Connecting the geometry and dynamics of many-body complex systems with message passing neural operators
Description
The relationship between scale transformations and dynamics established by renormalization group techniques is a cornerstone of modern physical theories, from fluid mechanics to elementary particle physics. Integrating renormalization group methods into neural operators for many-body complex systems could provide a foundational inductive bias for learning their effective dynamics, while also uncovering multiscale organization. We introduce a scalable AI framework, ROMA (Renormalized Operators with Multiscale Attention), for learning multiscale evolution operators of many-body complex systems. In particular, we develop a renormalization procedure based on neural analogs of the geometric and laplacian renormalization groups, which can be co-learned with neural operators. An attention mechanism is used to model multiscale interactions by connecting geometric representations of local subgraphs and dynamical operators. We apply this framework in challenging conditions: large systems of more than 1M nodes, long-range interactions, and noisy input-output data for two contrasting examples: Kuramoto oscillators and Burgers-like social dynamics. We demonstrate that the ROMA framework improves scalability and positive transfer between forecasting and effective dynamics tasks compared to state-of-the-art operator learning techniques, while also giving insight into multiscale interactions. Additionally, we investigate power law scaling in the number of model parameters, and demonstrate a departure from typical power law exponents in the presence of hierarchical and multiscale interactions.
Files
Files
(45.1 GB)
| Name | Size | Download all |
|---|---|---|
|
md5:790dd04a9d871df08bed2bf75d48e351
|
12.4 MB | Download |
|
md5:bc812797bf1b4a2b8d44f83f5af2159f
|
87.3 MB | Download |
|
md5:bc812797bf1b4a2b8d44f83f5af2159f
|
87.3 MB | Download |
|
md5:140cf1549600c2a89460aba21b2cd6a7
|
1.7 MB | Download |
|
md5:fe1704f0d37a200b4d78a49853aedd7f
|
1.2 GB | Download |
|
md5:3f3d9f84a0c4db63f2a937263087455c
|
10.1 GB | Download |
|
md5:ceed87c08acb07e13b52d9b1deeba56b
|
10.2 GB | Download |
|
md5:c04f2485bb97944acb98772a5ebb8433
|
144.8 MB | Download |
|
md5:906e0c4a83b41ea567d159221e9fac9f
|
11.8 GB | Download |
|
md5:d2baac46d051fd940ff4d056d830818a
|
1.3 GB | Download |
|
md5:be833722e124311a48fced5ab3e52825
|
10.1 GB | Download |
|
md5:376935df2ce1a29718e897c1f1a57d78
|
245.4 MB | Download |