**Evolution strategies** is a stochastic global optimization algorithm.

It is an evolutionary algorithm related to others, such as the genetic algorithm, although it is designed specifically for continuous function optimization.

In this tutorial, you will discover how to implement the evolution strategies optimization algorithm.

After completing this tutorial, you will know:

- Evolution Strategies is a stochastic global optimization algorithm inspired by the biological theory of evolution by natural selection.
- There is a standard terminology for Evolution Strategies and two common versions of the algorithm referred to as (mu, lambda)-ES and (mu + lambda)-ES.
- How to implement and apply the Evolution Strategies algorithm to continuous objective functions.

Let’s get started.

## Tutorial Overview

This tutorial is divided into three parts; they are:

- Evolution Strategies
- Develop a (mu, lambda)-ES
- Develop a (mu + lambda)-ES

## Evolution Strategies

Evolution Strategies, sometimes referred to as Evolution Strategy (singular) or ES, is a stochastic global optimization algorithm.

The technique was developed in the 1960s to be implemented manually by engineers for minimal drag designs in a wind tunnel.

The family of algorithms known as Evolution Strategies (ES) were developed by Ingo Rechenberg and Hans-Paul Schwefel at the Technical University of Berlin in the mid 1960s.

— Page 31, Essentials of Metaheuristics, 2011.

Evolution Strategies is a type of evolutionary algorithm and is inspired by the biological theory of evolution by means of natural selection. Unlike other evolutionary algorithms, it does not use any form of crossover; instead, modification of candidate solutions is limited to mutation operators. In this way, Evolution Strategies may be thought of as a type of parallel stochastic hill climbing.

The algorithm involves a population of candidate solutions that initially are randomly generated. Each iteration of the algorithm involves first evaluating the population of solutions, then deleting all but a subset of the best solutions, referred to as truncation selection. The remaining solutions (the parents) each are used as the basis for generating a number of new candidate solutions (mutation) that replace or compete with the parents for a position in the population for consideration in the next iteration of the algorithm (generation).

There are a number of variations of this procedure and a standard terminology to summarize the algorithm. The size of the population is referred to as *lambda* and the number of parents selected each iteration is referred to as *mu*.

The number of children created from each parent is calculated as (*lambda* / *mu*) and parameters should be chosen so that the division has no remainder.

*mu*: The number of parents selected each iteration.*lambda*: Size of the population.*lambda / mu*: Number of children generated from each selected parent.

A bracket notation is used to describe the algorithm configuration, e.g. *(mu, lambda)-ES*. For example, if *mu=5* and *lambda=20*, then it would be summarized as *(5, 20)-ES*. A comma (,) separating the *mu* and *lambda* parameters indicates that the children replace the parents directly each iteration of the algorithm.

**(mu, lambda)-ES**: A version of evolution strategies where children replace parents.

A plus (+) separation of the mu and lambda parameters indicates that the children and the parents together will define the population for the next iteration.

**(mu + lambda)-ES**: A version of evolution strategies where children and parents are added to the population.

A stochastic hill climbing algorithm can be implemented as an Evolution Strategy and would have the notation *(1 + 1)-ES*.

This is the simile or canonical ES algorithm and there are many extensions and variants described in the literature.

Now that we are familiar with Evolution Strategies we can explore how to implement the algorithm.

## Develop a (mu, lambda)-ES

In this section, we will develop a *(mu, lambda)-ES*, that is, a version of the algorithm where children replace parents.

First, let’s define a challenging optimization problem as the basis for implementing the algorithm.

The Ackley function is an example of a multimodal objective function that has a single global optima and multiple local optima in which a local search might get stuck.

As such, a global optimization technique is required. It is a two-dimensional objective function that has a global optima at [0,0], which evaluates to 0.0.

The example below implements the Ackley and creates a three-dimensional surface plot showing the global optima and multiple local optima.

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# ackley multimodal function from numpy import arange from numpy import exp from numpy import sqrt from numpy import cos from numpy import e from numpy import pi from numpy import meshgrid from matplotlib import pyplot from mpl_toolkits.mplot3d import Axes3D # objective function def objective(x, y): return –20.0 * exp(–0.2 * sqrt(0.5 * (x**2 + y**2))) – exp(0.5 * (cos(2 * pi * x) + cos(2 * pi * y))) + e + 20 # define range for input r_min, r_max = –5.0, 5.0 # sample input range uniformly at 0.1 increments xaxis = arange(r_min, r_max, 0.1) yaxis = arange(r_min, r_max, 0.1) # create a mesh from the axis x, y = meshgrid(xaxis, yaxis) # compute targets results = objective(x, y) # create a surface plot with the jet color scheme figure = pyplot.figure() axis = figure.gca(projection=‘3d’) axis.plot_surface(x, y, results, cmap=‘jet’) # show the plot pyplot.show() |

Running the example creates the surface plot of the Ackley function showing the vast number of local optima.

