Автор Тема: The Pursuit of Perfection: Improving Flatness in Manufacturing  (Прочитано 26 раз)

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The Pursuit of Perfection: Improving Flatness in Manufacturing
In the world of manufacturing, precision is paramount. One aspect that often demands meticulous attention is the concept of flatness. Flatness denotes the representation that the actual shape of the plane elements within the part needs to maintain the ideal plane. This is generally known as the degree of flatness. For example, flatness presents or demonstrates the mounting surfaces that have a demand for surface accuracy.Get more news about Improve Flatness,you can vist our website!

In recent years, the correlation between the flatness of neural network convergence positions and model generalization capabilities has been proven. The existing definition of flatness is still limited to zeroth-order flatness, which is the difference between the maximum loss value in the convergence position neighborhood and the current loss value.

A paper titled “Gradient norm aware minimization seeks first-order flatness and improves generalization” presented at CVPR0 by Professor Peng Cui of Tsinghua University found that zeroth-order flatness has certain limitations. Therefore, the concept of first-order flatness was proposed, and further proposed was the GAM optimizer that can constrain first-order flatness. A large number of experiments have proved that GAM has stronger generalization capabilities compared to existing optimizers.

The GAM (Gradient norm Aware Minimization) optimization algorithm proposed based on first-order flatness optimizes the prediction error and the maximum gradient norm in the neighborhood during the training process. Since the maximum gradient norm in the neighborhood cannot be directly solved, it is approximated by a gradient ascent.

The complete optimization process of GAM is shown in Algorithm . Since the first-order flatness directly constrains the maximum gradient norm in the neighborhood, under the second-order approximation of the loss function, the relationship between the first-order flatness and the maximum eigenvalue of the Hessian can be easily obtained.

In conclusion, the pursuit of improving flatness, whether in the physical manufacturing world or the abstract realm of neural networks, is a testament to our relentless pursuit of perfection. As we continue to innovate and push the boundaries of what is possible, the concept of flatness will undoubtedly continue to play a pivotal role in shaping the future of manufacturing and machine learning.