AiThority 2024年09月13日
Next Gen AI-Anticipatory Intelligence: Forecasting the Unexpected
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Jumptuit公司宣布其下一代人工智能Genesis J2T的预测性智能取得重大进展,该系统能够通过数据和图像预测和可视化潜在的政治、环境和公共卫生事件,为企业和政府领导人提供预测服务。Genesis J2T扩大了对全球大气、陆地和海洋现象以及人类活动和人工系统的覆盖范围,并利用广泛分散的各种传感器、整个电磁频谱以及提供人类活动和人工系统未经过滤的最新信息的超本地化数据源。Genesis J2T通过其全球感官智能(GSI)和全球数据网络(GDN)同步数百万个实时数据端点,以检索实时和近实时超本地化数据,并评估政治、环境和公共卫生事件风险。

🎯 **Genesis J2T 扩展了对全球现象的覆盖范围:** Genesis J2T 显著扩大了其对全球大气、陆地和海洋现象以及人类活动和人工系统的覆盖范围。它利用广泛分散的各种传感器、整个电磁频谱以及提供人类活动和人工系统未经过滤的最新信息的超本地化数据源。这种扩展的覆盖范围使 Genesis J2T 能够更全面地了解全球事件的驱动因素,从而提高其预测能力。

🎯 **Genesis J2T 增强了预测能力:** Genesis J2T 增强了其从复杂的多样化数据源中提取可靠的跨部门信号的能力,并提高了预测潜在事件的能力,从而减少了对事件的暴露,并降低了风险成本(COR)。Genesis J2T 不断扩展的超本地化数据源阵列消除了过滤器,提供了更大的清晰度和可观察性,以便在任何地理位置实时了解全球现象和行业状况。

🎯 **Genesis J2T 基于实时数据进行预测:** Genesis J2T 持续搜索当前的类似数据集,而不是搜索过去数据库中感知到的类似事件。从数据角度来看,导致过去事件发生的协同变量或条件在时间上越往后推移,其差异性就越大。当前的类似数据集不需要病毒传播或因果关系来发生平行事件,尽管 Genesis J2T 的模型动态地允许这两种情况。

🎯 **Genesis J2T 强调无偏见观测:** Genesis J2T 的预测性智能的伦理框架是观测过程的圣洁性以及保护数据免受偏见的影响。观点与观测过程脱钩,叙述被中立的观测过程所取代。搜索引擎过滤和全球新闻机构的整理被绕过,并用世界每个地区的实时超本地化数据源增强。

🎯 **Genesis J2T 的预测性智能超越了传统AI:** 传统AI的开发基准是人类智能,起点是语言模型,以及神经网络的设计,试图模拟人类大脑的功能,包括人类决策的复杂过程。这种方法的内在局限性在于将AI建模在人类智能、人类特征和行为上,这些特征和行为体现了对宇宙及其相邻偏见的客观看法。AI行业仍然主要集中在提高生成式AI模拟人类行为的能力,包括创建“原创内容”,包括文本、图像、音频和视频。迄今为止,它最有效的商业应用是自动化重复性任务并提高准确性,目标是提高组织效率。Genesis J2T 的预测性智能超越了这种模仿人类智能的方法,而是专注于利用客观数据来预测事件,而不会受到人类偏见的影响。

Visualizing Future Geopolitical, Environmental, and Public Health Events in Data and Imagery

Jumptuit is pleased to announce significant advances in its Next Generation AI, Genesis J2T’s Anticipatory Intelligence to forecast and visualize through the mediums of data and imagery probable geopolitical, environmental, and public health events for corporate and government leaders.

Genesis J2T has substantially increased its range of coverage of global atmospheric, terrestrial, and oceanic phenomena, and human activity and artificial systems, from widely dispersed and varied sensors, across the full EM spectrum, as well as hyper-localized data sources that provide unfiltered up-to-date information on human activity and artificial systems.

Genesis J2T has advanced its ability to extract reliable cross-sector signals from a complex of diverse data sources and increased its ability to anticipate probable events, reducing exposure to incidents and, in so doing, mitigating the Cost of Risk (COR). Genesis J2T’s ever-expanding array of hyper-localized data sources removes filters, provides greater clarity, and observability of global phenomena and sector conditions as they occur for any geolocation.