We will be generating random candidate solutions as well as modified versions of existing candidate solutions. It is important that all candidate solutions are within the bounds of the search problem.

To achieve this, we will develop a function to check whether a candidate solution is within the bounds of the search and then discard it and generate another solution if it is not.

The *in_bounds()* function below will take a candidate solution (point) and the definition of the bounds of the search space (bounds) and return True if the solution is within the bounds of the search or False otherwise.

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# check if a point is within the bounds of the search def in_bounds(point, bounds): # enumerate all dimensions of the point for d in range(len(bounds)): # check if out of bounds for this dimension if point[d] < bounds[d, 0] or point[d] > bounds[d, 1]: return False return True |

We can then use this function when generating the initial population of “*lam*” (e.g. *lambda*) random candidate solutions.

For example:

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... # initial population population = list() for _ in range(lam): candidate = None while candidate is None or not in_bounds(candidate, bounds): candidate = bounds[:, 0] + rand(len(bounds)) * (bounds[:, 1] – bounds[:, 0]) population.append(candidate) |

Next, we can iterate over a fixed number of iterations of the algorithm. Each iteration first involves evaluating each candidate solution in the population.

We will calculate the scores and store them in a separate parallel list.

... # evaluate fitness for the population scores = [objective(c) for c in population] |

Next, we need to select the “*mu*” parents with the best scores, lowest scores in this case, as we are minimizing the objective function.

We will do this in two steps. First, we will rank the candidate solutions based on their scores in ascending order so that the solution with the lowest score has a rank of 0, the next has a rank 1, and so on. We can use a double call of the argsort function to achieve this.

We will then use the ranks and select those parents that have a rank below the value “*mu*.” This means if mu is set to 5 to select 5 parents, only those parents with a rank between 0 and 4 will be selected.

... # rank scores in ascending order ranks = argsort(argsort(scores)) # select the indexes for the top mu ranked solutions selected = [i for i,_ in enumerate(ranks) if ranks[i] < mu] |

We can then create children for each selected parent.

First, we must calculate the total number of children to create per parent.

... # calculate the number of children per parent n_children = int(lam / mu) |

We can then iterate over each parent and create modified versions of each.

We will create children using a similar technique used in stochastic hill climbing. Specifically, each variable will be sampled using a Gaussian distribution with the current value as the mean and the standard deviation provided as a “*step size*” hyperparameter.

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... # create children for parent for _ in range(n_children): child = None while child is None or not in_bounds(child, bounds): child = population[i] + randn(len(bounds)) * step_size |

We can also check if each selected parent is better than the best solution seen so far so that we can return the best solution at the end of the search.

... # check if this parent is the best solution ever seen if scores[i] < best_eval: best, best_eval = population[i], scores[i] print(‘%d, Best: f(%s) = %.5f’ % (epoch, best, best_eval)) |

The created children can be added to a list and we can replace the population with the list of children at the end of the algorithm iteration.

... # replace population with children population = children |

We can tie all of this together into a function named *es_comma()* that performs the comma version of the Evolution Strategy algorithm.

The function takes the name of the objective function, the bounds of the search space, the number of iterations, the step size, and the mu and lambda hyperparameters and returns the best solution found during the search and its evaluation.

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# evolution strategy (mu, lambda) algorithm def es_comma(objective, bounds, n_iter, step_size, mu, lam): best, best_eval = None, 1e+10 # calculate the number of children per parent n_children = int(lam / mu) # initial population population = list() for _ in range(lam): candidate = None while candidate is None or not in_bounds(candidate, bounds): candidate = bounds[:, 0] + rand(len(bounds)) * (bounds[:, 1] – bounds[:, 0]) population.append(candidate) # perform the search for epoch in range(n_iter): # evaluate fitness for the population scores = [objective(c) for c in population] # rank scores in ascending order ranks = argsort(argsort(scores)) # select the indexes for the top mu ranked solutions selected = [i for i,_ in enumerate(ranks) if ranks[i] < mu] # create children from parents children = list() for i in selected: # check if this parent is the best solution ever seen if scores[i] < best_eval: best, best_eval = population[i], scores[i] print(‘%d, Best: f(%s) = %.5f’ % (epoch, best, best_eval)) # create children for parent for _ in range(n_children): child = None while child is None or not in_bounds(child, bounds): child = population[i] + randn(len(bounds)) * step_size children.append(child) # replace population with children population = children return [best, best_eval] |

Next, we can apply this algorithm to our Ackley objective function.

