Climate Impact Of AI
AI and machine learning has a climate impact from the energy used at all stages from development to deployment, as well as considerations around embodied energy in hardware from GPUs to data centres. Efforts to quantify the CO2 impact of ML have been undertaken[1][2], and tools and recommendations for best practice have been created[3][4].
Thoughtful blog from W&B: https://towardsdatascience.com/deep-learning-and-carbon-emissions-79723d5bc86e
Models
Many recent projects in deep learning have used increasingly large computational resources to create models[ x, y, z].
Compute doubling https://openai.com/blog/ai-and-compute/
Training
Redundant training
Inference
References
- ↑ Lacoste, Alexandre; Luccioni, Alexandra; Schmidt, Victor; Dandres, Thomas (2019-10-21). "Quantifying the Carbon Emissions of Machine Learning". arXiv:1910.09700 [cs, stat].
- ↑ Henderson, Peter; Hu, Jieru; Romoff, Joshua; Brunskill, Emma; Jurafsky, Dan; Pineau, Joelle (2020-01-31). "Towards the Systematic Reporting of the Energy and Carbon Footprints of Machine Learning". arXiv:2002.05651 [cs].
- ↑ "ML CO2 Impact". Retrieved 2021-03-27.
- ↑ "Experiment Impact Tracker". 2021-03-27.