To make edge AI as good as very large models, we need to make advancements in a few key areas:
1. Hardware: We need more powerful, energy-efficient processors that can be embedded into devices like smartphones and IoT sensors. This will enable us to run complex deep learning models on these devices without draining the battery or overheating.
2. Algorithms: We need to develop more sophisticated algorithms that can work with smaller amounts of data and make decisions quickly and accurately. This will enable us to run complex models on edge devices without the need for large amounts of data or computational power.
3. Data: We need more data to train edge AI models. This involves collecting and labeling large amounts of data from various sources, including sensors, cameras, and other devices.
Overall, advancements in these areas will help us make significant progress in edge AI and create powerful new applications and devices that can operate independently without relying on the cloud or other external resources.