I want to execute a sympy lambda function in parallel. I don't know:
lambdify
And apparently the markdown preprocessor needs a line of text above the code so this is the code:
from multiprocessing import Pool
import sympy
from sympy.abc import x
def f(m):
return m.lambdify()(1)
class Mult():
def lambdify(self):
# return sympy.lambdify(x, 2*x, 'numpy')
self._lambdify = sympy.lambdify(x, 2 * x, 'numpy')
return self._lambdify
if __name__ == '__main__':
with Pool() as pool:
m = Mult()
print(pool.map(f, [m]))
print(pool.map(f, [m]))
print(f(m))
print(pool.map(f, [m]))
It prints:
[2]
[2]
2
PicklingError: Can't pickle <function <lambda> at 0x000000000DF0D048>: attribute lookup <lambda> on numpy failed
(I cut the traceback)
If I uncomment, it works normally:
[2]
[2]
2
[2]
I tested only on Windows and it works exactly the same with 'numexpr' instead of 'numpy'.
The object Mult
has no fields when it is created. It can thus be pickled with the stock pickle
library. Then, when you call lambdify
, you add a _lambdify
attribute to the object containing a lambda
expression, which cannot be pickled. This causes a failure in the map
function
This explains why before calling lambdify
you can pickle the object and use Pool.map
and why it fails after the call.
When you uncomment the line in lambdify
, you do not add the attribute to the class, and the Mult
object can still be pickled after calling lambdify
.
Though I have not fully explored this yet, I just want to put on record that the same example works just fine when using loky instead of multiprocessing:
from loky import get_reusable_executor
import sympy
from sympy.abc import x
def f(m):
return m.lambdify()(1)
class Mult():
def lambdify(self):
# return sympy.lambdify(x, 2*x, 'numpy')
self._lambdify = sympy.lambdify(x, 2 * x, 'numpy')
return self._lambdify
executor = get_reusable_executor()
m = Mult()
print('pool.map(f, [m])', list(executor.map(f, [m])))
print('pool.map(f, [m])', list(executor.map(f, [m])))
print('f(m)', f(m))
print('pool.map(f, [m])', list(executor.map(f, [m])))
with output
pool.map(f, [m]) [2]
pool.map(f, [m]) [2]
f(m) 2
pool.map(f, [m]) [2]
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