We will run the algorithm for 5,000 iterations and use a step size of 0.15 in the search space. We will use a population size (*lambda*) of 100 select 20 parents (*mu*). These hyperparameters were chosen after a little trial and error.

At the end of the search, we will report the best candidate solution found during the search.

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... # seed the pseudorandom number generator seed(1) # define range for input bounds = asarray([[–5.0, 5.0], [–5.0, 5.0]]) # define the total iterations n_iter = 5000 # define the maximum step size step_size = 0.15 # number of parents selected mu = 20 # the number of children generated by parents lam = 100 # perform the evolution strategy (mu, lambda) search best, score = es_comma(objective, bounds, n_iter, step_size, mu, lam) print(‘Done!’) print(‘f(%s) = %f’ % (best, score)) |

Tying this together, the complete example of applying the comma version of the Evolution Strategies algorithm to the Ackley objective function is listed below.

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# evolution strategy (mu, lambda) of the ackley objective function from numpy import asarray from numpy import exp from numpy import sqrt from numpy import cos from numpy import e from numpy import pi from numpy import argsort from numpy.random import randn from numpy.random import rand from numpy.random import seed # objective function def objective(v): x, y = v return –20.0 * exp(–0.2 * sqrt(0.5 * (x**2 + y**2))) – exp(0.5 * (cos(2 * pi * x) + cos(2 * pi * y))) + e + 20 # check if a point is within the bounds of the search def in_bounds(point, bounds): # enumerate all dimensions of the point for d in range(len(bounds)): # check if out of bounds for this dimension if point[d] < bounds[d, 0] or point[d] > bounds[d, 1]: return False return True # evolution strategy (mu, lambda) algorithm def es_comma(objective, bounds, n_iter, step_size, mu, lam): best, best_eval = None, 1e+10 # calculate the number of children per parent n_children = int(lam / mu) # initial population population = list() for _ in range(lam): candidate = None while candidate is None or not in_bounds(candidate, bounds): candidate = bounds[:, 0] + rand(len(bounds)) * (bounds[:, 1] – bounds[:, 0]) population.append(candidate) # perform the search for epoch in range(n_iter): # evaluate fitness for the population scores = [objective(c) for c in population] # rank scores in ascending order ranks = argsort(argsort(scores)) # select the indexes for the top mu ranked solutions selected = [i for i,_ in enumerate(ranks) if ranks[i] < mu] # create children from parents children = list() for i in selected: # check if this parent is the best solution ever seen if scores[i] < best_eval: best, best_eval = population[i], scores[i] print(‘%d, Best: f(%s) = %.5f’ % (epoch, best, best_eval)) # create children for parent for _ in range(n_children): child = None while child is None or not in_bounds(child, bounds): child = population[i] + randn(len(bounds)) * step_size children.append(child) # replace population with children population = children return [best, best_eval] # seed the pseudorandom number generator seed(1) # define range for input bounds = asarray([[–5.0, 5.0], [–5.0, 5.0]]) # define the total iterations n_iter = 5000 # define the maximum step size step_size = 0.15 # number of parents selected mu = 20 # the number of children generated by parents lam = 100 # perform the evolution strategy (mu, lambda) search best, score = es_comma(objective, bounds, n_iter, step_size, mu, lam) print(‘Done!’) print(‘f(%s) = %f’ % (best, score)) |

Running the example reports the candidate solution and scores each time a better solution is found, then reports the best solution found at the end of the search.

**Note**: Your results may vary given the stochastic nature of the algorithm or evaluation procedure, or differences in numerical precision. Consider running the example a few times and compare the average outcome.

In this case, we can see that about 22 improvements to performance were seen during the search and the best solution is close to the optima.

No doubt, this solution can be provided as a starting point to a local search algorithm to be further refined, a common practice when using a global optimization algorithm like ES.

