Ejemplo n.º 1
0
    def test_diet_10n_10i(self):
        from Model.model import Model

        m = Model()

        MIN_REQ = load_obj('diet_10n_min_req')
        ingredients, list_of_ingredients = load_obj('diet_10n_10i_ing'), load_obj('diet_10n_10i_l_o_ing')

        x = []
        for ing in list_of_ingredients:
            x.append(m.add_var("real+", name=ing))
        x = np.array(x)

        m.minimize(sum(get_by_key(ingredients, "price", list_of_ingredients) * x))

        for cst in MIN_REQ:
            left = get_by_key(ingredients, cst, list_of_ingredients)
            m.add_constraint(sum(left * x) >= MIN_REQ[cst])

        m.solve(consider_dual=0)

        try:
            i = 0
            for ing in list_of_ingredients:
                m.add_lazy_constraint(x[i] <= ingredients[ing]['max'])
                i += 1
        except InfeasibleError as e:
            pass
        else:
            self.fail("Should raise InfeasibleError but didn't")
Ejemplo n.º 2
0
    def test_unbound(self):
        m = Model(print_obj={})

        a = m.add_var("real+", name="a")
        b = m.add_var("real+", name="b")

        m.maximize(3 * a - b)

        m.add_constraint(-3 * a + 3 * b <= 6)
        m.add_constraint(-8 * a + 4 * b <= 4)

        try:
            m.solve()
        except Unbounded as e:
            pass
        else:
            self.fail("Should raise Unbounded but didn't")
Ejemplo n.º 3
0
    def test_minimize_2v_3c_2o(self):
        m = Model(print_obj={})

        x = []
        for i in range(1, 3):
            x.append(m.add_var("real+", name="x_%d" % i))

        m.minimize(0.12 * x[0] + 0.15 * x[1])

        m.add_constraint(60 * x[0] + 60 * x[1] >= 300)
        m.add_constraint(12 * x[0] + 6 * x[1] >= 36)
        m.add_constraint(10 * x[0] + 30 * x[1] >= 90)

        m.solve()

        computed_solution = m.get_solution_object()
        real_sol = [3, 2, 0.66]
        for x_idx in range(len(real_sol)):
            self.assertAlmostEqual(computed_solution[x_idx], real_sol[x_idx])
Ejemplo n.º 4
0
    def test_maximize_4v_3c_3o(self):
        m = Model(print_obj={})

        x = []
        for i in range(1, 5):
            x.append(m.add_var("real+", name="x_%d" % i))

        m.maximize(3 * x[1] + x[2] + 4 * x[3])

        m.add_constraint(x[0] + x[1] + x[2] + x[3] <= 40)
        m.add_constraint(2 * x[0] + x[1] + (-1 * x[2]) + (-1 * x[3]) <= 10)
        m.add_constraint(x[3] + (-1 * x[1]) <= 10)

        m.solve(revised=True)

        computed_solution = m.get_solution_object()
        real_sol = [0, 15.0, 0, 25.0, 145.0]
        for x_idx in range(len(real_sol)):
            self.assertAlmostEqual(computed_solution[x_idx], real_sol[x_idx])
Ejemplo n.º 5
0
    def test_woody_max_dual_add_variable(self):
        m = Model()

        x1 = m.add_var("real+", name="a")
        x2 = m.add_var("real+", name="b")

        m.maximize(35 * x1 + 60 * x2)

        m.add_constraint(8 * x1 + 12 * x2 <= 120)
        m.add_constraint(15 * x2 <= 60)
        m.add_constraint(3 * x1 + 6 * x2 <= 48)

        m.solve(consider_dual=2)
        m.add_new_variable([16, 20, 9], 75)

        computed_solution = m.get_solution_object()
        real_sol = [12, 2, 0, 540]
        for x_idx in range(len(real_sol)):
            self.assertAlmostEqual(computed_solution[x_idx], real_sol[x_idx])
Ejemplo n.º 6
0
    def test_maximize_2v_4c_2o(self):
        m = Model(print_obj={})

        x = []
        for i in range(1, 3):
            x.append(m.add_var("real+", name="x_%d" % i))

        m.maximize(4 * x[0] + 3 * x[1])

