green-ai
Environmental AI standards
Develops guidelines and best practices to reduce environmental impact of AI research and development
🌱 The Green AI Standard aims to develop a standard and raise awareness for best environmental practices in AI research and development
81 stars
9 watching
4 forks
last commit: over 4 years ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
daviddao/awful-ai | Tracks and documents current misuses of AI in society to raise awareness and spark discussions on preventive measures | 6,995 |
genai-impact/ecologits | Tracks energy consumption and environmental impacts of generative AI models through APIs | 103 |
github/greensoftwaredirectory | A community-driven resource listing green software projects with tools to measure and analyze environmental impact | 439 |
jphall663/responsible_xai | Guidelines and resources for the development of responsible AI systems | 17 |
alan-turing-institute/environmental-ds-book | A comprehensive online resource and community platform supporting collaborative Environmental Data Science projects. | 102 |
fairlyai/fairly-regulation-policy-tracker | A global map of AI regulations and policies, categorized by type and status. | 24 |
jphall663/gai_risk_management | Resources to help organizations manage risks associated with Generative AI systems | 11 |
jawache/principles-green | A website dedicated to sharing knowledge and best practices for developing sustainable software applications. | 170 |
ioos/bio_data_guide | Facilitates community collaboration on standardizing marine biological data using Darwin Core standards | 47 |
algorave/guidelines | Guidelines and best practices for developing and maintaining event-driven systems in the Algorave framework | 138 |
defi-defense-dao/defi-risk-tools-list | Collaborative resource providing risk analysis tools and information for DeFi protocols | 163 |
alexandru/scala-best-practices | Guides developers on following best practices for writing maintainable and efficient Scala code | 4,391 |
tdwg/dwc | Standard for sharing biodiversity information in a consistent and machine-readable format | 206 |
azure/fta-ai-learning | Provides resources and guidance on AI/ML best practices and examples for use in Azure Vision AI | 1 |