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0, Best: f([-0.82977995 2.20324493]) = 6.91249 0, Best: f([-1.03232526 0.38816734]) = 4.49240 1, Best: f([-1.02971385 0.21986453]) = 3.68954 2, Best: f([-0.98361735 0.19391181]) = 3.40796 2, Best: f([-0.98189724 0.17665892]) = 3.29747 2, Best: f([-0.07254927 0.67931431]) = 3.29641 3, Best: f([-0.78716147 0.02066442]) = 2.98279 3, Best: f([-1.01026218 -0.03265665]) = 2.69516 3, Best: f([-0.08851828 0.26066485]) = 2.00325 4, Best: f([-0.23270782 0.04191618]) = 1.66518 4, Best: f([-0.01436704 0.03653578]) = 0.15161 7, Best: f([0.01247004 0.01582657]) = 0.06777 9, Best: f([0.00368129 0.00889718]) = 0.02970 25, Best: f([ 0.00666975 -0.0045051 ]) = 0.02449 33, Best: f([-0.00072633 -0.00169092]) = 0.00530 211, Best: f([2.05200123e-05 1.51343187e-03]) = 0.00434 315, Best: f([ 0.00113528 -0.00096415]) = 0.00427 418, Best: f([ 0.00113735 -0.00030554]) = 0.00337 491, Best: f([ 0.00048582 -0.00059587]) = 0.00219 704, Best: f([-6.91643854e-04 -4.51583644e-05]) = 0.00197 1504, Best: f([ 2.83063223e-05 -4.60893027e-04]) = 0.00131 3725, Best: f([ 0.00032757 -0.00023643]) = 0.00115 Done! f([ 0.00032757 -0.00023643]) = 0.001147 |

Now that we are familiar with how to implement the comma version of evolution strategies, let’s look at how we might implement the plus version.

## Develop a (mu + lambda)-ES

The plus version of the Evolution Strategies algorithm is very similar to the comma version.

The main difference is that children and the parents comprise the population at the end instead of just the children. This allows the parents to compete with the children for selection in the next iteration of the algorithm.

This can result in a more greedy behavior by the search algorithm and potentially premature convergence to local optima (suboptimal solutions). The benefit is that the algorithm is able to exploit good candidate solutions that were found and focus intently on candidate solutions in the region, potentially finding further improvements.

We can implement the plus version of the algorithm by modifying the function to add parents to the population when creating the children.

... # keep the parent children.append(population[i]) |

The updated version of the function with this addition, and with a new name *es_plus()* , is listed below.

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# evolution strategy (mu + lambda) algorithm def es_plus(objective, bounds, n_iter, step_size, mu, lam): best, best_eval = None, 1e+10 # calculate the number of children per parent n_children = int(lam / mu) # initial population population = list() for _ in range(lam): candidate = None while candidate is None or not in_bounds(candidate, bounds): candidate = bounds[:, 0] + rand(len(bounds)) * (bounds[:, 1] – bounds[:, 0]) population.append(candidate) # perform the search for epoch in range(n_iter): # evaluate fitness for the population scores = [objective(c) for c in population] # rank scores in ascending order ranks = argsort(argsort(scores)) # select the indexes for the top mu ranked solutions selected = [i for i,_ in enumerate(ranks) if ranks[i] < mu] # create children from parents children = list() for i in selected: # check if this parent is the best solution ever seen if scores[i] < best_eval: best, best_eval = population[i], scores[i] print(‘%d, Best: f(%s) = %.5f’ % (epoch, best, best_eval)) # keep the parent children.append(population[i]) # create children for parent for _ in range(n_children): child = None while child is None or not in_bounds(child, bounds): child = population[i] + randn(len(bounds)) * step_size children.append(child) # replace population with children population = children return [best, best_eval] |

We can apply this version of the algorithm to the Ackley objective function with the same hyperparameters used in the previous section.

The complete example is listed below.