        m.add_constraint(2 * x[0] + 3 * x[1] <= 6)
        m.add_constraint(-3 * x[0] + 2 * x[1] <= 3)
        m.add_constraint(0 * x[0] + 2 * x[1] <= 5)
        m.add_constraint(2 * x[0] + 1 * x[1] <= 4)

        m.solve()

        computed_solution = m.get_solution_object()
        real_sol = [1.5, 1, 9]
        for x_idx in range(len(real_sol)):
            self.assertAlmostEqual(computed_solution[x_idx], real_sol[x_idx])
Ejemplo n.º 7
0
    def test_revised(self):
        m = Model()

        x1 = m.add_var("real+", name="a")
        x2 = m.add_var("real+", name="b")
        x3 = m.add_var("real+", name="c")

        m.maximize(5 * x1 + 4 * x2 + 3 * x3)

        m.add_constraint(2 * x1 + 3 * x2 + x3 <= 5)
        m.add_constraint(4 * x1 + x2 + 2 * x3 <= 11)
        m.add_constraint(3 * x1 + 4 * x2 + 2 * x3 <= 8)

        m.solve(consider_dual=0, revised=True)

        computed_solution = m.get_solution_object()

        real_sol = [2, 0, 1, 13]
        for x_idx in range(len(real_sol)):
            self.assertAlmostEqual(computed_solution[x_idx], real_sol[x_idx])
Ejemplo n.º 8
0
    def test_woody_min_dual_lazy_constraint(self):
        m = Model()

        x1 = m.add_var("real+", name="a")
        x2 = m.add_var("real+", name="b")
        x3 = m.add_var("real+", name="c")

        m.minimize(35 * x1 + 60 * x2 + 75 * x3)

        m.add_constraint(8 * x1 + 12 * x2 + 16 * x3 >= 120)
        m.add_constraint(15 * x2 + 20 * x3 >= 60)
        m.add_constraint(3 * x1 + 6 * x2 + 9 * x3 >= 48)

        m.solve(consider_dual=2)
        m.add_lazy_constraint(x1 <= 5)
        m.add_lazy_constraint(x3 >= 1)

        computed_solution = m.get_solution_object()
        real_sol = [5, 0, 5, 550]
        for x_idx in range(len(real_sol)):
            self.assertAlmostEqual(computed_solution[x_idx], real_sol[x_idx])
Ejemplo n.º 9
0
"""


mon = m.add_var("real+", name="Monday")
tue = m.add_var("real+", name="Tuesday")
wed = m.add_var("real+", name="Wednesday")
thu = m.add_var("real+", name="Thursday")
fri = m.add_var("real+", name="Friday")
sat = m.add_var("real+", name="Saturday")
sun = m.add_var("real+", name="Sunday")


m.minimize(mon+tue+wed+thu+fri+sat+sun)

m.add_constraint(mon+thu+fri+sat+sun >= 17)
m.add_constraint(tue+fri+sat+sun+mon >= 13)
m.add_constraint(wed+sat+sun+mon+tue >= 15)
m.add_constraint(thu+sun+mon+tue+wed >= 19)
m.add_constraint(fri+mon+tue+wed+thu >= 14)
m.add_constraint(sat+tue+wed+thu+fri >= 16)
m.add_constraint(sun+wed+thu+fri+sat >= 11)



t0 = time()
m.solve()
print("Solved in %f" % (time()-t0))

m.print_solution()
Ejemplo n.º 10
0
import numpy as np
from time import time
import random, string

from Model.model import Model

m = Model(print_obj={'end_conf': True})

x = []
for i in range(4):
    x.append(m.add_var("real+", name=i))
x = np.array(x)

m.maximize(sum(np.array([4, 1, 5, 3]) * x))

m.add_constraint(x[0] - x[1] - x[2] + 3 * x[3] <= 1)
m.add_constraint(5 * x[0] + x[1] + 3 * x[2] + 8 * x[3] <= 55)
m.add_constraint(-x[0] + 2 * x[1] + 3 * x[2] - 5 * x[3] <= 3)

print("all added")

t0 = time()
m.solve()
print("Solved in %f" % (time() - t0))

m.print_solution(slack=False)
print("Steps: ", m.steps)
Ejemplo n.º 11
0
    "protein": 55,
    "calcium": 800,
}

