1. Home icon Home Chevron right icon
  2. agents Chevron right
  3. Cohere Embed
Cohere Embed screenshot

Cohere Embed

Visit site External link icon

Transform enterprise data into actionable insights instantly.

FreeFree TrialContact for Pricing
Paid |
$$$
Agents Search Engine Research

Overview

Embed is a leading multimodal search and retrieval tool. It aims to activate your enterprise data with secure AI retrieval, turning text and images into embeddings to enable semantic retrieval in search systems, RAG architectures, and agentic applications.

Key Features:

  • Generates single embeddings for mixed-modality documents
  • Retrieves content in 100+ languages
  • Maps visual assets and written content into the same embedding space
  • Handles high-context business content with precision
  • Privately deployable in virtual private cloud or on-premises
  • Compresses embeddings by up to 96% without sacrificing quality

Use Cases:

  • Fetching relevant content for Q&A
  • Surfacing task-critical context for agents
  • Powering AI agents that understand business needs
  • Enhancing search systems with semantic retrieval
  • Integrating with RAG and agentic pipelines

Benefits:

  • Improves retrieval accuracy across noisy, multilingual, and multimodal data
  • Reduces vector database storage costs
  • Delivers accurate results even on fragmented or domain-specific data
  • Ensures data security with private deployment options
  • Supports reasoning, tool use, and generation across enterprise domains

Capabilities

  • Generates embeddings for text and images to enable semantic retrieval
  • Retrieves relevant content in 100+ languages without language identification or translation
  • Maps visual assets and written content into the same embedding space
  • Handles high-context business content with precision
  • Compresses embeddings by up to 96% without sacrificing quality
  • Delivers accurate results across noisy, multilingual, and multimodal data
  • Privately deployable in virtual private cloud or on-premises environments
  • Integrates with RAG architectures and agentic applications
  • Generates a single embedding for mixed-modality documents containing text, graphs, and tables

Community

Add your comments

0/2000