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Description
ColBERT stands out as a rapid and precise retrieval model, allowing for scalable BERT-based searches across extensive text datasets in mere milliseconds. The model utilizes a method called fine-grained contextual late interaction, which transforms each passage into a matrix of token-level embeddings. During the search process, it generates a separate matrix for each query and efficiently identifies passages that match the query contextually through scalable vector-similarity operators known as MaxSim. This intricate interaction mechanism enables ColBERT to deliver superior performance compared to traditional single-vector representation models while maintaining efficiency with large datasets. The toolkit is equipped with essential components for retrieval, reranking, evaluation, and response analysis, which streamline complete workflows. ColBERT also seamlessly integrates with Pyserini for enhanced retrieval capabilities and supports integrated evaluation for multi-stage processes. Additionally, it features a module dedicated to the in-depth analysis of input prompts and LLM responses, which helps mitigate reliability issues associated with LLM APIs and the unpredictable behavior of Mixture-of-Experts models. Overall, ColBERT represents a significant advancement in the field of information retrieval.
Description
Nomic Embed is a comprehensive collection of open-source, high-performance embedding models tailored for a range of uses, such as multilingual text processing, multimodal content integration, and code analysis. Among its offerings, Nomic Embed Text v2 employs a Mixture-of-Experts (MoE) architecture that efficiently supports more than 100 languages with a remarkable 305 million active parameters, ensuring fast inference. Meanwhile, Nomic Embed Text v1.5 introduces flexible embedding dimensions ranging from 64 to 768 via Matryoshka Representation Learning, allowing developers to optimize for both performance and storage requirements. In the realm of multimodal applications, Nomic Embed Vision v1.5 works in conjunction with its text counterparts to create a cohesive latent space for both text and image data, enhancing the capability for seamless multimodal searches. Furthermore, Nomic Embed Code excels in embedding performance across various programming languages, making it an invaluable tool for developers. This versatile suite of models not only streamlines workflows but also empowers developers to tackle a diverse array of challenges in innovative ways.
API Access
Has API
API Access
Has API
Integrations
Baseten
Go
Java
JavaScript
PHP
Python
Ruby
Pricing Details
Free
Free Trial
Free Version
Pricing Details
Free
Free Trial
Free Version
Deployment
Web-Based
On-Premises
iPhone App
iPad App
Android App
Windows
Mac
Linux
Chromebook
Deployment
Web-Based
On-Premises
iPhone App
iPad App
Android App
Windows
Mac
Linux
Chromebook
Customer Support
Business Hours
Live Rep (24/7)
Online Support
Customer Support
Business Hours
Live Rep (24/7)
Online Support
Types of Training
Training Docs
Webinars
Live Training (Online)
In Person
Types of Training
Training Docs
Webinars
Live Training (Online)
In Person
Vendor Details
Company Name
Future Data Systems
Country
United States
Website
github.com/stanford-futuredata/ColBERT
Vendor Details
Company Name
Nomic
Country
United States
Website
www.nomic.ai/embed