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相关概念视频

Quality Assurance01:19

Quality Assurance

3.8K
Quality assurance is the overarching term used to describe the activities employed to ensure the proper performance of a system. These activities can be classified into three categories: quality control, quality assessment, and internal corrective measures. Typically, these activities work cyclically: quality control is performed before and during the analysis, while quality assessment occurs during and after the investigation. Internal corrective measures are implemented based on the findings...
3.8K
Distribution Reliability and Automation01:25

Distribution Reliability and Automation

558
Distribution reliability in electrical power systems is critical for ensuring an uninterrupted power supply to consumers at minimal cost. According to IEEE Standard Terms, reliability is the probability that a device will function without failure over a specified time period or amount of usage. For electric power distribution, this translates to maintaining continuous power supply and addressing customer concerns over power outages. Several indices, as defined by IEEE Standard 1366-2012, are...
558
Quality Control01:05

Quality Control

4.1K
Quality control is one of the three cyclical quality assurance activities that help keep a system under statistical control. Typical quality control activities include creating quality control charts, conducting proficiency testing, and documenting and archiving results.
Quality control helps track data, visualize trends, and identify variations, making it easier to detect deviations that may affect the accuracy of an analysis. One way to do this is by generating a quality control chart, which...
4.1K
Automatic Processing and Automatic Social Behavior01:28

Automatic Processing and Automatic Social Behavior

305
Automatic processing refers to the cognitive operations that occur without conscious intent or awareness, playing a fundamental role in shaping social cognition and behavior. These processes enable individuals to navigate complex social environments efficiently by relying on mental shortcuts and pre-existing knowledge structures known as schemas. One of the most influential mechanisms underlying automatic processing is priming, which subtly activates mental representations through exposure to...
305
Ethical Standards I01:25

Ethical Standards I

1.7K
The American Nurses Association (ANA) created and implemented the first nationally accepted Code of Ethics for Nurses with Interpretive Statements. The Code of Ethics is a living document regularly updated by the ANA and establishes an ethical standard that is non-negotiable for nurses in all roles and settings.
The Code of Ethics provisions outline the nurse's duty to the patient, the healthcare team, the profession, and society. The Code's fundamental principles include advocacy,...
1.7K
High-Level and Low-Level Awareness01:19

High-Level and Low-Level Awareness

877
Controlled processes in human consciousness represent high-alert mental states where individuals deliberately focus their attention on achieving specific goals. Controlled processes can be seen in situations like mastering new technology, where a person might become so absorbed that they ignore surrounding distractions. Such processes involve selective attention, requiring one to concentrate on particular elements of experience while disregarding others. These are governed by executive...
877

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相关实验视频

Updated: Mar 18, 2026

Simulation of a Scaled Assembly Process with Collaboration of a Robotic Arm and Monitoring through a Vision System for Quality Control
05:47

Simulation of a Scaled Assembly Process with Collaboration of a Robotic Arm and Monitoring through a Vision System for Quality Control

Published on: August 29, 2025

532

审计为代码:用于持续的AI保证的政策为代码框架.

Aoun E Muhammad1, Kin-Choong Yow1, Shrooq Alsenan2

  • 1Faculty of Engineering and Applied Science, University of Regina, Regina, SK, Canada.

Frontiers in artificial intelligence
|March 16, 2026
PubMed
概括
此摘要是机器生成的。

审计即代码通过将治理要求映射到自动化,可验证的控制来改变人工智能保证. 这一框架使合规性变得可操作,使持续监控和可审计的人工智能系统成为可能.

关键词:
人工智能保证的保证一个CI/CD,一个CI/CD.符合合规性的合规性是什么可以解释性的解释性.治理 治理 治理 治理 治理 治理政策作为代码的政策可复制性的可复制性可以追溯的可追溯性.

相关实验视频

Last Updated: Mar 18, 2026

Simulation of a Scaled Assembly Process with Collaboration of a Robotic Arm and Monitoring through a Vision System for Quality Control
05:47

Simulation of a Scaled Assembly Process with Collaboration of a Robotic Arm and Monitoring through a Vision System for Quality Control

Published on: August 29, 2025

532

科学领域:

  • 人工智能的人工智能
  • 软件工程 软件工程 软件工程
  • 信息保证信息的保证.

背景情况:

  • 目前的AI治理依赖于手动的政策审查,阻碍了可扩展和可重复的合规性.
  • 将定性AI要求运行到可验证的控制中,对持续保证构成了重大挑战.

研究的目的:

  • 引入"审计为代码" (Audit-as-Code),这是人工智能系统的持续保证框架.
  • 在MLOps/CI-CD工作流程中运行人工智能治理和合规.
  • 为自动化部署决策制定一个可靠的准备分数.

主要方法:

  • 开发了Audit-as-Code,将治理映射到可审计的规则和可执行的检查.
  • 综合版本的政策规范和证据文物检查.
  • 创建了一个保证的准备成绩,包括治理风险,可追溯性和可解释性.

主要成果:

  • 在代表性AI系统上证明了审计为代码的有效性.
  • 展示了证据捆绑在各种治理法规中的可重复使用性.
  • 验证了框架自动化合规决策的能力,并提供有针对性的改进建议.

结论:

  • 审计即代码将人工智能保证从以文档为中心的转变为量化,可审计和实用的方法.
  • 该框架提高了AI合规性的可复制性和可扩展性.
  • 实现人工智能系统的自动化,分级风险的部署决策.