list_of_ingredients = get_keys(ingredients)

x = []
for ing in list_of_ingredients:
    x.append(m.add_var("real+", name=ing, ub=ingredients[ing]["max"]))
x = np.array(x)

m.minimize(sum(get_by_key(ingredients, "price", list_of_ingredients) * x))

for cst in MIN_REQ:
    left = get_by_key(ingredients, cst, list_of_ingredients)
    m.add_constraint(sum(left * x) >= MIN_REQ[cst])

print("all added")

t0 = time()

m.solve(consider_dual=0)
print("Solved first in %f" % (time() - t0))

m.print_solution(slack=False)

sol_obj = m.get_solution_object()
solved = False
while not solved:
    solved = True
    i = 0
Ejemplo n.º 12
0
from Model.model import Model
import numpy as np
from time import time
import sys

m = Model(print_obj={'start_conf': True})

a = m.add_var("real+", name="a")
b = m.add_var("real+", name="b")

m.maximize(3 * a - b)

m.add_constraint(-3 * a + 3 * b <= 6)
m.add_constraint(-8 * a + 4 * b <= 4)

t0 = time()
m.solve()
print("Solved in %f" % (time() - t0))

m.print_solution()
Ejemplo n.º 13
0
from Model.model import Model
import numpy as np
from time import time
import sys

m = Model(print_obj={'start_conf': True})

x1 = m.add_var("real+", name="a")
x2 = m.add_var("real+", name="b")
x3 = m.add_var("real+", name="c")

m.minimize(35 * x1 + 60 * x2 + 75 * x3)

# """
m.add_constraint(8 * x1 + 12 * x2 + 16 * x3 >= 120)
m.add_constraint(15 * x2 + 20 * x3 >= 60)
m.add_constraint(3 * x1 + 6 * x2 + 9 * x3 >= 48)
"""
m.add_constraint(8 * x1 + 12 * x2 + 16 * x3 + 12 * x4 <= 120)
m.add_constraint(15 * x2 + 20 * x3 + 30 * x4 <= 60)
m.add_constraint(3 * x1 + 6 * x2 + 9 * x3 + 15 * x4 <= 48)
"""

m.solve(consider_dual=0)
m.print_solution()
print(m.t.tableau)
m.add_new_variable([12, 30, 10], 15)

m.print_solution()
Ejemplo n.º 14
0
Material p.u. | 45$       | 40$       | 20$
Profit p.u.   | 45$       | 60$       | 50$
Maximum sales | 100       | 40        | 60

Maximize profit
"""


a = m.add_var("real+", name="apple")
b = m.add_var("real+", name="banana")
c = m.add_var("real+", name="carrot")


m.maximize(45*a+60*b+50*c)

m.add_constraint(20*a+10*b+10*c <= 2400)
m.add_constraint(12*a+28*b+16*c <= 2400)
m.add_constraint(15*a+6*b+16*c <= 2400)
m.add_constraint(10*a+15*b <= 2400)
m.add_constraint(a <= 100)
m.add_constraint(b <= 40)
m.add_constraint(c <= 60)



t0 = time()
m.solve()
print("Solved in %f" % (time()-t0))

m.print_solution()
Ejemplo n.º 15
0
mean = np.mean(profit)
# profit /= mean
# m.multiplier = mean

x = []
for i in range(n_blocks):
    x.append(m.add_var("real+", name=i))
x = np.array(x)

m.file_name = "examples/data/newman"
m.maximize(sum(profit * x))

# binary
for i in range(n_blocks):
    m.add_constraint(x[i] <= 1)

# cost
# m.add_constraint(sum(get_by_key(blocks,"c")*x) <= max_c)

for i in range(n_blocks):
    if len(pred[i]) > 0:
        m.add_constraint(len(pred[i]) * x[i] - sum(x[pred[i]]) <= 0)

print("all added")

t0 = time()

m.solve(revised=True)
# m.solve()
print("Solved first in %f" % (time() - t0))
Ejemplo n.º 16
0
from Model.model import Model

m = Model(print_obj={
   'start_conf': True,
   'end_conf': True
})

x = []
for i in range(3):
    x.append(m.add_var("real+", name=i))
x = np.array(x)

m.maximize(sum(np.array([5,5,3])*x))


m.add_constraint(x[0]+3*x[1]+x[2] <= 3)
m.add_constraint(-x[0]+0*x[1]+3*x[2] <= 2)
m.add_constraint(2*x[0]-x[1]+2*x[2] <= 4)
m.add_constraint(2*x[0]+3*x[1]-x[2] <= 2)

print("all added")

t0 = time()
m.solve()
print("Solved in %f" % (time()-t0))

m.print_solution(slack=False)
print("Steps: ",m.steps)

