Difference between revisions of "AI Governance"
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<b>AI Ethics, Policy, and Governance at Stanford - Day One | <b>AI Ethics, Policy, and Governance at Stanford - Day One | ||
</b><br>Join the Stanford Institute for Human-Centered Artificial Intelligence (HAI) via livestream on Oct. 28-29 for our 2019 fall conference on AI Ethics, Policy, and Governance. With experts from academia, industry, civil society, and government, we’ll explore critical and emerging issues around understanding and guiding AI’s human and societal impact to benefit humanity. The program starts at 15 minutes, 30 seconds. | </b><br>Join the Stanford Institute for Human-Centered Artificial Intelligence (HAI) via livestream on Oct. 28-29 for our 2019 fall conference on AI Ethics, Policy, and Governance. With experts from academia, industry, civil society, and government, we’ll explore critical and emerging issues around understanding and guiding AI’s human and societal impact to benefit humanity. The program starts at 15 minutes, 30 seconds. | ||
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| + | <b>What is Enterprise AI Model Governance? [Applied AI ML in Business] AL ML DL Introduction | ||
| + | </b><br>Enterprise Machine Learning Model Governance or Enterprise AI Governance will be an important topic in the next few years. Along with AI Governance within an enterprise, we need an end-to-end AI Governance and Machine Learning model Governance operation. Everything about Applied Artificial Intelligence, Machine Learning in real world. Mind Data Intelligence is Brian Ka Chan - Applied AI Strategist, Technology/Data/Analytics Executive, ex-Oracle Architect, ex-SAP Specialist. "Artificial intelligence for Everyone" is my vision about the channel. And it will also include fintech, smart cities, and all latest cutting edge technologies. The goal of the channel to sharing AI & Machine Learning knowledge, expand common sense, and demystify AI Myths. We want everyone from all level of walks to understand Artificial Intelligence. | ||
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| + | <b>AI Model Governance in a High Compliance Industry | ||
| + | </b><br>Model governance defines a collection of best practices for data science – versioning, reproducibility, experiment tracking, automated CI/CD, and others. Within a high-compliance setting where the data used for training or inference contains private health information (PHI) or similarly sensitive data, additional requirements such as strong identity management, role-based access control, approval workflows, and full audit trail are added. This webinar summarizes requirements and best practices for establishing a high-productivity data science team within a high-compliance environment. It then demonstrates how these requirements can be met using John Snow Labs’ Healthcare AI Platform. | ||
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Revision as of 08:29, 7 September 2020
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- Case Studies
- Data Governance
- Enterprise Architecture (EA)
- Enterprise Portfolio Management (EPM)
- Architectures supporting machine learning
- Evaluation
- Tackling artificial intelligence using architecture | Daniel Lambert - CIO
AI Goverance
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