We present a divide–et–impera extension of the (Quantics) Tensor Cross 
Interpolation (TCI) algorithm that adaptively partitions a high
dimensional tensor into a collection of low-rank tensor train (TT) patches. 
Each patch is compressed with an explicit bond-dimension cap χpatch, 
that triggers finer partitioning of the configuration space wherever the 
input tensor has more interesting features (higher local rank). The local 
cap χpatch not only reduces the memory footprint of the tensor-train 
representation of functions with sharply local features, but also tames the 
O(χ4) cost of MPO-MPO contractions by decomposing the global 
product into many rank-≤χpatch sub-contractions; in this context, the 
choice of MPO patching scheme is essential, as it can markedly 
enhance—or, if poorly chosen, limit—the overall efficiency of patched 
contractions. 
We derive closed-form bounds that relate χpatch and the patch count 
Npatch to the memory and run-time advantage over a monolithic TCI or 
MPO contraction, and identify an “over-patching” regime that arises if 
the cap is chosen too small. The theoretical estimates are validated by 
comprehensive benchmarks and the advantage is tested on three 
notorious bottlenecks ofmany-bodyphysics related to the Hubbard 
model: (i) the approximaton of a two-dimensional Matsubara Green’s 
function, (ii) the computation of the bare susceptibility χ0(q,iω) (bubble 
diagram), and (iii) vertex contractions entering the Bethe-Salpeter 
equation for the single-impurity Anderson model. In all cases the patched 
strategy yields significant memory savings together with speed-ups of 
nearly an order of magnitude, enabling computations that remain out of 
practical reach for the monolithic method. 
| Wann? | 06.11.2025 14:00 | 
|---|---|
| Wo? | PER 08 2.73 Chemin du Musée 3, 1700 Fribourg  | 
                
| Vortragende | Gianluca Grosso 
 Ludwig Maximilian University of Munich  | 
                
| Kontakt | Département de physique Prof. Philipp Werner philipp.werner@unifr.ch  | 
                
