Tag Archives: stochastic optimization

Supervised Machine Learning Parameter Search and Tuning with Simulated Annealing

The most challenging phase in supervised Machine Learning pipeline is parameter tuning. There are many parameters, each with a range of values. The so called grid search is brute force approach that tries all possible combinations of values for the … Continue reading

Posted in Machine Learning, Python, ScikitLearn, Supervised Learning | Tagged , , | 1 Comment

Project Assignment Optimization with Simulated Annealing on Spark

Optimizing assignment of people to projects is a very complex problem and classical optimization techniques are not very useful. The topic this post is a project assignment optimization problem where people should be assigned to projects in a way that will … Continue reading

Posted in Data Science, Optimization, Spark | Tagged , , | 2 Comments