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# ----------------------------------------------------------------------------------
# Copyright ENS, INRIA, CNRS
# Contributors: Romain Brette (brette@di.ens.fr) and Dan Goodman (goodman@di.ens.fr)
# 
# Brian is a computer program whose purpose is to simulate models
# of biological neural networks.
# 
# This software is governed by the CeCILL license under French law and
# abiding by the rules of distribution of free software.  You can  use, 
# modify and/ or redistribute the software under the terms of the CeCILL
# license as circulated by CEA, CNRS and INRIA at the following URL
# "http://www.cecill.info". 
# 
# As a counterpart to the access to the source code and  rights to copy,
# modify and redistribute granted by the license, users are provided only
# with a limited warranty  and the software's author,  the holder of the
# economic rights,  and the successive licensors  have only  limited
# liability. 
# 
# In this respect, the user's attention is drawn to the risks associated
# with loading,  using,  modifying and/or developing or reproducing the
# software by the user in light of its specific status of free software,
# that may mean  that it is complicated to manipulate,  and  that  also
# therefore means  that it is reserved for developers  and  experienced
# professionals having in-depth computer knowledge. Users are therefore
# encouraged to load and test the software's suitability as regards their
# requirements in conditions enabling the security of their systems and/or 
# data to be ensured and,  more generally, to use and operate it in the 
# same conditions as regards security. 
# 
# The fact that you are presently reading this means that you have had
# knowledge of the CeCILL license and that you accept its terms.
# ----------------------------------------------------------------------------------
# 
"""Util to test if two floating point numbers are equal

Use these functions for very precise tests of equality:

-- is_equal(x,y), for x=y
-- is_less_than_or_equal(x,y), for x<=y
-- is_greater_than_or_equal(x,y), for x>=y

Use these functions for less precise tests (for example, if you have done some operations on two varaibles):

-- is_approx_equal(x,y), for x=y
-- is_approx_less_than_or_equal(x,y), for x<=y
-- is_approx_greater_than_or_equal(x,y), for x>=y

The underlying mechanism is that the more precise version tests for equality using machine epsilon
precision, that is, x=y if abs(x-y)<abs(x)*epsilon where epsilon is the smallest value such that
1+epsilon>epsilon. The less precise mechanism simply uses 100*epsilon instead of epsilon.

Use this function for testing if you want to specify an absolute tolerance:

-- is_within_absolute_tolerance(x,y[,absolutetolerance])
    The default tolerance is the sqrt of epsilon, or about 1e-8 for a 64 bit float

Note also that you can use the numpy function:

-- allclose(a, b, rtol = 1e-5, atol = 1e-8)
    Where rtol is the relative tolerance, and atol is the absolute tolerance which comes into
    play when the numbers are very close to zero.

Warning: none of these functions can be guaranteed to work in the way you might
expect them to. Errors can accumulate to the point where even 100*epsilon is an inappropriate test
for approximate equality.
"""

import math

# This finds the 'machine epsilon' for the current hardware float type, the
# smallest value of epsilon so that 1+epsilon>1
epsilon = 1.
while 1. + epsilon > 1.:
    epsilon /= 2
epsilon *= 2.
# Result for 32 bit float should be: 1.1929093e-7 
# For 64 bit float should be:        2.220446049250313e-16

# This value can be used for more approximate testing
approxepsilon = epsilon * 10000

# This value is the default tolerance for medium sized numbers (used in the units class)
defaultabsolutetolerance = math.sqrt(epsilon) # 1.4901161193847656e-008 on 64 bit system

def is_equal(x, y):
    if x == y: return True
    return abs(x - y) < abs(x) * epsilon

def is_less_than_or_equal(x, y):
    return x < y or is_equal(x, y)

def is_greater_than_or_equal(x, y):
    return x > y or is_equal(x, y)

def is_approx_equal(x, y):
    if x == y: return True
    return abs(x - y) < abs(x) * approxepsilon

def is_approx_less_than_or_equal(x, y):
    return x < y or is_approx_equal(x, y)

def is_approx_greater_than_or_equal(x, y):
    return x > y or is_approx_equal(x, y)

def is_within_absolute_tolerance(x, y, absolutetolerance=defaultabsolutetolerance):
    return float(abs(x - y)) < absolutetolerance