Framework
Technical avenues for more frugal AI
Edited by :
Rémy Marrone
Summary
A list of potential solutions for frugal AI. This resource provides a concise overview of various solutions discussed in other referenced materials.
It is not intended to provide an expert analysis, but rather to highlight possible approaches to reduce AI’s environmental impact:
1 - Purpose of the service
2 - Edge computing
3 - Local processing
4 - Synthetic data
5 - Transfer learning
6 - Partial retraining of AI models
7 - Limiting the dataset size
8 - Reducing the number of model parameters
9 - Minimizing AI memory consumption using neuromorphic chips, for example
10 - Algorithm compression
11 - Pruning: a technique that removes certain neuron connections in a neural network
12 - Distillation: transferring knowledge from a larger model to a smaller one while maintaining most of its accuracy
This initial list is intended to be expanded and updated over time.
Publication date
2024
Available in
- English
- French
License
Intellectual property of the author