So I read an article, and supposedly DOD (data oriented design) is 30% faster than OOP, I've decided to try out it in python and it turned out 524 times slower, why is that? Does DOD simply not work with python? Is it because of poor array performance in python?

```
import random
import time
class Player:
def __init__(self):
self.x = 0
self.y = 0
self.mana = 0
def __repr__(self):
return "x {} y {} mana {}".format(self.x, self.y, self.mana)
def update(self):
self.x += 1
self.y = self.x*2
self.mana = int(random.random()*20)
class Players:
def __init__(self, count):
self.count = count;
self.x = []
self.y = []
self.mana = []
for i in range(count):
self.x.append(0);
self.y.append(0);
self.mana.append(0);
def __repr__(self, n):
return "x {} y {} mana {}".format(self.x[n], self.y[n], self.mana[n])
def update(self):
for i in range(self.count):
self.x[i] += 1
self.y[i] = self.x*2
self.mana[i] = int(random.random()*20)
count = 10000;
playersDOD = Players(count);
playersOOP = []
for i in range(count):
playersOOP.append(Player())
start = time.clock()
playersDOD.update()
print("DOD", time.clock()-start)
start = time.clock()
for i in playersOOP:
i.update()
print("OOP", time.clock()-start)
```

"DOD (data oriented design) is 30% faster than OOP"seems absurd. The reason your code is slower though has nothing to do with design considerations; the line`self.y[i] = self.x*2`

is multiplying a list, not a number. Since the list has 10000 elements, this is going to be pretty slow. – kaya3 Dec 2 at 20:28