Also Read: Want to Beat FOIA Backlogs? Embrace AI

Genesis J2T synchronizes millions of realtime data endpoints via its Global Sensory Intelligence (GSI) and its Global Data Nets (GDNs) to retrieve realtime and near-realtime hyper-localized data, and to assess geopolitical, environmental, and public health event risk.

Genesis J2T removes algorithmic interference in data acquisition and modeling, and provides transparency and traceability of the data sources, variables, and processes used in generating risk index indicators and probabilities of events.

Traditional AI

The benchmark for development of traditional AI has been human intelligence, the starting point language models, and the design of neural networks, an attempt at simulating human brain functions, including complex processes of human-decision making. The inherent limitations in this approach are modeling AI on human intelligence and human characteristics and behavior, which embody a subjective view of the Universe and its adjacent biases. The AI sector remains largely focused on improving generative AI’s capabilities of mimicking human behavior, including the creation of “original content” including text, images, audio, and video. Its most effective commercial applications to date have been the automation of repetitive tasks and improving accuracy with the goal of increasing organizational efficiencies.

The Principles of Genesis J2T’s Anticipatory Intelligence

Genesis J2T: Observing the Physical Environment

Global synchronization of realtime data from sensors.

Expanding and extending the range of human sensory reception into a new single perceptual frame that manifests as a new global sensory system.

Exceeding the sensory capabilities of living organisms that perceive stimuli beyond human range.

Synchronizing global observation across spectrums and frequencies that surpass the narrow band perception through which human beings experience the Universe.

Synchronizing millions of realtime data endpoints, globally dispersed, to discover probable events through unbiased sensor observation of co-occurring variables.

Genesis J2T: Observing Human Behavior

Reliable cross-sector signals from hyper-localized data sources.

The ethical framework for Anticipatory Intelligence is the sanctity of the observation process and the protection of the data from bias.

Viewpoints are decoupled from the observation process.

Narratives are replaced with veracity through a neutral observation process.

Search engine filtration and global news organization curation are circumvented and augmented with realtime hyper-localized data sources in every region of the world.

Also Read: The Role of AI and Machine Learning in Streaming Technology

Forecasting Probabilities of Environmental and Geopolitical Events

Realtime Data vs. Historical Data

Genesis J2T continuously searches for comparable data sets in the present rather than search historical databases for perceived similar events in the past. From a data standpoint, the co-occurring variables or conditions leading up to and surrounding events in the past are increasingly dissimilar the further one travels back in time. Comparable data sets in the present do not require virality or causation for parallel events to occur, although Genesis J2T’s models dynamically allow for both.

There are no explicit historical patterns. There is only the next dynamic set of variables. Genesis J2T has demonstrated that when cross-sector panoptic data sets are captured, even in increments of seconds, in every instance there are variables that disappear and new variables that emerge. Therefore, the assortment and relative value of each data point is in a continuous state of flux denoting waves of probable events. To forecast probable events with reliability it is critical to capture and train on cross-sector data sets as close to the present as possible, marking an important step toward reducing dependencies on theories and models designed to substitute for an absence of data.

“Solving the data puzzle of visualizing a future event requires enough data puzzle pieces to work with in order to identify the probable geolocation, event type, actors, and time frame,” said Jumptuit CEO and founder Donald Leka. “Conformity to facts requires a decoupling of viewpoints, interpretations and biases from the observation process and the exclusion of narratives from the forecasting process. The human and financial cost of miscalculations in forecasting is immeasurable. AI-powered early-stage detection of global events that impact global financial markets, jurisdictions, sectors, industries and companies, will provide corporate and government leaders with the ability to expedite and improve decision-making, scheduling, planning and execution to proactively avoid, circumvent, and bypass event risk.”

Also Read: AI and Big Data Governance: Challenges and Top Benefits

[To share your insights with us as part of editorial or sponsored content, please write to psen@itechseries.com]

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人工智能 预测性智能 数据分析 风险管理 全球事件
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