Amazon Titan V2 embedding delivers state-of-the-art text representation, transforming documents into highly accurate numerical vectors. This model excels in capturing deep semantic context, enabling superior similarity searches and powering high-performance RAG systems. Its robust and nuanced embeddings make it ideal for enterprise-grade AI applications, from precise document retrieval to advanced semantic analysis.
Amazon Titan Text Embeddings V2 is a powerful and highly accurate embedding model developed by AWS, engineered to excel at converting text into rich, numerical vector representations for advanced machine learning tasks. It is optimized for Retrieval-Augmented Generation (RAG) and semantic search, delivering state-of-the-art performance for applications that require a deep understanding of language context.
With its focus on semantic accuracy, Titan V2 provides nuanced and context-aware vector outputs, supporting diverse use cases from document search and information retrieval to classification and text clustering. Its ability to capture the subtle meanings within text ensures it meets the demands of developers seeking both precision and performance in their AI systems.
Model Attributes:
Titan's advanced architecture and massive training data make it an excellent choice for applications requiring highly relevant and contextually accurate information retrieval. Its integration with the AWS ecosystem ensures it can be effectively utilized in scalable, enterprise-grade solutions, enhancing the intelligence and reliability of AI-driven applications.
Below you will find all supported platforms and the related CogniTech AI Credits costs.
Details | Input Credits | Output Credits | Fine-Tuning |
---|---|---|---|
Details | Input Credits | Output Credits | Fine-Tuning |
Version: All Region: eu-west-2 Context: 8,192 TPM: 300,000 RPM: 2,000 |
Chat: 0.013 / 1000 tokens |
Chat: 0 / 1000 tokens |
NA |