Oldest pages
Jump to navigation
Jump to search
Showing below up to 50 results in range #51 to #100.
View (previous 50 | next 50) (20 | 50 | 100 | 250 | 500)
- AI Risk Assessment Methodologies (Tri Lateral Research) (11:43, 14 November 2022)
- BSA Framework for Secure Software (11:45, 14 November 2022)
- Elements of AI (University of Helsinki) (11:46, 14 November 2022)
- Empowering AI Leadership C Suite Toolkit (World Economic Forum) (11:50, 14 November 2022)
- Ethics of AI (University of Helsinki) (12:17, 14 November 2022)
- Microsoft Responsible AI Standard v2 General Requirements (12:31, 14 November 2022)
- Shaping artificial intelligence for your future business needs (CIPD) (12:32, 14 November 2022)
- State of AI Trend Reporting (12:32, 14 November 2022)
- The Data Ethics Canvas 2021 (ODI) (12:33, 14 November 2022)
- The Ethics of AI Business Practices: A Review of 47 AI Ethics Guidelines (Montreal AI Ethics Institute) (12:34, 14 November 2022)
- The NIST Artificial Intelligence Risk Management Framework (US Government) (12:34, 14 November 2022)
- Towards Data Science (Library) (12:35, 14 November 2022)
- Understanding the UK AI Labour Market Report 2020 (UK Government) (12:36, 14 November 2022)
- Working and Organizing in the Age of the Learning Algorithm (Information and Organization, Faraj, Pachidi and Sayegh)(2018) (12:37, 14 November 2022)
- Artificial intelligence for children (World Economic Forum) (15:03, 14 November 2022)
- Data for Children Ethical Frameworks (Data for Children collaborative) (15:05, 14 November 2022)
- Kids Included (Report) (15:06, 14 November 2022)
- Policy guidance on AI for children (UNICEF) (15:07, 14 November 2022)
- The Children's Code (ICO) (15:08, 14 November 2022)
- Tackling Climate Change with Machine Learning (Paper) (15:10, 14 November 2022)
- AI & Equality Library (EQUINET Europe) (15:12, 14 November 2022)
- Action Toolkit On Inclusive AI (Women's Forum) (2021) (15:13, 14 November 2022)
- AI for Disability Inclusion (Accenture) (15:13, 14 November 2022)
- How can AI support diversity, equity and inclusion? (World Economic Forum) (15:13, 14 November 2022)
- Race & AI Toolkit (We & AI) (15:14, 14 November 2022)
- What is co-Creation (Interaction Design Foundation) (15:14, 14 November 2022)
- 1st Annual Report (Observatory of Algorithms with Social Impact) (OASI) (Eticas) (15:17, 14 November 2022)
- ACT-IAC White Paper: Ethical Application of AI Framework (ACT-IAC) (15:19, 14 November 2022)
- AI Ethics: Global Perspectives (The Gov Lab) (15:20, 14 November 2022)
- Artificial Intelligence Incident Database (15:20, 14 November 2022)
- Better Images of AI (15:21, 14 November 2022)
- Bridging AI's Trust Gap (2020) (EY) (15:22, 14 November 2022)
- BritainThinks: Complete transparency, complete simplicity (Centre for Data Ethics and Innovation) (15:23, 14 November 2022)
- CARE Principles for Indigenous Data Governance (Global Indigenous Data Alliance) (15:24, 14 November 2022)
- Centre for Data Ethics & Innovation (CDEI) (15:24, 14 November 2022)
- Data Feminism (Book) (15:24, 14 November 2022)
- Ethics for Open Source Development (The Linux Foundation) (15:25, 14 November 2022)
- Interpretable Machine Learning Handbook (15:32, 14 November 2022)
- Making Artificial Intelligence and Machine Learning trustworthy and ethical (EY) (15:35, 14 November 2022)
- Microsoft Responsible AI dashboard (15:36, 14 November 2022)
- Montreal AI Ethics Institute (15:37, 14 November 2022)
- Responsible Artificial Intelligence Institute Resource Library (15:38, 14 November 2022)
- The Alethia Framework (Rolls Royce) (15:39, 14 November 2022)
- The draft of the EU AI Act, the proposed bill to regulate AI in the EU (15:40, 14 November 2022)
- Algorithmic impact assessment: a case study in healthcare (Ada Lovelace Institute) (15:41, 14 November 2022)
- Good Machine Learning Practice for Medical Device Development: Guiding Principles (UK Government) (15:42, 14 November 2022)
- The impact of artificial intelligence on the doctor-patient relationship (Council of Europe) (15:42, 14 November 2022)
- The Use of Artificial Intelligence in Health Care: Trustworthiness (ANSI/CTA-2090) (Consumer Technology Association (CTA)) (15:43, 14 November 2022)
- Understanding healthcare workers’ confidence in AI (Part 1) (NHS Health Education England) (15:43, 14 November 2022)
- A Guide to Using Artificial Intelligence in the Public Sector (UK Government) (15:45, 14 November 2022)