Microsoft for Startups Founders
AWS Activate Startup
IBM Business Partner
Edge Impulse Experts Network
Intel Software Innovators
Google cloud Startup
Supported by Business Wales
Supported by Enterprise Hub
Cohere Embed English

  • Context Window: 512
  • TPM: 300,000
  • RPM: 2,000
  • Embedding Size: 1,024
Attributes

Semantic search, retrieval-augmented generation (RAG), classification, clustering

Cohere Embed English

Cohere Embed English translates text into numerical vectors that models can understand. It plays a critical role in enabling advanced generative AI applications to comprehend the nuances of user inputs, search results, and documents. This model is essential for creating high-performing AI systems that require deep and precise text understanding in English.

By converting text into 1024-dimensional embeddings, Cohere Embed English enhances the ability of AI models to perform various tasks more effectively. These embeddings serve as a foundational element for many sophisticated AI processes, ensuring that models can accurately interpret and respond to complex queries and data.

Supported Use Cases:

  • Semantic search: Improve search accuracy and relevance
  • Retrieval-augmented generation (RAG): Enhance the generation of text based on retrieved information
  • Classification: Categorize data accurately for various applications
  • Clustering: Group similar items to uncover patterns and insights

Cohere Embed English is designed to provide robust performance and flexibility for diverse AI applications. Its ability to handle English text makes it a versatile tool for global AI solutions, ensuring that models can effectively interpret and utilize textual information from a wide range of sources.

CogniTech AI Credits

Below you will find all supported platforms and the related CogniTech AI Credits costs.

AWS Bedrock Credits

Details Input Credits Output Credits Fine-Tuning
Details Input Credits Output Credits Fine-Tuning
6LfEEZcpAAAAAC84WZ_GBX2qO6dYAEXameYWeTpF