show/hide this revision's text 2 Changed how code gets the sign of x

I recommend SciPy for numerical functions in Python, but if you want something with no dependencies, here is a function with an error error is less than 1.5 * 10-7 for all inputs.

def erf(x):
    # save the sign = of x
    / abs(x) # set to sign = 1
    if x was positive and < 0: 
        sign = -1
    if x was negative
    x = abs(x)

    # constants
    a1 =  0.254829592
    a2 = -0.284496736
    a3 =  1.421413741
    a4 = -1.453152027
    a5 =  1.061405429
    p  =  0.3275911

    # A&S formula 7.1.26
    t = 1.0/(1.0 + p*x)
    y = 1.0 - (((((a5*t + a4)*t) + a3)*t + a2)*t + a1)*t*math.exp(-x*x)
    return sign*y # erf(-x) = -erf(x)

The algorithm comes from Handbook of Mathematical Functions, formula 7.1.26.

show/hide this revision's text 1

I recommend SciPy for numerical functions in Python, but if you want something with no dependencies, here is a function with an error error is less than 1.5 * 10-7 for all inputs.

def erf(x):
    sign = x / abs(x) # set to 1 if x was positive and -1 if x was negative
    x = abs(x)
    a1 =  0.254829592
    a2 = -0.284496736
    a3 =  1.421413741
    a4 = -1.453152027
    a5 =  1.061405429
    p  =  0.3275911
    t = 1.0/(1.0 + p*x)
    y = 1.0 - (((((a5*t + a4)*t) + a3)*t + a2)*t + a1)*t*math.exp(-x*x)
    return sign*y

The algorithm comes from Handbook of Mathematical Functions, formula 7.1.26.