Diego Tejada
Interventions
02/10
11:06
3minutes
Clustering for Optimization: Linear Program Reductions with TulipaClustering.jl
Diego Tejada, Grigory Neustroev
TulipaClustering.jl introduces a greedy hull clustering method designed to better preserve constraint-binding extremes in optimization problems, especially within energy systems modeling. This approach yields more accurate reduced models for improved downstream optimization performance.
Posters
Salle café
03/10
10:54
3minutes
DuckDB as backend to build optimization models in JuMP.jl
Abel Soares Siqueira, Diego Tejada
We use DuckDB as a backend to generate JuMP variables and constraints using SQL. This enables memory-efficient slicing, reusable indices, and traceable constraints. In TulipaEnergyModel.jl, this reduced preprocessing time and memory usage by up to 50%, improving scalability and clarity.
Posters
Salle café