Multi-Level Local SGD for Heterogeneous Hierarchical Networks
Castiglia, Timothy, Das, Anirban, Patterson, Stacy
We propose Multi-Level Local SGD, a distributed gradient method for learning a smooth, non-convex objective in a heterogeneous multi-level network. Our network model consists of a set of disjoint sub-networks, with a single hub and multiple worker nodes; further, worker nodes may have different operating rates. The hubs exchange information with one another via a connected, but not necessarily complete communication network. In our algorithm, sub-networks execute a distributed SGD algorithm, using a hub-and-spoke paradigm, and the hubs periodically average their models with neighboring hubs. We first provide a unified mathematical framework that describes the Multi-Level Local SGD algorithm. We then present a theoretical analysis of the algorithm; our analysis shows the dependence of the convergence error on the worker node heterogeneity, hub network topology, and the number of local, sub-network, and global iterations. We back up our theoretical results via simulation-based experiments using both convex and non-convex objectives.
Jul-27-2020
- Country:
- North America > United States
- New York
- Rensselaer County > Troy (0.04)
- New York County > New York City (0.04)
- Florida > Broward County
- Fort Lauderdale (0.04)
- New York
- Asia > Middle East
- Jordan (0.04)
- North America > United States
- Genre:
- Research Report (0.65)
- Technology: