I try to parallelize a function in Python. The function performs cross-validation on a Lasso-regularized multilevel model. The aim is, to identify the optimal alpha value for the Lasso. Doing this with up to 5 folds and several alpha values is very time consuming, and I would like to parallelize the function. However, I can't transfer the other examples in this forum to my function:

```
def cross_validation (fix_formula,rand_formula,data,groupvar,alpha_values,free=True,ncv=5):
"""Cross Validation for a regularized mixed linear model. The Cross Validation is performed to select the optimal
alpha value for a Lasso regularization.
Args:
fix_formula: The formula for the fix-part of the mixed model
rand_formula: The formula for the random part of the mixed model
data: The data frame
groupvar: The grouping variable for the mixed model
alpha_values: A List of potential alpha values
free: Boolean to indicate the variance-covariance structure of the random effects. If True, one variance parameter per random effect, all covariances zero
ncv: The number of cross-validations
Returns:
matrix: A matrix containing the residual sum of squares for each cv(Rows) and alpha value(Columns)
quality_krit: A list containing the residual sum of squares for each cv and alpha value
colSum: The column sums of the matrix to identify optimal alpha value overall cvs
alpha_opt: the alpha value with the minimal RSS based on colSum
"""
#create index with values 1:ncv equaly distributed on len(grouping variables in data frame)
nshop=data[groupvar].nunique()
np.random.seed(100)
ind_help = np.random.choice(a=range(1,5+1), size=nshop, replace=True)
index=[]
for i in range(0,data[groupvar].nunique()):
a=np.repeat(ind_help[i],len(data[data[groupvar]==i])).tolist()
index=index+a
index = np.asarray(index)
#create dictionary containing datasets for calculation, prediction and alpha values
#I did this to avoid two nested loops (first loop over ncv and second loop over alpha-values)
dic={}
n=1
for i in range (1,ncv+1):
for j in alpha_values:
a={n:[data.iloc[index!=i,:],data.iloc[index==i,:],j]}
dic.update(a)
n=n+1
quality_krit=[]
#estimate mixed_model for each alpha_value and cv
Y=fix_formula.split(' ', 1)[0]
for i in range(1,len(dic)+1):
print("Calculation Number: ", i)
model = mixed_model_cv(fix_formula=fix_formula, rand_formula=rand_formula,df=dic[i][0],groupvar=groupvar,alpha=dic[i][2] ,free=free)
#Predict values on hold-out
y_hat=model.predict(dic[i][1])
#Calculate quality criteron
quality=sum((dic[i][1][Y]-y_hat)**2)
quality_krit.append(quality)
matrix= np.array(quality_krit).reshape(ncv,len(alpha_values))
#save output matrix
numpy.savetxt("cv_RSS.csv", matrix, delimiter=",")
colSum = np.sum(matrix, axis=0)
print("alpha {} leads to minimal RSS {}".format(np.argmin(colSum)+1, np.min(colSum)))
alpha_opt=alpha_values[np.argmin(colSum)]
return [matrix, quality_krit, colSum, alpha_opt]
```

The `for`

-loop I would like to parallelize is this one with the model estimation and prediction:

```
#estimate mixed_model for each alpha_value and cv
for i in range(1,len(dic)+1):
print("Calculation Number: ", i)
model = mixed_model_cv(fix_formula=fix_formula, rand_formula=rand_formula,df=dic[i][0],groupvar=groupvar,alpha=dic[i][2] ,free=free)
#Predict values on hold-out
y_hat=model.predict(dic[i][1])
#Calculate quality criteron
quality=sum((dic[i][1][Y]-y_hat)**2)
quality_krit.append(quality)
```

The creation of the index and the dictionary cannot be parallelized. I decided to store the datasets, the hold-outs for predictions and the corresponding alpha values in a dictionary to avoid two nested for-loops. However, I don't know if this is feasible for a dataset with about 150.000 rows and 500 columns. Because, if I perform 5 cross-validations on 3 alphas I have 15 entries in the dictionary with 30 datasets and my plan is to test much more alpha values...

What is your opinion? Do you have better suggestions?

I have read about the `multiprocessing`

package and the `pool`

command, but I don't know how to apply it to my example. The results should be provided in the correct order and not immediately if a process finished.
I am working on a Linux server with the possibility to use up to 40 cores for the calculations, but it might be good if there is a way to specify the number of cores separately.

Thank you for your help!

`sklearn`

. And for the case of`Lasso`

, you can specify`njobs=-1`

to use all cores of you machine. Furthermore it is almost never a good idea to try to speed something up with parallel for loops and numpy. It almost always better to write your code vectorized. – Scotty1- Feb 11 at 13:09`sklearn`

does not provide the possibility to calculate a linear mixed model I can only do that with`Statsmodels`

. I don't want to have parallel for loops, my idea was to replace the for loop with parallelization. What do you mean by vectorized? – Lisa Feb 11 at 14:10