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Description

Diffusion stands at the forefront of real-time data streaming and messaging innovations. Established to address the challenges of real-time systems, application connectivity, and data distribution faced by businesses globally, the company boasts a diverse team of professionals in both business and technology. Its premier product, the Diffusion data platform, streamlines the process of consuming, enriching, and reliably delivering data. Organizations can swiftly leverage both existing and new data sources, as the platform is specifically designed for straightforward event-driven, real-time application development, allowing for the rapid addition of new functionalities while keeping development costs low. It adeptly manages any data size, format, or speed and features a versatile hierarchical data model that organizes incoming event data into a multi-level topic tree. Furthermore, Diffusion is highly scalable, accommodating millions of topics and facilitating the transformation of event data through the platform's low-code capabilities. Users can subscribe to event data with remarkable precision, fostering hyper-personalization and enhancing the user experience. This robust platform not only meets current demands but also anticipates future needs in data management.

Description

Recent advancements in the realm of text-to-image synthesis have emerged from diffusion models that have been trained on vast amounts of image-text pairs. To successfully transition this methodology to 3D synthesis, it would necessitate extensive datasets of labeled 3D assets alongside effective architectures for denoising 3D information, both of which are currently lacking. In this study, we address these challenges by leveraging a pre-existing 2D text-to-image diffusion model to achieve text-to-3D synthesis. We propose a novel loss function grounded in probability density distillation that allows a 2D diffusion model to serve as a guiding principle for the optimization of a parametric image generator. By implementing this loss in a DeepDream-inspired approach, we refine a randomly initialized 3D model, specifically a Neural Radiance Field (NeRF), through gradient descent to ensure its 2D renderings from various angles exhibit a minimized loss. Consequently, the 3D representation generated from the specified text can be observed from multiple perspectives, illuminated with various lighting conditions, or seamlessly integrated into diverse 3D settings. This innovative method opens new avenues for the application of 3D modeling in creative and commercial fields.

API Access

Has API

API Access

Has API

Screenshots View All

Screenshots View All

Integrations

.NET
AWS PrivateLink
Android
Apache Kafka
Apple iOS
C#
JMS
Java
JavaScript
New Relic
Prometheus
Python
Redis

Integrations

.NET
AWS PrivateLink
Android
Apache Kafka
Apple iOS
C#
JMS
Java
JavaScript
New Relic
Prometheus
Python
Redis

Pricing Details

$199 per month
Free Trial
Free Version

Pricing Details

No price information available.
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

DiffusionData

Founded

2006

Country

United Kingdom

Website

www.diffusiondata.com

Vendor Details

Company Name

DreamFusion

Website

dreamfusion3d.github.io

Product Features

Product Features

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Alternatives

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