AI News 04月14日 15:52
Transforming real-time monitoring with AI-enhanced digital twins
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麦肯锡报告显示,75%的大型企业正投资于数字孪生技术,以扩展其AI解决方案。将数字孪生与AI结合,有望增强大型语言模型的有效性,并为AI在实时监控中的应用开辟新途径,带来显著的商业和运营效益。数字孪生技术通过处理设备遥测数据,实时追踪和分析系统,从而提高态势感知能力。结合生成式AI,可以提升预测准确性,并优化系统监控与开发。AI驱动的数字孪生还可以通过自然语言查询和可视化,简化数据交互,加速决策制定。

💡 **数字孪生的核心作用**:数字孪生通过实时处理设备遥测数据来追踪和分析实时系统,从而提高运营管理者的态势感知能力。它们能够快速提供可操作的警报,并支持战略规划和运营决策。

🤖 **AI与数字孪生的协同效应**:将生成式AI与数字孪生集成,可以提升生成式AI的预测准确性,并增强数字孪生在系统监控和开发中的价值。这种结合有助于更有效地识别异常情况。

🔍 **AI驱动的异常检测**:AI增强的数字孪生可以持续检查数字孪生生成的分析结果,以发现新兴趋势,并在问题升级之前缓解中断。AI能够帮助运营管理者提高态势感知能力,并识别优化运营和提高效率的新机会。

📊 **AI驱动的数据交互**:生成式AI通过实现自然语言驱动的查询和可视化,正在重新定义团队与海量数据集的交互方式。用户可以通过简单的描述来获取所需信息,AI会立即可视化相关图表和查询结果,从而简化交互过程。

🔄 **机器学习与自动再训练**:数字孪生可以结合机器学习算法来分析数据,并识别难以通过手动编码算法发现的细微问题。自动再训练使算法能够随着经验的积累而学习,从而提高其性能并适应不断变化的环境。

A recent McKinsey report found that 75% of large enterprises are investing in digital twins to scale their AI solutions. Combining digital twins with AI has the potential to enhance the effectiveness of large language models and enable new applications for AI in real-time monitoring, offering significant business and operational benefits.

What are digital twins?

Digital twins, originally developed to aid in the design of complex machinery have evolved significantly over the last two decades. They track and analyse live systems in real-time by processing device telemetry, detecting shifting conditions, and enhancing situational awareness for operational managers. Powered by in-memory computing, they enable fast, actionable alerts. Beyond real-time monitoring, digital twins also can simulate intricate systems like those for use in airlines and logistics, supporting strategic planning and operational decisions through predictive analytics.

Integrating digital twins with generative AI creates new opportunities for both technologies: The synergy can boost the prediction accuracy of generative AI, and can enhance the value of digital twins for system monitoring and development.

Proactively identifying anomalies with AI-powered digital twins

Continuous, real-time monitoring is a strategic necessity for organisations that manage complex live systems, like transportation networks, cybersecurity systems, and smart cities. Emerging problems must never be overlooked because delayed responses can cause small problems to become large ones.

Enhancing digital twins with generative AI reshapes how real-time monitoring interprets massive volumes of live data, enabling the reliable and immediate detection of anomalies that impact operations. Generative AI can continuously examine analytics results produced by digital twins to uncover emerging trends and mitigate disruptions before they escalate. While AI enhances situational awareness for managers, it can also pinpoint new opportunities for optimising operations and boosting efficiency.

At the same time, real-time data supplied by digital twins constrains the output of generative AI to avoid erratic results, like hallucinations. In a process called retrieval augmented generation, AI always uses the most up-to-date information about a live system to analyse behaviour and create recommendations.

Transforming data interaction with AI-driven visualisations

Unlocking insights from digital twin analytics should be intuitive, not technical. Generative AI is redefining how teams interact with massive datasets by enabling natural language-driven queries and visualisations. Instead of manually constructing intricate queries, users can simply describe their needs, and generative AI immediately visualises relevant charts and query results that provide new insights. This capability simplifies interactions and gives decision-makers the data they need. As organisations handle increasingly complex live systems, AI-powered intelligence allows them to efficiently sift through vast data pools, extract meaningful trends, and optimise operations with greater precision. It eliminates technical barriers, enabling faster, data-driven decisions that have a strategic impact.

Incorporating machine learning with automatic retraining

Digital twins can track numerous individual data streams and look for issues with the corresponding physical data sources. Working together, thousands or even millions of digital twins can monitor very large, complex systems. As messages flow in, each digital twin combines them with known information about a particular data source and analyses the data in a few milliseconds. It can incorporate a machine learning algorithm to assist in the analysis and find subtle issues that would be difficult to describe in hand-coded algorithms. After training with data from live operations, ML algorithms can identify anomalies and generate alerts for operational managers immediately.

Once deployed to analyse live telemetry, an ML algorithm will likely encounter new situations not covered by its initial training set. It may either fail to detect anomalies or generate false positives. Automatic retraining lets the algorithm learn as it gains experience so it can improve its performance and adapt to changing conditions. Digital twins can work together to detect invalid ML responses and build new training sets that feed automatic retraining. By incorporating automatic retraining, businesses gain a competitive edge with real-time monitoring that reliably delivers actionable insights as it learns over time.

Looking forward

Integrating digital twin technology with generative AI and ML can transform how industries monitor complex, live systems by empowering better real-time insights and enabling managers to make faster, more informed decisions. ScaleOut Software’s newly-released Digital Twins Version 4 adds generative AI using OpenAI’s large language model and automatic ML retraining to move real-time monitoring towards the goal of fully-autonomous operations. 

(Image source: Unsplash)

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数字孪生 人工智能 实时监控 机器学习
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