or with lexical search algorithms such as BM25 and TF-IDF). Selecting the highest-scored documents refines the retrieval results into a more relevant subset.
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- High accuracy
- Low dimensionality
- Low-latency
- Long-context
- Modularity