

VAST Data Platform
Overview :
VAST Data Platform is the world's first data platform built for deep learning and artificial intelligence. It employs a groundbreaking data-dense computing method to provide a comprehensive software infrastructure for real-time deep data analysis and deep learning, enabling the capture, classification, refinement, enrichment, and protection of data. It is the first new scalable architecture in 20 years, designed for the next 20 years of AI and big data computing. VAST Data Platform allows all rendering assets to be placed in a flat storage cluster, leveraging these PB-scale datasets as training data for future AI applications. It also boasts powerful AI capabilities, supporting the construction and training of AI/ML models for large-scale video, audio, and text datasets, thus achieving a globally frictionless communication experience.
Target Users :
Suitable for enterprises that require deep learning and artificial intelligence, particularly for building and training large-scale video, audio, and text datasets.
Features
Capture, classify, refine, and enrich data
Perform real-time deep data analysis and deep learning
Support the construction and training of AI/ML models for large-scale video, audio, and text datasets
Groundbreaking data-dense computing method
Flat storage cluster
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