2

I become this expression: RuntimeWarning: invalid value encountered in log

while trying this:

def fct(a, b, c, d):
    global u1
    global u2
    if np.all(c > 0) and np.all(a > 0) and np.all(u1 != 0) and np.all(u2 != 0):
        return a, c, u1, u2

    u1, u2 = np.log(0.6*c), (math.e**d)**0.5
    F = np.log(a**2) + 6*[math.e**(-b)]/u1 + 3/u2
    print( F )

any idea??

  • Specify the a,b,c,d parameters' values too, this function gave the message above, pls, to be able to help you – Geeocode Nov 14 '18 at 12:55
  • This condition np.all(c > 0) and np.all(a > 0) and np.all(u1 != 0) and np.all(u2 != 0) is exactly the case where none of the operations after the if block would fail. That means that, as the code is now, if you reach those operations at least one of them will fail. Maybe those should go within the if block? – jdehesa Nov 14 '18 at 13:11
  • Please move your edit from answers to question deleting your answer and editing your question, as it is the common on the SO-n and I'm trying to prevent you from getting downvotes to your "answer". – Geeocode Nov 14 '18 at 14:06
1

This error message can emerge at two expression your code contains:

np.log(0.6*c) and np.log(a**2)

in the for loop with:

np.random.normal()

you will get random numbers at this distribution, whose values will be negative numbers.

That's why np.log() will drop up the error message:

RuntimeWarning: invalid value encountered in log

Example:

np.random.normal(10,4,100)

Out:

array([ 8.04664247, 14.4991884 , 10.89789303, 13.37593183,  3.29981902,
       16.6316143 , 10.64138342,  4.0459445 , 10.49192082, -3.04538967!!!!!,
       13.30443781,  4.13345961, 12.06508196, 10.4286879 ,  7.39431349,
       12.36789249,  9.20424736, 11.13161087, 12.15404482, 12.69897663,
        9.43633904, 12.77818913,  9.02926639,  4.78638573, 13.13104605,
       12.71197993,  6.1550897 ,  7.18496505,  4.3160573 ,  9.12631992,
        8.52408627, 12.45941119,  5.34780934,  5.7023213 , 13.53096085,
       12.1087058 ,  3.65110834,  5.15466232,  8.78768562, 12.54764999,
       15.12211713,  3.26481809,  9.8623701 , 15.88784306,  5.83355467,
        5.32775214,  8.81188865, 13.21886467,  6.78984216,  8.67260897,
        7.06100605, 13.75314668, 15.56562533, 10.33916552,  7.72745465,
       11.27606127, 11.56813697,  7.03177164, 10.63155512, 11.67072579,
       11.70855769, 10.78372397,  5.11327436, 15.61581808,  9.53446815,
       11.21806808, 11.2235412 ,  7.68339223, 12.71484256,  9.99613038,
       13.51834424,  7.73615596,  8.75145457, 13.02222188,  6.76757021,
       13.03580839, 10.67504642, 15.36110384, 15.66816384, -0.0952157 !!!!!!!! ,
        2.23551198, 11.21584659,  4.37791786,  5.45895529, 15.44411348,
       14.7077441 , 14.52080519,  3.70418827,  5.03132122,  5.24810117,
       16.35309566,  7.08504246,  6.81224092, 14.69274684,  8.43257572,
       12.87468578,  7.01621364,  7.62879265,  7.14646032, 20.16254855])

Stepping into your function inside of np.log()

c = np.array([ 8.04664247, 14.4991884 , 10.89789303, 13.37593183,  3.29981902,
       16.6316143 , 10.64138342,  4.0459445 , 10.49192082, -3.04538967,
       13.30443781,  4.13345961, 12.06508196, 10.4286879 ,  7.39431349,
       12.36789249,  9.20424736, 11.13161087, 12.15404482, 12.69897663,
        9.43633904, 12.77818913,  9.02926639,  4.78638573, 13.13104605,
       12.71197993,  6.1550897 ,  7.18496505,  4.3160573 ,  9.12631992,
        8.52408627, 12.45941119,  5.34780934,  5.7023213 , 13.53096085,
       12.1087058 ,  3.65110834,  5.15466232,  8.78768562, 12.54764999,
       15.12211713,  3.26481809,  9.8623701 , 15.88784306,  5.83355467,
        5.32775214,  8.81188865, 13.21886467,  6.78984216,  8.67260897,
        7.06100605, 13.75314668, 15.56562533, 10.33916552,  7.72745465,
       11.27606127, 11.56813697,  7.03177164, 10.63155512, 11.67072579,
       11.70855769, 10.78372397,  5.11327436, 15.61581808,  9.53446815,
       11.21806808, 11.2235412 ,  7.68339223, 12.71484256,  9.99613038,
       13.51834424,  7.73615596,  8.75145457, 13.02222188,  6.76757021,
       13.03580839, 10.67504642, 15.36110384, 15.66816384, -0.0952157 ,
        2.23551198, 11.21584659,  4.37791786,  5.45895529, 15.44411348,
       14.7077441 , 14.52080519,  3.70418827,  5.03132122,  5.24810117,
       16.35309566,  7.08504246,  6.81224092, 14.69274684,  8.43257572,
       12.87468578,  7.01621364,  7.62879265,  7.14646032, 20.16254855])

print(np.log(0.6*c))

Out:

[1.5744293  2.16326705 1.87774385 2.08263134 0.683042   2.30047974
 1.85392487 0.8868894  1.83977989    nan!!!! 2.07727203 0.90828911
 1.97948987 1.83373484 1.48988563 2.00427818 1.70883942 1.89896326
 1.9868364  2.03069579 1.73374247 2.03691412 1.6896455  1.05494996
 2.06415373 2.03171923 1.30645371 1.46116503 0.9515167  1.70033691
 1.63207021 2.01165063 1.16586138 1.23004771 2.09415483 1.98309906
 0.78420515 1.12907599 1.66252576 2.01870777 2.20533276 0.67237842
 1.77790089 2.25472861 1.25280091 1.16210379 1.66527617 2.07081933
 1.40460207 1.64934404 1.44376192 2.11044202 2.23423935 1.82511354
 1.5339539  1.91185638 1.93742888 1.43961306 1.85300085 1.94625801
 1.94949438 1.86721233 1.12101435 2.23745876 1.74408784 1.90670008
 1.90718784 1.52823552 2.03194439 1.79137243 2.09322197 1.53507929
 1.6583943  2.05583165 1.40131649 2.05687444 1.85708328 2.22101297
 2.24080525   nan!!!!! 0.29364465 1.90650203 0.96574761 1.18643181
 2.2264023  2.17754854 2.16475684 0.79863852 1.10485699 1.14704071
 2.28359159 1.44716024 1.40789551 2.17652834 1.62127664 2.04443742
 1.43739808 1.52110397 1.45579155 2.49300123]
/untitled0.py:37: RuntimeWarning: invalid value encountered in log

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