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    3. Voyage 3.5

    Voyage 3.5

    High-performance embedding model series from Voyage AI comprising Voyage 3.5 and Voyage 3.5 Lite, both delivering excellent performance on top benchmarks. Built particularly for enterprise-grade semantic search and developer-based AI systems with competitive pricing.

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    About this tool

    Overview

    Voyage 3.5 series comprises two models designed for enterprise-grade semantic search and AI applications, delivering state-of-the-art performance on industry benchmarks.

    Models

    Voyage 3.5

    • High-performance flagship model
    • Optimized for accuracy and semantic understanding
    • Suitable for production deployments
    • Price: $0.06 per 1 million tokens

    Voyage 3.5 Lite

    • Lightweight variant for cost-sensitive applications
    • Faster inference with maintained quality
    • Ideal for high-volume scenarios
    • Price: $0.02 per 1 million tokens

    Voyage 4 Series (Latest)

    The Voyage 4 series introduces an industry-first capability: shared embedding spaces, allowing models to work together seamlessly.

    voyage-4-large surpasses competing models:

    • 3.87% better than Gemini Embedding 001
    • 8.20% better than Cohere Embed v4
    • 14.05% better than OpenAI v3 Large

    Features

    • State-of-the-art retrieval performance
    • Multilingual support
    • Long context handling
    • Domain-specific fine-tuning available
    • Enterprise-grade reliability
    • Flexible API integration
    • Batch processing support

    Use Cases

    • Enterprise semantic search
    • Retrieval-Augmented Generation (RAG)
    • Document similarity and clustering
    • Question answering systems
    • Cross-lingual information retrieval
    • Recommendation engines

    API Integration

    Simple REST API with client libraries for:

    • Python
    • JavaScript/TypeScript
    • Java
    • Go

    Performance

    Achieves top scores on MTEB (Massive Text Embedding Benchmark) and other industry-standard benchmarks, particularly excelling in retrieval tasks.

    Pricing

    • Voyage 3.5: $0.06 per 1M tokens
    • Voyage 3.5 Lite: $0.02 per 1M tokens
    • Voyage 4 Large: $0.12 per 1M tokens
    • Free tier available for development and testing
    Surveys

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    Information

    Websitewww.voyageai.com
    PublishedMar 16, 2026

    Categories

    1 Item
    Machine Learning Models

    Tags

    3 Items
    #Embeddings#Semantic Search#Enterprise

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