From data stores to data engines: VAST Data’s AI OS evolution

by | Jul 10, 2024 | Technology

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At VentureBeat’s Transform 2024 conference yesterday, VAST Data Founder and CEO Renen Hallak shared insights into the company’s approach to AI infrastructure, offering a glimpse into the future of enterprise AI systems.

Hallak introduced VAST Data’s concept of a global operating system for AI, designed to address the growing complexities of data management and AI deployment across geographies and organizations. This system comprises three key components: the VAST Data Store, the VAST Database and the VAST Data Engine.

VAST Data has been making significant strides in the AI infrastructure space. In Dec. 2023, the company raised $118 million in a Series E funding round, led by Fidelity Management & Research Company. This investment catapulted VAST Data’s valuation to $9.1 billion, nearly tripling its previous valuation of $3.7 billion since 2021.

The VAST Data Store tackles unstructured data storage, providing file and object access for large-scale information from various sources such as images, video, audio and genomic data. As Hallak explained on stage, “It gives you file access, object access, a lot of large pieces of information… natural information that comes from the natural world.”

Register to access VB Transform On-Demand

In-person passes for VB Transform 2024 are now sold out! Don’t miss out—register now for exclusive on-demand access available after the conference. Learn More

Building on this foundation, the VAST Database enables SQL querying of metadata generated from AI inferences on the stored data. This allows organizations to extract meaningful insights from their immense data repositories efficiently.

The third component, the VAST Data Engine, brings the system to life by triggering functions based on incoming data. Hallak illustrated this with an ex …

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We want to hear from you! Take our quick AI survey and share your insights on the current state of AI, how you’re implementing it, and what you expect to see in the future. Learn More

At VentureBeat’s Transform 2024 conference yesterday, VAST Data Founder and CEO Renen Hallak shared insights into the company’s approach to AI infrastructure, offering a glimpse into the future of enterprise AI systems.

Hallak introduced VAST Data’s concept of a global operating system for AI, designed to address the growing complexities of data management and AI deployment across geographies and organizations. This system comprises three key components: the VAST Data Store, the VAST Database and the VAST Data Engine.

VAST Data has been making significant strides in the AI infrastructure space. In Dec. 2023, the company raised $118 million in a Series E funding round, led by Fidelity Management & Research Company. This investment catapulted VAST Data’s valuation to $9.1 billion, nearly tripling its previous valuation of $3.7 billion since 2021.

The VAST Data Store tackles unstructured data storage, providing file and object access for large-scale information from various sources such as images, video, audio and genomic data. As Hallak explained on stage, “It gives you file access, object access, a lot of large pieces of information… natural information that comes from the natural world.”

Register to access VB Transform On-Demand

In-person passes for VB Transform 2024 are now sold out! Don’t miss out—register now for exclusive on-demand access available after the conference. Learn More

Building on this foundation, the VAST Database enables SQL querying of metadata generated from AI inferences on the stored data. This allows organizations to extract meaningful insights from their immense data repositories efficiently.

The third component, the VAST Data Engine, brings the system to life by triggering functions based on incoming data. Hallak illustrated this with an ex …nnDiscussion:nn” ai_name=”RocketNews AI: ” start_sentence=”Can I tell you more about this article?” text_input_placeholder=”Type ‘Yes'”]

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