Cisco Blogs 01月26日
Comment on Not Ready For AI? Time To Lay The Groundwork by abc123
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尽管对人工智能的紧迫性很高,但只有13%的组织表示已准备好抓住AI的潜力。许多公司在投资AI,但近一半的受访者表示收益未达到预期。文章指出,未来只有两种公司:AI公司和无关紧要的公司。虽然短期内对AI的影响可能被高估,但长期来看却被严重低估。目前AI的投资远超回报,许多企业不清楚如何利用AI。文章强调,企业需要为AI做好准备,包括数据中心、工作场所基础设施和劳动力,同时也要防范AI带来的新威胁。即使没有明确的AI战略,企业现在也可以采取行动,为未来的AI时代做好准备。

🗄️ 数据中心准备:企业需考虑哪些工作负载应在云端运行,哪些在私有数据中心运行。即使不立即构建GPU能力,也需考虑数据中心战略,包括能源效率、AI能力添加以及高带宽、低延迟连接需求。

🏢 工作场所基础设施准备:物理和数字世界正在融合,企业需投资传感器、设备和新电源解决方案,改善员工和客户体验,同时提高安全性。未来工作场所可能包括机器人,企业需确保网络基础设施能够支持高带宽和设备密度,并进行边缘推理以支持机器人和物联网应用。

🧑‍💼 劳动力准备:AI将改变工作方式和角色。企业应思考AI对文化、隐私和安全的影响,并为未来做好准备。基于代理的工作流程将影响工作执行方式,企业需考虑如何调整员工角色。

🛡️ 防范AI新威胁:企业不仅要考虑AI作为攻击媒介,还要关注AI安全。AI系统的攻击或不当使用可能产生严重后果,如提示注入攻击可能损坏模型。企业需要制定AI安全策略,应对多模型环境下的新威胁。

Our recent Cisco AI Readiness Index, found that only 13% of organizations report themselves ready to capture AI’s potential, even though urgency is high. Companies are investing, but close to half of respondents say the gains aren’t meeting expectations. Here’s how organizations can get themselves better prepared.  I believe that in the next few years, there will be only two kinds of companies: those that are AI companies and those that are irrelevant.You might think that AI has not lived up to the hype of the last few years but let me remind you that when the cloud started, a lot of people thought that it was over hyped. The same was thought of the internet too.The fact is, when truly transformational movements come along, the full extent of the impact is usually overestimated in the near term but greatly underestimated over the long term. This is especially true with AI.According to one estimate, over $200B has been spent on training the most recent language models, but global revenue being realized is only about one-tenth of that, and mostly attributable to just a few companies.Some customers I speak with know exactly how they are going to win the age of AI. Many others aren’t clear what they need to do. But they know they need to do it fast.We just released our latest AI Readiness Index, and it highlights that story perfectly. The survey tells us that the vast majority of organizations aren’t ready to take full advantage of AI, and their readiness has declined in the last year. This is not surprising to me. The pace of AI innovation is moving so fast, that readiness will reduce if you are not keeping up. Despite that, there is intense pressure from CEOs to do something: 85% of organizations say that they have no more than 18 months to deliver value with AI.Most organizations know that they need a strategy to set their direction and clarify where they should expect to see ROI. So, what can they do to be ready to move fast when their strategy becomes clear? Here are a few things our customers doing:Getting their data centers readyThe processing, bandwidth, privacy, security, data governance, and control requirements of AI are forcing organizations to think deeply about what workloads should run in the cloud, and what should run in private data centers. In fact, many organizations are repatriating workloads back to their own private clouds. However, their data centers are not ready. Even if you are not building out GPU capabilities today, you need to be thinking about your data center strategy: Are your current workloads running on optimized, energy-efficient infrastructure? Are you going to add AI capabilities to existing data centers or build new ones? Are you ready for the high-bandwidth, low-latency connectivity requirements of either strategy? These are questions that every organization needs to be thinking about today to improve preparedness.Getting their workplace infrastructure readyAI will transform everywhere we work and connect with customers – campuses, branches, homes, cars, factories, hospitals, stadiums, hotels, etc. The reality is that our physical and digital worlds are converging. IT, real estate, and facilities teams are investing billions in new infrastructure – sensors, devices, and new power solutions that deliver amazing experiences for employees and customers while giving them the data and automation to massively improve safety, energy efficiency, and more. But this is just the start. Imagine a world where future workplaces include advanced robotics, even humanoids! Are your workplaces ready with the network infrastructure required to deliver the bandwidth and device density that this new world will require? Are they ready to do inferencing “at the edge” to handle future compute and bandwidth requirements to power robotics and IoT use cases? Do you have security deeply embedded in your infrastructure to defend against modern threats? These are all strategies that should be considered today.Getting their workforce readyThe first wave of language-based AI has changed how we get information and handle some basic tasks, but it hasn’t really changed our jobs. The next wave will be much more transformational. Solutions based on agentic workflows, where AI agents with access to critical systems can work together with those systems to get information and automate tasks, will have an impact on how we perform our work and our roles in getting work done (e.g., are we doing tasks or reviewing and approving them?). And yes, in some cases, AI will transform roles. As leaders, now is the time to be thoughtful about what this world will look like and start preparing for this future—from the impact on culture to the impact on privacy and security.Getting ready to protect against new threats from AIWhile much attention has been paid to the use of AI as a new attack vector, and as a new way to defend against those attacks, we also need to be thinking about AI safety more broadly. Unlike previous systems, where an attack could cause downtime or lost data, an attack or improper use of an AI-based system can have much worse downstream impacts. We are moving from a world that used to be just multi-cloud, to now multi-model, and as a result, the attack surface is much larger, and the potential damage from an attack is much greater. Imagine the impact of a prompt injection attack that corrupts back-end models and affects all future responses, or creates unanticipated responses that cause an agentic system to damage your reputation, or worse? I believe that over the next year, AI safety is going to take centerstage and organizations are going to need to develop strategies now.Given the complexity of putting all of these foundational elements together, it’s understandable that more organizations haven’t moved faster and feel they are less ready than last year. But I believe that there are decisions you can make today to get ready, even if your overall AI strategy is not fully clear. Share:

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AI准备度 数据中心 工作场所 AI安全 劳动力转型
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