
AI brokers have the potential to change into indispensable instruments for automating complicated duties. However bringing brokers to manufacturing stays difficult.
In keeping with Gartner, “about 40% of AI prototypes make it into manufacturing, and individuals reported knowledge availability and high quality as a high barrier to AI adoption.1”
Similar to human employees, AI brokers want safe, related, correct and up to date knowledge to ship enterprise worth — what the business is now calling “AI-ready knowledge.”
Making enterprise knowledge AI-ready presents distinctive challenges. Gartner estimates, “Unstructured knowledge similar to paperwork and multimedia information accounts for 70% to 90% of organizational knowledge, and poses distinctive governance challenges because of its quantity, selection and lack of coherent construction.2” Unstructured knowledge sources embrace e-mail, PDFs, movies, audio clips and displays.
An rising class of GPU-accelerated knowledge and storage infrastructure — the AI knowledge platform — transforms unstructured knowledge into AI-ready knowledge shortly and securely.
What Is AI-Prepared Knowledge?
AI-ready knowledge could be consumed by AI coaching, fine-tuning and retrieval-augmented technology pipelines with out extra preparation.
Making unstructured knowledge AI-ready includes:
- Gathering and curating knowledge from various sources
- Making use of metadata for knowledge administration and governance
- Dividing the supply paperwork into semantically related chunks
- Embedding the chunks into vectors for environment friendly storage, search and retrieval
Enterprises can not unlock the total worth of their AI investments till their unstructured knowledge is AI-ready.
Why Making Knowledge AI-Prepared Is Tough
Making unstructured knowledge AI-ready stays a considerable problem for many enterprises because of:
- Knowledge complexity: A typical enterprise has lots of of various knowledge sources in dozens of codecs and modalities — together with video, audio, textual content and pictures. This knowledge lives in several storage silos.
- Knowledge velocity: The amount of enterprise knowledge is exploding. Predictions present international saved knowledge will double over the following 4 years. And the speed of knowledge change is growing as enterprises undertake real-time streaming sensors similar to digital camera feeds.
- Knowledge sprawl and knowledge drift: Frequent knowledge copying and transformation introduces price and safety dangers. Over time, the content material or permissions of AI representations — similar to textual content chunks and embeddings — diverge from source-of-truth paperwork. Plus, because the variety of chatbots and brokers proliferates, the safety threat of knowledge will increase.
Collectively, these elements drive enterprise knowledge scientists to spend the vast majority of their time finding, cleansing and organizing knowledge — leaving much less time for figuring out priceless insights.
The AI Knowledge Platform — a New Class of Enterprise Knowledge and Storage Infrastructure
AI knowledge platforms are an rising class of GPU-accelerated knowledge and storage infrastructure that makes enterprise knowledge AI-ready.
By embedding GPU acceleration instantly into the information path, AI knowledge platforms remodel knowledge for AI pipelines as a background operation invisible to the person.
The information is ready in place, minimizing pointless copies and related safety dangers.
By integrating knowledge preparation as a core functionality of storage infrastructure, AI knowledge platforms be certain that the accuracy and safety of the information is maintained. Any modifications to the sources of fact paperwork — together with edits or permission adjustments — are immediately conveyed to their related vector embeddings.
Key advantages of AI knowledge platforms embrace:
- Quicker time to worth: Enterprises don’t must design, construct and optimize AI knowledge pipelines from the bottom up. AI knowledge platforms ship an built-in, state-of-the-art AI knowledge pipeline out of the field.
- Diminished knowledge drift: By constantly ingesting, embedding and indexing enterprise knowledge in close to actual time, AI knowledge platforms cut back time to perception and reduce knowledge drift.
- Improved knowledge safety: As a result of source-of-truth paperwork are saved collectively in AI knowledge platforms, any adjustments to their contents or permissions are immediately propagated to the AI purposes that use them.
- Simplified knowledge governance: Getting ready knowledge in place reduces the proliferation of shadow copies that undermine entry management, traceability and compliance.
- Improved GPU utilization: In an AI knowledge platform, GPU capability is sized for the quantity, kind and alter velocity of the information underneath administration. GPU capability scales with the information, guaranteeing GPUs should not over- or under-provisioned for knowledge preparation duties.
The NVIDIA AI Knowledge Platform
AI is altering each business — and AI knowledge platforms are the pure evolution of enterprise storage for the generative AI period, altering from passive containers to lively engines delivering enterprise worth.
By integrating GPU acceleration into the information path, AI knowledge platforms allow enterprises to activate their AI brokers with AI-ready knowledge shortly and securely.
The NVIDIA AI Knowledge Platform reference design brings collectively NVIDIA RTX PRO 6000 Blackwell Server Version GPUs, NVIDIA BlueField-3 DPUs and built-in AI knowledge processing pipelines based mostly on NVIDIA Blueprints.
The NVIDIA AI Knowledge Platform design has been adopted by main AI infrastructure and storage suppliers together with Cisco, Cloudian, DDN, Dell Applied sciences, Hitachi Vantara, HPE, IBM, NetApp, Pure Storage, VAST Knowledge and WEKA — every extending the design with their very own distinctive differentiation and innovation.
Be taught extra in regards to the NVIDIA AI Knowledge Platform. Plus, tune in to this NVIDIA AI Podcast episode on AI knowledge platforms:
1Gartner, Find out how to Design an Efficient Knowledge High quality Working Mannequin by Sue Waite and Melody Chien, 15 July 2025
2Gartner, Governing Unstructured Knowledge for AI Readiness: A Strategic Roadmap by Melody Chien, 14 August 2025
GARTNER is a registered trademark and repair mark of Gartner, Inc. and/or its associates within the U.S. and internationally and is used herein with permission. All rights reserved.