Unleash the Power of AI for the Data Awakening
AI-Ready Data Infrastructure Reference Architecture White Paper
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Challenges for Data Infrastructure in the AI Era
Definition and Characteristics of AI-Ready Data Infrastructure
AI-ready data infrastructure refers to data storage software and hardware systems designed for AI applications and services. Building AI-ready data infrastructure therefore requires comprehensive preparation, across the board.
Reference Architecture
Central AI clusters can now have tens of thousands — if not hundreds of thousands — of cards. With edge AI models beginning to permeate many industries at a faster pace, Huawei’s AI-ready data infrastructure reference architecture and solution help enterprises across different industries build resilient, reliable, and open AI data infrastructure, empowering them to elevate their intelligence and innovation to the next level.
Advice for CIOs
AI is only as good as the data that fuels it. Enterprises must build unified data lakes to enable data asset visibility, manageability, and availability, turn data into a key element of production, and implement large AI model services faster.
Ever-evolving large AI models have increasingly higher computing power needs. Enterprises should refer to industry best practices to shift from simply stacking computing power to fully unlocking its potential. This requires enterprises to build a future-proof intelligent computing foundation powered by an AI-ready data infrastructure solution.
Data assets have become increasingly critical to large AI models. Tampering, theft, and ransomware attacks to core data such as model files and training data can cause massive resource waste and economic losses. Enterprises should immediately build all-round data protection capabilities.
Large AI model training for data center applications requires huge investments. Edge applications are a key area where generative AI can create profits. Enterprises should use one-stop training/inference HCI appliances to quickly develop and launch their AI products to monetize their large AI models.
Enterprises should proactively evaluate their AI readiness, build technical teams specialized in large AI models (especially storage for large AI models), and improve their professional capabilities.