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# evolution strategy (mu + lambda) of the ackley objective function from numpy import asarray from numpy import exp from numpy import sqrt from numpy import cos from numpy import e from numpy import pi from numpy import argsort from numpy.random import randn from numpy.random import rand from numpy.random import seed # objective function def objective(v): x, y = v return –20.0 * exp(–0.2 * sqrt(0.5 * (x**2 + y**2))) – exp(0.5 * (cos(2 * pi * x) + cos(2 * pi * y))) + e + 20 # check if a point is within the bounds of the search def in_bounds(point, bounds): # enumerate all dimensions of the point for d in range(len(bounds)): # check if out of bounds for this dimension if point[d] < bounds[d, 0] or point[d] > bounds[d, 1]: return False return True # evolution strategy (mu + lambda) algorithm def es_plus(objective, bounds, n_iter, step_size, mu, lam): best, best_eval = None, 1e+10 # calculate the number of children per parent n_children = int(lam / mu) # initial population population = list() for _ in range(lam): candidate = None while candidate is None or not in_bounds(candidate, bounds): candidate = bounds[:, 0] + rand(len(bounds)) * (bounds[:, 1] – bounds[:, 0]) population.append(candidate) # perform the search for epoch in range(n_iter): # evaluate fitness for the population scores = [objective(c) for c in population] # rank scores in ascending order ranks = argsort(argsort(scores)) # select the indexes for the top mu ranked solutions selected = [i for i,_ in enumerate(ranks) if ranks[i] < mu] # create children from parents children = list() for i in selected: # check if this parent is the best solution ever seen if scores[i] < best_eval: best, best_eval = population[i], scores[i] print(‘%d, Best: f(%s) = %.5f’ % (epoch, best, best_eval)) # keep the parent children.append(population[i]) # create children for parent for _ in range(n_children): child = None while child is None or not in_bounds(child, bounds): child = population[i] + randn(len(bounds)) * step_size children.append(child) # replace population with children population = children return [best, best_eval] # seed the pseudorandom number generator seed(1) # define range for input bounds = asarray([[–5.0, 5.0], [–5.0, 5.0]]) # define the total iterations n_iter = 5000 # define the maximum step size step_size = 0.15 # number of parents selected mu = 20 # the number of children generated by parents lam = 100 # perform the evolution strategy (mu + lambda) search best, score = es_plus(objective, bounds, n_iter, step_size, mu, lam) print(‘Done!’) print(‘f(%s) = %f’ % (best, score)) |

Running the example reports the candidate solution and scores each time a better solution is found, then reports the best solution found at the end of the search.

**Note**: Your results may vary given the stochastic nature of the algorithm or evaluation procedure, or differences in numerical precision. Consider running the example a few times and compare the average outcome.

In this case, we can see that about 24 improvements to performance were seen during the search. We can also see that a better final solution was found with an evaluation of 0.000532, compared to 0.001147 found with the comma version on this objective function.

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0, Best: f([-0.82977995 2.20324493]) = 6.91249 0, Best: f([-1.03232526 0.38816734]) = 4.49240 1, Best: f([-1.02971385 0.21986453]) = 3.68954 2, Best: f([-0.96315064 0.21176994]) = 3.48942 2, Best: f([-0.9524528 -0.19751564]) = 3.39266 2, Best: f([-1.02643442 0.14956346]) = 3.24784 2, Best: f([-0.90172166 0.15791013]) = 3.17090 2, Best: f([-0.15198636 0.42080645]) = 3.08431 3, Best: f([-0.76669476 0.03852254]) = 3.06365 3, Best: f([-0.98979547 -0.01479852]) = 2.62138 3, Best: f([-0.10194792 0.33439734]) = 2.52353 3, Best: f([0.12633886 0.27504489]) = 2.24344 4, Best: f([-0.01096566 0.22380389]) = 1.55476 4, Best: f([0.16241469 0.12513091]) = 1.44068 5, Best: f([-0.0047592 0.13164993]) = 0.77511 5, Best: f([ 0.07285478 -0.0019298 ]) = 0.34156 6, Best: f([-0.0323925 -0.06303525]) = 0.32951 6, Best: f([0.00901941 0.0031937 ]) = 0.02950 32, Best: f([ 0.00275795 -0.00201658]) = 0.00997 109, Best: f([-0.00204732 0.00059337]) = 0.00615 195, Best: f([-0.00101671 0.00112202]) = 0.00434 555, Best: f([ 0.00020392 -0.00044394]) = 0.00139 2804, Best: f([3.86555110e-04 6.42776651e-05]) = 0.00111 4357, Best: f([ 0.00013889 -0.0001261 ]) = 0.00053 Done! f([ 0.00013889 -0.0001261 ]) = 0.000532 |

## Further Reading

This section provides more resources on the topic if you are looking to go deeper.

### Papers

### Books

### Articles

## Summary

In this tutorial, you discovered how to implement the evolution strategies optimization algorithm.

Specifically, you learned:

- Evolution Strategies is a stochastic global optimization algorithm inspired by the biological theory of evolution by natural selection.
- There is a standard terminology for Evolution Strategies and two common versions of the algorithm referred to as (mu, lambda)-ES and (mu + lambda)-ES.
- How to implement and apply the Evolution Strategies algorithm to continuous objective functions.

**Do you have any questions?**

Ask your questions in the comments below and I will do my best to answer.

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