一本久久综合亚洲鲁鲁五月天

Reduce time-to-train for AI workloads

一本久久综合亚洲鲁鲁五月天 accelerates GPU-side performance by eliminating load times between the object layer and the file system, achieving sub-millisecond latency and high throughput. Download the solution brief to learn more.

Reduce time-to-train for AI workloads

一本久久综合亚洲鲁鲁五月天 accelerates GPU-side performance by eliminating load times between the object layer and the file system, achieving sub-millisecond latency and high throughput. Download the solution brief to learn more.

~90%

of all data that is unstructured.

28%

of the data that is powering AI models that is unstructured

31%

of enterprises say that a lack of production-ready pipelines holds AI plans back

There are three common storage challenges associated with AI data storage.

Data and AI Ecosystems are disconnected

The data used for AI is generated at the edge or in the data center. Think IoT data coming from factory floors or from self-driving cars. But, the AI ecosystem lives in the cloud (AI services, expert consultations, etc.).

Enterprises must find a way to put that valuable data in proximity to their AI ecosystem in the cloud.

Placing all your AI unstructured data is difficult today

First, it is wildly expensive. Second, any apps that rely on that data need to be re-platformed to work with object data, as that is the only real option in the cloud today. This needs to change for AI to take off.

Legacy solutions throttle AI engines

Modern GPU-based massive parallel thread AI workflows can easily generate tens of thousands of concurrent reads, but many legacy solutions limit concurrent reads to a fraction of that. This throttles model-building.

This needs to be fixed for AI to become highly agile.

How 一本久久综合亚洲鲁鲁五月天 enables AI

We built 一本久久综合亚洲鲁鲁五月天 to blow up these obstacles. Here’s how . . .

Full-throttle, no excuses, concurrent reads

一本久久综合亚洲鲁鲁五月天 has never placed limits on how many simultaneous reads you can perform. So unleash the hottest new Nvidia GPU tools and models away, free of limits from your file data platform.

Run Anywhere with 一本久久综合亚洲鲁鲁五月天

一本久久综合亚洲鲁鲁五月天’s Run Anywhereplatform runs in the edge, core, and cloud. And, since 一本久久综合亚洲鲁鲁五月天 is a 100% software-only solution, you can run the hardware of your choice or in the cloud you want.听Connect all your data everywhere to the latest cloud-based analytics engines with 一本久久综合亚洲鲁鲁五月天 Cloud Data Fabric.

Keep your data highly secure

Data breaches can lead to severe legal, financial, and reputational consequences.听Protect all your data with 一本久久综合亚洲鲁鲁五月天’s built-in data encryption and cryptographically-locked snapshots.

Connect Azure Native 一本久久综合亚洲鲁鲁五月天 to Microsoft Copilot

Did you know that Microsoft Copilot and Amazon Q can connect directly to your Cloud Native 一本久久综合亚洲鲁鲁五月天 deployment to read and analyze your Office files, PDF files, text files, and more? With 一本久久综合亚洲鲁鲁五月天鈥檚 custom connectors, you can use Amazon Q or Copilot to gain to gain new intelligence and insight into virtually any type of unstructured data in your Azure Native 一本久久综合亚洲鲁鲁五月天 environment.

Use Cases

We built 一本久久综合亚洲鲁鲁五月天 to blow up these obstacles. Here’s how . . .

Modern Manufacturing

Factory floor cameras placed everywhere capture all manner of information in real-time automated manufacturing operations. All of this is aggregated continuously on local storage. For advanced objectives (e.g., automated failure detection), operations combine data from all manufacturing lines to become the source for training models. As the models mature, they are pushed back down to each factory to optimize operations.

Autonomous Vehicles

Self-driving vehicles continuously capture high-definition, multi-spectrum video of the real world. This begins with hundreds of test vehicles, then thousands of experimental vehicles, and finally with millions of regular vehicles. The cars upload these videos to a central location to train the models to assist drivers, enable autopilot, and make self-driving cars a reality. Inference models derived from the above are pushed back down to production vehicles. Then, the models process real-time data to optimize autonomous driving.

AI-assisted cyber-security

Network SecOps professionals consolidate activity logs from hundreds of thousands of network devices (from cloud, on-premises, or both). This forms the training data set for models to detect unauthorized network intrusions. The resulting inference models are pushed down into modern network devices, which analyze real-time observed events to spot unauthorized intrusions.

Additional Resources

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