Ejemplo n.º 17
0
        'c': 3000
    },  #  9
]

max_c = 4000

x = []
for i in range(len(blocks)):
    x.append(m.add_var("real+", name=i))
x = np.array(x)

m.maximize(sum(get_by_key(blocks, "p") * x))

# binary
for i in range(len(blocks)):
    m.add_constraint(x[i] <= 1)

# cost
m.add_constraint(sum(get_by_key(blocks, "c") * x) <= max_c)

for i in range(len(blocks)):
    if len(blocks[i]["pred"]) > 0:
        m.add_constraint(
            len(blocks[i]["pred"]) * x[i] - sum(x[blocks[i]["pred"]]) <= 0)

print("all added")

t0 = time()

m.solve(revised=True)
# m.solve()
Ejemplo n.º 18
0
    def test_diet(self):
        m = Model()

        a = m.add_var("real+", name="oat")
        b = m.add_var("real+", name="chicken")
        c = m.add_var("real+", name="egg")
        d = m.add_var("real+", name="milk")
        e = m.add_var("real+", name="cake")
        f = m.add_var("real+", name="bean")

        m.minimize(25 * a + 130 * b + 85 * c + 70 * d + 95 * e + 98 * f)

        # calories
        m.add_constraint(110 * a + 205 * b + 160 * c + 160 * d + 420 * e + 260 * f >= 2000)
        # proteins
        m.add_constraint(4 * a + 32 * b + 13 * c + 8 * d + 4 * e + 14 * f >= 55)
        # calcium
        m.add_constraint(2 * a + 12 * b + 54 * c + 285 * d + 22 * e + 80 * f >= 800)

        # oats
        m.add_constraint(a <= 4)
        # chicken
        m.add_constraint(b <= 3)
        # egg
        m.add_constraint(c <= 2)
        # milk
        m.add_constraint(d <= 8)
        # cake
        m.add_constraint(e <= 1)
        # bean
        m.add_constraint(f <= 2)

        m.solve(revised=True, consider_dual=0)

        computed_solution = m.get_solution_object()
        real_sol = [4.0, 0, 0, 3.875, 1, 2, 662.25]
        for x_idx in range(len(real_sol)):
            self.assertAlmostEqual(computed_solution[x_idx], real_sol[x_idx])
Ejemplo n.º 19
0
    def test_diet_integer_more_restrictions(self):
        m = Model(dtype="fraction")

        a = m.add_var("int+", name="oat")
        b = m.add_var("int+", name="chicken")
        c = m.add_var("int+", name="egg")
        d = m.add_var("int+", name="milk")
        e = m.add_var("int+", name="cake")
        f = m.add_var("int+", name="bean")

        m.minimize(25 * a + 130 * b + 85 * c + 70 * d + 95 * e + 98 * f)

        # calories
        m.add_constraint(110 * a + 205 * b + 160 * c + 160 * d + 420 * e + 260 * f >= 2000)
        # proteins
        m.add_constraint(4 * a + 32 * b + 13 * c + 8 * d + 4 * e + 14 * f >= 55)
        # calcium
        m.add_constraint(2 * a + 12 * b + 54 * c + 285 * d + 22 * e + 80 * f >= 800)

        # oats
        m.add_constraint(a <= 2)
        # chicken
        m.add_constraint(b <= 3)
        # egg
        m.add_constraint(c <= 2)
        # milk
        m.add_constraint(d <= 2)
        # cake
        m.add_constraint(e <= 1)
        # bean
        m.add_constraint(f <= 2)

        m.solve()

        computed_solution = m.get_solution_object()
        real_sol = [2, 1, 2, 2, 1, 2, 781]
        for x_idx in range(len(real_sol)):
            self.assertAlmostEqual(computed_solution[x_idx], real_sol[x_idx])