# 7.11 Parallel optimization¶

In this section we demonstrate the method `Model.SolveBatch` which is a parallel optimization mechanism built-in in MOSEK. It has the following features:

• It allows to fine-tune the balance between the total number of threads in use by the parallel solver and the number of threads used for each individual model.

• It is very efficient for optimizing a large number of models of similar size, for example models obtained by cloning an initial model and changing some coefficients.

In the example below we demonstrate a very standard application of `Model.SolveBatch`. We create an initial model, clone it a few times, set different parameter values in each clone and then optimize all the cloned models in parallel. When all models complete we access the status for each of them and, if successfully solved, we gather solutions and other information in the standard way, as if each model was optimized separately.

Listing 7.26 Calling the parallel optimizer. Click `here` to download.
```   /** Example of how to use Model.solveBatch()
*/
public static void Main(string[] argv)
{
// Choose some sample parameters
int n = 10;                 // Number of models to optimize

// Create a toy model for this example
Model M = makeToyParameterizedModel();

// Set up n copies of the model with different data
Model[] models = new Model[n];
for(int i = 0; i < n ; i++)
{
models[i] = M.Clone();
models[i].GetParameter("p").SetValue(i+1);
// We can set the number of threads individually per model
}

// Solve all models in parallel
SolverStatus[] status = Model.SolveBatch(false,         // No race
-1.0,          // No time limit
models);       // Array of Models to solve

// Access the soutions
for(int i = 0; i < n; i++)
if (status[i] == SolverStatus.OK)
Console.WriteLine("Model  {0}: Status {1}  Solution Status {2}   objective  {3}  time {4}",
i,
status[i],
models[i].GetPrimalSolutionStatus(),
models[i].PrimalObjValue(),
models[i].GetSolverDoubleInfo("optimizerTime"));
else
Console.WriteLine("Model  {0}: not solved", i);
}
```