One aspect that hasn't been fully explored yet is the role of active learning in reducing training data needs by 2025. Active learning involves selecting the most informative samples for training, which can significantly decrease the amount of data required. With the Nvidia 5000-series GPUs, you could implement active learning strategies more efficiently due to their enhanced processing power. This approach could be particularly useful for image-based training, where you might start with a smaller dataset and iteratively add the most beneficial images for your model's learning process.
Additionally, consider the potential of quantum machine learning as it evolves. While still in early stages, by 2025, quantum algorithms might offer new ways to process and analyze data more efficiently, possibly requiring less traditional training data. These methods could complement federated and transfer learning, providing a multifaceted approach to building your custom AI model.
Have you thought about integrating these advanced techniques into your project? It's exciting to see how these technologies could shape the future of AI development!